Predicting Hospitalization and Outpatient Corticosteroid Use in Inflammatory Bowel Disease Patients Using Machine Learning

Author:

Waljee Akbar K123,Lipson Rachel1,Wiitala Wyndy L1,Zhang Yiwei4,Liu Boang4,Zhu Ji4,Wallace Beth35,Govani Shail M23,Stidham Ryan W2,Hayward Rodney136,Higgins Peter D R2

Affiliation:

1. VA Center for Clinical Management Research, VA Ann Arbor Health Care System, Ann Arbor, Michigan

2. Division of Gastroenterology and Hepatology, Department of Internal Medicine, University of Michigan Health System, Ann Arbor, Michigan

3. University of Michigan Medical School, Institute for Healthcare Policy and Innovation, Ann Arbor, Michigan

4. Department of Statistics, University of Michigan, Ann Arbor, Michigan

5. Division of Rheumatology, Department of Internal Medicine, University of Michigan Health System, Ann Arbor, Michigan

6. Division of General Medicine, Department of Internal Medicine, University of Michigan Health System, Ann Arbor, Michigan

Abstract

Abstract Background Inflammatory bowel disease (IBD) is a chronic disease characterized by unpredictable episodes of flares and periods of remission. Tools that accurately predict disease course would substantially aid therapeutic decision-making. This study aims to construct a model that accurately predicts the combined end point of outpatient corticosteroid use and hospitalizations as a surrogate for IBD flare. Methods Predictors evaluated included age, sex, race, use of corticosteroid-sparing immunosuppressive medications (immunomodulators and/or anti-TNF), longitudinal laboratory data, and number of previous IBD-related hospitalizations and outpatient corticosteroid prescriptions. We constructed models using logistic regression and machine learning methods (random forest [RF]) to predict the combined end point of hospitalization and/or corticosteroid use for IBD within 6 months. Results We identified 20,368 Veterans Health Administration patients with the first (index) IBD diagnosis between 2002 and 2009. Area under the receiver operating characteristic curve (AuROC) for the baseline logistic regression model was 0.68 (95% confidence interval [CI], 0.67–0.68). AuROC for the RF longitudinal model was 0.85 (95% CI, 0.84–0.85). AuROC for the RF longitudinal model using previous hospitalization or steroid use was 0.87 (95% CI, 0.87–0.88). The 5 leading independent risk factors for future hospitalization or steroid use were age, mean serum albumin, immunosuppressive medication use, and mean and highest platelet counts. Previous hospitalization and corticosteroid use were highly predictive when included in specified models. Conclusions A novel machine learning model substantially improved our ability to predict IBD-related hospitalization and outpatient steroid use. This model could be used at point of care to distinguish patients at high and low risk for disease flare, allowing individualized therapeutic management.

Funder

U.S. Department of Veterans Affairs

National Institutes of Health

Publisher

Oxford University Press (OUP)

Subject

Gastroenterology,Immunology and Allergy

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