Abstract

In 2021, colon cancer is the second most common cause of death for this type of cancer. Therefore, in this study, a colon cancer classification system was developed to help medical staff classify 2 types of cancer colon adenocarcinomas and benign colonic tissues. The classification method uses the Convolution Neural Network (CNN) with the architecture VGG16, VGG19, ResNet101, ResNet152, MobileNetV2, DenseNet201 and InceptionV3. We used 10.000 image datasets that divided into 7200 training data, 1800 validation data and 1000 test data. Pre-trained models are used to extract new features and training data. The best performance parameter based on accuracy, precision, recall and f1-score and confusion matrix are obtained in 3 architectures, namely VGG19, ResNet101 and ResNet152. These architectures can identify and classify both types of colon cancer with 100% accuracy.

Highlights

  • The simulation of the system is run on google colab pro using TPU v2 with 64 GB High Bandwidth Memory (HBM)

  • Detection can be done by examining clinical pathology on microscopic tissue images

  • Visual observation is often difficult and tends to be subjective depending on the expertise of the clinician

Read more

Summary

Introduction

According to WHO, cancer is a non-contagious disease that causes death worldwide [1], [2]. Cancer cells can multiply out of control [3]. One of the cancers with a high prevalence of around 10% is colon cancer or colorectal cancer (CRC) of all cases in the world [4]. Colon cancer is the second most deadly disease [5]. The proliferation of cancer cells is so fast that it requires a health system that can detect cancer early, and get treatment as early as possible [6]. Clinical pathologists visually examine colon surface tissue samples using a microscope. Tissue samples were resected, fixed and stained using Hematoxylin and Eosin (H&E) [7], [8]. The expertise and experience of the clinician greatly determines the accuracy of detection. It is important to develop a decision support system for automatic classification of colon cancer from tissue images

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call