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A supervised clustering approach for extracting predictive information from brain activation images

机译:一种从大脑激活图像中提取预测信息的监督聚类方法

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It is a standard approach to consider that images encode some information such as face expression or biomarkers in medical images; decoding this information is particularly challenging in the case of medical imaging, because the whole image domain has to be considered a priori to avoid biasing image-based prediction and image interpretation. Feature selection is thus needed, but is often performed using mass-univariate procedures, that handle neither the spatial structure of the images, nor the multivariate nature of the signal. Here we propose a solution that computes a reduced set of high-level features which compress the image information while retaining its informative parts: first, we introduce a hierarchical clustering of the research domain that incorporates spatial connectivity constraints and reduces the complexity of the possible spatial configurations to a single tree of nested regions. Then we prune the tree in order to produce a parcellation (division of the image domain) such that parcel-based signal averages optimally predict the target information. We show the power of this approach with respect to reference techniques on simulated data and apply it to enhance the prediction of the subject's behaviour during functional Magnetic Resonance Imaging (fMRI) scanning sessions. Besides its superior performance, the method provides an interpretable weighting of the regions involved in the regression or classification task.
机译:考虑图像编码医学信息中的某些信息(例如面部表情或生物标记)是一种标准方法;在医学成像的情况下,对该信息进行解码特别具有挑战性,因为必须先考虑整个图像域,以避免对基于图像的预测和图像解释造成偏见。因此,需要进行特征选择,但通常使用质量单变量过程执行,该过程既不处理图像的空间结构,也不处理信号的多元性质。在这里,我们提出一种解决方案,该解决方案可计算一组简化的高级特征,这些特征在压缩图像信息的同时保留其信息部分:首先,我们引入了研究领域的分层聚类,其中纳入了空间连通性约束并降低了可能的空间复杂性配置为单个嵌套区域树。然后,我们对树进行修剪以产生分割(图像域的划分),以便基于宗地的信号平均可以最佳地预测目标信息。我们展示了这种方法相对于模拟数据参考技术的力量,并将其用于增强功能性磁共振成像(fMRI)扫描会话期间受试者行为的预测。除了其优越的性能外,该方法还为回归或分类任务中涉及的区域提供了可解释的权重。

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