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Evidence from big data in obesity research: international case studies

[journal article]

Wilkins, Emma
Aravani, Ariadni
Downing, Amy
Drewnowski, Adam
Griffiths, Claire
Zwolinsky, Stephen
Birkin, Mark
Alvanides, Seraphim
Morris, Michelle A.

Abstract

Obesity is thought to be the product of over 100 different factors, interacting as a complex system over multiple levels. Understanding the drivers of obesity requires considerable data, which are challenging, costly and time-consuming to collect through traditional means. Use of 'big data' presents... view more

Obesity is thought to be the product of over 100 different factors, interacting as a complex system over multiple levels. Understanding the drivers of obesity requires considerable data, which are challenging, costly and time-consuming to collect through traditional means. Use of 'big data' presents a potential solution to this challenge. Big data is defined by Delphi consensus as: always digital, has a large sample size, and a large volume or variety or velocity of variables that require additional computing power (Vogel et al. Int J Obes. 2019). 'Additional computing power' introduces the concept of big data analytics. The aim of this paper is to showcase international research case studies presented during a seminar series held by the Economic and Social Research Council (ESRC) Strategic Network for Obesity in the UK. These are intended to provide an in-depth view of how big data can be used in obesity research, and the specific benefits, limitations and challenges encountered.... view less

Keywords
adipositas; demographic factors; cause; data quality; data capture; health behavior; social factors; physical exercise

Classification
Medicine, Social Medicine
Methods and Techniques of Data Collection and Data Analysis, Statistical Methods, Computer Methods

Free Keywords
Big Data

Document language
English

Publication Year
2020

Page/Pages
p. 1028-1040

Journal
International Journal of Obesity, 44 (2020)

DOI
https://doi.org/10.1038/s41366-020-0532-8

ISSN
1476-5497

Status
Postprint; peer reviewed

Licence
Deposit Licence - No Redistribution, No Modifications


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© 2007 - 2025 Social Science Open Access Repository (SSOAR).
Based on DSpace, Copyright (c) 2002-2022, DuraSpace. All rights reserved.