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Representing Diet in a Tree-Based Format for Interactive and Exploratory Assessment of Dietary Intake Data

OBJECTIVES: We assessed the utility of representing dietary intake data in hierarchical tree structures that consider relationships among foods. METHODS: Dietary intake was collected from 1909 adults (≥18 years) using a food frequency questionnaire (FFQ; VioScreen) from the American Gut Project. FFQ...

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Autores principales: Litwin, Nicole, Cantrell, Kalen, Cotillard, Aurelie, Derrien, Muriel, Johnson, Abigail, Knight, Rob, Lejzerowicz, Franck, McDonald, Daniel, Nowinski, Brent, Song, Se Jin, Tap, Julien, Veiga, Patrick
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9193992/
http://dx.doi.org/10.1093/cdn/nzac063.016
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author Litwin, Nicole
Cantrell, Kalen
Cotillard, Aurelie
Derrien, Muriel
Johnson, Abigail
Knight, Rob
Lejzerowicz, Franck
McDonald, Daniel
Nowinski, Brent
Song, Se Jin
Tap, Julien
Veiga, Patrick
author_facet Litwin, Nicole
Cantrell, Kalen
Cotillard, Aurelie
Derrien, Muriel
Johnson, Abigail
Knight, Rob
Lejzerowicz, Franck
McDonald, Daniel
Nowinski, Brent
Song, Se Jin
Tap, Julien
Veiga, Patrick
author_sort Litwin, Nicole
collection PubMed
description OBJECTIVES: We assessed the utility of representing dietary intake data in hierarchical tree structures that consider relationships among foods. METHODS: Dietary intake was collected from 1909 adults (≥18 years) using a food frequency questionnaire (FFQ; VioScreen) from the American Gut Project. FFQ food items were formatted into hierarchical tree structures based on 1) USDA's Food Nutrient and Database for Dietary Studies (FNDDS) classifications, 2) nutrient content, and 3) molecular compound information detected via mass spectrometry to capture the non-nutrient composition of foods. Next, we compared how well representing dissimilarities (or distances) between individuals based on their diet corresponded with indices such as the Healthy Eating Index (HEI-2015), when those distances are calculated using tree-based versus non-tree-based metrics. We performed an Adonis test (PERMANOVA) to measure the amount of variation explained (R(2)) in these diet-based distances by HEI-2015. RESULTS: We observed that dietary ordinations generated using tree-based relationships between foods have better agreement with HEI than ordinations generated without considering relatedness between foods. The variation explained by HEI-2015 increased by 35% when using the FNDDS tree compared to using a non-tree based quantitative metric (Bray-Curtis (not tree-based) R(2) = 0.02931 vs. Weighted UniFrac (tree-based) R(2 )= 0.03969), by >20% when using the nutrient tree (vs. Weighted UniFrac R(2 )= 0.03627), and only marginally (6%) when using the molecular compound tree (vs. Weighted UniFrac R(2) = 0.03116). CONCLUSIONS: We show that tree-based measurements of dietary similarity lead to better agreement with diet indices (e.g., HEI) than when relationships among foods are not considered. We also show that representing dietary intake in a tree-like structure can offer interactive visualizations of data that can be used to inform hypotheses regarding dietary characteristics. FUNDING SOURCES: Danone Nutricia Research.
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spelling pubmed-91939922022-06-14 Representing Diet in a Tree-Based Format for Interactive and Exploratory Assessment of Dietary Intake Data Litwin, Nicole Cantrell, Kalen Cotillard, Aurelie Derrien, Muriel Johnson, Abigail Knight, Rob Lejzerowicz, Franck McDonald, Daniel Nowinski, Brent Song, Se Jin Tap, Julien Veiga, Patrick Curr Dev Nutr Methods OBJECTIVES: We assessed the utility of representing dietary intake data in hierarchical tree structures that consider relationships among foods. METHODS: Dietary intake was collected from 1909 adults (≥18 years) using a food frequency questionnaire (FFQ; VioScreen) from the American Gut Project. FFQ food items were formatted into hierarchical tree structures based on 1) USDA's Food Nutrient and Database for Dietary Studies (FNDDS) classifications, 2) nutrient content, and 3) molecular compound information detected via mass spectrometry to capture the non-nutrient composition of foods. Next, we compared how well representing dissimilarities (or distances) between individuals based on their diet corresponded with indices such as the Healthy Eating Index (HEI-2015), when those distances are calculated using tree-based versus non-tree-based metrics. We performed an Adonis test (PERMANOVA) to measure the amount of variation explained (R(2)) in these diet-based distances by HEI-2015. RESULTS: We observed that dietary ordinations generated using tree-based relationships between foods have better agreement with HEI than ordinations generated without considering relatedness between foods. The variation explained by HEI-2015 increased by 35% when using the FNDDS tree compared to using a non-tree based quantitative metric (Bray-Curtis (not tree-based) R(2) = 0.02931 vs. Weighted UniFrac (tree-based) R(2 )= 0.03969), by >20% when using the nutrient tree (vs. Weighted UniFrac R(2 )= 0.03627), and only marginally (6%) when using the molecular compound tree (vs. Weighted UniFrac R(2) = 0.03116). CONCLUSIONS: We show that tree-based measurements of dietary similarity lead to better agreement with diet indices (e.g., HEI) than when relationships among foods are not considered. We also show that representing dietary intake in a tree-like structure can offer interactive visualizations of data that can be used to inform hypotheses regarding dietary characteristics. FUNDING SOURCES: Danone Nutricia Research. Oxford University Press 2022-06-14 /pmc/articles/PMC9193992/ http://dx.doi.org/10.1093/cdn/nzac063.016 Text en © The Author 2022. Published by Oxford University Press on behalf of The International Society for Human and Animal Mycology. https://creativecommons.org/licenses/by-nc/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (https://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Methods
Litwin, Nicole
Cantrell, Kalen
Cotillard, Aurelie
Derrien, Muriel
Johnson, Abigail
Knight, Rob
Lejzerowicz, Franck
McDonald, Daniel
Nowinski, Brent
Song, Se Jin
Tap, Julien
Veiga, Patrick
Representing Diet in a Tree-Based Format for Interactive and Exploratory Assessment of Dietary Intake Data
title Representing Diet in a Tree-Based Format for Interactive and Exploratory Assessment of Dietary Intake Data
title_full Representing Diet in a Tree-Based Format for Interactive and Exploratory Assessment of Dietary Intake Data
title_fullStr Representing Diet in a Tree-Based Format for Interactive and Exploratory Assessment of Dietary Intake Data
title_full_unstemmed Representing Diet in a Tree-Based Format for Interactive and Exploratory Assessment of Dietary Intake Data
title_short Representing Diet in a Tree-Based Format for Interactive and Exploratory Assessment of Dietary Intake Data
title_sort representing diet in a tree-based format for interactive and exploratory assessment of dietary intake data
topic Methods
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9193992/
http://dx.doi.org/10.1093/cdn/nzac063.016
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