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Facilitating pharmacogenetic studies using electronic health records and natural-language processing: a case study of warfarin
Authors:Hua Xu  Min Jiang  Matt Oetjens  Erica A Bowton  Andrea H Ramirez  Janina M Jeff  Melissa A Basford  Jill M Pulley  James D Cowan  Xiaoming Wang  Marylyn D Ritchie  Daniel R Masys  Dan M Roden  Dana C Crawford  Joshua C Denny
Abstract:

Objective

DNA biobanks linked to comprehensive electronic health records systems are potentially powerful resources for pharmacogenetic studies. This study sought to develop natural-language-processing algorithms to extract drug-dose information from clinical text, and to assess the capabilities of such tools to automate the data-extraction process for pharmacogenetic studies.

Materials and methods

A manually validated warfarin pharmacogenetic study identified a cohort of 1125 patients with a stable warfarin dose, in which 776 patients were managed by Coumadin Clinic physicians, and the remaining 349 patients were managed by their providers. The authors developed two algorithms to extract weekly warfarin doses from both data sets: a regular expression-based program for semistructured Coumadin Clinic notes; and an advanced weekly dose calculator based on an existing medication information extraction system (MedEx) for narrative providers'' notes. The authors then conducted an association analysis between an automatically extracted stable weekly dose of warfarin and four genetic variants of VKORC1 and CYP2C9 genes. The performance of the weekly dose-extraction program was evaluated by comparing it with a gold standard containing manually curated weekly doses. Precision, recall, F-measure, and overall accuracy were reported. Associations between known variants in VKORC1 and CYP2C9 and warfarin stable weekly dose were performed with linear regression adjusted for age, gender, and body mass index.

Results

The authors'' evaluation showed that the MedEx-based system could determine patients'' warfarin weekly doses with 99.7% recall, 90.8% precision, and 93.8% accuracy. Using the automatically extracted weekly doses of warfarin, the authors successfully replicated the previous known associations between warfarin stable dose and genetic variants in VKORC1 and CYP2C9.
Keywords:Automated learning  knowledge representations  discovery  text and data-mining methods  other methods of information extraction  natural-language processing  NLP  warfarin  old epass  Genetics  translational research—  application of biological knowledge to clinical care  improving the education and skills training of health professionals  linking the genotype and phenotype
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