介绍
医学
计算机科学
人工智能
光学相干层析成像
深度学习
步伐
数据集
医学物理学
训练集
机器学习
数据科学
验光服务
放射科
家庭医学
地理
大地测量学
作者
Jeffrey De Fauw,Joseph R. Ledsam,Bernardino Romera‐Paredes,Stanislav Nikolov,Nenad Tomašev,Sam Blackwell,Harry Askham,Xavier Glorot,Brendan O’Donoghue,Daniel Visentin,George van den Driessche,Balaji Lakshminarayanan,Clemens Meyer,Faith Mackinder,S. Miles Bouton,Kareem Ayoub,Reena Chopra,Dominic King,Alan Karthikesalingam,Cían Hughes
出处
期刊:Nature Medicine
[Nature Portfolio]
日期:2018-08-06
卷期号:24 (9): 1342-1350
被引量:2458
标识
DOI:10.1038/s41591-018-0107-6
摘要
The volume and complexity of diagnostic imaging is increasing at a pace faster than the availability of human expertise to interpret it. Artificial intelligence has shown great promise in classifying two-dimensional photographs of some common diseases and typically relies on databases of millions of annotated images. Until now, the challenge of reaching the performance of expert clinicians in a real-world clinical pathway with three-dimensional diagnostic scans has remained unsolved. Here, we apply a novel deep learning architecture to a clinically heterogeneous set of three-dimensional optical coherence tomography scans from patients referred to a major eye hospital. We demonstrate performance in making a referral recommendation that reaches or exceeds that of experts on a range of sight-threatening retinal diseases after training on only 14,884 scans. Moreover, we demonstrate that the tissue segmentations produced by our architecture act as a device-independent representation; referral accuracy is maintained when using tissue segmentations from a different type of device. Our work removes previous barriers to wider clinical use without prohibitive training data requirements across multiple pathologies in a real-world setting.
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