## ----warning=FALSE, message=FALSE--------------------------------------------- require(TCIU) require(DT) ## ----------------------------------------------------------------------------- fmri_generate = fmri_simulate_func(dim_data = c(64, 64, 40), mask = mask, ons = c(1, 21, 41, 61, 81, 101, 121, 141), dur = c(10, 10, 10, 10, 10, 10, 10, 10)) # the outputs include simulated fMRI data, its mask, # the starting time points of the stimulated period and its duration # as well as all the stimulated time points dim(fmri_generate$fmri_data) ## ----fig.width = 7, fig.align = "center", warning=FALSE, message=FALSE-------- fmri_time_series(sample_save[[9]], voxel_location = NULL, is.4d = FALSE, ref = sample_save[[8]]) ## ----fig.width = 7, fig.align = "center", warning=FALSE, message=FALSE-------- # a data-frame with 160 rows and 4 columns: time (1:10), phases (8), states (2), and fMRI data (Complex or Real intensity) datatable(fmri_kimesurface(fmri_generate$fmri_data, c(44,30,33))[[1]]) # ON Kime-Surface fmri_kimesurface(fmri_generate$fmri_data, c(44,30,33))[[2]] # User can try themself to plot the on / off / on&off figure # OFF Kime-Surface # fmri_kimesurface(fmri_generate$fmri_data, c(44,30,33))[[3]] # ON&OFF Kime-Surface # fmri_kimesurface(fmri_generate$fmri_data, c(44,30,33))[[4]] ## ----fig.width = 7, fig.align = "center", warning=FALSE, message=FALSE-------- fmri_image(fmri_generate$fmri_data, option="manually", voxel_location = c(40,22,33), time=4) ## ----fig.width = 7, fig.align = "center", warning=FALSE, message=FALSE-------- smoothmod<-GaussSmoothArray(fmri_generate$fmri_data, sigma = diag(3,3)) fmri_ts_forecast(smoothmod, voxel_location=c(41,44,33)) ## ----------------------------------------------------------------------------- p_simulate_t_test = fmri_stimulus_detect(fmridata= fmri_generate$fmri_data, mask = fmri_generate$mask, stimulus_idx = fmri_generate$on_time, method = "t-test" , ons = fmri_generate$ons, dur = fmri_generate$dur) dim(p_simulate_t_test) summary(p_simulate_t_test) ## ---- eval = FALSE------------------------------------------------------------ # # do the FDR correction # pval_fdr = fmri_post_hoc(phase2_pval , fdr_corr = "fdr", # spatial_cluster.thr = NULL, # spatial_cluster.size = NULL, # show_comparison = FALSE) # # # do the spatial clustering # pval_posthoc = fmri_post_hoc(pval_fdr, fdr_corr = NULL, # spatial_cluster.thr = 0.05, # spatial_cluster.size = 5, # show_comparison = FALSE) ## ----eval = FALSE------------------------------------------------------------- # # the output figure is hidden # for(axis in c("x", "y", "z")){ # axis_i = switch(axis, # "x" = {35}, # "y" = {30}, # "z" = {22}) # print(fmri_2dvisual(p_simulate_t_test, list(axis, axis_i), # hemody_data=NULL, mask=fmri_generate$mask, # p_threshold = 0.05, legend_show = TRUE, # method = "scale_p", # color_pal = "YlOrRd", multi_pranges=TRUE)) # } # ## ----fig.width = 9, fig.align = "center", warning=FALSE----------------------- fmri_3dvisual(p_simulate_t_test, fmri_generate$mask, p_threshold = 0.05, method="scale_p", multi_pranges=TRUE)$plot ## ----eval = FALSE------------------------------------------------------------- # # the two p value are the p value generated based on the simulated fMRI # # and the p value saved in the package and finished post hoc test # # the output figure is hidden # fmri_pval_comparison_3d(list(p_simulate_t_test, phase3_pval), mask, # list(0.05, 0.05), list("scale_p", "scale_p"), # multi_pranges=FALSE) # ## ----fig.width = 9, fig.align = "center", warning=FALSE----------------------- fmri_pval_comparison_2d(list(p_simulate_t_test, phase3_pval), list('pval_simulated', 'pval_posthoc'), list(list(35, 33, 22), list(40, 26, 33)), hemody_data = NULL, mask = mask, p_threshold = 0.05, legend_show = FALSE, method = 'scale_p', color_pal = "YlOrRd", multi_pranges=FALSE) ## ---- eval = FALSE, echo = TRUE----------------------------------------------- # ROI_phase1 = fmri_ROI_phase1(fmri_generate$fmri_data, mask_label, mask_dict, stimulus_idx = fmri_generate$on_time) ## ---- eval = FALSE, echo = TRUE----------------------------------------------- # ROI_phase2 = fmri_ROI_phase2(fmridata = fmri_generate$fmridata, label_mask = mask_label, # ROI_label_dict = mask_dict, stimulus_idx = fmri_generate$on_time, # stimulus_dur = fmri_generate$dur, rrr_rank = 3, # fmri.design_order = 2, fmri.stimulus_TR = 3, # method = "t_test", parallel_computing = TRUE, max(detectCores()-2,1)) ## ---- eval = FALSE, echo = TRUE----------------------------------------------- # # do the FDR correction # # do the spatial clustering # ROI_phase3 = fmri_post_hoc(ROI_phase2 , fdr_corr = "fdr", # spatial_cluster.thr = 0.05, # spatial_cluster.size = 5, # show_comparison = FALSE) ## ----eval = FALSE------------------------------------------------------------- # # the output figure is hidden due to the size of vignettes # label_index = mask_dict$index # label_name = as.character(mask_dict$name) # label_mask = mask_label # fmri_3dvisual_region(phase1_pval, mask_label, label_index, label_name, title = "phase1 p-values") ## ----eval = FALSE------------------------------------------------------------- # # the output figure is hidden due to the size of vignettes # fmri_3dvisual_region(list(phase2_pval,phase3_pval), mask_label, # label_index, label_name, title = "phase2&3 p-values")