泰国语MoCA评价中注意评分的声学特征分析

Wirot Treemongkolchok, P. Punyabukkana, Dittaya Wanvarie, Ploy N. Pratanwanich
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引用次数: 0

摘要

像蒙特利尔认知评估(MoCA)这样的筛选测试可以帮助诊断轻度认知障碍(MCI)。MoCA包括跨越不同认知领域的子测试。许多研究人员试图通过使用语音相关的特征,如声学、语言和韵律特征来检测轻度认知障碍。然而,这些特征可以将MCI患者与健康人区分开来,但不能描述每个患者的特定认知域损伤。本研究的重点是数字后向广度(DBS)和数字前向广度(DFS)这两个与认知注意领域相关的子测试。我们开发了一个模型,并从泰国MoCA的这些子测试中记录的语音中识别出该领域最相关的语音特征。我们根据特征的重要性对其进行排序,发现在注意力域使用重要特征的子集比使用整个特征集具有更高的预测能力。这两个测试中最重要的特征是声音的中位数持续时间和声音的持续时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Analysis of Acoustic Features for Attention Score in Thai MoCA Assessment
Screening tests like the Montreal Cognitive Assessment (MoCA) can help diagnose mild cognitive impairment (MCI). MoCA comprises subtests that span various cognitive domains. Numerous researchers attempt to detect MCI by employing speech-related features such as acoustic, linguistic, and prosodic features. However, the features can distinguish patients with MCI from healthy people but do not describe each patient's specific cognitive domain impairment. This study focuses on Digit Backward Span (DBS) and Digit Forward Span (DFS), subtests related to the cognitive attention domain in MoCA. We develop a model and identify the most relevant speech features for the domain from a recorded voice from these subtests in the Thai MoCA. We rank features by their importance and found that using a subset of important features has higher predictive power than using the entire feature set in impairment in the attention domain. The most important features in both tests are the median duration of voice and the duration of voice.
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