3D U-Net for brain stroke lesion segmentation on ISLES 2018 dataset

A. Tursynova, B. Omarov
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引用次数: 18

Abstract

Brain stroke is one of the global problems today. An image such as a CT scan helps to visually see the whole picture of the brain. Segmentation of the affected brain regions requires a qualified specialist. However, manual segmentation requires a lot of time and a good expert. The role and support of trained neural networks for segmentation tasks is considered as one of the best assistants. Among the neural network models, the models based on U-Net are recognized as the leading ones. The U-Net architecture can work with a small number of datasets and is considered advanced for the segmentation method. In this paper, we use the classical U-Net architecture for the experiment. As datasets, we use 3D computed tomography images of the brain taken from ISLES 2018 the public domain. Using the classical U-Net architecture, we found that U-Net is considered the best architecture for segmentation methods. This study presents experiment results of 3D U-Net model for brain stroke lesion segmentation, and gives future perspectives for researchers who is going to segment brain strokes and create modified U-Net model for improvement. The developed model is useful for brain stroke segmentation when there is little number of images for train and testing the model.
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基于ISLES 2018数据集的脑卒中病灶三维U-Net分割
脑中风是当今的全球性问题之一。像CT扫描这样的图像有助于直观地看到大脑的整体图像。分割受影响的大脑区域需要一个合格的专家。然而,手工分割需要大量的时间和优秀的专家。经过训练的神经网络在分割任务中的作用和支持被认为是最好的助手之一。在神经网络模型中,基于U-Net的神经网络模型是公认的领先模型。U-Net架构可以处理少量的数据集,在分割方法中被认为是先进的。在本文中,我们使用经典的U-Net架构进行实验。作为数据集,我们使用了从ISLES 2018公共领域获取的大脑3D计算机断层扫描图像。使用经典的U-Net架构,我们发现U-Net被认为是分割方法的最佳架构。本研究给出了脑卒中病灶分割的三维U-Net模型的实验结果,为脑卒中分割和创建改进的U-Net模型的研究人员提供了未来的展望。该模型适用于在图像数量较少的情况下进行脑卒中分割。
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