War Related Illness and Injury Study Center (WRIISC), VA Palo Alto Health Care System, Palo Alto, California, United States of America.
Psychiatry and Behavioral Sciences, Stanford University, Stanford, California, United States of America.
PLoS One. 2020 Feb 18;15(2):e0213952. doi: 10.1371/journal.pone.0213952. eCollection 2020.
Evaluation of brainstem pathways with diffusion tensor imaging (DTI) and tractography may provide insights into pathophysiologies associated with dysfunction of key brainstem circuits. However, identification of these tracts has been elusive, with relatively few in vivo human studies to date. In this paper we proposed an automated approach for reconstructing nine brainstem fiber trajectories of pathways that might be involved in pain modulation. We first performed native-space manual tractography of these fiber tracts in a small normative cohort of participants and confirmed the anatomical precision of the results using existing anatomical literature. Second, region-of-interest pairs were manually defined at each extracted fiber's termini and nonlinearly warped to a standard anatomical brain template to create an atlas of the region-of-interest pairs. The resulting atlas was then transformed non-linearly into the native space of 17 veteran patients' brains for automated brainstem tractography. Lastly, we assessed the relationships between the integrity levels of the obtained fiber bundles and pain severity levels. Fractional anisotropy (FA) measures derived using automated tractography reflected the respective tracts' FA levels obtained via manual tractography. A significant inverse relationship between FA and pain levels was detected within the automatically derived dorsal and medial longitudinal fasciculi of the brainstem. This study demonstrates the feasibility of DTI in exploring brainstem circuitries involved in pain processing. In this context, the described automated approach is a viable alternative to the time-consuming manual tractography. The physiological and functional relevance of the measures derived from automated tractography is evidenced by their relationships with individual pain severities.
利用弥散张量成像(DTI)和束流追踪技术评估脑干通路,可能有助于深入了解与关键脑干回路功能障碍相关的病理生理学。然而,到目前为止,这些束流的识别仍然具有挑战性,仅有相对较少的体内人类研究。在本文中,我们提出了一种自动重建九条可能参与疼痛调节的脑干纤维束的方法。我们首先在一个小的正常参与者队列中进行了这些纤维束的原始空间手动束流追踪,并使用现有的解剖学文献证实了结果的解剖精度。其次,在每个提取纤维的末端手动定义感兴趣区对,并将其非线性扭曲到标准解剖大脑模板,以创建感兴趣区对图谱。然后,将生成的图谱非线性地转换到 17 名退伍军人大脑的原始空间中,以进行自动脑干束流追踪。最后,我们评估了获得的纤维束的完整性水平与疼痛严重程度水平之间的关系。使用自动束流追踪获得的各向异性分数(FA)测量值反映了通过手动束流追踪获得的相应束流的 FA 水平。在自动衍生的脑干背侧和内侧纵束中检测到 FA 与疼痛水平之间存在显著的负相关关系。这项研究证明了 DTI 用于探索参与疼痛处理的脑干回路的可行性。在这种情况下,所描述的自动方法是耗时的手动束流追踪的可行替代方法。从自动束流追踪中获得的测量值与个体疼痛严重程度之间的关系证明了其生理和功能相关性。