On Statistical Analysis of Neuroimages with Imperfect Registration.

IF 1.3 3区 历史学 0 ARCHAEOLOGY
Won Hwa Kim, Sathya N Ravi, Sterling C Johnson, Ozioma C Okonkwo, Vikas Singh
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引用次数: 0

Abstract

A variety of studies in neuroscience/neuroimaging seek to perform statistical inference on the acquired brain image scans for diagnosis as well as understanding the pathological manifestation of diseases. To do so, an important first step is to register (or co-register) all of the image data into a common coordinate system. This permits meaningful comparison of the intensities at each voxel across groups (e.g., diseased versus healthy) to evaluate the effects of the disease and/or use machine learning algorithms in a subsequent step. But errors in the underlying registration make this problematic, they either decrease the statistical power or make the follow-up inference tasks less effective/accurate. In this paper, we derive a novel algorithm which offers immunity to local errors in the underlying deformation field obtained from registration procedures. By deriving a deformation invariant representation of the image, the downstream analysis can be made more robust as if one had access to a (hypothetical) far superior registration procedure. Our algorithm is based on recent work on scattering transform. Using this as a starting point, we show how results from harmonic analysis (especially, non-Euclidean wavelets) yields strategies for designing deformation and additive noise invariant representations of large 3-D brain image volumes. We present a set of results on synthetic and real brain images where we achieve robust statistical analysis even in the presence of substantial deformation errors; here, standard analysis procedures significantly under-perform and fail to identify the true signal.

关于不完美配准神经图像的统计分析
神经科学/神经成像领域的各种研究都试图对获取的大脑图像扫描进行统计推断,以诊断和了解疾病的病理表现。为此,重要的第一步是将所有图像数据注册(或共同注册)到一个通用坐标系中。这样就能对各组(如患病与健康)每个体素的强度进行有意义的比较,以评估疾病的影响和/或在后续步骤中使用机器学习算法。但是,底层配准中的误差会带来问题,要么降低统计能力,要么降低后续推断任务的有效性/准确性。在本文中,我们提出了一种新的算法,该算法可以抵御通过配准程序获得的基础形变场中的局部误差。通过推导出图像的变形不变表示,下游分析可以变得更加稳健,就像可以使用(假设的)远优于配准程序一样。我们的算法基于散射变换的最新研究成果。以此为出发点,我们展示了谐波分析(尤其是非欧几里得小波)的结果如何产生设计大型三维脑图像体积的变形和加性噪声不变表示的策略。我们展示了一组合成和真实大脑图像的结果,在这些图像中,即使存在大量形变误差,我们也能实现稳健的统计分析;在这种情况下,标准分析程序的性能明显不足,无法识别真实信号。
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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来源期刊
CiteScore
1.50
自引率
33.30%
发文量
0
期刊介绍: The South African Archaeological Bulletin - the longest established archaeological journal in sub-Saharan Africa, it contains the cutting edge of research on southern Africa. Appearing twice a year, it includes current research, notes by readers and book reviews.
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