Can Passive Cough Monitoring Predict COPD Exacerbations?

IF 2.2 4区 医学 Q3 RESPIRATORY SYSTEM
A H Morice, A C den Brinker, M Crooks, S Thackray-Nocera, O Ouweltjes, R Rietman
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引用次数: 0

Abstract

Purpose: Validation of an alert mechanism for COPD exacerbations based on coughing detected by a stationary unobtrusive nighttime monitor.

Methods: This prospective double-blind longitudinal study of cough monitoring included 40 chronic obstructive pulmonary disease (COPD) patients. Participants underwent cough monitoring and completed a daily questionnaire for 12 weeks. If no exacerbation occurred within that period patients were asked to continue being monitored for a further 12 weeks. The automated system identified deteriorating trends in cough based on a personalized cough classifier and the alerts were compared with patient reported exacerbation onsets.

Results: Thirty-eight patients [median age 72 (range 57-84)], median FEV-1% predicted 43% (range 20-106%) completed the study and had 41 exacerbations over a total of 3981 days. For 32 patients, the cough monitor data allowed classifier personalization, trend analysis, and alert generation. Based on the trend data, it is estimated that ∼30% of exacerbations are not associated with an increase in cough. The alert mechanism flagged 59% of the exacerbations. For the cases with alerts preceding the onset, the associated lead time was 4 days or more.

Conclusion: Though based on a single variable only, the cough-based alert system captured more than half of the exacerbations in a passive, free-living scenario. No adherence issues were reported, and patients confirmed the unobtrusive and hassle-free nature of the approach.

被动咳嗽监测能否预测COPD恶化?
目的:验证一种基于静止不显眼的夜间监测仪检测到的咳嗽的慢性阻塞性肺病加重的警报机制。方法:对40例慢性阻塞性肺疾病(COPD)患者进行咳嗽监测的前瞻性双盲纵向研究。参与者接受咳嗽监测并完成为期12周的每日问卷调查。如果在此期间未发生恶化,则要求患者继续监测12周。自动化系统根据个性化咳嗽分类器识别咳嗽恶化趋势,并将警报与患者报告的加重发作进行比较。结果:38名患者[中位年龄72岁(范围57-84)],中位FEV-1%预测43%(范围20-106%)完成了研究,在总共3981天内有41次恶化。对于32例患者,咳嗽监测数据允许分类个性化,趋势分析和警报生成。根据趋势数据,估计约30%的加重与咳嗽增加无关。警报机制标记了59%的病情恶化。对于发病前有警报的病例,相关的提前期为4天或更长时间。结论:虽然基于单一变量,但基于咳嗽的警报系统在被动、自由生活的情况下捕获了一半以上的恶化。没有依从性问题的报道,患者证实了该方法的不显眼和无麻烦的性质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.40
自引率
0.00%
发文量
38
审稿时长
6-12 weeks
期刊介绍: From pathophysiology and cell biology to pharmacology and psychosocial impact, COPD: Journal Of Chronic Obstructive Pulmonary Disease publishes a wide range of original research, reviews, case studies, and conference proceedings to promote advances in the pathophysiology, diagnosis, management, and control of lung and airway disease and inflammation - providing a unique forum for the discussion, design, and evaluation of more efficient and effective strategies in patient care.
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