基于局部活动轮廓和训练神经网络的肿瘤整体分割

Mostafa Soleymanifard, M. Hamghalam
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引用次数: 13

摘要

分割脑组织的目的之一是分离病人大脑中受损的组织。事实上,脑组织分割是检测和治疗脑异常的重要步骤之一。这项耗时的任务通常由临床专家来完成,他们并非毫无差错。本文提出的方法是实现脑肿瘤分割的自动化,目的是使分割过程更完整,更接近临床治疗。本文提出了一种神经网络和活动轮廓相结合的方法来自动分割MRI多模态脑图像中的胶质瘤。该算法利用神经网络在肿瘤边界斑块的随机点进行局部训练,然后结合MRI图像的模态和活动轮廓进行完整的肿瘤分割。得到的结果以及DICE系数等评价标准表明,与目前最先进的分割方法相比,该模型具有很强的竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation of Whole Tumor Using Localized Active Contour and Trained Neural Network in Boundaries
One of the purposes from segmenting the brain tissues is to separate the damaged tissue in the patient's brain. In fact, brain tissue segmentation is one of the essential steps in the detection and treatment of brain abnormalities. This time-consuming task is usually performed by clinical experts who are not errorless. The proposed method in this paper is to automate the brain tumor segmentation with the aim of making the segmentation process more complete and closer to the clinical treatments. We propose a novel method that is a combination of neural networks and active contours to automatically segment the gliomas in MRI multi-modalities brain images. The proposed algorithm is trained locally by using a neural network at random points in tumor boundary patches, then, by combining the modality of the MRI images and the active contours, the complete tumor is segmented. The obtained results as well as the evaluation criteria such as DICE coefficient, show that the proposed model is highly competitive in comparison with the state of the art segmentation methods.
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