Department of Radiology, Peking University Third Hospital, 49 Huayuan North Road, Haidian District, Beijing, People's Republic of China.
Int Orthop. 2024 Jan;48(1):183-191. doi: 10.1007/s00264-023-05987-4. Epub 2023 Sep 20.
MR arthrography (MRA) is the most accurate method for preoperatively diagnosing superior labrum anterior-posterior (SLAP) lesions, but diagnostic results can vary considerably due to factors such as experience. In this study, deep learning was used to facilitate the preliminary identification of SLAP lesions and compared with radiologists of different seniority.
MRA data from 636 patients were retrospectively collected, and all patients were classified as having/not having SLAP lesions according to shoulder arthroscopy. The SLAP-Net model was built and tested on 514 patients (dataset 1) and independently tested on data from two other MRI devices (122 patients, dataset 2). Manual diagnosis was performed by three radiologists with different seniority levels and compared with SLAP-Net outputs. Model performance was evaluated by the receiver operating characteristic (ROC) curve, area under the ROC curve (AUC), etc. McNemar's test was used to compare performance among models and between radiologists' models. The intraclass correlation coefficient (ICC) was used to assess the radiologists' reliability. p < 0.05 was considered statistically significant.
SLAP-Net had AUC = 0.98 and accuracy = 0.96 for classification in dataset 1 and AUC = 0.92 and accuracy = 0.85 in dataset 2. In dataset 1, SLAP-Net had diagnostic performance similar to that of senior radiologists (p = 0.055) but higher than that of early- and mid-career radiologists (p = 0.025 and 0.011). In dataset 2, SLAP-Net had similar diagnostic performance to radiologists of all three seniority levels (p = 0.468, 0.289, and 0.495, respectively).
Deep learning can be used to identify SLAP lesions upon initial MR arthrography examination. SLAP-Net performs comparably to senior radiologists.
磁共振关节造影术(MRA)是术前诊断肩盂上唇前后向(SLAP)病变最准确的方法,但由于经验等因素,诊断结果可能存在较大差异。本研究采用深度学习技术辅助初步识别 SLAP 病变,并与不同年资的放射科医生进行比较。
回顾性收集 636 例患者的 MRA 数据,根据肩关节镜将所有患者分为 SLAP 病变组和非 SLAP 病变组。构建 SLAP-Net 模型,并在 514 例患者(数据集 1)上进行验证,同时在另外两台 MRI 设备上的 122 例患者(数据集 2)上进行独立验证。由 3 名不同年资的放射科医生进行手动诊断,并与 SLAP-Net 输出结果进行比较。采用受试者工作特征(ROC)曲线、ROC 曲线下面积(AUC)等评估模型性能。采用 McNemar 检验比较不同模型及不同年资放射科医生之间的诊断性能。采用组内相关系数(ICC)评估放射科医生的可靠性。p<0.05 为差异有统计学意义。
SLAP-Net 在数据集 1 中的 AUC 为 0.98,准确率为 0.96;在数据集 2 中的 AUC 为 0.92,准确率为 0.85。在数据集 1 中,SLAP-Net 的诊断性能与高年资放射科医生相似(p=0.055),但高于中、低年资放射科医生(p=0.025 和 0.011)。在数据集 2 中,SLAP-Net 的诊断性能与所有 3 个年资水平的放射科医生相似(p=0.468、0.289 和 0.495)。
深度学习可用于初步 MRA 检查中识别 SLAP 病变。SLAP-Net 的诊断性能与高年资放射科医生相当。