Determining the Importance of Lifestyle Risk Factors in Predicting Binge Eating Disorder After Bariatric Surgery Using Machine Learning Models and Lifestyle Scores

Background This study was conducted to assess the association between lifestyle risk factors (LRF) and odds of binge eating disorder (BED) 2 years post laparoscopic sleeve gastrectomy (LSG) using lifestyle score (LS) and machine learning (ML) models. Methods In the current study, 450 individuals who...

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Published inObesity surgery Vol. 35; no. 4; pp. 1396 - 1406
Main Authors Mousavi, Maryam, Tabesh, Mastaneh Rajabian, Moghadami, Seyyedeh Mahila, Saidpour, Atoosa, Jahromi, Soodeh Razeghi
Format Journal Article
LanguageEnglish
Published New York Springer US 01.04.2025
Springer Nature B.V
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ISSN0960-8923
1708-0428
1708-0428
DOI10.1007/s11695-025-07765-0

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Abstract Background This study was conducted to assess the association between lifestyle risk factors (LRF) and odds of binge eating disorder (BED) 2 years post laparoscopic sleeve gastrectomy (LSG) using lifestyle score (LS) and machine learning (ML) models. Methods In the current study, 450 individuals who had undergone LSG 2 years prior to participation were enrolled. BED was assessed using BES questionnaire. The collected data for LRF included smoking, alcohol consumption, physical activity (PA), fruit and vegetable intake, overweight/obesity, and percentage excess weight loss (EWL%). ML models included: logistic regression (LG), KNN, decision tree (DT), random forest (RF), SVM, XGBoost, and deep learning or artificial neurol network (ANN). Additionally, accumulative LRF was assessed using LS. Results One hundred and twenty-two subjects (26.1%) met the criteria for BED 2 years after LSG. Participants who were in the highest quartile of the lifestyle score (nearly worst) had significantly three times higher odds of BED compared to the lowest quartile (nearly optimal) ( p trend = 0.01). Furthermore, RF, LG, SVM, and ANN had the highest accuracy (about 75%) in predicting BED compared to other ML models (between 60 and 72%). Among the lifestyle risk factors, insufficient PA, lower vegetable consumption, a higher level of BMI, and lower EWL% were independently associated with BED ( p  < 0.05). Conclusions Our findings indicate that poor lifestyle patterns are associated with the development of BED, in contrast to non-BED individuals. Given the prevalence of this disorder among LSG participants, lifestyle risk factors must receive special attention after BS.
AbstractList This study was conducted to assess the association between lifestyle risk factors (LRF) and odds of binge eating disorder (BED) 2 years post laparoscopic sleeve gastrectomy (LSG) using lifestyle score (LS) and machine learning (ML) models.BACKGROUNDThis study was conducted to assess the association between lifestyle risk factors (LRF) and odds of binge eating disorder (BED) 2 years post laparoscopic sleeve gastrectomy (LSG) using lifestyle score (LS) and machine learning (ML) models.In the current study, 450 individuals who had undergone LSG 2 years prior to participation were enrolled. BED was assessed using BES questionnaire. The collected data for LRF included smoking, alcohol consumption, physical activity (PA), fruit and vegetable intake, overweight/obesity, and percentage excess weight loss (EWL%). ML models included: logistic regression (LG), KNN, decision tree (DT), random forest (RF), SVM, XGBoost, and deep learning or artificial neurol network (ANN). Additionally, accumulative LRF was assessed using LS.METHODSIn the current study, 450 individuals who had undergone LSG 2 years prior to participation were enrolled. BED was assessed using BES questionnaire. The collected data for LRF included smoking, alcohol consumption, physical activity (PA), fruit and vegetable intake, overweight/obesity, and percentage excess weight loss (EWL%). ML models included: logistic regression (LG), KNN, decision tree (DT), random forest (RF), SVM, XGBoost, and deep learning or artificial neurol network (ANN). Additionally, accumulative LRF was assessed using LS.One hundred and twenty-two subjects (26.1%) met the criteria for BED 2 years after LSG. Participants who were in the highest quartile of the lifestyle score (nearly worst) had significantly three times higher odds of BED compared to the lowest quartile (nearly optimal) (p trend = 0.01). Furthermore, RF, LG, SVM, and ANN had the highest accuracy (about 75%) in predicting BED compared to