Gastro-Intestinal Tract cancer is considered a fatal malignant condition of the organs in the GI tract. Due to its fatality, there is an urgent need for medical image segmentation techniques to segment organs to reduce the treatment time and enhance the treatment. Traditional segmentation techniques rely upon handcrafted features and are computationally expensive and inefficient. Vision Transformers have gained immense popularity in many image classification and segmentation tasks. To address this problem from a transformers' perspective, we introduced a hybrid CNN-transformer architecture to segment the different organs from an image. The proposed solution is robust, scalable, and computationally efficient, with a Dice and Jaccard coefficient of 0.79 and 0.72, respectively. The proposed solution also depicts the essence of deep learning-based automation to improve the effectiveness of the treatment
翻译:胃内肠道癌被认为是GI大片器官致命恶性病,由于其致命性,迫切需要医疗图象分解技术,以便分器官减少治疗时间,加强治疗;传统分解技术依靠手工制作的特征,计算成本低,效率低;许多图像分类和分解任务中,视觉变形器受到极大欢迎。从变压器的角度来看,为了解决这一问题,我们引入了混合型CNN-传输结构,将不同器官与图像分割开来。 拟议的解决办法是稳健、可缩放和计算效率高的,Dice和Jacccard系数分别为0.79和0.72。 拟议的解决办法还描述了深层学习自动化的本质,以提高治疗的效果。