Exploring predictive and reproducible Modeling with the single-subject FIAC dataset

被引:20
作者
Chen, X
Pereira, F
Lee, W
Strother, S
MitcheI, T
机构
[1] Rotman Res Inst, Baycrest Ctr, Toronto, ON M6A 2E1, Canada
[2] Carnegie Mellon Univ, Dept Comp Sci, Pittsburgh, PA 15213 USA
[3] Carnegie Mellon Univ, Ctr Neural Basis Cognit, Pittsburgh, PA 15213 USA
[4] Univ Toronto, Dept Med Biophys, Toronto, ON, Canada
关键词
classification; fMRI; linear discriminant analysis; predictive modeling; reproducible modeling;
D O I
10.1002/hbm.20243
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Predictive modeling of functional magnetic resonance imaging (fMRI) has the potential to expand the amount of information extracted and to enhance our understanding of brain systems by predicting brain states, rather than emphasizing the standard spatial mapping. Based on the block datasets of Functional Imaging Analysis Contest (FIAC) Subject 3, we demonstrate the potential and pitfalls of predictive modeling in fMRI analysis by investigating the performance of five models (linear discriminant analysis, logistic regression, linear support vector machine, Gaussian naive Bayes, and a variant) as a function of preprocessing steps and feature selection methods. We found that: (1) independent of the model, temporal detrending and feature selection assisted in building a more accurate predictive model; (2) the linear support vector machine and logistic regression often performed better than either of the Gaussian naive Bayes models in terms of the optimal prediction accuracy; and (3) the optimal prediction accuracy obtained in a feature space using principal components was typically lower than that obtained in a voxel space, given the same model and same preprocessing. We show that due to the existence of artifacts from different sources, high prediction accuracy alone does not guarantee that a classifier is learning a pattern of brain activity that might be usefully visualized, although cross-validation methods do provide fairly unbiased estimates of true prediction accuracy. The trade-off between the prediction accuracy and the reproducibility of the spatial pattern should be carefully considered in predictive modeling of fMRI We suggest that unless the experimental goal is brain-state classification of new scans on well-defined spatial features, prediction alone should not be used as an optimization procedure in fMRI data analysis.
引用
收藏
页码:452 / 461
页数:10
相关论文
共 25 条
[1]  
[Anonymous], NEUROIMAGE
[2]  
Cherkassky V, 1997, IEEE Trans Neural Netw, V8, P1564, DOI 10.1109/TNN.1997.641482
[3]   Functional segregation of cortical language areas by sentence repetition [J].
Dehaene-Lambertz, G ;
Dehaene, S ;
Anton, JL ;
Campagne, A ;
Ciuciu, P ;
Dehaene, GP ;
Denghien, I ;
Jobert, A ;
LeBihan, D ;
Sigman, M ;
Pallier, C ;
Poline, JB .
HUMAN BRAIN MAPPING, 2006, 27 (05) :360-371
[4]   Spatial independent component analysis of functional magnetic resonance imaging time-series: characterization of the cortical components [J].
Formisano, E ;
Esposito, F ;
Kriegeskorte, N ;
Tedeschi, G ;
Di Salle, F ;
Goebel, R .
NEUROCOMPUTING, 2002, 49 :241-254
[5]  
Friedman J., 2001, ELEMENTS STAT LEARNI, V1
[6]   Simulation of the effects of global normalization procedures in functional MRI [J].
Gavrilescu, M ;
Shaw, ME ;
Stuart, GW ;
Eckersley, P ;
Svalbe, ID ;
Egan, GF .
NEUROIMAGE, 2002, 17 (02) :532-542
[7]   Distributed and overlapping representations of faces and objects in ventral temporal cortex [J].
Haxby, JV ;
Gobbini, MI ;
Furey, ML ;
Ishai, A ;
Schouten, JL ;
Pietrini, P .
SCIENCE, 2001, 293 (5539) :2425-2430
[8]   Predicting the stream of consciousness from activity in human visual cortex [J].
Haynes, JD ;
Rees, G .
CURRENT BIOLOGY, 2005, 15 (14) :1301-1307
[9]   The quantitative evaluation of functional neuroimaging experiments: Mutual information learning curves [J].
Kjems, U ;
Hansen, LK ;
Anderson, J ;
Frutiger, S ;
Muley, S ;
Sidtis, J ;
Rottenberg, D ;
Strother, SC .
NEUROIMAGE, 2002, 15 (04) :772-786
[10]   Support vector machines for temporal classification of block design fMRI data [J].
LaConte, S ;
Strother, S ;
Cherkassky, V ;
Anderson, J ;
Hu, XP .
NEUROIMAGE, 2005, 26 (02) :317-329