Machine learning is a class of algorithms able to handle a large number of predictors with potentially nonlinear relationships. By applying machine learning to obesity, researchers can examine how risk factors across multiple settings (e.g., school and home) interact to best predict childhood obesity risk. In this narrative review, we provide an overview of studies that have applied machine learning to predict childhood obesity using a combination of sociodemographic and behavioral risk factors. The objective is to summarize the key determinants of obesity identified in existing machine learning studies and highlight opportunities for future machine learning applications in the field. Of 15 peer-reviewed studies, approximately half examined...
Obesity is a risk factor for many diseases. The mechanisms of obesity are not well understood. There...
Background: Childhood obesity is a serious public health challenge and identification of high-risk p...
Obesity is a global health concern with long-term implications. Our research applies numerous Machin...
Previous studies demonstrate the feasibility of predicting obesity using various machine learning te...
The increased prevalence of childhood obesity is expected to translate in the near future into a con...
Objectives This paper aims to predict childhood obesity after age two, using only data collected ...
Obesity is a major global concern with more than 2.1 billion people overweight or obese worldwide wh...
BackgroundBecause of the strong link between childhood obesity and adulthood obesity comorbidities, ...
BackgroundBecause of the strong link between childhood obesity and adulthood obesity comorbidities, ...
Rich sources of obesity‐related data arising from sensors, smartphone apps, electronic medical healt...
The prevalence of childhood obesity has increased globally over the past three decades, with evidenc...
Childhood obesity is a very complex disease. So complex that there are a multitude of factors increa...
Machine Learning is a powerful tool to discover hidden information and relationships in various data...
The relationship between body weight gain and the onset of obesity is linked to environmental and be...
Worldwide prevalence of childhood and adolescent obesity continues to rise. It warrants prevention,...
Obesity is a risk factor for many diseases. The mechanisms of obesity are not well understood. There...
Background: Childhood obesity is a serious public health challenge and identification of high-risk p...
Obesity is a global health concern with long-term implications. Our research applies numerous Machin...
Previous studies demonstrate the feasibility of predicting obesity using various machine learning te...
The increased prevalence of childhood obesity is expected to translate in the near future into a con...
Objectives This paper aims to predict childhood obesity after age two, using only data collected ...
Obesity is a major global concern with more than 2.1 billion people overweight or obese worldwide wh...
BackgroundBecause of the strong link between childhood obesity and adulthood obesity comorbidities, ...
BackgroundBecause of the strong link between childhood obesity and adulthood obesity comorbidities, ...
Rich sources of obesity‐related data arising from sensors, smartphone apps, electronic medical healt...
The prevalence of childhood obesity has increased globally over the past three decades, with evidenc...
Childhood obesity is a very complex disease. So complex that there are a multitude of factors increa...
Machine Learning is a powerful tool to discover hidden information and relationships in various data...
The relationship between body weight gain and the onset of obesity is linked to environmental and be...
Worldwide prevalence of childhood and adolescent obesity continues to rise. It warrants prevention,...
Obesity is a risk factor for many diseases. The mechanisms of obesity are not well understood. There...
Background: Childhood obesity is a serious public health challenge and identification of high-risk p...
Obesity is a global health concern with long-term implications. Our research applies numerous Machin...