Improvement for Diagnosis of Gastric Cancer from Endoscopic Images using Machine Learning
DOI:
https://doi.org/10.21015/vtse.v10i3.1054Abstract
Detection of cancer disease in any part of a human body is of utmost importance as it can be cured completely. In this research work, a prognosis of early gastric cancer detection by applying modern machine learning algorithms augmented with fast and efficient classification of white light images. In earlier studies for early gastric cancer detection schemes, nominal endoscopic images demand more computational effort, which slows down process and takes more time. Moreover, in the contemporary methodologies, only basic parameters were used to detect the symptoms of gastric cancer such as accuracy. Whilst in the proposed methodology, protein structure of the cancerous part is also examined with the help of Alpha fold software. A dataset consist of white-light-images is developed from the endoscopic images of the suspected patients. By utilitarian of this dataset in the proposed scheme, results are drawn which shows greater accuracy at a lower cost as compared to contemporary techniques.
References
P.-H. Niu, L.-L. Zhao, H.-L. Wu, D.-B. Zhao, and Y.-T. Chen, “Artificial intelligence in gastric cancer: Application and future perspectives,” World Journal of Gastroenterology, vol. 26, no. 36, pp. 5408–5419, Sep. 2020.
P. Jin, X. Ji, W. Kang, Y. Li, H. Liu, F. Ma, S. Ma, H. Hu, W. Li, and Y. Tian, “Artificial Intelligence in gastric cancer: A systematic review,” Journal of Cancer Research and Clinical Oncology, vol. 146, no. 9, pp. 2339–2350, 2020.
J. Taninaga et al., “Prediction of future gastric cancer risk using a machine learning algorithm and comprehensive medical check-up data: A case-control study,” Scientific Reports, vol. 9, no. 1, Aug. 2019.
W. Pan, X. Li, W. Wang, L. Zhou, J. Wu, T. Ren, C. Liu, M. Lv, S. Su, and Y. Tang, “Identification of Barrett's esophagus in endoscopic images using Deep Learning,” 2021.
T. Hirasawa et al., “Application of artificial intelligence using a convolutional neural network for detecting gastric cancer in endoscopic images,” Gastric Cancer, vol. 21, no. 4, pp. 653–660, Jan. 2018. DOI: https://doi.org/10.1007/s10120-018-0793-2
L. Wu, W. Zhou, X. Wan, J. Zhang, L. Shen, S. Hu, Q. Ding, G. Mu, A. Yin, X. Huang, J. Liu, X. Jiang, Z. Wang, Y. Deng, M. Liu, R. Lin, T. Ling, P. Li, Q. Wu, P. Jin, J. Chen, and H. Yu, “A deep neural network improves endoscopic detection of early gastric cancer without blind spots,” Endoscopy, vol. 51, no. 06, pp. 522–531, 2019.
V. E. Strong, “Progress in gastric cancer,” Updates in Surgery, vol. 70, no. 2, pp. 157–159, Jun. 2018.
T. Itoh, H. Kawahira, H. Nakashima, and N. Yata, “Deep learning analyzes Helicobacter pylori infection by upper gastrointestinal endoscopy images,” Endoscopy International Open, vol. 06, no. 02, pp. E139–E144, Feb. 2018. DOI: https://doi.org/10.1055/s-0043-120830
S.-L. Zhu, J. Dong, C. Zhang, Y.-B. Huang, and W. Pan, “Application of machine learning in the diagnosis of gastric cancer based on noninvasive characteristics,” PLOS ONE, vol. 15, no. 12, 2020.
T. Hirasawa et al., “Current status and future perspective of artificial intelligence applications in endoscopic diagnosis and management of gastric cancer,” Digestive Endoscopy, vol. 33, no. 2, pp. 263–272, Dec. 2020.
Y. Ikenoyama et al., “Detecting early gastric cancer: Comparison between the diagnostic ability of convolutional neural networks and endoscopists,” Digestive Endoscopy, vol. 33, no. 1, pp. 141–150, Jun. 2020.
Y. Xue, N. Li, X. Wei, R. A. Wan, and C. Wang, “Deep learning-based earlier detection of esophageal cancer using improved empirical wavelet transform from Endoscopic Image,” IEEE Access, vol. 8, pp. 123765–123772, 2020.
B.-J. Cho, C. S. Bang, S. W. Park, Y. J. Yang, S. I. Seo, H. Lim, W. G. Shin, J. T. Hong, Y. T. Yoo, S. H. Hong, J. H. Choi, J. J. Lee, and G. H. Baik, “Automated classification of gastric neoplasms in endoscopic images using a convolutional neural network,” Endoscopy, vol. 51, no. 12, pp. 1121–1129, 2019.
K. Kubota, J. Kuroda, M. Yoshida, K. Ohta, and M. Kitajima, “Medical Image Analysis: Computer-aided diagnosis of gastric cancer invasion on Endoscopic Images,” Surgical Endoscopy, vol. 26, no. 5, pp. 1485–1489, 2011. DOI: https://doi.org/10.1007/s00464-011-2036-z
W. Qiu, J. Xie, Y. Shen, J. Xu, and J. Liang, “Endoscopic Image Recognition Method of gastric cancer based on Deep Learning Model,” Expert Systems, vol. 39, no. 3, 2021.
