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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >RAG-FW: A Hybrid Convolutional Framework for the Automated Extraction of Retinal Lesions and Lesion-Influenced Grading of Human Retinal Pathology
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RAG-FW: A Hybrid Convolutional Framework for the Automated Extraction of Retinal Lesions and Lesion-Influenced Grading of Human Retinal Pathology

机译:RAG-FW:用于自动提取视网膜病变的混合卷积框架和病变影响人类视网膜病理学的分级

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摘要

The identification of retinal lesions plays a vital role in accurately classifying and grading retinopathy. Many researchers have presented studies on optical coherence tomography (OCT) based retinal image analysis over the past. However, to the best of our knowledge, there is no framework yet available that can extract retinal lesions from multi-vendor OCT scans and utilize them for the intuitive severity grading of the human retina. To cater this lack, we propose a deep retinal analysis and grading framework (RAG-FW). RAG-FW is a hybrid convolutional framework that extracts multiple retinal lesions from OCT scans and utilizes them for lesion-influenced grading of retinopathy as per the clinical standards. RAG-FW has been rigorously tested on 43,613 scans from five highly complex publicly available datasets, containing multi-vendor scans, where it achieved the mean intersection-over-union score of 0.8055 for extracting the retinal lesions and the accuracy of 98.70% for the correct severity grading of retinopathy.
机译:视网膜病变的鉴定在准确分类和评分视网膜病变中起着至关重要的作用。许多研究人员介绍了过去基于基于光学相干断层扫描(OCT)的视网膜图像分析的研究。然而,据我们所知,没有框架,可以从多供应商OCT扫描中提取视网膜病变,并利用它们的人视网膜的直观严重程度分级。为了迎合这种缺乏,我们提出了深度视网膜分析和分级框架(RAG-FW)。 RAG-FW是一种杂交卷积框架,其从OCT扫描提取多个视网膜病变,并根据临床标准使用它们的病变影响视网膜病变。 RAG-FW已经严格测试了来自五个高度复杂的公共数据集的43,613扫描,其中包含多供应商扫描,其中达到了0.8055的平均交叉口得分,用于提取视网膜病变和98.70%的准确度。纠正视网膜病变的严重程度分级。

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