Abstract

Wireless capsule endoscopy (WCE) is an efficient tool to investigate gastrointestinal tract disorders and perform painless imaging of the intestine. Despite that, several concerns make its wide applicability and adaptation challenging like efficacy, tolerance, safety, and performance. Besides, automatic analysis of the WCE provided dataset is of great importance for detecting abnormalities. Imaging of the patient’s digestive tract through WCE produces a large dataset that requires a substantial amount of time and a special skill set from a medical practitioner for analysis. Several computer-aided and vision-based solutions have been proposed to resolve these issues, yet, they do not provide the desired level of accuracy and further improvements are still needed. The current study aims to devise a system that can perform the task of automatic analysis of WCE images to identify abnormalities and assist practitioners for robust diagnosis. This study adopts a deep neural network approach and proposes a model name BIR (bleedy image recognizer) that combines the MobileNet with a custom-built convolutional neural network (CNN) model to classify WCE bleedy images. BIR uses the MobileNet model for initial-level computation for its lower computation power requirement and subsequently the output is fed to the CNN for further processing. A dataset of 1650 WCE images is used to train and test the model using the measures of accuracy, precision, recall, F1 score, and Cohen’s kappa to evaluate the performance of the BIR. Results indicate the promising outcomes with achieved accuracy, precision, recall, F1 score, and Cohen’s kappa of 0.993, 1.000, 0.994, 0.997, and 0.995 respectively. The accuracy of the BIR model is 0.978 with the Google collected WCE image dataset which is better than the state-of-art approaches.

Highlights

  • Gastrointestinal tract infections such as ulcer polyps, bleeding, cancer, and Crohn’s have become fairly frequent whereas ulcers and bleeding are commonplace diseases

  • EXPERIMENTS USING IMBALANCED DATASET The current study focuses on the use of MobileNet and convolutional neural networks (CNN) to perform the classification of bleedy images captured using Wireless capsule endoscopy (WCE) technology

  • The WCE generates a large number of images during its operation and medical experts need to spend a substantial amount of time to perform diagnosis

Read more

Summary

Introduction

Gastrointestinal tract infections such as ulcer polyps, bleeding, cancer, and Crohn’s have become fairly frequent whereas ulcers and bleeding are commonplace diseases. Infection diseases occurred since 2017, and approximately 200,000 new cases are being registered every year since 2011 worldwide. This gastrointestinal tract infection can be rectified if detected and diagnosed at an early stage [3]. For the detection of gastrointestinal tract infection, wireless capsule endoscopy is the preferred technology used by expert physicians. Wireless capsule endoscopy (WCE) is a noninvasive technique considered essentially to provide diagnostic imaging of the small intestine [4].

Objectives
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call