Open Access
2 May 2013 In vivo diffuse correlation spectroscopy investigation of the ocular fundus
Stefano Cattini, Giovanni Staurenghi M.D., Antonietta M. Gatti, Luigi Rovati
Author Affiliations +
Abstract
Diffuse correlation spectroscopy (DCS) measurements in vivo recorded from rabbits’ ocular fundus are presented. Despite the complexity of these ocular tissues, we provide a clear and simple demonstration of the DCS abilities to analyze variations in physiological quantities of clinical interest. Indeed, the reported experimental activities demonstrate that DCS can reveal both choroidal-flow and temperature variations and detect nano- and micro-aggregates in ocular fundus circulation. Such abilities can be of great interest both in fundamental research and practical clinical applications. The proposed measuring system can be useful in: (a) monitoring choroidal blood flow variations, (b) determining the end-point for photo-dynamic therapy and transpupillary thermo therapy and, (c) managing the dye injection and determining an end-point for dye-enhanced photothrombosis. Moreover, it could allow both diagnoses when the presence of nano- and micro-aggregates is related to specific diseases and verifying the effects of nanoparticle injection in nanomedicine. Even though the reported results demonstrate the applicability of DCS to investigate ocular fundus, a detailed and accurate investigation of the limits of detection is beyond the scope of this article.

1.

Introduction

This paper is aimed at reporting and reviewing our current and past research activities focused on the ocular fundus optical inspection performed by using diffuse correlation spectroscopy (DCS).

DCS is a technique able to reveal microscopic movement in turbid media such as complex fluid and biological tissues.13 Thanks to its noninvasiveness, portability, and high temporal resolution, DCS technique could be of great interest both in fundamental research and practical applications in medicine and biology. Nevertheless, to the best of our knowledge, our previous papers47 were the first and only studies reporting DCS-measurements in vivo recorded from the ocular tissues. This apparent lack of interest in analyzing the eye by using DCS is probably mainly due to the difficulties in accessing the posterior segment. Actually, although noncontact DCS measuring systems have been already reported in literature,811 the peculiar optics of the eyes is such that probably none of the above-cited systems has adequate optics to perform DCS ocular measurements. Nevertheless, the transparency of eye permits a more accurate noninvasive optical inspection of the human vasculature than in any other tissue; ocular fundus with its capillary bed represents a unique tissue in the human body. These aspects are well known from the early experiments performed in 1972 by Riva et al.12 using the technique of laser Doppler velocimetry to investigate the retinal blood flow. Currently, various optical instruments are commonly used in ophthalmic practice to diagnose eye circulation pathologies and to perform medical treatments; we believe that DCS could be effectively integrated into this type of instrumentation.

Ocular fundus is known to be a thin-layered complex scattering and absorbing medium13 where semi-infinite and homogeneous medium approximations are not satisfied and neither single-scattering regime nor multiple-scattering regime are applicable.4,6 This is probably another reason why few ocular fundus investigations based on coherent light sources have been so far reported in literature (excluding Doppler measurements).

Despite the complexity of the measurand, our previous works showed that DCS analysis of the ocular fundus can both reveal blood flow and temperature variations,46 and detect nano- and micro-aggregates in ocular fundus blood flow.7

Nevertheless, the analytical description of the intensity autocorrelation function originating from the radiation diffused by the ocular fundus is considerably problematic; thus our previous data analysis methods involved specialized theoretical models focused on the investigation of specific quantities of interest—temperature, flow, or nano- and micro-aggregates.

In this paper we would like to provide a more simple yet robust approach that by giving up specific models, provides an intuitive and “pictorial” description of DCS capabilities to investigate the ocular fundus. Such simplified data analysis method is not intended to replace the previous specialized data analysis methods,46 but to provide a flexible approach useful for simplified analysis and able to readily manage a wide range of clinical situations.

In particular, our attention will be focused on the abilities to reveal choroidal blood flow (ChBF) and temperature variations, and to detect nano- and micro-aggregates in ocular fundus circulation.

The study of the ocular hemodynamic allows earlier disease detection, differentiation, and new treatment possibilities. In particular, ChBF plays an important role in the progression of a number of ophthalmic diseases, including glaucoma, age-related macular degeneration, and diabetic retinopathy.

Laser Doppler and DCS are based on the same physical principle and offer the advantage to provide noninvasive measurements of blood flow even without the need for exogenous tracers. However, although commercial laser Doppler ocular flowmeters are both single-point (e.g., Oculix, Switzerland) and imaging monitors (e.g., Heidelberg Retinal Flowmeter, Germany), they perform the Doppler measurements using confocal configurations, and therefore the volume probed by the detected photons is accordingly small. On the contrary, in DCS the source—illumination—and the detection regions are not overlapped thus allowing the inspection of deeper choroidal vessels exploiting the analysis of the temporal intensity fluctuations of multiply scattered light.14 Moreover, single photon counting approach of DCS offers better performance in terms of sensitivity; hence allowing to better investigate the feeble signal arising from multiple-scattering.

The ability to reveal blood flow and temperature variations and to detect nano- and micro-aggregates in ocular fundus can be of great interest both in fundamental research and practical clinical applications.

As an example, the ability to reveal blood flow and temperature variations can be useful in determining an end-point for photo dynamic therapy (PDT) and transpupillary thermo therapy (TTT). According to Schule et al.,15 “Especially for TTT, a purely thermal treatment modality, the inter- and intra-individual variability of the ocular transmission, retinal absorption, and choroidal blood perfusion makes a treatment outcome nearly unpredictable.” Actually, two techniques have been proposed to monitor the laser-induced retinal temperature increase: (a) the analysis of the fluorescent content released by thermosensitive liposome-encapsulated dye once they are heated above their threshold temperature,16,17 and (b) the optoacoustic analysis of the thermal expansion of the retinal pigment epithelium (RPE).18 Also (static) light scattering spectroscopy has been proposed to study the thermal effects arising during PDT and TTT laser treatments.15,19 However, neither of the above-cited techniques have been able to reach clinical maturity, thus according to Fuisting and Richard,20 no measurement method is available to determine an objective end-point for the treatment; hence under-treatment (persistence of pathology) as well as over-treatment (inducing a retinal scar—local blinding—6% to 10% of patients) are possible.20,21

Detection of nano- and micro-aggregates in ocular fundus circulation potentially allows both diagnoses when the presence of such aggregates is related to specific diseases, i.e., diseases related to the environmental pollution,2224 and verify for instance the diffusion of nanoparticles (NPs) injection in nanomedicine.25,26

Nano- and micro-particles play an increasingly important role in medical research, e.g., as drug delivery vehicles27,28 and contrast/therapeutic agents.2931 As an example, they are used experimentally for numerous in vivo applications such as magnetic resonance imaging contrast enhancement, tissue repair, immunoassay, detoxification of biological fluids, hyperthermia, and cell separation. However, the physiology of the dispersion of such nano- and or micro-particles inside the human body is quite complex and not easily predictable,3234 since it depends on the nano- micro-particles surface and coating characteristics and on their interactions with the blood components and the complexes they can generate.

