Novel Screening Tool Using Non-linguistic Voice Features Derived from Simple Phrases to Detect Mild Cognitive Impairment and Dementia.

JAR life Pub Date : 2023-01-01 DOI:10.14283/jarlife.2023.12
D Mizuguchi, T Yamamoto, Y Omiya, K Endo, K Tano, M Oya, S Takano
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Abstract

Appropriate intervention and care in detecting cognitive impairment early are essential to effectively prevent the progression of cognitive deterioration. Diagnostic voice analysis is a noninvasive and inexpensive screening method that could be useful for detecting cognitive deterioration at earlier stages such as mild cognitive impairment. We aimed to distinguish between patients with dementia or mild cognitive impairment and healthy controls by using purely acoustic features (i.e., nonlinguistic features) extracted from two simple phrases. Voice was analyzed on 195 recordings from 150 patients (age, 45-95 years). We applied a machine learning algorithm (LightGBM; Microsoft, Redmond, WA, USA) to test whether the healthy control, mild cognitive impairment, and dementia groups could be accurately classified, based on acoustic features. Our algorithm performed well: area under the curve was 0.81 and accuracy, 66.7% for the 3-class classification. Thus, our vocal biomarker is useful for automated assistance in diagnosing early cognitive deterioration.

Abstract Image

使用从简单短语衍生的非语言语音特征来检测轻度认知障碍和痴呆的新型筛选工具。
早期发现适当的干预和护理是有效预防认知功能恶化的必要条件。诊断性声音分析是一种非侵入性和廉价的筛查方法,可用于检测早期阶段的认知退化,如轻度认知障碍。我们的目的是通过使用从两个简单短语中提取的纯声学特征(即非语言特征)来区分痴呆或轻度认知障碍患者和健康对照组。对150例患者(年龄45-95岁)的195份录音进行语音分析。我们应用了一种机器学习算法(LightGBM;Microsoft, Redmond, WA, USA)测试是否可以根据声学特征准确分类健康对照组、轻度认知障碍组和痴呆组。我们的算法表现良好,对3类分类的曲线下面积为0.81,准确率为66.7%。因此,我们的声音生物标志物对早期认知退化的自动诊断是有用的。
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