Jiahui Wu , Jianbo Yang , Zhen Yuan , Jiang Zhang , Zhiwei Zhang , Tianwei Qin , Xiaoxuan Li , Hanbin Deng , Liang Gong
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引用次数: 0
Abstract
Insomnia is the second most prevalent psychiatric disorder worldwide, but the understanding of the pathophysiology of insomnia remains fragmented. In this study, we calculated the connectome gradient in 50 chronic insomnia disorder (CID) patients and 38 healthy controls (HC) to assess changes due to insomnia and utilized these gradients in a connectome-based predictive modeling (CPM) to predict clinical symptoms associated with insomnia. The results suggested that insomnia led to significant alterations in the functional gradients of some brain areas. Specifically, the gradient scores in the middle frontal gyrus, superior anterior cingulate gyrus, and right nucleus accumbens were significantly higher in the CID patients than in the HC group, whereas the scores in the middle occipital gyrus, right fusiform gyrus, and right postcentral gyrus were significantly lower than in the HC group. Further correlation analysis revealed that the right middle frontal gyrus is positively correlated with the self-rating anxiety scale (). Additionally, the prediction model built with functional gradients could well predict the sleep quality (), anxiety (), and depression () levels of insomnia patients. This offers an objective depiction of the clinical diagnosis of insomnia, yielding a beneficial impact on the identification of effective biomarkers and the comprehension of insomnia.
失眠症是全球第二大精神疾病,但人们对失眠症病理生理学的了解仍然很片面。在这项研究中,我们计算了50名慢性失眠症(CID)患者和38名健康对照组(HC)的连接组梯度,以评估失眠引起的变化,并将这些梯度用于基于连接组的预测建模(CPM),以预测与失眠相关的临床症状。结果表明,失眠会导致某些脑区的功能梯度发生显著变化。具体来说,CID 患者额叶中回、扣带回前上段和右侧伏隔核的梯度得分明显高于 HC 组,而枕叶中回、右侧纺锤形回和右侧中央后回的得分则明显低于 HC 组。进一步的相关分析表明,右额叶中回与焦虑自评量表呈正相关(r=0.3702)。此外,利用功能梯度建立的预测模型可以很好地预测失眠患者的睡眠质量(r=0.5858)、焦虑(r=0.6150)和抑郁(r=0.4022)水平。这为失眠症的临床诊断提供了客观描述,对识别有效的生物标志物和理解失眠症产生了有益影响。
期刊介绍:
Progress in Neuro-Psychopharmacology & Biological Psychiatry is an international and multidisciplinary journal which aims to ensure the rapid publication of authoritative reviews and research papers dealing with experimental and clinical aspects of neuro-psychopharmacology and biological psychiatry. Issues of the journal are regularly devoted wholly in or in part to a topical subject.
Progress in Neuro-Psychopharmacology & Biological Psychiatry does not publish work on the actions of biological extracts unless the pharmacological active molecular substrate and/or specific receptor binding properties of the extract compounds are elucidated.