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Lung Cancer Detection Using Machine Learning and Deep Learning Models

Khattab M. Ali AlheetiCollege of Computer and Information Technology, University of Anbar,Computer Networking Systems Department,Anbar,IraqTabreer T. Al–ShoukaCollege of Computer and Information Technology, University of Anbar,Computer Sciences Department,Anbar,IraqSaleem Hamad MajeedCollege of Computer and Information Technology, University of Anbar,Computer Sciences Department,Anbar,IraqAmjed Abbas AhmedImam Al-Kadhum College (IKC),Department of Computer Techniques Engineering,Baghdad,Iraq
2024en
ABI

Аннотация

Technology and artificial intelligence play a significant role in improving healthcare and enable tasks to be automated. In addition, the diseases can be better understood and diagnosed faster, saving time and reducing costs. This study examines the impact of transfer learning models on the effectiveness of deep learning models in classifying lung cancer through the analysis of CT scan images. Additionally, it investigates the relative performance of various machine learning and deep learning models, encompassing Support Vector Machine (SVM) and convolutional neural net-works (CNN) such as InceptionV3, VGG16, Xception, ResNet50, and MobileNetV2, in the early detection of lung cancer based on CT scan images. The SVM model achieved an overall accuracy of 89% after preprocessing, the proposed approach was applied to five pre-trained models (ResNet50, In-ceptionV3, VGG16, Xception, MobileNetV2) using the dataset: Chest CT-Scan; Among the pre-trained CNN models, the Mo-bileNetV2 model achieved the highest accuracy of 98% and the lowest test loss, indicating it performed the best. The Xception model achieved the second-highest accuracy of 97%. The image pre-processing phase plays a significant role in im-proving system performance in terms of improving image contrast and increasing processing speed.

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