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1.IntroductionDermal fibroblasts are a dynamic population of cells that play an important role in extracellular matrix synthesis and remodeling. Their contractile properties influence the morphology and the mechanical properties of the skin. In skin wound healing, fibroblasts exert mechanical forces within their surrounding extracellular matrix that lead, for instance, to wound contraction.1 In this case, the applied forces are large enough to cause scars and even major body deformation if their contraction persists after wound closure.2 Dermal fibroblast contraction may thus participate in skin aging that is characterized by the formation of wrinkles. Bioengineered dermal skin equivalent3, 4 made up of fibroblasts in a collagen matrix offer a means to modulate fibroblast contraction in a three-dimensional (3-D) environment and thus to investigate molecules that could act as potent anti-aging ingredients. The characterization of the 3-D remodeling of the extracellular matrix induced by fibroblast contraction or other processes in skin equivalents requires the development of in situ imaging methodologies. Contraction assays have been reported that aimed at assessing the effect of biochemical and mechanical parameters on matrix remodeling.2 Coupled with 2-D mechanics analysis based on differential interference contrast images of collagen matrix remodeling around fibroblasts,5 these methods can provide information about the contraction forces applied by fibroblasts to the surrounding matrix and could be used as a tool to investigate the effects of different molecules on the fibroblast cells. However, these conventional imaging methods do not enable 3-D visualization of matrix remodeling in thick samples. Confocal reflection microscopy6 and optical coherence tomography (OCT)7 can provide noninvasive 3-D visualization of bioengineered dermal skin equivalents but lack specificity, as their contrast mechanism relies on spatial variations of refractive indices. Three-dimensional interactions between cells and collagen fibrils cannot therefore be studied using this type of contrast mechanism. For that, exogenous fluorescent markers or fluorescent fusion proteins are used to specifically detect the cells or to mark their surrounding environment. In this context, it is crucial to develop highly specific 3-D in situ imaging methodologies that enable simultaneous monitoring of the 3-D collagen network and of the fibroblast distribution in unstained samples. Multiphoton microscopy offers this 3-D multimodal imaging capability, as it provides structural and biochemical information about unstained samples that is not accessible using other noninvasive methods. In the present study, we use multiphoton microscopy to evaluate the effect of fibroblast contraction inhibitors in a fibroblast-populated fibrillar collagen gel. Multiphoton microscopy indeed presents unique advantages for the visualization of unstained collagenous tissues. It provides intrinsic 3-D resolution that is robust in scattering biological tissues such as collagen matrices and improves depth imaging with submicrometer resolution. Most importantly, this technique presents several modes of contrast that enable simultaneous visualization of different tissue components. The main multiphoton modalities are two-photon excited fluorescence (2PEF) and second-harmonic generation (SHG).8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18 They can be excited by the same laser source and detected separately by taking advantage of their spectral difference: 2PEF signals are indeed red-shifted compared to SHG signals that appear at exactly twice the excitation frequency (half the excitation wavelength). Moreover, they can be used in unstained intact tissues by taking advantage of endogenous sources of contrasts. 2PEF signals are emitted by endogenous chromophores such as NAD(P)H, flavins, keratin, or elastin.11 They can be exploited for the visualization of fibroblasts by taking advantage of NAD(P)H fluorescence on excitation around . SHG signals are specific for dense and ordered macromolecular structures such as fibrillar collagen and can be used to image the collagenous network in 3-D matrices.10, 19, 20, 21, 22, 23, 24 Simultaneous recording of 2PEF signals from cellular chromophores and SHG signals from fibrillar collagen therefore enables in situ multimodal 3-D imaging of engineered tissues.10, 25 The aim of this study is to implement a sensitive and minimally invasive 3-D technique for monitoring contraction assays in fibroblast-populated collagen gels. For that purpose, we combine SHG and 2PEF microscopies to visualize collagen remodeling around fibroblasts in unstained samples, and we develop a quantitative analysis of our 3-D multimodal images to measure the collagen density around fibroblasts. We apply this technique to Y-27632, a RhoA-kinase inhibitor,26 which is known to impede the accumulation of collagen fibrils around fibroblasts, and we precisely characterize its effect in a 3-D environment. Indeed, the contraction properties