Literature DB >> 30969131

Application of Machine Learning to Identify Clustering of Cardiometabolic Risk Factors in U.S. Adults.

Xiyue Liao1, David Kerr2, Jessikah Morales2, Ian Duncan1.   

Abstract

Aims: The aim of this study is to compare some machine learning methods with traditional statistical parametric analyses using logistic regression to investigate the relationship of risk factors for diabetes and cardiovascular (cardiometabolic risk) for U.S. adults using a cross-sectional data from participants in a wellness improvement program.
Methods: Logistic regression was used to find the relationship between individual risk factors, predictor and cardiometabolic risk. Supervised machine learning methods were used to predict risk and produce a ranking of variables' importance. A clustering method was used to identify subpopulations of interest. Predictors were divided into those that are nonmodifiable and those that are modifiable.
Results: The population comprised 217,254 adults of whom 8.1% had diabetes. Using logistic regression, six variables were identified to be negatively related and eleven were positively related to cardiometabolic risk. Three supervised machine learning classifiers (random forest, gradient boosting, and bagging) were applied with average AUC to be 0.806. Each classifier also produced a ranking of variables' importance. Four subgroups were identified with a k-medoid clustering algorithm, which were mainly distinguished by gender and diabetes status. Conclusions: The study illustrates that machine learning is an important addition to traditional logistic regression in terms of identifying important cardiometabolic risk factors and ranking their importance and the potential for interventions based on lifestyle and medications at an individual level.

Entities:  

Keywords:  Clustering; Diabetes; Machine learning; Prediction; Supervised learning; Variable importance

Mesh:

Substances:

Year:  2019        PMID: 30969131     DOI: 10.1089/dia.2018.0390

Source DB:  PubMed          Journal:  Diabetes Technol Ther        ISSN: 1520-9156            Impact factor:   6.118


  1 in total

1.  A Machine-Learning-Based Risk-Prediction Tool for HIV and Sexually Transmitted Infections Acquisition over the Next 12 Months.

Authors:  Xianglong Xu; Zongyuan Ge; Eric P F Chow; Zhen Yu; David Lee; Jinrong Wu; Jason J Ong; Christopher K Fairley; Lei Zhang
Journal:  J Clin Med       Date:  2022-03-25       Impact factor: 4.241

  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.