A new Parkinson detection system based on evolutionary fast learning networks and voice measurements

Q3 Medicine
Ayoub Bouslah, Nora Taleb
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引用次数: 1

Abstract

Parkinson's disease (PD) is becoming the second most neurological syndrome of the central nervous system after Alzheimer's disease. It causes diverse symptoms which include bradykinesia (slowness of movement), voice impairments, rigidity, tremor, and poor balance. PD recognition system based on voice has founded a non-invasive alternative, but involves rather complex measurements or variables. Therefore an attention is required toward new approaches for better forecasting accuracy. In this paper, an optimal fast learning network (FLN) based on genetic algorithm (GA) was established as PD diagnosis system. FLN is a double-parallel feed-forward neural network structure, and based on GA for feature reduction and hyperparameter optimisation of the FLN, it was used as a predictive model. Finally, the conducted experiments on the Parkinson data of voice recordings over ten fold cross-validation show that proposed system is less complex and also achieved better average classification results with an accuracy of 97.47%. At the same time, it is effective in automatic identification of important vocal features. Moreover, the highest average degree of improved accuracy was (2.1%) compared with other familiar wrappers including support vector machine and K-nearest neighbours in the similar conditions.
基于进化快速学习网络和语音测量的帕金森检测系统
帕金森病(PD)正在成为仅次于阿尔茨海默病的中枢神经系统第二大神经系统综合征。它会导致多种症状,包括运动迟缓(运动缓慢)、声音障碍、僵硬、震颤和平衡能力差。基于语音的PD识别系统已经建立了一种非侵入性的替代方法,但涉及到相当复杂的测量或变量。因此,需要注意采用新的方法来提高预测的准确性。本文建立了一种基于遗传算法(GA)的最优快速学习网络(FLN)作为PD诊断系统。FLN是一种双并行前馈神经网络结构,基于遗传算法对FLN进行特征约简和超参数优化,并将其作为预测模型。最后,对录音的帕金森数据进行了十倍以上的交叉验证实验,结果表明,本文提出的系统复杂性较低,平均分类结果也较好,准确率达到97.47%。同时,对重要的声音特征进行自动识别是有效的。此外,在类似条件下,与其他熟悉的包装器(包括支持向量机和k近邻)相比,最高的平均精度提高程度为(2.1%)。
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来源期刊
CiteScore
2.20
自引率
0.00%
发文量
110
期刊介绍: IJMEI promotes an understanding of the structural/functional aspects of disease mechanisms and the application of technology towards the treatment/management of such diseases. It seeks to promote interdisciplinary collaboration between those interested in the theoretical and clinical aspects of medicine and to foster the application of computers and mathematics to problems arising from medical sciences. IJMEI includes authoritative review papers, the reporting of original research, and evaluation reports of new/existing techniques and devices. Each issue also contains a comprehensive information service. Topics covered include Hospital information/medical record systems, data protection/privacy Disease modelling/analysis, evidence-based clinical modelling/studies Computer-based patient/disease management systems Clinical trials/studies, outcome-based studies/analysis Electronic patient monitoring systems Nanotechnology in medicine, medical applications Tissue engineering, artificial organs, biomaterials design Healthcare standards, service standardisation Controlled medical terminology/vocabularies Nursing informatics, systems integration Healthcare/hospital management, economics Medical technology, intelligent instrumentation, telemedicine Medical/molecular imaging, disease management Bioinformatics, human genome studies/analysis Drug design.
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