Conditional Gaussian mixture modelling for dietary pattern analysis |
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Authors: | Michael T. Fahey Christopher W. Thane Gemma D. Bramwell W. Andy Coward |
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Affiliation: | Medical Research Council Human Nutrition Research, Cambridge, and Medical Research Council Biostatistics Unit, Cambridge, UK; Medical Research Council Human Nutrition Research, Cambridge, UK |
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Abstract: | ![]() Summary. Free-living individuals have multifaceted diets and consume foods in numerous combinations. In epidemiological studies it is desirable to characterize individual diets not only in terms of the quantity of individual dietary components but also in terms of dietary patterns. We describe the conditional Gaussian mixture model for dietary pattern analysis and show how it can be adapted to take account of important characteristics of self-reported dietary data. We illustrate this approach with an analysis of the 2000–2001 National Diet and Nutrition Survey of adults. The results strongly favoured a mixture model solution allowing clusters to vary in shape and size, over the standard approach that has been used previously to find dietary patterns. |
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Keywords: | Cluster analysis Dietary patterns Finite mixture model Latent variable Multivariate methods Nutritional epidemiology |
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