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 little research into how to make the most of SBDH information from EHRs. 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, and several NLP approaches for extracting SDOH from clinical literature. Discussion: The associations between SBDH and health outcomes are complicated and diverse; several pathways may be involved. Using Natural Language Processing (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 disease, 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, and ultimately promoting health and health equity. Keywords: Social and Behavioral Determinants of Health, Artificial Intelligence, Electronic Health Records, Natural Language Processing, Predictive Model
翻译:越来越多的证据表明,健康的社会和行为决定因素(SBDH)对一系列广泛的健康成果产生了重大影响。电子健康记录(EHRs)已被广泛用于在人工智能时代进行观察研究。然而,对于如何充分利用SBDH(SBDH)信息,没有进行多少研究。方法:在六个数据库中进行了系统搜索,以寻找最近出版的有关同行审查出版物。相关性是通过筛选和评估文章来确定的。根据选定的相关研究,对利用SBDH(EHR)数据中SBDH信息的AI算法进行了方法分析。结果:我们的健康状况分析是由SBDH类别分析、SBDH(SBDH)与健康相关状况的关系以及若干NLP方法从临床文献中提取SDH(SDH)信息的方法驱动的。讨论:SBDH(NP)与健康结果的关联是复杂和多样的;可能参与几种途径。使用自然语言处理技术支持SBDDH(NP)的提取和其他临床想法,简化了从临床数据中识别和提取来自SDH(SDH)的基本概念概念的识别和提取过程数据,最终数据记录,这是SDHDHAD(SD(S-deald)的解算)的模型的模型的模型的模型和SDDDH(S&S&S&S&SDDDDDDD(S&D(S&D)的模型)的模型的模型)的模型的模型的模型的模型,这是如何改进的模型的模型,这是SDDDDDDDH)的模型。