2023
DOI: 10.4018/ijskd.326629
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Automated System for Colon Cancer Detection and Segmentation Based on Deep Learning Techniques

Abstract: Colon cancer is one of the world's three most deadly and severe cancers. As with any cancer, the key priority is early detection. Deep learning (DL) applications have recently gained popularity in medical image analysis due to the success they have achieved in the early detection and screening of cancerous tissues or organs. This paper aims to explore the potential of deep learning techniques for colon cancer classification. This research will aid in the early prediction of colon cancer in order to provide eff… Show more

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Cited by 7 publications
(3 citation statements)
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“…At last, the NN was performed with the aid of labelled training information. Azar et al [17] main aim is to determine the probable DL techniques for the classification of CC. There are many DL optimizers were discovered in this study namely Adamax, stochastic gradient descent (SGD), Nesterov, root mean square prop (RMSprop), AdaDelta, Adam optimizer (Nadam) and so on.…”
Section: Related Workmentioning
confidence: 99%
“…At last, the NN was performed with the aid of labelled training information. Azar et al [17] main aim is to determine the probable DL techniques for the classification of CC. There are many DL optimizers were discovered in this study namely Adamax, stochastic gradient descent (SGD), Nesterov, root mean square prop (RMSprop), AdaDelta, Adam optimizer (Nadam) and so on.…”
Section: Related Workmentioning
confidence: 99%
“…Physics-Inspired in which the main source of inspiration is the physical processes, which are further formulated into solutions to resolve the problems. A few popular physics-inspired algorithms are "Equilibrium Optimizer" (Faramarzi et al, 2020b), "Multi-Verse Optimization" Azar and Kamal, 2021a,b,c;Azar et al, 2021), "Bang-Big Big-Crunch Algorithm" (Erol et al, 2006), "Magnetic Charged System Search" (Zhao et al, 2019), "Central Force Optimization" (Formato, 2007), "Thermal Exchange Optimization" (Kaveh & Dadras, 2017), "Ray Optimization" (Kaveh & Khayatazad, 2012), "Gravitational Search Algorithm" (Rashedi et al, 2009), "Artificial Physicomimetics Optimization" (Xie et al, 2010), "Optics Inspired Optimisation" (Kashan, 2015), "Electromagnetic Field Optimization" (Abedinpourshotorban et al, 2016, "Gravitational Local Search Optimization" (Rashedi et al, 2018) and "Electromagnetism-like Algorithm" (Birbil et al, 2003;Azar et al, 2023a).…”
Section: Background Study For Metaheuristic Algorithmmentioning
confidence: 99%
“…It is a process of using digital technologies to fundamentally change how an organization functions, delivers value to customers, and achieves success. Digital transformation can involve a wide range of activities, including the adoption of new technologies such as artificial intelligence, the Internet of Things, cloud computing, the development of new business models and processes, and the creation of new products and services (Kitsios & Kamariotou, 2021;Azar et al, 2023). The goal of digital transformation is to improve efficiency, increase competitiveness, and drive growth by leveraging the power of digital technologies.…”
Section: Introductionmentioning
confidence: 99%