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基于深度学习的全腿平片地标识别和角度测量可用于评估下肢对线情况。

Deep learning-based landmark recognition and angle measurement of full-leg plain radiographs can be adopted to assess lower extremity alignment.

作者信息

Jo Changwung, Hwang Doohyun, Ko Sunho, Yang Myung Ho, Lee Myung Chul, Han Hyuk-Soo, Ro Du Hyun

机构信息

Department of Orthopedic Surgery, Seoul National University College of Medicine, 101 Daehak-ro, Jongno-gu, Seoul, 110-744, Republic of Korea.

Department of Orthopedic Surgery, Seoul National University Hospital, Seoul, South Korea.

出版信息

Knee Surg Sports Traumatol Arthrosc. 2023 Apr;31(4):1388-1397. doi: 10.1007/s00167-022-07124-x. Epub 2022 Aug 25.

Abstract

PURPOSE

Evaluating lower extremity alignment using full-leg plain radiographs is an essential step in diagnosis and treatment of patients with knee osteoarthritis. The study objective was to present a deep learning-based anatomical landmark recognition and angle measurement model, using full-leg radiographs, and validate its performance.

METHODS

A total of 11,212 full-leg plain radiographs were used to create the model. To train the data, 15 anatomical landmarks were marked by two orthopaedic surgeons. Mechanical lateral distal femoral angle (mLDFA), medial proximal tibial angle (MPTA), joint line convergence angle (JLCA), and hip-knee-ankle angle (HKAA) were then measured. For inter-observer reliability, the inter-observer intraclass correlation coefficient (ICC) was evaluated by comparing measurements from the model, surgeons, and students, to ground truth measurements annotated by an orthopaedic specialist with 14 years of experience. To evaluate test-retest reliability, all measurements were made twice by each measurer. Intra-observer ICCs were then derived. Performance evaluation metrics used in previous studies were also derived for direct comparison of the model's performance.

RESULTS

Inter-observer ICCs for all angles of the model were 0.98 or higher (p < 0.001). Intra-observer ICCs for all angles were 1.00, which was higher than that of the orthopaedic specialist (0.97-1.00). Measurements made by the model showed no significant systemic variation. Except for JLCA, angles were precisely measured with absolute error averages under 0.52 degrees and proportion of outliers under 4.26%.

CONCLUSIONS

The deep learning model is capable of evaluating lower extremity alignment with performance as accurate as an orthopaedic specialist with 14 years of experience.

LEVEL OF EVIDENCE

III, retrospective cohort study.

摘要

目的

使用全腿平片评估下肢对线情况是膝关节骨关节炎患者诊断和治疗的关键步骤。本研究的目的是提出一种基于深度学习的解剖标志识别和角度测量模型,该模型使用全腿X线片,并验证其性能。

方法

共使用11212张全腿平片来创建模型。为了训练数据,两名骨科医生标记了15个解剖标志。然后测量机械性股骨远端外侧角(mLDFA)、胫骨近端内侧角(MPTA)、关节线汇聚角(JLCA)和髋-膝-踝角(HKAA)。对于观察者间可靠性,通过比较模型、外科医生和学生的测量结果与由一位有14年经验的骨科专家标注的真实测量结果,评估观察者间组内相关系数(ICC)。为了评估重测可靠性,每个测量者对所有测量进行两次。然后得出观察者内ICC。还得出了先前研究中使用的性能评估指标,以便直接比较模型的性能。

结果

模型所有角度的观察者间ICC均为0.98或更高(p < 0.001)。所有角度的观察者内ICC均为1.00,高于骨科专家的ICC(0.97 - 1.00)。模型进行的测量未显示出明显的系统差异。除JLCA外,角度测量精确,平均绝对误差在0.52度以下,异常值比例在4.26%以下。

结论

深度学习模型能够评估下肢对线情况,其性能与一位有14年经验的骨科专家相当。

证据水平

III,回顾性队列研究。

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