Published November 29, 2024
| Version v1
Journal article
Open
A machine-learned model for predicting weight loss success using weight change features early in treatment
Creators
- 1. Northwestern University
- 2. University of Tennessee
- 3. University of Chicago
Description
Stepped-care obesity treatments aim to improve efficiency by early identification of non-responders and adjusting interventions but lack validated models. We trained a random forest classifier to improve the predictive utility of a clinical decision rule (>0.5 lb weight loss/week) that identifies non-responders in the first 2 weeks of a stepped-care weight loss trial (SMART). From 2009 to 2021, 1058 individuals with obesity participated in three studies: SMART, Opt-IN, and ENGAGED. The model was trained on 80% of the SMART data (224 participants), and its in-distribution generalizability was tested on the remaining 20% (remaining 57 participants). The out-of-distribution generalizability was tested on the ENGAGED and Opt-IN studies (472 participants). The model predicted weight loss at month 6 with an 84.5% AUROC and an 86.3% AUPRC. SHAP identified predictive features: weight loss at week 2, ranges/means and ranges of weight loss, slope, and age. The SMART-trained model showed generalizable performance with no substantial difference across studies.
Data availability
The data underpinning the results of this article will be accessible for academic use through a reasonable written request to the corresponding author. Requests will be considered on a case-by-case basis and evaluated in compliance with ethical and regulatory guidelines governing clinical research.
The specifics of the implementation of the machine learning models are available on the GitHub page: https://github.com/HAbitsLab/WeightlossPredictionModel.
Files
Machine-learned-model-for-predicting-weight-loss-success-using-weight-change-features-early-in-treatment.pdf
Files
(1.6 MB)
| Name | Size | Download all |
|---|---|---|
|
Supplementary information md5:925c4de7fdc2fadea7715165f7fdc635 |
382.3 kB | Preview Download |
|
Article md5:81ba3f7deec32e70a78d360cb3590359 |
1.3 MB | Preview Download |
Additional details
Identifiers
- DOI
- 10.1038/s41746-024-01299-y
- Other
- oai:uchicago.tind.io:14181
Funding
- U.S. National Institute of Diabetes and Digestive and Kidney Diseases
- R01DK125414
- National Heart, Lung, and Blood Institute
- F31HL162555