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Spatial multiresolution cluster detection method

机译:空间多分辨率聚类检测方法

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A novel multi-resolution cluster detection (MCD) method is proposed to identify irregularly shaped clusters in space. Multi-scale test statistic on a single cell is derived based on likelihood ratio statistic for Bernoulli sequence, Poisson sequence and Normal sequence. A neighborhood variability measure is defined to select the optimal test threshold. The MCD method is compared with single scale testing methods controlling for false discovery rate and the spatial scan statistics using simulation and f-MRI data. The MCD method is shown to be more effective for discovering irregularly shaped clusters, and the implementation of this method does not require heavy computation, making it suitable for cluster detection for large spatial data.
机译:提出了一种新颖的多分辨率聚类检测(MCD)方法来识别空间中形状不规则的聚类。基于伯努利序列,泊松序列和正态序列的似然比统计量,得出单个单元格上的多尺度测试统计量。定义了邻域可变性度量以选择最佳测试阈值。使用模拟和f-MRI数据将MCD方法与控制错误发现率和控制空间扫描统计数据的单尺度测试方法进行比较。事实证明,MCD方法对于发现形状不规则的聚类更为有效,并且该方法的实现不需要繁琐的计算,因此适用于大型空间数据的聚类检测。

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