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Attention-deficit/hyperactivity disorder (ADHD) is increasingly being diagnosed in adults, but the neural mechanisms underlying its distinct clinical symptoms (hyperactivity and inattention) remain poorly understood. Here, we used a nested-spectral partition approach to study resting-state brain networks for ADHD patients and healthy adults and adopted hierarchical segregation and integration to predict clinical symptoms. Adult ADHD is typically characterized by an overintegrated interaction within default mode network. Limbic system is dominantly affected by ADHD and has an earlier aging functional pattern, but salient attention system is preferably affected by age and shows an opposite aging trajectory. More importantly, these two systems selectively and robustly predict distinct ADHD symptoms. Earlier-aging limbic system prefers to predict hyperactivity, and age-affected salient attention system better predicts inattention. Our findings provide a more comprehensive and deeper understanding of the neural basis of distinct ADHD symptoms and could contribute to the development of more objective clinical diagnoses.
Adolescents with Attention-deficit/hyperactivity disorder (ADHD) have difficulty processing speech with background noise due to reduced inhibitory control and working memory capacity (WMC). This paper presents a pilot study of an audiovisual Speech-I
A great improvement to the insight on brain function that we can get from fMRI data can come from effective connectivity analysis, in which the flow of information between even remote brain regions is inferred by the parameters of a predictive dynami
What makes a network complex, in addition to its size, is the interconnected interactions between elements, disruption of which inevitably results in dysfunction. Likewise, the brain networks complexity arises from interactions beyond pair connection
Diverse cognitive processes set different demands on locally segregated and globally integrated brain activity. However, it remains unclear how resting brains configure their functional organization to balance the demands on network segregation and i
Modularity plays an important role in brain networks architecture and influences its dynamics and the ability to integrate and segregate different modules of cerebral regions. Alterations in community structure are associated with several clinical di