Technology and the healthcare system: implications for patient adherence.

Juliet B Beni
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引用次数: 8

Abstract

Patient nonadherence is a growing and costly problem in the healthcare system, especially for patients with chronic illness. Between 25% and 40% of patients are nonadherent to treatment, and estimated costs directly associated with patient nonadherence in the US healthcare system are $290 billion a year. Nonadherence to preventive and treatment regimens is correlated to negative consequences for patients; however, many barriers to the promotion of successful adherence remain. Some such barriers include financial constraints, physical disability, side effects, forgetfulness, age and complex multi-drug regimens. The implementation of technology in healthcare systems is changing the way in which healthcare providers and patients must approach adherence. The following review applies a framework, the Information-Motivation-Strategy Model?, developed by DiMatteo and colleagues, to the field to conceptualise the changing factors affecting patient adherence as global healthcare moves toward increasingly technology-based systems of care.

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技术和医疗保健系统:对患者依从性的影响。
患者不遵医嘱是医疗保健系统中一个日益严重且代价高昂的问题,特别是对慢性疾病患者而言。25%到40%的患者不坚持治疗,据估计,在美国医疗保健系统中,与患者不坚持治疗直接相关的成本为每年2900亿美元。不遵守预防和治疗方案与患者的负面后果相关;然而,促进成功依从性的许多障碍仍然存在。其中一些障碍包括财政限制、身体残疾、副作用、健忘、年龄和复杂的多种药物治疗方案。在医疗保健系统中实施技术正在改变医疗保健提供者和患者必须遵循的方式。下面的回顾应用了一个框架,信息-动机-策略模型?由DiMatteo和他的同事开发的,将影响患者依从性的变化因素概念化,随着全球医疗保健朝着越来越多的基于技术的护理系统发展。
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来源期刊
CiteScore
1.00
自引率
0.00%
发文量
25
期刊介绍: The IJEH is an authoritative, fully-refereed international journal which presents current practice and research in the area of e-healthcare. It is dedicated to design, development, management, implementation, technology, and application issues in e-healthcare.
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