The intersection of video capsule endoscopy and artificial intelligence: addressing unique challenges using machine learning
Shan Guleria, Benjamin Schwartz, Yash Sharma, Philip Fernandes, James, Jablonski, Sodiq Adewole, Sanjana Srivastava, Fisher Rhoads, Michael Porter,, Michelle Yeghyayan, Dylan Hyatt, Andrew Copland, Lubaina Ehsan, Donald Brown,, Sana Syed

TL;DR
This paper explores how machine learning models, including CNNs and graph-based approaches, can address key challenges in video capsule endoscopy interpretation, improving accuracy, efficiency, and clinician trust.
Contribution
The study develops and evaluates novel AI models tailored for VCE data, addressing data artifacts, imbalance, computational demands, and interpretability.
Findings
CNNs achieved 99.1% landmark detection accuracy.
Graph CNNs had 89.9% accuracy with high sensitivity.
Multi-frame models reached 97.5% accuracy.
Abstract
Introduction: Technical burdens and time-intensive review processes limit the practical utility of video capsule endoscopy (VCE). Artificial intelligence (AI) is poised to address these limitations, but the intersection of AI and VCE reveals challenges that must first be overcome. We identified five challenges to address. Challenge #1: VCE data are stochastic and contains significant artifact. Challenge #2: VCE interpretation is cost-intensive. Challenge #3: VCE data are inherently imbalanced. Challenge #4: Existing VCE AIMLT are computationally cumbersome. Challenge #5: Clinicians are hesitant to accept AIMLT that cannot explain their process. Methods: An anatomic landmark detection model was used to test the application of convolutional neural networks (CNNs) to the task of classifying VCE data. We also created a tool that assists in expert annotation of VCE data. We then created…
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Taxonomy
TopicsGastrointestinal Bleeding Diagnosis and Treatment · Colorectal Cancer Screening and Detection · Gastric Cancer Management and Outcomes
