利用基于卷积神经网络的图式决策融合技术在核磁共振成像中进行胰腺分割

Jinzheng Cai, Le Lu, Zizhao Zhang, Fuyong Xing, Lin Yang, Qian Yin
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引用次数: 0

摘要

医学图像中的胰腺自动分割是糖尿病检查、胰腺癌诊断和外科手术等许多临床应用的先决条件。在本文中,我们将磁共振成像(MRI)扫描中的胰腺分割制定为基于图的决策融合过程,并与深度卷积神经网络(CNN)相结合。我们的方法分别使用两种 CNN 模型进行胰腺检测和边界分割:1) 组织检测步骤,利用空间强度上下文区分胰腺和非胰腺组织;2) 边界检测步骤,分配胰腺的语义边界。两个网络的检测结果融合在一起,作为条件随机场(CRF)框架的初始化,以获得最终的分割输出。我们的方法在包含 78 个腹部核磁共振扫描的数据集中取得了平均骰子相似系数(DSC)76.1%,标准偏差为 8.7%。与其他同类算法相比,我们提出的算法取得了最佳效果。
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Pancreas Segmentation in MRI using Graph-Based Decision Fusion on Convolutional Neural Networks.

Automated pancreas segmentation in medical images is a prerequisite for many clinical applications, such as diabetes inspection, pancreatic cancer diagnosis, and surgical planing. In this paper, we formulate pancreas segmentation in magnetic resonance imaging (MRI) scans as a graph based decision fusion process combined with deep convolutional neural networks (CNN). Our approach conducts pancreatic detection and boundary segmentation with two types of CNN models respectively: 1) the tissue detection step to differentiate pancreas and non-pancreas tissue with spatial intensity context; 2) the boundary detection step to allocate the semantic boundaries of pancreas. Both detection results of the two networks are fused together as the initialization of a conditional random field (CRF) framework to obtain the final segmentation output. Our approach achieves the mean dice similarity coefficient (DSC) 76.1% with the standard deviation of 8.7% in a dataset containing 78 abdominal MRI scans. The proposed algorithm achieves the best results compared with other state of the arts.

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