Abstract

Brain functional networks constructed via regularization has been widely used in early mild cognitive impairment (eMCI) classification. However, few methods can properly reflect the similarities and differences of functional connections among different people. Most methods ignore some topological attributes, such as connection strength, which may delete strong functional connections in brain functional networks. To overcome these limitations, we propose a novel method to construct dynamic functional networks (DFN) based on weighted regularization (WR) and tensor low-rank approximation (TLA), and apply it to identify eMCI subjects from normal subjects. First, we introduce the WR term into the DFN construction and obtain WR-based DFNs (WRDFN). Then, we combine the WRDFNs of all subjects into a third-order tensor for TLA processing, and obtain the DFN based on WR and TLA (WRTDFN) of each subject in the tensor. We calculate the weighted-graph local clustering coefficient of each region in each WRTDFN as the effective feature, and use the t-test for feature selection. Finally, we train a linear support vector machine (SVM) classifier to classify the WRTDFNs of all subjects. Experimental results demonstrate that the proposed method can obtain DFNs with the scale-free property, and that the classification accuracy (ACC), the sensitivity (SEN), the specificity (SPE), and the area under curve (AUC) reach 87.0662% ± 0.3202%, 83.4363% ± 0.5076%, 90.6961% ± 0.3250% and 0.9431 ± 0.0023, respectively. We also achieve the best classification results compared with other comparable methods. This work can effectively improve the classification performance of DFNs constructed by existing methods for eMCI and has certain reference value for the early diagnosis of Alzheimer’s disease (AD).

Highlights

  • Alzheimer’s disease (AD) is a typical dementia disease, which accounts for about 60–70% of patients with dementia diseases (Atangana et al, 2018)

  • The comparable methods include Pearson’s correlation (PC) and SR (Jiang et al, 2019), the PCscale-free method based on PC and scale-free prior proposed by Li et al (2017), the weighted sparse representation (WSR) proposed by Yu et al (2017), the group-constrained sparse representation (GSR) proposed by Wee et al (2014), the tensor lowrank approximation (TLA) method based on sparse representation (SRTLA) and the TLA method based on PC (PTLA) proposed by Jiang et al (2019), the low-rank tensor regularization method based on PC (PLTR) involved in the study by Gao et al (2020), and the sparse lowrank representation method (SLR) based on partial correlation proposed by Qiao et al (2016)

  • We propose a method for constructing dynamic functional networks (DFN) based on weighted regularization (WR) and TLA and apply it to early mild cognitive impairment (eMCI) classification

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Summary

Introduction

Alzheimer’s disease (AD) is a typical dementia disease, which accounts for about 60–70% of patients with dementia diseases (Atangana et al, 2018). It is unclear that AD biomarkers are critical for catching the disease early to allow for preventative interventions. Mild cognitive impairment (MCI) is a transitional state between normal senility and AD (Muldoon and Bassett, 2016). Recent researches show that about 10–12% of MCI patients deteriorate to AD patients every year, while only 1–2% of normal senilities deteriorate to AD patients every year. The brains of patients with early mild cognitive impairment (eMCI) have very subtle changes compared with those of normal people, which mainly manifest in abnormal functional connections between certain regions (Bi et al, 2020a,b; Tobia et al, 2017). If treatment and intervention can be carried out in time after eMCI is discovered, we can greatly delay or prevent the development of eMCI to MCI and AD

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