Abstract

BackgroundIn a previous study, we examined the use of deep learning models to classify the invasion depth (mucosa-confined versus submucosa-invaded) of gastric neoplasms using endoscopic images. The external test accuracy reached 77.3%. However, model establishment is labor intense, requiring high performance. Automated deep learning (AutoDL) models, which enable fast searching of optimal neural architectures and hyperparameters without complex coding, have been developed.ObjectiveThe objective of this study was to establish AutoDL models to classify the invasion depth of gastric neoplasms. Additionally, endoscopist–artificial intelligence interactions were explored.MethodsThe same 2899 endoscopic images that were employed to establish the previous model were used. A prospective multicenter validation using 206 and 1597 novel images was conducted. The primary outcome was external test accuracy. Neuro-T, Create ML Image Classifier, and AutoML Vision were used in establishing the models. Three doctors with different levels of endoscopy expertise were asked to classify the invasion depth of gastric neoplasms for each image without AutoDL support, with faulty AutoDL support, and with best performance AutoDL support in sequence.ResultsThe Neuro-T–based model reached 89.3% (95% CI 85.1%-93.5%) external test accuracy. For the model establishment time, Create ML Image Classifier showed the fastest time of 13 minutes while reaching 82.0% (95% CI 76.8%-87.2%) external test accuracy. While the expert endoscopist's decisions were not influenced by AutoDL, the faulty AutoDL misled the endoscopy trainee and the general physician. However, this was corrected by the support of the best performance AutoDL model. The trainee gained the most benefit from the AutoDL support.ConclusionsAutoDL is deemed useful for the on-site establishment of customized deep learning models. An inexperienced endoscopist with at least a certain level of expertise can benefit from AutoDL support.

Highlights

  • Artificial intelligence (AI) using deep learning (DL), which mimics the intellectual function of humans, has been increasingly adopted in clinical medicine, especially for cognitive function in computer vision [1,2,3], including automated image recognition, classification, and segmentation tasks [4,5,6]

  • This study aimed to establish Automated deep learning (AutoDL) models classifying invasion depth of gastric neoplasms using endoscopic images and compare the diagnostic performance of the AutoDL models with previous convolutional neural network central processing units (CPUs) (CNN) models established in the traditional way

  • In order to compare the diagnostic performance of AutoDL–based models to the previous CNN models, the same input images (2899 white-light imaging endoscopic images) that were used to establish the previous model were used again

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Summary

Introduction

Artificial intelligence (AI) using deep learning (DL), which mimics the intellectual function of humans, has been increasingly adopted in clinical medicine, especially for cognitive function in computer vision [1,2,3], including automated image recognition, classification, and segmentation tasks [4,5,6]. We examined the use of deep learning models to classify the invasion depth (mucosa-confined versus submucosa-invaded) of gastric neoplasms using endoscopic images. Objective: The objective of this study was to establish AutoDL models to classify the invasion depth of gastric neoplasms. Three doctors with different levels of endoscopy expertise were asked to classify the invasion depth of gastric neoplasms for each image without AutoDL support, with faulty AutoDL support, and with best performance AutoDL support in sequence. For the model establishment time, Create ML Image Classifier showed the fastest time of 13 minutes while reaching 82.0% (95% CI 76.8%-87.2%) external test accuracy. While the expert endoscopist's decisions were not influenced by AutoDL, the faulty AutoDL misled the endoscopy trainee and the general physician This was corrected by the support of the best performance AutoDL model. An inexperienced endoscopist with at least a certain level of expertise can benefit from AutoDL support

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