Hernigou Philippe
University Paris East, Créteil, France.
Int Orthop. 2023 Mar;47(3):677-689. doi: 10.1007/s00264-022-05631-7. Epub 2022 Nov 14.
This study proposes machine learning to analyze the risk factors of the collapse in patients with non-traumatic hip osteonecrosis of the femoral head.
We collected data of 900 consecutive patients (634 males) with bilateral (428) or unilateral non-traumatic osteonecrosis diagnosed before collapse (at stage I or stage II). The follow-up was average five years (3 to 8 years). A total of 50 variables related to the osteonecrosis were included in the study. The osteonecroses were randomly divided into a training set (80%) and a validation set (20%) with a similar percentage of hips with collapse in the two groups. Machine learning (ML) algorithms were trained with the selected variables. Performance was evaluated and the different factors (variables) for collapse were ranked with Shapley values. The primary outcome was prediction of occurrence of collapse from automated inventory systems.
In this series of patients, the accuracy with machine learning for predicting collapse within three years follow-up was 81.2%. Accuracies for predicting collapse within six to 12-24 months were 54.2%, 67.3%, and 71.2%, respectively, demonstrating that the accuracy is lower for a prevision in the short term than for the mid-term. Despite none of the risk-factors alone achieving statistical significance for prediction, the system allowed ranking the different variables for risk of collapse. The highest risk factors for collapse were sickle cell disease, liver, and cardiac transplantation treated with corticosteroids, osteonecrosis volume > 50% of the femoral head. Cancer (such as leukemia), alcohol abuse, lupus erythematosus, Crohn's disease, pemphigus vulgaris treated with corticosteroids, and osteonecrosis volume between 40 and 50% were medium risk factors for collapse. Familial cluster of collapse, HIV infection, chronic renal failure, nephrotic syndrome, and renal transplantation, when treated with corticosteroids, stage II, osteonecrosis volume between 30 and 40%, chemotherapy, hip pain with VAS > 6, and collapse progression on the contralateral side, were also significant but lowest risk factors. A heat map is proposed to illustrate the ranking of the combinations of the different variables. The highest risk of collapse is obtained with association of various risks factors.
This study, for the first time, demonstrated prediction of collapse and ranking of factors for collapse with a machine learning system. This study also shows that collapse is due to a multifactorial risk factors.
本研究提出运用机器学习分析非创伤性股骨头坏死患者股骨头塌陷的危险因素。
我们收集了900例连续患者(634例男性)的数据,这些患者患有双侧(428例)或单侧非创伤性骨坏死,且在塌陷前(I期或II期)被诊断出来。随访时间平均为5年(3至8年)。本研究共纳入了50个与骨坏死相关的变量。将骨坏死患者随机分为训练集(80%)和验证集(20%),两组中出现塌陷的髋关节比例相似。使用选定的变量对机器学习(ML)算法进行训练。评估其性能,并使用Shapley值对塌陷的不同因素(变量)进行排名。主要结果是通过自动化库存系统预测塌陷的发生情况。
在这组患者中,机器学习预测3年内塌陷的准确率为81.2%。预测6至12 - 24个月内塌陷的准确率分别为54.2%、67.3%和71.2%,表明短期预测的准确率低于中期预测。尽管没有一个单独的危险因素在预测方面达到统计学意义,但该系统能够对塌陷风险的不同变量进行排名。塌陷的最高风险因素是镰状细胞病、肝脏和接受皮质类固醇治疗的心脏移植、骨坏死体积>股骨头的50%。癌症(如白血病)、酗酒、红斑狼疮、克罗恩病(又称局限性肠炎)、接受皮质类固醇治疗的寻常型天疱疮以及骨坏死体积在40%至50%之间是塌陷的中度风险因素。家族性塌陷聚集、HIV感染、慢性肾衰竭、肾病综合征以及接受皮质类固醇治疗的肾移植、II期、骨坏死体积在30%至40%之间、化疗、视觉模拟评分法(VAS)>6的髋关节疼痛以及对侧塌陷进展,也是显著但风险最低的因素。我们提出了一个热图来说明不同变量组合的排名情况。多种风险因素联合时塌陷风险最高。
本研究首次展示了使用机器学习系统对塌陷进行预测以及对塌陷因素进行排名。本研究还表明,塌陷是由多因素风险因素导致的。