Weill Cornell College of Medicine, New York, New York; Department of Orthopedic Surgery, Hospital for Special Surgery, New York, New York.
Department of Orthopedic Surgery, Hospital for Special Surgery, New York, New York.
J Arthroplasty. 2023 Oct;38(10):2017-2023.e3. doi: 10.1016/j.arth.2023.03.006. Epub 2023 Mar 9.
Leg-length discrepancy (LLD) is a critical factor in component selection and placement for total hip arthroplasty. However, LLD radiographic measurements are subject to variation based on the femoral/pelvic landmarks chosen. This study leveraged deep learning (DL) to automate LLD measurements on pelvis radiographs and compared LLD based on several anatomically distinct landmarks.
Patients who had baseline anteroposterior pelvis radiographs from the Osteoarthritis Initiative were included. A DL algorithm was created to identify LLD-relevant landmarks (ie, teardrop (TD), obturator foramen, ischial tuberosity, greater and lesser trochanters) and measure LLD accurately using six landmark combinations. The algorithm was then applied to automate LLD measurements in the entire cohort of patients. Interclass correlation coefficients (ICC) were calculated to assess agreement between different LLD methods.
The DL algorithm measurements were first validated in an independent cohort for all six LLD methods (ICC = 0.73-0.98). Images from 3,689 patients (22,134 LLD measurements) were measured in 133 minutes. When using the TD and lesser trochanter landmarks as the standard LLD method, only measuring LLD using the TD and greater trochanter conferred acceptable agreement (ICC = 0.72). When comparing all six LLD methods for agreement, no combination had an ICC>0.90. Only two (13%) combinations had an ICC>0.75 and eight (53%) combinations had a poor ICC (<0.50).
We leveraged DL to automate LLD measurements in a large patient cohort and found considerable variation in LLD based on the pelvic/femoral landmark selection. This emphasizes the need for the standardization of landmarks for both research and surgical planning.
肢体长度差异(LLD)是全髋关节置换术选择和放置假体的关键因素。然而,LLD 的放射学测量值会因选择的股骨/骨盆标志而发生变化。本研究利用深度学习(DL)技术自动测量骨盆 X 光片上的 LLD,并比较了基于几个解剖上不同的标志的 LLD。
纳入了 Osteoarthritis Initiative 的基线前后位骨盆 X 光片患者。创建了一个 DL 算法来识别 LLD 相关的标志(即泪滴(TD)、闭孔、坐骨结节、大转子和小转子),并使用六种标志组合准确测量 LLD。然后,该算法应用于自动测量整个患者队列的 LLD。计算组内相关系数(ICC)以评估不同 LLD 方法之间的一致性。
首先在独立队列中验证了六种 LLD 方法的 DL 算法测量值(ICC=0.73-0.98)。在 133 分钟内测量了 3689 名患者(22134 次 LLD 测量值)的图像。当使用 TD 和小转子标志作为标准 LLD 方法时,仅使用 TD 和大转子标志测量 LLD 可获得可接受的一致性(ICC=0.72)。当比较所有六种 LLD 方法的一致性时,没有一种组合的 ICC>0.90。只有两种(13%)组合的 ICC>0.75,八种(53%)组合的 ICC<0.50。
我们利用 DL 技术在一个大型患者队列中自动测量 LLD,并发现根据骨盆/股骨标志的选择,LLD 存在相当大的差异。这强调了为研究和手术计划标准化标志的必要性。