论文标题
使用U-NET-RESNET50的自动息肉细分
Automatic Polyp Segmentation using U-Net-ResNet50
论文作者
论文摘要
息肉是结直肠癌的前辈,被认为是全球与癌症相关死亡的主要原因之一。结肠镜检查是结肠直肠息肉识别,定位和去除的标准程序。由于形状,大小和周围组织相似性的变化,结肠镜检查期间临床医生通常会错过结直肠息肉。通过在结肠镜检查过程中使用自动,准确和快速的息肉分割方法,可以轻松检测和去除许多大肠息肉。 ``Medico自动息肉分割挑战''为研究息肉细分和建立有效,准确的分割算法提供了机会。我们将U-NET与预训练的RESNET50一起用作息肉分割的编码器。该模型是针对挑战的Kvasir-Seg数据集进行了训练,并在组织者的数据集上进行了测试,并实现了0.8154的骰子系数,JACCARD为0.7396,召回0.8533,精度为0.8532,准确性为0.9506,0.9506,F2得分为0.8272,表现为0.8272,表现为普遍的功能。
Polyps are the predecessors to colorectal cancer which is considered as one of the leading causes of cancer-related deaths worldwide. Colonoscopy is the standard procedure for the identification, localization, and removal of colorectal polyps. Due to variability in shape, size, and surrounding tissue similarity, colorectal polyps are often missed by the clinicians during colonoscopy. With the use of an automatic, accurate, and fast polyp segmentation method during the colonoscopy, many colorectal polyps can be easily detected and removed. The ``Medico automatic polyp segmentation challenge'' provides an opportunity to study polyp segmentation and build an efficient and accurate segmentation algorithm. We use the U-Net with pre-trained ResNet50 as the encoder for the polyp segmentation. The model is trained on Kvasir-SEG dataset provided for the challenge and tested on the organizer's dataset and achieves a dice coefficient of 0.8154, Jaccard of 0.7396, recall of 0.8533, precision of 0.8532, accuracy of 0.9506, and F2 score of 0.8272, demonstrating the generalization ability of our model.