首页> 外文会议>International conference on medical image computing and computer-assisted intervention;MICCAI 2009 >Topological Characterization of Signal in Brain Images Using Min-Max Diagrams
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Topological Characterization of Signal in Brain Images Using Min-Max Diagrams

机译:使用最小-最大图的脑图像信号的拓扑表征

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We present a novel computational framework for characterizing signal in brain images via nonlinear pairing of critical values of the signal. Among the astronomically large number of different pairings possible, we show that representations derived from specific pairing schemes provide concise representations of the image. This procedure yields a "min-max diagram" of the image data. The representation turns out to be especially powerful in discriminating image scans obtained from different clinical populations, and directly opens the door to applications in a variety of learning and inference problems in biomedical imaging. It is noticed that this strategy significantly departs from the standard image analysis paradigm - where the 'mean' signal is used to characterize an ensemble of images. This offers robustness to noise in subsequent statistical analyses, for example; however, the attenuation of the signal content due to averaging makes it rather difficult to identify subtle variations. The proposed topologically oriented method seeks to address these limitations by characterizing and encoding topological features or attributes of the image. As an application, we have used this method to characterize cortical thickness measures along brain surfaces in classifying autistic subjects. Our promising experimental results provide evidence of the power of this representation.
机译:我们提出了一种新颖的计算框架,用于通过信号临界值的非线性配对来表征脑部图像中的信号。在天文学上可能存在的大量不同配对中,我们表明,从特定配对方案派生的表示形式提供了图像的简洁表示形式。该过程产生图像数据的“最小-最大图”。事实证明,该表示在区分从不同临床人群获得的图像扫描方面特别强大,并且直接为生物医学成像中各种学习和推理问题的应用打开了大门。值得注意的是,这种策略与标准的图像分析范例大相径庭,在标准的图像分析范例中,“均值”信号用于表征图像整体。例如,这在随后的统计分析中为噪声提供了鲁棒性。然而,由于平均导致信号内容的衰减使得很难识别细微的变化。所提出的面向拓扑的方法试图通过表征和编码图像的拓扑特征或属性来解决这些限制。作为一种应用,我们在分类自闭症对象时使用了这种方法来表征沿大脑表面的皮质厚度测量。我们有希望的实验结果提供了这种表示方法的力量的证据。

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