Xu Ziyang, Li Lie, Liu Ruobing, Azzam Mohamed, Wan Shibiao, Wang Jieqiong
Department of Neurological Sciences, College of Medicine, University of Nebraska Medical Center, NE, 68198, USA.
Computer Science and Engineering Department, Faculty of Electronic Engineering, Menoufia University, Menouf, 32952, Egypt.
bioRxiv. 2024 Nov 14:2024.11.12.623073. doi: 10.1101/2024.11.12.623073.
Cocaine use disorder (CUD) disrupts functional connectivity within key brain networks, specifically the default mode network (DMN), salience network (SN), and central executive network (CEN). While the triple network model has been proposed to explain various psychiatric disorders, its applicability to CUD requires further exploration. In the present study, we built machine learning classifiers based on different combinations of DMN/SN/CEN to distinguish cocaine-use disorder (CUD) subjects from healthy control (HC) subjects. Among them, the combination of the SN and the CEN results in a remarkably high accuracy of 73.4% (sensitivity/specificity: 69.6%/78.6%, AUC: 0.78), outperforming the model based on the full triple network. This supports the hypothesis that during the binge/intoxication stage of addiction, the SN and the CEN play a more critical role than the DMN, consistent with the Addictions Neuroclinical Assessment (ANA) framework. Functional connectivity analysis revealed decreased connectivity within the DMN and the SN and increased connectivity within the CEN in CUD patients, suggesting that alterations in these networks could serve as biomarkers for addiction severity.
可卡因使用障碍(CUD)会破坏关键脑网络内的功能连接,特别是默认模式网络(DMN)、突显网络(SN)和中央执行网络(CEN)。虽然已经提出三重网络模型来解释各种精神疾病,但其对CUD的适用性仍需进一步探索。在本研究中,我们基于DMN/SN/CEN的不同组合构建机器学习分类器,以区分可卡因使用障碍(CUD)受试者和健康对照(HC)受试者。其中,SN和CEN的组合产生了高达73.4%的显著准确率(敏感性/特异性:69.6%/78.6%,AUC:0.78),优于基于完整三重网络的模型。这支持了以下假设:在成瘾的狂饮/中毒阶段,SN和CEN比DMN发挥更关键的作用,这与成瘾神经临床评估(ANA)框架一致。功能连接分析显示,CUD患者的DMN和SN内连接性降低,CEN内连接性增加,这表明这些网络的改变可能作为成瘾严重程度的生物标志物。