Chen Chih-Chi, Wu Cheng-Ta, Chen Carl P C, Chung Chia-Ying, Chen Shann-Ching, Lee Mel S, Cheng Chi-Tung, Liao Chien-Hung
Department of Physical Medicine and Rehabilitation, Chang Gung Memorial Hospital, Taoyuan, Taiwan.
Department of Orthopaedic Surgery, Chang Gung Memorial Hospital, Kaohsiung, Taiwan.
JMIR Form Res. 2023 Oct 20;7:e42788. doi: 10.2196/42788.
Total hip replacement (THR) is considered the gold standard of treatment for refractory degenerative hip disorders. Identifying patients who should receive THR in the short term is important. Some conservative treatments, such as intra-articular injection administered a few months before THR, may result in higher odds of arthroplasty infection. Delayed THR after functional deterioration may result in poorer outcomes and longer waiting times for those who have been flagged as needing THR. Deep learning (DL) in medical imaging applications has recently obtained significant breakthroughs. However, the use of DL in practical wayfinding, such as short-term THR prediction, is still lacking.
In this study, we will propose a DL-based assistant system for patients with pelvic radiographs to identify the need for THR within 3 months.
We developed a convolutional neural network-based DL algorithm to analyze pelvic radiographs, predict the hip region of interest (ROI), and determine whether or not THR is required. The data set was collected from August 2008 to December 2017. The images included 3013 surgical hip ROIs that had undergone THR and 1630 nonsurgical hip ROIs. The images were split, using split-sample validation, into training (n=3903, 80%), validation (n=476, 10%), and testing (n=475, 10%) sets to evaluate the algorithm performance.
The algorithm, called SurgHipNet, yielded an area under the receiver operating characteristic curve of 0.994 (95% CI 0.990-0.998). The accuracy, sensitivity, specificity, and F-score of the model were 0.977, 0.920, 0932, and 0.944, respectively.
The proposed approach has demonstrated that SurgHipNet shows the ability and potential to provide efficient support in clinical decision-making; it can assist physicians in promptly determining the optimal timing for THR.
全髋关节置换术(THR)被认为是治疗难治性退行性髋关节疾病的金标准。识别短期内应接受THR的患者很重要。一些保守治疗,如在THR前几个月进行关节内注射,可能会增加关节置换感染的几率。功能恶化后延迟进行THR可能会导致结果更差,并且对于那些已被标记为需要THR的患者来说等待时间更长。深度学习(DL)在医学影像应用中最近取得了重大突破。然而,DL在实际的路径查找中,如短期THR预测方面的应用仍然不足。
在本研究中,我们将提出一种基于DL的辅助系统,用于分析骨盆X光片的患者,以识别其在3个月内是否需要进行THR。
我们开发了一种基于卷积神经网络的DL算法,用于分析骨盆X光片,预测感兴趣的髋关节区域(ROI),并确定是否需要进行THR。数据集收集于2008年8月至2017年12月。图像包括3013个已接受THR的手术髋关节ROI和1630个非手术髋关节ROI。使用分割样本验证将图像分为训练集(n = 3903,80%)、验证集(n = 476,10%)和测试集(n = 475,10%),以评估算法性能。
该算法名为SurgHipNet,其受试者操作特征曲线下面积为0.994(95%CI 0.990 - 0.998)。模型的准确率、灵敏度、特异性和F值分别为0.977、0.920、0.932和0.944。
所提出的方法表明SurgHipNet在临床决策中具有提供有效支持的能力和潜力;它可以帮助医生迅速确定THR的最佳时机。