Top 100 of 2024 in Cancer| Scientific Reports

The Scientific Reports team is pleased to announce the most read* articles from 2024 in Cancer. Featuring authors from around the world, these papers highlight valuable research from the international community.

Published in Cancer

Top 100 of 2024 in Cancer| Scientific Reports
Like

Share this post

Choose a social network to share with, or copy the URL to share elsewhere

This is a representation of how your post may appear on social media. The actual post will vary between social networks

In 2024, Scientific Reports published many exciting cancer papers, and we are pleased to share with you the Top 100 in Cancer collection, along with some personal highlights below.

This year, researchers were most interested in the diagnostic accuracy of the Kaiser score for investigating  architectural distortions potentially linked to malignancy and observable in mammography. In other featured studies, authors have  explored the most effective fatty acids to suppress pancreatic cancer growth using a pancreatic cancer xenograft model; explored novel therapeutic strategies for rare mutations in non-small cell lung cancer; and demonstrated the preservation of pelvic floor structures in essential nerve-sparing robot-assisted radical prostatectomy. Check out the full Collection for details on these studies and to find out more about what’s new in cancer research.  

Congratulations to all authors who contributed to these highly valuable research papers! 

*Data obtained from SN Insights, which is based on Digital Science's Dimensions.

Please sign in or register for FREE

If you are a registered user on Research Communities by Springer Nature, please sign in

Follow the Topic

Cancer Biology
Life Sciences > Biological Sciences > Cancer Biology
Cancer Genetics and Genomics
Life Sciences > Biological Sciences > Cancer Biology > Cancer Genetics and Genomics
Cancer Epidemiology
Life Sciences > Biological Sciences > Cancer Biology > Cancer Epidemiology
Cancer Models
Life Sciences > Biological Sciences > Cancer Biology > Cancer Models