Paper
26 March 2007 Solid component evaluation in mixed ground glass nodules
Author Affiliations +
Abstract
Multi-Slice Computed Tomography (MSCT) imaging of the lungs allow for detection and follow-up of very small lesions including solid and ground glass nodules (GGNs). However relatively few computer-based methods have been implemented for GGN segmentation. GGNs can be divided into pure GGNs and mixed GGNs, which contain both nonsolid and solid components (SC). This latter category is especially of interest since some studies indicate a higher likelihood of malignancy in GGNs with SC. Due to their characteristically slow growth rate, GGNs are typically monitored with multiple follow-up scans, making measurement of the volume of both solid and non-solid component especially desirable. We have developed an automated method to estimate the SC percentage within a segmented GGN. First, the SC algorithm uses a novel method to segment out the solid structures, while excluding any vessels passing near or through the nodule. A gradient distribution analysis around solid structures validates the presence or absence of SC. We tested 50 GGNs, split between three groups: 15 GGNs with SC, 15 GGNs with a solid nodule added to simulate SC, and 20 GGNs without SC. With three defined satisfaction levels for the segmentation (A: succeed, B: acceptable, C: failed), the first group resulted in 60% with score A, 40% with score B, 0% with score C. The second group resulted in 66.7% with score A and 33.3% with score B. In testing the first and 3rd groups, the algorithm correctly detected SC in all cases where it was present (sensitivity of 100%) and correctly determined absence of SC in 15 out of 20 cases (specificity 75%).
© (2007) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Benjamin L. Odry, Jing Huo, Li Zhang, Carol L. Novak, and David P. Naidich M.D. "Solid component evaluation in mixed ground glass nodules", Proc. SPIE 6512, Medical Imaging 2007: Image Processing, 65120R (26 March 2007); https://doi.org/10.1117/12.709892
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Cited by 2 scholarly publications.
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KEYWORDS
Solids

Image segmentation

Glasses

3D modeling

Lung

Computed tomography

Algorithm development

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