b2b_taskPLS_novelty_frontal_theta_plotLV1.m 6.7 KB

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  1. % Create an overview plot featuring the results of the multivariate PLS
  2. % comparing spectral changes during the stimulus period under load
  3. clear all; cla; clc;
  4. currentFile = mfilename('fullpath');
  5. [pathstr,~,~] = fileparts(currentFile);
  6. cd(fullfile(pathstr,'..'))
  7. rootpath = pwd;
  8. pn.data = fullfile(rootpath, 'data', 'stats');
  9. pn.figures = fullfile(rootpath, 'figures');
  10. pn.tools = fullfile(rootpath, 'tools');
  11. addpath(genpath(fullfile(pn.tools, '[MEG]PLS', 'MEGPLS_PIPELINE_v2.02b')))
  12. addpath(fullfile(pn.tools, 'fieldtrip')); ft_defaults;
  13. addpath(genpath(fullfile(pn.tools, 'RainCloudPlots')));
  14. addpath(fullfile(pn.tools, 'BrewerMap'));
  15. addpath(fullfile(pn.tools, 'winsor'));
  16. % set custom colormap
  17. cBrew = brewermap(500,'RdBu');
  18. cBrew = flipud(cBrew);
  19. colormap(cBrew)
  20. load(fullfile(pn.data, 'b2b_taskpls_theta.mat'),...
  21. 'stat', 'result', 'lvdat', 'lv_evt_list', 'num_chans', 'num_freqs', 'num_time')
  22. load(fullfile(rootpath, 'data','erp', ['sub-001_erp.mat']));
  23. elec = erp.scene_category{1}.elec;
  24. result.perm_result.sprob
  25. indLV = 1;
  26. lvdat = reshape(result.boot_result.compare_u(:,indLV), num_chans, num_freqs, num_time);
  27. stat.prob = lvdat;
  28. stat.mask = lvdat > 3 | lvdat < -3;
  29. % maskNaN = double(stat.mask);
  30. % maskNaN(maskNaN==0) = NaN;
  31. %% invert solution
  32. stat.mask = stat.mask;
  33. stat.prob = stat.prob.*-1;
  34. result.vsc = result.vsc.*-1;
  35. result.usc = result.usc.*-1;
  36. % h = figure('units','centimeter','position',[0 0 15 10]);
  37. % set(gcf,'renderer','Painters')
  38. % statsPlot = [];
  39. % statsPlot = cat(1, statsPlot,squeeze(nanmax(abs(stat.prob(1:64,:,:)),[],1)));
  40. % plot(stat.time,statsPlot, 'k')
  41. % xlabel('Time [s from stim onset]'); ylabel('max abs BSR');
  42. % title({'ERP changes'; ['p = ', num2str(round(result.perm_result.sprob(indLV),4))]})
  43. % set(findall(gcf,'-property','FontSize'),'FontSize',18)
  44. % figureName = ['b01_pls_traces'];
  45. % saveas(h, fullfile(pn.figures, figureName), 'epsc');
  46. % saveas(h, fullfile(pn.figures, figureName), 'png');
  47. % h = figure('units','centimeter','position',[0 0 15 10]);
  48. % set(gcf,'renderer','Painters')
  49. % statsPlot = [];
  50. % statsPlot = cat(1, statsPlot,squeeze(mean(stat.prob(1:64,:,:),1)));
  51. % plot(stat.time,statsPlot, 'k')
  52. % xlabel('Time [s from stim onset]'); ylabel('mean BSR');
  53. % title({'ERP changes'; ['p = ', num2str(round(result.perm_result.sprob(indLV),4))]})
  54. % set(findall(gcf,'-property','FontSize'),'FontSize',18)
  55. % %xlim([0 0.3])
  56. % % figureName = ['b01_pls_traces'];
  57. % % saveas(h, fullfile(pn.figures, figureName), 'epsc');
  58. % % saveas(h, fullfile(pn.figures, figureName), 'png');
  59. %% plot multivariate topographies
  60. h = figure('units','centimeters','position',[0 0 10 10]);
  61. set(gcf,'renderer','Painters')
  62. cfg = [];
  63. cfg.layout = 'biosemi64.lay';
  64. cfg.parameter = 'powspctrm';
  65. cfg.comment = 'no';
  66. cfg.colormap = cBrew;
  67. cfg.colorbar = 'EastOutside';
  68. plotData = [];
  69. plotData.label = elec.label; % {1 x N}
  70. plotData.dimord = 'chan';
  71. cfg.zlim = [-6 6];
  72. cfg.figure = h;
  73. plotData.powspctrm = squeeze(nanmax(nanmax(stat.mask(:,:,:).*...
