A Scoping Review of Studies Using Artificial Intelligence Identifying Optimal Practice Patterns for Inpatients With Type 2 Diabetes That Lead to Positive Healthcare Outcomes.

IF 1.3 4区 医学 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Pankaj K Vyas, Krista Brandon, Sheila M Gephart
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引用次数: 0

Abstract

The objective of this scoping review was to survey the literature on the use of AI/ML applications in analyzing inpatient EHR data to identify bundles of care (groupings of interventions). If evidence suggested AI/ML models could determine bundles, the review aimed to explore whether implementing these interventions as bundles reduced practice pattern variance and positively impacted patient care outcomes for inpatients with T2DM. Six databases were searched for articles published from January 1, 2000, to January 1, 2024. Nine studies met criteria and were summarized by aims, outcome measures, clinical or practice implications, AI/ML model types, study variables, and AI/ML model outcomes. A variety of AI/ML models were used. Multiple data sources were leveraged to train the models, resulting in varying impacts on practice patterns and outcomes. Studies included aims across 4 thematic areas to address: therapeutic patterns of care, analysis of treatment pathways and their constraints, dashboard development for clinical decision support, and medication optimization and prescription pattern mining. Multiple disparate data sources (i.e., prescription payment data) were leveraged outside of those traditionally available within EHR databases. Notably missing was the use of holistic multidisciplinary data (i.e., nursing and ancillary) to train AI/ML models. AI/ML can assist in identifying the appropriateness of specific interventions to manage diabetic care and support adherence to efficacious treatment pathways if the appropriate data are incorporated into AI/ML design. Additional data sources beyond the EHR are needed to provide more complete data to develop AI/ML models that effectively discern meaningful clinical patterns. Further study is needed to better address nursing care using AI/ML to support effective inpatient diabetes management.

使用人工智能识别 2 型糖尿病住院患者最佳实践模式以实现积极医疗结果的研究范围综述。
本次范围界定综述的目的是调查有关使用人工智能/ML 应用程序分析住院患者电子病历数据以确定护理捆绑(干预分组)的文献。如果有证据表明 AI/ML 模型可以确定捆绑护理,那么该综述旨在探讨将这些干预措施作为捆绑护理实施是否会减少实践模式差异,并对 T2DM 住院患者的护理效果产生积极影响。研究人员在六个数据库中检索了 2000 年 1 月 1 日至 2024 年 1 月 1 日期间发表的文章。九项研究符合标准,并按目的、结果测量、临床或实践影响、人工智能/移动医疗模型类型、研究变量和人工智能/移动医疗模型结果进行了总结。研究中使用了多种人工智能/ML 模型。利用多种数据源来训练模型,从而对实践模式和结果产生了不同的影响。研究包括 4 个专题领域的目标:治疗护理模式、治疗路径及其制约因素分析、临床决策支持仪表板开发以及药物优化和处方模式挖掘。除传统的电子病历数据库外,还利用了多种不同的数据源(如处方支付数据)。值得注意的是,缺乏使用多学科综合数据(即护理和辅助数据)来训练人工智能/ML 模型。如果将适当的数据纳入人工智能/ML 的设计中,人工智能/ML 就能帮助识别特定干预措施的适当性,以管理糖尿病护理并支持坚持有效的治疗途径。除电子病历外,还需要更多的数据源来提供更完整的数据,以开发能有效辨别有意义的临床模式的人工智能/ML 模型。还需要进一步研究如何更好地利用人工智能/ML 解决护理问题,以支持有效的住院糖尿病管理。
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
Cin-Computers Informatics Nursing
Cin-Computers Informatics Nursing 工程技术-护理
CiteScore
2.00
自引率
15.40%
发文量
248
审稿时长
6-12 weeks
期刊介绍: For over 30 years, CIN: Computers, Informatics, Nursing has been at the interface of the science of information and the art of nursing, publishing articles on the latest developments in nursing informatics, research, education and administrative of health information technology. CIN connects you with colleagues as they share knowledge on implementation of electronic health records systems, design decision-support systems, incorporate evidence-based healthcare in practice, explore point-of-care computing in practice and education, and conceptually integrate nursing languages and standard data sets. Continuing education contact hours are available in every issue.
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