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深度学习算法可预测个体患者糖尿病视网膜病变的进展。

Deep learning algorithm predicts diabetic retinopathy progression in individual patients.

作者信息

Arcadu Filippo, Benmansour Fethallah, Maunz Andreas, Willis Jeff, Haskova Zdenka, Prunotto Marco

机构信息

1Roche Informatics, Roche, Basel, Switzerland.

2Roche Personalized Healthcare, Roche, Basel, Switzerland.

出版信息

NPJ Digit Med. 2019 Sep 20;2:92. doi: 10.1038/s41746-019-0172-3. eCollection 2019.

DOI:10.1038/s41746-019-0172-3
PMID:31552296
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6754451/
Abstract

The global burden of diabetic retinopathy (DR) continues to worsen and DR remains a leading cause of vision loss worldwide. Here, we describe an algorithm to predict DR progression by means of deep learning (DL), using as input color fundus photographs (CFPs) acquired at a single visit from a patient with DR. The proposed DL models were designed to predict future DR progression, defined as 2-step worsening on the Early Treatment Diabetic Retinopathy Diabetic Retinopathy Severity Scale, and were trained against DR severity scores assessed after 6, 12, and 24 months from the baseline visit by masked, well-trained, human reading center graders. The performance of one of these models (prediction at month 12) resulted in an area under the curve equal to 0.79. Interestingly, our results highlight the importance of the predictive signal located in the peripheral retinal fields, not routinely collected for DR assessments, and the importance of microvascular abnormalities. Our findings show the feasibility of predicting future DR progression by leveraging CFPs of a patient acquired at a single visit. Upon further development on larger and more diverse datasets, such an algorithm could enable early diagnosis and referral to a retina specialist for more frequent monitoring and even consideration of early intervention. Moreover, it could also improve patient recruitment for clinical trials targeting DR.

摘要

糖尿病性视网膜病变(DR)的全球负担持续加重,DR仍是全球视力丧失的主要原因。在此,我们描述了一种通过深度学习(DL)预测DR进展的算法,该算法将单次就诊时为患有DR的患者采集的彩色眼底照片(CFP)作为输入。所提出的DL模型旨在预测未来的DR进展,定义为在糖尿病视网膜病变早期治疗严重程度量表上恶化两级,并根据从基线就诊起6个月、12个月和24个月后由经过良好培训的蒙面人类阅读中心分级人员评估的DR严重程度评分进行训练。其中一个模型(12个月时的预测)的性能导致曲线下面积等于0.79。有趣的是,我们的结果突出了位于视网膜周边区域(DR评估通常不会收集该区域数据)的预测信号的重要性以及微血管异常的重要性。我们的研究结果表明,利用单次就诊时采集的患者CFP预测未来DR进展是可行的。在更大、更多样化的数据集上进一步开发后,这样一种算法能够实现早期诊断,并将患者转诊给视网膜专家进行更频繁的监测,甚至考虑早期干预。此外,它还可以改善针对DR的临床试验中的患者招募情况。

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