{"title":"基于传感器的干预措施支持患者坚持吸入治疗的综述。","authors":"Jing Ma, Xu Sun, Bingjian Liu","doi":"10.2147/PPA.S485553","DOIUrl":null,"url":null,"abstract":"<p><strong>Purpose: </strong>This review aims to provide a comprehensive overview of sensor technologies employed in interventions to enhance patient adherence to inhalation therapy for chronic respiratory diseases, with a particular emphasis on human factors. Sensor-based interventions offer opportunities to improve adherence through monitoring and feedback; however, a deeper understanding of how these technologies interact with patients is essential.</p><p><strong>Patients and methods: </strong>We conducted a systematic review by searching online databases, including PubMed, Scopus, Web of Science, Science Direct, and ACM Digital Library, spanning the timeframe from January 2014 to December 2023. Our inclusion criteria focused on studies that employed sensor-based technologies to enhance patient adherence to inhalation therapy.</p><p><strong>Results: </strong>The initial search yielded 1563 results. After a thorough screening process, we selected 37 relevant studies. These sensor-based interventions were organized within a comprehensive HFE framework, including data collection, data processing, system feedback, and system feasibility. The data collection phase comprised person-related, task-related, and physical environment-related data. Various approaches to data processing were employed, encompassing applications for assessing intervention effectiveness, monitoring patient behaviour, and identifying disease risks, while system feedback included reminders and alerts, data visualization, and persuasive features. System feasibility was evaluated based on patient acceptance, usability, and device cost considerations.</p><p><strong>Conclusion: </strong>Sensor-based interventions hold significant promise for improving adherence to inhalation therapy. This review highlights the necessity of an integrated \"person-task-physical environment\" system to advance future sensor technologies. By capturing comprehensive data on patient health, device usage patterns, and environmental conditions, this approach enables more personalized and effective adherence support. Key recommendations include standardizing data integration protocols, employing advanced algorithms for insights generation, enhancing interactive visual features for accessibility, integrating persuasive design elements to boost engagement, exploring the advantages of conversational agents, and optimizing experience to increase patient acceptance.</p>","PeriodicalId":19972,"journal":{"name":"Patient preference and adherence","volume":"18 ","pages":"2397-2413"},"PeriodicalIF":2.0000,"publicationDate":"2024-12-03","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11624667/pdf/","citationCount":"0","resultStr":"{\"title\":\"A Review of Sensor-Based Interventions for Supporting Patient Adherence to Inhalation Therapy.\",\"authors\":\"Jing Ma, Xu Sun, Bingjian Liu\",\"doi\":\"10.2147/PPA.S485553\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Purpose: </strong>This review aims to provide a comprehensive overview of sensor technologies employed in interventions to enhance patient adherence to inhalation therapy for chronic respiratory diseases, with a particular emphasis on human factors. Sensor-based interventions offer opportunities to improve adherence through monitoring and feedback; however, a deeper understanding of how these technologies interact with patients is essential.</p><p><strong>Patients and methods: </strong>We conducted a systematic review by searching online databases, including PubMed, Scopus, Web of Science, Science Direct, and ACM Digital Library, spanning the timeframe from January 2014 to December 2023. Our inclusion criteria focused on studies that employed sensor-based technologies to enhance patient adherence to inhalation therapy.</p><p><strong>Results: </strong>The initial search yielded 1563 results. After a thorough screening process, we selected 37 relevant studies. These sensor-based interventions were organized within a comprehensive HFE framework, including data collection, data processing, system feedback, and system feasibility. The data collection phase comprised person-related, task-related, and physical environment-related data. Various approaches to data processing were employed, encompassing applications for assessing intervention effectiveness, monitoring patient behaviour, and identifying disease risks, while system feedback included reminders and alerts, data visualization, and persuasive features. System feasibility was evaluated based on patient acceptance, usability, and device cost considerations.