Computer-Aided Cancer Diagnosis via Machine Learning and Deep Learning:
A comparative review
- URL: http://arxiv.org/abs/2210.11943v1
- Date: Wed, 19 Oct 2022 19:30:56 GMT
- Title: Computer-Aided Cancer Diagnosis via Machine Learning and Deep Learning:
A comparative review
- Authors: Solene Bechelli
- Abstract summary: We show that tremendous improvements have been made in the early detection of cancerous tumors and tissues.
We discuss the challenges of cancer research related to the large discrepancies in the images.
We provide some notable results in the field for lung, breast, and skin cancers.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The past years have seen a considerable increase in cancer cases. However, a
cancer diagnosis is often complex and depends on the types of images provided
for analysis. It requires highly skilled practitioners but is often
time-consuming and error-prone. If Machine Learning and deep learning
algorithms have been widely used, a comprehensive review of the techniques used
from the pre-processing steps to the final prediction is lacking. With this
review, we aim to provide a comprehensive overview of the current steps
required in building efficient and accurate machine learning algorithm for
cancer prediction, detection and classification. To do so, we compile the
results of cancer related study using AI over the past years. We include
various cancers that encompass different types of images, and therefore
different related techniques. We show that tremendous improvements have been
made in the early detection of cancerous tumors and tissues. The techniques
used are various and often problem-tailored and our findings is confirmed
through the study of a large number of research. Moreover, we investigate the
approaches best suited for different types of images such as histology,
dermoscopic, MRI, etc. With this work, we summarize the main finding over the
past years in cancer detection using deep learning techniques. We discuss the
challenges of cancer research related to the large discrepancies in the images,
and we provide some notable results in the field for lung, breast, and skin
cancers.
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