Please use this identifier to cite or link to this item: http://localhost:8080/xmlui/handle/123456789/6184
Title: Perspective: A Comprehensive Evaluation of Data Quality in Nutrient Databases
Authors: Li, Zhaoping
Forester, Shavawn
Jennings-Dobbs, Emily
Heber, David
Keywords: food composition data,
nutrient data
data quality,
essential nutrients,
phytonutrients
omics,
anthropometrics,
human nutrition,
precision nutrition,
personalized dietary recommendations
Issue Date: 25-Feb-2023
Publisher: Advances in Nutrition
Abstract: ABSTRACT Nutrient databases are a critical component of nutrition science and the basis of exciting new research in precision nutrition (PN). To identify the most critical components needed for improvement of nutrient databases, food composition data were analyzed for quality, with completeness being the most important measure, and for FAIRness, how well the data conformed with the data science criteria of findable, accessible, interoperable, and reusable (FAIR). Databases were judged complete if they provided data for all 15 nutrition fact panel (NFP) nutrient measures and all 40 National Academies of Sciences, Engineering, and Medicine (NASEM) essential nutrient measures for each food listed. Using the gold standard the USDA standard reference (SR) Legacy database as surrogate, it was found that SR Legacy data were not complete for either NFP or NASEM nutrient measures. In addition, phytonutrient measures in the 4 USDA Special Interest Databases were incomplete. To evaluate data FAIRness, a set of 175 food and nutrient data sources were collected from worldwide. Many opportunities were identified for improving data FAIRness, including creating persistent URLs, prioritizing usable data storage formats, providing Globally Unique Identifiers for all foods and nutrients, and implementing citation standards. This review demonstrates that despite important contributions from the USDA and others, food and nutrient databases in their current forms do not yet provide truly comprehensive food composition data. We propose that to enhance the quality and usage of food and nutrient composition data for research scientists and those fashioning various PN tools, the field of nutrition science must step out of its historical comfort zone and improve the foundational nutrient databases used in research by incorporating data science principles, the most central being data quality and data FAIRness. Keywords: food composition data, nutrient data, data quality, essential nutrients, phytonutrients, omics, anthropometrics, human nutrition, precision nutrition, personalized dietary recommendations
URI: http://localhost:8080/xmlui/handle/123456789/6184
Appears in Collections:VOL 14 No 3 2023

Files in This Item:
File Description SizeFormat 
6. Perspective--A-Comprehensive-Evaluation-of-Data-Qu.pdf2.53 MBAdobe PDFView/Open


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.