Literature DB >> 36190539

A depression network caused by brain tumours.

Yanran Li1, Yong Jin2, Di Wu3, Lifang Zhang4.   

Abstract

To systematically analyse and discuss whether suppressive heterogeneous brain tumours (BTs) belong to a common brain network and provide a theoretical basis for identifying BT patients with a high risk of depression and select therapeutic targets for clinical treatment. The PubMed database was systematically searched to obtain relevant case reports, and lesion locations were manually traced to standardised brain templates according to ITK-SNAP descriptive literature. Resting-state functional magnetic resonance imaging data sets were collected from 1,000 healthy adults aged 18-35 years. Each lesion location or functional connectivity area of the lesion network. Connectivity analysis was performed in an MN152 space, and Fisher z-transformation was applied to normalise the distribution of each value in the functional connectivity correlation map, and T maps of each tumour location network were calculated with the T score of individual voxels. This T score indicates the statistical significance of voxelwise connectivity at each tumour location. The lesion networks were thresholded at T = 7, creating binarised maps of brain regions connecting tumour locations, overlaying network maps to identify tumour-sensitive hubs and also assessing specific hubs with other conditional controls. A total of 18 patients describing depression following focal BTs were included. Of these cases, it was reported that depression-related tumours were unevenly distributed in the brain: 89% (16/18) were positively correlated with the left striatum, and the peak of the left striatum lesion network continuously overlapped. The depression-related tumour location was consistent with the tumour suppressor network (89%). These results suggest that sensitive hubs are aligned with specific networks, and specific hubs are aligned with sensitive networks. Brain tumour-related depression differs from acute lesion-related depression and may be related to the mapping of tumours to depression-related brain networks. It can provide an observational basis for the neuroanatomical basis of BT-related depression and a theoretical basis for identifying patients with BTs at high risk of depression and their subsequent clinical diagnosis and treatment.
© 2022. The Author(s).

Entities:  

Keywords:  Brain network; Brain tumour; Depression; Lesion-network mapping

Year:  2022        PMID: 36190539     DOI: 10.1007/s00429-022-02573-z

Source DB:  PubMed          Journal:  Brain Struct Funct        ISSN: 1863-2653            Impact factor:   3.748


  33 in total

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2.  Toward patient-centered drug development in oncology.

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4.  Estimates of projection overlap and zones of convergence within frontal-striatal circuits.

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Review 8.  Natural history, predictors and outcomes of depression after stroke: systematic review and meta-analysis.

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9.  Imaging predictors of poststroke depression: methodological factors in voxel-based analysis.

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10.  A human memory circuit derived from brain lesions causing amnesia.

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Journal:  Nat Commun       Date:  2019-08-02       Impact factor: 14.919

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