Level-set method for image analysis of schlemm’s canal and trabecular meshwork

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Abstract

Purpose: To evaluate different segmentation methods in analyzing Schlemm’s canal (SC) and the trabecular meshwork (TM) in ultrasound biomicroscopy (UBM) images. Methods: Twenty-six healthy volunteers were recruited. The intraocular pressure (IOP) was measured while study subjects blew a trumpet. Images were obtained at different IOPs by 50-MHz UBM. ImageJ software and three segmentation methods—K-means, fuzzy C-means, and level set—were applied to segment the UBM images. The quanti-tative analysis of the TM-SC region was based on the segmentation results. The relative error and the interclass correlation coefficient (ICC) were used to quantify the accuracy and the repeatability of measurements. Pearson correlation analysis was conducted to evaluate the associations between the IOP and the TM and SC geometric measurements. Results: A total of 104 UBM images were obtained. Among them, 84 were adequately clear to be segmented. The level-set method results had a higher similarity to ImageJ results than the other two methods. The ICC values of the level-set method were 0.97, 0.95, 0.9, and 0.57, respectively. Pearson correlation coefficients for the IOP to the SC area, SC perimeter, SC length, and TM width were −0.91, −0.72, −0.66, and −0.61 (P < 0.0001), respectively. Conclusions: The level-set method showed better accuracy than the other two methods. Compared with manual methods, it can achieve similar precision, better repeatability, and greater efficiency. Therefore, the level-set method can be used for reliable UBM image segmentation. Translational Relevance: The level-set method can be used to analyze TM and SC region in UBM images semiautomatically.

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Wang, X., Zhai, Y., Liu, X., Zhu, W., & Gao, J. (2020). Level-set method for image analysis of schlemm’s canal and trabecular meshwork. Translational Vision Science and Technology, 9(10), 1–12. https://doi.org/10.1167/tvst.9.10.7

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