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Automatic selection of ROIs in functional imaging using Gaussian mixture models.

机译:使用高斯混合模型自动选择功能成像中的ROI。

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摘要

We present an automatic method for selecting regions of interest (ROIs) of the information contained in three-dimensional functional brain images using Gaussian mixture models (GMMs), where each Gaussian incorporates a contiguous brain region with similar activation. The novelty of the approach is based on approximating the grey-level distribution of a brain image by a sum of Gaussian functions, whose parameters are determined by a maximum likelihood criterion via the expectation maximization (EM) algorithm. Each Gaussian or cluster is represented by a multivariate Gaussian function with a center coordinate and a certain shape. This approach leads to a drastic compression of the information contained in the brain image and serves as a starting point for a variety of possible feature extraction methods for the diagnosis of brain diseases.
机译:我们提出了一种自动方法,用于选择使用高斯混合模型(GMM)的三维功能性大脑图像中包含的信息的感兴趣区域(ROI),其中每个高斯都合并了具有类似激活作用的连续大脑区域。该方法的新颖性是基于用高斯函数之和近似脑图像的灰度分布,高斯函数的参数由最大似然准则通过期望最大化(EM)算法确定。每个高斯或聚类由具有中心坐标和特定形状的多元高斯函数表示。这种方法导致对大脑图像中包含的信息的急剧压缩,并作为诊断脑部疾病的各种可能特征提取方法的起点。

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