IEEE J Biomed Health Inform. 2024 Oct;28(10):5941-5952. doi: 10.1109/JBHI.2024.3415479. Epub 2024 Oct 3.
Cough is an important symptom in children with acute and chronic respiratory disease. Daily cough is common in Cystic Fibrosis (CF) and increased cough is a symptom of pulmonary exacerbation. To date, cough assessment is primarily subjective in clinical practice and research. Attempts to develop objective, automatic cough counting tools have faced reliability issues in noisy environments and practical barriers limiting long-term use. This single-center pilot study evaluated usability, acceptability and performance of a mechanoacoustic sensor (MAS), previously used for cough classification in adults, in 36 children with CF over brief and multi-day periods in four cohorts. Children whose health was at baseline and who had symptoms of pulmonary exacerbation were included. We trained, validated, and deployed custom deep learning algorithms for accurate cough detection and classification from other vocalization or artifacts with an overall area under the receiver-operator characteristic curve (AUROC) of 0.96 and average precision (AP) of 0.93. Child and parent feedback led to a redesign of the MAS towards a smaller, more discreet device acceptable for daily use in children. Additional improvements optimized power efficiency and data management. The MAS's ability to objectively measure cough and other physiologic signals across clinic, hospital, and home settings is demonstrated, particularly aided by an AUROC of 0.97 and AP of 0.96 for motion artifact rejection. Examples of cough frequency and physiologic parameter correlations with participant-reported outcomes and clinical measurements for individual patients are presented. The MAS is a promising tool in objective longitudinal evaluation of cough in children with CF.
咳嗽是儿童急性和慢性呼吸道疾病的重要症状。囊性纤维化(CF)患者常出现每日咳嗽,咳嗽增加是肺部恶化的症状。迄今为止,临床实践和研究中的咳嗽评估主要是主观的。尝试开发客观、自动的咳嗽计数工具在嘈杂环境中面临可靠性问题,并且在实际应用中存在长期使用的限制。这项单中心试点研究评估了机械声传感器(MAS)在四个队列中的 36 名 CF 儿童中进行短期和多日测试的可用性、可接受性和性能。该研究纳入了基线健康状况良好且有肺部恶化症状的儿童。我们针对从其他发声或伪影中准确检测和分类咳嗽的问题,训练、验证和部署了定制的深度学习算法,其总体接收器操作特性曲线下面积(AUROC)为 0.96,平均精度(AP)为 0.93。儿童和家长的反馈促成了 MAS 的重新设计,使其成为一种更小、更隐蔽的设备,适合儿童日常使用。其他改进优化了电源效率和数据管理。MAS 能够在诊所、医院和家庭环境中客观地测量咳嗽和其他生理信号,尤其是在运动伪影拒绝方面 AUROC 为 0.97 和 AP 为 0.96,这表明其具有很大的应用潜力。还展示了咳嗽频率和生理参数与患者报告的结果和临床测量的个体患者的相关性示例。MAS 是 CF 儿童进行客观纵向咳嗽评估的有前途的工具。