撕裂伤评估:光学相干断层成像中视网膜疾病分类的高级分割和分类框架。

IF 1.4 3区 物理与天体物理 Q3 OPTICS
Pavithra Mani, Neelaveni Ramachandran, Sweety Jose Paul, Prasanna Venkatesh Ramesh
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引用次数: 0

摘要

影响视网膜的疾病对人类视力构成相当大的风险,包括衰老、糖尿病、高血压、肥胖、眼外伤和吸烟在内的一系列因素在当代加剧了这一问题。光学相干断层扫描(OCT)是一种快速发展的成像方式,能够识别血管、眼部和中枢神经系统异常的早期迹象。OCT可以通过图像分类来诊断视网膜疾病,但量化撕裂面积需要进行图像分割。为了克服这一障碍,我们开发了一种创新的深度学习框架,可以同时执行这两项任务。该框架采用并行掩模引导卷积神经网络(PM-CNN)对OCT b扫描进行分类,并使用PM-CNN输出的分级激活图(GAM - V-Net)帮助V-Net网络(GAM - V-Net)分割视网膜撕裂。从辅助分割作业中获得PM-CNN的引导掩码。使用组合数据集评估双重框架的有效性,该数据集包括四个可公开访问的数据集以及一个额外的实时数据集。该汇编包括11类视网膜疾病。这四个公开可用的数据集为双重框架的验证提供了坚实的基础,而实时数据集使框架的性能能够在更广泛的视网膜疾病类别上进行评估。分割Dice系数为78.33±0.15%,分类准确率为99.10±0.10%。该模型在不同数据集上有效分割视网膜液体和识别视网膜撕裂伤的能力很好地证明了其泛化性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Laceration assessment: advanced segmentation and classification framework for retinal disease categorization in optical coherence tomography images.

Disorders affecting the retina pose a considerable risk to human vision, with an array of factors including aging, diabetes, hypertension, obesity, ocular trauma, and tobacco use exacerbating this issue in contemporary times. Optical coherence tomography (OCT) is a rapidly developing imaging modality that is capable of identifying early signs of vascular, ocular, and central nervous system abnormalities. OCT can diagnose retinal diseases through image classification, but quantifying the laceration area requires image segmentation. To overcome this obstacle, we have developed an innovative deep learning framework that can perform both tasks simultaneously. The suggested framework employs a parallel mask-guided convolutional neural network (PM-CNN) for the classification of OCT B-scans and a grade activation map (GAM) output from the PM-CNN to help a V-Net network (GAM V-Net) to segment retinal lacerations. The guiding mask for the PM-CNN is obtained from the auxiliary segmentation job. The effectiveness of the dual framework was evaluated using a combined dataset that encompassed four publicly accessible datasets along with an additional real-time dataset. This compilation included 11 categories of retinal diseases. The four publicly available datasets provided a robust foundation for the validation of the dual framework, while the real-time dataset enabled the framework's performance to be assessed on a broader range of retinal disease categories. The segmentation Dice coefficient was 78.33±0.15%, while the classification accuracy was 99.10±0.10%. The model's ability to effectively segment retinal fluids and identify retinal lacerations on a different dataset was an excellent demonstration of its generalizability.

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来源期刊
CiteScore
3.40
自引率
10.50%
发文量
417
审稿时长
3 months
期刊介绍: The Journal of the Optical Society of America A (JOSA A) is devoted to developments in any field of classical optics, image science, and vision. JOSA A includes original peer-reviewed papers on such topics as: * Atmospheric optics * Clinical vision * Coherence and Statistical Optics * Color * Diffraction and gratings * Image processing * Machine vision * Physiological optics * Polarization * Scattering * Signal processing * Thin films * Visual optics Also: j opt soc am a.
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