人工智能时代健康的社会和行为决定因素与电子健康记录:范围审查

Health data science Pub Date : 2021-08-24 eCollection Date: 2021-01-01 DOI:10.34133/2021/9759016
Anusha Bompelli, Yanshan Wang, Ruyuan Wan, Esha Singh, Yuqi Zhou, Lin Xu, David Oniani, Bhavani Singh Agnikula Kshatriya, Joyce Joy E Balls-Berry, Rui Zhang
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引用次数: 0

摘要

背景。越来越多的证据表明,健康的社会和行为决定因素(SBDH)在广泛的健康结果中发挥着重大作用。在人工智能(AI)时代,电子健康记录(EHRs)已被广泛用于进行观察性研究。然而,关于如何利用人工智能方法从电子病历中充分利用SBDH信息的审查有限。方法。在六个数据库中进行了系统搜索,以找到最近出版的相关同行评审出版物。通过筛选和评价文章来确定相关性。在选定相关研究的基础上,对利用电子病历数据中SBDH信息的人工智能算法进行了方法学分析。结果。我们的合成是由对SBDH类别的分析、SBDH与医疗保健相关状态之间的关系、从临床记录中提取SBDH的自然语言处理(NLP)方法以及使用SBDH预测健康结果的预测模型驱动的。讨论。SBDH与健康结果之间的关联是复杂和多样的;可能涉及几种途径。利用NLP技术支持SBDH等临床思想的提取,简化了临床数据中基本概念的识别和提取,有效地解锁了非结构化数据,有助于解决非结构化数据相关问题。结论。尽管已知SBDH与疾病之间存在关联,但很少研究SBDH因素作为改善患者预后的干预措施。获得关于SBDH的知识,以及如何使用NLP方法和预测模型从电子病历中收集SBDH数据,可以提高影响卫生政策变化以促进患者健康的机会,最终促进健康和卫生公平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social and Behavioral Determinants of Health in the Era of Artificial Intelligence with Electronic Health Records: A Scoping Review.

Background. There is growing evidence that social and behavioral determinants of health (SBDH) play a substantial effect in a wide range of health outcomes. Electronic health records (EHRs) have been widely employed to conduct observational studies in the age of artificial intelligence (AI). However, there has been limited review into how to make the most of SBDH information from EHRs using AI approaches.Methods. A systematic search was conducted in six databases to find relevant peer-reviewed publications that had recently been published. Relevance was determined by screening and evaluating the articles. Based on selected relevant studies, a methodological analysis of AI algorithms leveraging SBDH information in EHR data was provided.Results. Our synthesis was driven by an analysis of SBDH categories, the relationship between SBDH and healthcare-related statuses, natural language processing (NLP) approaches for extracting SBDH from clinical notes, and predictive models using SBDH for health outcomes.Discussion. The associations between SBDH and health outcomes are complicated and diverse; several pathways may be involved. Using NLP technology to support the extraction of SBDH and other clinical ideas simplifies the identification and extraction of essential concepts from clinical data, efficiently unlocks unstructured data, and aids in the resolution of unstructured data-related issues.Conclusion. Despite known associations between SBDH and diseases, SBDH factors are rarely investigated as interventions to improve patient outcomes. Gaining knowledge about SBDH and how SBDH data can be collected from EHRs using NLP approaches and predictive models improves the chances of influencing health policy change for patient wellness, ultimately promoting health and health equity.

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