Rescue inhaler usage prediction in smart asthma management systems using joint mixed effects logistic regression model

Junbo Son, P. Brennan, Shiyu Zhou
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引用次数: 3

Abstract

ABSTRACT Asthma is a very common and chronic lung disease that impacts a large portion of population and all ethnic groups. Driven by developments in sensor and mobile communication technology, novel Smart Asthma Management (SAM) systems have been recently established. In SAM systems, patients can create a detailed temporal event log regarding their key health indicators through easy access to a website or their smartphone. Thus, this detailed event log can be obtained inexpensively and aggregated for a large number of patients to form a centralized database for SAM systems. Taking advantage of the data available in SAM systems, we propose an individualized prognostic model based on the unique rescue inhaler usage profile of each individual patient. The model jointly combines two statistical models into a unified prognostic framework. The application of the proposed model to SAM is illustrated in this article and the effectiveness of the method is shown by both a numerical study and a case study that uses real-world data.
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应用联合混合效应logistic回归模型预测智能哮喘管理系统中的急救吸入器使用情况
哮喘是一种非常常见的慢性肺部疾病,影响了很大一部分人口和所有种族。在传感器和移动通信技术发展的推动下,最近建立了新型智能哮喘管理(SAM)系统。在SAM系统中,患者可以通过轻松访问网站或智能手机,创建有关其关键健康指标的详细时间事件日志。因此,可以以较低的成本获得详细的事件日志,并为大量患者聚合,形成SAM系统的集中数据库。利用SAM系统中可用的数据,我们提出了一个基于每个患者独特的抢救吸入器使用情况的个性化预后模型。该模型将两个统计模型联合成一个统一的预测框架。本文阐述了所提出的模型在SAM中的应用,并通过数值研究和使用实际数据的案例研究证明了该方法的有效性。
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来源期刊
IIE Transactions
IIE Transactions 工程技术-工程:工业
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审稿时长
4.5 months
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