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首页> 外文期刊>Gait & posture >Gait classification in post-stroke patients using artificial neural networks.
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Gait classification in post-stroke patients using artificial neural networks.

机译:使用人工神经网络对中风后患者的步态分类。

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摘要

The aim of this study was to test three methods for classifying the gait patterns of post-stroke patients into homogenous groups. First, qualitative test results were found to correctly classify patients' gait patterns with an average success rate of 85%. Seeking further improvement, two quantitative methods were then tested. Analysis of min/max angle values in three lower limb joints, however, was less successful, showing a correct classification rate of below 50%. The best classification results were seen using an artificial neural network (ANN) to analyze the full progression of lower limb joint angle changes as a function of the gait cycle (with success rates from 100% for the knee joint to 86% for the frontal motion of the hip joint). These findings may help clinicians improve targeted therapy.
机译:这项研究的目的是测试将中风后患者的步态模式分为同质组的三种方法。首先,发现定性测试结果可以正确分类患者的步态模式,平均成功率为85%。为了进一步改善,然后测试了两种定量方法。但是,对三个下肢关节的最小/最大角度值的分析不太成功,显示正确的分类率低于50%。使用人工神经网络(ANN)分析下肢关节角度变化随步态周期变化的完整进程(从膝关节的100%成功率到额叶运动的成功率86%),可以看到最好的分类结果髋关节)。这些发现可能有助于临床医生改善靶向治疗。

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