Y. Zhu, Q.-C. Wang, M.-D. Xu, Z. Zhang, J. Cheng, Y.-S. Zhong, Y.-Q. Zhang, W.-F. Chen, L.-Q. Yao, P.-H. Zhou, and Q.-L. Li, “Application of convolutional neural network in the diagnosis of the invasion depth of gastric cancer based on conventional endoscopy,” Gastrointestinal Endoscopy, vol. 89, no. 4, 2019.
J. K. Min, M. S. Kwak, and J. M. Cha, “Overview of deep learning in gastrointestinal endoscopy,” Gut and Liver, vol. 13, no. 4, pp. 388–393, 2019.
Y. Sakai, S. Takemoto, K. Hori, M. Nishimura, H. Ikematsu, T. Yano, and H. Yokota, “Automatic detection of early gastric cancer in endoscopic images using a transferring convolutional neural network,” 2018 40th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), 2018.
M. K. Cheung, A. Y. Wong, L. Chen, E. W. Chan, I. C. Wong, and W. K. Leung, “Long-term use of proton pump inhibitors and risk of gastric cancer development after treatment for H. pylori : A population-based study,” Gastroenterology, vol. 152, no. 5, 2017. DOI: https://doi.org/10.1016/S0016-5085(17)32875-5
Y. Sakai, S. Takemoto, K. Hori, M. Nishimura, H. Ikematsu, T. Yano, and H. Yokota, “Automatic detection of early gastric cancer in endoscopic images using a transferring convolutional neural network,” 2018 40th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), 2018.
K. Zhang, “Acupuncture for quality of life in gastric cancer patients: Methodological issues,” Journal of Pain and Symptom Management, vol. 63, no. 4, 2022.
A. Jibawi, M. Baguneid, and A. Bhowmick, “Gastric cancer,” Current Surgical Guidelines, pp. 279–294, 2018.
T. de Lange, P. Halvorsen, and M. Riegler, “Methodology to develop machine learning algorithms to improve performance in gastrointestinal endoscopy,” World Journal of Gastroenterology, vol. 24, no. 45, pp. 5057–5062, 2018.
H. Nakashima, H. Kawahira, H. Kawachi, and N. Sakaki, “Endoscopic three-categorical diagnosis of helicobacter pylori infection using linked color imaging and Deep Learning: A single-center prospective study (with video),” Gastric Cancer, vol. 23, no. 6, pp. 1033–1040, 2020.
S. Shichijo, S. Nomura, K. Aoyama, Y. Nishikawa, M. Miura, T. Shinagawa, H. Takiyama, T. Tanimoto, S. Ishihara, K. Matsuo, and T. Tada, “Application of convolutional neural networks in the diagnosis of helicobacter pylori infection based on endoscopic images,” EBioMedicine, vol. 25, pp. 106–111, 2017. DOI: https://doi.org/10.1016/j.ebiom.2017.10.014
H. J. Yoon and J.-H. Kim, “Lesion-based convolutional neural network in diagnosis of early gastric cancer,” Clinical Endoscopy, vol. 53, no. 2, pp. 127–131, 2020.
Y. Horiuchi, K. Aoyama, Y. Tokai, T. Hirasawa, S. Yoshimizu, A. Ishiyama, T. Yoshio, T. Tsuchida, J. Fujisaki, and T. Tada, “Convolutional Neural Network for differentiating gastric cancer from gastritis using magnified endoscopy with narrow band imaging,” Digestive Diseases and Sciences, vol. 65, no. 5, pp. 1355–1363, 2019.
H. Ueyama, Y. Kato, Y. Akazawa, N. Yatagai, H. Komori, T. Takeda, K. Matsumoto, K. Ueda, K. Matsumoto, M. Hojo, T. Yao, A. Nagahara, and T. Tada, “Application of artificial intelligence using a convolutional neural network for diagnosis of early gastric cancer based on magnifying endoscopy with narrow‐band Imaging,” Journal of Gastroenterology and Hepatology, vol. 36, no. 2, pp. 482–489, 2020.
J. H. Lee, Y. J. Kim, Y. W. Kim, S. Park, Y.-i Choi, Y. J. Kim, D. K. Park, K. G. Kim, and J.-W. Chung, “Spotting malignancies from gastric endoscopic images using Deep Learning,” Surgical Endoscopy, vol. 33, no. 11, pp. 3790–3797, 2019.
J. Taninaga, Y. Nishiyama, K. Fujibayashi, T. Gunji, N. Sasabe, K. Iijima, and T. Naito, “Prediction of future gastric cancer risk using a machine learning algorithm and Comprehensive Medical Check-up data: A case-control study,” Scientific Reports, vol. 9, no. 1, 2019.
Downloads
Published
How to Cite
Issue
Section
License
Authors who publish with this journal agree to the following terms:
- Authors retain copyright and grant the journal right of first publication with the work simultaneously licensed under a Creative Commons Attribution License (CC-By) that allows others to share the work with an acknowledgment of the work's authorship and initial publication in this journal.
- Authors are able to enter into separate, additional contractual arrangements for the non-exclusive distribution of the journal's published version of the work (e.g., post it to an institutional repository or publish it in a book), with an acknowledgement of its initial publication in this journal.
- Authors are permitted and encouraged to post their work online (e.g., in institutional repositories or on their website) prior to and during the submission process, as it can lead to productive exchanges, as well as earlier and greater citation of published work (See The Effect of Open Access).
This work is licensed under a Creative Commons Attribution License CC BY