A machine learning approach to triaging patients with chronic obstructive pulmonary disease.

Journal: PloS one
Published Date:

Abstract

COPD patients are burdened with a daily risk of acute exacerbation and loss of control, which could be mitigated by effective, on-demand decision support tools. In this study, we present a machine learning-based strategy for early detection of exacerbations and subsequent triage. Our application uses physician opinion in a statistically and clinically comprehensive set of patient cases to train a supervised prediction algorithm. The accuracy of the model is assessed against a panel of physicians each triaging identical cases in a representative patient validation set. Our results show that algorithm accuracy and safety indicators surpass all individual pulmonologists in both identifying exacerbations and predicting the consensus triage in a 101 case validation set. The algorithm is also the top performer in sensitivity, specificity, and ppv when predicting a patient's need for emergency care.

Authors

  • Sumanth Swaminathan
    Revon Systems Inc, Louisville, KY, United States of America, 40014.
  • Klajdi Qirko
    Revon Systems Inc, Louisville, KY, United States of America, 40014.
  • Ted Smith
    Revon Systems Inc, Louisville, KY, United States of America, 40014.
  • Ethan Corcoran
    Department of Pulmonology, Kaiser Permanente, Clackamas, OR, United States of America, 97015.
  • Nicholas G Wysham
    Vancouver Clinic Division of Pulmonology & Critical Care, Vancouver, WA, United States of America, 98664.
  • Gaurav Bazaz
    Revon Systems Inc, Louisville, KY, United States of America, 40014.
  • George Kappel
    Revon Systems Inc, Louisville, KY, United States of America, 40014.
  • Anthony N Gerber
    Department of Medicine, National Jewish Health, Denver, CO, United States of America, 80206.