Sanchez-Morillo Daniel, Fernandez-Granero Miguel A, Leon-Jimenez Antonio
Biomedical Engineering and Telemedicine Research Group, University of Cádiz, Puerto Real, Cádiz, Spain
Biomedical Engineering and Telemedicine Research Group, University of Cádiz, Puerto Real, Cádiz, Spain.
Chron Respir Dis. 2016 Aug;13(3):264-83. doi: 10.1177/1479972316642365. Epub 2016 Apr 20.
Major reported factors associated with the limited effectiveness of home telemonitoring interventions in chronic respiratory conditions include the lack of useful early predictors, poor patient compliance and the poor performance of conventional algorithms for detecting deteriorations. This article provides a systematic review of existing algorithms and the factors associated with their performance in detecting exacerbations and supporting clinical decisions in patients with chronic obstructive pulmonary disease (COPD) or asthma. An electronic literature search in Medline, Scopus, Web of Science and Cochrane library was conducted to identify relevant articles published between 2005 and July 2015. A total of 20 studies (16 COPD, 4 asthma) that included research about the use of algorithms in telemonitoring interventions in asthma and COPD were selected. Differences on the applied definition of exacerbation, telemonitoring duration, acquired physiological signals and symptoms, type of technology deployed and algorithms used were found. Predictive models with good clinically reliability have yet to be defined, and are an important goal for the future development of telehealth in chronic respiratory conditions. New predictive models incorporating both symptoms and physiological signals are being tested in telemonitoring interventions with positive outcomes. However, the underpinning algorithms behind these models need be validated in larger samples of patients, for longer periods of time and with well-established protocols. In addition, further research is needed to identify novel predictors that enable the early detection of deteriorations, especially in COPD. Only then will telemonitoring achieve the aim of preventing hospital admissions, contributing to the reduction of health resource utilization and improving the quality of life of patients.
据报道,家庭远程监测干预措施在慢性呼吸道疾病中效果有限,与之相关的主要因素包括缺乏有效的早期预测指标、患者依从性差以及传统恶化检测算法性能不佳。本文对现有算法以及在慢性阻塞性肺疾病(COPD)或哮喘患者中检测病情加重和支持临床决策时与算法性能相关的因素进行了系统综述。我们在Medline、Scopus、Web of Science和Cochrane图书馆进行了电子文献检索,以确定2005年至2015年7月期间发表的相关文章。总共筛选出20项研究(16项关于COPD,4项关于哮喘),这些研究涉及在哮喘和COPD远程监测干预中使用算法的研究。研究发现,在病情加重的应用定义、远程监测持续时间、获取的生理信号和症状、所采用的技术类型以及使用的算法等方面存在差异。具有良好临床可靠性的预测模型尚未确定,这是慢性呼吸道疾病远程医疗未来发展的一个重要目标。结合症状和生理信号的新型预测模型正在远程监测干预中进行测试,结果呈阳性。然而,这些模型背后的基础算法需要在更大规模的患者样本中、更长时间内以及采用成熟的方案进行验证。此外,还需要进一步研究以确定能够早期检测病情恶化的新预测指标,尤其是在COPD中。只有这样,远程监测才能实现预防住院的目标,有助于减少卫生资源的利用并提高患者的生活质量。