//*******
// Author: Pradeep Rajasekhar
// March 2022
// License: BSD3
//
// Copyright 2021 Pradeep Rajasekhar, Walter and Eliza Hall Institute of Medical Research, Melbourne, Australia
//
// Redistribution and use in source and binary forms, with or without modification, are permitted provided that the following conditions are met:
// 1. Redistributions of source code must retain the above copyright notice, this list of conditions and the following disclaimer.
// 2. Redistributions in binary form must reproduce the above copyright notice, this list of conditions and the following disclaimer in the documentation and/or other materials provided with the distribution.
// 3. Neither the name of the copyright holder nor the names of its contributors may be used to endorse or promote products derived from this software without specific prior written permission.
// THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS
//FOR A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT HOLDER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING,
//BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
//Analyse ENS images without Hu
var fs=File.separator;
setOption("ExpandableArrays", true);
print("\\Clear");
run("Clear Results");
//get fiji directory and get the macro folder for GAT
var fiji_dir=getDirectory("imagej");
var gat_dir=fiji_dir+"scripts"+fs+"GAT"+fs+"Tools"+fs+"commands";
//specify directory where StarDist models are stored
var models_dir=fiji_dir+"models"+fs; //"scripts"+fs+"GAT"+fs+"Models"+fs;
//settings for GAT
gat_settings_path=gat_dir+fs+"gat_settings.ijm";
if(!File.exists(gat_settings_path)) exit("Cannot find settings file. Check: "+gat_settings_path);
run("Results... ", "open="+gat_settings_path);
training_pixel_size=parseFloat(Table.get("Values", 0)); //0.7;
neuron_area_limit=parseFloat(Table.get("Values", 1)); //1500
neuron_seg_lower_limit=parseFloat(Table.get("Values", 2)); //90
neuron_lower_limit=parseFloat(Table.get("Values", 3)); //160
backgrnd_radius=parseFloat(Table.get("Values", 4));
probability=parseFloat(Table.get("Values", 5)); //prob neuron
probability_subtype=parseFloat(Table.get("Values", 6)); //prob subtype
overlap= parseFloat(Table.get("Values", 7));
overlap_subtype=parseFloat(Table.get("Values", 8));
neron_subtype_file = Table.getString("Values", 10);
run("Close");
//Marker segmentation model
subtype_model_path=models_dir+neron_subtype_file;
if(!File.exists(subtype_model_path)) exit("Cannot find models for segmenting neurons at these paths:\n"+subtype_model_path);
//check if required plugins are installed
var check_plugin=gat_dir+fs+"check_plugin.ijm";
if(!File.exists(check_plugin)) exit("Cannot find check plugin macro. Returning: "+check_plugin);
runMacro(check_plugin);
//check if label to roi macro is present
var label_to_roi=gat_dir+fs+"Convert_Label_to_ROIs.ijm";
if(!File.exists(label_to_roi)) exit("Cannot find label to roi script. Returning: "+label_to_roi);
//check if roi to label macro is present
var roi_to_label=gat_dir+fs+"Convert_ROI_to_Labels.ijm";
if(!File.exists(roi_to_label)) exit("Cannot find roi to label script. Returning: "+roi_to_label);
//check if ganglia cell count is present
var ganglia_cell_count=gat_dir+fs+"Calculate_Neurons_per_Ganglia.ijm";
if(!File.exists(ganglia_cell_count)) exit("Cannot find ganglia cell count script. Returning: "+ganglia_cell_count);
//check if ganglia prediction macro present
var segment_ganglia=gat_dir+fs+"Segment_Ganglia.ijm";
if(!File.exists(segment_ganglia)) exit("Cannot find segment ganglia script. Returning: "+segment_ganglia);
var spatial_two_cell_type=gat_dir+fs+"spatial_two_celltype.ijm";
if(!File.exists(spatial_two_cell_type)) exit("Cannot find spatial analysis script. Returning: "+spatial_two_cell_type);
fs = File.separator; //get the file separator for the computer (depending on operating system)
#@ File (style="open", label="Choose the image to segment.
Enter NA if field is empty.", value=fiji_dir) path
#@ boolean image_already_open
#@ String(value="If image is already open, tick above box.", visibility="MESSAGE") hint1
#@ String(value=" Tick box below if you know channel name and numbers
The order of channel numbers MUST match with channel name order.",visibility="MESSAGE") hint5
#@ boolean Enter_channel_details_now
#@ String(label="Enter channel names followed by a comma (,). Enter NA if not using.", value="NA") marker_names_manual
#@ String(label="Enter channel numbers with separated by a comma (,). Leave as NA if not using.", value="NA") marker_no_manual
#@ String(value="----------------------------------------------------------------------------------------------------------------------------------------",visibility="MESSAGE") divider
#@ String(value="
DETERMINE GANGLIA OUTLINE ",visibility="MESSAGE") hint_ganglia
#@ String(value=" Cell counts per ganglia will be calculated
Requires a neuron channel & second channel that labels the neuronal fibres.",visibility="MESSAGE") hint4
#@ boolean Cell_counts_per_ganglia (description="Use a pretrained deepImageJ model to predict ganglia outline")
#@ String(label=" Enter the channel NUMBER that labels neuronal/glial fibres.
