TransResU-Net: Transformer based ResU-Net for Real-Time Colonoscopy Polyp Segmentation
Nikhil Kumar Tomar, Annie Shergill, Brandon Rieders, Ulas Bagci,, Debesh Jha

TL;DR
This paper introduces TransResU-Net, a transformer-enhanced deep learning model for real-time colon polyp segmentation, aiming to improve early detection of colorectal cancer during colonoscopy procedures.
Contribution
The study proposes a novel Transformer ResU-Net architecture combining residual blocks, ResNet-50, and self-attention for improved polyp segmentation performance.
Findings
Achieved high dice scores on benchmark datasets
Operates in real-time during colonoscopy
Outperforms existing segmentation methods
Abstract
Colorectal cancer (CRC) is one of the most common causes of cancer and cancer-related mortality worldwide. Performing colon cancer screening in a timely fashion is the key to early detection. Colonoscopy is the primary modality used to diagnose colon cancer. However, the miss rate of polyps, adenomas and advanced adenomas remains significantly high. Early detection of polyps at the precancerous stage can help reduce the mortality rate and the economic burden associated with colorectal cancer. Deep learning-based computer-aided diagnosis (CADx) system may help gastroenterologists to identify polyps that may otherwise be missed, thereby improving the polyp detection rate. Additionally, CADx system could prove to be a cost-effective system that improves long-term colorectal cancer prevention. In this study, we proposed a deep learning-based architecture for automatic polyp segmentation,…
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Taxonomy
TopicsColorectal Cancer Screening and Detection · Radiomics and Machine Learning in Medical Imaging · COVID-19 diagnosis using AI
MethodsAttention Is All You Need · Linear Layer · Softmax · Dropout · Dense Connections · Position-Wise Feed-Forward Layer · Absolute Position Encodings · Multi-Head Attention · Byte Pair Encoding · Label Smoothing
