Aberrant resting‐state functional connectivity underlies cognitive and functional impairments in remitted patients with bipolar disorder

Bipolar disorder (BD) is commonly associated with cognitive impairments, that directly contribute to patients' functional disability. However, there is no effective treatment targeting cognition in BD. A key reason for the lack of pro‐cognitive interventions is the limited insight into the brain correlates of cognitive impairments in these patients. This is the first study investigating the resting‐state neural underpinnings of cognitive impairments in different neurocognitive subgroups of patients with BD.

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