病理步态中足底压力不对称的人工神经网络自动分类

Linah Wafai, A. Zayegh, J. Woulfe, R. Begg
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引用次数: 6

摘要

足部的病理是影响所有年龄个体的一些最衰弱的问题。通常,这些病理是痛苦的,并与高或异常的足底压力相对应,这可能导致病理性步态时两脚之间的不对称。这些问题,如果不及时治疗,可能会升级为严重的足底损伤。足底压力异常的诊断可能是不可靠的,特别是当使用传统的方法主要基于简单的定性临床筛查。因此,通过可靠地检测足底压力异常,早期干预和预防足底损伤是必要的。本文旨在评估应用人工神经网络(ANN)识别和正确分类控制(健康)和病理步态时足底压力不对称的可行性。将神经网络分类器模型应用于47名参与者的足底压力不对称,结果表明网络在区分健康和病理步态方面具有良好的能力。模型的泛化性能达到了87% -100%的分类准确率。这种基于足部压力的自动识别模型可能被证明对其他足部病变(如糖尿病足溃疡风险)的分类和诊断有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated classification of plantar pressure asymmetry during pathological gait using artificial neural network
Pathologies of the foot are amongst some of the most debilitating problems affecting individuals of all ages. Often, these pathologies are painful and correspond with high or abnormal plantar pressure, which can result in asymmetry between the feet during pathological gait. These problems, if left untreated, can escalate to severe plantar injury. The diagnosis of plantar pressure abnormalities can be unreliable, particularly when using the traditional methods based predominately on simple qualitative clinical screenings. It is therefore imperative for the early intervention and prevention of plantar injury, by reliably detecting plantar pressure abnormalities. This paper aims to evaluate the feasibility of applying an artificial neural network (ANN) in identifying, and correctly classifying plantar pressure asymmetry during control (healthy) and pathological gait. The results achieved using ANN classifier models applied to the plantar pressure asymmetry of 47 participants has demonstrated good network ability in differentiating healthy and pathological gait. The models' generalisation performance achieved classification accuracies between 87-100%. Such an automated foot pressure-based recognition model may prove to be useful for classification and diagnosis of other foot pathologies such as ulceration risk in the diabetic foot.
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