| Literature DB >> 35849250 |
Fali Li1,2,3, Lin Jiang2, Yuanyuan Liao2, Cunbo Li2, Qi Zhang1, Shu Zhang2, Yangsong Zhang2,4, Li Kang1, Rong Li1, Dezhong Yao1,2,3,5, Gang Yin6,7, Peng Xu1,2,7,3, Jing Dai8,9.
Abstract
The clinical therapy of schizophrenia (SCZ) replies on the corresponding accurate and reliable recognition. Although efforts have been paid, the diagnosis of SCZ is still roughly subjective, it is thus urgent to search for related objective physiological parameters. Motivated by the great potential of resting-state networks in underling the brain deficits among different SCZ groups, in this study, we then developed a multi-class feature extraction approach that could effectively extract the spatial network topology and facilitate the recognition of the SCZ, by combining a network structure based supervised learning with an ensemble co-decision strategy. The results demonstrated that the multi-class spatial pattern of the network (MSPN) features outperformed the other conventional electrophysiological features, such as relative power spectrums and network properties, and achieved the highest classification accuracy of 71.58% in the alpha band. These findings did validate that the resting-state MSPN is a promising tool for the clinical assessment of the SCZ.Entities:
Keywords: Functional connectivity; Multi-class spatial pattern of the network; Resting-state EEG; Schizophrenia
Mesh:
Year: 2022 PMID: 35849250 DOI: 10.1007/s10548-022-00907-y
Source DB: PubMed Journal: Brain Topogr ISSN: 0896-0267 Impact factor: 4.275