Gui Shao-Gao, Chen Ri-Bo, Zhong Yu-Lin, Huang Xin
Department of Ophthalmology, Jiangxi Provincial People's Hospital Affiliated to Nanchang University, Nanchang, 330006, Jiangxi, People's Republic of China.
Department of Radiology, Jiangxi Provincial People's Hospital Affiliated to Nanchang University, Nanchang, 330006, Jiangxi, People's Republic of China.
J Pain Res. 2021 Oct 27;14:3377-3386. doi: 10.2147/JPR.S332224. eCollection 2021.
Previous neuroimaging studies demonstrated that patients with primary dysmenorrhea (PD) exhibited dysfunctional resting-state brain activity. However, alterations of dynamic brain activity in PD patients have not been fully characterized.
Our study aimed to assess the effect of long-term menstrual pain on changes in static and dynamic neural activity in PD patients.
Twenty-eight PD patients and 28 healthy controls (HCs) underwent resting-state magnetic resonance imaging scans. The amplitude of low-frequency fluctuations (ALFF) and dynamic ALFF was used as classification features in a machine learning approach involving a support vector machine (SVM) classifier.
Compared with the HC group, PD patients showed significantly increased ALFF values in the right cerebellum_crus2, right rectus, left supplementary motor area, right superior frontal gyrus, right supplementary motor area, and left superior frontal medial gyrus. Additionally, PD patients showed significantly decreased ALFF values in the right middle temporal gyrus and left thalamus. PD patients also showed significantly increased dALFF values in the right fusiform, Vermis_10, right middle temporal gyrus, right putamen, right insula, left thalamus, right precentral gyrus, and right postcentral gyrus. Based on ALFF and dALFF values, the SVM classifier achieved respective overall accuracies of 96.36% and 85.45% and respective areas under the curve of 1.0 and 0.95.
PD patients demonstrated abnormal static and dynamic brain activities that involved the default mode network, sensorimotor network, and pain-related subcortical nuclei. Moreover, ALFF and dALFF may offer sensitive biomarkers for distinguishing patients with PD from HCs.
先前的神经影像学研究表明,原发性痛经(PD)患者静息态脑活动存在功能障碍。然而,PD患者动态脑活动的改变尚未得到充分表征。
我们的研究旨在评估长期经痛对PD患者静态和动态神经活动变化的影响。
28例PD患者和28例健康对照(HCs)接受静息态磁共振成像扫描。低频波动幅度(ALFF)和动态ALFF被用作机器学习方法中支持向量机(SVM)分类器的分类特征。
与HC组相比,PD患者右侧小脑小叶2、右侧直肌、左侧辅助运动区、右侧额上回、右侧辅助运动区和左侧额上内侧回的ALFF值显著增加。此外,PD患者右侧颞中回和左侧丘脑的ALFF值显著降低。PD患者右侧梭状回、蚓部10、右侧颞中回、右侧壳核、右侧岛叶、左侧丘脑、右侧中央前回和右侧中央后回的dALFF值也显著增加。基于ALFF和dALFF值,SVM分类器的总体准确率分别达到96.36%和85.45%,曲线下面积分别为1.0和0.95。
PD患者表现出异常的静态和动态脑活动,涉及默认模式网络、感觉运动网络和与疼痛相关的皮质下核团。此外,ALFF和dALFF可能为区分PD患者和HCs提供敏感的生物标志物。