| Literature DB >> 29867424 |
Xiaohong Cui1, Jie Xiang1, Hao Guo1, Guimei Yin1,2, Huijun Zhang1,3, Fangpeng Lan1, Junjie Chen1.
Abstract
Effective and accurate diagnosis of Alzheimer's disease (AD), as well as its early stage (mild cognitive impairment, MCI), has attracted more and more attention recently. Researchers have constructed threshold brain function networks and extracted various features for the classification of brain diseases. However, in the construction of the brain function network, the selection of threshold is very important, and the unreasonable setting will seriously affect the final classification results. To address this issue, in this paper, we propose a minimum spanning tree (MST) classification framework to identify Alzheimer's disease (AD), MCI, and normal controls (NCs). The proposed method mainly uses the MST method, graph-based Substructure Pattern mining (gSpan), and graph kernel Principal Component Analysis (graph kernel PCA). Specifically, MST is used to construct the brain functional connectivity network; gSpan, to extract features; and subnetwork selection and graph kernel PCA, to select features. Finally, the support vector machine is used to perform classification. We evaluate our method on MST brain functional networks of 21 AD, 25 MCI, and 22 NC subjects. The experimental results show that our proposed method achieves classification accuracy of 98.3, 91.3, and 77.3%, for MCI vs. NC, AD vs. NC, and AD vs. MCI, respectively. The results show our proposed method can achieve significantly improved classification performance compared to other state-of-the-art methods.Entities:
Keywords: Alzheimer's disease; classification; gSpan; graph kernel principal component analysis; mild cognitive impairment; minimum spanning tree
Year: 2018 PMID: 29867424 PMCID: PMC5954113 DOI: 10.3389/fncom.2018.00031
Source DB: PubMed Journal: Front Comput Neurosci ISSN: 1662-5188 Impact factor: 2.380
Figure 1Framework of proposed method.
Demographic information of study participants.
| No. of subjects (M/F) | 8/13 | 16/9 | 10/12 |
| Age (mean ± | 74.1 ± 7.4 | 73.5 ± 6.1 | 74.9 ± 6.3 |
| MMSE (mean ± | 21 ± 3.5 | 27.6 ± 2.0 | 28.8 ± 1.7 |
| CDR (mean ± | 0.8 ± 0.2 | 0.5 ± 0.2 | 0.0 ± 0.1 |
AD, Alzheimer's disease patients; MCI, Mild cognitive impairment; NC, Normal control; MMSE, Mini-mental state examination; CDR, Clinical dementia rating; M, Male; F, Female.
Figure 2Classification accuracy of MCI for different m value. m represents the top-m biggest eigenvalues in graph kernel PCA.
Comparison of classification performance from different methods.
| Jie et al., | MCI/NC | 91.9 | 100 | 88 | 0.94 |
| Jie et al., | MCI/NC | 94.6 | 91.7 | 96.0 | 0.96 |
| Guo et al., | AD/NC | 98.2 | 98.9 | 96.7 | 0.998 |
| Proposed method | MCI/NC | 98.3 | 96.6 | 100 | 0.99 |
| AD/NC | 91.3 | 82.5 | 100 | 1 | |
| AD/MCI | 77.3 | 54.1 | 100 | 0.97 |
AD, Alzheimer's disease; NC, Normal control; MCI, Mild Cognitive Impairment; ACC, Accuracy; SEN, Sensitivity; SPE, Specificity; AUC, The area under the receiver operating characteristic curve.
Figure 3The ROC curve of different methods. The ROC curve of different methods on MCI vs. NC (A), AD vs. NC (B), and AD vs. MCI (C) classification. Multiple threshold, Multiple thresholded functional brain network; Hyper-network, Hyper-connectivity of functional brain networks; Hon-mst, Minimum spanning tree high-order functional brain network.
