Literature DB >> 35869385

Estimating high-order brain functional networks by correlation-preserving embedding.

Hui Su1, Limei Zhang1, Lishan Qiao2, Mingxia Liu3.   

Abstract

Brain functional network (FN) has emerged as a potential tool for identifying mental and neurological diseases. Traditional FN estimation methods such as Pearson's correlation (PC) and sparse representation (SR), despite their popularity, can only model low-order relationships between brain regions (i.e., nodes of FN), thus failing to capture more complex interaction in the brain. Recently, researchers proposed to estimate high-order FN (HoFN) and successfully used them in the early diagnosis of neurological diseases. In practice, however, such HoFN is constructed by directly considering the columns (or rows) of the adjacency matrix of low-order FN (LoFN) as node feature vectors that may contain some redundant or noisy information. In addition, it is not really reflected whether the original low-order relationship is maintained during the construction of the HoFN. To address these problems, we propose correlation-preserving embedding (COPE) to re-code the LoFN prior to constructing HoFN. Specifically, we first use SR to construct traditional LoFN. Then, we embed the LoFN via COPE to generate the new node representation for removing the potentially redundant/noisy information in original node feature vectors and simultaneously maintaining the low-order relationship between brain regions. Finally, the expected HoFN is estimated by SR based on the new node representation. To verify the effectiveness of the proposed scheme, we conduct experiments on 137 subjects from the public Alzheimer's Disease Neuroimaging Initiative (ADNI) database to identify subjects with mild cognitive impairment (MCI) from normal controls. Experimental results show that the proposed scheme can achieve better performance than the baseline method. Brain functional network (FN) has emerged as a potential tool for identifying mental and neurological diseases. Traditional FN estimation methods such as Pearson's correlation (PC) and sparse representation (SR), despite their popularity, can only model low-order relationships between brain regions (i.e., nodes of FN), thus failing to capture more complex interaction in the brain. Recently, researchers proposed to estimate high-order FN (HoFN) and successfully used them in the early diagnosis of neurological diseases. In practice, however, such HoFN is constructed by directly considering the columns (or rows) of the adjacency matrix of low-order FN (LoFN) as node feature vectors that may contain some redundant or noisy information. In addition, it is not really reflected whether the original low-order relationship is maintained during the construction of the HoFN. To address these problems, we propose correlation-preserving embedding (COPE) to re-code the LoFN prior to constructing HoFN. Specifically, we first use SR to construct traditional LoFN. Then, we embed the LoFN via COPE to generate the new node representation for removing the potentially redundant/noisy information in original node feature vectors and simultaneously maintaining the low-order relationship between brain regions. Finally, the expected HoFN is estimated by SR based on the new node representation. To verify the effectiveness of the proposed scheme, we conduct experiments on 137 subjects from the public Alzheimer's Disease Neuroimaging Initiative (ADNI) database to identify subjects with mild cognitive impairment (MCI) from normal controls. Experimental results show that the proposed scheme can achieve better performance than the baseline method.
© 2022. International Federation for Medical and Biological Engineering.

Entities:  

Keywords:  Brain functional network; Correlation-preserving embedding; High-order correlation; Mild cognitive impairment; Sparse representation

Mesh:

Year:  2022        PMID: 35869385     DOI: 10.1007/s11517-022-02628-7

Source DB:  PubMed          Journal:  Med Biol Eng Comput        ISSN: 0140-0118            Impact factor:   3.079


  34 in total

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Review 2.  Regional homogeneity, functional connectivity and imaging markers of Alzheimer's disease: a review of resting-state fMRI studies.

Authors:  Yong Liu; Kun Wang; Chunshui Yu; Yong He; Yuan Zhou; Meng Liang; Liang Wang; Tianzi Jiang
Journal:  Neuropsychologia       Date:  2008-02-14       Impact factor: 3.139

Review 3.  Autism spectrum disorders: developmental disconnection syndromes.

Authors:  Daniel H Geschwind; Pat Levitt
Journal:  Curr Opin Neurobiol       Date:  2007-02-01       Impact factor: 6.627

4.  Resting-state functional connectivity in major depression: abnormally increased contributions from subgenual cingulate cortex and thalamus.

Authors:  Michael D Greicius; Benjamin H Flores; Vinod Menon; Gary H Glover; Hugh B Solvason; Heather Kenna; Allan L Reiss; Alan F Schatzberg
Journal:  Biol Psychiatry       Date:  2007-01-08       Impact factor: 13.382

5.  Estimating functional brain networks by incorporating a modularity prior.

Authors:  Lishan Qiao; Han Zhang; Minjeong Kim; Shenghua Teng; Limei Zhang; Dinggang Shen
Journal:  Neuroimage       Date:  2016-07-30       Impact factor: 6.556

6.  Altered resting state networks in mild cognitive impairment and mild Alzheimer's disease: an fMRI study.

Authors:  Serge A R B Rombouts; Frederik Barkhof; Rutger Goekoop; Cornelis J Stam; Philip Scheltens
Journal:  Hum Brain Mapp       Date:  2005-12       Impact factor: 5.038

7.  Graph-based network analysis of resting-state functional MRI.

Authors:  Jinhui Wang; Xinian Zuo; Yong He
Journal:  Front Syst Neurosci       Date:  2010-06-07

8.  Changes in hippocampal connectivity in the early stages of Alzheimer's disease: evidence from resting state fMRI.

Authors:  Liang Wang; Yufeng Zang; Yong He; Meng Liang; Xinqing Zhang; Lixia Tian; Tao Wu; Tianzi Jiang; Kuncheng Li
Journal:  Neuroimage       Date:  2006-02-09       Impact factor: 6.556

9.  Psychiatric disorders in children with autism spectrum disorders: prevalence, comorbidity, and associated factors in a population-derived sample.

Authors:  Emily Simonoff; Andrew Pickles; Tony Charman; Susie Chandler; Tom Loucas; Gillian Baird
Journal:  J Am Acad Child Adolesc Psychiatry       Date:  2008-08       Impact factor: 8.829

10.  Optimising network modelling methods for fMRI.

Authors:  Usama Pervaiz; Diego Vidaurre; Mark W Woolrich; Stephen M Smith
Journal:  Neuroimage       Date:  2020-02-13       Impact factor: 6.556

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