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Original Article

Application of convolutional neural networks for evaluating Helicobacter pylori infection status on the basis of endoscopic images

, , , , , , , , , & show all
Pages 158-163 | Received 14 Dec 2018, Accepted 26 Jan 2019, Published online: 17 Mar 2019
 

Abstract

Background and aim: We recently reported the role of artificial intelligence in the diagnosis of Helicobacter pylori (H. pylori) gastritis on the basis of endoscopic images. However, that study included only H. pylori-positive and -negative patients, excluding patients after H. pylori-eradication. In this study, we constructed a convolutional neural network (CNN) and evaluated its ability to ascertain all H. pylori infection statuses.

Methods: A deep CNN was pre-trained and fine-tuned on a dataset of 98,564 endoscopic images from 5236 patients (742 H. pylori-positive, 3649 -negative, and 845 -eradicated). A separate test data set (23,699 images from 847 patients; 70 positive, 493 negative, and 284 eradicated) was evaluated by the CNN.

Results: The trained CNN outputs a continuous number between 0 and 1 as the probability index for H. pylori infection status per image (Pp, H. pylori-positive; Pn, negative; Pe, eradicated). The most probable (largest number) of the three infectious statuses was selected as the ‘CNN diagnosis’. Among 23,699 images, the CNN diagnosed 418 images as positive, 23,034 as negative, and 247 as eradicated. Because of the large number of H. pylori negative findings, the probability of H. pylori-negative was artificially re-defined as Pn −0.9, after which 80% (465/582) of negative diagnoses were accurate, 84% (147/174) eradicated, and 48% (44/91) positive. The time needed to diagnose 23,699 images was 261 seconds.

Conclusion: We used a novel algorithm to construct a CNN for diagnosing H. pylori infection status on the basis of endoscopic images very quickly.

Abbreviations: H. pylori: Helicobacter pylori; CNN: convolutional neural network; AI: artificial intelligence; EGD: esophagogastroduodenoscopies.

Acknowledgments

The authors thank the endoscopists at the Tada Tomohiro Institute of Gastroenterology and Proctology who helped perform the esophagogastroduodenoscopies. We are also grateful to the engineers at AI Medical Service who helped to develop the convolutional neural networks and test them under the supervision of Kazuharu Aoyama.

Disclosure statement

The authors declare they have no conflicts of interest.

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