用于检测认知障碍的口语生物标志物

Tuka Alhanai, R. Au, James R. Glass
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引用次数: 33

摘要

在这项研究中,我们开发了一个自动化系统,从弗雷明汉心脏研究中92名受试者的神经心理检查录音中评估语音和语言特征。在弹性网络正则化二项逻辑回归模型中,共使用265个特征对认知障碍的存在进行分类,并选择最具预测性的特征。我们将性能与更大研究队列中6258名受试者的人口统计学模型(0.79 AUC)进行了比较,发现同时包含音频和文本特征的系统表现最佳(0.92 AUC),真阳性率为29%(假阳性率为0%),模型拟合良好(Hosmer-Lemeshow检验> 0.05)。我们还发现,音调和抖动的减少、讲话片段的缩短以及以问题形式表达的回答与认知障碍呈正相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spoken language biomarkers for detecting cognitive impairment
In this study we developed an automated system that evaluates speech and language features from audio recordings of neuropsychological examinations of 92 subjects in the Framingham Heart Study. A total of 265 features were used in an elastic-net regularized binomial logistic regression model to classify the presence of cognitive impairment, and to select the most predictive features. We compared performance with a demographic model from 6,258 subjects in the greater study cohort (0.79 AUC), and found that a system that incorporated both audio and text features performed the best (0.92 AUC), with a True Positive Rate of 29% (at 0% False Positive Rate) and a good model fit (Hosmer-Lemeshow test > 0.05). We also found that decreasing pitch and jitter, shorter segments of speech, and responses phrased as questions were positively associated with cognitive impairment.
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