Enter NA if not using. ", value="NA") ganglia_channel
#@ String(label=" Enter the channel NUMBER for marker that labels most cells.
Enter NA if not using. ", value="NA") cell_channel
#@ String(choices={"DeepImageJ","Manually draw ganglia"}, style="radioButtonHorizontal") Ganglia_detection
#@ String(value="----------------------------------------------------------------------------------------------------",visibility="MESSAGE") adv
#@ boolean Perform_Spatial_Analysis(description="If ticked, it will perform spatial analysis for all markers. Convenient than performing them individually. -> ")
#@ boolean Finetune_Detection_Parameters(description="Enter custom rescaling factor and probabilities")
#@ boolean Contribute_to_GAT(description="Contribute to GAT by saving image and masks")
scale = 1;
if(Finetune_Detection_Parameters==true)
{
print("Using manual probability and overlap threshold for detection");
Dialog.create("Change Probability and Overlap for Neuron Subtype Detection");
Dialog.addSlider("Probability of detecting neuronal subtypes", 0, 1,probability);
Dialog.addSlider("Overlap threshold", 0, 1,overlap);
Dialog.show();
probability_subtype_manual= Dialog.getNumber();
overlap_subtype= Dialog.getNumber();
}
if(Contribute_to_GAT==true)
{
waitForUser("You can contribute to improving GAT by saving images and masks,\nand sharing it so our deep learning models have better accuracy\nGo to 'Help and Support' button under GAT to get in touch");
img_masks_path = getDirectory("Choose Folder to save images and masks");
Save_Image_Masks = true;
}
else
{
Save_Image_Masks = false;
}
if(Perform_Spatial_Analysis==true)
{
Dialog.create("Spatial Analysis parameters");
Dialog.addSlider("Cell expansion distance (microns)", 0.0, 20.0, 6.5);
Dialog.addCheckbox("Save parametric image/s?", true);
Dialog.show();
label_dilation= Dialog.getNumber();
save_parametric_image = Dialog.getCheckbox();
}
//listing parameters being used for GAT
print("Using parameters\nSegmentation pixel size:"+training_pixel_size+"\nMax neuron area (microns): "+neuron_area_limit+"\nMin marker area (microns): "+neuron_lower_limit);
print("**Neuron subtype\nProbability: "+probability_subtype+"\nOverlap threshold: "+overlap_subtype+"\n");
//get user-entered markers into a array of strings
marker_names_manual=split(marker_names_manual, ",");
//trim space from names
marker_names_manual=trim_space_arr(marker_names_manual);
//get channel numbers into an array
marker_no_manual=split(marker_no_manual, ",");
if(marker_names_manual.length!=marker_no_manual.length) exit("Number of marker names and marker channels do not match");
if(image_already_open==true)
{
waitForUser("Select Image. and choose output folder in next prompt");
file_name=getTitle(); //get file name without extension (.lif)
dir=getDirectory("Choose Output Folder");
//file_name=File.nameWithoutExtension;
}
else
{
if(endsWith(path, ".czi")|| endsWith(path, ".lif")) run("Bio-Formats", "open=["+path+"] color_mode=Composite rois_import=[ROI manager] view=Hyperstack stack_order=XYCZT");
else if (endsWith(path, ".lif"))
{
run("Bio-Formats Macro Extensions");
Ext.setId(path);
Ext.getSeriesCount(seriesCount);
print("Opening lif file, detected series count of "+seriesCount+". Leave options in bioformats importer unticked");
open(path);
}
else if (endsWith(path, ".tif")|| endsWith(path, ".tiff")) open(path);
else exit("File type not recognised. Tif, Lif and Czi files supported.");
dir=File.directory;
file_name_full=File.nameWithoutExtension; //get file name without extension (.lif)
}
//file_name=File.nameWithoutExtension;
file_name_length=lengthOf(file_name_full);
//Create results directory with file name in "analysis"
analysis_dir= dir+"Analysis"+fs;
if (!File.exists(analysis_dir)) File.makeDirectory(analysis_dir);
//check if it exists
save_location_exists = 1;
do
{
if(file_name_length>50)
{
file_name=substring(file_name_full, 0, 20); //Restricting file name length as in Windows long path names can cause errors
suffix = getString("File name is too long, will be shortened. Enter custom name or if lif file, enter series num.", "_1");
file_name = file_name+suffix;
}
else file_name=file_name_full;
