Aberrant Intrinsic Neural Networks Strength in Individuals with "Smartphone Addiction": An MRI Data Fusion Study

Schmitgen Mike Michael, Wolf Nadine Donata, Mundinger Christina, Horvath Juliane, Sambataro Fabio, Hirjak Dusan, Kubera Katharina Maria, Koenig Julian, Wolf Robert Christian
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引用次数: 1

Abstract

Objectives: Excessive smartphone use, sometimes also referred to as “smartphone addiction”, has increasingly attracted neuroscientific interest due to its similarities with other behavioral addictions, particularly internet gaming disorder. Little is known so far about the neural mechanisms underlying smartphone addiction. Here, we explored interrelationships between brain structure and function to specify neurobiological correlates of smartphone addiction on a neural system level. Methods: Gray matter volume and intrinsic neural activity was investigated in individuals with smartphone addiction (n = 20) compared to controls (n = 24), using multimodal magnetic resonance imaging and multivariate data fusion techniques, i.e., parallel Independent Component Analysis. Results: The joint analysis of both data modalities explored shared information between gray matter volume and intrinsic neural activity which were not revealed by previous modality-specific approaches. Two amplitude of low frequency fluctuations-based independent neural systems significantly differed between individuals with smartphone addiction and controls. A medial/dorsolateral prefrontal system exhibited lower functional network strength lower in smartphone addiction vs. controls, whereas the opposite pattern was detected in a parietal cortical/cerebellar system. Neural network strength was significantly related to duration of smartphone use and sleep difficulties. Conclusions: We show modality-specific associations of the brain’s resting-state activity with distinct and shared smartphone addiction symptom dimensions. In particular, the data suggest contributions of aberrant prefrontal and parietal neural network strength as a possible signature of deficient executive control in smartphone addiction.
“智能手机成瘾”个体异常的内在神经网络强度:MRI数据融合研究
过度使用智能手机,有时也被称为“智能手机成瘾”,由于其与其他行为成瘾(尤其是网络游戏障碍)的相似性,越来越引起神经科学的兴趣。到目前为止,人们对智能手机成瘾背后的神经机制知之甚少。在这里,我们探索了大脑结构和功能之间的相互关系,以在神经系统水平上指定智能手机成瘾的神经生物学相关性。方法:采用多模态磁共振成像和多元数据融合技术,即并行独立成分分析,研究了智能手机成瘾个体(n = 20)与对照组(n = 24)的灰质体积和内在神经活动。结果:两种数据模式的联合分析探索了灰质体积和内在神经活动之间的共享信息,这些信息是以前的特定模式方法所没有揭示的。两种基于低频波动的独立神经系统在智能手机成瘾者和控制组之间存在显著差异。智能手机成瘾者的内侧/背外侧前额叶系统表现出较低的功能网络强度,而顶叶皮质/小脑系统则相反。神经网络强度与智能手机使用时间和睡眠困难显著相关。结论:我们展示了大脑静息状态活动与不同的共享智能手机成瘾症状维度之间的模式特异性关联。特别是,这些数据表明,异常的前额叶和顶叶神经网络强度可能是智能手机成瘾中执行控制缺陷的一个标志。
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