Abstract

Gastric cancer is the second most common cancer worldwide, responsible for the death of many people in society. One of the issues regarding this disease is the absence of early and accurate detection. In the medical industry, gastric cancer is diagnosed by conducting numerous tests and imagings, which are costly and time-consuming. Therefore, doctors are seeking a cost-effective and time-efficient alternative. One of the medical solutions is Chinese medicine and diagnosis by observing changes of the tongue. Detecting the disease using tongue appearance and color of various sections of the tongue is one of the key components of traditional Chinese medicine. In this study, a method is presented which can carry out the localization of tongue surface regardless of the different poses of people in images. In fact, if the localization of face components, especially the mouth, is done correctly, the components leading to the biggest distinction in the dataset can be used which is favorable in terms of time and space complexity. Also, since we have the best estimation, the best features can be extracted relative to those components and the best possible accuracy can be achieved in this situation. The extraction of appropriate features in this study is done using deep convolutional neural networks. Finally, we use the random forest algorithm to train the proposed model and evaluate the criteria. Experimental results show that the average classification accuracy has reached approximately 73.78 which demonstrates the superiority of the proposed method compared to other methods.

Highlights

  • Cancer is the second leading cause of death after cardiovascular diseases throughout the world [1]

  • In Iran and unlike most developed countries, the emergence of gastric cancer is on the rise, which is significant in the north and northwest of Iran [8]

  • Traditional Chinese medicine (TCM) has historically been used for the treatment of various diseases in East Asia and is known as a complementary and alternative medical system in western countries [15]

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Summary

1- Introduction

Cancer is the second leading cause of death after cardiovascular diseases throughout the world [1]. The emergence of gastric cancer has decreased, especially in developed countries [5, 6]. Several studies have investigated gastric cancer diagnosis using the images of the color and texture of the tongue [14, 16, 18]. We used an approach based on recent developments in deep learning for the visual recognition of tongue images, and a new method was proposed based on deep convolutional networks and random forest to solve finegrained image classification, which could be applied in other areas than the detection of tongue texture images. Kamel Tabbakh & Kheirabadi, Diagnosis of Gastric Cancer via Classification of the Tongue Images using Deep

2- Literature Review
4- Results
5- Conclusion
The Royal
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