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Common data elements for secondary use of electronic health record data for clinical trial execution and serious adverse event reporting.用于临床试验执行和严重不良事件报告的电子健康记录数据二次使用的通用数据元素。
BMC Med Res Methodol. 2016 Nov 22;16(1):159. doi: 10.1186/s12874-016-0259-3.
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Integrating Social And Medical Data To Improve Population Health: Opportunities And Barriers.整合社会与医学数据以改善人群健康:机遇与障碍
Health Aff (Millwood). 2016 Nov 1;35(11):2116-2123. doi: 10.1377/hlthaff.2016.0723.
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Epistatic Gene-Based Interaction Analyses for Glaucoma in eMERGE and NEIGHBOR Consortium.基于上位性基因的青光眼交互作用分析:eMERGE和NEIGHBOR联盟研究
PLoS Genet. 2016 Sep 13;12(9):e1006186. doi: 10.1371/journal.pgen.1006186. eCollection 2016 Sep.
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Identification of Four Novel Loci in Asthma in European American and African American Populations.在欧美和非裔美国人中鉴定出哮喘的四个新基因座。
Am J Respir Crit Care Med. 2017 Feb 15;195(4):456-463. doi: 10.1164/rccm.201604-0861OC.
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Beyond Cohort Selection: An Analytics-Enabled i2b2.超越队列选择:基于分析的i2b2
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Computing disease incidence, prevalence and comorbidity from electronic medical records.从电子病历中计算疾病发病率、患病率和合并症。
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用于患者护理的大数据的二次利用与分析。

Secondary Use and Analysis of Big Data Collected for Patient Care.

作者信息

Martin-Sanchez F J, Aguiar-Pulido V, Lopez-Campos G H, Peek N, Sacchi L

出版信息

Yearb Med Inform. 2017 Aug;26(1):28-37. doi: 10.15265/IY-2017-008. Epub 2017 Sep 11.

DOI:10.15265/IY-2017-008
PMID:28480474
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6239231/
Abstract

To identify common methodological challenges and review relevant initiatives related to the re-use of patient data collected in routine clinical care, as well as to analyze the economic benefits derived from the secondary use of this data. Through the use of several examples, this article aims to provide a glimpse into the different areas of application, namely clinical research, genomic research, study of environmental factors, and population and health services research. This paper describes some of the informatics methods and Big Data resources developed in this context, such as electronic phenotyping, clinical research networks, biorepositories, screening data banks, and wide association studies. Lastly, some of the potential limitations of these approaches are discussed, focusing on confounding factors and data quality. A series of literature searches in main bibliographic databases have been conducted in order to assess the extent to which existing patient data has been repurposed for research. This contribution from the IMIA working group on "Data mining and Big Data analytics" focuses on the literature published during the last two years, covering the timeframe since the working group's last survey. Although most of the examples of secondary use of patient data lie in the arena of clinical and health services research, we have started to witness other important applications, particularly in the area of genomic research and the study of health effects of environmental factors. Further research is needed to characterize the economic impact of secondary use across the broad spectrum of translational research.

摘要

识别常见的方法学挑战,回顾与重新利用常规临床护理中收集的患者数据相关的举措,并分析从这些数据的二次使用中获得的经济效益。通过几个例子,本文旨在简要介绍不同的应用领域,即临床研究、基因组研究、环境因素研究以及人群与健康服务研究。本文描述了在此背景下开发的一些信息学方法和大数据资源,如电子表型分析、临床研究网络、生物样本库、筛查数据库和全基因组关联研究。最后,讨论了这些方法的一些潜在局限性,重点是混杂因素和数据质量。为了评估现有患者数据被重新用于研究的程度,我们在主要文献数据库中进行了一系列文献检索。国际医学信息学协会(IMIA)“数据挖掘与大数据分析”工作组的这一贡献聚焦于过去两年发表的文献,涵盖了自工作组上次调查以来的时间段。尽管患者数据二次使用的大多数例子都出现在临床和健康服务研究领域,但我们已经开始看到其他重要应用,特别是在基因组研究和环境因素对健康影响的研究领域。需要进一步研究来描述二次使用在广泛的转化研究中的经济影响。