of fibroblasts are regulated principally by the activation of the contractile proteins myosin and actin. For contraction to occur, myosin light chain kinase (MLC kinase) must phosphorylate the light chain of myosin, enabling the molecular interaction of myosin with actin. The process of relaxation is initiated by myosin phosphatase, whose activation is down-regulated by RhoA-kinase. Y-27632 is known to block the RhoA-kinase activity, so that the myosin phosphatase is activated and relaxation occurs.6, 27, 28 In the following, we first introduce our multiphoton setup and the protocols used for modulating fibroblast contraction in dermal substitutes. We then present the experimental results and the quantitative analysis of the multiphoton images to assess fibroblast contraction efficiency. We then draw conclusions about the sensitivity and reliability of this new methodology. 2.Materials and Methods2.1.Sample PreparationCollagen solutions with dermal normal human fibroblasts were prepared as previously described.3, 4 Briefly, MEM , fetal calf serum, MEM, NaOH , collagen type I and fibroblast suspension were successively added in centrifuge tubes in the presence or absence of Y-27632. These collagen solutions ( at final concentration and fibroblasts) were seeded in individual wells of a 12-well culture dish. The solutions were incubated for in a cell culture medium ( MEM with of fetal calf serum) at and 5% . Fibrillar gels were obtained after the first two hours through matrix polymerization and fibrils formation, and they attached to the well plate walls. They were kept attached to the walls during the incubation period so that this mechanical constraint impeded any matrix contraction before . At , contraction of the collagenous lattices was induced by mechanical detachment of the gel from the well plate walls [see the schematized assay in Fig. 1 ]. Two samples per condition were studied at each of three different times. Two control samples and two treated samples were imaged immediately after detachment. The other samples were maintained in the incubator in the same conditions as before ( , 5% ). After , two other control samples and two other treated samples were imaged. At the same time, the culture medium of the remaining treated samples with Y-27632 was removed and replaced by a control medium without inhibitor. Last, after , the last two control samples and two treated samples were imaged. 2.2.Multiphoton SetupMultiphoton imaging was performed using a custom-built upright laser scanning microscope, as previously described.16, 17, 18 SHG and 2PEF were simultaneously excited by a femtosecond titanium-sapphire laser adjusted to , with typically power at the sample (Tsunami, Spectra-Physics). These signals were dispatched to two photon-counting epidetection nondescanned channels using a dichroic mirror (390DRLP, Omega Filters, Brattleboro, Vermont) and appropriate spectral filters: GG400 and E700SP-2P (Chroma, Rockingham, Vermont) for the 2PEF channel; FI01-355/40 (Semrock, Rochester, New York) and BG39 for the SHG channel. We used circular polarization in order to minimize orientation effects in the image plane. Samples were maintained between two cover slides and imaged without any staining by use of a , objective lens (Olympus, Japan) with approximately (axial) resolutions near the sample surface. No photodamage was observed in these experimental conditions. We recorded typically four -stacks in every sample, with -step and pixel size [see Fig. 1]. The pixel rate was , and the acquisition time was per image . Two-dimensional images were combined using ImageJ (W. Rasband, National Institutes of Health), and 3-D reconstructions were performed with Amira (Mercury Computed Systems). 2.3.Quantitative Analysis of Collagen Fibrils RemodelingSHG and 2PEF images were combined using ImageJ to obtain multimodal -stacks and to assess collagen remodeling around fibroblasts. Fibroblasts were first retrieved in combined SHG/2PEF -stacks, and 3-D regions of interest (ROIs) of were defined around the fibroblast body [see Figs. 2 and 2 ]. These ROIs were then processed using macros developed with ImageJ to obtain the volume of the fibroblast body from the 2PEF image -stack and the volume occupied by the collagen fibrillar matrix from the SHG image -stack. For that purpose, we used the following procedure derived from the method we developed for fibrosis scoring16, 17 to remove the pixels with nonsignificant signal and to enhance the fibrils and fibroblasts contrasts. We performed a Gaussian blur with sigma radius [see Fig. 2], and we applied a threshold equal to the maximum background level to obtain a mask [see Fig. 2]. The SHG mask was moreover multiplied by the inverted 2PEF mask [see Fig. 2] to remove SHG signals detected within the fibroblast body because of the moderate axial resolution [see the corrected SHG mask in Fig. 2]. The SHG and 2PEF raw images were then multiplied by the SHG and 2PEF masks to obtain corrected images [see Fig. 2]. The fibroblast body volume was obtained as the number of voxels of the 2PEF mask. The collagen volume was obtained as the number of voxels of the corrected SHG mask. We then expressed the collagen fibrils density around fibroblast as the ratio of the collagen volume to the difference between the total ROI volume and the fibroblast body volume. This normalization aimed at comparing the collagen fibrils density around fibroblasts with different sizes. 