NUS Graduate School for Integrative Sciences and Engineering, National University of Singapore, Singapore, Singapore.
Neuroimage. 2010 Aug 1;52(1):131-41. doi: 10.1016/j.neuroimage.2010.03.085. Epub 2010 Apr 8.
Cortical surface mapping has been widely used to compensate for individual variability of cortical shape and topology in anatomical and functional studies. While many surface mapping methods were proposed based on landmarks, curves, spherical or native cortical coordinates, few studies have extensively and quantitatively evaluated surface mapping methods across different methodologies. In this study we compared five cortical surface mapping algorithms, including large deformation diffeomorphic metric mapping (LDDMM) for curves (LDDMM-curve), for surfaces (LDDMM-surface), multi-manifold LDDMM (MM-LDDMM), FreeSurfer, and CARET, using 40 MRI scans and 10 simulated datasets. We computed curve variation errors and surface alignment consistency for assessing the mapping accuracy of local cortical features (e.g., gyral/sulcal curves and sulcal regions) and the curvature correlation for measuring the mapping accuracy in terms of overall cortical shape. In addition, the simulated datasets facilitated the investigation of mapping error distribution over the cortical surface when the MM-LDDMM, FreeSurfer, and CARET mapping algorithms were applied. Our results revealed that the LDDMM-curve, MM-LDDMM, and CARET approaches best aligned the local curve features with their own curves. The MM-LDDMM approach was also found to be the best in aligning the local regions and cortical folding patterns (e.g., curvature) as compared to the other mapping approaches. The simulation experiment showed that the MM-LDDMM mapping yielded less local and global deformation errors than the CARET and FreeSurfer mappings.
皮质表面映射已广泛用于补偿皮质形状和拓扑结构在解剖学和功能研究中的个体变异性。虽然许多表面映射方法是基于地标、曲线、球形或原生皮质坐标提出的,但很少有研究广泛且定量地评估了不同方法学中的表面映射方法。在这项研究中,我们比较了五种皮质表面映射算法,包括基于曲线的大变形仿射度量映射(LDDMM)(LDDMM-curve)、基于曲面的 LDDMM(LDDMM-surface)、多流形 LDDMM(MM-LDDMM)、FreeSurfer 和 CARET,使用 40 个 MRI 扫描和 10 个模拟数据集。我们计算了曲线变化误差和曲面配准一致性,以评估局部皮质特征(如脑回/脑沟曲线和脑沟区域)的映射精度,以及曲率相关性,以衡量整体皮质形状的映射精度。此外,模拟数据集有助于研究当 MM-LDDMM、FreeSurfer 和 CARET 映射算法应用于皮质表面时的映射误差分布。我们的结果表明,LDDMM-curve、MM-LDDMM 和 CARET 方法最能与自身曲线对齐局部曲线特征。与其他映射方法相比,MM-LDDMM 方法还被发现最能对齐局部区域和皮质折叠模式(例如曲率)。模拟实验表明,与 CARET 和 FreeSurfer 映射相比,MM-LDDMM 映射产生的局部和全局变形误差更小。