Lan Xiaoke, Chen Honghuan, Jin Wenbing
College of Internet of Things Technology, Hangzhou Polytechnic, Hangzhou, China.
Front Physiol. 2023 Oct 25;14:1290820. doi: 10.3389/fphys.2023.1290820. eCollection 2023.
Colorectal cancer is a common malignant tumor in the gastrointestinal tract, which usually evolves from adenomatous polyps. However, due to the similarity in color between polyps and their surrounding tissues in colonoscopy images, and their diversity in size, shape, and texture, intelligent diagnosis still remains great challenges. For this reason, we present a novel dense residual-inception network (DRI-Net) which utilizes U-Net as the backbone. Firstly, in order to increase the width of the network, a modified residual-inception block is designed to replace the traditional convolutional, thereby improving its capacity and expressiveness. Moreover, the dense connection scheme is adopted to increase the network depth so that more complex feature inputs can be fitted. Finally, an improved down-sampling module is built to reduce the loss of image feature information. For fair comparison, we validated all method on the Kvasir-SEG dataset using three popular evaluation metrics. Experimental results consistently illustrates that the values of DRI-Net on IoU, Mcc and Dice attain 77.72%, 85.94% and 86.51%, which were 1.41%, 0.66% and 0.75% higher than the suboptimal model. Similarly, through ablation studies, it also demonstrated the effectiveness of our approach in colorectal semantic segmentation.
结直肠癌是胃肠道常见的恶性肿瘤,通常由腺瘤性息肉演变而来。然而,由于结肠镜检查图像中息肉与其周围组织颜色相似,且息肉在大小、形状和纹理上具有多样性,智能诊断仍然面临巨大挑战。因此,我们提出了一种新颖的密集残差-inception网络(DRI-Net),它以U-Net作为主干网络。首先,为了增加网络的宽度,设计了一种改进的残差-inception块来取代传统卷积,从而提高其容量和表现力。此外,采用密集连接方案来增加网络深度,以便能够拟合更复杂的特征输入。最后,构建了一个改进的下采样模块来减少图像特征信息的损失。为了进行公平比较,我们使用三种流行的评估指标在Kvasir-SEG数据集上对所有方法进行了验证。实验结果一致表明,DRI-Net在交并比(IoU)、马修斯相关系数(Mcc)和骰子系数(Dice)上的值分别达到77.72%、85.94%和86.51%,比次优模型分别高出1.41%、0.66%和0.75%。同样,通过消融研究,也证明了我们的方法在结直肠语义分割中的有效性。