Diagnostics of retinal pathologies by optical coherence tomography images using artificial intelligence tools

V. V. Neroev, A. A. Bragin, O. V. Zaytseva
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Abstract

The importance of early detection and monitoring of retinal diseases determines the relevance of the study devoted to the diagnosis of retinal pathologies by OCT images using artificial intelligence (AI) tools.The purpose is to develop algorithms for diagnosing retinal pathologies from OCT images by machine learning methods. Material and methods . The study used a dataset (20,000 eyes), publicly available on the Internet, which contains OCT images of healthy retina (5,000 eyes) and retina affected by three different pathologies (choroid neovascularization, macular edema, multiple drusen, 15,000 eyes). The retinal pathology recognition system is based on a trained neural network VGG16 (developed by a visual geometry group of Oxford University). Results . The main result of the research is the development of an algorithm, implemented on Python, for the diagnosis of retinal diseases from OCT images based on convolutional neural network AI tool. The sensitivity and selectiveness of the neural network model during the diagnosis of retinal diseases were 97 and 98%, respectively. Conclusion . AI methods used in the retinal pathology automatic detection system developed at the Helmholtz National Medical Research Center of Eye Diseases as part of automated medical decision-making system have been shown to have high potential and efficiency. In the future, this service can be used to improve the effectiveness of early diagnosis and monitoring of retinal diseases in conditions of reduced availability of primary ophthalmological care in some of the territories of the Russian Federation, including that provided at the pre-doctoral stage.
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利用人工智能工具通过光学相干断层扫描图像诊断视网膜病变
早期发现和监测视网膜疾病的重要性决定了利用人工智能(AI)工具通过OCT图像诊断视网膜病变的研究的相关性。目的是通过机器学习方法开发从OCT图像诊断视网膜病变的算法。材料和方法。该研究使用了一个在互联网上公开的数据集(20,000只眼睛),其中包含健康视网膜(5,000只眼睛)和受三种不同病理(脉络膜新生血管、黄斑水肿、多发性水肿、15,000只眼睛)影响的视网膜的OCT图像。视网膜病理识别系统基于经过训练的神经网络VGG16(由牛津大学视觉几何小组开发)。结果。该研究的主要成果是开发了一种基于卷积神经网络人工智能工具的OCT图像视网膜疾病诊断算法,该算法在Python上实现。神经网络模型在视网膜疾病诊断中的灵敏度和选择性分别为97%和98%。结论。作为医疗自动化决策系统的一部分,赫尔姆霍兹国立眼科医学研究中心开发的视网膜病理自动检测系统中使用的人工智能方法具有很高的潜力和效率。今后,这项服务可用于提高在俄罗斯联邦一些领土上初级眼科护理减少的情况下早期诊断和监测视网膜疾病的效力,包括在博士前阶段提供的服务。
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来源期刊
CiteScore
0.50
自引率
0.00%
发文量
107
审稿时长
16 weeks
期刊最新文献
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