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首页> 外文期刊>Clinical and experimental ophthalmology >Development and validation of a deep-learning algorithm for the detection of neovascular age-related macular degeneration from colour fundus photographs
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Development and validation of a deep-learning algorithm for the detection of neovascular age-related macular degeneration from colour fundus photographs

机译:从彩色眼底拍摄检测新血管年龄相关黄斑变性的深度学习算法的开发与验证

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摘要

Importance Detection of early onset neovascular age-related macular degeneration (AMD) is critical to protecting vision. Background To describe the development and validation of a deep-learning algorithm (DLA) for the detection of neovascular age-related macular degeneration. Design Development and validation of a DLA using retrospective datasets. Participants We developed and trained the DLA using 56 113 retinal images and an additional 86 162 images from an independent dataset to externally validate the DLA. All images were non-stereoscopic and retrospectively collected. Methods The internal validation dataset was derived from real-world clinical settings in China. Gold standard grading was assigned when consensus was reached by three individual ophthalmologists. The DLA classified 31 247 images as gradable and 24 866 as ungradable (poor quality or poor field definition). These ungradable images were used to create a classification model for image quality. Efficiency and diagnostic accuracy were tested using 86 162 images derived from the Melbourne Collaborative Cohort Study. Neovascular AMD and/or ungradable outcome in one or both eyes was considered referable. Main Outcome Measures Area under the receiver operating characteristic curve (AUC), sensitivity and specificity. Results In the internal validation dataset, the AUC, sensitivity and specificity of the DLA for neovascular AMD was 0.995, 96.7%, 96.4%, respectively. Testing against the independent external dataset achieved an AUC, sensitivity and specificity of 0.967, 100% and 93.4%, respectively. More than 60% of false positive cases displayed other macular pathologies. Amongst the false negative cases (internal validation dataset only), over half (57.2%) proved to be undetected detachment of the neurosensory retina or RPE layer. Conclusions and Relevance This DLA shows robust performance for the detection of neovascular AMD amongst retinal images from a multi-ethnic sample and under different imaging protocols. Further research is warranted to investigate where this technology could be best utilized within screening and research settings.
机译:早发新生血管年龄相关性黄斑变性(AMD)的重要性检测对于保护视觉至关重要。背景技术描述用于检测新生血管年龄相关性黄斑变性的深度学习算法(DLA)的开发和验证。使用回顾性数据集设计开发和验证DLA。我们使用56 113视网膜图像开发和培训了DLA的参与者,以及从独立数据集的附加86 162张图像验证到外部验证DLA。所有图像都是非立体和回顾性收集的。方法内部验证数据集来自中国的现实世界临床环境。三个单独的眼科医生达成共识时,将获得金标准分级。 DLA分类为31 247个图像,如渐变,24 866作为未经替代的(质量差或差的场定义)。这些未来的图像用于为图像质量创建分类模型。使用源自墨尔本协作队列研究的86种162个图像测试了效率和诊断准确度。在一个或两个眼睛中的新生血管amd和/或不可替补的结果被认为是可指节的。主要结果测量区域下的接收器操作特征曲线(AUC),敏感性和特异性。导致内部验证数据集,新生血管AMD的DLA的AUC,敏感性和特异性分别为0.995,96.7%,96.4%。对独立外部数据集的测试分别达到了0.967,100%和93.4%的AUC,敏感性和特异性。超过60%的假阳性案例显示其他黄斑病理。在假阴性案例中(仅限内部验证数据集),已被证明未检测到神经感觉视网膜或RPE层的未检测到的脱离。结论和相关性该DLA显示了从多种族样本和不同的成像协议下检测视网膜图像中的新血管AMD的稳健性能。有关进一步的研究,以调查该技术在筛选和研究设置中最好使用。

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  • 作者单位

    Univ Melbourne Royal Victorian Eye &

    Ear Hosp Ctr Eye Res Australia Melbourne Vic Australia;

    Sun Yat Sen Univ Zhongshan Ophthalm Ctr State Key Lab Ophthalmol Guangzhou Guangdong Peoples R;

    Univ Melbourne Royal Victorian Eye &

    Ear Hosp Ctr Eye Res Australia Melbourne Vic Australia;

    Univ Melbourne Royal Victorian Eye &

    Ear Hosp Ctr Eye Res Australia Melbourne Vic Australia;

    Monash Univ Melbourne Melbourne Vic Australia;

    Univ Melbourne Royal Victorian Eye &

    Ear Hosp Ctr Eye Res Australia Melbourne Vic Australia;

    Univ Melbourne Royal Victorian Eye &

    Ear Hosp Ctr Eye Res Australia Melbourne Vic Australia;

    Healgoo Interact Med Technol Co Ltd Guangzhou Guangdong Peoples R China;

    Univ Melbourne Royal Victorian Eye &

    Ear Hosp Ctr Eye Res Australia Melbourne Vic Australia;

    Healgoo Interact Med Technol Co Ltd Guangzhou Guangdong Peoples R China;

    Univ Melbourne Royal Victorian Eye &

    Ear Hosp Ctr Eye Res Australia Melbourne Vic Australia;

    Stanford Univ Byers Eye Inst Dept Ophthalmol Palo Alto CA 94304 USA;

    Univ Melbourne Royal Victorian Eye &

    Ear Hosp Ctr Eye Res Australia Melbourne Vic Australia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 眼科学;
  • 关键词

    deep-learning algorithm; age-related macular degeneration; retinal-imaging;

    机译:深学习算法;年龄相关的黄斑变性;视网膜成像;

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