Management Opportunities and Challenges After Achieving Widespread Health System Digitization.

Q4 Medicine
Dori A Cross, Julia Adler-Milstein, A Jay Holmgren
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Abstract

The adoption of electronic health records (EHRs) and digitization of health data over the past decade is ushering in the next generation of digital health tools that leverage artificial intelligence (AI) to improve varied aspects of health system performance. The decade ahead is therefore shaping up to be one in which digital health becomes even more at the forefront of health care delivery - demanding the time, attention, and resources of health care leaders and frontline staff, and becoming inextricably linked with all dimensions of health care delivery. In this chapter, we look back and look ahead. There are substantive lessons learned from the first era of large-scale adoption of enterprise EHRs and ongoing challenges that organizations are wrestling with - particularly related to the tension between standardization and flexibility/customization of EHR systems and the processes they support. Managing this tension during efforts to implement and optimize enterprise systems is perhaps the core challenge of the past decade, and one that has impeded consistent realization of value from initial EHR investments. We describe these challenges, how they manifest, and organizational strategies to address them, with a specific focus on alignment with broader value-based care transformation. We then look ahead to the AI wave - the massive number of applications of AI to health care delivery, the expected benefits, the risks and challenges, and approaches that health systems can consider to realize the benefits while avoiding the risks.

实现卫生系统广泛数字化后的管理机遇与挑战。
在过去十年中,电子健康记录(EHRs)的采用和健康数据的数字化正在引领下一代数字健康工具的出现,这些工具利用人工智能(AI)来改善卫生系统绩效的各个方面。因此,在未来十年中,数字卫生将更加处于卫生保健服务的前沿——需要卫生保健领导者和一线工作人员的时间、注意力和资源,并与卫生保健服务的各个方面密不可分。在本章中,我们回顾过去,展望未来。从大规模采用企业电子病历的第一个时代和组织正在努力应对的持续挑战中,我们吸取了大量的经验教训——特别是与电子病历系统的标准化、灵活性/定制化及其所支持的流程之间的紧张关系有关。在努力实现和优化企业系统的过程中,管理这种紧张关系可能是过去十年的核心挑战,并且阻碍了初始EHR投资价值的一致实现。我们描述了这些挑战,它们是如何表现的,以及应对这些挑战的组织战略,并特别关注与更广泛的基于价值的护理转型保持一致。然后,我们展望人工智能浪潮——人工智能在医疗保健服务中的大量应用、预期的好处、风险和挑战,以及卫生系统可以考虑的在避免风险的同时实现好处的方法。
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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来源期刊
Advances in Health Care Management
Advances in Health Care Management Medicine-Health Policy
CiteScore
0.70
自引率
0.00%
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0
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