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Threshold-free cluster enhancement: addressing problems of smoothing, threshold dependence and localisation in cluster inference.

机译:无阈值集群增强:解决集群推理中的平滑,阈值依赖性和本地化问题。

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Many image enhancement and thresholding techniques make use of spatial neighbourhood information to boost belief in extended areas of signal. The most common such approach in neuroimaging is cluster-based thresholding, which is often more sensitive than voxel-wise thresholding. However, a limitation is the need to define the initial cluster-forming threshold. This threshold is arbitrary, and yet its exact choice can have a large impact on the results, particularly at the lower (e.g., t, z < 4) cluster-forming thresholds frequently used. Furthermore, the amount of spatial pre-smoothing is also arbitrary (given that the expected signal extent is very rarely known in advance of the analysis). In the light of such problems, we propose a new method which attempts to keep the sensitivity benefits of cluster-based thresholding (and indeed the general concept of "clusters" of signal), while avoiding (or at least minimising) these problems. The method takes a raw statistic image and produces an output image in which the voxel-wise values represent the amount of cluster-like local spatial support. The method is thus referred to as "threshold-free cluster enhancement" (TFCE). We present the TFCE approach and discuss in detail ROC-based optimisation and comparisons with cluster-based and voxel-based thresholding. We find that TFCE gives generally better sensitivity than other methods over a wide range of test signal shapes and SNR values. We also show an example on a real imaging dataset, suggesting that TFCE does indeed provide not just improved sensitivity, but richer and more interpretable output than cluster-based thresholding.
机译:许多图像增强和阈值处理技术利用空间邻域信息来增强对信号扩展区域的信心。在神经成像中,最常见的这种方法是基于聚类的阈值处理,它通常比基于体素的阈值处理更为敏感。但是,限制是需要定义初始的簇形成阈值。该阈值是任意的,但是其精确选择可能对结果有很大的影响,特别是在经常使用的较低的簇形成阈值(例如,t,z <4)下。此外,空间预平滑的量也是任意的(假定在分析之前很少知道预期的信号范围)。鉴于这些问题,我们提出了一种新的方法,该方法试图保持基于簇的阈值(以及信号“簇”的一般概念)的灵敏度优势,同时避免(或至少最小化)这些问题。该方法获取原始统计图像,并生成输出图像,在该输出图像中,体素方向的值表示簇状局部空间支持量。因此,该方法称为“无阈值群集增强”(TFCE)。我们介绍了TFCE方法,并详细讨论了基于ROC的优化以及与基于聚类和基于体素的阈值的比较。我们发现,在广泛的测试信号形状和SNR值范围内,TFCE通常比其他方法具有更好的灵敏度。我们还在真实成像数据集上显示了一个示例,这表明TFCE确实确实不仅提供了更高的灵敏度,而且比基于聚类的阈值化提供了更丰富,更可解释的输出。

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