Soft Computing-Based Early Detection of Parkinson's Disease Using Non-Invasive Method Based on Speech Analysis

Soft Computing-Based Early Detection of Parkinson's Disease Using Non-Invasive Method Based on Speech Analysis

Chandrasekar Ravi
ISBN13: 9781522585671|ISBN10: 1522585672|EISBN13: 9781522585688
DOI: 10.4018/978-1-5225-8567-1.ch006
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MLA

Ravi, Chandrasekar. "Soft Computing-Based Early Detection of Parkinson's Disease Using Non-Invasive Method Based on Speech Analysis." Early Detection of Neurological Disorders Using Machine Learning Systems, edited by Sudip Paul, et al., IGI Global, 2019, pp. 96-107. https://doi.org/10.4018/978-1-5225-8567-1.ch006

APA

Ravi, C. (2019). Soft Computing-Based Early Detection of Parkinson's Disease Using Non-Invasive Method Based on Speech Analysis. In S. Paul, P. Bhattacharya, & A. Bit (Eds.), Early Detection of Neurological Disorders Using Machine Learning Systems (pp. 96-107). IGI Global. https://doi.org/10.4018/978-1-5225-8567-1.ch006

Chicago

Ravi, Chandrasekar. "Soft Computing-Based Early Detection of Parkinson's Disease Using Non-Invasive Method Based on Speech Analysis." In Early Detection of Neurological Disorders Using Machine Learning Systems, edited by Sudip Paul, Pallab Bhattacharya, and Arindam Bit, 96-107. Hershey, PA: IGI Global, 2019. https://doi.org/10.4018/978-1-5225-8567-1.ch006

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Abstract

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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