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Huiqing Hu

Researcher at South China Normal University

Publications -  8
Citations -  203

Huiqing Hu is an academic researcher from South China Normal University. The author has contributed to research in topics: Medicine & Cognition. The author has an hindex of 4, co-authored 4 publications receiving 128 citations.

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Common and distinct abnormal frontal-limbic system structural and functional patterns in patients with major depression and bipolar disorder.

TL;DR: The results revealed that the MDD and BD patients were more similar than different in GMV and RSFC, which indicates that investigating the frontal-limbic system could be useful for understanding the underlying mechanisms of these two disorders.
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Disrupted rich club organization and structural brain connectome in unmedicated bipolar disorder.

TL;DR: The results may reflect the disrupted white matter topological organization in the whole-brain, and abnormal regional connectivity supporting cognitive and affective functioning in depressed BD, which, in part, be due to impaired rich club connectivity.
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Disruption of superficial white matter in the emotion regulation network in bipolar disorder.

TL;DR: Altered cortico-cortical connections proximal to the regions related to the emotion dysregulation of BD patients indicated that the SWM may serve as the brain's structural basis underlying the disrupted emotion regulation ofBD patients.
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Abnormal Effective Connectivity of the Anterior Forebrain Regions in Disorders of Consciousness

TL;DR: A key role of the thalamo-basal ganglia-cortical loop in DOCs is highlighted and supports the anterior forebrain mesocircuit hypothesis and could be potentially used to assess the consciousness level.
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Multimodal MRI reveals alterations of the anterior insula and posterior cingulate cortex in bipolar II disorders: A surface-based approach

TL;DR: In this article , the authors applied data-driven approaches to analyze multimodal MRI data and detected brain areas with significant group differences in cortical thickness (CT), amplitude of low frequency fluctuations (ALFF), and fractional anisotropy (FA) of the superficial white matter.