Reducing Treatment Burden Among People With Chronic Conditions Using Machine Learning: Viewpoint.

Harpreet Nagra, Aradhana Goel, Dan Goldner
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Abstract

The COVID-19 pandemic has illuminated multiple challenges within the health care system and is unique to those living with chronic conditions. Recent advances in digital health technologies (eHealth) present opportunities to improve quality of care, self-management, and decision-making support to reduce treatment burden and the risk of chronic condition management burnout. There are limited available eHealth models that can adequately describe how this can be carried out. In this paper, we define treatment burden and the related risk of affective burnout; assess how an eHealth enhanced Chronic Care Model can help prioritize digital health solutions; and describe an emerging machine learning model as one example aimed to alleviate treatment burden and burnout risk. We propose that eHealth-driven machine learning models can be a disruptive change to optimally support persons living with chronic conditions.

利用机器学习减轻慢性病患者的治疗负担:观点。
COVID-19 大流行揭示了医疗保健系统面临的多重挑战,这对慢性病患者来说是独一无二的。数字医疗技术(eHealth)的最新进展为改善医疗质量、自我管理和决策支持提供了机会,从而减轻了治疗负担和慢性病管理倦怠的风险。目前能充分描述如何实现这一目标的电子医疗模型非常有限。在本文中,我们将定义治疗负担和相关的情感倦怠风险;评估电子健康增强型慢性病护理模型如何帮助确定数字健康解决方案的优先次序;并介绍一个新兴的机器学习模型,作为旨在减轻治疗负担和倦怠风险的一个实例。我们建议,电子健康驱动的机器学习模型可以成为一种颠覆性变革,为慢性病患者提供最佳支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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