  74. stat.prob(:,:,:),[],3),[],2));
  75. [~, sortind] = sort(plotData.powspctrm, 'descend');
  76. cfg.marker = 'off';
  77. cfg.highlight = 'yes';
  78. cfg.highlightchannel = plotData.label(sortind(1:3));
  79. cfg.highlightcolor = [0 0 0];
  80. cfg.highlightsymbol = '.';
  81. cfg.highlightsize = 15;
  82. ft_topoplotER(cfg,plotData);
  83. cb = colorbar('location', 'EastOutside'); set(get(cb,'ylabel'),'string','Max BSR');
  84. figureName = ['b01_lv1'];
  85. % saveas(h, fullfile(pn.figures, figureName), 'epsc');
  86. % saveas(h, fullfile(pn.figures, figureName), 'png');
  87. %% plot using raincloud plot
  88. groupsizes=result.num_subj_lst;
  89. conditions=lv_evt_list;
  90. conds = {'old'; 'new'};
  91. condData = []; uData = [];
  92. for indGroup = 1
  93. if indGroup == 1
  94. relevantEntries = 1:groupsizes(1)*numel(conds);
  95. elseif indGroup == 2
  96. relevantEntries = groupsizes(1)*numel(conds)+1:...
  97. groupsizes(1)*numel(conds)+groupsizes(2)*numel(conds);
  98. end
  99. for indCond = 1:numel(conds)
  100. targetEntries = relevantEntries(conditions(relevantEntries)==indCond);
  101. condData{indGroup}(indCond,:) = -1.*result.vsc(targetEntries,indLV);
  102. uData{indGroup}(indCond,:) = -1.*result.usc(targetEntries,indLV);
  103. end
  104. end
  105. %% plot RainCloudPlot (within-subject centered)
  106. cBrew(1,:) = 2.*[.3 .1 .1];
  107. cBrew(2,:) = [.6 .6 .6];
  108. idx_outlier = cell(1); idx_standard = cell(1);
  109. for indGroup = 1
  110. dataToPlot = uData{indGroup}';
  111. % define outlier as lin. modulation that is more than three scaled median absolute deviations (MAD) away from the median
  112. X = [1 1; 1 2]; b=X\dataToPlot'; IndividualSlopes = b(2,:);
  113. outliers = isoutlier(IndividualSlopes, 'median');
  114. idx_outlier{indGroup} = find(outliers);
  115. idx_standard{indGroup} = find(outliers==0);
  116. end
  117. h = figure('units','centimeter','position',[0 0 25 10]);
  118. for indGroup = 1
  119. dataToPlot = uData{indGroup}';
  120. % read into cell array of the appropriate dimensions
  121. data = []; data_ws = [];
  122. for i = 1:2
  123. for j = 1:1
  124. data{i, j} = dataToPlot(:,i);
  125. % individually demean for within-subject visualization
  126. data_ws{i, j} = dataToPlot(:,i)-...
  127. nanmean(dataToPlot(:,:),2)+...
  128. repmat(nanmean(nanmean(dataToPlot(:,:),2),1),size(dataToPlot(:,:),1),1);
  129. data_nooutlier{i, j} = data{i, j};
  130. data_nooutlier{i, j}(idx_outlier{indGroup}) = [];
  131. data_ws_nooutlier{i, j} = data_ws{i, j};
  132. data_ws_nooutlier{i, j}(idx_outlier{indGroup}) = [];
  133. % sort outliers to back in original data for improved plot overlap
  134. data_ws{i, j} = [data_ws{i, j}(idx_standard{indGroup}); data_ws{i, j}(idx_outlier{indGroup})];
  135. end
  136. end
  137. % IMPORTANT: plot individually centered estimates, stats on uncentered estimates!
  138. subplot(1,2,indGroup);
  139. set(gcf,'renderer','Painters')
  140. cla;
  141. cl = cBrew(indGroup,:);
  142. [~, dist] = rm_raincloud_fixedSpacing(data_ws, [.8 .8 .8],1);
  143. h_rc = rm_raincloud_fixedSpacing(data_ws_nooutlier, cl,1,[],[],[],dist);
  144. view([90 -90]);
  145. axis ij
  146. box(gca,'off')
  147. set(gca, 'YTickLabels', {conds{2}; conds{1}});
  148. yticks = get(gca, 'ytick'); ylim([yticks(1)-(yticks(2)-yticks(1))./2, yticks(2)+(yticks(2)-yticks(1))./1.5]);
  149. minmax = [min(min(cat(2,data_ws{:}))), max(max(cat(2,data_ws{:})))];
  150. xlim(minmax+[-0.2*diff(minmax), 0.2*diff(minmax)])
  151. ylabel('novelty'); xlabel({'Brainscore'; '[Individually centered]'})
  152. % test linear effect
  153. curData = [data_nooutlier{1, 1}, data_nooutlier{2, 1}];
  154. X = [1 1; 1 2]; b=X\curData'; IndividualSlopes = b(2,:);
  155. [~, p, ci, stats] = ttest(IndividualSlopes);
  156. title(['M:', num2str(round(mean(IndividualSlopes),3)), '; p=', num2str(round(p,3))])
  157. end
  158. % figureName = ['b01_rcp'];
  159. % saveas(h, fullfile(pn.figures, figureName), 'epsc');
  160. % saveas(h, fullfile(pn.figures, figureName), 'png');