Estimating multivariate similarity between neuroimaging datasets with sparse canonical correlation analysis: an application to perfusion imaging
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Andre F. Marquand | Orla M. Doyle | Fernando Zelaya | Mitul A. Mehta | Maria J. Rosa | Emilio M. Pich | Celine Risterucci | Antje A. T. S. Reinders | Steve C. R. Williams | Paola Dazzan | Steven C. R. Williams | A. Marquand | M. Mehta | F. Zelaya | M. J. Rosa | A. Reinders | O. Doyle | E. Pich | P. Dazzan | C. Risterucci | E. M. Pich
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