AG-CUResNeSt: A Novel Method for Colon Polyp Segmentation

Colorectal cancer is among the most common malignancies and can develop from high-risk colon polyps. Colonoscopy is an effective screening tool to detect and remove polyps, especially in the case of precancerous lesions. However, the missing rate in clinical practice is relatively high due to many factors. The procedure could benefit greatly from using AI models for automatic polyp segmentation, which provide valuable insights for improving colon polyp detection. However, precise segmentation is still challenging due to variations of polyps in size, shape, texture, and color. This paper proposes a novel neural network architecture called AG-CUResNeSt, which enhances Coupled UNets using the robust ResNeSt backbone and attention gates. The network is capable of effectively combining multi-level features to yield accurate polyp segmentation. Experimental results on five popular benchmark datasets show that our proposed method achieves state-of-the-art accuracy compared to existing methods.

PDF Abstract
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Medical Image Segmentation CVC-ClinicDB AG-CUResNeSt mean Dice 0.9170 # 25
Medical Image Segmentation Kvasir-SEG AG-CUResNeSt mean Dice 0.902 # 28
mIoU 0.845 # 31

Methods