American Family Cohort, a data resource description

This manuscript is a research resource description and presents a large and novel Electronic Health Records (EHR) data resource, American Family Cohort (AFC). The AFC data is derived from Centers for Medicare and Medicaid Services (CMS) certified American Board of Family Medicine (ABFM) PRIME regist...

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Hauptverfasser: Balraj, Deepa, Vala, Ayin, Hao, Shiying, Philofsky, Melanie, Tsvetkova, Anna, Trach, Elena, Narra, Shravani Priya, Zhuk, Oleg, Shamkhorskaya, Mary, Singer, Jim, Mesterhazy, Joseph, Datta, Somalee, Chu, Isabella, Rehkopf, David
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creator Balraj, Deepa
Vala, Ayin
Hao, Shiying
Philofsky, Melanie
Tsvetkova, Anna
Trach, Elena
Narra, Shravani Priya
Zhuk, Oleg
Shamkhorskaya, Mary
Singer, Jim
Mesterhazy, Joseph
Datta, Somalee
Chu, Isabella
Rehkopf, David
description This manuscript is a research resource description and presents a large and novel Electronic Health Records (EHR) data resource, American Family Cohort (AFC). The AFC data is derived from Centers for Medicare and Medicaid Services (CMS) certified American Board of Family Medicine (ABFM) PRIME registry. The PRIME registry is the largest national Qualified Clinical Data Registry (QCDR) for Primary Care. The data is converted to a popular common data model, the Observational Health Data Sciences and Informatics (OHDSI) Observational Medical Outcomes Partnership (OMOP) Common Data Model (CDM). The resource presents approximately 90 million encounters for 7.5 million patients. All 100% of the patients present age, gender, and address information, and 73% report race. Nealy 93% of patients have lab data in LOINC, 86% have medication data in RxNorm, 93% have diagnosis in SNOWMED and ICD, 81% have procedures in HCPCS or CPT, and 61% have insurance information. The richness, breadth, and diversity of this research accessible and research ready data is expected to accelerate observational studies in many diverse areas. We expect this resource to facilitate research in many years to come.
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title American Family Cohort, a data resource description
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