Abstract
Recently, machine learning techniques have been actively applied to the identification of Alzheimer’s disease (AD) and mild cognitive impairment (MCI). However, most of the existing methods focus on using only single network property, although combination of multiple network properties such as local connectivity and topological properties may be more powerful. Employing the kernel-based method, we propose a novel classification framework that attempts to integrate multiple network properties for improving the MCI classification. Specifically, two different types of kernel (i.e., vector-kernel and graph-kernel) extracted from multiple sub-networks are used to quantify two different yet complementary network properties. A multi-kernel learning technique is further adopted to fuse these heterogeneous kernels for MCI classification. Experimental results show that the proposed multiple-network-properties based method outperforms conventional single-network-property based methods.
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References
Agosta, F., Pievani, M., Geroldi, C., Copetti, M., Frisoni, G.B., Filippi, M.: Resting state fMRI in Alzheimer’s disease: beyond the default mode network. Neurobiol. Aging 33, 1564–1578 (2012)
Sanz-Arigita, E.J., Schoonheim, M.M., Damoiseaux, J.S., Rombouts, S.A., Maris, E., Barkhof, F., Scheltens, P., Stam, C.J.: Loss of ‘small-world’ networks in Alzheimer’s disease: graph analysis of FMRI resting-state functional connectivity. PloS ONE 5, e13788 (2010)
Xie, T., He, Y.: Mapping the Alzheimer’s brain with connectomics. Front Psychiatry 2, 77 (2011)
Ye, J.P., Wu, T., Li, J., Chen, K.W.: Machine Learning Approaches for the Neuroimaging Study of Alzheimer’s Disease. Computer 44, 99–101 (2011)
Chen, G., Ward, B.D., Xie, C., Li, W., Wu, Z., Jones, J.L., Franczak, M., Antuono, P., Li, S.J.: Classification of Alzheimer disease, mild cognitive impairment, and normal cognitive status with large-scale network analysis based on resting-state functional MR imaging. Radiology 259, 213–221 (2011)
Wee, C.Y., Yap, P.T., Zhang, D., Denny, K., Browndyke, J.N., Potter, G.G., Welsh-Bohmer, K.A., Wang, L., Shen, D.: Identification of MCI individuals using structural and functional connectivity networks. Neuroimage 59, 2045–2056 (2012)
Tzourio-Mazoyer, N., Landeau, B., Papathanassiou, D., Crivello, F., Etard, O., Delcroix, N., Mazoyer, B., Joliot, M.: Automated anatomical labeling of activations in SPM using a macroscopic anatomical parcellation of the MNI MRI single-subject brain. Neuroimage 15, 273–289 (2002)
Rubinov, M., Sporns, O.: Complex networks measures of brain connectivity: Uses and interpretations. Neuroimage 52, 1059–1069 (2010)
Tibshirani, R.: Regression shrinkage and selection via the lasso. J. Royal Statist. Soc. B 58, 267–288 (1996)
Shervashidze, N., Borgwardt, K.M.: Fast subtree kernels on graphs. In: NIPS, pp. 1660–1668 (2009)
Douglas, B.L.: The Weisfeiler-Lehman Method and Graph Isomorphism Testing. arXiv:1101.5211 (2011)
Liu, J., Ji, S., Ye, J.: SLEP: Sparse Learning with Efficient Projections, Arizona State University (2009)
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© 2013 Springer International Publishing Switzerland
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Jie, B., Zhang, D., Suk, HI., Wee, CY., Shen, D. (2013). Integrating Multiple Network Properties for MCI Identification. In: Wu, G., Zhang, D., Shen, D., Yan, P., Suzuki, K., Wang, F. (eds) Machine Learning in Medical Imaging. MLMI 2013. Lecture Notes in Computer Science, vol 8184. Springer, Cham. https://doi.org/10.1007/978-3-319-02267-3_2
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DOI: https://doi.org/10.1007/978-3-319-02267-3_2
Publisher Name: Springer, Cham
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