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Effectiveness of Speech Analysis in Classification of Neurodegenerative Diseases: A study on Parkinson's Disease

机译:言语分析在神经退行性疾病分类中的有效性:帕金森病的研究

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Neurodegenerative (ND) diseases have caused significant increase in the death rates across the world. The urgent need for biomarkers for diseases like Alzheimer's disease (AD), Parkinson's disease (PD) and amyotrophic lateral sclerosis (ALS), is vastly growing area of research in biomedical engineering. Speech production is a complex neuromuscular task that get affected due to ND diseases. In this study, we investigated the effectiveness of speech analysis in the classification of ND diseases focusing on PD. In the literature, existing methodologies in speech analysis using signal processing aim at extraction and usage of features to capture perturbations due to PD. A novel methodology is proposed in this paper that extracts features at a pitch synchronous level from the speech. Instead of the average, variance in these features at a syllabic level is used for classification. An unsupervised k-means clustering algorithm is used to perform classification. Feature selection based on statistical testing is performed to address dimensionality problem. With a total of 40 participants, this approach has provided encouraging F1-Scores.
机译:神经变性(ND)疾病导致全世界死亡率的显着增加。迫切需要对阿尔茨海默病(AD),帕金森病(PD)和肌萎缩侧升硬化症(ALS)等疾病的迫切需要是生物医学工程研究领域。语音生产是一种复杂的神经肌肉任务,由于ND疾病而受到影响。在本研究中,我们研究了言语分析在关注PD的ND疾病分类中的有效性。在文献中,使用信号处理的言语分析中的现有方法旨在提取和使用特征来捕获由于PD而捕获扰动。在本文中提出了一种新的方法,其从语音中提取特征在间距同步级别。代替平均值,在音节级别的这些特征中的方差用于分类。无监督的K-means聚类算法用于执行分类。基于统计测试的特征选择是为了解决维度问题。共有40名参与者,这种方法提供了令人鼓舞的F1分数。

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