10.1117/1.3503411.12.4.Statistical AnalysisWe analyzed typically 10 fibroblasts (from two different samples) per experimental conditions. To compare control and inhibitor treated samples, we first performed a descriptive analysis using box-and-whiskers plots (see Fig. 3 ). In order to choose the appropriate test for the analysis of the data, we first verified the hypothesis of normality (histograms, Shapiro-Wilk algorithm) and of homogeneity of variances (Bartlett’s test) that are required for most of the statistical tests. These hypotheses were rejected because some of the data contain outliers (see Fig. 3) and thus deviate from normality. We then transformed the data using logarithmic transformation and found that the normality hypothesis was now accepted for all the samples, but not the hypothesis of homogeneity of variances. Based on these considerations, we chose to use the R-estimators test,29 which does not require a normal distribu-tion of the data or the homogeneity of variances. The analyses were performed using SAS software (SAS Institute Inc., Cary, NC). The collagen fibrils density around fibroblasts was expressed as the mean confidence intervals of the mean. 3.Results and DiscussionContraction assays treated or not treated with Y-27632, a known fibroblast contraction inhibitor, were conducted using multiphoton microscopy. Our goal is to develop a sensitive and minimally invasive methodology that is able to evaluate the effects of fibroblast contraction inhibitors in a 3-D environment. For that purpose, combined SHG images from fibrillar collagen and 2PEF images from fibroblasts were acquired upon excitation. Typical results are displayed in Figs. 4 and 5 and show the fibroblasts embedded in the fibrillar collagen matrix. Multiphoton microscopy provides unique advantages here. The 3-D and multimodal capabilities (see Fig. 5 and video linked to Fig. 2) enable the visualization of the architecture of the collagenous network around the fibroblasts with high contrast. Moreover, no sample preparation is required, which permits in situ imaging of intact matrices and limits any artifact due to fixation or staining. At , before matrix release, we observed that both control and inhibitor-treated samples exhibited the same characteristic features: the collagen fibrils were straight, and they showed similar densities over all the samples (around fibroblasts or far from fibroblasts). After of free contraction, the control and treated samples displayed different matrix organization. In the control samples, we observed an increase of the collagen fibrils density that was larger around the fibroblast body. This observation at the submicrometer scale was consistent with the global matrix contraction that was observed at the macroscopic scale [see Fig. 1]. We attributed this retraction to the rearrangement of existing collagen fibrils, presumably through the application of mechanical forces by fibroblasts. The inhibitor treated samples exhibited no remodeling of the fibrillar collagen matrix, no increase of the fibrils density around fibroblasts, and, consistently, no global matrix contraction [see Fig. 1]. This indicated that Y-27632 efficiently blocked the fibroblast-induced matrix contraction. The changes in collagen density around fibroblasts between treated and control samples could also be observed in Fig. 5, which shows 3-D reconstructed images from the multimodal -stacks at . In addition to changes in their density, collagen fibrils also experienced changes in their orientation around the fibroblasts body. Thus, the fibrils became aligned more perpendicular to the fibroblast body (radial alignment) in the treated sample, whereas they were randomly distributed around fibroblasts in the inhibitor-treated samples, in agreement with previous reports.6 This type of randomly organized fibrils around fibroblasts was also found in all the samples at . To check whether the inhibitor effects were reversible, the inhibitor was removed from the culture media at , and the samples were kept within the incubator for another . As shown in Fig. 4, these samples exhibited strong matrix remodeling at , similar to the control samples. This was characterized by an increase of the collagen fibrils density over all the samples, by the presence of curled collagen fibrils, and, consistently, by global matrix contraction [see Fig. 1]. The level of alignment of the collagen fibrils around fibroblasts in these samples was similar to the one in the control samples at . This similar behavior of treated and control samples at indicated that the effect of the inhibitor was reversible. In order to more precisely evaluate the inhibitory effects of the RhoA-kinase, we performed a quantitative analysis of our data (see