声学语言特征与晚年抑郁和冷漠症状相关:初步发现

IF 4 Q1 CLINICAL NEUROLOGY
Daniel Harlev, Shir Singer, Maya Goldshalger, Noham Wolpe, Eyal Bergmann
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引用次数: 0

摘要

背景:晚年抑郁症(LLD)是一种与认知能力下降和神经退行性过程相关的异质性疾病,需要开发新的生物标志物。我们试图提供对LLD敏感的声学语音特征及其与抑郁维度的关系的初步证据。方法:采用老年抑郁量表(GDS)对40例患者进行评估,其中女性24例,年龄65 ~ 82岁。从语音样本(阅读预写文本)中提取语音特征,并使用随机森林和XGBoost模型作为LLD的分类器进行测试。事后分析检查了这些声学特征和特定抑郁维度之间的关系。结果:分类模型对LLD表现出中等的判别能力,在样本外测试集中,随机森林的接收者工作特征= 0.78,XGBoost的接收者工作特征= 0.84。最高分类特征与冷漠维度的相关性最强(r2 = 0.43)。讨论:可能支持LLD诊断的声学声乐特征优先与冷漠相关。重点:晚年抑郁症(LLD)的抑郁维度具有不同的认知相关性,冷漠以更明显的认知障碍为特征。声学语音特征可以预测LLD。利用声学特征,我们能够训练一个随机森林模型来预测一个持有样本中的LLD。预测LLD的声学语音特征优先与冷漠相关。这些结果表明,在LLD的声音特征中,冷漠占主导地位,并建议在开发声学标记时应考虑LLD的临床异质性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acoustic speech features are associated with late-life depression and apathy symptoms: Preliminary findings.

Background: Late-life depression (LLD) is a heterogenous disorder related to cognitive decline and neurodegenerative processes, raising a need for the development of novel biomarkers. We sought to provide preliminary evidence for acoustic speech signatures sensitive to LLD and their relationship to depressive dimensions.

Methods: Forty patients (24 female, aged 65-82 years) were assessed with the Geriatric Depression Scale (GDS). Vocal features were extracted from speech samples (reading a pre-written text) and tested as classifiers of LLD using random forest and XGBoost models. Post hoc analyses examined the relationship between these acoustic features and specific depressive dimensions.

Results: The classification models demonstrated moderate discriminative ability for LLD with receiver operating characteristic = 0.78 for random forest and 0.84 for XGBoost in an out-of-sample testing set. The top classifying features were most strongly associated with the apathy dimension (R 2 = 0.43).

Discussion: Acoustic vocal features that may support the diagnosis of LLD are preferentially associated with apathy.

Highlights: The depressive dimensions in late-life depression (LLD) have different cognitive correlates, with apathy characterized by more pronounced cognitive impairment.Acoustic speech features can predict LLD. Using acoustic features, we were able to train a random forest model to predict LLD in a held-out sample.Acoustic speech features that predict LLD are preferentially associated with apathy. These results indicate a predominance of apathy in the vocal signatures of LLD, and suggest that the clinical heterogeneity of LLD should be considered in development of acoustic markers.

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来源期刊
CiteScore
7.80
自引率
7.50%
发文量
101
审稿时长
8 weeks
期刊介绍: Alzheimer''s & Dementia: Diagnosis, Assessment & Disease Monitoring (DADM) is an open access, peer-reviewed, journal from the Alzheimer''s Association® that will publish new research that reports the discovery, development and validation of instruments, technologies, algorithms, and innovative processes. Papers will cover a range of topics interested in the early and accurate detection of individuals with memory complaints and/or among asymptomatic individuals at elevated risk for various forms of memory disorders. The expectation for published papers will be to translate fundamental knowledge about the neurobiology of the disease into practical reports that describe both the conceptual and methodological aspects of the submitted scientific inquiry. Published topics will explore the development of biomarkers, surrogate markers, and conceptual/methodological challenges. Publication priority will be given to papers that 1) describe putative surrogate markers that accurately track disease progression, 2) biomarkers that fulfill international regulatory requirements, 3) reports from large, well-characterized population-based cohorts that comprise the heterogeneity and diversity of asymptomatic individuals and 4) algorithmic development that considers multi-marker arrays (e.g., integrated-omics, genetics, biofluids, imaging, etc.) and advanced computational analytics and technologies.
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