NewsMeSH: a new classifier designed to annotate health news with MeSH headings

Egileak: Joao Pita Costa Luis Rei Luka Stopar Flavio Fuart Marko Grobelnik Dunja Mladenic Inna Novalija Anthony Staines Jarmo Paakkonen Jenni Konttila Joseba Bidaurrazaga Oihana Belar Christine Henderson Gorka Epelde Unanue Mónica Arrúe Paul Carlin Jonathan Wallace

Data: 01.04.2021

Artificial Intelligence In Medicine


Abstract

Motivation: In the age of big data, the amount of scientific information available online dwarfs the ability of current tools to support researchers in locating and securing access to the necessary materials. Well-structured open data and the smart systems that make the appropriate use of it are invaluable and can help health researchers and professionals to find the appropriate information by, e.g., configuring the monitoring of information or refining a specific query on a disease.
Methods: We present an automated text classifier approach based on the MEDLINE/MeSH thesaurus, trained on the manual annotation of more than 26 million expert-annotated scientific abstracts. The classifier was developed tailor-fit to the public health and health research domain experts, in the light of their specific challenges and needs. We have applied the proposed methodology on three specific health domains: the Coronavirus, Mental Health and Diabetes, considering the pertinence of the first, and the known relations with the other two health topics.
Results: A classifier is trained on the MEDLINE dataset that can automatically annotate text, such as scientific articles, news articles or medical reports with relevant concepts from the MeSH thesaurus.
Conclusions: The proposed text classifier shows promising results in the evaluation of health-related news. The application of the developed classifier enables the exploration of news and extraction of health-related insights, based on the MeSH thesaurus, through a similar workflow as in the usage of PubMed, with which most health researchers are familiar.

BIB_text

@Article {
title = {NewsMeSH: a new classifier designed to annotate health news with MeSH headings},
journal = {Artificial Intelligence In Medicine},
pages = {102053},
volume = {114},
keywds = {
MEDLINE, COVID-19, Public health, Mental Health, semantic technologies, Big Data, Healthcare, MeSH Headings, Text Mining, diabetes, PubMed
}
abstract = {

Motivation: In the age of big data, the amount of scientific information available online dwarfs the ability of current tools to support researchers in locating and securing access to the necessary materials. Well-structured open data and the smart systems that make the appropriate use of it are invaluable and can help health researchers and professionals to find the appropriate information by, e.g., configuring the monitoring of information or refining a specific query on a disease.
Methods: We present an automated text classifier approach based on the MEDLINE/MeSH thesaurus, trained on the manual annotation of more than 26 million expert-annotated scientific abstracts. The classifier was developed tailor-fit to the public health and health research domain experts, in the light of their specific challenges and needs. We have applied the proposed methodology on three specific health domains: the Coronavirus, Mental Health and Diabetes, considering the pertinence of the first, and the known relations with the other two health topics.
Results: A classifier is trained on the MEDLINE dataset that can automatically annotate text, such as scientific articles, news articles or medical reports with relevant concepts from the MeSH thesaurus.
Conclusions: The proposed text classifier shows promising results in the evaluation of health-related news. The application of the developed classifier enables the exploration of news and extraction of health-related insights, based on the MeSH thesaurus, through a similar workflow as in the usage of PubMed, with which most health researchers are familiar.


}
doi = {10.1016/j.artmed.2021.102053},
date = {2021-04-01},
}
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