Application of machine learning in acute upper gastrointestinal bleeding: bibliometric analysis

BackgroundIn the past decade, the application of machine learning (ML) in the clinical management of acute upper gastrointestinal bleeding (AUGIB) has received much attention and has become a hot research topic. However, no scientometric report has systematically summarized and outlined the research...

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Main Authors: Qun Li, Guolin Chen, Qiongjie Li, Dongna Guo
Format: Article
Language:English
Published: Frontiers Media S.A. 2024-11-01
Series:Frontiers in Medicine
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Online Access:https://www.frontiersin.org/articles/10.3389/fmed.2024.1490757/full
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author Qun Li
Guolin Chen
Qiongjie Li
Dongna Guo
author_facet Qun Li
Guolin Chen
Qiongjie Li
Dongna Guo
author_sort Qun Li
collection DOAJ
description BackgroundIn the past decade, the application of machine learning (ML) in the clinical management of acute upper gastrointestinal bleeding (AUGIB) has received much attention and has become a hot research topic. However, no scientometric report has systematically summarized and outlined the research progress in this field.ObjectiveThis study aims to utilize bibliometric analysis methods to delve into the applications of machine learning in AUGIB and the collaborative network behind it over the past decade. Through a thorough analysis of relevant literature, we uncover the research trends and collaboration patterns in this field, which can provide valuable references and insights for further in-depth exploration in the same field.MethodsUsing the Web of Science (WOS) as the data source, this study explores academic development in a specific field from December 2013 to December 2023. The search strategy included terms related to “Machine Learning” and “Acute Upper Gastrointestinal Bleeding”. Only original articles in English focusing on ML in AUGIB were included. The analysis of downloaded literature with Citespace software, including keyword co-occurrence, author collaboration networks, and citation relationship networks, reveals academic dynamics, research hotspots, and collaboration trends.ResultsAfter sorting and compiling, we have collected 73 academic papers written by 217 authors from 133 institutions in 29 countries worldwide. Among them, China and AM J GASTROENTEROL have made significant contributions in this field, providing many high-quality research achievements. The study found that these papers mainly focus on three core research hotspots: deepening clinical consensus, precise analysis of medical images, and optimization of data integration and decision support systems.ConclusionsThis study summarizes the latest advancements in the application of machine learning to AUGIB research. Through bibliometric analysis and network visualization, it reveals emerging trends, origins, leading institutions, and hot topics in this field. While this area has already demonstrated significant potential in medical artificial intelligence, our findings will provide valuable insights for future research directions and clinical practices.
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spelling doaj-art-9c0bb52d122d4ab987e2e6ab8a065bcc2025-08-20T03:28:58ZengFrontiers Media S.A.Frontiers in Medicine2296-858X2024-11-011110.3389/fmed.2024.14907571490757Application of machine learning in acute upper gastrointestinal bleeding: bibliometric analysisQun Li0Guolin Chen1Qiongjie Li2Dongna Guo3School of Data Sciences, Zhejiang University of Finance and Economics, Hangzhou, ChinaSchool of Data Sciences, Zhejiang University of Finance and Economics, Hangzhou, ChinaDepartment of Emergency, First Hospital of Shanxi Medical University, Taiyuan, ChinaDepartment of Emergency, First Hospital of Shanxi Medical University, Taiyuan, ChinaBackgroundIn the past decade, the application of machine learning (ML) in the clinical management of acute upper gastrointestinal bleeding (AUGIB) has received much attention and has become a hot research topic. However, no scientometric report has systematically summarized and outlined the research progress in this field.ObjectiveThis study aims to utilize bibliometric analysis methods to delve into the applications of machine learning in AUGIB and the collaborative network behind it over the past decade. Through a thorough analysis of relevant literature, we uncover the research trends and collaboration patterns in this field, which can provide valuable references and insights for further in-depth exploration in the same field.MethodsUsing the Web of Science (WOS) as the data source, this study explores academic development in a specific field from December 2013 to December 2023. The search strategy included terms related to “Machine Learning” and “Acute Upper Gastrointestinal Bleeding”. Only original articles in English focusing on ML in AUGIB were included. The analysis of downloaded literature with Citespace software, including keyword co-occurrence, author collaboration networks, and citation relationship networks, reveals academic dynamics, research hotspots, and collaboration trends.ResultsAfter sorting and compiling, we have collected 73 academic papers written by 217 authors from 133 institutions in 29 countries worldwide. Among them, China and AM J GASTROENTEROL have made significant contributions in this field, providing many high-quality research achievements. The study found that these papers mainly focus on three core research hotspots: deepening clinical consensus, precise analysis of medical images, and optimization of data integration and decision support systems.ConclusionsThis study summarizes the latest advancements in the application of machine learning to AUGIB research. Through bibliometric analysis and network visualization, it reveals emerging trends, origins, leading institutions, and hot topics in this field. While this area has already demonstrated significant potential in medical artificial intelligence, our findings will provide valuable insights for future research directions and clinical practices.https://www.frontiersin.org/articles/10.3389/fmed.2024.1490757/fullbibliometric analysis (BA)machine learningAUGIBresearch trendsCiteSpace
spellingShingle Qun Li
Guolin Chen
Qiongjie Li
Dongna Guo
Application of machine learning in acute upper gastrointestinal bleeding: bibliometric analysis
Frontiers in Medicine
bibliometric analysis (BA)
machine learning
AUGIB
research trends
CiteSpace
title Application of machine learning in acute upper gastrointestinal bleeding: bibliometric analysis
title_full Application of machine learning in acute upper gastrointestinal bleeding: bibliometric analysis
title_fullStr Application of machine learning in acute upper gastrointestinal bleeding: bibliometric analysis
title_full_unstemmed Application of machine learning in acute upper gastrointestinal bleeding: bibliometric analysis
title_short Application of machine learning in acute upper gastrointestinal bleeding: bibliometric analysis
title_sort application of machine learning in acute upper gastrointestinal bleeding bibliometric analysis
topic bibliometric analysis (BA)
machine learning
AUGIB
research trends
CiteSpace
url https://www.frontiersin.org/articles/10.3389/fmed.2024.1490757/full
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AT dongnaguo applicationofmachinelearninginacuteuppergastrointestinalbleedingbibliometricanalysis