Predicting Response to Neuromodulators or Prokinetics in Patients With Suspected Gastroparesis Using Machine Learning: The “BMI, Infectious Prodrome, Delayed GES, and No Diabetes” Model

Author:

Takakura Will1,Surjanhata Brian2,Nguyen Linda Anh Bui3,Parkman Henry P.4,Rao Satish S.C.5,McCallum Richard W.6,Schulman Michael7,Wo John Man-Ho8,Sarosiek Irene6,Moshiree Baha9,Kuo Braden2,Hasler William L.10,Lee Allen A.1ORCID

Affiliation:

1. Division of Gastroenterology, University of Michigan, Ann Arbor, Michigan, USA;

2. Division of Gastroenterology, Massachusetts General Hospital, Boston, Massachusetts, USA;

3. Division of Gastroenterology, Stanford Medicine, Stanford, California, USA;

4. Division of Gastroenterology, Temple University Health System Inc, Philadelphia, Pennsylvania, USA;

5. Division of Gastroenterology, Augusta University, Augusta, Georgia, USA;

6. Division of Gastroenterology, Texas Tech University Health Sciences Center El Paso, El Paso, Texas, USA;

7. Suncoast GI Associates LLC, Bradenton, Florida, USA;

8. Division of Gastroenterology, Indiana University School of Medicine, Indianapolis, Indiana, USA;

9. Gastroenterology and Hepatology, Atrium Health, Charlotte, North Carolina, USA;

10. Division of Gastroenterology, Mayo Clinic, Scottsdale, Arizona, USA.

Abstract

INTRODUCTION: Pharmacologic therapies for symptoms of gastroparesis (GP) have limited efficacy, and it is difficult to predict which patients will respond. In this study, we implemented a machine learning model to predict the response to prokinetics and/or neuromodulators in patients with GP-like symptoms. METHODS: Subjects with suspected GP underwent simultaneous gastric emptying scintigraphy (GES) and wireless motility capsule and were followed for 6 months. Subjects were included if they were started on neuromodulators and/or prokinetics. Subjects were considered responders if their GP Cardinal Symptom Index at 6 months decreased by ≥1 from baseline. A machine learning model was trained using lasso regression, ridge regression, or random forest. Five-fold cross-validation was used to train the models, and the area under the receiver operator characteristic curve (AUC-ROC) was calculated using the test set. RESULTS: Of the 150 patients enrolled, 123 patients received either a prokinetic and/or a neuromodulator. Of the 123, 45 were considered responders and 78 were nonresponders. A ridge regression model with the variables, such as body mass index, infectious prodrome, delayed gastric emptying scintigraphy, no diabetes, had the highest AUC-ROC of 0.72. The model performed well for subjects on prokinetics without neuromodulators (AUC-ROC of 0.83) but poorly for those on neuromodulators without prokinetics. A separate model with gastric emptying time, duodenal motility index, no diabetes, and functional dyspepsia performed better (AUC-ROC of 0.75). DISCUSSION: This machine learning model has an acceptable accuracy in predicting those who will respond to neuromodulators and/or prokinetics. If validated, our model provides valuable data in predicting treatment outcomes in patients with GP-like symptoms.

Funder

Medtronic

National Institute of Diabetes and Digestive and Kidney Diseases

Publisher

Ovid Technologies (Wolters Kluwer Health)

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