Cancer Detection and Classification Using CNN Model
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International Journal of Engineering Trends and Technology
Abstract
Abstract - The research utilizes the CNN model to develop the machine learning mode due to its image extraction performance.
The system was developed to identify and categorize eight (8) different kinds of cancers, namely lymphoma, oral cancer, brain
cancer, breast cancer, cervical cancer, kidney cancer, lung and colon cancer, and leukemia. The multi cancer image dataset
from Kaggle was utilized to train and test the models. The dataset contained eight (8) types of cancers grouped into different
classes. For each class, 2000 images were used for training and 500 for testing. Pre-processing techniques were applied to
normalize and standardize the images to ensure the correct format and resolution. Nine (9) CNN models were trained, with eight
responsible for classifying each cancer type while the remaining model detects the cancer type. The system was designed to
perform two levels of classification for each image. The first level is the detection of the type of cancer, and the second level is
the classification of the cancer type. Generally, the manual examination of cancer diagnoses is error-prone, and this work sought
to automate the process as best as possible by investigating the performance of the CNN model on selected types of cancer. The
results demonstrated the effectiveness of the developed system in accurately detecting and classifying the eight types of cancers
and the potential to alleviate the errors faced with the manual examination. All the models obtained accuracies above 90%
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Research Article
