Segmentation of Craniomaxillofacial Bony Structures from MRI with a 3D Deep-Learning Based Cascade Framework.

Dong Nie, Li Wang, Roger Trullo, Jianfu Li, Peng Yuan, James Xia, Dinggang Shen
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Abstract

Computed tomography (CT) is commonly used as a diagnostic and treatment planning imaging modality in craniomaxillofacial (CMF) surgery to correct patient's bony defects. A major disadvantage of CT is that it emits harmful ionizing radiation to patients during the exam. Magnetic resonance imaging (MRI) is considered to be much safer and noninvasive, and often used to study CMF soft tissues (e.g., temporomandibular joint and brain). However, it is extremely difficult to accurately segment CMF bony structures from MRI since both bone and air appear to be black in MRI, along with low signal-to-noise ratio and partial volume effect. To this end, we proposed a 3D deep-learning based cascade framework to solve these issues. Specifically, a 3D fully convolutional network (FCN) architecture is first adopted to coarsely segment the bony structures. As the coarsely segmented bony structures by FCN tend to be thicker, convolutional neural network (CNN) is further utilized for fine-grained segmentation. To enhance the discriminative ability of the CNN, we particularly concatenate the predicted probability maps from FCN and the original MRI, and feed them together into the CNN to provide more context information for segmentation. Experimental results demonstrate a good performance and also the clinical feasibility of our proposed 3D deep-learning based cascade framework.

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利用基于深度学习的三维级联框架从核磁共振成像中分割颅颌面骨骼结构
计算机断层扫描(CT)是颅颌面外科(CMF)手术中常用的诊断和治疗规划成像方式,用于矫正患者的骨骼缺陷。CT 的主要缺点是在检查过程中会对患者产生有害的电离辐射。磁共振成像(MRI)被认为是更安全的无创检查,常用于研究颅颌面软组织(如颞下颌关节和大脑)。然而,由于骨骼和空气在核磁共振成像中看起来都是黑色的,再加上低信噪比和部分体积效应,要从核磁共振成像中准确分割 CMF 的骨骼结构极其困难。为此,我们提出了一种基于三维深度学习的级联框架来解决这些问题。具体来说,首先采用三维全卷积网络(FCN)架构来粗略分割骨骼结构。由于 FCN 粗略分割的骨骼结构往往较粗,因此进一步利用卷积神经网络(CNN)进行细粒度分割。为了提高卷积神经网络的分辨能力,我们特别将 FCN 预测的概率图和原始核磁共振成像图串联起来,并一起输入到卷积神经网络,为分割提供更多的上下文信息。实验结果表明,我们提出的基于三维深度学习的级联框架具有良好的性能和临床可行性。
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