Figure 4Frequent subnetworks of NC, AD and MCI. Frequent subnetwork mined by gSpan for MCI (A), AD (B), and NC (C) groups. PreCG.L, L Precental gyrus; PreCG.R, R Precental gyrus; SFGdor.L, L Superior frontal gyrus, dorsolateral; SFGdor.R, R Superior frontal gyrus, dorsolateral; ORBsup.L, L Superior frontal gyrus, orbital part; MFG.R, R Middle frontal gyrus; ORBmid.L, L Middle frontal gyrus, orbital part; ROL.R, R Rolandic operculum; SMA.R, R Supplementary motor area; OLF.L, L Olfactory cortex; OLF.R, R Olfactory cortex; SFGmed.L, L Superior frontal gyrus, medial; SFGmed.R, R Superior frontal gyrus, medial; ORBsupmed.L, L Superior frontal gyrus, medial orbital; ORBsupmed.R, R Superior frontal gyrus, medial orbital; REC.L, L Gyrus rectus; REC.R, R Gyrus rectus; INS.L, L Insula; INS.R, R Insula; ACG.R, R Anterior cingulate and paracingulate gyri; DCG.L, L Median cingulate and paracingulate gyri; DCG.R, R Median cingulate and paracingulate gyri; PCG.L, L Posterior cingulate gyrus; PCG.R, R Posterior cingulate gyrus; HIP.L, L Hippocampus; HIP.R, R Hippocampus; PHG.L, L Parahippocampal gyrus; CAL.R, R Calcarine fissure and surrounding cortex; CUN.L, L Cuneus; CUN.R, R Cuneus; LING.L, L Lingual gyrus; LING.R, R Lingual gyrus; SOG.L, L Superior occipital gyrus; SOG.R, R Superior occipital gyrus; MOG.L, L Middle occipital gyrus; MOG.R, R Middle occipital gyrus; IOG.L, L Inferior occipital gyrus; IOG.R, R Inferior occipital gyrus; FFG.L, L Fusiform gyrus; PoCG.L, L Postcentral gyrus; PoCG.R, R Postcentral gyrus; SPG.L, L Superior parietal gyrus; SPG.R, R Superior parietal gyrus; IPL.R, R Inferior parietal, but supramarginal and angular gyri; PCUN.R, R Precuneus; PCL.L, L Paracentral lobule; PCL.R, R Paracentral lobule; CAU.L, L Caudate nucleus; CAU.R, R Caudate nucleus; PUT.L, L Lenticular nucleus, putamen; PUT.R, R Lenticular nucleus, putamen; PAL.L, L Lenticular nucleus, pallidum; THA.R, R Thalamus; HES.L, L Heschl gyrus; TPOmid.L, L Temporal pole: middle temporal gyrus.
Figure 5Most discriminative regions that were selected using the proposed method in AD.
Figure 6Most discriminative regions that were selected using the proposed method in MCI.
Classification performance of different methods with the same dataset.
| Multiple threshold | Jie et al., | MCI/NC | 75.7 | 74.3 | 78.1 | 0.81 |
| AD/NC | 78.5 | 73.3 | 85.6 | 0.9 | ||
| AD/MCI | 74 | 90 | 42.2 | 0.9 | ||
| Hyper-network | Jie et al., | MCI/NC | 80.8 | 76.7 | 80 | 0.94 |
| AD/NC | 88.3 | 91.7 | 86.7 | 0.95 | ||
| AD/MCI | 77.5 | 60 | 95 | 0.85 | ||
| Hon-mst | Guo et al., | MCI/NC | 82.6 | 84.1 | 87.5 | 0.93 |
| AD/NC | 94.2 | 95.1 | 95.4 | 0.95 | ||
| AD/MCI | 80.7 | 73.3 | 85 | 0.89 | ||
| MST | Proposed method | MCI/NC | 98.3 | 96.6 | 100 | 0.99 |
| AD/NC | 91.3 | 82.5 | 100 | 1 | ||
| AD/MCI | 77.3 | 54.1 | 100 | 0.97 |
Multiple threshold, Multiple thresholded functional brain network; Hyper-network, Hyper-connectivity of functional brain networks; Hon-mst, Minimum spanning tree high-order functional brain network; MST, Minimum spanning tree functional brain network; AD, Alzheimer's disease; NC, Normal control; MCI, Mild cognitive impairment; ACC, Accuracy; SEN, Sensitivity; SPE, Specificity; AUC, The area under the receiver operating characteristic curve.
Classification performance of threshold-based and MST-based methods.
| Threshold-based | MCI/NC | 63.3 | 73.3 | 65 | 0.65 |
| AD/NC | 87.5 | 85 | 76.7 | 0.92 | |
| AD/MCI | 65.8 | 66.7 | 81.7 | 0.76 | |
| Proposed method | MCI/NC | 98.3 | 96.6 | 100 | 0.99 |
| AD/NC | 91.3 | 82.5 | 100 | 1 | |
| AD/MCI | 77.3 | 54.1 | 100 | 0.97 |
Threshold-based denotes a brain function network with the sparsity of 40%; AD, Alzheimer's disease; NC, Normal control; MCI, Mild cognitive impairment; ACC, Accuracy; SEN, Sensitivity; SPE, Specificity; AUC, The area under the receiver operating characteristic curve.
Classification performance when directly using discriminative subnetworks and that of our proposed method.
| Discriminative subnetwork | MCI/NC | 78.3 | 66.7 | 80 | 0.78 |
| AD/NC | 88.2 | 82.3 | 94.1 | 0.97 | |
| AD/MCI | 69.1 | 71.2 | 67.4 | 0.76 | |
| Proposed method | MCI/NC | 98.3 | 96.6 | 100 | 0.99 |
| AD/NC | 91.3 | 82.5 | 100 | 1 | |
| AD/MCI | 77.3 | 54.1 | 100 | 0.97 |
Discriminative subnetwork denotes directly use discriminative subnetworks as features; AD, Alzheimer's disease; NC, Normal control; MCI, Mild cognitive impairment; ACC, Accuracy; SEN, Sensitivity; SPE, Specificity; AUC, The area under the receiver operating characteristic curve.