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Hot topics in global radiomic research: a Web of Science-based bibliometric analysis
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4
Autoren
2023
Jahr
Abstract
With the continuous development of big data and artificial intelligence in the medical field, Radiomic which is a new imaging technology plays an increasingly important role in the diagnosis and prognosis evaluation of diseases and the analysis and prediction of tumor gene expression. This study provides a bibliometric and visualized analysis of the 100 most frequently cited articles in the field. A total of 9,780 articles were retrieved, of which 6,402 were of the Article type, among which we selected the 100 most frequently cited. The method reveals the development trend of this field to provide an effective reference for the development of Radiomic.
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