首页> 外文会议>Annual Conference of Japanese Society for Medical and Biological Engineering;Annual International Conference of the IEEE Engineering in Medicine and Biology Society >Interpretation of movement during stair ascent for predicting severity and prognosis of knee osteoarthritis in elderly women using support vector machine
【24h】

Interpretation of movement during stair ascent for predicting severity and prognosis of knee osteoarthritis in elderly women using support vector machine

机译:使用支持向量机解释楼梯上升过程中的运动,以预测老年妇女的膝盖骨关节炎的严重程度和预后

获取原文

摘要

Several studies have demonstrated that pathologic movement changes in knee osteoarthritis (OA) may contribute to disease progression. The aim of this study was to investigate the association between movement changes during stair ascent and pain, radiographic severity, and prognosis of knee OA in the elderly women using machine learning (ML) over a seven-year follow-up period. Eighteen elderly female patients with knee OA and 20 healthy controls were enrolled. Kinematic data for stair ascent were obtained using a 3D-motion analysis system at baseline. Kinematic factors were analyzed based on one of the popular ML methods, support vector machines (SVM). SVM was used to search kinematic predictors associated with pain, radiographic severity of knee OA, and unfavorable outcomes, which were defined as persistent knee pain as reported at the seven-year follow-up or as having undergone total knee replacement during the follow-up period. Six patients (46.2%) had unfavorable outcomes at the seven-year follow-up. SVM showed accuracy of detection of knee OA (97.4%), prediction of pain (83.3%), radiographic severity (83.3%), and unfavorable outcomes (69.2%). The predictors with SVM included the time of stair ascent, maximal anterior pelvis tilting, knee flexion at initial foot contact, and ankle dorsiflexion at initial foot contact. The interpretation of movement during stair ascent using ML may be helpful for physicians not only in detecting knee OA, but also in evaluating pain and radiographic severity.
机译:多项研究表明,膝骨关节炎(OA)的病理运动变化可能有助于疾病进展。这项研究的目的是研究在长达7年的随访期内,老年妇女使用机器学习(ML)来研究楼梯上升和疼痛期间的运动变化与疼痛,放射线照相严重程度以及膝骨关节炎预后之间的关系。纳入18名老年女性膝OA患者和20名健康对照。在基线使用3D运动分析系统获得楼梯上升的运动学数据。基于流行的ML方法之一,支持向量机(SVM)对运动因素进行了分析。 SVM用于搜索与疼痛,膝OA的影像学严重程度和不良预后相关的运动学预测因子,这些预后定义为在7年随访中报告的持续性膝部疼痛或在随访期间进行了全膝关节置换期。在7年的随访中,有6例(46.2%)患者的预后不良。 SVM显示膝骨OA的检测准确度(97.4%),疼痛预测(83.3%),影像学严重度(83.3%)和不良结果(69.2%)。支持向量机的预测因素包括爬楼梯的时间,最大的前骨盆倾斜时间,初次接触脚时的膝盖屈曲以及初次接触脚脚时的踝背屈。使用ML解释楼梯上升过程中的运动可能不仅对医生膝关节OA有帮助,而且对评估疼痛和影像学严重程度也有帮助。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号