Identification of neural connectivity signatures of autism using machine learning

被引:105
作者
Deshpande, Gopikrishna [1 ,2 ]
Libero, Lauren E. [3 ]
Sreenivasan, Karthik R. [1 ]
Deshpande, Hrishikesh D. [3 ]
Kana, Rajesh K. [3 ]
机构
[1] Auburn Univ, Dept Elect & Comp Engn, AU MRI Res Ctr, Auburn, AL 36849 USA
[2] Auburn Univ, Dept Psychol, Auburn, AL 36849 USA
[3] Univ Alabama Birmingham, Dept Psychol, Birmingham, AL 35294 USA
来源
FRONTIERS IN HUMAN NEUROSCIENCE | 2013年 / 7卷
关键词
autism; effective connectivity; fMRI; classification; machine learning; theory-of-mind; GRANGER CAUSALITY ANALYSIS; HIGH-FUNCTIONING AUTISM; SPECTRUM DISORDER; WHITE-MATTER; CORTICAL UNDERCONNECTIVITY; SENTENCE COMPREHENSION; SOCIAL-PERCEPTION; CORPUS-CALLOSUM; HEAD MOTION; FMRI DATA;
D O I
10.3389/fnhum.2013.00670
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Alterations in interregional neural connectivity have been suggested as a signature of the pathobiology of autism. There have been many reports of functional and anatomical connectivity being altered while individuals with autism are engaged in complex cognitive and social tasks. Although disrupted instantaneous correlation between cortical regions observed from functional MRI is considered to be an explanatory model for autism, the causal influence of a brain area on another (effective connectivity) is a vital link missing in these studies. The current study focuses on addressing this in an fMRI study of Theory-of-Mind (ToM) in 15 high-functioning adolescents and adults with autism and 15 typically developing control participants. Participants viewed a series of comic strip vignettes in the MRI scanner and were asked to choose the most logical end to the story from three alternatives, separately for trials involving physical and intentional causality. The mean time series, extracted from 18 activated regions of interest, were processed using a multivariate autoregressive model (MVAR) to obtain the causality matrices for each of the 30 participants. These causal connectivity weights, along with assessment scores, functional connectivity values, and fractional anisotropy obtained from DTI data for each participant, were submitted to a recursive cluster elimination based support vector machine classifier to determine the accuracy with which the classifier can predict a novel participant's group membership (autism or control). We found a maximum classification accuracy of 95.9% with 19 features which had the highest discriminative ability between the groups. All of the 19 features were effective connectivity paths, indicating that causal information may be critical in discriminating between autism and control groups. These effective connectivity paths were also found to be significantly greater in controls as compared to ASD participants and consisted predominantly of outputs from the fusiform face area and middle temporal gyrus indicating impaired connectivity in ASD participants, particularly in the social brain areas. These findings collectively point toward the fact that alterations in causal connectivity in the brain in ASD could serve as a potential non-invasive neuroimaging signature for autism.
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页数:15
相关论文
共 87 条
[1]   Investigating directed influences between activated brain areas in a motor-response task using fMRI [J].
Abler, B ;
Roebroeck, A ;
Goebel, R ;
Höse, A ;
Schönfeldt-Lecuona, C ;
Hole, G ;
Walter, H .
MAGNETIC RESONANCE IMAGING, 2006, 24 (02) :181-185
[2]   Diffusion tensor imaging of the corpus callosum in Autism [J].
Alexander, Andrew L. ;
Lee, Jee Eun ;
Lazar, Mariana ;
Boudos, Rebecca ;
DuBray, Molly B. ;
Oakes, Terrence R. ;
Miller, Judith N. ;
Lu, Jeffrey ;
Jeong, Eun-Kee ;
McMahon, William M. ;
Bigler, Erin D. ;
Lainhart, Janet E. .
NEUROIMAGE, 2007, 34 (01) :61-73
[3]   Functional connectivity magnetic resonance imaging classification of autism [J].
Anderson, Jeffrey S. ;
Nielsen, Jared A. ;
Froehlich, Alyson L. ;
DuBray, Molly B. ;
Druzgal, T. Jason ;
Cariello, Annahir N. ;
Cooperrider, Jason R. ;
Zielinski, Brandon A. ;
Ravichandran, Caitlin ;
Fletcher, P. Thomas ;
Alexander, Andrew L. ;
Bigler, Erin D. ;
Lange, Nicholas ;
Lainhart, Janet E. .
BRAIN, 2011, 134 :3739-3751
[4]   The ''autistic psychopathy'' in childhood [J].
Asperger, H .
ARCHIV FUR PSYCHIATRIE UND NERVENKRANKHEITEN, 1944, 117 (01) :76-136
[5]   Abnormal functional connectivity of default mode sub-networks in autism spectrum disorder patients [J].
Assaf, Michal ;
Jagannathan, Kanchana ;
Calhoun, Vince D. ;
Miller, Laura ;
Stevens, Michael C. ;
Sahl, Robert ;
O'Boyle, Jacqueline G. ;
Schultz, Robert T. ;
Pearlson, Godfrey D. .
NEUROIMAGE, 2010, 53 (01) :247-256
[6]   White matter structure in autism: Preliminary evidence from diffusion tensor imaging [J].
Barnea-Goraly, N ;
Kwon, H ;
Menon, V ;
Eliez, S ;
Lotspeich, L ;
Reiss, AL .
BIOLOGICAL PSYCHIATRY, 2004, 55 (03) :323-326
[7]   Similar White Matter Aberrations in Children With Autism and Their Unaffected Siblings A Diffusion Tensor Imaging Study Using Tract-Based Spatial Statistics [J].
Barnea-Goraly, Naama ;
Lotspeich, Linda J. ;
Reiss, Allan L. .
ARCHIVES OF GENERAL PSYCHIATRY, 2010, 67 (10) :1052-1060
[8]   The Autism-Spectrum Quotient (AQ): Evidence from Asperger syndrome/high-functioning autism, males and females, scientists and mathematicians [J].
Baron-Cohen, S ;
Wheelwright, S ;
Skinner, R ;
Martin, J ;
Clubley, E .
JOURNAL OF AUTISM AND DEVELOPMENTAL DISORDERS, 2001, 31 (01) :5-17
[9]  
Baron-Cohen S, 2001, J CHILD PSYCHOL PSYC, V42, P241, DOI 10.1017/S0021963001006643
[10]   Attention does not modulate neural responses to social stimuli in autism spectrum disorders [J].
Bird, Geoffrey ;
Catmur, Caroline ;
Silani, Giorgia ;
Frith, Chris ;
Frith, Uta .
NEUROIMAGE, 2006, 31 (04) :1614-1624