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颅骨剥离和射频偏差校正对基于体素的形态测量学灰质分割的影响。

The impact of skull-stripping and radio-frequency bias correction on grey-matter segmentation for voxel-based morphometry.

作者信息

Acosta-Cabronero Julio, Williams Guy B, Pereira João M S, Pengas George, Nestor Peter J

机构信息

Wolfson Brain Imaging Centre, Department of Clinical Neurosciences, University of Cambridge School of Clinical Medicine, Addenbrooke's Hospital, Cambridge, UK.

出版信息

Neuroimage. 2008 Feb 15;39(4):1654-65. doi: 10.1016/j.neuroimage.2007.10.051. Epub 2007 Nov 12.

DOI:10.1016/j.neuroimage.2007.10.051
PMID:18065243
Abstract

This study evaluates the application of (i) skull-stripping methods (hybrid watershed algorithm (HWA), brain surface extractor (BSE) and brain-extraction tool (BET2)) and (ii) bias correction algorithms (nonparametric nonuniform intensity normalisation (N3), bias field corrector (BFC) and FMRIB's automated segmentation tool (FAST)) as pre-processing pipelines for the technique of voxel-based morphometry (VBM) using statistical parametric mapping v.5 (SPM5). The pipelines were evaluated using a BrainWeb phantom, and those that performed consistently were further assessed using artificial-lesion masks applied to 10 healthy controls compared to the original unlesioned scans, and finally, 20 Alzheimer's disease (AD) patients versus 23 controls. In each case, pipelines were compared to each other and to those from default SPM5 methodology. The BET2+N3 pipeline was found to produce the least miswarping to template induced by real abnormalities, and performed consistently better than the other methods for the above experiments. Occasionally, the clusters of significant differences located close to the boundary were dragged out of the glass-brain projections -- this could be corrected by adding background noise to low-probability voxels in the grey matter segments. This method was confirmed in a one-dimensional simulation and was preferable to threshold and explicit (simple) masking which excluded true abnormalities.

摘要

本研究评估了以下内容的应用

(i) 颅骨剥离方法(混合分水岭算法 (HWA)、脑表面提取器 (BSE) 和脑提取工具 (BET2))以及 (ii) 偏差校正算法(非参数非均匀强度归一化 (N3)、偏差场校正器 (BFC) 和FMRIB的自动分割工具 (FAST)),作为使用统计参数映射v.5 (SPM5) 的基于体素的形态测量 (VBM) 技术的预处理流程。使用BrainWeb体模对这些流程进行评估,对于表现一致的流程,进一步使用应用于10名健康对照的人工病变掩码与原始未病变扫描进行比较评估,最后,对20名阿尔茨海默病 (AD) 患者与23名对照进行评估。在每种情况下,将各流程相互比较,并与默认SPM5方法的流程进行比较。发现BET2+N3流程在真实异常引起的模板扭曲方面最小,并且在上述实验中始终比其他方法表现更好。偶尔,位于边界附近的显著差异簇会从脑图谱投影中拖出——这可以通过向灰质段中的低概率体素添加背景噪声来校正。该方法在一维模拟中得到证实,并且优于排除真实异常的阈值和显式(简单)掩码。

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