Machine learning and natural language processing methods to identify ischemic stroke, acuity and location from radiology reports.

Journal: PloS one
Published Date:

Abstract

Accurate, automated extraction of clinical stroke information from unstructured text has several important applications. ICD-9/10 codes can misclassify ischemic stroke events and do not distinguish acuity or location. Expeditious, accurate data extraction could provide considerable improvement in identifying stroke in large datasets, triaging critical clinical reports, and quality improvement efforts. In this study, we developed and report a comprehensive framework studying the performance of simple and complex stroke-specific Natural Language Processing (NLP) and Machine Learning (ML) methods to determine presence, location, and acuity of ischemic stroke from radiographic text. We collected 60,564 Computed Tomography and Magnetic Resonance Imaging Radiology reports from 17,864 patients from two large academic medical centers. We used standard techniques to featurize unstructured text and developed neurovascular specific word GloVe embeddings. We trained various binary classification algorithms to identify stroke presence, location, and acuity using 75% of 1,359 expert-labeled reports. We validated our methods internally on the remaining 25% of reports and externally on 500 radiology reports from an entirely separate academic institution. In our internal population, GloVe word embeddings paired with deep learning (Recurrent Neural Networks) had the best discrimination of all methods for our three tasks (AUCs of 0.96, 0.98, 0.93 respectively). Simpler NLP approaches (Bag of Words) performed best with interpretable algorithms (Logistic Regression) for identifying ischemic stroke (AUC of 0.95), MCA location (AUC 0.96), and acuity (AUC of 0.90). Similarly, GloVe and Recurrent Neural Networks (AUC 0.92, 0.89, 0.93) generalized better in our external test set than BOW and Logistic Regression for stroke presence, location and acuity, respectively (AUC 0.89, 0.86, 0.80). Our study demonstrates a comprehensive assessment of NLP techniques for unstructured radiographic text. Our findings are suggestive that NLP/ML methods can be used to discriminate stroke features from large data cohorts for both clinical and research-related investigations.

Authors

  • Charlene Jennifer Ong
    Boston University School of Medicine, Boston, Massachusetts, United States of America.
  • Agni Orfanoudaki
    Operations Research Center, Massachusetts Institute of Technology, Cambridge, Massachusetts, United States of America.
  • Rebecca Zhang
    Operations Research Center, Massachusetts Institute of Technology, Cambridge, Massachusetts, United States of America.
  • Francois Pierre M Caprasse
    Operations Research Center, Massachusetts Institute of Technology, Cambridge, Massachusetts, United States of America.
  • Meghan Hutch
    Boston University School of Medicine, Boston, Massachusetts, United States of America.
  • Liang Ma
    College of Information and Management, National University of Defense Technology, Changsha 410073, China.
  • Darian Fard
    Boston University School of Medicine, Boston, Massachusetts, United States of America.
  • Oluwafemi Balogun
    Boston University School of Medicine, Boston, Massachusetts, United States of America.
  • Matthew I Miller
    Boston University School of Medicine, Boston, Massachusetts, United States of America.
  • Margaret Minnig
    Boston University School of Medicine, Boston, Massachusetts, United States of America.
  • Hanife Saglam
    Harvard Medical School, Boston, Massachusetts, United States of America.
  • Brenton Prescott
    Boston Medical Center, Boston, Massachusetts, United States of America.
  • David M Greer
    Boston University School of Medicine, Boston, Massachusetts, United States of America.
  • Stelios Smirnakis
    Harvard Medical School, Boston, Massachusetts, United States of America.
  • Dimitris Bertsimas
    Dimitris Bertsimas, Jack Dunn, Colin Pawlowski, John Silberholz, Alexander Weinstein, and Ying Daisy Zhuo, Massachusetts Institute of Technology, Cambridge; Eddy Chen, Massachusetts General Hospital Cancer Center; Harvard Medical School; Aymen A. Elfiky, Dana-Farber Cancer Institute; Brigham and Women's Hospital; Harvard Medical School, Boston, MA.