Brain Tumor Analysis Empowered with Deep Learning: A Review, Taxonomy, and Future Challenges. 2020

Muhammad Waqas Nadeem, and Mohammed A Al Ghamdi, and Muzammil Hussain, and Muhammad Adnan Khan, and Khalid Masood Khan, and Sultan H Almotiri, and Suhail Ashfaq Butt
Department of Computer Science, Lahore Garrison University, Lahore 54000, Pakistan.

Deep Learning (DL) algorithms enabled computational models consist of multiple processing layers that represent data with multiple levels of abstraction. In recent years, usage of deep learning is rapidly proliferating in almost every domain, especially in medical image processing, medical image analysis, and bioinformatics. Consequently, deep learning has dramatically changed and improved the means of recognition, prediction, and diagnosis effectively in numerous areas of healthcare such as pathology, brain tumor, lung cancer, abdomen, cardiac, and retina. Considering the wide range of applications of deep learning, the objective of this article is to review major deep learning concepts pertinent to brain tumor analysis (e.g., segmentation, classification, prediction, evaluation.). A review conducted by summarizing a large number of scientific contributions to the field (i.e., deep learning in brain tumor analysis) is presented in this study. A coherent taxonomy of research landscape from the literature has also been mapped, and the major aspects of this emerging field have been discussed and analyzed. A critical discussion section to show the limitations of deep learning techniques has been included at the end to elaborate open research challenges and directions for future work in this emergent area.

UI MeSH Term Description Entries

Related Publications

Muhammad Waqas Nadeem, and Mohammed A Al Ghamdi, and Muzammil Hussain, and Muhammad Adnan Khan, and Khalid Masood Khan, and Sultan H Almotiri, and Suhail Ashfaq Butt
October 2020, Diagnostics (Basel, Switzerland),
Muhammad Waqas Nadeem, and Mohammed A Al Ghamdi, and Muzammil Hussain, and Muhammad Adnan Khan, and Khalid Masood Khan, and Sultan H Almotiri, and Suhail Ashfaq Butt
September 2022, Applied soft computing,
Muhammad Waqas Nadeem, and Mohammed A Al Ghamdi, and Muzammil Hussain, and Muhammad Adnan Khan, and Khalid Masood Khan, and Sultan H Almotiri, and Suhail Ashfaq Butt
April 2024, Nature methods,
Muhammad Waqas Nadeem, and Mohammed A Al Ghamdi, and Muzammil Hussain, and Muhammad Adnan Khan, and Khalid Masood Khan, and Sultan H Almotiri, and Suhail Ashfaq Butt
September 2022, Sensors (Basel, Switzerland),
Muhammad Waqas Nadeem, and Mohammed A Al Ghamdi, and Muzammil Hussain, and Muhammad Adnan Khan, and Khalid Masood Khan, and Sultan H Almotiri, and Suhail Ashfaq Butt
October 2025, Science China. Life sciences,
Muhammad Waqas Nadeem, and Mohammed A Al Ghamdi, and Muzammil Hussain, and Muhammad Adnan Khan, and Khalid Masood Khan, and Sultan H Almotiri, and Suhail Ashfaq Butt
June 2025, Journal of neuroscience methods,
Muhammad Waqas Nadeem, and Mohammed A Al Ghamdi, and Muzammil Hussain, and Muhammad Adnan Khan, and Khalid Masood Khan, and Sultan H Almotiri, and Suhail Ashfaq Butt
January 2022, Current medical imaging,
Muhammad Waqas Nadeem, and Mohammed A Al Ghamdi, and Muzammil Hussain, and Muhammad Adnan Khan, and Khalid Masood Khan, and Sultan H Almotiri, and Suhail Ashfaq Butt
June 2025, Medicine,
Muhammad Waqas Nadeem, and Mohammed A Al Ghamdi, and Muzammil Hussain, and Muhammad Adnan Khan, and Khalid Masood Khan, and Sultan H Almotiri, and Suhail Ashfaq Butt
January 2023, Artificial intelligence review,
Muhammad Waqas Nadeem, and Mohammed A Al Ghamdi, and Muzammil Hussain, and Muhammad Adnan Khan, and Khalid Masood Khan, and Sultan H Almotiri, and Suhail Ashfaq Butt
August 2025, BMC sports science, medicine & rehabilitation,
Copied contents to your clipboard!