Brain Mapping Lab, Department of Biomedical, Dental Sciences and Morphological and Functional Images, University of Messina, Messina, Italy.
IRCCS Centro Neurolesi "Bonino Pulejo", Messina, Italy.
Neuroimage. 2021 Nov;243:118519. doi: 10.1016/j.neuroimage.2021.118519. Epub 2021 Aug 28.
The Ventral intermediate nucleus (Vim) of thalamus is the most targeted structure for the treatment of drug-refractory tremors. Since methodological differences across existing studies are remarkable and no gold-standard pipeline is available, in this study, we tested different parcellation pipelines for tractography-derived putative Vim identification. Thalamic parcellation was performed on a high quality, multi-shell dataset and a downsampled, clinical-like dataset using two different diffusion signal modeling techniques and two different voxel classification criteria, thus implementing a total of four parcellation pipelines. The most reliable pipeline in terms of inter-subject variability has been picked and parcels putatively corresponding to motor thalamic nuclei have been selected by calculating similarity with a histology-based mask of Vim. Then, spatial relations with optimal stimulation points for the treatment of essential tremor have been quantified. Finally, effect of data quality and parcellation pipelines on a volumetric index of connectivity clusters has been assessed. We found that the pipeline characterized by higher-order signal modeling and threshold-based voxel classification criteria was the most reliable in terms of inter-subject variability regardless data quality. The maps putatively corresponding to Vim were those derived by precentral and dentate nucleus-thalamic connectivity. However, tractography-derived functional targets showed remarkable differences in shape and sizes when compared to a ground truth model based on histochemical staining on seriate sections of human brain. Thalamic voxels connected to contralateral dentate nucleus resulted to be the closest to literature-derived stimulation points for essential tremor but at the same time showing the most remarkable inter-subject variability. Finally, the volume of connectivity parcels resulted to be significantly influenced by data quality and parcellation pipelines. Hence, caution is warranted when performing thalamic connectivity-based segmentation for stereotactic targeting.
丘脑腹中间核(Vim)是治疗药物难治性震颤的最靶向结构。由于现有研究之间存在显著的方法学差异,并且没有黄金标准的流水线,因此在这项研究中,我们测试了不同的分割流水线,以用于基于轨迹的推定 Vim 识别。使用两种不同的扩散信号建模技术和两种不同的体素分类标准,对高质量、多壳数据集和下采样的临床样数据集进行了丘脑分割,从而实现了总共四个分割流水线。根据受试者间变异性,选择了最可靠的流水线,并通过计算与基于组织学的 Vim 掩模的相似性,选择了推定对应于运动丘脑核的体素。然后,量化了与治疗原发性震颤的最佳刺激点的空间关系。最后,评估了数据质量和分割流水线对连通性聚类体积指标的影响。我们发现,无论数据质量如何,采用高阶信号建模和基于阈值的体素分类标准的流水线在受试者间变异性方面是最可靠的。与基于组织化学染色的人类大脑序列切片的地面真实模型相比,推定对应于 Vim 的图谱源自中央前回和齿状核-丘脑连接。然而,与基于组织化学染色的人类大脑序列切片的地面真实模型相比,与对侧齿状核连接的丘脑体素在形状和大小上与基于组织学染色的人类大脑序列切片的地面真实模型相比存在显著差异。连接到对侧齿状核的丘脑体素结果与文献中推导的原发性震颤刺激点最接近,但同时表现出最显著的受试者间变异性。最后,连通性体素的体积明显受到数据质量和分割流水线的影响。因此,在进行基于丘脑连通性的立体定向靶向分割时需要谨慎。