The abilities to detect nano- and micro-aggregates and to monitor the fundus temperature could be also useful in dye-enhanced photothrombosis (DEP). The DEP is a photothrombotic therapy that uses absorbing dye injected intravenously in order to enhance the absorption of the laser radiation, thus allowing to reduce power and/or duration of the laser treatment hence potentially reducing photothrombosis side effects. However, DEP is known to be prone to produce thrombi in the vessels.3538

Information that can be obtained with DCS could help to properly modulate dye injection flow rate and dose, thus potentially allowing to reduce thrombi in the fundus vessels. As well as for TTT, the ability to monitor blood flow and temperature variations can be useful in determining the end-point for the DEP treatment, hence minimizing side effects due to the laser radiation.

As it will be discussed in Sec. 4.6, also optical coherence tomography (OCT) has been already demonstrated to be able to investigate retinal and ChBF and to detect NPs in biological tissues. Many commercial OCT systems exist so their additional complexity and cost are not necessarily a problem for clinical use; however DCS cost is lower as it is a point measurement technique, not an imaging technique. Therefore, the proposed measuring system could be a good alternative for applications where imaging is not needed. Moreover, to the best of our knowledge, no study reports about the ability of OCT in determining the end-point for TTT treatments.

In order to in vivo test the performance of DCS technique, three measurement activities have been performed on the ocular fundus of animal models: (a) analysis of the variation of the ChBF, (b) analysis of the moderate temperature increase produced by a gentle TTT treatment, and (c) analysis of the transit of Au-nanoparticles (Au-NPs) injected in a vein. The obtained results suggest that DCS can allow to measure flow and temperature variation and detect nano- and micro-aggregates in the ocular blood flow.

In the following sections, Sec. 2 provides a concise overview of the theoretical background (Sec. 2.1), describes the developed measuring instrument (Sec. 2.2), the developed data analysis method (Sec. 2.3), the performed tests (Sec. 2.4), and the measurement procedure (Sec. 2.5). The obtained results are reported in Sec. 3 and discussion and conclusions are drawn in Sec. 4.

2.

Materials and Methods

2.1.

Theoretical Background

The DCS falls into dynamic light scattering (DLS) techniques. The DLS relay on dielectric constant ε fluctuations inside the sample volume—scatterers—and it analyzes the temporal fluctuations of the collected optical intensity in order to infer information about the scatterers dynamics.

The long history and the many applications of DLS technique led it to be referred by many different names. As an example, frequently encountered names are dynamic light scattering itself (DLS), quasi-elastic light scattering, laser light scattering, light mixing spectroscopy, and photon correlation spectroscopy. Moreover, when the sample volume dimensions are larger than the transport mean free path ls, photons propagation within the sample can be accurately described using diffusion approximation.39 As a result, from the earlier papers by Pine et al.,1,39 the analysis of such multiple-scattering regime is known as diffusing wave spectroscopy (DWS). In biomedical optics, DWS is generally referred as DCS.911,14

Data analysis is usually different for the intensity fluctuations of light scattered only once (single-scattering regime) and for the multiple-scattering regime.40 In general, the normalized electric-field autocorrelation function g1(τ) can be written as40

Eq. (1)

g1(τ)=0P(s)·g1s(τ)ds=0P(s)·exp[16q2Δr2(τ)sls]ds,
where P(s) is the probability that the revealed photons traveled a path of length s, g1s(τ) is the normalized elementary linear correlation corresponding to a path of length s, q2 is the mean square of the scattering vector, Δr2(τ) is the mean-squared displacement of scattering sites after a time τ and, ls=1/μs is the mean distance between the scattering events.

In single-scattering regime, the photon paths probability density P(s) reduces to the Dirac’s Delta function and s/ls1, thus g1(τ) depends on the scattering vector q set by the experimental setup. As the number of experienced scattering events increases, the P(s) deviates from the Dirac’s Delta function, hence the effective momentum gradually transfers from q to the mean square of the scattering vector q2.40

Photons propagation in ocular fundus is ruled by the scattering caused by inhomogeneities (scattering coefficient μs and anisotropy g) and absorption in constituents (absorption coefficient μa). In particular, fundus optical properties and geometrical dimensions are such to cause an intermediate regime, where neither the single-scattering nor the diffusion approximations can be applied.4,6 Indeed, the separation between the illumination and the collection locations set during experimental activities was such that photons propagation was almost still in the transport regime, thus the name DCS has been chosen mainly because of the use of photon counting detection.

According to Zakharov and Scheffold,40 such intermediate regime represents the most difficult situation since no rigorous theory can be applied and “theoretical modeling for this complicated situation is very difficult and sample-dependent.” Moreover, Eq. (1) is valid for homogeneous samples—samples in which optical and dynamical properties are statistically the same all over the sample—whereas ocular fundus is a layered sample. As a result, our previous articles were based on specific theoretical models focused on the analysis of a well-defined quantity, i.e., flow, temperature or nano- and micro-aggregates. Nevertheless, according to Eq. (1), it is easy to notice that the g1(τ) function is influenced by both the scatterers motion Δr2(τ) and changes in the optical and/or morphological properties that leads to P(s), q2 and/or ls variations.

Scatterers in ocular fundus are both “semi-static”—membranes, nuclei, mitochondria, pigment granules, and the other biological structures moving under thermal agitation—and “dynamic”—blood constituents, mainly red blood cells (RBCs)—therefore their motion is mainly induced by thermal agitation and blood flow. Hence, DCS is expected to be able to detect variation in both temperature and/or blood flow.

Moreover, DCS technique is expected to be able to investigate any quantity that gives rise to changes in any one of P(s), q2 and, ls. Nano- and micro-aggregates carried by the blood flow alter the fundus optical properties, thus giving rise to variations in P(s), q2 and, ls, therefore DCS is supposed to be able to detect them.

2.2.

Measuring System

The developed instrument is based on a commercial ophthalmic microscope (OM) (BQ900, Haag-Streit AG, Switzerland). As shown in Fig. 1, a coherent beam (probe beam, PB) generated by an He-Ne laser (model 1507-0, JDS Uniphase, USA—emission wavelength of about 633 nm) is coupled to OM by using: (a) the collimating lens L1 (LPSC-03-.633-4/125-S-40-6°-11-1-3a-2, OZ Optics, Canada), (b) the single-mode optical fiber OF1 (model SMJ-33-633-5/125-5AS-1, OZ Optics, Canada), (c) the collimating lens L2 (LPSC-03-.633-4/125-S-40-6°-11-1-3a-2, OZ Optics, Canada) and, (d) the custom made beam splitter BS based on a 50/50 beam splitter (model 1002237, Haag-Streit AG, Switzerland) in which the BS-side relative to the probe beam has been replaced by a mirror.6

Fig. 1

Schematic cross-section of the developed measuring system. The probe beam (PB, —) generated by the He-Ne is coupled to the ophthalmic microscope (OM) by using: the lens L1, the optical fiber OF1, the lens L2 and, the beam splitter (BS). The back-diffused radiation (collection beam CB, – – –) is collected by the OM optics and the L3 lens, then guided by the optical fiber OF2. The interference optical filter F allows only the He-Ne scattered light to pass. The single photon counting (SPC) process the so-collected scattered light, then, the digital correlator (DC) computes the intensity autocorrelation function. The therapeutic laser system (TL, small gray circle) is fixed in front of the slit lamp (SL, wider gray circle) and the therapeutic laser beam (TLB, ) is aligned to the OM optical-axis by using the dichroic splitter (DS, small purple rectangle in color version). The infrared optical filter (IRF) avoids the TL radiation to reach ophthalmologist’s eyes during transpupillary thermo therapy (TTT) treatments. The Goldmann laser-coated contact lens (GCL) is aimed at both making fundus observation easy and guiding the laser beams.

