Machine Teaching Allows for Rapid Development of Automated Systems for Retinal Lesion Detection From Small Image Datasets.

IF 0.9 4区 医学 Q4 OPHTHALMOLOGY
Michael Drakopoulos, Donna Hooshmand, Laura A Machlab, Paul J Bryar, Kristian J Hammond, Rukhsana G Mirza
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引用次数: 0

Abstract

Machine teaching, a machine learning subfield, may allow for rapid development of artificial intelligence systems able to automatically identify emerging ocular biomarkers from small imaging datasets. We sought to use machine teaching to automatically identify retinal ischemic perivascular lesions (RIPLs) and subretinal drusenoid deposits (SDDs), two emerging ocular biomarkers of cardiovascular disease. IRB approval was obtained. Four small datasets of SD-OCT B-scans were used to train and test two distinct automated systems, one identifying RIPLs and the other identifying SDDs. An open-source interactive machine-learning software program, RootPainter, was used to perform annotation and training simultaneously over a 6-hour period. For SDDs at the B-scan level, test-set accuracy = 92%, sensitivity = 100%, specificity = 88%, positive predictive value (PPV) = 82%, and negative predictive value (NPV) = 100%. For RIPLs at the B-scan level, test-set accuracy = 90%, sensitivity = 60%, specificity = 93%, PPV = 50%, and NPV = 95%. Machine teaching demonstrates promise within ophthalmic imaging to rapidly allow for automated identification of novel biomarkers from small image datasets. [Ophthalmic Surg Lasers Imaging Retina 2024;55:475-478.].

通过机器教学,可快速开发从小型图像数据集检测视网膜病变的自动化系统。
背景和目的:机器教学是机器学习的一个子领域,它可以快速开发人工智能系统,从小型成像数据集中自动识别新出现的眼部生物标记物。我们试图利用机器教学自动识别视网膜缺血性血管周围病变(RIPLs)和视网膜下类风湿沉积物(SDDs)这两种心血管疾病的新兴眼部生物标志物:已获得 IRB 批准。四个小型 SD-OCT B 扫描数据集用于训练和测试两个不同的自动系统,一个系统识别 RIPLs,另一个系统识别 SDDs。使用开源交互式机器学习软件 RootPainter 在 6 小时内同时进行标注和训练:对于 B 扫描水平的 SDD,测试集准确率 = 92%,灵敏度 = 100%,特异性 = 88%,阳性预测值 (PPV) = 82%,阴性预测值 (NPV) = 100%。对于 B 扫描级别的 RIPL,测试集准确率 = 90%,灵敏度 = 60%,特异性 = 93%,PPV = 50%,NPV = 95%:结论:机器教学在眼科成像领域大有可为,它能从小型图像数据集中快速自动识别新型生物标记物。[眼科手术激光成像视网膜2024;55:XX-XX]。
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来源期刊
CiteScore
1.80
自引率
0.00%
发文量
89
期刊介绍: OSLI Retina focuses exclusively on retinal diseases, surgery and pharmacotherapy. OSLI Retina will offer an expedited submission to publication effort of peer-reviewed clinical science and case report articles. The front of the journal offers practical clinical and practice management features and columns specific to retina specialists. In sum, readers will find important peer-reviewed retina articles and the latest findings in techniques and science, as well as informative business and practice management features in one journal.
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