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Improvements to <scp>PTSD</scp> quality metrics with natural language processing

Authors :
Bradley V. Watts
Carey J. Russ
Shira Maguen
Maxwell Levis
Brian Shiner
Scott L. DuVall
Vincent M. Dufort
Olga V. Patterson
Source :
Journal of Evaluation in Clinical Practice. 28:520-530
Publication Year :
2021
Publisher :
Wiley, 2021.

Abstract

RATIONALE AIMS AND OBJECTIVES As quality measurement becomes increasingly reliant on the availability of structured electronic medical record (EMR) data, clinicians are asked to perform documentation using tools that facilitate data capture. These tools may not be available, feasible, or acceptable in all clinical scenarios. Alternative methods of assessment, including natural language processing (NLP) of clinical notes, may improve the completeness of quality measurement in real-world practice. Our objective was to measure the quality of care for a set of evidence-based practices using structured EMR data alone, and then supplement those measures with additional data derived from NLP. METHOD As a case example, we studied the quality of care for posttraumatic stress disorder (PTSD) in the United States Department of Veterans Affairs (VA) over a 20-year period. We measured two aspects of PTSD care, including delivery of evidence-based psychotherapy (EBP) and associated use of measurement-based care (MBC), using structured EMR data. We then recalculated these measures using additional data derived from NLP of clinical note text. RESULTS There were 2 098 389 VA patients with a diagnosis of PTSD between 2000 and 2019, 72% (n = 1 515 345) of whom had not previously received EBP for PTSD and were treated after a 2015 mandate to document EBP using templates that generate structured EMR data. Using structured EMR data, we determined that 3.2% (n = 48 004) of those patients met our EBP for PTSD quality standard between 2015 and 2019, and 48.1% (n = 23 088) received associated MBC. With the addition of NLP-derived data, estimates increased to 4.1% (n = 62 789) and 58.0% (n = 36 435), respectively. CONCLUSION Healthcare quality data can be significantly improved by supplementing structured EMR data with NLP-derived data. By using NLP, health systems may be able to fill the gaps in documentation when structured tools are not yet available or there are barriers to using them in clinical practice.

Details

ISSN :
13652753 and 13561294
Volume :
28
Database :
OpenAIRE
Journal :
Journal of Evaluation in Clinical Practice
Accession number :
edsair.doi.dedup.....620ac406aaad886322fe612c0b45aa87
Full Text :
https://doi.org/10.1111/jep.13587