Artificial Intelligence Techniques for Cancer Detection and Classification: Review Study

Author:

Al-shamasneh Alaá Rateb Mahmoud,Binti Obaidellah Unaizah Hanum

Abstract

Cancer is the general name for a group of more than 100 diseases. Although cancer includes different types of diseases, they all start because abnormal cells grow out of control. Without treatment, cancer can cause serious health problems and even loss of life. Early detection of cancer may reduce mortality and morbidity. This paper presents a review of the detection methods for lung, breast, and brain cancers. These methods used for diagnosis include artificial intelligence techniques, such as support vector machine neural network, artificial neural network, fuzzy logic, and adaptive neuro-fuzzy inference system, with medical imaging like X-ray, ultrasound, magnetic resonance imaging, and computed tomography scan images. Imaging techniques are the most important approach for precise diagnosis of human cancer. We investigated all these techniques to identify a method that can provide superior accuracy and determine the best medical images for use in each type of cancer.

Publisher

European Scientific Institute, ESI

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2. A Deep Transfer Learning Approach For Lung Tumour Detection With Resilience Testing Under Suboptimal Conditions;2024 IEEE International Conference on Industrial Technology (ICIT);2024-03-25

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