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数字咳嗽监测 - 住院 COVID-19 患者临床结局的潜在预测性声学生物标志物。

Digital cough monitoring - A potential predictive acoustic biomarker of clinical outcomes in hospitalized COVID-19 patients.

机构信息

Department of Internal Medicine, University of Florida College of Medicine, 1600 SW, Archer Road, PO Box 100294, Gainesville, FL, USA.

Centre de Recherche du Centre Hospitalier de l'Université de Montréal, 900, Saint-Denis, Montréal, Québec H2X 0A9, Canada.

出版信息

J Biomed Inform. 2023 Feb;138:104283. doi: 10.1016/j.jbi.2023.104283. Epub 2023 Jan 9.

Abstract

PURPOSE

Recent developments in the field of artificial intelligence and acoustics have made it possible to objectively monitor cough in clinical and ambulatory settings. We hypothesized that time patterns of objectively measured cough in COVID-19 patients could predict clinical prognosis and help rapidly identify patients at high risk of intubation or death.

METHODS

One hundred and twenty-three patients hospitalized with COVID-19 were enrolled at University of Florida Health Shands and the Centre Hospitalier de l'Université de Montréal. Patients' cough was continuously monitored digitally along with clinical severity of disease until hospital discharge, intubation, or death. The natural history of cough in hospitalized COVID-19 disease was described and logistic models fitted on cough time patterns were used to predict clinical outcomes.

RESULTS

In both cohorts, higher early coughing rates were associated with more favorable clinical outcomes. The transitional cough rate, or maximum cough per hour rate predicting unfavorable outcomes, was 3·40 and the AUC for cough frequency as a predictor of unfavorable outcomes was 0·761. The initial 6 h (0·792) and 24 h (0·719) post-enrolment observation periods confirmed this association and showed similar predictive value.

INTERPRETATION

Digital cough monitoring could be used as a prognosis biomarker to predict unfavorable clinical outcomes in COVID-19 disease. With early sampling periods showing good predictive value, this digital biomarker could be combined with clinical and paraclinical evaluation and is well adapted for triaging patients in overwhelmed or resources-limited health programs.

摘要

目的

人工智能和声学领域的最新发展使得在临床和门诊环境中客观监测咳嗽成为可能。我们假设,COVID-19 患者客观测量的咳嗽时间模式可预测临床预后,并有助于快速识别有插管或死亡高风险的患者。

方法

在佛罗里达大学健康分校和蒙特利尔大学中心医院,共纳入了 123 名因 COVID-19 住院的患者。患者的咳嗽与疾病的临床严重程度一起连续进行数字监测,直到出院、插管或死亡。描述了住院 COVID-19 疾病的咳嗽自然史,并对咳嗽时间模式进行逻辑模型拟合,以预测临床结局。

结果

在两个队列中,早期咳嗽率较高与临床结局较好相关。过渡性咳嗽率(即每小时最大咳嗽率,预测不良结局)为 3.40,咳嗽频率作为不良结局预测因子的 AUC 为 0.761。入组后 6 小时(0.792)和 24 小时(0.719)的初始观察期证实了这种关联,并显示出相似的预测价值。

解释

数字咳嗽监测可用作预测 COVID-19 疾病不良临床结局的预后生物标志物。早期采样期具有良好的预测价值,因此这种数字生物标志物可以与临床和临床前评估相结合,非常适合在资源有限或负担过重的卫生项目中对患者进行分诊。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b8a0/9827741/b558bcbd8cb9/ga1_lrg.jpg

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