Publication: A treelet transform analysis to relate nutrient patterns to the risk of hormonal receptor-defined breast cancer in the European Prospective Investigation into Cancer and Nutrition (EPIC).
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Identifiers
Date
2015-02-23
Authors
Assi, Nada
Moskal, Aurelie
Slimani, Nadia
Viallon, Vivian
Chajes, Veronique
Freisling, Heinz
Monni, Stefano
Knueppel, Sven
Förster, Jana
Weiderpass, Elisabete
Advisors
Journal Title
Journal ISSN
Volume Title
Publisher
Cambridge University Press
Abstract
Pattern analysis has emerged as a tool to depict the role of multiple nutrients/foods in relation to health outcomes. The present study aimed at extracting nutrient patterns with respect to breast cancer (BC) aetiology. Nutrient patterns were derived with treelet transform (TT) and related to BC risk. TT was applied to twenty-three log-transformed nutrient densities from dietary questionnaires. Hazard ratios (HR) and 95 % confidence intervals computed using Cox proportional hazards models quantified the association between quintiles of nutrient pattern scores and risk of overall BC, and by hormonal receptor and menopausal status. Principal component analysis was applied for comparison. The European Prospective Investigation into Cancer and Nutrition (EPIC). Women (n 334 850) from the EPIC study. The first TT component (TC1) highlighted a pattern rich in nutrients found in animal foods loading on cholesterol, protein, retinol, vitamins B12 and D, while the second TT component (TC2) reflected a diet rich in β-carotene, riboflavin, thiamin, vitamins C and B6, fibre, Fe, Ca, K, Mg, P and folate. While TC1 was not associated with BC risk, TC2 was inversely associated with BC risk overall (HRQ5 v. Q1=0·89, 95 % CI 0·83, 0·95, P trend TT produces readily interpretable sparse components explaining similar amounts of variation as principal component analysis. Our results suggest that participants with a nutrient pattern high in micronutrients found in vegetables, fruits and cereals had a lower risk of BC.
Description
MeSH Terms
Adult
Breast Neoplasms
Diet
Diet Surveys
Europe
Feeding Behavior
Female
Humans
Menopause
Middle Aged
Proportional Hazards Models
Receptors, Estrogen
Receptors, Progesterone
Risk Factors
Breast Neoplasms
Diet
Diet Surveys
Europe
Feeding Behavior
Female
Humans
Menopause
Middle Aged
Proportional Hazards Models
Receptors, Estrogen
Receptors, Progesterone
Risk Factors
DeCS Terms
CIE Terms
Keywords
Breast cancer, European Prospective Investigationinto Cancer and Nutrition, Nutrient patterns, Principal component analysis, Treelet transform
Citation
Assi N, Moskal A, Slimani N, Viallon V, Chajes V, Freisling H, et al. A treelet transform analysis to relate nutrient patterns to the risk of hormonal receptor-defined breast cancer in the European Prospective Investigation into Cancer and Nutrition (EPIC). Public Health Nutr. 2016 Feb;19(2):242-54.