Connectome-based predictive modeling of Internet addiction symptomatology

Soc Cogn Affect Neurosci. 2024 Feb 16;19(1):nsae007. doi: 10.1093/scan/nsae007.

Abstract

Internet addiction symptomatology (IAS) is characterized by persistent and involuntary patterns of compulsive Internet use, leading to significant impairments in both physical and mental well-being. Here, a connectome-based predictive modeling approach was applied to decode IAS from whole-brain resting-state functional connectivity in healthy population. The findings showed that IAS could be predicted by the functional connectivity between prefrontal cortex with the cerebellum and limbic lobe and connections of the occipital lobe with the limbic lobe and insula lobe. The identified edges associated with IAS exhibit generalizability in predicting IAS within an independent sample. Furthermore, we found that the unique contributing network, which predicted IAS in contrast to the prediction networks of alcohol use disorder symptomatology (the range of symptoms and behaviors associated with alcohol use disorder), prominently comprised connections involving the occipital lobe and other lobes. The current data-driven approach provides the first evidence of the predictive brain features of IAS based on the organization of intrinsic brain networks, thus advancing our understanding of the neurobiological basis of Internet addiction disorder (IAD) susceptibility, and may have implications for the timely intervention of people potentially at risk of IAD.

Keywords: Internet addiction symptomatology; connectome-based predictive modeling; resting-state functional connectivity.

MeSH terms

  • Alcoholism*
  • Brain / diagnostic imaging
  • Connectome*
  • Humans
  • Internet Addiction Disorder
  • Magnetic Resonance Imaging