Classification of Oral Cavity Using the Convolution Neural Network

Authors

  • Ayat A. Yosif Department of Physics, College of Science, University of Babylon, Babylon, Iraq. Author
  • Musa K. Mohsin Khalil Department of Physics, College of Science, University of Babylon, Babylon, Iraq. Author
  • Hussain Muhyi Ali Department of Physics, College of Faculty of Education for Girls, University of Kufa, Kufa, Iraq Author

DOI:

https://doi.org/10.61841/wd1e1923

Keywords:

Image Classification, Convolutional Neural Networks (CNN), Cinnamon contact stomatitis, Leukoedema of the buccal mucosa, Image Processing

Abstract

The oral cavity is known as the zone between the lips and the finish of the hard sense of taste. Contains teeth, buccal mucosa and gums, lower jaw and hard sense of taste, floor of the mouth, and foremost tongue of the papilla around the papilla. This work describes an automatic classification algorithm that classifies the Cinnamon contact stomatitis and Leukoedema of the buccal mucosa.

Methods: The data set contains 20 images categorized into two types of diseases. Divide The informational index was partitioned into two preparing parts and a test part in this study.

Results: Convolution neural network (CNN) technology was used on data. Two types of jaw diseases have been taken, which are diseases that appear in the oral cavity, which are apparent and not within the tissues, and that appear in the true form to the jaw.

Conclusions: Cinnamon contact dermatitis and white edema of the buccal mucosa can be detected with CNN with accuracy similar to that in manual diagnosis by maxillofacial specialists. 

Downloads

Download data is not yet available.

References

1. Slootweg PJ, Eveson JW. Tumors of oral cavity and oropharynx. In: Barnes

L, Eveson JW, Reichart P, Sidransky D (eds). World Health Organization

Classification of Tumors. Pathology & Genetics. Head and Neck Tumors.

Lyon, IARC Press, 2005.

2. Brandwein-Gensler, Margaret et al., "Oral Squamous Cell Carcinoma:

Histologic Risk Assessment but Not Margin Status, Is Strongly Predictive of

Local Disease-free and Overall Survival," Am. J. of Surg. Path., vol. 29, no. 2,

pp. 167-78, February 2005.

3. Roodenburg J.L.N., Baatenburg de Jong R.J., Reintsema H., et al. Hoofdhalstumoren. In: van de Velde CJH, van der Graaf WTA, van Krieken JHJM

et al. (eds.). Oncologie. Houten, Bohn Stafleu van Loghum, 2011.

4. Weatherspoon, J. Darien et al., "Oral cavity and oropharyngeal cancer

incidence trends and disparities in the United States: 2000-2010," Cancer

Epidemiology, vol. 39, no. 4, pp. 497-504, August 2015.

5. Zhou Shusen et al., "Active deep learning method for semi-supervised

sentiment classification," Neurocomputing, no. 120, pp. 536-546, November

2013.

6. Lv Yisheng et al., "Traffic Flow Prediction With Big Data: A Deep Learning

Approach," IEEE Trans on Intel Trans Systems, vol. 16, no. 2, pp. 865-73,

September 2014.

7. Tong, Simon, and Daphne Koller, "Support Vector Machine Active Learning with Applications to Text Classification," Mach Learn Res, pp. 45-66, Nov. 2001.

8. Wang Dayong et al., "Deep Learning for Identifying Metastatic Breast Cancer," [1606.05718] Deep Learning for Identifying Metastatic Breast Cancer, June 2016.

9. Janowczyk, Andrew et al., "A resolution adaptive deep hierarchical (RADHicaL) learning scheme applied to nuclear segmentation of digital pathology images," Compo. Meth. in Biomech. and Biomed. Eng.: Imag. & Vis., pp. 1-7, 2016.

10. Prasoon Adhish et al., "Deep Feature Learning for Knee Cartilage Segmentation Using a Triplanar Convolutional Neural Network," MICCAI

2013 LNCS, pp. 246-53, 2013.

11. Chen, Yu-Jen Yu-Jen et al., "Computer-aided classification of lung nodules on computed tomography images via deep learning technique," OncoTargets and Therapy 2015, 2015.

Downloads

Published

31.05.2020

How to Cite

A. Yosif, A., K. Mohsin Khalil, M., & Muhyi Ali, H. (2020). Classification of Oral Cavity Using the Convolution Neural Network. International Journal of Psychosocial Rehabilitation, 24(3), 5526-5534. https://doi.org/10.61841/wd1e1923