JBO_18_5_057001_f001.png

The probe beam power at the output of the OM measured in accordance with the measurement procedure reported in IEC 60825-1:200141 is about 250 μW. Therefore, according to ISO 15004-2,42 no potential light hazard theoretically exists when using the developed measuring system.

The collection of the signal diffused by the ocular fundus (collection beam, CB) is performed by using: (a) OM, (b) BS, (c) the collimating lens L3 (LPSC-03-.633-4/125-S-40-6°-11-1-3a-2, OZ Optics, Canada), and (d) the single-mode optical fiber OF2(model SMJ-33-633-5/125-5AS-1, OZ Optics, Canada).

To select only the He-Ne scattered light, the interference filter F (FL05632.8-3, Thorlabs, USA) was fixed in front of the collection lens L3.

The so-collected scattered light was guided to the single photon counting module SPC (SPCM-AQR-14-FC, Perkin-Elmer, Canada), then processed by the digital correlator DC (FLEX-99S160B, Correlator.com, USA) to calculate the normalized intensity autocorrelation function g2(τ).

To test the ability to detect fundus temperature variations, the OM was also equipped with a commercial therapeutic laser-diode system therapeutic laser (TL) (IRIDIS 810 nm photocoagulator, Quantel Medical, France).

The laser beam (TLB—therapeutic-laser beam) generated by the therapeutic laser (TL) was aligned to the OM optics by using the custom-made dichroic splitter DS;6 the infrared optical filter (IRF) avoids the TL radiation to reach ophthalmologist’s eyes during TTT treatments. A diaphragm system allowed changing the TLB spot diameter from 800 to 4100 μm. Irradiation time and power were adjusted by using the TL controller.

A picture of the developed measuring system is shown in Fig. 2.

Fig. 2

Picture of the developed measuring system.

JBO_18_5_057001_f002.png

As shown in Figs. 1 and 2, during experimental activities a Goldmann laser-coated contact lens (GCL) was put on the rabbit cornea to both make fundus observation easy and to guide the laser beams.

2.3.

Data Analysis

The standard approach in DLS technique is based on the temporal correlation method, thus basing on a mathematical framework able to describe the temporal field correlation function g1, i.e., Eq. (1). However, photodetectors are known to be square-law detectors, thus providing an estimation of the optical intensity autocorrelation function G2(τ).

For ergodic systems, g1(τ) can be easily derived from G2(τ) thanks to the Siegert equation.1,43 Unfortunately, scatterers motion in biological tissues is generally restricted and/or the sample dynamics is macroscopically heterogeneous, thus resulting in nonergodic systems. Moreover, due to the limited acquisition time of in vivo experiments, also systems with ergodic dynamics can demonstrate apparent nonergodic properties. Nevertheless, thanks to the usage of a single-mode collection fiber, and supposing the normalized electric field autocorrelation function to be a real function, it is possible to easily estimate the g1(τ) from the measured G2(τ).4,44 As a result, useful information can be easily extracted from the estimated g1(τ) functions by determining the delay τX at which the g1(τ) equals a certain value X.

In general, the higher the derivative of the g1(τ) function, the lower the uncertainty in estimating the crossing condition g1(τX)=τX. Preliminary empirical analysis of the recorded g1(τ) revealed that the maximum derivative substantially occurred at g1(τ)0.5. Therefore, according to our previous work,7 the obtained g1(τ) functions can be simply analyzed by finding the “characteristic” decay time τ0.5 at which g1(τ)=0.5:

Eq. (2)

τ0.5=τ:g1(τ)=0.5.

Given the quantization of decay times τi provided by the DC, the τ0.5 can be readily estimated by performing a linear interpolation of the experimental g1(τ) data, then finding the τ value that satisfies the g1(τ)=0.5 condition:

Eq. (3)

ifg1(τi)0.5&&g1(τi+1)<0.5thenτ0.5=τi+1τig1(τi)g1(τi+1)·[g1(τi)0.5]+τi,
where the symbol && refers to the Matlab syntax for logical AND operation with short-circuiting behavior.

If the g1(τ) autocorrelation functions are too “noisy,” a smooth function can be applied before using Eq. (3).

Regardless of the autocorrelation functions noise, according to Eq. (1) the decay time τ0.5 depends on the optical and dynamical properties of the investigated ocular region, thus the simple τ0.5 data analysis method could be influenced by inter- and intra-individual variability of the ocular transmission, retinal absorption, and choroidal blood perfusion. As a result, in this paper, we also propose a new simplified data analysis method based on the percentage variation Δτ0.5. The Δτ0.5 value relative to the τ0.5 value is simply defined as

Eq. (4)

Δτ0.5=τ0.5τBASEτBASE·100(%),
where τBASE is the mean τ0.5 recorded during the baseline:

Eq. (5)

τBASE=1nBASE·i=1nBASEτ0.5i,

nBASE is the number of g1(τ) functions acquired during the baseline and, τ0.5i is the i’th τ0.5 recorded.

Due to the percentage variation analysis, the Δτ0.5 analysis could be more robust to inter- and intra-individual variability than the τ0.5 analysis.

2.4.

Experimental Activities: Performed Tests

The reported activities (Secs. 3.13.4) have been performed on albino New Zealand rabbits.

The proposed experimental activities consisted in analyzing the variation of τ0.5 and Δτ0.5 as a function of the applied stimulus. Therefore, the measurement uncertainty relative to the proposed measurement procedure can be roughly estimated by analyzing the decay times τ0.5 and the percentage variations Δτ0.5 recorded under the same nominal conditions—no stimulus—and calculating the related experimental standard deviations of the sample σ. As a result, in measurement uncertainty analysis nBASE equals the number of g1(τ) functions composing the whole investigated dataset, thus τBASE is the mean τ0.5. Hence,

Eq. (6)

σ=[1nBASE1·i=1nBASE(τ0.5iτBASE)2]12.

Since the variance V[] of a random variable X and a constant k has the following properties V[X+k]=V[X] and V[X·k]=V[X]·k2, from Eq. (4), it is easy to notice that the percentage standard deviations of the random variables τ0.5 [σ%=(σ/τBASE)·100] equals the standard deviations of the random variables Δτ0.5.

Conversely, to test the abilities to reveal blood flow and temperature variations and to detect nano- and micro-aggregates in ocular fundus circulation, three measurement activities have been performed: (a) variation of the ChBF by increasing the intra-ocular pressure (IOP), (b) moderate temperature increase performed by using TL (Fig. 1) and, (c) injection of Au-NPs.

Preliminary activities have been performed collecting some datasets from both eyes of two different animal models, thus roughly investigating the DCS potential to detect the effects due to increased IOP, TTT treatments, and NPs injections. Then, in order to avoid any potential “cross-contamination” issues, all the reported measurements have been obtained from “intact animal models”—neither IOP increase nor TTT treatment nor NPs injection was performed before acquiring the reported measurements. As a result, the measurements reported in Secs. 3.23.4 have been obtained from three different “intact” animals models.

