Department of Sports Medicine, Peking University Third Hospital, Institute of Sports Medicine of Peking University, Beijing, China; Beijing Key Laboratory of Sports Injuries, Beijing, China; Engineering Research Center of Sports Trauma Treatment Technology and Devices, Ministry of Education, Beijing, China.
Beijing Yizhun Medical AI Co., Ltd, Beijing, China.
Arthroscopy. 2024 Apr;40(4):1197-1205. doi: 10.1016/j.arthro.2023.08.010. Epub 2023 Aug 18.
To develop a deep learning model to accurately detect anterior cruciate ligament (ACL) ruptures on magnetic resonance imaging (MRI) and to evaluate its effect on the diagnostic accuracy and efficiency of clinicians.
A training dataset was built from MRIs acquired from January 2017 to June 2021, including patients with knee symptoms, irrespective of ACL ruptures. An external validation dataset was built from MRIs acquired from January 2021 to June 2022, including patients who underwent knee arthroscopy or arthroplasty. Patients with fractures or prior knee surgeries were excluded in both datasets. Subsequently, a deep learning model was developed and validated using these datasets. Clinicians of varying expertise levels in sports medicine and radiology were recruited, and their capacities in diagnosing ACL injuries in terms of accuracy and diagnosing time were evaluated both with and without artificial intelligence (AI) assistance.
A deep learning model was developed based on the training dataset of 22,767 MRIs from 5 centers and verified with external validation dataset of 4,086 MRIs from 6 centers. The model achieved an area under the receiver operating characteristic curve of 0.987 and a sensitivity and specificity of 95.1%. Thirty-eight clinicians from 25 centers were recruited to diagnose 3,800 MRIs. The AI assistance significantly improved the accuracy of all clinicians, exceeding 96%. Additionally, a notable reduction in diagnostic time was observed. The most significant improvements in accuracy and time efficiency were observed in the trainee groups, suggesting that AI support is particularly beneficial for clinicians with moderately limited diagnostic expertise.
This deep learning model demonstrated expert-level diagnostic performance for ACL ruptures, serving as a valuable tool to assist clinicians of various specialties and experience levels in making accurate and efficient diagnoses.
Level III, retrospective comparative case series.
开发一种深度学习模型,以准确检测磁共振成像(MRI)中的前交叉韧带(ACL)撕裂,并评估其对临床医生诊断准确性和效率的影响。
从 2017 年 1 月至 2021 年 6 月采集的 MRI 构建了一个训练数据集,包括有膝关节症状的患者,不论 ACL 是否撕裂。从 2021 年 1 月至 2022 年 6 月采集的 MRI 构建了一个外部验证数据集,包括接受膝关节镜检查或关节置换术的患者。两个数据集均排除了骨折或既往膝关节手术的患者。随后,使用这些数据集开发和验证了深度学习模型。招募了运动医学和放射学方面不同专业水平的临床医生,并评估了他们在有和没有人工智能(AI)辅助的情况下,诊断 ACL 损伤的准确性和诊断时间的能力。
基于 5 个中心的 22767 个 MRI 的训练数据集和 6 个中心的 4086 个 MRI 的外部验证数据集开发了一种深度学习模型。该模型的受试者工作特征曲线下面积为 0.987,灵敏度和特异性分别为 95.1%。从 25 个中心招募了 38 名临床医生来诊断 3800 个 MRI。AI 辅助显著提高了所有临床医生的准确性,超过 96%。此外,诊断时间也明显缩短。在学员组中观察到准确性和时间效率的显著提高,这表明 AI 支持对于诊断专业知识有限的临床医生尤其有益。
该深度学习模型在 ACL 撕裂的诊断中表现出专家级的性能,是一种有价值的工具,可以帮助各种专业和经验水平的临床医生进行准确和高效的诊断。
三级,回顾性比较病例系列。