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Using Generative Artificial Intelligence in Bibliometric Analysis: 10 Years of Research Trends from the European Resuscitation Congresses

Overview
Journal Resusc Plus
Date 2024 Feb 29
PMID 38420596
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Abstract

Aims: The aim of this study is to use generative artificial intelligence to perform bibliometric analysis on abstracts published at European Resuscitation Council (ERC) annual scientific congress and define trends in ERC guidelines topics over the last decade.

Methods: In this bibliometric analysis, the WebHarvy software (SysNucleus, India) was used to download data from the Resuscitation journal's website through the technique of web scraping. Next, the Chat Generative Pre-trained Transformer 4 (ChatGPT-4) application programming interface (Open AI, USA) was used to implement the multinomial classification of abstract titles following the ERC 2021 guidelines topics.

Results: From 2012 to 2022 a total of 2491 abstracts have been published at ERC congresses. Published abstracts ranged from 88 (in 2020) to 368 (in 2015). On average, the most common ERC guidelines topics were (50.1%), followed by (41.5%), while (2.1%) was the least common topic. The findings also highlight that the and ERC guidelines topics have the strongest co-occurrence to all ERC guidelines topics, where the (2.1%; 52/2491) ERC guidelines topic has the weakest co-occurrence.

Conclusion: This study demonstrates the capabilities of generative artificial intelligence in the bibliometric analysis of abstract titles using the example of resuscitation medicine research over the last decade at ERC conferences using large language models.

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