A Clustering Approach to Meal-Based Analysis of Dietary Intakes Applied to Population and Individual Data

Examination of meal intakes can elucidate the role of individual meals or meal patterns in health not evident by examining nutrient and food intakes. To date, meal-based research has been limited to focus on population rather than individual intakes, without considering portions or nutrient content...

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Veröffentlicht in:The Journal of nutrition 2022-10, Vol.152 (10), p.2297-2308
Hauptverfasser: O’Hara, Cathal, O’Sullivan, Aifric, Gibney, Eileen R
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creator O’Hara, Cathal
O’Sullivan, Aifric
Gibney, Eileen R
description Examination of meal intakes can elucidate the role of individual meals or meal patterns in health not evident by examining nutrient and food intakes. To date, meal-based research has been limited to focus on population rather than individual intakes, without considering portions or nutrient content when characterizing meals. We aimed to characterize meals commonly consumed, incorporating portions and nutritional content, and to determine the accuracy of nutrient intake estimates using these meals at both population and individual levels. The 2008–2010 Irish National Adult Nutrition Survey (NANS) data were used. A total of 1500 participants, with a mean ± SD age of 44.5 ± 17.0 y and BMI of 27.1 ± 5.0 kg/m2, recorded their intake using a 4-d weighed food diary. Food groups were identified using k-means clustering. Partitioning around the medoids clustering was used to categorize similar meals into groups (generic meals) based on their Nutrient Rich Foods Index (NRF9.3) score and the food groups that they contained. The nutrient content for each generic meal was defined as the mean content of the grouped meals. Seven standard portion sizes were defined for each generic meal. Mean daily nutrient intakes were estimated using the original and the generic data. The 27,336 meals consumed were aggregated to 63 generic meals. Effect sizes from the comparisons of mean daily nutrient intakes (from the original compared with generic meals) were negligible or small, with P values ranging from
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source MEDLINE; Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals; Alma/SFX Local Collection
subjects Adult
Cluster Analysis
Clustering
Diet
Diet Records
dietary assessment
Dietary intake
Eating
Energy Intake
Food
food combinations
Food groups
Food intake
generic meals
Human nutrition
Humans
meal patterns
Meals
Nutrient content
Nutrition
Nutrition surveys
Vector quantization
title A Clustering Approach to Meal-Based Analysis of Dietary Intakes Applied to Population and Individual Data
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