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Speech Quality Feature Analysis for Classification of Depression and Dementia Patients

机译:抑郁症和痴呆症患者的语音质量特征分析

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摘要

Loss of cognitive ability is commonly associated with dementia, a broad category of progressive brain diseases. However, major depressive disorder may also cause temporary deterioration of one’s cognition known as pseudodementia. Differentiating a true dementia and pseudodementia is still difficult even for an experienced clinician and extensive and careful examinations must be performed. Although mental disorders such as depression and dementia have been studied, there is still no solution for shorter and undemanding pseudodementia screening. This study inspects the distribution and statistical characteristics from both dementia patient and depression patient, and compared them. It is found that some acoustic features were shared in both dementia and depression, albeit their correlation was reversed. Statistical significance was also found when comparing the features. Additionally, the possibility of utilizing machine learning for automatic pseudodementia screening was explored. The machine learning part includes feature selection using LASSO algorithm and support vector machine (SVM) with linear kernel as the predictive model with age-matched symptomatic depression patient and dementia patient as the database. High accuracy, sensitivity, and specificity was obtained in both training session and testing session. The resulting model was also tested against other datasets that were not included and still performs considerably well. These results imply that dementia and depression might be both detected and differentiated based on acoustic features alone. Automated screening is also possible based on the high accuracy of machine learning results.
机译:认知能力的丧失通常与痴呆有关,痴呆是进行性脑疾病的一大类。但是,严重的抑郁症也可能导致认知能力暂时下降,称为假性痴呆。即使对于有经验的临床医生,区分真正的痴呆和假性痴呆仍然是困难的,并且必须进行广泛而仔细的检查。尽管已经研究了诸如抑郁症和痴呆症等精神障碍,但对于更短和不需要的假性痴呆症筛查仍然没有解决方案。本研究检查了痴呆症患者和抑郁症患者的分布和统计特征,并进行了比较。研究发现,尽管它们的相关性相反,但在痴呆和抑郁症中都有一些声学特征。比较这些特征时,还发现了统计意义。此外,探索了利用机器学习进行自动假性痴呆筛查的可能性。机器学习部分包括使用LASSO算法的特征选择和以线性核为预测模型的支持向量机(SVM),以年龄匹配的有症状抑郁症患者和痴呆患者为数据库。在培训课程和测试课程中均获得了较高的准确性,敏感性和特异性。还针对未包括在内的其他数据集测试了生成的模型,并且仍然表现良好。这些结果暗示痴呆和抑郁症可能仅基于声学特征就可以被检测和区分。基于机器学习结果的高精度,自动筛选也是可能的。

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