Assessing the evolution of research topics in a biological field using plant science as an example

Author:

Shiu Shin-HanORCID,Lehti-Shiu Melissa D.ORCID

Abstract

Scientific advances due to conceptual or technological innovations can be revealed by examining how research topics have evolved. But such topical evolution is difficult to uncover and quantify because of the large body of literature and the need for expert knowledge in a wide range of areas in a field. Using plant biology as an example, we used machine learning and language models to classify plant science citations into topics representing interconnected, evolving subfields. The changes in prevalence of topical records over the last 50 years reflect shifts in major research trends and recent radiation of new topics, as well as turnover of model species and vastly different plant science research trajectories among countries. Our approaches readily summarize the topical diversity and evolution of a scientific field with hundreds of thousands of relevant papers, and they can be applied broadly to other fields.

Funder

National Science Foundation

US Department of Energy

Publisher

Public Library of Science (PLoS)

Reference47 articles.

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