Literature DB >> 30045678

Compositional analysis of dietary patterns.

M Solans1,2,3, G Coenders1,2, R Marcos-Gragera2,3, A Castelló1,4,5, E Gràcia-Lavedan1,6,7, Y Benavente8, V Moreno1,9,10,11, B Pérez-Gómez1,12, P Amiano1,13, T Fernández-Villa14, M Guevara1,15, I Gómez-Acebo1,16, G Fernández-Tardón1,17, M Vanaclocha-Espi18, M D Chirlaque1,19, R Capelo20, R Barrios21, N Aragonés1,22, A Molinuevo1, F Vitelli-Storelli14, J Castilla1,15, T Dierssen-Sotos1,16, G Castaño-Vinyals1,6,7,23, M Kogevinas1,6,7,23, M Pollán1,4, M Saez1,2.   

Abstract

Instead of looking at individual nutrients or foods, dietary pattern analysis has emerged as a promising approach to examine the relationship between diet and health outcomes. Despite dietary patterns being compositional (i.e. usually a higher intake of some foods implies that less of other foods are being consumed), compositional data analysis has not yet been applied in this setting. We describe three compositional data analysis approaches (compositional principal component analysis, balances and principal balances) that enable the extraction of dietary patterns by using control subjects from the Spanish multicase-control (MCC-Spain) study. In particular, principal balances overcome the limitations of purely data-driven or investigator-driven methods and present dietary patterns as trade-offs between eating more of some foods and less of others.

Keywords:  Compositional data analysis; MCC-Spain; dietary patterns; epidemiology; principal balances

Year:  2018        PMID: 30045678     DOI: 10.1177/0962280218790110

Source DB:  PubMed          Journal:  Stat Methods Med Res        ISSN: 0962-2802            Impact factor:   3.021


  6 in total

1.  Association between animal source foods consumption and risk of hypertension: a cohort study.

Authors:  Jie Liang; Jun-Kang Zhao; Ju-Ping Wang; Tong Wang
Journal:  Eur J Nutr       Date:  2020-11-05       Impact factor: 5.614

Review 2.  A review of statistical methods for dietary pattern analysis.

Authors:  Junkang Zhao; Zhiyao Li; Qian Gao; Haifeng Zhao; Shuting Chen; Lun Huang; Wenjie Wang; Tong Wang
Journal:  Nutr J       Date:  2021-04-19       Impact factor: 3.271

3.  A posteriori dietary patterns better explain variations of the gut microbiome than individual markers in the American Gut Project.

Authors:  Aurélie Cotillard; Agnès Cartier-Meheust; Nicole S Litwin; Soline Chaumont; Mathilde Saccareau; Franck Lejzerowicz; Julien Tap; Hana Koutnikova; Diana Gutierrez Lopez; Daniel McDonald; Se Jin Song; Rob Knight; Muriel Derrien; Patrick Veiga
Journal:  Am J Clin Nutr       Date:  2022-02-09       Impact factor: 7.045

4.  Long-term association of vegetable and fruit intake with risk of dementia in Japanese older adults: the Hisayama study.

Authors:  Yasumi Kimura; Daigo Yoshida; Tomoyuki Ohara; Jun Hata; Takanori Honda; Yoichiro Hirakawa; Mao Shibata; Emi Oishi; Satoko Sakata; Yoshihiko Furuta; Sanmei Chen; Kazuhiro Uchida; Tomohiro Nakao; Takanari Kitazono; Toshiharu Ninomiya
Journal:  BMC Geriatr       Date:  2022-03-28       Impact factor: 3.921

5.  Dietary Patterns and Prostate Cancer: CAPLIFE Study.

Authors:  Macarena Lozano-Lorca; Margarita Rodríguez-González; Inmaculada Salcedo-Bellido; Fernando Vázquez-Alonso; Miguel Arrabal; Benita Martín-Castaño; María-José Sánchez; José-Juan Jiménez-Moleón; Rocío Olmedo-Requena
Journal:  Cancers (Basel)       Date:  2022-07-17       Impact factor: 6.575

6.  How Does Time Use Differ between Individuals Who Do More versus Less Foodwork? A Compositional Data Analysis of Time Use in the United Kingdom Time Use Survey 2014-2015.

Authors:  Chloe Clifford Astbury; Louise Foley; Tarra L Penney; Jean Adams
Journal:  Nutrients       Date:  2020-07-30       Impact factor: 5.717

  6 in total

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