Chief, Division of Pulmonary, Critical Care and Sleep Medicine, Vice Chair for Clinical and Translational Research, University of Kansas School of Medicine, 4000 Cambridge Street, Mailstop 3007, Kansas City, KS 66160, USA.
AstraZeneca, Wilmington, DE, USA.
Ther Adv Respir Dis. 2024 Jan-Dec;18:17534666241266186. doi: 10.1177/17534666241266186.
The individualized PREdiction of DIsease Control using digital sensor Technology (iPREDICT) program was developed for asthma management using digital technology. Devices were integrated into daily lives of patients to establish a predictive model of asthma control by measuring changes from baseline health status with minimal device burden.
To establish baseline disease characteristics of the study participants, detect changes from baseline associated with asthma events, and evaluate algorithms capable of identifying triggers and predicting asthma control changes from baseline data. Patient experience and compliance with the devices were also explored.
This was a multicenter, observational, 24-week, proof-of-concept study conducted in the United States.
Patients (⩾12 years) with severe, uncontrolled asthma engaged with a spirometer, vital sign monitor, sleep monitor, connected inhaler devices, and two mobile applications with embedded patient-reported outcome (PRO) questionnaires. Prospective data were linked to data from electronic health records and transmitted to a secure platform to develop predictive algorithms. The primary endpoint was an asthma event: symptom worsening logged by patients (PRO); peak expiratory flow (PEF) < 65% or forced expiratory volume in 1 s < 80%; increased short-acting β-agonist (SABA) use (>8 puffs/24 h or >4 puffs/day/48 h). For each endpoint, predictive models were constructed at population, subgroup, and individual levels.
Overall, 108 patients were selected: 66 (61.1%) completed and 42 (38.9%) were excluded for failure to respond/missing data. Predictive accuracy depended on endpoint selection. Population-level models achieved low accuracy in predicting endpoints such as PEF < 65%. Subgroups related to specific allergies, asthma triggers, asthma types, and exacerbation treatments demonstrated high accuracy, with the most accurate, predictive endpoint being >4 SABA puffs/day/48 h. Individual models, constructed for patients with high endpoint overlap, exhibited significant predictive accuracy, especially for PEF < 65% and >4 SABA puffs/day/48 h.
This multidimensional dataset enabled population-, subgroup-, and individual-level analyses, providing proof-of-concept evidence for development of predictive models of fluctuating asthma control.
个体化疾病预测使用数字传感器技术(iPREDICT)计划是为使用数字技术进行哮喘管理而开发的。设备被整合到患者的日常生活中,通过测量基线健康状况的变化,以最小的设备负担建立哮喘控制的预测模型。
建立研究参与者的基线疾病特征,检测与哮喘事件相关的基线变化,并评估能够识别触发因素和预测从基线数据变化的哮喘控制的算法。还探讨了患者的体验和对设备的依从性。
这是一项在美国进行的多中心、观察性、24 周、概念验证研究。
患有严重、未控制的哮喘的患者(≥12 岁)使用肺活量计、生命体征监测器、睡眠监测器、连接的吸入器设备和两个带有嵌入式患者报告结果(PRO)问卷的移动应用程序。前瞻性数据与电子健康记录中的数据相关联,并传输到安全平台以开发预测算法。主要终点是哮喘事件:患者记录的症状恶化(PRO);呼气峰流速(PEF)<65%或 1 秒用力呼气量(FEV1)<80%;短效β-激动剂(SABA)使用增加(>8 喷/24 小时或>4 喷/天/48 小时)。对于每个终点,在人群、亚组和个体水平上构建预测模型。
总体上,选择了 108 名患者:66 名(61.1%)完成,42 名(38.9%)因未响应/数据缺失而被排除。预测准确性取决于终点选择。人群水平模型在预测 PEF<65%等终点方面的准确性较低。与特定过敏、哮喘触发因素、哮喘类型和加重治疗相关的亚组表现出较高的准确性,最准确的预测终点是>4 SABA 喷/天/48 小时。为高终点重叠患者构建的个体模型表现出显著的预测准确性,特别是对于 PEF<65%和>4 SABA 喷/天/48 小时。
这个多维数据集支持人群、亚组和个体水平的分析,为开发波动哮喘控制的预测模型提供了概念验证证据。