Affiliation:
1. Department of Computer Science and Engineering, Punjab Engineering College (Deemed to be University),
Chandigarh, India
Abstract
Background:
Cancer is a deadly disease. It is crucial to diagnose cancer in its early stages.
This can be done with medical imaging. Medical imaging helps us scan and view internal organs. The
analysis of these images is a very important task in the identification and classification of cancer. Over
the past years, the occurrence of cancer has been increasing, so has been the load on the medical fraternity.
Fortunately, with the growth of Artificial Intelligence in the past decade, many tools and techniques
have emerged which may help doctors in the analysis of medical images.
Methodology:
This is a systematic study covering various tools and techniques used for medical image
analysis in the field of cancer detection. It focuses on machine learning and deep learning technologies,
their performances, and their shortcomings. Also, the various types of imaging techniques and the different
datasets used have been discussed extensively. This work also discusses the various preprocessing
techniques that have been performed on medical images for better classification.
Results:
A total of 270 studies from 5 different publications and 5 different conferences have been
included and compared on the above-cited parameters.
Conclusion:
Recommendations for future work have been given towards the end.
Publisher
Bentham Science Publishers Ltd.
Subject
Radiology, Nuclear Medicine and imaging
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