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Overcoming barriers to the adoption and implementation of predictive modeling and machine learning in clinical care: what can we learn from US academic medical centers?

机译:克服临床护理预测建模和机器学习的通过和实施的障碍:我们可以从美国学术中心学习什么?

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摘要

There is little known about how academic medical centers (AMCs) in the US develop, implement, and maintain predictive modeling and machine learning (PM and ML) models. We conducted semi-structured interviews with leaders from AMCs to assess their use of PM and ML in clinical care, understand associated challenges, and determine recommended best practices. Each transcribed interview was iteratively coded and reconciled by a minimum of 2 investigators to identify key barriers to and facilitators of PM and ML adoption and implementation in clinical care. Interviews were conducted with 33 individuals from 19 AMCs nationally. AMCs varied greatly in the use of PM and ML within clinical care, from some just beginning to explore their utility to others with multiple models integrated into clinical care. Informants identified 5 key barriers to the adoption and implementation of PM and ML in clinical care: (1) culture and personnel, (2) clinical utility of the PM and ML tool, (3) financing, (4) technology, and (5) data. Recommendation to the informatics community to overcome these barriers included: (1) development of robust evaluation methodologies, (2) partnership with vendors, and (3) development and dissemination of best practices. For institutions developing clinical PM and ML applications, they are advised to: (1) develop appropriate governance, (2) strengthen data access, integrity, and provenance, and (3) adhere to the 5 rights of clinical decision support. This article highlights key challenges of implementing PM and ML in clinical care at AMCs and suggests best practices for development, implementation, and maintenance at these institutions.
机译:关于学术医疗中心(AMCS)在美国开发,实施和维持预测性建模和机器学习(PM和ML)模型的模型,毫无疑问。我们对来自AMCS的领导人进行了半结构化访谈,以评估他们在临床护理中使用PM和ML的使用,了解相关的挑战,并确定建议的最佳实践。每个转账的面试都是迭代地编码和调整至少2名调查人员,以确定下午的关键障碍和促进者和ML在临床护理中的实施和实施。采访是在全国19个AMCS的33个人进行的。 AMCs在临床护理中使用PM和ML在临床护理中的使用很大差异,从一些刚刚开始探索他们的效用,以综合临床护理的多种型号。 Informants确定了PM和ML在临床护理中通过和实施的5个关键障碍:(1)培养和人员,(2)PM和ML工具的临床效用,(3)融资,(4)技术和(5 ) 数据。向信息学区克服这些障碍的建议包括:(1)发展强大的评估方法,(2)与供应商的伙伴关系,以及(3)发展和传播最佳实践。对于开发临床PM和ML申请的机构,他们被建议:(1)制定适当的治理,(2)加强数据访问,完整性和出处,(3)坚持临床决策支持的5个权利。本文突出了在AMCS临床护理中实施下午和ML的关键挑战,并提出了这些机构在这些机构的发展,实施和维护的最佳实践。

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