Literature DB >> 33047425

Resting-state connectome-based support-vector-machine predictive modeling of internet gaming disorder.

Kun-Ru Song1,2, Marc N Potenza3,4,5, Xiao-Yi Fang6, Gao-Lang Gong1,2, Yuan-Wei Yao1,7,2, Zi-Liang Wang1,2, Lu Liu6,8, Shan-Shan Ma1,6,2, Cui-Cui Xia9, Jing Lan6, Lin-Yuan Deng10, Lu-Lu Wu1,2, Jin-Tao Zhang1,2.   

Abstract

Internet gaming disorder (IGD), a worldwide mental health issue, has been widely studied using neuroimaging techniques during the last decade. Although dysfunctions in resting-state functional connectivity have been reported in IGD, mapping relationships from abnormal connectivity patterns to behavioral measures have not been fully investigated. Connectome-based predictive modeling (CPM)-a recently developed machine-learning approach-has been used to examine potential neural mechanisms in addictions and other psychiatric disorders. To identify the resting-state connections associated with IGD, we modified the CPM approach by replacing its core learning algorithm with a support vector machine. Resting-state functional magnetic resonance imaging (fMRI) data were acquired in 72 individuals with IGD and 41 healthy comparison participants. The modified CPM was conducted with respect to classification and regression. A comparison of whole-brain and network-based analyses showed that the default-mode network (DMN) is the most informative network in predicting IGD both in classification (individual identification accuracy = 78.76%) and regression (correspondence between predicted and actual psychometric scale score: r = 0.44, P < 0.001). To facilitate the characterization of the aberrant resting-state activity in the DMN, the identified networks have been mapped into a three-subsystem division of the DMN. Results suggest that individual differences in DMN function at rest could advance our understanding of IGD and variability in disorder etiology and intervention outcomes.
© 2020 Society for the Study of Addiction.

Entities:  

Keywords:  connectome-based predictive modeling; default-mode network; internet gaming disorder; resting-state fMRI; support vector machine

Mesh:

Year:  2020        PMID: 33047425     DOI: 10.1111/adb.12969

Source DB:  PubMed          Journal:  Addict Biol        ISSN: 1355-6215            Impact factor:   4.280


  3 in total

1.  A brainnetome atlas-based methamphetamine dependence identification using neighborhood component analysis and machine learning on functional MRI data.

Authors:  Yanan Zhou; Jingsong Tang; Yunkai Sun; Winson Fu Zun Yang; Yuejiao Ma; Qiuxia Wu; Shubao Chen; Qianjin Wang; Yuzhu Hao; Yunfei Wang; Manyun Li; Tieqiao Liu; Yanhui Liao
Journal:  Front Cell Neurosci       Date:  2022-09-27       Impact factor: 6.147

2.  Identifying Internet Addiction and Evaluating the Efficacy of Treatment Based on Functional Connectivity Density: A Machine Learning Study.

Authors:  Yang Wang; Yun Qin; Hui Li; Dezhong Yao; Bo Sun; Jinnan Gong; Yu Dai; Chao Wen; Lingrui Zhang; Chenchen Zhang; Cheng Luo; Tianmin Zhu
Journal:  Front Neurosci       Date:  2021-06-17       Impact factor: 4.677

3.  MRI-Based Radiomic Machine-Learning Model May Accurately Distinguish between Subjects with Internet Gaming Disorder and Healthy Controls.

Authors:  Xu Han; Lei Wei; Yawen Sun; Ying Hu; Yao Wang; Weina Ding; Zhe Wang; Wenqing Jiang; He Wang; Yan Zhou
Journal:  Brain Sci       Date:  2021-12-29
  3 in total

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