利用常规健康数据将家庭成员联系起来并定义关系网络。

IF 2.2 3区 医学 Q2 PEDIATRICS
Jeffrey I Campbell, Ana Poblacion, Richard Sheward
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引用次数: 0

摘要

审查目的:丰富的电子健康记录(EHR)数据和大型健康数据库的增长为将个人连接成家庭和关系网络带来了新的机遇。这些 "关联关系网络 "为提供家庭层面的护理以及研究代际流行病学和临床结果带来了希望。然而,随着关联关系网络在电子病历和研究数据库中的普及,了解其挑战和局限性至关重要:最近的研究结果:匹配算法正被用于在电子病历和健康数据库中创建关联关系网络。在临床上,这些算法对提供母婴护理最有用。在研究方面,使用这些算法的研究课题包括父母药物暴露对儿童健康结果的药物流行病学、慢性病的遗传性、父母与儿童医疗保健获取和服务提供之间的关联等。然而,伦理和技术方面的挑战仍然限制着这些算法的使用。摘要:关联关系网络在儿科临床护理和研究中得到了广泛应用。需要开展更多研究,以了解现有匹配策略的范围、局限性和固有偏差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linking household members and defining relational networks using routine health data.

Purpose of review: The growth of rich electronic health record (EHR) data and large health databases has introduced new opportunities to link individuals together into households and relational networks. These 'linked relational networks' hold promise for providing family-level care and studying intergenerational epidemiology and clinical outcomes. However, as linked relational networks become more commonly available in EHRs and research databases, it is critical to understand their challenges and limitations.

Recent findings: Matching algorithms are being used to create linked relational networks in EHR and health databases. Clinically, these algorithms have been most useful to provide dyadic maternal-newborn care. In research, studies using these algorithms investigate topics ranging from the pharmacoepidemiology of parental drug exposure on childhood health outcomes, to heritability of chronic conditions, to associations between parental and child healthcare access and service delivery. However, ethical and technical challenges continue to limit use of these algorithms. There is also a critical research gap in the external validity of these matching algorithms.

Summary: Linked relational networks are in widespread use in pediatric clinical care and research. More research is needed to understand the scope, limitations, and biases inherent in existing matching strategies.

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来源期刊
CiteScore
6.20
自引率
0.00%
发文量
184
审稿时长
6-12 weeks
期刊介绍: ​​​​​Current Opinion in Pediatrics is a reader-friendly resource which allows the reader to keep up-to-date with the most important advances in the pediatric field. Each issue of Current Opinion in Pediatrics contains three main sections delivering a diverse and comprehensive cover of all key issues related to pediatrics; including genetics, therapeutics and toxicology, adolescent medicine, neonatology and perinatology, and orthopedics. Unique to Current Opinion in Pediatrics is the office pediatrics section which appears in every issue and covers popular topics such as fever, immunization and ADHD. Current Opinion in Pediatrics is an indispensable journal for the busy clinician, researcher or student.
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