other ML models (between 60 and 72%). Among the lifestyle risk factors, insufficient PA, lower vegetable consumption, a higher level of BMI, and lower EWL% were independently associated with BED (p < 0.05).RESULTSOne hundred and twenty-two subjects (26.1%) met the criteria for BED 2 years after LSG. Participants who were in the highest quartile of the lifestyle score (nearly worst) had significantly three times higher odds of BED compared to the lowest quartile (nearly optimal) (p trend = 0.01). Furthermore, RF, LG, SVM, and ANN had the highest accuracy (about 75%) in predicting BED compared to other ML models (between 60 and 72%). Among the lifestyle risk factors, insufficient PA, lower vegetable consumption, a higher level of BMI, and lower EWL% were independently associated with BED (p < 0.05).Our findings indicate that poor lifestyle patterns are associated with the development of BED, in contrast to non-BED individuals. Given the prevalence of this disorder among LSG participants, lifestyle risk factors must receive special attention after BS.CONCLUSIONSOur findings indicate that poor lifestyle patterns are associated with the development of BED, in contrast to non-BED individuals. Given the prevalence of this disorder among LSG participants, lifestyle risk factors must receive special attention after BS.
Background This study was conducted to assess the association between lifestyle risk factors (LRF) and odds of binge eating disorder (BED) 2 years post laparoscopic sleeve gastrectomy (LSG) using lifestyle score (LS) and machine learning (ML) models. Methods In the current study, 450 individuals who had undergone LSG 2 years prior to participation were enrolled. BED was assessed using BES questionnaire. The collected data for LRF included smoking, alcohol consumption, physical activity (PA), fruit and vegetable intake, overweight/obesity, and percentage excess weight loss (EWL%). ML models included: logistic regression (LG), KNN, decision tree (DT), random forest (RF), SVM, XGBoost, and deep learning or artificial neurol network (ANN). Additionally, accumulative LRF was assessed using LS. Results One hundred and twenty-two subjects (26.1%) met the criteria for BED 2 years after LSG. Participants who were in the highest quartile of the lifestyle score (nearly worst) had significantly three times higher odds of BED compared to the lowest quartile (nearly optimal) ( p trend = 0.01). Furthermore, RF, LG, SVM, and ANN had the highest accuracy (about 75%) in predicting BED compared to other ML models (between 60 and 72%). Among the lifestyle risk factors, insufficient PA, lower vegetable consumption, a higher level of BMI, and lower EWL% were independently associated with BED ( p  < 0.05). Conclusions Our findings indicate that poor lifestyle patterns are associated with the development of BED, in contrast to non-BED individuals. Given the prevalence of this disorder among LSG participants, lifestyle risk factors must receive special attention after BS.
This study was conducted to assess the association between lifestyle risk factors (LRF) and odds of binge eating disorder (BED) 2 years post laparoscopic sleeve gastrectomy (LSG) using lifestyle score (LS) and machine learning (ML) models. In the current study, 450 individuals who had undergone LSG 2 years prior to participation were enrolled. BED was assessed using BES questionnaire. The collected data for LRF included smoking, alcohol consumption, physical activity (PA), fruit and vegetable intake, overweight/obesity, and percentage excess weight loss (EWL%). ML models included: logistic regression (LG), KNN, decision tree (DT), random forest (RF), SVM, XGBoost, and deep learning or artificial neurol network (ANN). Additionally, accumulative LRF was assessed using LS. One hundred and twenty-two subjects (26.1%) met the criteria for BED 2 years after LSG. Participants who were in the highest quartile of the lifestyle score (nearly worst) had significantly three times higher odds of BED compared to the lowest quartile (nearly optimal) (p trend = 0.01). Furthermore, RF, LG, SVM, and ANN had the highest accuracy (about 75%) in predicting BED compared to other ML models (between 60 and 72%). Among the lifestyle risk factors, insufficient PA, lower vegetable consumption, a higher level of BMI, and lower EWL% were independently associated with BED (p < 0.05). Our findings indicate that poor lifestyle patterns are associated with the development of BED, in contrast to non-BED individuals. Given the prevalence of this disorder among LSG participants, lifestyle risk factors must receive special attention after BS.