Measurements have been acquired from the inferior parapapillary region, and given the interest in ChBF, the examined retinal sites were chosen far away from visible retinal vessels.

A detailed description of the animal preparation, the instrument setting and the measurement protocols is reported in Sec. 2.5.

2.5.

Animal Preparation, Instrument Setting, and Measurement Protocols

As previously stated, the reported activities have been performed on five male albino New Zealand rabbits bought at Charles River Laboratories Italia Srl (Sant’Angelo Lodigiano, Milan, Italy). Even though the system was previously demonstrated on pigmented rabbits,4,5 in order to easily avoid any ocular damage during temperature elevation analysis and since the interest in ChBF, albino rabbits have been preferred to pigmented rabbits because of their higher threshold power during TTT45 and their rudimentary retinal circulation.46

2.5.1.

Animal preparation: anesthesia and immobilization technique

The rabbits were housed in the university animal facility, and were given food and water ad libitum for at least one week prior to the experiments. The animals were then treated according to the guidelines and requirements of the ARVO convention for animal experimentation ethics.

During experimental activities, the animals were anesthetized through intramuscular injection of ketamine (30mg/kg) and xilor (4mg/kg). Then, as shown in Fig. 2 the animal under test was immobilized by using a guillotine system. The performed sedation and the soft restriction of movement imposed by the Goldmann contact lens substantially prevent rabbit’s eye to move, thus no other mechanical tool besides the guillotine system was used to immobilize the rabbit’s eye.

2.5.2.

Instrument setting and description of the measurement protocols

The OM magnification was set to 10×, then the distance between the illumination spot and the collection point of the scattered light at the OM focal plane was set to 2 mm. According to our previous papers,4,6 such measurement geometry reasonably allows to investigate all the ocular fundus layers—from retina to sclera.

As previously stated, during the in vivo activities a GLC (Fig. 1) was put on the rabbit cornea to make fundus observation easy by the ophthalmologist and to guide the illumination beam (probe beam, PB) and the collected scattered light (collection beam, CB).

All the measurements have been performed at room temperature and after 30 min warm-up time for the He-Ne laser, the SPC and the DC.

2.5.3.

Measurement uncertainty

Measurement uncertainty estimation has been performed by recording the g1(τ) functions from five male albino New Zealand rabbit (rabbit’s ages from about nine months to about fifteen months and, rabbit’s weights from 3 to 5kg). From each of such animal models, g1(τ) functions have been acquired from random ocular fundus regions without applying any stimulus, thus estimating the τ0.5 and Δτ0.5 values according to Eqs. (2) and (4).

2.5.4.

Variation of the choroidal blood flow

It is known that ChBF can be readily changed by altering the IOP.47 Therefore, the former activity investigates moderate ischemia induced by applying an overpressure by using the GCL (Fig. 1).

The reported measurements (Sec. 3.2) have been acquired from a male albino New Zealand rabbit of about nine months old and 3 kg weight.

Analyses have been performed by comparing the autocorrelation functions acquired before and during the ocular overpressures. In particular, due to the variability of the handmade overpressure, the measurement method consisted in acquiring one autocorrelation function before (B(i)—baseline) and one during the overpressure (D(i)); the acquisition time of each autocorrelation function was 10 s. Figure 3 shows the timing diagram of the performed GCL overpressure.

Fig. 3

Timing diagram indicative of the performed handmade overpressure. The 10 s long baseline measurement (B(i)—overpressure = OFF) is followed by the 10 s long measurement acquired during the overpressure (D(i)—overpressure = ON).

JBO_18_5_057001_f003.png

2.5.5.

Moderate temperature increase

The second activity investigates the moderate temperature variation due to the gentle heating generated by a “low-power” TTT treatment. The TTT consists of an infrared laser radiation, which mainly heats the chorioretinal layers (thanks to the great chorioretinal penetration of IR-light).

The reported measurements (Sec. 3.3) have been acquired from a male albino New Zealand rabbit of about nine months old and 3.5 kg weight.

Measurement method consisted in acquiring nine autocorrelation functions 10-s long [one before the treatment (baseline), three during the treatment, and five after the treatment]. Table 1 reports the settings of the performed TTT treatment.

Table 1

Settings of the performed transpupillary thermo therapy (TTT) treatment.

Power200 mW
Spot size (diameter)4100 μm
Duration30 s

2.5.6.

Injection of Au-nanoparticles

Finally, the ability to detect nano- and micro-aggregates has been tested by injecting a bolus of Au-NPs and isotonic saline solution in the ear vein of a rabbit. The reported measurements (Sec. 3.4) have been acquired from a male albino New Zealand rabbit of about nine months old and little less than 3.5 kg weight.

Measurement method consisted in the acquisition of 4 autocorrelation functions before starting NPs injection (B(1)÷B(4)) (baseline), then, a Au-NPs bolus has been injected in the marginal ear vein of the rabbit during the acquisition of two autocorrelation functions (D(1)÷D(2)). Finally, 10 autocorrelation functions have been acquired after the injection (A(1)÷A(10)).

For all the acquired autocorrelation functions, the acquisition time was set to 5 s. Actually, Au-NPs injection started during the acquisition of the D(1) autocorrelation function and ended during the acquisition of the D(2) autocorrelation function. However, Au-NPs injection has been handmade, thus both the injection timescale and, the Au-NPs injection flow rate were affected by high uncertainty.

Data about the injected bolus are reported in Table 2.

Table 2

Specifications of the Au-nanoparticles (Au-NPs) bolus.

CompositionGold
ShapeSpherical
Diameter20 nm
Surface inorganic coatingCitrate ions
Concentration (NPs molarity)0.02 μM
Mass0.1mg/ml
SolventSodium citrate 0.85 mM
pH7
Overall injected volume (solvent and NPs)0.2 ml

3.

Results

Experimental activities have been performed according to the measurement procedures previously reported (Sec. 2.5). The following subsections report the results obtained in the experiments aimed at testing the abilities to reveal ChBF and temperature variations and to detect the transit of nano- and micro-aggregates in ocular fundus.

3.1.

Measurement Uncertainty

As previously stated, measurement uncertainty has been roughly estimated from the analysis of the τ0.5 and Δτ0.5 recorded under the same nominal conditions. Preliminary tests demonstrated that regardless of the investigated animal model, measurement duration tmeas—time required for the acquisition of the entire set of measurements—exceeding 110÷120s rapidly increases the measurement uncertainty. As a result, only sets of measurements obtained with 40 s tmeas<100s have been taken into account for the measurement uncertainty estimation.

All datasets obtained with 40 s tmeas<100s shown similar behaviors. For all the analyzed datasets the |Δτ0.5| were usually less than 8% and |Δτ0.5| greater than 10% have been seldom encountered [as reported in Sec. 2.4, in measurement uncertainty analysis nBASE equals the number of g1(τ) functions composing the investigated dataset]. Therefore, the obtained percentage experimental standard deviations of the sample σ%=(σ/τBASE)·100, were essentially less than 8%.

