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Prediction of Collapse Using Patient‐Specific Finite Element Analysis of Osteonecrosis of the Femoral Head

机译:使用股骨头骨折的患者特异性有限元分析预测骨折分析

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Objective To develop a prediction method for femoral head collapse by using patient‐specific finite element analysis of osteonecrosis of the femoral head (ONFH). Methods The retrospective study recruited 40 patients with ARCO stage‐II ONFH (40 pre‐collapse hips). Patients were divided into two groups according to the 1‐year follow‐up outcomes: patient group without femoral head collapse (noncollapse group, n = 20) and patient group with collapse (collapse group, n = 20). CT scans of the hip were performed for all patients once they joined the study. Patient‐specific finite element models were generated based on these original CT images following the same procedures: segmenting the necrotic lesion and viable proximal femur, meshing the computational models, assigning different material properties according to the Hounsfield unit distribution, simulating the stress loading of the slow walking gait, and measuring the distribution of the von Mises stress. Receiver operating characteristic (ROC) curve analysis was used to evaluate the predictive performance of the maximum level of the von Mises stress. The optimal cut‐off value was selected based on the Youden index and the corresponding predictive accuracy was reported as well. Results The mean level of the maximum von Mises stress in the collapse group was 2.955?±?0.539 MPa, whereas the mean stress level in the noncollapse group was 1.923?±?0.793 MPa ( P ??0.01). ROC analysis of the maximum von Mises stress found that the area under the ROC curve was 0.842 (95% CI : 0.717–0.968, P ??0.01). The maximum Youden index was 0.60, which corresponded to two optimal cut‐off values: 2.7801 MPa (sensitivity: 0.70; specificity: 0.90; predictive accuracy: 80.00%; LR+: 7), and 2.7027 MPa (sensitivity: 0.75; specificity: 0.85; predictive accuracy: 77.50%; LR+: 5). Conclusion Finite element analysis is a potential method for femoral head collapse prediction among pre‐collapse ONFH patients. The maximum level of the von Mises stress on the weight‐bearing surface of the femoral head could be a good biomechanical marker to classify the collapse risk. The collapse prediction method based on patient‐specific finite element analysis is, thus, suitable to apply to clinical practice, but further testing on a larger dataset is desirable.
机译:目的利用股骨头骨折的患者特异性有限元分析,开发股骨头塌陷预测方法(ONFH)。方法回顾性研究招募了40例ARCO阶段-II ONFH(40髋)的患者。根据1年的后续结果分为两组:患者组没有股骨头塌陷(非污染组,N = 20)和患者组,崩溃(崩溃组,N = 20)。一旦加入研究,就对所有患者进行了髋关节的CT扫描。基于相同程序的这些原始CT图像产生了特定于患者的有限元模型:分割坏死性病变和可行的近端股骨,根据Hounsfield单位分布,分配不同的材料特性,模拟压力负荷步行步态缓慢,并测量von沉默的分布压力。接收器操作特征(ROC)曲线分析用于评估VON MICES压力的最大水平的预测性能。基于YOYDEN指数选择最佳截止值,并报告了相应的预测精度。结果崩溃组最大误误误误误差的平均水平为2.955?±0.539MPa,而非可熔化组的平均应力水平为1.923?±0.793MPa(p≤≤0.01)。 ROC分析的最大von遗传措施发现,ROC曲线下的面积为0.842(95%CI:0.717-0.968,P≤0.01)。最大的YENEN指数为0.60,与两个最佳截止值:2.7801 MPa(灵敏度:0.70;特异性:0.90;预测精度:80.00%; LR +:7)和2.7027 MPa(敏感:0.75;特异性:0.85 ;预测准确度:77.50%; LR +:5)。结论有限元分析是对折血患者预崩塌患者的股骨头塌陷预测的潜在方法。 von误判对股骨头的负重表面上的von沉积的最大水平可以是良好的生物力学标记,以分类崩溃风险。因此,基于患者特异性有限元分析的折叠预测方法适用于适用于临床实践,而是希望在较大的数据集上进一步测试。

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