Skip to main content
Top
Published in: BMC Endocrine Disorders 1/2021

Open Access 01-12-2021 | Obesity | Research

The BAriatic surgery SUbstitution and nutrition (BASUN) population: a data-driven exploration of predictors for obesity

Authors: Gudrún Höskuldsdóttir, My Engström, Araz Rawshani, Ville Wallenius, Frida Lenér, Lars Fändriks, Karin Mossberg, Björn Eliasson

Published in: BMC Endocrine Disorders | Issue 1/2021

Login to get access

Abstract

Background

The development of obesity is most likely due to a combination of biological and environmental factors some of which might still be unidentified. We used a machine learning technique to examine the relative importance of more than 100 clinical variables as predictors for BMI.

Methods

BASUN is a prospective non-randomized cohort study of 971 individuals that received medical or surgical treatment (treatment choice was based on patient’s preferences and clinical criteria, not randomization) for obesity in the Västra Götaland county in Sweden between 2015 and 2017 with planned follow-up for 10 years. This study includes demographic data, BMI, blood tests, and questionnaires before obesity treatment that cover three main areas: gastrointestinal symptoms and eating habits, physical activity and quality of life, and psychological health. We used random forest, with conditional variable importance, to study the relative importance of roughly 100 predictors of BMI, covering 15 domains. We quantified the predictive value of each individual predictor, as well as each domain.

Results

The participants received medical (n = 382) or surgical treatment for obesity (Roux-en-Y gastric bypass, n = 388; sleeve gastrectomy, n = 201). There were minor differences between these groups before treatment with regard to anthropometrics, laboratory measures and results from questionnaires. The 10 individual variables with the strongest predictive value, in order of decreasing strength, were country of birth, marital status, sex, calcium levels, age, levels of TSH and HbA1c, AUDIT score, BE tendencies according to QEWPR, and TG levels. The strongest domains predicting BMI were: Socioeconomic status, Demographics, Biomarkers (notably TSH), Lifestyle/habits, Biomarkers for cardiovascular disease and diabetes, and Potential anxiety and depression.

Conclusions

Lifestyle, habits, age, sex and socioeconomic status are some of the strongest predictors for BMI levels. Potential anxiety and / or depression and other characteristics captured using questionnaires have strong predictive value. These results confirm previously suggested associations and advocate prospective studies to examine the value of better characterization of patients eligible for obesity treatment, and consequently to evaluate the treatment effects in groups of patients.