Figure 4 shows an example of two sets of τ0.5 obtained under the same nominal conditions—no external stimulus [no smooth function has been performed on the recoded g1(τ) functions in order to estimate the shown τ0.5]. Figure 5 shows the Δτ0.5 values relative to the τ0.5 shown in Fig. 4.

Fig. 4

Examples of characteristic decay times τ0.5 obtained under the same nominal conditions. Void circles (◯) have been obtained with an acquisition time of 5 s (τBASE=55μs, experimental standard deviation of the sample σ=1.0μs and, percentage experimental standard deviation of the sample σ%=1.8%) whereas, filled circles (•) have been obtained with an acquisition time of 10 s (τBASE=47μs, experimental standard deviation of the sample σ=3.0μs and, percentage experimental standard deviation of the sample σ%=6%).

JBO_18_5_057001_f004.png

Fig. 5

Examples of percentage variation Δτ0.5 obtained under the same nominal conditions. Void circles (◯) have been obtained with an acquisition time of 5 s whereas, filled circles (•) have been obtained with an acquisition time of 10 s.

JBO_18_5_057001_f005.png

3.2.

Variation of the Choroidal Blood Flow

The ability of DCS to detect variation in ChBF has been investigated by inducing moderate ischemia. As previously stated, blood flow reductions have been obtained by applying an overpressure using the GCL. Figure 6 shows 5 (B(i), D(i)) pairs of the obtained autocorrelation functions. All the g1(τ) functions shown in Fig. 6 have been obtained from the same rabbit (see Sec. 2.5).

Fig. 6

Autocorrelation functions pairs acquired during the activities aimed at testing the ability to reveal choroidal blood flow (ChBF) variations. For each of the five pairs of acquired autocorrelation functions, the measurement acquired before the overpressure (B(i)) is drawn in continuous line (—), whereas the measurement acquired during the overpressure (D(i)) is drawn in dashed line (– – –). The horizontal dashed-dot line (– . – . –) indicates the g1(τ)=0.5 condition of Eq. (2).

JBO_18_5_057001_f006.png

According to Sec. 2.3, the acquired measurements have been investigated both in terms of characteristic decay times τ0.5 [see Eq. (2)] and percentage variations Δτ0.5 [see Eq. (4)] [no smooth function has been performed on the recoded g1(τ) functions]. The obtained τ0.5 and Δτ0.5 are shown in Figs. 7 and 8, respectively.

Fig. 7

Characteristic decay times τ0.5 relative to the five autocorrelation functions pairs acquired during the activities aimed at testing the ability to reveal ChBF variations (Fig. 6). For each pair, the τ0.5 recorded before the overpressure (B(i), i[1,,5]) is drawn with a circle (◯), whereas the τ0.5 recorded during the overpressure (D(i), i[1,,5]) is drawn with a square (□).

JBO_18_5_057001_f007.png

Fig. 8

Percentage variation Δτ0.5 relative to the five autocorrelation functions pairs acquired during the activities aimed at testing the ability to reveal ChBF variations (Fig. 6). For each pair, the Δτ0.5 recorded before the overpressure (B(i), i[1,,5]) is drawn with a circle (◯), whereas the Δτ0.5 recorded during the overpressure (D(i), i[1,,5]) is drawn with a square (□).

JBO_18_5_057001_f008.png

3.3.

Moderate Temperature Increase

The second activity investigates the temperature rise consequent to TTT laser treatment.

The treatment settings are reported in Table 1.

At the end of the treatment, the ophthalmologist reported inappreciable visible alterations of the ocular fundus tissues.

Figure 9 shows the obtained autocorrelation functions. According to Sec. 2.3, the acquired measurements have been investigated both in terms of characteristic decay times τ0.5 [see Eq. (2)] and percentage variations Δτ0.5 [see Eq. (4)] [no smooth function has been performed on the recoded g1(τ) functions]. The obtained τ0.5 and Δτ0.5 are shown in Figs. 10 and 11, respectively.

Fig. 9

Autocorrelation functions acquired during the activities aimed at testing the ability to reveal fundus temperature variations. The measurement acquired before the TTT treatment is drawn in continuous line (—), the measurements acquired during the treatment are drawn in dashed line (– – –) and, the measurements acquired after the TTT are drawn in bold continuous line (). The horizontal dashed-dot line (– . – . –) indicates the g1(τ)=0.5 condition of Eq. (2).

JBO_18_5_057001_f009.png

Fig. 10

Characteristic decay times τ0.5 relative to the autocorrelation functions acquired during the activities aimed at testing the ability to reveal fundus temperature variations (Fig. 9). The τ0.5 recorded before the laser treatment (B(1)) is drawn with a circle (◯), the τ0.5 recorded during the treatment (D(1)÷D(3)) are drawn with squares (□), and the τ0.5 recorded after the treatment (A(1)÷A(5)) are drawn with diamonds (⋄). The wide rectangle in the background (pink in color version) indicates the TTT treatment.

JBO_18_5_057001_f010.png

Fig. 11

Percentage variation Δτ0.5 relative to the autocorrelation functions acquired during the activities aimed at testing the ability to reveal fundus temperature variations (Fig. 9). The baseline Δτ0.5 recorded before the laser treatment (B(1)) is drawn with a circle (◯), the Δτ0.5 recorded during the treatment (D(1)÷D(3)) are drawn with squares (□), and the Δτ0.5 recorded after the treatment (A(1)÷A(5)) are drawn with diamonds (⋄). The wide rectangle in the background (pink in color version) indicates the TTT treatment.

JBO_18_5_057001_f011.png

3.4.

Injection of Au-Nanoparticles

Finally, the ability to detect nano- and micro-aggregates carried by the ocular blood flow has been tested by injecting a bolus of Au-NPs in the ear vein of a rabbit. Data about the injected Au-NPs bolus are reported in Table 2.

Figure 12 shows the obtained autocorrelation functions. According to Sec. 2.3, the acquired measurements have been investigated both in terms of characteristic decay times τ0.5 [see Eq. (2)] and percentage variations Δτ0.5 [see Eq. (4)] [no smooth function has been performed on the recoded g1(τ) functions]. The obtained τ0.5 and Δτ0.5 are shown in Figs. 13 and 14, respectively.

Fig. 12

Autocorrelation functions acquired during the activities aimed at testing the ability to detect nano- and micro-aggregate in ocular fundus circulation. The measurements acquired before the injection are drawn in continuous line (—), the measurements acquired during the injection are drawn in dashed line (– – –) and, the measurements acquired after the injection are drawn in bold continuous line (—). The horizontal dashed-dot line (– . – . –) indicates the g1(τ)=0.5 condition of Eq. (2).

JBO_18_5_057001_f012.png

Fig. 13

Characteristic decay times τ0.5 relative to the autocorrelation functions acquired during the activities aimed at testing the ability to detect nano- and micro-aggregate in ocular fundus circulation (Fig. 12). The τ0.5 recorded before the nanoparticles (NPs) injection (B(1)÷B(4)) are drawn with circles (◯), the τ0.5 recorded during the injection (D(1)÷D(2)) are drawn with squares (□), and the τ0.5 recorded after the injection (A(1)÷A(10)) are drawn with diamonds (⋄). The wide rectangle in the background (pink in color version) indicates the NPs injection.

