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Computer-based detection of Age-Related Macular Degeneration and Glaucoma using retinal images and clinical data

机译:基于计算机的年龄相关黄斑变性和使用视网膜图像和临床数据的青光眼检测

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Worldwide, glaucoma and age-related macular degeneration (AMD) cause 12.3% and 8.7% of the cases of blindness and/or vision loss, respectively. According to a 5-year study of Medicare beneficiaries, patients who undergo a regular eye screening, experience less decline of vision than those who had less-frequent examinations. A computer-based screening of retinopathies can be highly cost-effective and efficient; however, most auto-screening software address only one eye disease, limiting their clinical utility and cost-effectiveness. Therefore, we propose a computer-based retinopathy screening system for detection of AMD and glaucoma by integrating information from retinal fundus images and clinical data. First, the retinal image analysis algorithms were developed using Transfer Learning approach to determine presence or absence of the eye disease. The clinical data was then utilized to improve disease detection performance where the image-analysis based algorithms provided sub-optimal classification. The results for binary detection (present/absent) of AMD and Glaucoma were compared with the ground truth provided by a certified retinal reader. We applied the proposed method to a dataset of 304 retinal images with AMD, 299 retinal images with Glaucoma, and 2,341 control retinal images. The algorithms demonstrated sensitivity/specificity of 100%/99.5% for detection of any AMD, 82%/70% for detection of referable AMD, and 75%/81% for detection of referable Glaucoma. The automated detection results agree well with the ground truth suggesting its potential in screening for AMD and Glaucoma.
机译:全球性,青光眼和年龄相关的黄斑变性(AMD)分别导致盲目和/或视力丧失的12.3%和8.7%。根据医疗保险受益者的5年性研究,经历常规眼部筛查的患者,差异的衰退率少于那些常见考试的人。基于计算机的视网膜病筛查可能是高度成本效益和高效的;然而,大多数自动筛查软件地址只有一种眼病,限制了他们的临床实用性和成本效益。因此,我们提出了一种基于计算机的视网膜病变筛查系统,用于通过从视网膜眼底图像和临床数据的信息集成信息来检测AMD和青光眼。首先,使用转移学习方法来开发视网膜图像分析算法以确定眼病的存在或不存在。然后利用临床数据来改善基于图像分析的算法提供的疾病检测性能提供了次优分类。将AMD和青光眼的二元检测(现有/缺席)的结果与经认证的视网膜读者提供的地面真理进行比较。我们将所提出的方法应用于304个视网膜图像的数据集,其具有增阳,299个视网膜图像,具有青光眼和2,341个控制视网膜图像。算法显示出100%/ 99.5%的敏感性/特异性,检测任何AMD,82%/ 70%用于检测可称为AMD的75%/ 81%,用于检测可参照荧光眼。自动检测结果与地面真理吻合良好,表明其筛选AMD和青光眼的潜力。

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