Squamous-cell carcinoma of the anus (ASCC) is a rare disease. Barriers have been encountered to conduct clinical and translational research in this setting. Despite this, ASCC has been a prime example of collaboration amongst researchers. We performed a bibliometric analysis of ASCC-related literature of the last 20 years, exploring common patterns in research, tracking collaboration and identifying gaps. The electronic Scopus database was searched using the keywords "anal cancer", to include manuscripts published in English, between 2000 and 2020. Data analysis was performed using R-Studio 0.98.1091 software. A machine-learning bibliometric method was applied. The bibliometrix R package was used. A total of 2322 scientific documents was found. The average annual growth rate in publication was around 40% during 2000-2020. The five most productive countries were United States of America (USA), United Kingdom (UK), France, Italy and Australia. The USA and UK had the greatest link strength of international collaboration (22.6% and 19.0%). Two main clusters of keywords for published research were identified: (a) prevention and screening and (b) overall management. Emerging topics included imaging, biomarkers and patient-reported outcomes. Further efforts are required to increase collaboration and funding to sustain future research in the setting of ASCC.

A machine-learning-based bibliometric analysis of the scientific literature on anal cancer / Franco, Pierfrancesco; Segelov, Eva; Johnsson, Anders; Riechelmann, Rachel; Guren, Marianne G; Das, Prajnan; Rao, Sheela; Arnold, Dirk; Spindler, Karen-Lise Garm; Deutsch, Eric; Krengli, Marco; Tombolini, Vincenzo; Sebag-Montefiore, David; De Felice, Francesca. - In: CANCERS. - ISSN 2072-6694. - 14:7(2022). [10.3390/cancers14071697]

A machine-learning-based bibliometric analysis of the scientific literature on anal cancer

Tombolini, Vincenzo;De Felice, Francesca
Ultimo
2022

Abstract

Squamous-cell carcinoma of the anus (ASCC) is a rare disease. Barriers have been encountered to conduct clinical and translational research in this setting. Despite this, ASCC has been a prime example of collaboration amongst researchers. We performed a bibliometric analysis of ASCC-related literature of the last 20 years, exploring common patterns in research, tracking collaboration and identifying gaps. The electronic Scopus database was searched using the keywords "anal cancer", to include manuscripts published in English, between 2000 and 2020. Data analysis was performed using R-Studio 0.98.1091 software. A machine-learning bibliometric method was applied. The bibliometrix R package was used. A total of 2322 scientific documents was found. The average annual growth rate in publication was around 40% during 2000-2020. The five most productive countries were United States of America (USA), United Kingdom (UK), France, Italy and Australia. The USA and UK had the greatest link strength of international collaboration (22.6% and 19.0%). Two main clusters of keywords for published research were identified: (a) prevention and screening and (b) overall management. Emerging topics included imaging, biomarkers and patient-reported outcomes. Further efforts are required to increase collaboration and funding to sustain future research in the setting of ASCC.
2022
HIV; HPV; anal cancer; bibliometrics; machine learning; oncology; radiotherapy; squamous-cell carcinoma
01 Pubblicazione su rivista::01a Articolo in rivista
A machine-learning-based bibliometric analysis of the scientific literature on anal cancer / Franco, Pierfrancesco; Segelov, Eva; Johnsson, Anders; Riechelmann, Rachel; Guren, Marianne G; Das, Prajnan; Rao, Sheela; Arnold, Dirk; Spindler, Karen-Lise Garm; Deutsch, Eric; Krengli, Marco; Tombolini, Vincenzo; Sebag-Montefiore, David; De Felice, Francesca. - In: CANCERS. - ISSN 2072-6694. - 14:7(2022). [10.3390/cancers14071697]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1657482
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