TY - JOUR
T1 - Automatic bayesian classification of healthy controls, bipolar disorder, and schizophrenia using intrinsic connectivity maps from fMRI data
AU - Arribas, Juan I.
AU - Calhoun, Vince D.
AU - Adali, Tlay
N1 - Funding Information:
Manuscript received July 16 2010; revised August 24, 2010; accepted September 13, 2010. Date of publication September 27, 2010; date of current version November 17, 2010. This work was supported by the Comisión Interministerial de Ciencia y Tecnología, Spain under Grant TEC2007-67073, by the National Institutes of Health under Grant R01 EB 005846, and by the National Science Foundation under Grant 0612076, Grant NSF-CCF 0635129, and Grant NSF-IIS 1017718. The work of J. I. Arribas was supported by the fellowships JC 2009-00255 under the Programa Nacional de Movilidad de Re-cursos Humanos de Investigación, Ministerio de Educación, Spain, and by the fellowship under the Plan Movilidad Personal Investigador de la Universidad de Valladolid. Asterisk indicates corresponding author.
PY - 2010/12
Y1 - 2010/12
N2 - We present a method for supervised, automatic, and reliable classification of healthy controls, patients with bipolar disorder, and patients with schizophrenia using brain imaging data. The method uses four supervised classification learning machines trained with a stochastic gradient learning rule based on the minimization of KullbackLeibler divergence and an optimal model complexity search through posterior probability estimation. Prior to classification, given the high dimensionality of functional MRI (fMRI) data, a dimension reduction stage comprising two steps is performed: first, a one-sample univariate t-test mean-difference Tscore approach is used to reduce the number of significant discriminative functional activated voxels, and then singular value decomposition is performed to further reduce the dimension of the input patterns to a number comparable to the limited number of subjects available for each of the three classes. Experimental results using functional brain imaging (fMRI) data include receiver operation characteristic curves for the three-way classifier with area under curve values around 0.82, 0.89, and 0.90 for healthy control versus nonhealthy, bipolar disorder versus nonbipolar, and schizophrenia patients versus nonschizophrenia binary problems, respectively. The average three-way correct classification rate (CCR) is in the range of 70%-72%, for the test set, remaining close to the estimated Bayesian optimal CCR theoretical upper bound of about 80%, estimated from the one nearest-neighbor classifier over the same data.
AB - We present a method for supervised, automatic, and reliable classification of healthy controls, patients with bipolar disorder, and patients with schizophrenia using brain imaging data. The method uses four supervised classification learning machines trained with a stochastic gradient learning rule based on the minimization of KullbackLeibler divergence and an optimal model complexity search through posterior probability estimation. Prior to classification, given the high dimensionality of functional MRI (fMRI) data, a dimension reduction stage comprising two steps is performed: first, a one-sample univariate t-test mean-difference Tscore approach is used to reduce the number of significant discriminative functional activated voxels, and then singular value decomposition is performed to further reduce the dimension of the input patterns to a number comparable to the limited number of subjects available for each of the three classes. Experimental results using functional brain imaging (fMRI) data include receiver operation characteristic curves for the three-way classifier with area under curve values around 0.82, 0.89, and 0.90 for healthy control versus nonhealthy, bipolar disorder versus nonbipolar, and schizophrenia patients versus nonschizophrenia binary problems, respectively. The average three-way correct classification rate (CCR) is in the range of 70%-72%, for the test set, remaining close to the estimated Bayesian optimal CCR theoretical upper bound of about 80%, estimated from the one nearest-neighbor classifier over the same data.
KW - Classification
KW - functional MRI (fMRI)
KW - learning machine
KW - receiver operation characteristics (ROCs)
KW - schizophrenia
UR - http://www.scopus.com/inward/record.url?scp=78649311169&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=78649311169&partnerID=8YFLogxK
U2 - 10.1109/TBME.2010.2080679
DO - 10.1109/TBME.2010.2080679
M3 - Article
C2 - 20876002
AN - SCOPUS:78649311169
SN - 0018-9294
VL - 57
SP - 2850
EP - 2860
JO - IEEE Transactions on Biomedical Engineering
JF - IEEE Transactions on Biomedical Engineering
IS - 12
M1 - 5585815
ER -