Department of Radiology, Seoul National University Bundang Hospital, 82 Gumi-ro, 173 Beon-gil, Bundang-gu, Seongnam-si, Gyeonggi-do, 13620, South Korea.
Eur Radiol. 2020 May;30(5):2843-2852. doi: 10.1007/s00330-019-06639-1. Epub 2020 Feb 5.
To develop a deep learning algorithm that can rule out significant rotator cuff tear based on conventional shoulder radiographs in patients suspected of rotator cuff tear.
The algorithm was developed using 6793 shoulder radiograph series performed between January 2015 and June 2018, which were labeled based on ultrasound or MRI conducted within 90 days, and clinical information (age, sex, dominant side, history of trauma, degree of pain). The output was the probability of significant rotator cuff tear (supraspinatus/infraspinatus complex tear with > 50% of tendon thickness). An operating point corresponding to sensitivity of 98% was set to achieve high negative predictive value (NPV) and low negative likelihood ratio (LR-). The performance of the algorithm was tested with 1095 radiograph series performed between July and December 2018. Subgroup analysis using Fisher's exact test was performed to identify factors (clinical information, radiography vendor, advanced imaging modality) associated with negative test results and NPV.
Sensitivity, NPV, and LR- were 97.3%, 96.6%, and 0.06, respectively. The deep learning algorithm could rule out significant rotator cuff tear in about 30% of patients suspected of rotator cuff tear. The subgroup analysis showed that age < 60 years (p < 0.001), non-dominant side (p < 0.001), absence of trauma history (p = 0.001), and ultrasound examination (p < 0.001) were associated with negative test results. NPVs were higher in patients with age < 60 years (p = 0.024) and examined with ultrasound (p < 0.001).
The deep learning algorithm could accurately rule out significant rotator cuff tear based on shoulder radiographs.
• The deep learning algorithm can rule out significant rotator cuff tear with a negative likelihood ratio of 0.06 and a negative predictive value of 96.6%. • The deep learning algorithm can guide patients with significant rotator cuff tear to additional shoulder ultrasound or MRI with a sensitivity of 97.3%. • The deep learning algorithm could rule out significant rotator cuff tear in about 30% of patients with clinically suspected rotator cuff tear.
开发一种深度学习算法,能够根据疑似肩袖撕裂患者的常规肩部 X 光片排除重大肩袖撕裂。
该算法使用了 2015 年 1 月至 2018 年 6 月期间进行的 6793 项肩部 X 光系列,这些 X 光系列是根据 90 天内进行的超声或 MRI 进行标记的,并结合临床信息(年龄、性别、优势侧、创伤史、疼痛程度)。输出结果是重大肩袖撕裂的概率(冈上肌/冈下肌复合体撕裂,撕裂厚度超过肌腱厚度的 50%)。设定一个对应于 98%灵敏度的工作点,以获得高阴性预测值(NPV)和低负似然比(LR-)。该算法的性能在 2018 年 7 月至 12 月期间进行的 1095 项 X 光系列中进行了测试。使用 Fisher 精确检验进行了亚组分析,以确定与阴性测试结果和 NPV 相关的因素(临床信息、放射学供应商、高级成像方式)。
敏感性、NPV 和 LR-分别为 97.3%、96.6%和 0.06。深度学习算法可以排除约 30%的疑似肩袖撕裂患者的重大肩袖撕裂。亚组分析显示,年龄<60 岁(p<0.001)、非优势侧(p<0.001)、无创伤史(p=0.001)和超声检查(p<0.001)与阴性检测结果相关。年龄<60 岁的患者(p=0.024)和接受超声检查的患者(p<0.001)的 NPV 较高。
深度学习算法可以根据肩部 X 光片准确排除重大肩袖撕裂。
深度学习算法的负似然比为 0.06,阴性预测值为 96.6%,可排除重大肩袖撕裂。
深度学习算法具有 97.3%的灵敏度,可引导疑似肩袖撕裂患者进行额外的肩部超声或 MRI 检查。
深度学习算法可排除约 30%的临床疑似肩袖撕裂患者的重大肩袖撕裂。