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首页> 外文期刊>Medical engineering & physics. >Design and testing of a genetic algorithm neural network in the assessment of gait patterns.
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Design and testing of a genetic algorithm neural network in the assessment of gait patterns.

机译:步态模式评估中遗传算法神经网络的设计和测试。

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摘要

It is important to be able to quantify changes in gait pattern accurately in order to understand the clinical implications of surgery or rehabilitation. Although supervised feed-forward backpropagation neural networks are very efficient in many pattern-recognition tasks, the genetic algorithm neural network (GANN), which can search in some appropriate space, has not been used previously for gait-pattern recognition. This study discusses how to use the GANN approach in gait-pattern recognition, and evaluates the complexity and training strategy of the particular classification problem. Both the GANN and a traditional artificial neural network (ANN) were used to classify the gait patterns of patients with ankle arthrodesis and normal subjects. The GANN model was able to classify subjects with recognition rates of up to 98.7%. In contrast, the ANN trained by using all possible predictor variables was only able to classify the subjects with recognition rates of 89.7%. It is suggested that the GANN model is more suitable to exploit the patient's gait pattern. The value of the neuron output can be used as an index of the difference from normal. By this means, all pathological gait patterns may be presented quantitatively.
机译:重要的是要能够准确量化步态模式的变化,以了解手术或康复的临床意义。尽管有监督的前馈反向传播神经网络在许多模式识别任务中非常有效,但是可以在某个适当空间中进行搜索的遗传算法神经网络(GANN)以前并未用于步态模式识别。这项研究讨论了如何在步态模式识别中使用GANN方法,并评估了特定分类问题的复杂性和训练策略。 GANN和传统的人工神经网络(ANN)均用于对踝关节固定患者和正常受试者的步态进行分类。 GANN模型能够对对象进行分类,识别率高达98.7%。相比之下,通过使用所有可能的预测变量进行训练的人工神经网络只能对识别率为89.7%的对象进行分类。建议GANN模型更适合于利用患者的步态模式。神经元输出的值可以用作与正常差异的指标。通过这种方式,可以定量地呈现所有病理步态模式。

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