Colorectal cancer is a leading cause of death worldwide. However, early diagnosis dramatically increases the chances of survival, for which it is crucial to identify the tumor in the body. Since its imaging uses high-resolution techniques, annotating the tumor is time-consuming and requires particular expertise. Lately, methods built upon Convolutional Neural Networks(CNNs) have proven to be at par, if not better in many biomedical segmentation tasks. For the task at hand, we propose another CNN-based approach, which uses atrous convolutions and residual connections besides the conventional filters. The training and inference were made using an efficient patch-based approach, which significantly reduced unnecessary computations. The proposed AtResUNet was trained on the DigestPath 2019 Challenge dataset for colorectal cancer segmentation with results having a Dice Coefficient of 0.748.
翻译:然而,早期诊断大大增加了存活机会,而确定肿瘤在人体中的位置至关重要。由于其成像使用高分辨率技术,肿瘤的注解耗时费时,需要特殊的专门知识。最近,在革命神经网络(CNNs)上建立的方法在很多生物医学分离任务中已经证明是平的,即使不是更好的。关于手头的任务,我们提议了另一种基于CNN的方法,在常规过滤器之外使用突变和残留连接。培训和推断方法使用了高效的补丁法,大大减少了不必要的计算。拟议的AtResUNet在2019 ChestPath Creative Creative Calectal Calectrical 数据集上接受了培训,其结果为0.748。