基于语音分析的基于软计算的帕金森病无创早期检测

Chandrasekar Ravi
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引用次数: 0

摘要

本章旨在利用言语信号作为帕金森病的行为生物标志物。受害者的词汇量大多丢失,或者在谈话或谈话突然停止时观察到很大的空白。因此,语言分析可以帮助识别对话中的并发症,从帕金森氏症的症状开始,在初始阶段本身。语音可以以无障碍的方式定期登录,机器学习技术可以应用和分析。提出了基于模糊逻辑的分类器,用于从训练语音信号中学习并对测试语音信号进行分类。提出了从语音数据中提取模糊规则的头脑风暴优化算法,并将其用于模糊分类器的学习和分类。所提出的分类器的性能使用准确性、特异性和灵敏度等指标进行评估,并与SVM、naïve贝叶斯、k-means和决策树等基准分类器进行比较。观察到该分类器的性能优于基准分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Soft Computing-Based Early Detection of Parkinson's Disease Using Non-Invasive Method Based on Speech Analysis
This chapter aims to use the speech signals that are a behavioral bio-marker for Parkinson's disease. The victim's vocabulary is mostly lost, or big gaps are observed when they are talking or the conversation is abruptly stopped. Therefore, speech analysis could help to identify the complications in conversation from the inception of the symptoms of Parkinson's disease in initial phases itself. Speech can be regularly logged in an unobstructed approach and machine learning techniques can be applied and analyzed. Fuzzy logic-based classifier is proposed for learning from the training speech signals and classifying the test speech signals. Brainstorm optimization algorithm is proposed for extracting the fuzzy rules from the speech data, which is used by fuzzy classifier for learning and classification. The performance of the proposed classifier is evaluated using metrics like accuracy, specificity, and sensitivity, and compared with benchmark classifiers like SVM, naïve Bayes, k-means, and decision tree. It is observed that the proposed classifier outperforms the benchmark classifiers.
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