Bibliometric analysis of the global scientific production on machine learning applied to different cancer types

被引:0
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作者
Miguel Angel Ruiz-Fresneda
Alfonso Gijón
Pablo Morales-Álvarez
机构
[1] University of Granada,Department of Microbiology
[2] University of Granada,Department of Computer Science and Artificial Intelligence
[3] University of Granada,Research Centre for Information and Communication Technologies (CITIC
[4] University of Granada,UGR)
关键词
Machine learning; Cancer; Bibliometric analysis; Artificial intelligence; Public health;
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摘要
Cancer disease is one of the main causes of death in the world, with million annual cases in the last decades. The need to find a cure has stimulated the search for efficient treatments and diagnostic procedures. One of the most promising tools that has emerged against cancer in recent years is machine learning (ML), which has raised a huge number of scientific papers published in a relatively short period of time. The present study analyzes global scientific production on ML applied to the most relevant cancer types through various bibliometric indicators. We find that over 30,000 studies have been published so far and observe that cancers with the highest number of published studies using ML (breast, lung, and colon cancer) are those with the highest incidence, being the USA and China the main scientific producers on the subject. Interestingly, the role of China and Japan in stomach cancer is correlated with the number of cases of this cancer type in Asia (78% of the worldwide cases). Knowing the countries and institutions that most study each area can be of great help for improving international collaborations between research groups and countries. Our analysis shows that medical and computer science journals lead the number of publications on the subject and could be useful for researchers in the field. Finally, keyword co-occurrence analysis suggests that ML-cancer research trends are focused not only on the use of ML as an effective diagnostic method, but also for the improvement of radiotherapy- and chemotherapy-based treatments.
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页码:96125 / 96137
页数:12
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