| Literature DB >> 33981381 |
Yolanda Hagar1, David Albers1, Rimma Pivovarov1, Herbert Chase1, Vanja Dukic1, Noémie Elhadad1.
Abstract
This paper presents a detailed survival analysis for chronic kidney disease (CKD). The analysis is based on the EHR data comprising almost two decades of clinical observations collected at New York-Presbyterian, a large hospital in New York City with one of the oldest electronic health records in the United States. Our survival analysis approach centers around Bayesian multiresolution hazard modeling, with an objective to capture the changing hazard of CKD over time, adjusted for patient clinical covariates and kidney-related laboratory tests. Special attention is paid to statistical issues common to all EHR data, such as cohort definition, missing data and censoring, variable selection, and potential for joint survival and longitudinal modeling, all of which are discussed alone and within the EHR CKD context.Entities:
Keywords: EHR; MRH; chronic kidney disease; multiresolution hazard; survival analysis
Year: 2014 PMID: 33981381 PMCID: PMC8112603 DOI: 10.1002/sam.11236
Source DB: PubMed Journal: Stat Anal Data Min ISSN: 1932-1864 Impact factor: 1.051