Trial registration

March 03, 2015; NCT03152617.
Appendix
Available only for authorised users
Literature
3.
go back to reference Golden SH, Brown A, Cauley JA, Chin MH, Gary-Webb TL, Kim C, et al. Health disparities in endocrine disorders: biological, clinical, and nonclinical factors—an Endocrine Society scientific statement. J Clin Endocrinol Metabol. 2012;97(9):E1579–E639. https://doi.org/10.1210/jc.2012-2043.CrossRef Golden SH, Brown A, Cauley JA, Chin MH, Gary-Webb TL, Kim C, et al. Health disparities in endocrine disorders: biological, clinical, and nonclinical factors—an Endocrine Society scientific statement. J Clin Endocrinol Metabol. 2012;97(9):E1579–E639. https://​doi.​org/​10.​1210/​jc.​2012-2043.CrossRef
7.
go back to reference Höskuldsdóttir G, Mossberg K, Wallenius V, Al Nimer A, Björkvall W, Lundberg S, et al. Design and baseline data in the BAriatic surgery SUbstitution and Nutrition study (BASUN): a 10-year prospective cohort study. BMC Endocrine Disord. 2020;20(1):1-9. Höskuldsdóttir G, Mossberg K, Wallenius V, Al Nimer A, Björkvall W, Lundberg S, et al. Design and baseline data in the BAriatic surgery SUbstitution and Nutrition study (BASUN): a 10-year prospective cohort study. BMC Endocrine Disord. 2020;20(1):1-9.
8.
13.
go back to reference Steer RABA. Beck anxiety inventory. In: Wood CP, editor. Evaluating stress: a book of resources. Lanham: Scarecrow Education; 1997. p. 23–40. Steer RABA. Beck anxiety inventory. In: Wood CP, editor. Evaluating stress: a book of resources. Lanham: Scarecrow Education; 1997. p. 23–40.
15.
go back to reference Babor TFH-BJ, Saunders JB, Monteiro MG. AUDIT: the alcohol use disorders identification test guidelines for use in primary care (second edition). Geneva: World Health Organization; 2001. Babor TFH-BJ, Saunders JB, Monteiro MG. AUDIT: the alcohol use disorders identification test guidelines for use in primary care (second edition). Geneva: World Health Organization; 2001.
17.
go back to reference van der Laan MJ. Statistical inference for variable importance. Int J Biostat. 2006;2(1):1-31. van der Laan MJ. Statistical inference for variable importance. Int J Biostat. 2006;2(1):1-31.
25.
go back to reference Zheng Z, Ruggiero K. Using machine learning to predict obesity in high school students. In Proceedings of the 2017 IEEE International Conference on Bioinformatics and Biomedicine (BIBM), Kansas City, MO, USA. 2017. p. 2132–8. Zheng Z, Ruggiero K. Using machine learning to predict obesity in high school students. In Proceedings of the 2017 IEEE International Conference on Bioinformatics and Biomedicine (BIBM), Kansas City, MO, USA. 2017. p. 2132–8.
28.
go back to reference Karimi-Alavijeh F, Jalili S, Sadeghi M. Predicting metabolic syndrome using decision tree and support vector machine methods. ARYA Atheroscler. 2016;12(3):146–52.PubMedPubMedCentral Karimi-Alavijeh F, Jalili S, Sadeghi M. Predicting metabolic syndrome using decision tree and support vector machine methods. ARYA Atheroscler. 2016;12(3):146–52.PubMedPubMedCentral
34.
36.
Metadata
Title
The BAriatic surgery SUbstitution and nutrition (BASUN) population: a data-driven exploration of predictors for obesity
Authors
Gudrún Höskuldsdóttir
My Engström
Araz Rawshani
Ville Wallenius
Frida Lenér
Lars Fändriks
Karin Mossberg
Björn Eliasson
Publication date
01-12-2021
Publisher
BioMed Central
Keywords
Obesity
Obesity
Published in
BMC Endocrine Disorders / Issue 1/2021
Electronic ISSN: 1472-6823
DOI
https://doi.org/10.1186/s12902-021-00849-9

Other articles of this Issue 1/2021

BMC Endocrine Disorders 1/2021 Go to the issue
Live Webinar | 27-06-2024 | 18:00 (CEST)

Keynote webinar | Spotlight on medication adherence

Live: Thursday 27th June 2024, 18:00-19:30 (CEST)

WHO estimates that half of all patients worldwide are non-adherent to their prescribed medication. The consequences of poor adherence can be catastrophic, on both the individual and population level.

Join our expert panel to discover why you need to understand the drivers of non-adherence in your patients, and how you can optimize medication adherence in your clinics to drastically improve patient outcomes.

Prof. Kevin Dolgin
Prof. Florian Limbourg
Prof. Anoop Chauhan
Developed by: Springer Medicine
Obesity Clinical Trial Summary

At a glance: The STEP trials

A round-up of the STEP phase 3 clinical trials evaluating semaglutide for weight loss in people with overweight or obesity.

Developed by: Springer Medicine

Highlights from the ACC 2024 Congress

Year in Review: Pediatric cardiology

Watch Dr. Anne Marie Valente present the last year's highlights in pediatric and congenital heart disease in the official ACC.24 Year in Review session.

Year in Review: Pulmonary vascular disease

The last year's highlights in pulmonary vascular disease are presented by Dr. Jane Leopold in this official video from ACC.24.

Year in Review: Valvular heart disease

Watch Prof. William Zoghbi present the last year's highlights in valvular heart disease from the official ACC.24 Year in Review session.

Year in Review: Heart failure and cardiomyopathies

Watch this official video from ACC.24. Dr. Biykem Bozkurt discusses last year's major advances in heart failure and cardiomyopathies.