</p><p><strong>Conclusion: </strong>Sensor-based interventions hold significant promise for improving adherence to inhalation therapy. This review highlights the necessity of an integrated \\\"person-task-physical environment\\\" system to advance future sensor technologies. By capturing comprehensive data on patient health, device usage patterns, and environmental conditions, this approach enables more personalized and effective adherence support. 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引用次数: 0
摘要
目的:本综述旨在全面概述传感器技术在慢性呼吸系统疾病患者吸入治疗中应用的干预措施,特别强调人为因素。基于传感器的干预措施提供了通过监测和反馈改善依从性的机会;然而,更深入地了解这些技术如何与患者相互作用是至关重要的。患者和方法:我们通过检索PubMed、Scopus、Web of Science、Science Direct和ACM Digital Library等在线数据库进行了系统综述,时间跨度为2014年1月至2023年12月。我们的纳入标准侧重于采用基于传感器的技术来增强患者对吸入治疗的依从性的研究。结果:最初的搜索产生了1563个结果。经过全面筛选,我们选择了37项相关研究。这些基于传感器的干预措施是在一个全面的HFE框架内组织起来的,包括数据收集、数据处理、系统反馈和系统可行性。数据收集阶段包括与人相关的、与任务相关的和与物理环境相关的数据。采用了各种数据处理方法,包括评估干预效果、监测患者行为和识别疾病风险的应用,而系统反馈包括提醒和警报、数据可视化和说服功能。系统可行性根据患者接受度、可用性和设备成本进行评估。结论:基于传感器的干预措施对改善吸入治疗的依从性具有重要的希望。这篇综述强调了集成“人-任务-物理环境”系统的必要性,以推进未来的传感器技术。通过捕获有关患者健康、设备使用模式和环境条件的全面数据,该方法可以实现更加个性化和有效的依从性支持。主要建议包括标准化数据集成协议,采用先进的算法生成见解,增强可访问性的交互式视觉功能,集成有说服力的设计元素以提高参与度,探索对话代理的优势,优化体验以提高患者接受度。
A Review of Sensor-Based Interventions for Supporting Patient Adherence to Inhalation Therapy.
Purpose: This review aims to provide a comprehensive overview of sensor technologies employed in interventions to enhance patient adherence to inhalation therapy for chronic respiratory diseases, with a particular emphasis on human factors. Sensor-based interventions offer opportunities to improve adherence through monitoring and feedback; however, a deeper understanding of how these technologies interact with patients is essential.
Patients and methods: We conducted a systematic review by searching online databases, including PubMed, Scopus, Web of Science, Science Direct, and ACM Digital Library, spanning the timeframe from January 2014 to December 2023. Our inclusion criteria focused on studies that employed sensor-based technologies to enhance patient adherence to inhalation therapy.
Results: The initial search yielded 1563 results. After a thorough screening process, we selected 37 relevant studies. These sensor-based interventions were organized within a comprehensive HFE framework, including data collection, data processing, system feedback, and system feasibility. The data collection phase comprised person-related, task-related, and physical environment-related data. Various approaches to data processing were employed, encompassing applications for assessing intervention effectiveness, monitoring patient behaviour, and identifying disease risks, while system feedback included reminders and alerts, data visualization, and persuasive features. System feasibility was evaluated based on patient acceptance, usability, and device cost considerations.
Conclusion: Sensor-based interventions hold significant promise for improving adherence to inhalation therapy. This review highlights the necessity of an integrated "person-task-physical environment" system to advance future sensor technologies. By capturing comprehensive data on patient health, device usage patterns, and environmental conditions, this approach enables more personalized and effective adherence support. Key recommendations include standardizing data integration protocols, employing advanced algorithms for insights generation, enhancing interactive visual features for accessibility, integrating persuasive design elements to boost engagement, exploring the advantages of conversational agents, and optimizing experience to increase patient acceptance.
期刊介绍:
Patient Preference and Adherence is an international, peer reviewed, open access journal that focuses on the growing importance of patient preference and adherence throughout the therapeutic continuum. The journal is characterized by the rapid reporting of reviews, original research, modeling and clinical studies across all therapeutic areas. Patient satisfaction, acceptability, quality of life, compliance, persistence and their role in developing new therapeutic modalities and compounds to optimize clinical outcomes for existing disease states are major areas of interest for the journal.
As of 1st April 2019, Patient Preference and Adherence will no longer consider meta-analyses for publication.