JBO_18_5_057001_f013.png

Fig. 14

Percentage variation Δτ0.5 relative to the autocorrelation functions acquired during the activities aimed at testing the ability to detect nano- and micro-aggregate in ocular fundus circulation (Fig. 12). The baseline Δτ0.5 recorded before the NPs injection (B(1)÷B(4)) are drawn with circles (◯), the Δτ0.5 recorded during the injection (D(1)÷D(2)) are drawn with squares (□), and the Δτ0.5 recorded after the injection (A(1)÷A(10)) are drawn with diamonds (⋄). The wide rectangle in the background (pink in color version) indicates the NPs injection.

JBO_18_5_057001_f014.png

4.

Discussion and Conclusions

Despite the simplicity of the performed data analyses, the reported results demonstrate the applicability of DCS to ocular fundus optical inspection. According to our previous articles,46 specific theoretical models allow obtaining more information and distinguishing the contribution of the different fundus layers (retina, RPE, and choroids). Nevertheless, the proposed simplified data analysis methods have been able to clearly and easily demonstrate the DCS ability to analyze variations in physiological quantities of clinical interest. Indeed, even though the ocular fundus is known to be a complex scattering and absorbing medium,13 and albeit neither single-scattering regime nor multiple-scattering regime are applicable,4,6 DCS has been shown to be able to: (a) reveal variations in ChBF, (b) disclose variations in fundus temperature, and (c) detect nano- micro-aggregates carried by the blood flow in the ocular fundus.

In the following subsections a detailed analysis of the obtained results is reported.

4.1.

Discussion on the Measurement Uncertainty

As reported in Sec. 3.1, the recorded percentage experimental standard deviations of the sample σ% were essentially less than 8%. Therefore, by introducing a sort of “safety factor,” the measurement uncertainty can be roughly estimated in about 10% (both for τ0.5 and Δτ0.5 estimations, see Sec. 2.4).

Obviously, such 10% measurement uncertainty is not the measurement uncertainty relative to the analysis of blood flow, temperature variations or NPs, but the measurement uncertainty relative to τ0.5 and Δτ0.5 estimations. As a result, the measurement uncertainty relative to the analysis of blood flow, temperature variations or NPs is reasonably higher than 10% and depends on the model used to joint such quantities—blood flow, temperature, and NPs—to the estimated τ0.5 or Δτ0.5.

Actually, measurement uncertainty depends on both “intrinsic” factors such as the developed measurement procedure and measuring system and “extrinsic” factors relative to the environmental conditions, the investigated animal and the ophthalmologist that performs the measurements.

For instance, any relative motion between the measuring system and the measurand—the rabbit’s eye—results both in an apparent variation of Δr2(τ) and a possible variation of the measuring site. Therefore, “extrinsic” factors such as movements of the investigated animal, i.e., due to different response to the sedatives and slight tremors of the ophthalmologist alter the measures, thus increasing the measurement uncertainty and possibly leading to measurement artefacts.

As an example, as previously stated tmeas>110÷120s rapidly increases the measurement uncertainty. As shown in Fig. 2 the animal under test was immobilized by using a guillotine system and the GLC was hand-held by the ophthalmologist, thus such measurement uncertainty increase is reasonably an “extrinsic” factors depending on rabbit’s and/or ophthalmologist’s movements. Mechanical tools such as a stereotaxic head-holder can probably reduce rabbit’s movements; however, for human testing, such solutions are in general not suitable and a fixation target is usually the only mechanical tool exploited to prevent eye movements. Therefore, in order to reduce the effects of such extrinsic factor—relative motion between the measuring system and the measurand—we are now working on a mechanical system aimed at holding the GLC. Nevertheless, extrinsic factors can be reduced but obviously not eliminated.

From what has been said previously, the ultimate measurement uncertainty depends on both “intrinsic” factors such as the measurement procedure, the measuring system and the performed data analysis and “extrinsic” factors relative to the investigated measurand—animal model or patient—and/or the ophthalmologist. Therefore, the question whether the “ultimate” measurement uncertainty level of this system is sufficiently small to enable clinical applications is beyond the scope of this article.

4.2.

Discussion on the Analysis of the Variation of the Choroidal Blood Flow

The relation between IOP and ChBF has been investigated for a long time. Although preliminary animal experiments reported linear relationship, thus neglecting autoregulation, some autoregulation has been now demonstrated both in animal experiments4649 and human testing.5052

The ChBF regulation is known to be complex and to vary from subject to subject52 and the performed “handmade” pressure manipulation did not allow estimation of the induced IOP variation, thus it is difficult to estimate the induced blood flow variation. Nevertheless, in accordance with the expected ChBF reduction,4652 the observed Δτ0.5 (Fig. 8) are significantly higher than the estimated 10% measurement uncertainty, thus confirming that the developed measuring system is able to detect ChBF variations.

Blood flow reduction results in a reduction of the Δr2(τ) relative to “dynamic” scatterers—scatterers carried by the blood flow—thus according to Eq. (1), it is expected to result in an increased “characteristic” decay time τ0.5. Figures 6 and 7 clearly show that DCS is able to detect this phenomenon originated by an increased IOP.

The large variations shown in Figs. 6 and 7 are not surprising. According to the study performed by Kiel and Heuven on New Zealand albino rabbits,47 an increase of the IOP from 10 mmHg to 100 mmHg can reduce by a factor of 10 the ChBF and similar results have been obtained analyzing Long-Evan rats.53 Actually, ChBF reduction is due to both blood volume and velocity reductions. However, according to a recent study performed by Zhi et al. on Brown Norway rats,54 from 10 to 50 mmHg, choroidal blood volume does not change, and at 60, 70, 80, and 100 mmHg, the choroidal blood volume, respectively, reduces of about 6.5%, 15%, 30%, and 80% of baseline. Therefore, up to 70 mmHg, choroidal blood volume basically does not change, whereas ChBF can be reduced by about seven times.47 Since the examined retinal sites were chosen far away from visible retinal vessels, it means that up to about 70 mmHg, the IOP increase substantially influenced the movements of “dynamic” scatterers only, whereas optical properties basically did not change. Hence, by modeling the ChBF as random flow—Δr2(τ)=V2τ2—and roughly supposing a linear relationship between ChBF and square root of the mean square velocity V2—ChBF V21/2—if ChBF reduces by a factor of 4÷7 (i.e., approximately 40÷70mmHg), then Δr2(τ) reduces by a factor of about 16÷49. Such decorrelation statistically occurs at each scattering event with dynamic scatterers, thus leading to high responsivity.

Differences between the results (τ0.5 and Δτ0.5) obtained under different overpressure conditions are reasonably due to the poor repeatability of the performed handmade overpressures. Moreover, measurements may have been collected from slightly different fundus sites, thus also differences among the investigated regions may be responsible of the differences between the obtained decay times.

4.3.

