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3D intracranial artery segmentation using a convolutional autoencoder

机译:3D使用卷积AutoEncoder的颅内动脉分割

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Automated segmentation of intracranial arteries on magnetic resonance angiography (MRA) allows for quantification of cerebrovascular features, which provides tools for understanding aging and pathophysiological adaptations of the cerebrovascular system. Using a convolutional autoencoder (CAE) for segmentation is promising as it takes advantage of the autoencoder structure in effective noise reduction and feature extraction by representing high dimensional information with low dimensional latent variables. In this paper, we trained an 8-layer CAE to learn a 3D segmentation model of intracranial arteries from 49 cases of MRA data. After parameter optimization and prediction refinement, our trained model was shown to perform better than the three traditional segmentation methods in both binary classification and visual evaluation.
机译:磁共振血管造影(MRA)对颅内动脉的自动分割允许定量脑血管特征,为脑血管系统的理解和病理生理学适应的工具提供了工具。使用用于分割的卷积AutoEncoder(CAE)是希望通过表示具有低维潜变量的高维信息来利用有效降噪和特征提取的AutoEncoder结构。在本文中,我们培训了8层CAE以从49例MRA数据中学习颅内动脉的3D分段模型。在参数优化和预测细化之后,我们培训的模型显示在二进制分类和视觉评估中比三种传统的分段方法更好。

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