电子健康登记中心血管风险分层的社会表型。

IF 5.7 2区 医学 Q1 PERIPHERAL VASCULAR DISEASE
Current Atherosclerosis Reports Pub Date : 2024-09-01 Epub Date: 2024-07-08 DOI:10.1007/s11883-024-01222-6
Ramzi Ibrahim, Hoang Nhat Pham, Sarju Ganatra, Zulqarnain Javed, Khurram Nasir, Sadeer Al-Kindi
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引用次数: 0

摘要

综述的目的:评估对心血管护理的社会影响需要对经济、社会和环境因素进行综合分析。电子健康登记册的使用率越来越高,为社会表型分析提供了基础,但仍缺乏标准化的方法。本综述旨在阐明通过电子健康登记进行心血管风险分层的社会表型的主要方法:在电子健康登记中进行心血管风险分层的社会表型分析可分为四种主要方法:基于地点的度量、问卷调查、ICD Z 编码和自然语言处理。这些方法的复杂程度、优势和局限性以及预期结果各不相同。基于地点的度量通常依靠地理空间数据来推断社会经济影响因素,而问卷调查则可以直接收集个人层面的行为和社会因素。Z 编码是一种相对较新的方法,可在临床环境中获取与健康的社会决定因素领域直接相关的数据。人们越来越多地利用自然语言处理技术从非结构化的临床叙述中提取社会影响因素,从而为风险预测模型提供细致入微的见解。每种方法都在我们理解和利用社会决定因素数据改善人群心血管健康方面发挥着重要作用。社会表型的这四种主要方法有助于通过电子健康登记对健康的社会决定因素进行更有条理的研究,重点是心血管风险分层。社会表型相关研究应优先完善心血管疾病的预测模型,并通过将应用实施科学纳入公共卫生战略来促进健康公平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Social Phenotyping for Cardiovascular Risk Stratification in Electronic Health Registries.

Social Phenotyping for Cardiovascular Risk Stratification in Electronic Health Registries.

Purpose of review: Evaluation of social influences on cardiovascular care requires a comprehensive analysis encompassing economic, societal, and environmental factors. The increased utilization of electronic health registries provides a foundation for social phenotyping, yet standardization in methodology remains lacking. This review aimed to elucidate the primary approaches to social phenotyping for cardiovascular risk stratification through electronic health registries.

Recent findings: Social phenotyping in the context of cardiovascular risk stratification within electronic health registries can be separated into four principal approaches: place-based metrics, questionnaires, ICD Z-coding, and natural language processing. These methodologies vary in their complexity, advantages and limitations, and intended outcomes. Place-based metrics often rely on geospatial data to infer socioeconomic influences, while questionnaires may directly gather individual-level behavioral and social factors. Z-coding, a relatively new approach, can capture data directly related to social determinant of health domains in the clinical context. Natural language processing has been increasingly utilized to extract social influences from unstructured clinical narratives-offering nuanced insights for risk prediction models. Each method plays an important role in our understanding and approach to using social determinants data for improving population cardiovascular health. These four principal approaches to social phenotyping contribute to a more structured approach to social determinant of health research via electronic health registries, with a focus on cardiovascular risk stratification. Social phenotyping related research should prioritize refining predictive models for cardiovascular diseases and advancing health equity by integrating applied implementation science into public health strategies.

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来源期刊
CiteScore
9.00
自引率
3.40%
发文量
87
审稿时长
6-12 weeks
期刊介绍: The aim of this journal is to systematically provide expert views on current basic science and clinical advances in the field of atherosclerosis and highlight the most important developments likely to transform the field of cardiovascular prevention, diagnosis, and treatment. We accomplish this aim by appointing major authorities to serve as Section Editors who select leading experts from around the world to provide definitive reviews on key topics and papers published in the past year. We also provide supplementary reviews and commentaries from well-known figures in the field. An Editorial Board of internationally diverse members suggests topics of special interest to their country/region and ensures that topics are current and include emerging research.
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