From the Institute of Behavioral Science, Feinstein Institutes for Medical Research, Northwell Health, Glen Oaks, New York (Tang, Cong, Serpe, Berretta, John); the Institute of Health System Science, Feinstein Institutes for Medical Research, Northwell Health, Manhasset, New York (Mercep, Bhatti, Gromova, Sinvani); Department of Linguistics, University of Pennsylvania, Philadelphia, PA (Liberman).
From the Institute of Behavioral Science, Feinstein Institutes for Medical Research, Northwell Health, Glen Oaks, New York (Tang, Cong, Serpe, Berretta, John); the Institute of Health System Science, Feinstein Institutes for Medical Research, Northwell Health, Manhasset, New York (Mercep, Bhatti, Gromova, Sinvani); Department of Linguistics, University of Pennsylvania, Philadelphia, PA (Liberman)
J Psychiatry Neurosci. 2023 Jul 4;48(4):E255-E264. doi: 10.1503/jpn.230026. Print 2023 Jul-Aug.
Delirium is a critically underdiagnosed syndrome of altered mental status affecting more than 50% of older adults admitted to hospital. Few studies have incorporated speech and language disturbance in delirium detection. We sought to describe speech and language disturbances in delirium, and provide a proof of concept for detecting delirium using computational speech and language features.
Participants underwent delirium assessment and completed language tasks. Speech and language disturbances were rated using standardized clinical scales. Recordings and transcripts were processed using an automated pipeline to extract acoustic and textual features. We used binomial, elastic net, machine learning models to predict delirium status.
We included 33 older adults admitted to hospital, of whom 10 met criteria for delirium. The group with delirium scored higher on total language disturbances and incoherence, and lower on category fluency. Both groups scored lower on category fluency than the normative population. Cognitive dysfunction as a continuous measure was correlated with higher total language disturbance, incoherence, loss of goal and lower category fluency. Including computational language features in the model predicting delirium status increased accuracy to 78%.
This was a proof-of-concept study with limited sample size, without a set-aside cross-validation sample. Subsequent studies are needed before establishing a generalizable model for detecting delirium.
Language impairments were elevated among patients with delirium and may also be used to identify subthreshold cognitive disturbances. Computational speech and language features are promising as accurate, noninvasive and efficient biomarkers of delirium.
谵妄是一种严重诊断不足的精神状态改变综合征,影响超过 50%的住院老年患者。很少有研究将言语和语言障碍纳入谵妄检测中。我们旨在描述谵妄中的言语和语言障碍,并提供使用计算言语和语言特征检测谵妄的概念验证。
参与者接受了谵妄评估并完成了语言任务。使用标准化临床量表评估言语和语言障碍。使用自动流水线处理记录和转录本,以提取声学和文本特征。我们使用二项式、弹性网、机器学习模型来预测谵妄状态。
我们纳入了 33 名住院的老年人,其中 10 名符合谵妄标准。有谵妄的组在总语言障碍和不连贯方面得分较高,在类别流畅性方面得分较低。两组在类别流畅性方面的得分均低于正常人群。作为连续测量的认知功能障碍与较高的总语言障碍、不连贯、目标丧失和较低的类别流畅性相关。在预测谵妄状态的模型中纳入计算语言特征可将准确性提高到 78%。
这是一项概念验证研究,样本量有限,没有预留的交叉验证样本。在建立可用于检测谵妄的通用模型之前,还需要进一步研究。
谵妄患者的语言障碍程度较高,也可能用于识别亚阈值认知障碍。计算言语和语言特征是一种准确、非侵入性且高效的谵妄生物标志物,具有很大的应用前景。