LGDLJan 8, 2022

Machine Learning-Based Disease Diagnosis:A Bibliometric Analysis

arXiv:2201.02755v1
AI Analysis

This is an incremental study that synthesizes existing literature for researchers interested in the field of machine learning-based disease diagnosis.

The authors conducted a bibliometric analysis of 1,710 papers on machine learning-based disease diagnosis from 2012 to 2021, examining publication trends, influential contributors, and co-citation networks to provide an overview for researchers.

Machine Learning (ML) has garnered considerable attention from researchers and practitioners as a new and adaptable tool for disease diagnosis. With the advancement of ML and the proliferation of papers and research in this field, a complete examination of Machine Learning-Based Disease Diagnosis (MLBDD) is required. From a bibliometrics standpoint, this article comprehensively studies MLBDD papers from 2012 to 2021. Consequently, with particular keywords, 1710 papers with associate information have been extracted from the Scopus and Web of Science (WOS) database and integrated into the excel datasheet for further analysis. First, we examine the publication structures based on yearly publications and the most productive countries/regions, institutions, and authors. Second, the co-citation networks of countries/regions, institutions, authors, and articles are visualized using R-studio software. They are further examined in terms of citation structure and the most influential ones. This article gives an overview of MLBDD for researchers interested in the subject and conducts a thorough and complete study of MLBDD for those interested in conducting more research in this field.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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