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Development and validation of an electronic health record-based algorithm for identifying TBI in the VA: A VA Million Veteran Program study.

Victoria C MerrittAlicia W ChenClara-Lea BonzelChuan HongRahul SangarSara Morini SweetScott F SorgCatherine Chanfreau-Coffiniernull null
Published in: Brain injury (2024)
The purpose of this study was to develop and validate an algorithm for identifying Veterans with a history of traumatic brain injury (TBI) in the Veterans Affairs (VA) electronic health record using VA Million Veteran Program (MVP) data. Manual chart review ( n  = 200) was first used to establish 'gold standard' diagnosis labels for TBI ('Yes TBI' vs. 'No TBI'). To develop our algorithm, we used PheCAP, a semi-supervised pipeline that relied on the chart review diagnosis labels to train and create a prediction model for TBI. Cross-validation was used to train and evaluate the proposed algorithm, 'TBI-PheCAP.' TBI-PheCAP performance was compared to existing TBI algorithms and phenotyping methods, and the final algorithm was run on all MVP participants ( n  = 702,740) to assign a predicted probability for TBI and a binary classification status choosing specificity = 90%. The TBI-PheCAP algorithm had an area under the receiver operating characteristic curve of 0.92, sensitivity of 84%, and positive predictive value (PPV) of 98% at specificity = 90%. TBI-PheCAP generally performed better than other classification methods, with equivalent or higher sensitivity and PPV than existing rules-based TBI algorithms and MVP TBI-related survey data. Given its strong classification metrics, the TBI-PheCAP algorithm is recommended for use in future population-based TBI research.
Keyphrases
  • traumatic brain injury
  • machine learning
  • deep learning
  • severe traumatic brain injury
  • electronic health record
  • mild traumatic brain injury
  • big data
  • clinical decision support
  • quality improvement
  • adverse drug