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      Survival analysis with electronic health record data: Experiments with chronic kidney disease : Survival Analysis of EHR CKD Data

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          Achieving a nationwide learning health system.

          We outline the fundamental properties of a highly participatory rapid learning system that can be developed in part from meaningful use of electronic health records (EHRs). Future widespread adoption of EHRs will make increasing amounts of medical information available in computable form. Secured and trusted use of these data, beyond their original purpose of supporting the health care of individual patients, can speed the progression of knowledge from the laboratory bench to the patient's bedside and provide a cornerstone for health care reform.
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            Validation of electronic medical record-based phenotyping algorithms: results and lessons learned from the eMERGE network.

            Genetic studies require precise phenotype definitions, but electronic medical record (EMR) phenotype data are recorded inconsistently and in a variety of formats. To present lessons learned about validation of EMR-based phenotypes from the Electronic Medical Records and Genomics (eMERGE) studies. The eMERGE network created and validated 13 EMR-derived phenotype algorithms. Network sites are Group Health, Marshfield Clinic, Mayo Clinic, Northwestern University, and Vanderbilt University. By validating EMR-derived phenotypes we learned that: (1) multisite validation improves phenotype algorithm accuracy; (2) targets for validation should be carefully considered and defined; (3) specifying time frames for review of variables eases validation time and improves accuracy; (4) using repeated measures requires defining the relevant time period and specifying the most meaningful value to be studied; (5) patient movement in and out of the health plan (transience) can result in incomplete or fragmented data; (6) the review scope should be defined carefully; (7) particular care is required in combining EMR and research data; (8) medication data can be assessed using claims, medications dispensed, or medications prescribed; (9) algorithm development and validation work best as an iterative process; and (10) validation by content experts or structured chart review can provide accurate results. Despite the diverse structure of the five EMRs of the eMERGE sites, we developed, validated, and successfully deployed 13 electronic phenotype algorithms. Validation is a worthwhile process that not only measures phenotype performance but also strengthens phenotype algorithm definitions and enhances their inter-institutional sharing.
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              Applied Life Data Analysis

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                Author and article information

                Journal
                Statistical Analysis and Data Mining: The ASA Data Science Journal
                Statistical Analy Data Mining
                Wiley-Blackwell
                19321864
                October 2014
                October 19 2014
                : 7
                : 5
                : 385-403
                Article
                10.1002/sam.11236
                2be2ea81-accb-4301-bc21-a1955ea0fb4e
                © 2014

                http://doi.wiley.com/10.1002/tdm_license_1.1

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