Classification of fMRI resting-state maps using machine learning techniques: A comparative study

We compare the efficiency of Principal Component Analysis (PCA) and nonlinear learning manifold algorithms (ISOMAP and Diffusion maps) for classifying brain maps between groups of schizophrenia patients and healthy from fMRI scans during a resting-state experiment. After a standard pre-processing pipeline, we applied spatial Independent component analysis (ICA) to reduce (a) noise and (b) spatial-temporal dimensionality of fMRI maps. On the cross-correlation matrix of the ICA components, we applied PCA, ISOMAP and Diffusion Maps to find an embedded low-dimensional space. Finally, support-vector-machines (SVM) and k-NN algorithms were used to evaluate the performance of the algorithms in classifying between the two groups.We compare the efficiency of Principal Component Analysis (PCA) and nonlinear learning manifold algorithms (ISOMAP and Diffusion maps) for classifying brain maps between groups of schizophrenia patients and healthy from fMRI scans during a resting-state experiment. After a standard pre-processing pipeline, we applied spatial Independent component analysis (ICA) to reduce (a) noise and (b) spatial-temporal dimensionality of fMRI maps. On the cross-correlation matrix of the ICA components, we applied PCA, ISOMAP and Diffusion Maps to find an embedded low-dimensional space. Finally, support-vector-machines (SVM) and k-NN algorithms were used to evaluate the performance of the algorithms in classifying between the two groups.

[1]  Alan L. Yuille,et al.  Classification of spatially unaligned fMRI scans , 2010, NeuroImage.

[2]  S. Bookheimer Functional MRI of language: new approaches to understanding the cortical organization of semantic processing. , 2002, Annual review of neuroscience.

[3]  Ann B. Lee,et al.  Geometric diffusions as a tool for harmonic analysis and structure definition of data: diffusion maps. , 2005, Proceedings of the National Academy of Sciences of the United States of America.

[4]  Mark S. Cohen,et al.  Localization of brain function using magnetic resonance imaging , 1994, Trends in Neurosciences.

[5]  J. Pekar,et al.  A method for making group inferences from functional MRI data using independent component analysis , 2001, Human brain mapping.

[6]  Gregory A. Miller,et al.  Bilateral hippocampal dysfunction in schizophrenia , 2011, NeuroImage.

[7]  Mark S. Cohen,et al.  Decreased small-world functional network connectivity and clustering across resting state networks in schizophrenia: an fMRI classification tutorial , 2013, Front. Hum. Neurosci..

[8]  Vince D. Calhoun,et al.  A method for functional network connectivity among spatially independent resting-state components in schizophrenia , 2008, NeuroImage.

[9]  M. Tarr,et al.  Activation of the middle fusiform 'face area' increases with expertise in recognizing novel objects , 1999, Nature Neuroscience.

[10]  V. Calhoun,et al.  Exploring the Psychosis Functional Connectome: Aberrant Intrinsic Networks in Schizophrenia and Bipolar Disorder , 2012, Front. Psychiatry.

[11]  Juan Bustillo,et al.  Functional imaging of the hemodynamic sensory gating response in schizophrenia , 2013, Human brain mapping.

[12]  M. Fox,et al.  Spontaneous fluctuations in brain activity observed with functional magnetic resonance imaging , 2007, Nature Reviews Neuroscience.

[13]  Dimitri Van De Ville,et al.  Principal components of functional connectivity: A new approach to study dynamic brain connectivity during rest , 2013, NeuroImage.

[14]  Egill Rostrup,et al.  Determination of relative CMRO2 from CBF and BOLD changes: Significant increase of oxygen consumption rate during visual stimulation , 1999, Magnetic resonance in medicine.

[15]  Dimitri Van De Ville,et al.  Machine Learning with Brain Graphs: Predictive Modeling Approaches for Functional Imaging in Systems Neuroscience , 2013, IEEE Signal Processing Magazine.

[16]  Constantinos Siettos,et al.  Multiscale modeling of brain dynamics: from single neurons and networks to mathematical tools , 2016, Wiley interdisciplinary reviews. Systems biology and medicine.