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@article{ Wilkins2020,
 title = {Evidence from big data in obesity research: international case studies},
 author = {Wilkins, Emma and Aravani, Ariadni and Downing, Amy and Drewnowski, Adam and Griffiths, Claire and Zwolinsky, Stephen and Birkin, Mark and Alvanides, Seraphim and Morris, Michelle A.},
 journal = {International Journal of Obesity},
 pages = {1028-1040},
 volume = {44},
 year = {2020},
 issn = {1476-5497},
 doi = {https://doi.org/10.1038/s41366-020-0532-8},
 urn = {https://nbn-resolving.org/urn:nbn:de:0168-ssoar-70720-3},
 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 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.},
 keywords = {Gesundheitsverhalten; Datengewinnung; adipositas; demographic factors; körperliche Bewegung; Fettsucht; Datenqualität; cause; data quality; soziale Faktoren; Ursache; demographische Faktoren; data capture; health behavior; social factors; physical exercise}}