Diagnostic Algorithms to Study Post-Concussion Syndrome Using Electronic Health Records: Validating a Method to Capture an Important Patient Population.

TitleDiagnostic Algorithms to Study Post-Concussion Syndrome Using Electronic Health Records: Validating a Method to Capture an Important Patient Population.
Publication TypeJournal Article
Year of Publication2019
AuthorsDennis, J, Yengo-Kahn, AM, Kirby, P, Solomon, GS, Cox, NJ, Zuckerman, SL
JournalJ Neurotrauma
Volume36
Issue14
Pagination2167-2177
Date Published2019 Jul 15
ISSN1557-9042
Abstract

Post-concussion syndrome (PCS) is characterized by persistent cognitive, somatic, and emotional symptoms after a mild traumatic brain injury (mTBI). Genetic and other biological variables may contribute to PCS etiology, and the emergence of biobanks linked to electronic health records (EHRs) offers new opportunities for research on PCS. We sought to validate the EHR data of PCS patients by comparing two diagnostic algorithms deployed in the Vanderbilt University Medical Center de-identified database of 2.8 million patient EHRs. The algorithms identified individuals with PCS by: 1) natural language processing (NLP) of narrative text in the EHR combined with structured demographic, diagnostic, and encounter data; or 2) coded billing and procedure data. The predictive value of each algorithm was assessed, and cases and controls identified by each approach were compared on demographic and medical characteristics. The NLP algorithm identified 507 cases and 10,857 controls. The negative predictive value in controls was 78% and the positive predictive value (PPV) in cases was 82%. Conversely, the coded algorithm identified 1142 patients with two or more PCS billing codes and had a PPV of 76%. Comparisons of PCS controls to both case groups recovered known epidemiology of PCS: cases were more likely than controls to be female and to have pre-morbid diagnoses of anxiety, migraine, and post-traumatic stress disorder. In contrast, controls and cases were equally likely to have attention deficit hyperactive disorder and learning disabilities, in accordance with the findings of recent systematic reviews of PCS risk factors. We conclude that EHRs are a valuable research tool for PCS. Ascertainment based on coded data alone had a predictive value comparable to an NLP algorithm, recovered known PCS risk factors, and maximized the number of included patients.

DOI10.1089/neu.2018.5916
Alternate JournalJ. Neurotrauma
PubMed ID30773988
PubMed Central IDPMC6653792
Grant ListUL1 TR000445 / TR / NCATS NIH HHS / United States
U54 MD010722 / MD / NIMHD NIH HHS / United States
S10 RR025141 / RR / NCRR NIH HHS / United States
UL1 RR024975 / RR / NCRR NIH HHS / United States
UL1 TR002243 / TR / NCATS NIH HHS / United States
U01 HG009086 / HG / NHGRI NIH HHS / United States
R01 MH113362 / MH / NIMH NIH HHS / United States