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Analysis of pain research literature through keyword Co-occurrence networks. | LitMetric

Analysis of pain research literature through keyword Co-occurrence networks.

PLOS Digit Health

Mechanical and Industrial Engineering Department, Northeastern University, Boston, Massachusetts, United States of America.

Published: September 2023

AI Article Synopsis

  • Pain is becoming an increasing public health issue as the number of individuals experiencing pain rises globally, prompting collaborative research to tackle these challenges.
  • This study employs keyword co-occurrence network (KCN) analysis to examine over 264,000 pain-related research articles published between 2002 and 2021, revealing significant growth in both the number of publications and keywords used in the field.
  • The research identifies key trends, including areas of emerging and declining research in pain treatments and methodologies, and highlights frequently co-occurring keywords to illustrate the interconnectedness of various pain-related topics for researchers.

Article Abstract

Pain is a significant public health problem as the number of individuals with a history of pain globally keeps growing. In response, many synergistic research areas have been coming together to address pain-related issues. This work reviews and analyzes a vast body of pain-related literature using the keyword co-occurrence network (KCN) methodology. In this method, a set of KCNs is constructed by treating keywords as nodes and the co-occurrence of keywords as links between the nodes. Since keywords represent the knowledge components of research articles, analysis of KCNs will reveal the knowledge structure and research trends in the literature. This study extracted and analyzed keywords from 264,560 pain-related research articles indexed in IEEE, PubMed, Engineering Village, and Web of Science published between 2002 and 2021. We observed rapid growth in pain literature in the last two decades: the number of articles has grown nearly threefold, and the number of keywords has grown by a factor of 7. We identified emerging and declining research trends in sensors/methods, biomedical, and treatment tracks. We also extracted the most frequently co-occurring keyword pairs and clusters to help researchers recognize the synergies among different pain-related topics.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10484461PMC
http://dx.doi.org/10.1371/journal.pdig.0000331DOI Listing

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