Assessment of a Deep-Learning System for Colorectal Cancer Diagnosis using Histopathology Images

Published: 30 Sept 2024, Last Modified: 17 Sept 2024OpenReview Archive Direct UploadEveryoneCC BY 4.0
Abstract: Colorectal Cancer is one of the most common forms of cancer hence, an early and accurate detection is crucial. Manual diagnosis is a tedious and time-consuming job prone to human errors; therefore, it is imperative to use computer- aided detection systems to interpret medical images for a quicker and more accurate diagnosis. Deep-learning approaches have proved to be efficacious in predicting cancer from pathological images. This study assesses several deep-learning techniques for cancer diagnosis on digitized histopathology images. It also proposes a new model by borrowing the idea from Xception architecture, which outperforms existing architectures with an accuracy of 99.37% for cancer diagnosis and 94.48% for cancer- grade classification. The main inference of our research is assisting pathologists in detecting colorectal cancer from pathological images faster and more accurately. With notable accuracy and robustness, our proposed model has significant potential to analyze pathological images and detect the patterns associated with other types of cancer. Our study holds promise for driving the advancement of innovative medical diagnostic tools, aiding pathologists and medical practitioners in expediting cancer diagnosis processes.
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