Identifying Young Adults at High Risk for Weight Gain Using Machine Learning

被引:0
作者
Murtha, Jacqueline A. [1 ]
Birstler, Jen [2 ]
Stalter, Lily [1 ]
Jawara, Dawda [1 ]
Hanlon, Bret M. [1 ,2 ]
Hanrahan, Lawrence P. [3 ]
Churpek, Matthew M. [2 ,4 ]
Funk, Luke M. [1 ,5 ,6 ]
机构
[1] Univ Wisconsin, Dept Surg, Madison, WI USA
[2] Univ Wisconsin, Dept Biostat & Med Informat, Madison, WI USA
[3] Univ Wisconsin, Sch Med & Publ Hlth, Dept Family Med & Community Hlth, Madison, WI USA
[4] Univ Wisconsin, Dept Med, Madison, WI USA
[5] William S Middleton Mem VA, Dept Surg, Madison, WI USA
[6] Univ Wisconsin, Dept Surg, 600 Highland Ave,H4-728 Clin Sci Ctr, Madison, WI 53792 USA
关键词
Adult; Machine learning; Obesity; Weight gain; Young; UNITED-STATES; BODY-MASS; OBESITY; MORTALITY; PREVALENCE; GUIDELINES; OVERWEIGHT; CHILDHOOD; HEALTH; MODEL;
D O I
10.1016/j.jss.2023.05.015
中图分类号
R61 [外科手术学];
学科分类号
摘要
Introduction: Weight gain among young adults continues to increase. Identifying adults at high risk for weight gain and intervening before they gain weight could have a major public health impact. Our objective was to develop and test electronic health record-based machine learning models to predict weight gain in young adults with overweight/class 1 obesity.Methods: Seven machine learning models were assessed, including three regression models, random forest, single-layer neural network, gradient-boosted decision trees, and support vector machine (SVM) models. Four categories of predictors were included: 1) demographics; 2) obesity-related health conditions; 3) laboratory data and vital signs; and 4) neighborhood-level variables. The cohort was split 60:40 for model training and validation. Area under the receiver operating characteristic curves (AUC) were calculated to determine model accuracy at predicting high-risk individuals, defined by > 10% total body weight gain within 2 y. Variable importance was measured via generalized analysis of variance procedures.Results: Of the 24,183 patients (mean [SD] age, 32.0 [6.3] y; 55.1% females) in the study, 14.2% gained >10% total body weight. Area under the receiver operating characteristic curves varied from 0.557 (SVM) to 0.675 (gradient-boosted decision trees). Age, sex, and baseline body mass index were the most important predictors among the models except SVM and neural network.Conclusions: Our machine learning models performed similarly and had modest accuracy for identifying young adults at risk of weight gain. Future models may need to incorporate behavioral and/or genetic information to enhance model accuracy.Published by Elsevier Inc.
引用
收藏
页码:7 / 16
页数:10
相关论文
共 50 条
  • [1] Body Mass and Weight Change in Adults in Relation to Mortality Risk
    Adams, Kenneth F.
    Leitzmann, Michael F.
    Ballard-Barbash, Rachel
    Albanes, Demetrius
    Harris, Tamara B.
    Hollenbeck, Albert
    Kipnis, Victor
    [J]. AMERICAN JOURNAL OF EPIDEMIOLOGY, 2014, 179 (02) : 135 - 144
  • [2] Babajide O, 2020, SPRINGER NATURE
  • [3] Screen Time, Other Sedentary Behaviours, and Obesity Risk in Adults: A Review of Reviews
    Biddle, Stuart J. H.
    Garcia, Enrique Bengoechea
    Pedisic, Zeljko
    Bennie, Jason
    Vergeer, Ineke
    Wiesner, Glen
    [J]. CURRENT OBESITY REPORTS, 2017, 6 (02): : 134 - 147
  • [4] Direct medical costs of obesity in the United States and the most populous states
    Cawley, John
    Biener, Adam
    Meyerhoefer, Chad
    Ding, Yuchen
    Zvenyach, Tracy
    Smolarz, B. Gabriel
    Ramasamy, Abhilasha
    [J]. JOURNAL OF MANAGED CARE & SPECIALTY PHARMACY, 2021, 27 (03) : 354 - 366
  • [5] Centers for Disease Control and Prevention: National Health and Nutrition Examination Survey, 2021, NHANES LAB VAR LIST
  • [6] Chen Te-Ching, 2020, Vital Health Stat 2, P1
  • [7] Body Mass Index and All-Cause Mortality Among Older Adults
    Cheng, Feon W.
    Gao, Xiang
    Mitchell, Diane C.
    Wood, Craig
    Still, Christopher D.
    Rolston, David
    Jensen, Gordon L.
    [J]. OBESITY, 2016, 24 (10) : 2232 - 2239
  • [8] Internal and External Validation of a Machine Learning Risk Score for Acute Kidney Injury
    Churpek, Matthew M.
    Carey, Kyle A.
    Edelson, Dana P.
    Singh, Tripti
    Astor, Brad C.
    Gilbert, Emily R.
    Winslow, Christopher
    Shah, Nirav
    Afshar, Majid
    Koyner, Jay L.
    [J]. JAMA NETWORK OPEN, 2020, 3 (08) : E2012892
  • [9] Multicenter Comparison of Machine Learning Methods and Conventional Regression for Predicting Clinical Deterioration on the Wards
    Churpek, Matthew M.
    Yuen, Trevor C.
    Winslow, Christopher
    Meltzer, David O.
    Kattan, Michael W.
    Edelson, Dana P.
    [J]. CRITICAL CARE MEDICINE, 2016, 44 (02) : 368 - 374
  • [10] Association of Neighborhood Walkability With Change in Overweight, Obesity, and Diabetes
    Creatore, Maria I.
    Glazier, Richard H.
    Moineddin, Rahim
    Fazli, Ghazal S.
    Johns, Ashley
    Gozdyra, Peter
    Matheson, Flora I.
    Kaufman-Shriqui, Vered
    Rosella, Laura C.
    Manuel, Doug G.
    Booth, Gillian L.
    [J]. JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION, 2016, 315 (20): : 2211 - 2220