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Cluster-extent based thresholding in fMRI analyses: pitfalls and recommendations. Neuroimage 2014; 91: 412-419. [ DOI:10.1016/j.neuroimage.2013.12.058] [ PMID] [ PMCID] 31. [15] Borumandnia N, Alavi Majd H, Zayeri F, Baghestani A R, Faeghi F, Tabatabaei SM. Bayesian spatiotemporal model for detecting of active areas in brain for analyzing of fMRI data. Koomesh 2017; 19: 845-851. (Persian). 32. [16] zolghadr Z, Alavi Majd H, Faeghi F, Niaghi F, Hajizadeh N. Classification of brain stem glioma tumor grade based on MRI findings using support vector machine. Koomesh 2017; 19: 584-590. (Persian).
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