Classification of Parkinson's disease from smartphone recording data using time-frequency analysis and convolutional neural network

被引:1
|
作者
Worasawate, Denchai [1 ]
Asawaponwiput, Warisara [1 ]
Yoshimura, Natsue [2 ]
Intarapanich, Apichart [3 ]
Surangsrirat, Decho [4 ]
机构
[1] Kasetsart Univ, Fac Engn, Dept Elect Engn, Bangkok, Thailand
[2] Tokyo Inst Technol, Inst Innovat Res, Yokohama, Kanagawa, Japan
[3] Natl Elect & Comp Technol Ctr, Educ Technol Team, Pathum Thani, Thailand
[4] Natl Sci & Technol Dev Agcy, Assist Technol & Med Devices Res Ctr, Pathum Thani, Thailand
关键词
PD voice; audio classification; convolutional neural network; mPower study; AUTOMATIC CLASSIFICATION;
D O I
10.3233/THC-220386
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
BACKGROUND: Parkinson's disease (PD) is a long-term neurodegenerative disease of the central nervous system. The current diagnosis is dependent on clinical observation and the abilities and experience of a trained specialist. One of the symptoms that affects most patients is voice impairment. OBJECTIVE: Voice samples are non-invasive data that can be collected remotely for diagnosis and disease progression monitoring. In this study, we analyzed voice recording data from a smartphone as a possible medical self-diagnosis tool by using only one-second voice recording. The data from one of the largest mobile PD studies, the mPower study, was used. METHODS: A total of 29,798 ten-second voice recordings on smartphone from 4,051 participants were used for the analysis. The voice recordings were from sustained phonation by participants saying /aa/ for ten seconds into an iPhone microphone. A dataset comprising 385,143 short one-second audio samples was generated from the original ten-second voice recordings. The samples were converted to a spectrogram using a short-time Fourier transform. CNN models were then applied to classify the samples. RESULTS: Classification accuracies of the proposed method with LeNet-5, ResNet-50, and VGGNet-16 are 97.7 +/- 0.1%, 98.6 +/- 0.2%, and 99.3 +/- 0.1%, respectively. CONCLUSIONS: We achieve a respectable classification performance using a generalized approach on a dataset with a large number of samples. The result emphasizes that an analysis based on one-second clip recorded on a smartphone could be a promising non-invasive and remotely available PD biomarker.
引用
收藏
页码:705 / 718
页数:14
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