| Literature DB >> 28634427 |
Huaxiu Tang1,2, Imre Solti1, Eric Kirkendall1,2,3,4, Haijun Zhai1,5, Todd Lingren1,2, Jaroslaw Meller1,6, Yizhao Ni1,2,3.
Abstract
The objective of this study was to determine whether the Food and Drug Administration's Adverse Event Reporting System (FAERS) data set could serve as the basis of automated electronic health record (EHR) monitoring for the adverse drug reaction (ADR) subset of adverse drug events. We retrospectively collected EHR entries for 71 909 pediatric inpatient visits at Cincinnati Children's Hospital Medical Center. Natural language processing (NLP) techniques were used to identify positive diseases/disorders and signs/symptoms (DDSSs) from the patients' clinical narratives. We downloaded all FAERS reports submitted by medical providers and extracted the reported drug-DDSS pairs. For each patient, we aligned the drug-DDSS pairs extracted from their clinical notes with the corresponding drug-DDSS pairs from the FAERS data set to identify Drug-Reaction Pair Sentences (DRPSs). The DRPSs were processed by NLP techniques to identify ADR-related DRPSs. We used clinician annotated, real-world EHR data as reference standard to evaluate the proposed algorithm. During evaluation, the algorithm achieved promising performance and showed great potential in identifying ADRs accurately for pediatric patients.Entities:
Keywords: Adverse drug reaction; clinical notes; electronic health records; natural language processing
Year: 2017 PMID: 28634427 PMCID: PMC5467704 DOI: 10.1177/1178222617713018
Source DB: PubMed Journal: Biomed Inform Insights ISSN: 1178-2226
Figure 1Overview of the study. EHR indicates electronic health record; FDA, Food and Drug Administration.
Figure 2Data preprocessing on the Food and Drug Administration reports.
Figure 3Overview of the natural language processing processes. ADRs indicate adverse drug reactions; cTAKES, clinical Text Analysis and Knowledge Extraction System; DDSSs, diseases/disorders and signs/symptoms; DRPSs, Drug-Reaction Pair Sentences; FAERS, Food and Drug Administration’s Adverse Event Reporting System; FDA, Food and Drug Administration.
Regular expression patterns indicating relations between DDSSs and medications.
Algorithm performance for each medication.
Algorithm performance for each note type.
Algorithm performance for each medication in each note type.
True adverse drug reactions identified by the algorithm and their frequencies for each medication.
Relative recall for the baseline and the proposed adverse drug reaction detection algorithm.