OCT黄斑图像分割算法分析老年性黄斑变性患者的分割结果

IF 0.2 Q4 MEDICINE, GENERAL & INTERNAL Bulletin of Russian State Medical University Pub Date : 2022-12-01 DOI:10.24075/brsmu.2022.062
RR Ibragimova, II Gilmanov, EA Lopukhova, I. Lakman, AR Bilyalov, T. Mukhamadeev, RV Kutluyarov, GM Idrisova
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引用次数: 1

摘要

年龄相关性黄斑变性(AMD)是超过工作年龄的人视力丧失和视力减退的主要原因之一。光学相干断层扫描(OCT)的结果对疾病的诊断至关重要。开发推荐系统来分析OCT图像将减少处理视觉数据的时间,减少医生工作时的错误概率。本研究的目的是开发一种分割算法来分析黄斑病变患者的黄斑OCT结果。它可以根据发现的病理形式提供AMD阶段的正确预测。使用Python编程语言使用Pytorch和TensorFlow库开发了一个程序。通过51例早期、中期、晚期AMD患者的OCT黄斑图像评估其质量。提出了一种基于卷积神经网络的OCT图像分割算法。选择UNet网络作为高精度神经网络的体系结构。神经网络在125名患者(197只眼睛)的黄斑OCT图像上进行训练。作者的算法在OCT图像上显示了98.1%的正确分割区域,这是诊断和确定AMD分期最重要的。AMD分期分级的加权敏感性和特异性分别为83.8%和84.9%。所开发的算法有望作为一种推荐系统,实现基于数据的AMD分类,从而促进对治疗策略的决策。
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Algorithm of segmentation of OCT macular images to analyze the results in patients with age-related macular degeneration
Age-related macular degeneration (AMD) is one of the main causes of loss of sight and hypovision in people over working age. Results of optical coherence tomography (OCT) are essential for diagnostics of the disease. Developing the recommendation system to analyze OCT images will reduce the time to process visual data and decrease the probability of errors while working as a doctor. The purpose of the study was to develop an algorithm of segmentation to analyze the results of macular OCT in patients with AMD. It allows to provide a correct prediction of an AMD stage based on the form of discovered pathologies. A program has been developed in the Python programming language using the Pytorch and TensorFlow libraries. Its quality was estimated using OCT macular images of 51 patients with early, intermediate, late AMD. A segmentation algorithm of OCT images was developed based on convolutional neural network. UNet network was selected as architecture of high-accuracy neural net. The neural net is trained on macular OCT images of 125 patients (197 eyes). The author algorithm displayed 98.1% of properly segmented areas on OCT images, which are the most essential for diagnostics and determination of an AMD stage. Weighted sensitivity and specificity of AMD stage classifier amounted to 83.8% and 84.9% respectively. The developed algorithm is promising as a recommendation system that implements the AMD classification based on data that promote taking decisions regarding the treatment strategy.
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来源期刊
Bulletin of Russian State Medical University
Bulletin of Russian State Medical University MEDICINE, GENERAL & INTERNAL-
CiteScore
0.80
自引率
0.00%
发文量
59
期刊介绍: Bulletin of Russian State Medical University (Bulletin of RSMU, ISSN Print 2500–1094, ISSN Online 2542–1204) is a peer-reviewed medical journal of Pirogov Russian National Research Medical University (Moscow, Russia). The original language of the journal is Russian (Vestnik Rossiyskogo Gosudarstvennogo Meditsinskogo Universiteta, Vestnik RGMU, ISSN Print 2070–7320, ISSN Online 2070–7339). Founded in 1994, it is issued once every two months publishing articles on clinical medicine and medical and biological sciences, first of all oncology, neurobiology, allergy and immunology, medical genetics, medical microbiology and infectious diseases. Every issue is thematic. Deadlines for manuscript submission are announced in advance. The number of publications on topics in spite of the issue topic is limited. The journal accepts only original articles submitted by their authors, including articles that present methods and techniques, clinical cases and opinions. Authors must guarantee that their work has not been previously published elsewhere in whole or in part and in other languages and is not under consideration by another scientific journal. The journal publishes only one review per issue; the review is ordered by the editors.
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