通过深度学习在彩色图像上区分动脉炎性和非动脉炎性缺血性视神经病变

IF 7.8 1区 医学 Q1 OPHTHALMOLOGY
Ayse Gungor,Raymond P Najjar,Steffen Hamann,Zhiqun Tang,Wolf A Lagrèze,Riccardo Sadun,Kanchalika Sathianvichitr,Marc J Dinkin,Cristiano Oliveira,Anfei Li,Federico Sadun,Andrew R Carey,Walid Bouthour,Mung Yan Lin,Jing-Liang Loo,Neil R Miller,Nancy J Newman,Valérie Biousse,Dan Milea,
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引用次数: 0

摘要

重要性从巨细胞动脉炎和其他系统性血管炎中及时准确地诊断出动脉炎性前部缺血性视神经病变(AAION)有助于防止这些疾病造成不可逆转的视力丧失。目标开发、训练和测试一种深度学习系统(DLS),用于在急性期通过彩色眼底图像区分AAION和NAION。设计、设置和参与者这是一项国际研究,包括802名确诊AAION和NAION患者961只眼睛的彩色眼底图像。培训使用来自 16 个国家 21 个神经眼科专家中心的图像,外部测试使用来自美国和欧洲 5 个神经眼科专家中心的一组图像。用于培训和外部测试的数据收集时间为 2018 年 8 月至 2023 年 1 月。混合使用了两个视场(以视盘为中心和以黄斑为中心)的去识别图像。用于训练和内部验证的图像来自 16 个眼底照相机模型,视场角为 30°至 55°。外部测试的图像来自 5 台眼底照相机,视场角为 30° 至 50°。结果在训练和验证集中,374 名(54.9%)患者为女性,301 名(44.2%)患者为男性,6 名(0.9%)患者性别未知;年龄中位数(范围)为 66(23-96)岁。在包括 121 名患者(35 [28.9%] 名女性、44 [36.4%] 名男性和 42 [34.7%] 名性别未知者;年龄中位数[范围]为 69 [37-89] 岁)的外部数据集上进行测试时,DLS 的 AUC 为 0.97(95% CI,0.95-0.99),灵敏度为 91.1%(95% CI,85.2-96.9),特异度为 93.4%(95% CI,91.1-98.2),准确度为 92.6%(95% CI,90.5-96.6)。两位专家对同一数据集进行分类的准确率分别为 74.3% (95% CI, 66.7-81.9) 和 81.6% (95% CI, 74.8-88.4)。结论和相关性在没有任何临床或生物标记信息的情况下,显示疾病特异性平均类激活图的 DLS 在眼底彩色图像上区分急性 AAION 和 NAION 的准确率超过 90%。能识别 AAION 的 DLS 可改善临床决策,从而降低误诊风险并改善患者预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning to Discriminate Arteritic From Nonarteritic Ischemic Optic Neuropathy on Color Images.
Importance Prompt and accurate diagnosis of arteritic anterior ischemic optic neuropathy (AAION) from giant cell arteritis and other systemic vasculitis can contribute to preventing irreversible vision loss from these conditions. Its clinical distinction from nonarteritic anterior ischemic optic neuropathy (NAION) can be challenging, especially when systemic symptoms are lacking or laboratory markers of the disease are not reliable. Objective To develop, train, and test a deep learning system (DLS) to discriminate AAION from NAION on color fundus images during the acute phase. Design, Setting, and Participants This was an international study including color fundus images of 961 eyes of 802 patients with confirmed AAION and NAION. Training was performed using images from 21 expert neuro-ophthalmology centers in 16 countries, while external testing was performed in a cohort from 5 expert neuro-ophthalmology centers in the US and Europe. Data for training and external testing were collected from August 2018 to January 2023. A mix of deidentified images of 2 fields of view (optic disc centered and macula centered) were used. For training and internal validation, images were from 16 fundus camera models with fields of 30° to 55°. For external testing, images were from 5 fundus cameras with fields of 30° to 50°. Data were analyzed from January 2023 to January 2024. Main Outcomes and Measures The performance of the DLS was measured using area under the receiver operating characteristic curve (AUC), sensitivity, specificity, and accuracy. Results In the training and validation sets, 374 (54.9%) of patients were female, 301 (44.2%) were male, and 6 (0.9%) were of unknown sex; the median (range) age was 66 (23-96) years. When tested on the external dataset including 121 patients (35 [28.9%] female, 44 [36.4%] male, and 42 [34.7%] of unknown sex; median [range] age, 69 [37-89] years), the DLS achieved an AUC of 0.97 (95% CI, 0.95-0.99), a sensitivity of 91.1% (95% CI, 85.2-96.9), a specificity of 93.4% (95% CI, 91.1-98.2), and an accuracy of 92.6% (95% CI, 90.5-96.6). The accuracy of the 2 experts for classification of the same dataset was 74.3% (95% CI, 66.7-81.9) and 81.6% (95% CI, 74.8-88.4), respectively. Conclusions and Relevance A DLS showing disease-specific averaged class-activation maps had greater than 90% accuracy at discriminating between acute AAION from NAION on color fundus images, at the eye level, without any clinical or biomarker information. A DLS that identifies AAION could improve clinical decision-making, potentially reducing the risk of misdiagnosis and improving patient outcomes.
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来源期刊
JAMA ophthalmology
JAMA ophthalmology OPHTHALMOLOGY-
CiteScore
13.20
自引率
3.70%
发文量
340
期刊介绍: JAMA Ophthalmology, with a rich history of continuous publication since 1869, stands as a distinguished international, peer-reviewed journal dedicated to ophthalmology and visual science. In 2019, the journal proudly commemorated 150 years of uninterrupted service to the field. As a member of the esteemed JAMA Network, a consortium renowned for its peer-reviewed general medical and specialty publications, JAMA Ophthalmology upholds the highest standards of excellence in disseminating cutting-edge research and insights. Join us in celebrating our legacy and advancing the frontiers of ophthalmology and visual science.
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