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Mixture models with adaptive spatial regularization for segmentation with an application to FMRI data

机译:具有自适应空间正则化的混合模型用于分割,并应用于FMRI数据

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Mixture models are often used in the statistical segmentation of medical images. For example, they can be used for the segmentation of structural images into different matter types or of functional statistical parametric maps (SPMs) into activations and nonactivations. Nonspatial mixture models segment using models of just the histogram of intensity values. Spatial mixture models have also been developed which augment this histogram information with spatial regularization using Markov random fields. However, these techniques have control parameters, such as the strength of spatial regularization, which need to be tuned heuristically to particular datasets. We present a novel spatial mixture model within a fully Bayesian framework with the ability to perform fully adaptive spatial regularization using Markov random fields. This means that the amount of spatial regularization does not have to be tuned heuristically but is adaptively determined from the data. We examine the behavior of this model when applied to artificial data with different spatial characteristics, and to functional magnetic resonance imaging SPMs.
机译:混合模型通常用于医学图像的统计分割中。例如,它们可用于将结构图像分割为不同的物质类型,或将功能统计参数图(SPM)分割为激活和非激活。非空间混合模型仅使用强度值的直方图模型进行细分。还开发了空间混合模型,该模型使用马尔可夫随机场通过空间正则化来增强直方图信息。但是,这些技术具有控制参数,例如空间正则化强度,需要通过启发式方法将其调整为特定的数据集。我们在完全贝叶斯框架内提出一种新颖的空间混合模型,能够使用马尔可夫随机场执行完全自适应的空间正则化。这意味着空间规则化的量不必通过试探法来调整,而是可以根据数据自适应地确定。当将其应用于具有不同空间特征的人造数据以及功能性磁共振成像SPM时,我们将检查此模型的行为。

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