EXIST: EXamining rIsk of excesS adiposiTy—Machine learning to predict obesity‐related complications

Author:

Turchin Alexander12ORCID,Morrison Fritha J.1,Shubina Maria1,Lipkovich Ilya3,Shinde Shraddha3,Ahmad Nadia N.3,Kan Hong3

Affiliation:

1. Brigham and Women's Hospital Boston Massachusetts USA

2. Harvard Medical School Boston Massachusetts USA

3. Eli Lilly and Company Indianapolis Indiana USA

Abstract

AbstractBackgroundObesity is associated with an increased risk of multiple conditions, ranging from heart disease to cancer. However, there are few predictive models for these outcomes that have been developed specifically for people with overweight/obesity.ObjectiveTo develop predictive models for obesity‐related complications in patients with overweight and obesity.MethodsElectronic health record data of adults with body mass index 25–80 kg/m2 treated in primary care practices between 2000 and 2019 were utilized to develop and evaluate predictive models for nine long‐term clinical outcomes using a) Lasso‐Cox models and b) a machine‐learning method random survival forests (RSF). Models were trained on a training dataset and evaluated on a test dataset over 100 replicates. Parsimonious models of <10 variables were also developed using Lasso‐Cox.ResultsOver a median follow‐up of 5.6 years, study outcome incidence in the cohort of 433,272 patients ranged from 1.8% for knee replacement to 11.7% for atherosclerotic cardiovascular disease. Harrell C‐index averaged over replicates ranged from 0.702 for liver outcomes to 0.896 for death for RSF, and from 0.694 for liver outcomes to 0.891 for death for Lasso‐Cox. The Harrell C‐index for parsimonious models ranged from 0.675 for liver outcomes to 0.850 for knee replacement.ConclusionsPredictive modeling can identify patients at high risk of obesity‐related complications. Interpretable Cox models achieve results close to those of machine learning methods and could be helpful for population health management and clinical treatment decisions.

Funder

Eli Lilly and Company

Publisher

Wiley

Subject

Nutrition and Dietetics,Endocrinology, Diabetes and Metabolism

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