基于进化快速学习网络的帕金森病识别优化研究

Bouslah Ayoub, Nora Taleb
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引用次数: 2

摘要

目的帕金森病(PD)是一种众所周知的复杂神经退行性疾病。通常,其识别基于运动障碍,而使用计算机器学习(ML)对其主要症状的计算机估计具有很高的曝光率,这得到了研究的支持。然而,机器学习方法需要首先改进它们的参数,然后使用生成的最佳模型。这个过程通常需要一个专家用户来监督算法的性能。因此,需要注意提高预测准确性的新方法。设计/方法/方法为临床医生提供一个可用的帕金森病识别模型作为辅助功能,作者提出了一个新的进化分类模型。该预测模型的核心是采用遗传算法优化的快速学习网络(FLN)。为了得到更好的特征和参数子集,引入了一种新的编码结构来改进遗传算法以获得最优FLN模型。通过基于Speech和HandPD基准数据集的一系列实验,对所提出的模型进行了深入的评估。非常流行的包装器归纳模型,如支持向量机(SVM), k近邻(KNN)已经在相同的条件下进行了测试。结果表明,该模型在准确率和g-均值方面均取得了较好的效果。提出了一种新的高效PD检测模型,称为A-W-FLN。A-W-FLN利用FLN作为基分类器;为了发挥其较高的泛化能力,同时还嵌入了识别能力,在检测过程中发现最适合的特征模型。此外,该方法还自动优化了FLN的结构,使其具有更少的隐藏节点数和实体连接权值。这有助于网络在具有非线性特征的复杂PD数据集上进行训练,并产生更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An optimized Parkinson's disorder identification through evolutionary fast learning network
PurposeParkinson's disease (PD) is a well-known complex neurodegenerative disease. Typically, its identification is based on motor disorders, while the computer estimation of its main symptoms with computational machine learning (ML) has a high exposure which is supported by researches conducted. Nevertheless, ML approaches required first to refine their parameters and then to work with the best model generated. This process often requires an expert user to oversee the performance of the algorithm. Therefore, an attention is required towards new approaches for better forecasting accuracy.Design/methodology/approachTo provide an available identification model for Parkinson disease as an auxiliary function for clinicians, the authors suggest a new evolutionary classification model. The core of the prediction model is a fast learning network (FLN) optimized by a genetic algorithm (GA). To get a better subset of features and parameters, a new coding architecture is introduced to improve GA for obtaining an optimal FLN model.FindingsThe proposed model is intensively evaluated through a series of experiments based on Speech and HandPD benchmark datasets. The very popular wrappers induction models such as support vector machine (SVM), K-nearest neighbors (KNN) have been tested in the same condition. The results support that the proposed model can achieve the best performances in terms of accuracy and g-mean.Originality/valueA novel efficient PD detection model is proposed, which is called A-W-FLN. The A-W-FLN utilizes FLN as the base classifier; in order to take its higher generalization ability, and identification capability is also embedded to discover the most suitable feature model in the detection process. Moreover, the proposed method automatically optimizes the FLN's architecture to a smaller number of hidden nodes and solid connecting weights. This helps the network to train on complex PD datasets with non-linear features and yields superior result.
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