Discussion on the Analysis of the Variations of the Fundus Temperature

According to Ibarra et al.,45 the performed 200 mW TTT treatment (see Table 1) is expected to produce a fundus temperature rise lower than 2°C, whereas the threshold power settings for visible lesions in albino rabbits is about 950 mW (810 nm laser diode, spot-size 0.8 mm and, treatment duration 60 s), corresponding to retinal temperature increases of about 12°C.45

Change in optical properties of the tissue—whitening—due to photocoagulation, corresponds to a denaturation of tissue proteins that occurs at approximately 18°C above basal temperature (i.e., 55°C). Nevertheless, protein denaturation is known to start under the photocoagulation threshold with a change in the folding of proteins starting at about 6÷12°C above basal temperature.55 Despite the gentle laser treatment, the developed measuring system has been shown able to detect the consequent moderate temperature increase. The Δτ0.5 variations recorded as a function of the applied stimulus have been about three times higher than the estimated measurement uncertainty. Actually, temperature rising means increased thermal agitation, hence increased Δr2(τ) of “semi-static” scatterers. According to Eq. (1), an increased Δr2(τ) is expected to result in a τ0.5 reduction. Indeed, Figs. 9 and 10 show a τ0.5 reduction as a consequence of the gentle TTT treatment. The incomplete baseline recovery could be due to the temporary and/or permanently changes in protein conformations during TTT reported by Mainster and Reichel56 and/or layered structure developing with a static layer. The analysis of such phenomena can be probably easily performed by using the two-cells model reported in our previous articles.46

Actually, the τ0.5 reduction agrees with both an increased thermal motion and a physiologically increased blood flow aimed at dissipating the excess heat due to the TTT treatment. As reported in Sec. 2.4, the explored retinal region was chosen far away from visible vessels. Nevertheless, temperature-induced vasodynamics of choroids is known to be complex mechanism.57 Indeed, in 1991, a human study from Parver58 reported that ChBF increases as a consequence of the fundus heating, whereas a more recent human study from Nagaoka and Yoshida59 in 2004 reported that ChBF decreases upon heating of the eye. Supposing that ChBF decreases upon heating of the eye, the observed τ0.5 reduction is therefore reasonably due to an increased thermal motion.

Actually, the small ChBF reduction reported by Nagaoka and Yoshida59 was due to both reduced RBC velocity and reduced blood volume almost in equal measure. According to Eq. (1), reduced RBC velocity is expected to results in a Δr2(τ) reduction, hence increasing τ0.5. On the contrary, reduced blood volume is expected to result in a reduction in the absorption coefficient, hence resulting in an increased mean path length s and thus leading to a reduced τ0.5 (see Sec. 4.4). Therefore, such thermally induced ChBF reduction is expected to give rise to two phenomena that roughly compensate each other. As a result, the τ0.5 and Δτ0.5 reductions shown in Figs. 10 and 11 reasonably confirm the ability to detect variations of the fundus temperature.

4.4.

Discussion on the Detection of Nano- and Micro-aggregates

Nano- and micro-aggregates carried by the blood flow are expected to change the fundus optical properties (μa and μs), thus potentially changing P(s), q2 and, ls. On the contrary, being the aggregates carried by the blood flow, no change is expected with respect to the Δr2(τ) relative to the blood flow itself (“dynamic” scatterers).

As shown in Figs. 12 and 13, DCS is able to detect the Au-NPs transit and the subsequent physiological recovery. The obtained results are in accordance with the Au-NPs optical properties reported in a theoretical study by Jain et al.60 According to Jain et al.,60 the injected Au-NPs have μs/μa1, therefore the probability that photons have to be scattered by Au-NPs is extremely low. Moreover, Au-NPs have higher absorption compared to RBCs.60 Hence, also considering the small injected volume (Table 2), Au-NPs injection roughly affects P(s) only. Since the absorption coefficient μa describes the mean distance la=1/μa traveled by a photon before it is statistically absorbed, the higher the absorption coefficient and the lower the probability of long-path photons to be detected. Therefore, roughly supposing q2, ls and Δr2(τ) to be the same all over the volume under test, from Eq. (1) it is easy to notice that a reduction in the path length s results in a reduction of the s/ls ratio, hence resulting in an increase of the characteristic decay time τ0.5.

In agreement with the theoretical expectations, Figs. 12 and 13 show an abrupt increase in the τ0.5 as a consequence of the NPs injection. Then, the τ0.5 gradually returns to baseline during the physiological recovery.

Actually, both the effects due to: (a) the saline solution optical properties and, (b) the potential transient changes in blood pressure during the injection may have contributed to the τ0.5 variations. However, physiological saline solution has optical properties similar to pure water,61 thus negligible absorption compared to blood. As a result, physiological saline solution is expected to result in a (tiny) μa reduction, thus to result in a (tiny) increase in the path length s hence, to result in a (tiny) reduction of the characteristic decay time τ0.5.

On the other side, accordingly to the discussion and the references reported in Sec. 4.2, i.e., Kiel et al.,4649 there is clearer evidence of autoregulation in the rabbit’s choroid. The performed NPs injection had a mean flow of about 0.02ml/s (see Table 2), thus it is reasonable to suppose it to lead to limited changes in blood pressure, hence leading to little or no effect on ChBF and volume. Moreover, it is reasonable to suppose the recovery time due to changes in blood pressure to be faster than the 45s shown in Figs. 13 and 14.46 Therefore, the results shown in Figs. 1214 are reasonably due to nano- and micro-aggregates, thus confirming the ability to detect nano- and micro-aggregates.

4.5.

Discussion on the Data Analysis

The question of which data analysis method is more appropriate for a specific task is quite difficult to address.

As previously discussed, the proposed simplified data analysis method is not intended to replace the previous specialized data analysis methods46 and new different data analysis methods may provide better performances and/or even simpler analysis. Actually, specific theoretical models allow obtaining more information and may be necessary for some particular applications. Nevertheless, to fully access the information offered by the data analysis methods so far proposed in the literature,4,6 additional data such as μa, μs and, the α and β probabilities4 are required.

Regardless of the specific clinical situation, the more suitable data analysis method is probably the simpler one able to provide a measurement uncertainty lower or equal to the target measurement uncertainty—measurement uncertainty specified as an upper limit and decided on the basis of the intended use of measurement results.62 Unfortunately, as discussed in Sec. 4.1, measurement uncertainty depends on both “intrinsic” and “extrinsic” factors, thus resulting in extremely difficult to estimate. Nevertheless, the combined standard measurement uncertainty is reasonably greater than the individual standard measurement uncertainties associated with the input quantities in the measurement model,63 thus some comparisons can be made based on the data available for the analysis—the input quantities.

The simplified analytical distribution form (SADF) proposed in our first article,4 supposes single-path in order to model the complicated photon path distribution in ocular fundus. In order to do so, it is necessary to know the thickness and the optical properties of the investigated ocular fundus layers. The higher the uncertainties in thickness and/or optical properties, the higher the uncertainty relative to the single-path SADF model. Therefore, the single-path SADF data analysis method can be useful when the thickness and the optical properties are known, whereas resulting less applicable when such quantities are less known. As an example, the coefficients used in the previous SADF4 were relative to pigmented rabbits ocular fundus, thus such model can not be directly applied for the analysis of albino rabbits.