BackgroundThis study was conducted to assess the association between lifestyle risk factors (LRF) and odds of binge eating disorder (BED) 2 years post laparoscopic sleeve gastrectomy (LSG) using lifestyle score (LS) and machine learning (ML) models.MethodsIn the current study, 450 individuals who had undergone LSG 2 years prior to participation were enrolled. BED was assessed using BES questionnaire. The collected data for LRF included smoking, alcohol consumption, physical activity (PA), fruit and vegetable intake, overweight/obesity, and percentage excess weight loss (EWL%). ML models included: logistic regression (LG), KNN, decision tree (DT), random forest (RF), SVM, XGBoost, and deep learning or artificial neurol network (ANN). Additionally, accumulative LRF was assessed using LS.ResultsOne hundred and twenty-two subjects (26.1%) met the criteria for BED 2 years after LSG. Participants who were in the highest quartile of the lifestyle score (nearly worst) had significantly three times higher odds of BED compared to the lowest quartile (nearly optimal) (p trend = 0.01). Furthermore, RF, LG, SVM, and ANN had the highest accuracy (about 75%) in predicting BED compared to other ML models (between 60 and 72%). Among the lifestyle risk factors, insufficient PA, lower vegetable consumption, a higher level of BMI, and lower EWL% were independently associated with BED (p < 0.05).ConclusionsOur findings indicate that poor lifestyle patterns are associated with the development of BED, in contrast to non-BED individuals. Given the prevalence of this disorder among LSG participants, lifestyle risk factors must receive special attention after BS.
Author Jahromi, Soodeh Razeghi
Moghadami, Seyyedeh Mahila
Mousavi, Maryam
Saidpour, Atoosa
Tabesh, Mastaneh Rajabian
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Lifestyle risk factors
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Snippet Background This study was conducted to assess the association between lifestyle risk factors (LRF) and odds of binge eating disorder (BED) 2 years post...
This study was conducted to assess the association between lifestyle risk factors (LRF) and odds of binge eating disorder (BED) 2 years post laparoscopic...
BackgroundThis study was conducted to assess the association between lifestyle risk factors (LRF) and odds of binge eating disorder (BED) 2 years post...
This study was conducted to assess the association between lifestyle risk factors (LRF) and odds of binge eating disorder (BED) 2 years post laparoscopic...
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SubjectTerms Adult
Bariatric Surgery - adverse effects
Binge eating
Binge-Eating Disorder - epidemiology
Binge-Eating Disorder - etiology
Binge-Eating Disorder - psychology
Bulimia
Eating disorders
Exercise
Female
Gastrointestinal surgery
Humans
Life Style
Lifestyles
Machine Learning
Male
Medicine
Medicine & Public Health
Middle Aged
Obesity, Morbid - psychology
Obesity, Morbid - surgery
Risk Factors
Surgery
Title Determining the Importance of Lifestyle Risk Factors in Predicting Binge Eating Disorder After Bariatric Surgery Using Machine Learning Models and Lifestyle Scores
URI https://link.springer.com/article/10.1007/s11695-025-07765-0
https://www.ncbi.nlm.nih.gov/pubmed/40045153
https://www.proquest.com/docview/3188167741
https://www.proquest.com/docview/3174459277
Volume 35
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