Block-Based Statistics for Robust Non-parametric Morphometry.

Geng Chen, Pei Zhang, Ke Li, Chong-Yaw Wee, Yafeng Wu, Dinggang Shen, Pew-Thian Yap
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Abstract

Automated algorithms designed for comparison of medical images are generally dependent on a sufficiently large dataset and highly accurate registration as they implicitly assume that the comparison is being made across a set of images with locally matching structures. However, very often sample size is limited and registration methods are not perfect and may be prone to errors due to noise, artifacts, and complex variations of brain topology. In this paper, we propose a novel statistical group comparison algorithm, called block-based statistics (BBS), which reformulates the conventional comparison framework from a non-local means perspective in order to learn what the statistics would have been, given perfect correspondence. Through this formulation, BBS (1) explicitly considers image registration errors to reduce reliance on high-quality registrations, (2) increases the number of samples for statistical estimation by collapsing measurements from similar signal distributions, and (3) diminishes the need for large image sets. BBS is based on permutation test and hence no assumption, such as Gaussianity, is imposed on the distribution. Experimental results indicate that BBS yields markedly improved lesion detection accuracy especially with limited sample size, is more robust to sample imbalance, and converges faster to results expected for large sample size.

Abstract Image

Abstract Image

基于块的稳健非参数形态测量统计。
用于医学影像对比的自动算法通常依赖于足够大的数据集和高度精确的配准,因为它们隐含地假定对比是在一组具有局部匹配结构的图像中进行的。然而,样本量往往有限,而且配准方法并不完美,很容易因噪声、伪像和大脑拓扑结构的复杂变化而出错。在本文中,我们提出了一种新颖的统计组对比算法,称为基于块的统计(BBS),它从非局部手段的角度重新构建了传统的对比框架,以了解在完全对应的情况下,统计结果会是怎样的。通过这种表述方式,BBS (1) 明确考虑了图像注册误差,从而减少了对高质量注册的依赖;(2) 通过合并来自相似信号分布的测量值,增加了统计估计的样本数量;(3) 减少了对大型图像集的需求。BBS 基于置换检验,因此不对分布施加高斯性等假设。实验结果表明,BBS 能显著提高病变检测的准确性,尤其是在样本量有限的情况下,而且对样本不平衡具有更强的鲁棒性,并能更快地收敛到大样本量的预期结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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