The second data analysis method6 performs the inversion of the Laplace equation by using the CONTIN software, hence reasonably allowing to highly reduce the issues relative to the uncertainties in thickness and/or optical properties. However, CONTIN software is time-consuming, thus resulting less appealing for real-time analysis. Moreover, the severe nonorthogonality of exponentials leads to an ill-conditioned problem, hence the inversion of the Laplace integral suffers from the following problems:64 (a) distortion in the g2(τ) function due to nonideal experimental conditions such as baseline errors and nonuniform laser beam profile, (b) noise that do not exhibit the nature of exponential decay, and (c) limited delay-times range of correlators. As a result, the data analysis method based on the inversion of the Laplace integral requires accurate system design in order to avoid distortion in the g2(τ) function and practically results less appealing for real-time analysis or the analysis of noisy datasets.

The proposed simplified data analysis methods—Eqs. (2) and (4), τ0.5 and Δτ0.5—offer extremely easy interpretation of the experimental data and allow fluent implementation of real-time analysis. As an example, this is a clear advantage for all applications aimed at the definition of an end-point. Moreover, they neither relay on the knowledge of anatomical data nor perform the inversion of the Laplace integral, hence realistically resulting less sensitive to both (a) uncertainties in the thickness and the optical properties of the investigated ocular fundus and (b) nonideal experimental conditions and noises.

Actually, according to the reported results the τ0.5 analysis seems to be more sensitive to inter- and intra-individual variability than the Δτ0.5 analysis. As a matter of fact, the τBASE values reported in Figs. 4, 7, 10, and 13 range from 20 to 100μs. On the contrary, the Δτ0.5 analysis seems to be robust to inter- and intra-individual variability. Indeed, the Δτ0.5 variations recorded as a function of the applied stimulus have been always greater than the measurement uncertainty, thus potentially allowing to quantify the magnitude of each fundus variation—ChBF, temperature and nano- and micro-particles.

4.6.

Comparison with Other Measurement Techniques

As previously stated, DCS and Laser Doppler systems are based on the same physical principle and offer the advantage to provide noninvasive measurements of blood flow. However, Laser Doppler systems are based on confocal configurations, thus the volume probed by the detected photons is accordingly small. Moreover, single photon counting approach of DCS offers better performance in terms of sensitivity, hence allowing to better investigate the feeble signal arising from multiple-scattering.

Among ancillary tests in ophthalmic practice, OCT is probably the most commonly used. The OCT is a noncontact and noninvasive imaging technique widely used for human eye imaging.65 The use of OCT in ophthalmology is not limited to a “static” analysis. As an example, when OCT is combined with Doppler analysis, it can be used to measure retinal blood flow,66 and optical microangiography (OMAG) is capable of generating 3D dynamic perfusion images of tissue microcirculation.67 Joint spectral and time domain optical coherence tomography (joint STdOCT) has been shown capable of three-dimensional quantitative imaging of retinal and ChBF,68 and D-OMAG used in conjunction with and ultrahigh sensitive OMAG (UHS-OMAG) allows to obtain simultaneous 3D angiography and quantitative retinal blood flow measurement.69

Moreover, OCT can be used to access TTT treatments outcome, i.e., as in Refs. 70 and 71. However, there is a latency in tissue denaturation after the laser is stopped55 and this is probably one of the reasons why, to the best of our knowledge, there were no study reports about the use of OCT for determining an endpoint for TTT treatments.

On the contrary, the use of OCT for monitoring of NPs in biological tissues has been reported.72,73

However, OCT systems are extremely complex systems based on a low coherence interferometer. As an example, in Time domain OCT the sample is scanned by changing the pathlength in the reference arm and the position of the measurement beam on the sample, respectively. Therefore: (a) the pathlength in the reference arm has to be scanned rapidly and precisely, (b) the amplitude of such pathlength variation must be large enough to cover the desired axial imaging range—the depth of volume under test—and (c) the position of the measurement beam has to be moved rapidly and precisely all over the volume under test ensuring appropriate focus, thus requiring complex scanning mechanisms. Then, the OCT image is composed by analyzing all the signals recorded for each reference arm pathlength and measurement arm position. Frequency domain OCT allows to avoid to change the pathlength in the reference arm, but it requires the use of a spectrometer for the analysis of the collected signal. Therefore, OCT systems require expensive optical and electronic components and complex software, hence resulting expensive systems.

On the contrary, in DCS systems, there are neither reference arms nor the scanning mechanisms and the dimension and the depth of the volume under test is simply determined by the distance between the illumination spot and the collection point. As a result, the integration of DCS system with OMs is easy and less expensive. As a matter of fact, the proposed DCS system has been integrated by simply using a beam splitter (Sec. 2.2) and the DCS system cost—excluding the OM—is about 10,000 dollars.

4.7.

Conclusions

From the discussion above, it is clear that the definition of the achievable metrological performances, i.e., responsivity and limit of detection, depends on several “intrinsic” and “extrinsic” factors. Therefore, there are currently no guarantees that the developed measuring system can definitely contribute in understanding and/or improving the current clinical issues and much more work will be needed before the proposed measuring system will reach clinical maturity. However, the reported results suggest that important diagnostic information can be obtained from DCS measurements of the ocular fundus.

The ability to detect ChBF variations can be useful both in fundamental research and practical clinical applications. Indeed, even though the ability to detect ChBF variations has been tested by increasing IOP, the system capability to reveal ChBF variations is reasonably not limited to the analysis of perturbations induced by pressure variations.

The ability to detect variations in the fundus temperature can be useful in managing TTT, PDT, and DEP, thus allowing to avoid or reduce treatment complications.

The ability to detect nano- and micro-aggregate could allow both diagnoses when the presence of such aggregates is related to specific diseases, i.e., diseases related to the environmental pollution and verifying for instance the impact of NPs injection in nanomedicine. Moreover, the state of aggregation of the NPs affects their optical properties, hence in general affecting P(s), q2, and ls. As a result, DCS also theoretically allows investigation of variations in the state of aggregation of the flowing NPs. However, the proposed data analysis do not allow to differentiate between g1(τ) variations due to variations in NPs concentration or state of aggregation. As a result, the NPs state of aggregation can be investigated only if the NPs concentration inside the sample is known or it does not change among the various measurements.

Finally, Au-NPs are not only a suitable test to investigate the ability to detect nano- and micro-aggregates in blood circulation, but also a good option for DPE. According to Jain et al.,60 the Au-NPs shape and dimension can be tailored in order to obtain the desired absorption and scattering spectra, thus resulting in a suitable dye for DEP. Nevertheless, DCS is theoretically able to detect any dye that affects any of P(s), q2, and ls. Therefore, no restriction is theoretically imposed on dye selection for DEP.

Acknowledgments

The authors wish to thank Roberta Salvatori and Marco Pellegrini for the help provided during in vivo activities.

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© 2013 Society of Photo-Optical Instrumentation Engineers (SPIE) 0091-3286/2013/$25.00 © 2013 SPIE
Stefano Cattini, Giovanni Staurenghi M.D., Antonietta M. Gatti, and Luigi Rovati "In vivo diffuse correlation spectroscopy investigation of the ocular fundus," Journal of Biomedical Optics 18(5), 057001 (2 May 2013). https://doi.org/10.1117/1.JBO.18.5.057001
Published: 2 May 2013
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KEYWORDS
Blood circulation

In vivo imaging

Data analysis

Spectroscopy

Temperature metrology

Laser therapeutics

Optical coherence tomography

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