AI Article Synopsis

  • The Ontology for Nutritional Epidemiology (ONE) aims to enhance nutritional research by linking and harmonizing outputs through a structured ontology that defines relationships between terms.
  • A scoping review was conducted to identify reusable terms, and existing standards were transformed into the ontology, resulting in a total of 339 classes to improve data description and manuscript content.
  • ONE provides tools for automating data integration, enhancing search capabilities, and evaluating reporting completeness in the field of nutritional epidemiology.

Article Abstract

Background: The use of linked data in the Semantic Web is a promising approach to add value to nutrition research. An ontology, which defines the logical relationships between well-defined taxonomic terms, enables linking and harmonizing research output. To enable the description of domain-specific output in nutritional epidemiology, we propose the Ontology for Nutritional Epidemiology (ONE) according to authoritative guidance for nutritional epidemiology.

Methods: Firstly, a scoping review was conducted to identify existing ontology terms for reuse in ONE. Secondly, existing data standards and reporting guidelines for nutritional epidemiology were converted into an ontology. The terms used in the standards were summarized and listed separately in a taxonomic hierarchy. Thirdly, the ontologies of the nutritional epidemiologic standards, reporting guidelines, and the core concepts were gathered in ONE. Three case studies were included to illustrate potential applications: (i) annotation of existing manuscripts and data, (ii) ontology-based inference, and (iii) estimation of reporting completeness in a sample of nine manuscripts.

Results: Ontologies for "food and nutrition" ( = 37), "disease and specific population" ( = 100), "data description" ( = 21), "research description" ( = 35), and "supplementary (meta) data description" ( = 44) were reviewed and listed. ONE consists of 339 classes: 79 new classes to describe data and 24 new classes to describe the content of manuscripts.

Conclusion: ONE is a resource to automate data integration, searching, and browsing, and can be used to assess reporting completeness in nutritional epidemiology.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6628051PMC
http://dx.doi.org/10.3390/nu11061300DOI Listing

Publication Analysis

Top Keywords

nutritional epidemiology
20
output nutritional
8
ontology terms
8
standards reporting
8
reporting guidelines
8
reporting completeness
8
classes describe
8
nutritional
7
data
6
ontology
5

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!