Chen Pan, Wang Junjing, Tang Guixian, Chen Guanmao, Xiao Shu, Guo Zixuan, Qi Zhangzhang, Wang Jurong, Wang Ying
Medical Imaging Center, First Affiliated Hospital of Jinan University, Guangzhou 510630, China; Institute of Molecular and Functional Imaging, Jinan University, Guangzhou 510630, China.
Department of Applied Psychology, Guangdong University of Foreign Studies, Guangzhou 510006, China.
J Affect Disord. 2024 Jun 1;354:743-751. doi: 10.1016/j.jad.2024.03.034. Epub 2024 Mar 21.
Researchers have endeavored to ascertain the network dysfunction associated with behavioral addiction (BA) through the utilization of resting-state functional connectivity (rsFC). Nevertheless, the identification of aberrant patterns within large-scale networks pertaining to BA has proven to be challenging.
Whole-brain seed-based rsFC studies comparing subjects with BA and healthy controls (HC) were collected from multiple databases. Multilevel kernel density analysis was employed to ascertain brain networks in which BA was linked to hyper-connectivity or hypo-connectivity with each prior network.
Fifty-six seed-based rsFC publications (1755 individuals with BA and 1828 HC) were included in the meta-analysis. The present study indicate that individuals with BAs exhibit (1) hypo-connectivity within the fronto-parietal network (FN) and hypo- and hyper-connectivity within the ventral attention network (VAN); (2) hypo-connectivity between the FN and regions of the VAN, hypo-connectivity between the VAN and regions of the FN and default mode network (DMN), hyper-connectivity between the DMN and regions of the FN; (3) hypo-connectivity between the reward system and regions of the sensorimotor network (SS), DMN and VAN; (4) hypo-connectivity between the FN and regions of the SS, hyper-connectivity between the VAN and regions of the SS.
These findings provide impetus for a conceptual framework positing a model of BA characterized by disconnected functional coordination among large-scale networks.
研究人员一直致力于通过静息态功能连接(rsFC)来确定与行为成瘾(BA)相关的网络功能障碍。然而,在与BA相关的大规模网络中识别异常模式已被证明具有挑战性。
从多个数据库收集了基于全脑种子点的rsFC研究,比较了患有BA的受试者和健康对照(HC)。采用多级核密度分析来确定BA与每个先前网络的超连接或低连接相关的脑网络。
56篇基于种子点的rsFC出版物(1755名患有BA的个体和1828名HC)被纳入荟萃分析。本研究表明,患有BA的个体表现出:(1)额顶网络(FN)内的低连接以及腹侧注意网络(VAN)内的低连接和高连接;(2)FN与VAN区域之间的低连接、VAN与FN和默认模式网络(DMN)区域之间的低连接、DMN与FN区域之间的高连接;(3)奖励系统与感觉运动网络(SS)、DMN和VAN区域之间的低连接;(4)FN与SS区域之间的低连接、VAN与SS区域之间的高连接。
这些发现为一个概念框架提供了动力,该框架提出了一种以大规模网络之间功能协调断开为特征的BA模型。