Yu Siyi, Liu Liying, Chen Ling, Su Menghua, Shen Zhifu, Yang Lu, Li Aijia, Wei Wei, Guo Xiaoli, Hong Xiaojuan, Yang Jie
Department of Acupuncture and Tuina, Chengdu University of Traditional Chinese Medicine, No. 37 Shierqiao Road, Chengdu, China.
Acupuncture and Brain Science Research Center, Chengdu University of Traditional Chinese Medicine, Chengdu, China.
Brain Imaging Behav. 2022 Dec;16(6):2517-2525. doi: 10.1007/s11682-022-00707-9. Epub 2022 Oct 18.
The amygdala plays a crucial role in the central pathogenesis mechanism of primary dysmenorrhea (PDM). However, the detailed pain modulation principles of the amygdala in PDM remain unclear. Here, we applied the Granger causality analysis (GCA) to investigate the directional effective connectivity (EC) alterations in the amygdala network of PDM patients.
Thirty-seven patients with PDM and 38 healthy controls were enrolled in this study and underwent resting-state functional magnetic resonance imaging scans during the pain-free stage. GCA was employed to explore the amygdala-based EC network alteration in PDM. A multivariate pattern analysis (MVPA)-based machine learning approach was used to explore whether the altered amygdala EC could serve as an fMRI-based marker for classifying PDM and HC participants.
Compared to the healthy control group, patients with PDM showed significantly decreased EC from the amygdala to the right superior frontal gyrus (SFG), right superior parietal lobe/middle occipital gyrus, and left middle cingulate cortex, whereas increased EC was found from the amygdala to the bilateral medial orbitofrontal cortex. In addition, increased EC was found from the bilateral SFG to the amygdala, and decreased EC was found from the medial orbitofrontal cortex, caudate nucleus to the amygdala. The increased EC from the right SFG to the amygdala was associated with a plasma prostaglandin E2 level in PDM. The MVPA based on an altered amygdala EC pattern yielded a total accuracy of 86.84% for classifying the patients with PDM and HC.
Our study is the first to combine MVPA and EC to explore brain function alteration in PDM. The results could advance understanding of the neural theory of PDM in specifying the pain-free period.
杏仁核在原发性痛经(PDM)的中枢发病机制中起关键作用。然而,杏仁核在PDM中详细的疼痛调节机制仍不清楚。在此,我们应用格兰杰因果分析(GCA)来研究PDM患者杏仁核网络中的定向有效连接(EC)改变。
本研究纳入了37例PDM患者和38名健康对照者,并在无痛期进行静息态功能磁共振成像扫描。采用GCA探索PDM中基于杏仁核的EC网络改变。基于多变量模式分析(MVPA)的机器学习方法用于探索改变的杏仁核EC是否可作为基于功能磁共振成像的标记物来区分PDM患者和健康对照者。
与健康对照组相比,PDM患者从杏仁核到右侧额上回(SFG)、右侧顶上叶/枕中回以及左侧扣带中部皮质的EC显著降低,而从杏仁核到双侧内侧眶额皮质的EC增加。此外,从双侧SFG到杏仁核的EC增加,从内侧眶额皮质、尾状核到杏仁核的EC减少。右侧SFG到杏仁核的EC增加与PDM患者血浆前列腺素E2水平相关。基于改变的杏仁核EC模式的MVPA对PDM患者和健康对照者进行分类的总准确率为86.84%。
我们的研究首次将MVPA和EC结合起来探索PDM中的脑功能改变。这些结果可能会推进对PDM神经理论在确定无痛期方面的理解。