Detection and Grading of Radiographic Hand Osteoarthritis Using an Automated Machine Learning Platform.

L. Caratsch, C. Lechtenboehmer, M. Caorsi, Karine Oung, F. Zanchi, Y. Aleman, Ulrich A Walker, Patrick Omoumi, Thomas Hügle
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Abstract

OBJECTIVE Automated machine learning (autoML) platforms allow health care professionals to play an active role in the development of machine learning (ML) algorithms according to scientific or clinical needs. The aim of this study was to develop and evaluate such a model for automated detection and grading of distal hand osteoarthritis (OA). METHODS A total of 13,690 hand radiographs from 2,863 patients within the Swiss Cohort of Quality Management (SCQM) and an external control data set of 346 non-SCQM patients were collected and scored for distal interphalangeal OA (DIP-OA) using the modified Kellgren/Lawrence (K/L) score. Giotto (Learn to Forecast [L2F]) was used as an autoML platform for training two convolutional neural networks for DIP joint extraction and subsequent classification according to the K/L scores. A total of 48,892 DIP joints were extracted and then used to train the classification model. Heatmaps were generated independently of the platform. User experience of a web application as a provisional user interface was investigated by rheumatologists and radiologists. RESULTS The sensitivity and specificity of this model for detecting DIP-OA were 79% and 86%, respectively. The accuracy for grading the correct K/L score was 75%, with a κ score of 0.76. The accuracy per DIP-OA class differed, with 86% for no OA (defined as K/L scores 0 and 1), 71% for a K/L score of 2, 46% for a K/L score of 3, and 67% for a K/L score of 4. Similar values were obtained in an independent external test set. Qualitative and quantitative user experience testing of the web application revealed a moderate to high demand for automated DIP-OA scoring among rheumatologists. Conversely, radiologists expressed a low demand, except for the use of heatmaps. CONCLUSION AutoML platforms are an opportunity to develop clinical end-to-end ML algorithms. Here, automated radiographic DIP-OA detection is both feasible and usable, whereas grading among individual K/L scores (eg, for clinical trials) remains challenging.
使用自动机器学习平台检测和分级手部骨关节炎放射影像。
目的自动化机器学习(autoML)平台允许医疗保健专业人员根据科学或临床需要在机器学习(ML)算法的开发过程中发挥积极作用。方法收集了瑞士质量管理队列(SCQM)中2863名患者的13690张手部X光片和346名非SCQM患者的外部对照数据集,并使用改良的Kellgren/Lawrence(K/L)评分法对远端指骨间OA(DIP-OA)进行评分。Giotto(Learn to Forecast [L2F])被用作自动ML平台,用于训练两个卷积神经网络,以提取DIP关节,然后根据K/L评分进行分类。共提取了 48892 个 DIP 关节,然后用于训练分类模型。热图的生成与平台无关。结果该模型检测 DIP-OA 的灵敏度和特异度分别为 79% 和 86%。正确 K/L 评分分级的准确率为 75%,κ 评分为 0.76。每个 DIP-OA 等级的准确率各不相同,无 OA(定义为 K/L 分数为 0 和 1)为 86%,K/L 分数为 2 为 71%,K/L 分数为 3 为 46%,K/L 分数为 4 为 67%。对网络应用程序进行的定性和定量用户体验测试表明,风湿病学家对自动 DIP-OA 评分的需求从中度到高度不等。相反,除了热图的使用外,放射科医生对自动DIP-OA评分的需求较低。在这里,影像学 DIP-OA 自动检测既可行又可用,而对单个 K/L 分数进行分级(如用于临床试验)仍具有挑战性。
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