首页> 外文会议>32nd Annual International Conference of the IEEE Engineering in Medicine and Biology Society >Human gait classification after lower limb fracture using Artificial Neural Networks and principal component analysis
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Human gait classification after lower limb fracture using Artificial Neural Networks and principal component analysis

机译:下肢骨折后人的步态分类的人工神经网络和主成分分析

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Vertical ground reaction force (vGRF) has been commonly used in human gait analysis making possible the study of mechanical overloads in the locomotor system. This study aimed at applying the principal component (PC) analysis and two Artificial Neural Networks (ANN), multi-layer feed forward (FF) and self organized maps (SOM), for classifying and clustering gait patterns from normal subjects (CG) and patients with lower limb fractures (FG). The vGRF from a group of 51 subjects, including 38 in CG and 13 in FG were used for PC analysis and classification. It was also tested the classification of vGRF from five subjects in a treatment group (TG) that were submitted to a physiotherapeutic treatment. Better results were obtained using four PC as inputs of the ANN, with 96% accuracy, 100% specificity and 85% sensitivity using SOM, against 92% accuracy, 100% specificity and 69% sensitivity for FF classification. After treatment, three of five subjects were classified as presenting normal vGRF.
机译:垂直地面反作用力(vGRF)已广泛用于人体步态分析,从而有可能研究运动系统中的机械过载。这项研究旨在应用主成分(PC)分析和两个人工神经网络(ANN),多层前馈(FF)和自组织图(SOM),对正常受试者(CG)和下肢骨折(FG)患者。来自51名受试者的vGRF用于PC分析和分类,其中包括CG中的38名和FG中的13名。还测试了治疗组(TG)中接受物理治疗的五名受试者的vGRF分类。使用四台PC作为ANN的输入可获得更好的结果,使用SOM的准确度为96%,特异性为100%,灵敏度为85%,而FF分类的准确度为92%,准确度为100%,灵敏度为69%。治疗后,将五名受试者中的三名归为正常vGRF。

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