利用机器学习分析阿尔茨海默病的语音特征:病例对照研究

IF 2.4 4区 医学 Q2 HEALTH CARE SCIENCES & SERVICES Healthcare Pub Date : 2024-11-04 DOI:10.3390/healthcare12212194
Shinichi Noto, Yuichi Sekiyama, Ryo Nagata, Gai Yamamoto, Toshiaki Tamura
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引用次数: 0

摘要

背景:据报道,阿尔茨海默病患者(AD)的言语和语言发生了变化。利用机器学习来描述这些异常可能有助于对阿尔茨海默病进行早期非侵入性诊断:我们对 83 名阿尔茨海默病患者和 75 名健康老人进行了认知功能评估(包括迷你精神状态检查),并记录了评估前后的对话,以评估参与者的言语。我们分析了言语的频谱、强度、基频以及强度和基频的微小时间变化(Δ)的特征,并对AD患者和健康参与者进行了比较。此外,我们还评估了两组之间存在差异的语音特征作为单一解释变量的表现:结果:我们发现两组患者在几乎所有语音频谱要素上都存在明显差异。在强度方面,我们发现两组之间除标准偏差外,其他因素均存在显著差异。在性能评估中,通过逻辑回归分析发现,频谱的重心(0.908 ± 0.036)、平均偏度(0.904 ± 0.023)、峰度(0.932 ± 0.023)和标准偏差(0.977 ± 0.012)的曲线下面积较高:本研究利用机器学习揭示了被诊断为注意力缺失症的患者与健康老年人的语音特征。结论:本研究利用机器学习技术揭示了被诊断为注意力缺失症的患者与健康老年人的语音特征,发现两组患者在频谱的所有成分上都存在显著差异,为将来对注意力缺失症进行早期无创诊断铺平了道路。
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Analysis of Speech Features in Alzheimer's Disease with Machine Learning: A Case-Control Study.

Background: Changes in the speech and language of patients with Alzheimer's disease (AD) have been reported. Using machine learning to characterize these irregularities may contribute to the early, non-invasive diagnosis of AD.

Methods: We conducted cognitive function assessments, including the Mini-Mental State Examination, with 83 patients with AD and 75 healthy elderly participants, and recorded pre- and post-assessment conversations to evaluate participants' speech. We analyzed the characteristics of the spectrum, intensity, fundamental frequency, and minute temporal variation (∆) of the intensity and fundamental frequency of the speech and compared them between patients with AD and healthy participants. Additionally, we evaluated the performance of the speech features that differed between the two groups as single explanatory variables.

Results: We found significant differences in almost all elements of the speech spectrum between the two groups. Regarding the intensity, we found significant differences in all the factors except for the standard deviation between the two groups. In the performance evaluation, the areas under the curve revealed by logistic regression analysis were higher for the center of gravity (0.908 ± 0.036), mean skewness (0.904 ± 0.023), kurtosis (0.932 ± 0.023), and standard deviation (0.977 ± 0.012) of the spectra.

Conclusions: This study used machine learning to reveal speech features of patients diagnosed with AD in comparison with healthy elderly people. Significant differences were found between the two groups in all components of the spectrum, paving the way for early non-invasive diagnosis of AD in the future.

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来源期刊
Healthcare
Healthcare Medicine-Health Policy
CiteScore
3.50
自引率
7.10%
发文量
0
审稿时长
47 days
期刊介绍: Healthcare (ISSN 2227-9032) is an international, peer-reviewed, open access journal (free for readers), which publishes original theoretical and empirical work in the interdisciplinary area of all aspects of medicine and health care research. Healthcare publishes Original Research Articles, Reviews, Case Reports, Research Notes and Short Communications. We encourage researchers to publish their experimental and theoretical results in as much detail as possible. For theoretical papers, full details of proofs must be provided so that the results can be checked; for experimental papers, full experimental details must be provided so that the results can be reproduced. Additionally, electronic files or software regarding the full details of the calculations, experimental procedure, etc., can be deposited along with the publication as “Supplementary Material”.
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