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Get Free AccessBackground: Combinations of multiple fatty acids may influence cardiometabolic risk more than single fatty acids. The association of a combination of fatty acids with incident type 2 diabetes (T2D) has not been evaluated. Methods and findings: We measured plasma phospholipid fatty acids by gas-chromatography in 27,296 adults, including 12,132 incident cases of T2D over the follow-up period between baseline (1991-1998) to 2007 in eight European countries in EPIC-InterAct, a nested case-cohort study. Deriving the first principal component from 27 individual fatty acids (mol%) as the main exposure (subsequently described as the FA-pattern score), the FA-pattern score explained 16.1% of the overall variability of the 27 fatty acids, partly characterised by high concentrations of linoleic acid, stearic acid, odd-chain fatty acids, and very long-chain saturated fatty acids and low concentrations of γ- linolenic acid, palmitic acid, and long-chain monounsaturated fatty acids. Based on country-specific Prentice-weighted Cox regression and random-effects meta-analysis, the FA-pattern score was associated with lower incident T2D. Comparing the top to the bottom fifths of the score, the hazard ratio of incident T2D was 0.23 (95% confidence interval: 0.19-0.29) adjusted for potential confounders and 0.37 (0.27-0.50), further adjusted for cardiometabolic risk factors. The association changed little after adjustment for individual fatty acids or fatty acid subclasses. In cross-sectional analyses relating the FA-pattern score to metabolic, genetic, and dietary factors, the FA-pattern score was inversely associated with adiposity, triglycerides, liver enzymes, C-reactive protein, a genetic score representing insulin resistance, and dietary intakes of soft drinks and alcohol and positively associated with high-density-lipoprotein cholesterol and intakes of polyunsaturated fat, dietary fibre, and coffee (p<0.05 each). Limitations include potential measurement error in the fatty acids and other model covariates and possible residual confounding. Conclusions: A combination of individual fatty acids, characterised by high concentrations of linoleic acid, odd-chain fatty acids, and very long-chain fatty acids, was associated with lower incidence of T2D. The specific fatty acid pattern may be influenced by metabolic, genetic, and dietary factors.
Fumiaki Imamura, Stephen J. Sharp, Albert Koulman, Matthias B. Schulze, Janine Kröger, J L Griffin, José María Huerta, Marcela Guevara, Ivonne Sluijs, Antonio Agudo, Eva Ardanáz, B. Balkau, H. Boeing, Véronique Chajès, Christina C. Dahm, Courtney Dow, G Fagherazzi, Feskens Ejm, Paul W. Franks, Diana Gavrila, Marc J. Gunter, Rudolf Kaaks, Timothy J. Key, K-T Khaw, Tilman Kühn, Olle Melander, Elena Molina‐Portillo, P. M. Nilsson, Anja Olsen, Kim Overvad, Domenico Palli, Salvatore Panico, Olov Rolandsson, Sieri Sabina, Carlotta Sacerdote, Nadia Slimani, A.M.W. Spijkerman, Anne Tjønneland, Rosario Tumino, Yvonne T. van der Schouw, Claudia Langenberg, Elio Riboli, Nita G. Forouhi, N J Wareham (2017). A combination of plasma phospholipid fatty acids and incidence of type 2 diabetes.
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Type
Article
Year
2017
Authors
44
Datasets
0
Total Files
0
Language
en
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