Relevant Word Order Vectorization for Improved Natural Language Processing in Electronic Health Records.

Journal: Scientific reports
PMID:

Abstract

Electronic health records (EHR) represent a rich resource for conducting observational studies, supporting clinical trials, and more. However, much of the data contains unstructured text, presenting an obstacle to automated extraction. Natural language processing (NLP) can structure and learn from text, but NLP algorithms were not designed for the unique characteristics of EHR. Here, we propose Relevant Word Order Vectorization (RWOV) to aid with structuring. RWOV is based on finding the positional relationship between the most relevant words to predicting the class of a text. This facilitates machine learning algorithms to use the interaction of not just keywords but positional dependencies (e.g. a relevant word occurs 5 relevant words before some term of interest). As a proof-of-concept, we attempted to classify the hormone receptor status of breast cancer patients treated at the University of Kansas Medical Center, comparing RWOV to other methods using the F1 score and AUC. RWOV performed as well as, or better than other methods in all but one case. For F1 score, RWOV had a clear edge on most tasks. AUC tended to be closer, but for HER2, RWOV was significantly better for most comparisons. These results suggest RWOV should be further developed for EHR-related NLP.

Authors

  • Jeffrey Thompson
    Department of Biostatistics & Data Science, University of Kansas Medical Center, Kansas City, KS, USA. jthompson21@kumc.edu.
  • Jinxiang Hu
    Department of Biostatistics & Data Science, University of Kansas Medical Center, Kansas City, KS, USA.
  • Dinesh Pal Mudaranthakam
    Department of Biostatistics & Data Science, University of Kansas Medical Center, Kansas City, KS, USA.
  • David Streeter
    Department of Biostatistics & Data Science, University of Kansas Medical Center, Kansas City, KS, USA.
  • Lisa Neums
    Department of Biostatistics & Data Science, University of Kansas Medical Center, Kansas City, KS, USA.
  • Michele Park
    University of Kansas Cancer Center, Kansas City, KS, USA.
  • Devin C Koestler
    University of Kansas School of Medicine, Department of Biostatistics, Kansas City, KS, USA.
  • Byron Gajewski
    Department of Biostatistics & Data Science, University of Kansas Medical Center, Kansas City, KS, USA.
  • Roy Jensen
    University of Kansas Cancer Center, Kansas City, KS, USA.
  • Matthew S Mayo
    Department of Biostatistics & Data Science, University of Kansas Medical Center, Kansas City, KS, USA.