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Support vector machine learning-based cerebral blood flow quantification for arterial spin labeling MRI

机译:支持矢量机器学习的脑血流量,用于动脉旋转标记MRI

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摘要

Purpose: To develop a multivariate machine learning classification-based cerebral blood flow (CBF) quantification method for arterial spin labeling (ASL) perfusion MRI. Methods: The label and control images of ASL MRI were separated using a machine-learning algorithm, the support vector machine (SVM). The perfusion-weighted image was subsequently extracted from the multivariate (all voxels) SVM classifier. Using the same pre-processing steps, the proposed method was compared with standard ASL CBF quantification method using synthetic data and in-vivo ASL images. Results: As compared with the conventional univariate approach, the proposed ASL CBF quantification method significantly improved spatial signal-to-noise-ratio (SNR) and image appearance of ASL CBF images. Conclusion: the multivariate machine learning-based classification is useful for ASL CBF quantification. Hum Brain Mapp 35:2869-2875, 2014.
机译:目的:开发一种基于多变量的机器学习分类的脑血流量(CBF)定量方法,用于动脉旋转标记(ASL)灌注MRI。 方法:使用机器学习算法,支持向量机(SVM)分离ASL MRI的标签和控制图像。 随后从多碳(所有体素)SVM分类器中提取灌注加权图像。 使用相同的预处理步骤,使用合成数据和体内ASL图像将所提出的方法与标准ASL CBF定量方法进行比较。 结果:与传统的单变量方法相比,所提出的ASL CBF定量方法显着改善了空间信噪比(SNR)和ASL CBF图像的图像外观。 结论:基于多变量的机器学习的分类对于ASL CBF量化是有用的。 HUM Brain MAPP 35:2869-2875,2014。

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