Júlio Guerra Domingues, Daniella Castro Araujo, Luciana Costa-Silva, A. Machado, Luciana Andrade Carneiro Machado, Adriano Alonso Veloso, S. M. Barreto, Rosa Weiss Telles
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引用次数: 0
摘要
摘要目的:利用巴西“Estudo Longitudinal de Saúde do Adulto musculoesquelacei”(ELSA-Brasil MSK, Longitudinal Study of Adult Health, Musculoskeletal)基线影像学检查训练,建立一个卷积神经网络(CNN)模型,用于膝关节骨关节炎的自动分类。材料和方法:这是一项横断面研究,使用了来自ELSA-Brasil MSK数据库的5660张基线膝关节后前片(5660张基线膝关节后前片)。检查由经过专门培训的放射科医生进行解释,校准与先前建立的一样。结果:CNN在受者工作特征曲线下的面积为0.866 (95% CI: 0.842 ~ 0.882)。该模型可以优化为准确性0.907,灵敏度0.938,特异性0.994,而不是同时达到最大值。结论:本文提出的CNN可作为筛查工具,减少本研究放射科医师评估的检查总数,并可作为双读工具,有助于减少可能的解读错误。
Development of a convolutional neural network for diagnosing osteoarthritis, trained with knee radiographs from the ELSA-Brasil Musculoskeletal
Abstract Objective: To develop a convolutional neural network (CNN) model, trained with the Brazilian “Estudo Longitudinal de Saúde do Adulto Musculoesquelético” (ELSA-Brasil MSK, Longitudinal Study of Adult Health, Musculoskeletal) baseline radiographic examinations, for the automated classification of knee osteoarthritis. Materials and Methods: This was a cross-sectional study carried out with 5,660 baseline posteroanterior knee radiographs from the ELSA-Brasil MSK database (5,660 baseline posteroanterior knee radiographs). The examinations were interpreted by a radiologist with specific training, and the calibration was as established previously. Results: The CNN presented an area under the receiver operating characteristic curve of 0.866 (95% CI: 0.842-0.882). The model can be optimized to achieve, not simultaneously, maximum values of 0.907 for accuracy, 0.938 for sensitivity, and 0.994 for specificity. Conclusion: The proposed CNN can be used as a screening tool, reducing the total number of examinations evaluated by the radiologists of the study, and as a double-reading tool, contributing to the reduction of possible interpretation errors.