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Lung Cancer Detection using CNN and Image Processing Techniques

Sunita Kumari, Shaifali Sharma, Saket Singh

Abstract


Lung cancer remains one of the leading causes of cancer- related deaths worldwide. Beforehand discovery is pivotal for perfecting patient survival rates. This paper presents a deep literacy- grounded approach for lung cancer discovery using Convolutional Neural Networks( CNN) and image processing ways. The proposed system leverages medical imaging data, similar as CT reviews andX-rays, to classify lung nodes as nasty or benign. The methodology involves preprocessing the images, rooting applicable features using CNNs, and training a robust bracket model. Experimental results demonstrate high delicacy in detecting lung cancer, outperforming traditional machine literacy styles. The integration of AI- driven individual tools can significantly enhance early discovery, reduce false cons, and ameliorate patient issues. The work in this disquisition focuses on the automatic type and prophecy of lung cancer using reckoned tomography( CT) reviews, employing Deep knowledge(  DL)  strategies,  specifically  Enhanced  Convolutional Neural Networks( CNNs), to enable rapid-fire- fire and accurate image analysis. The study of this disquisition is considered the first bone that hits 100 testing delicacy with an Enhanced CNN, demonstrating significant advancements in lung cancer discovery through the operation of sophisticated image enhancement ways and innovative model architectures. This highlights the eventuality of Enhanced CNN models in converting lung cancer diagnostics and emphasizes the significance of integrating advanced image processing ways into clinical practice.

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References


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