Zhu Wanbo, Zhang Xianzuo, Fang Shiyuan, Wang Bing, Zhu Chen
Department of Orthopedics, The First Affiliated Hospital of USTC, Division of Life Sciences and Medicine, University of Science and Technology of China, Hefei, China.
Department of Orthopedics, Affiliated Anhui Provincial Hospital of Anhui Medical University, Hefei, China.
Front Med (Lausanne). 2020 Oct 7;7:573522. doi: 10.3389/fmed.2020.573522. eCollection 2020.
Femoral neck fractures (FNFs) are a great public health problem that leads to a high incidence of death and dysfunction. Osteonecrosis of the femoral head (ONFH) after internal fixation of FNF is a frequently reported complication and a major cause for reoperation. Early intervention can prevent osteonecrosis aggravation at the preliminary stage. However, at present, failure to diagnose asymptomatic ONFH after FNF fixation hinders effective intervention at early stages. The primary objective of this study was to develop a predictive model for postoperative ONFH using deep learning (DL) methods developed using plain X-ray radiographs and hybrid patient variables. A two-center retrospective study of patients who underwent closed reduction and cannulated screw fixation was performed. We trained a convolutional neural network (CNN) model using postoperative pelvic radiographs and the output regressive radiograph variables. A less experienced orthopedic doctor, and an experienced orthopedic doctor also evaluated and diagnosed the patients using postoperative pelvic radiographs. Hybrid nomograms were developed based on patient and radiograph variables to determine predictive performance. A total of 238 patients, including 95 ONFH patients and 143 non-ONFH patients, were included. A CNN model was trained using postoperative radiographs and output radiograph variables. The accuracy of the validation set was 0.873 for the CNN model, and the algorithm achieved an area under the curve (AUC) value of 0.912 for the prediction. The diagnostic and predictive ability of the algorithm was superior to that of the two doctors, based on the postoperative X-rays. The addition of DL-based radiograph variables to the clinical nomogram improved predictive performance, resulting in an AUC of 0.948 (95% CI, 0.920-0.976) and better calibration. The decision curve analysis showed that adding the DL increased the clinical usefulness of the nomogram compared with a clinical approach alone. In conclusion, we constructed a DL facilitated nomogram that incorporated a hybrid of radiograph and patient variables, which can be used to improve the prediction of preoperative osteonecrosis of the femoral head after internal fixation.
股骨颈骨折(FNFs)是一个严重的公共卫生问题,会导致高死亡率和功能障碍发生率。FNF内固定术后股骨头坏死(ONFH)是一种经常报道的并发症,也是再次手术的主要原因。早期干预可以在初始阶段预防股骨头坏死加重。然而,目前FNF固定术后未能诊断出无症状的ONFH阻碍了早期的有效干预。本研究的主要目的是使用基于普通X线平片和混合患者变量开发的深度学习(DL)方法,建立术后ONFH的预测模型。对接受闭合复位和空心钉内固定的患者进行了一项两中心回顾性研究。我们使用术后骨盆X线片和输出回归X线片变量训练了一个卷积神经网络(CNN)模型。一位经验较少的骨科医生和一位经验丰富的骨科医生也使用术后骨盆X线片对患者进行了评估和诊断。基于患者和X线片变量开发了混合列线图以确定预测性能。共纳入238例患者,包括95例ONFH患者和143例非ONFH患者。使用术后X线片和输出X线片变量训练了一个CNN模型。CNN模型验证集的准确率为0.873,该算法预测的曲线下面积(AUC)值为0.912。基于术后X线片,该算法的诊断和预测能力优于两位医生。将基于DL的X线片变量添加到临床列线图中可提高预测性能,AUC为0.948(95%CI,0.920 - 0.976),校准效果更好。决策曲线分析表明,与单独的临床方法相比,添加DL增加了列线图的临床实用性。总之,我们构建了一个包含X线片和患者变量混合的DL辅助列线图,可用于改善股骨颈骨折内固定术后股骨头坏死的术前预测。