Department of Biostatistics, Johns Hopkins School of Public Health, 615 N. Wolfe St., Baltimore, MD 21205, USA.
Neuroimage. 2011 Jul 15;57(2):431-9. doi: 10.1016/j.neuroimage.2011.04.044. Epub 2011 Apr 30.
Diffusion tensor imaging (DTI) enables noninvasive parcellation of cerebral white matter into its component fiber bundles or tracts. These tracts often subserve specific functions, and damage to the tracts can therefore result in characteristic forms of disability. Attempts to quantify the extent of tract-specific damage have been limited in part by substantial spatial variation of imaging properties from one end of a tract to the other, variation that can be compounded by the effects of disease. Here, we develop a "penalized functional regression" procedure to analyze spatially normalized tract profiles, which powerfully characterize such spatial variation. The central idea is to identify and emphasize portions of a tract that are more relevant to a clinical outcome score, such as case status or degree of disability. The procedure also yields a "tract abnormality score" for each tract and MRI index studied. Importantly, the weighting function used in this procedure is constrained to be smooth, and the statistical associations are estimated using generalized linear models. We test the method on data from a cross-sectional MRI and functional study of 115 multiple-sclerosis cases and 42 healthy volunteers, considering a range of quantitative MRI indices, white-matter tracts, and clinical outcome scores, and using training and testing sets to validate the results. We show that attention to spatial variation yields up to 15% (mean across all tracts and MRI indices: 6.4%) improvement in the ability to discriminate multiple sclerosis cases from healthy volunteers. Our results confirm that comprehensive analysis of white-matter tract-specific imaging data improves with knowledge and characterization of the normal spatial variation.
弥散张量成像(DTI)可实现大脑白质的无创分割,将其划分为各个纤维束或束流。这些束流通常具有特定的功能,因此束流损伤可导致特定形式的残疾。对束流特异性损伤程度进行量化的尝试在一定程度上受到以下因素的限制:从束流的一端到另一端,成像特性存在大量的空间变化,而这种变化可能会因疾病的影响而更加复杂。在这里,我们开发了一种“惩罚性功能回归”程序来分析空间归一化的束流谱,该谱可有力地描述这种空间变化。其核心思想是识别和强调与临床结果评分(如病例状态或残疾程度)更相关的束流部分。该程序还为每条研究的束流和 MRI 指标生成一个“束流异常评分”。重要的是,该程序中使用的加权函数被约束为平滑,并且使用广义线性模型来估计统计关联。我们在 115 例多发性硬化症病例和 42 名健康志愿者的横断面 MRI 和功能研究数据上测试了该方法,考虑了一系列定量 MRI 指标、白质束流和临床结果评分,并使用训练和测试集验证结果。我们表明,对空间变化的关注可将区分多发性硬化症病例和健康志愿者的能力提高多达 15%(所有束流和 MRI 指标的平均值:6.4%)。我们的结果证实,对特定于白质束流的成像数据的全面分析可以通过对正常空间变化的了解和描述来得到改善。