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Review
. 2019 Apr 14;25(14):1666-1683.
doi: 10.3748/wjg.v25.i14.1666.

Application of artificial intelligence in gastroenterology

Affiliations
Review

Application of artificial intelligence in gastroenterology

Young Joo Yang et al. World J Gastroenterol. .

Abstract

Artificial intelligence (AI) using deep-learning (DL) has emerged as a breakthrough computer technology. By the era of big data, the accumulation of an enormous number of digital images and medical records drove the need for the utilization of AI to efficiently deal with these data, which have become fundamental resources for a machine to learn by itself. Among several DL models, the convolutional neural network showed outstanding performance in image analysis. In the field of gastroenterology, physicians handle large amounts of clinical data and various kinds of image devices such as endoscopy and ultrasound. AI has been applied in gastroenterology in terms of diagnosis, prognosis, and image analysis. However, potential inherent selection bias cannot be excluded in the form of retrospective study. Because overfitting and spectrum bias (class imbalance) have the possibility of overestimating the accuracy, external validation using unused datasets for model development, collected in a way that minimizes the spectrum bias, is mandatory. For robust verification, prospective studies with adequate inclusion/exclusion criteria, which represent the target populations, are needed. DL has its own lack of interpretability. Because interpretability is important in that it can provide safety measures, help to detect bias, and create social acceptance, further investigations should be performed.

Keywords: Artificial intelligence; Computer-assisted; Convolutional neural network; Deep-learning; Endoscopy; Gastroenterology.

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Conflict of interest statement

Conflict-of-interest statement: The authors declare no conflicts of interest.

Figures

Figure 1
Figure 1
Schematic graphical summary for artificial intelligence, machine learning and deep learning development. A: Definition of artificial intelligence, machine learning (ML) and deep learning (DL). B: Comparison of process between classic ML and DL. C: Modes of learning and examples of ML.
Figure 2
Figure 2
Interpretability-accuracy tradeoff in classification algorithms of machine learning.

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