Sec. 2.4). For each sample, we selected 3-D regions of interest centered on the fibroblast body and developed an algorithm that calculated the collagen fibrils density around the fibroblast (see Fig. 2). This procedure allowed for comparison of collagen fibrils densities around fibroblasts with different sizes. The quantification results are shown in Fig. 6 as mean averaged values confidence intervals. We obtained no difference between the control and treated samples at , a notable difference at , and an increase of the collagen fibrils density around fibroblast with the contraction time in the control samples. To check whether these differences were significant, we performed a descriptive statistics of the data followed by an R-estimators test.29 The advantage of using this test compared to other statistical tests is that it can handle data deviating from normality. It requires neither a normal data distribution nor homogeneity of the variances. The results are shown in the Table 1 . This statistical analysis confirmed that there was no difference at between the control and treated samples and no difference between the treated samples at and , whereas there was a significant difference between the control and treated samples at , which confirmed that the inhibitor efficiently blocked the contraction. It also confirmed that the control samples exhibited a significant increase of their collagen fibrils densities with time ( between and , between and , and between and ). Moreover, we observed a significant increase of the collagen fibrils density in treated samples between and , which confirmed the reversibility effect of the inhibitor. We observed, however, a difference between the control and treated samples at that may be related to an adaptive reaction of fibroblasts during the blocking of their contraction by Y-27632. The fibroblasts may then exert stronger forces than the control fibroblasts when the inhibitor was removed and induce more obvious matrix remodeling. Table 1p -values obtained from R-estimators tests between the different samples. Significant differences in the collagen fibrils density around fibroblasts are observed between the samples with p -values smaller than 0.05, whereas there are no significant differences for the others.
Altogether, this study confirmed that Y-27632 inhibits the matrix contraction by fibroblasts and that this effect is reversible. The methodology we developed enabled precise quantization of this inhibitory effect and may be applied to any compound that modulates matrix remodeling by fibroblast. It illustrates the sensitivity and reproducibility of SHG microscopy, although this micrometer-scale technique is restricted to small regions of the sample (few hundreds of microns). Our results indirectly show that fibroblasts exert strong mechanical forces on the surrounding collagen matrix that lead to collagen remodeling and alignment around the cell body. This work does not, however, provide any measurement of the forces applied by the fibroblasts on the surrounding matrix. For that, traction force assays30 could be employed, but such mechanical measurements have been developed in a 2-D environment and require the use of exogenous markers for monitoring the deformations induced by the cells on the environment. It would be challenging to continuously monitor 3-D deformations of the matrix by SHG microscopy and to develop image processing to assess the 3-D positions and orientations of the collagen fibrils around fibroblasts by generalizing 2-D approaches.5, 6, 23 Such an approach, which is beyond the scope of this paper, would enable new insight into the biomechanics of unstained fibroblast-populated gels by use of SHG microscopy. 4.ConclusionIn summary, our study focused on the development of in situ imaging methodologies for the evaluation of molecules that could act as potent anti-aging ingredients by modulating the dermal fibroblasts contraction and remodeling the extracellular matrix. Multimodal multiphoton imaging along with quantitative analysis of the collagen fibrils density around fibroblast unambiguously evidenced the reversible anticontracting activity of the RhoA-kinase inhibitor Y-27632. These results demonstrate the relevance of multiphoton microscopy to visualize matrix remodeling induced by fibroblast contraction and to quantitatively evaluate the effect of active compounds that modulate the fibroblast contractile properties. A perspective is to implement dynamic monitoring of matrix contraction and to map the 3-D deformation of the collagen fibrils around fibroblasts. Last, this new methodology could be easily generalized to the evaluation of other active compounds, including contraction-enhancing compounds by use of suitable dermal substitutes. AcknowledgmentsWe acknowledge administrative support from Laure Lachapelle and Christelle Français and technical support from Xavier Solinas and Jean-Marc Sintès. We thank Thérèse Baldeweck, Charles Gomes, and Mathias Strupler for stimulating discussions. ReferencesJ. M. Sorrell and
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