results_dir=analysis_dir+file_name+fs; //directory to save images
//if file exists in location, create one and set save_location_exists flag to zero to exit the loop
if (!File.exists(results_dir))
{
File.makeDirectory(results_dir); //create directory to save results file
save_location_exists = 0;
}
else
{
waitForUser("Folder exists, enter new name in next prompt");
}
}
while(save_location_exists==1)
print("Files will be saved at: "+results_dir);
//if delimiters such as , ; or _ are there in file name, split string and join with underscore
file_name_split = split(file_name,",;_-");
file_name =String.join(file_name_split,"_");
img_name=getTitle();
Stack.getDimensions(width, height, sizeC, sizeZ, frames);
max_save_name="MAX_"+file_name;
run("Select None");
run("Remove Overlay");
getPixelSize(unit, pixelWidth, pixelHeight);
//Check image properties************
//Check if RGB
if (bitDepth()==24)
{
print("Image is RGB type. It is recommended to NOT\nconvert the image to RGB and use the raw output from the microscope (usually, 8,12 or 16-bit)\n.");
rgb_prompt = getBoolean("Image is RGB. Recommend to use 8,12 or 16-bit images. Can try converting to 8-bit and proceed.", "Convert to 8-bit", "No, stop analysis");
if(rgb_prompt ==1)
{
print("Converting to 8-bit");
selectWindow(img_name);
run("8-bit");
}
else exit("User terminated analysis as Image is RGB.");
}
//check if unit is microns or micron
unit=String.trim(unit);
if(unit!="microns" && unit!="micron" && unit!="um" )
{
print("Image not calibrated in microns. This is required for accurate segmentation");
exit("Image must have pixel size in microns.\nGo to Image -> Properties to set this.\nYou can get this from the microscope settings.\nCannot proceed: STOPPING Analysis");
}
//************
//Define scale factor to be used
target_pixel_size= training_pixel_size/scale;
scale_factor = pixelWidth/target_pixel_size;
if(scale_factor<1.001 && scale_factor>1) scale_factor=1;
//do not include cells greater than 1000 micron in area
//neuron_area_limit=1500; //microns
neuron_max_pixels=neuron_area_limit/pixelWidth; //convert micron to pixels
//using limit when segmenting neurons
//neuron_seg_lower_limit=90;//microns
neuron_seg_lower_limit=neuron_seg_lower_limit/pixelWidth;
//using limit for marker multiplication and delineation
//neuron_lower_limit= 160;//microns
neuron_min_pixels=neuron_lower_limit/pixelWidth; //convert micron to pixels
backgrnd_radius=backgrnd_radius/pixelWidth;//convert micron to pixels
table_name="Analysis_"+file_name;
Table.create(table_name);//Final Results Table
selectWindow(table_name);
Table.set("File name",0,file_name);
Table.update;
row=0; //row counter for the table
image_counter=0;
//added option for extended depth of field projection for widefield images
if(sizeZ>1)
{
print(img_name+" is a stack");
roiManager("reset");
waitForUser("Verify the type of image projection you'd like (MIP or Extended depth of field\nYou can select in the next prompt.");
projection_method=getBoolean("3D stack detected. Which projection method would you like?", "Maximum Intensity Projection", "Extended Depth of Field (Variance)");
if(projection_method==1)
{
waitForUser("Note the start and end of the stack.\nPress OK when done");
Dialog.create("Choose slices");
Dialog.addNumber("Start slice", 1);
Dialog.addNumber("End slice", sizeZ);
Dialog.show();
start=Dialog.getNumber();
end=Dialog.getNumber();
run("Z Project...", "start="+start+" stop="+end+" projection=[Max Intensity]");
max_projection=getTitle();
}
else
{
max_projection=extended_depth_proj(img_name);
}
}
else
{
print(img_name+" has only one slice, using as max projection");
max_projection=getTitle();
}
max_save_name="MAX_"+file_name;
selectWindow(max_projection);
rename(max_save_name);
max_projection = max_save_name;
//Segment Neurons
selectWindow(max_projection);
run("Select None");
run("Remove Overlay");
//calculate no. of tiles
new_width=round(width*scale_factor);
new_height=round(height*scale_factor);
n_tiles=4;
if(new_width>2000 || new_height>2000) n_tiles=5;
if(new_width>5000 || new_height>5000) n_tiles=8;
else if (new_width>9000 || new_height>5000) n_tiles=12;
print("No. of tiles: "+n_tiles);
//Segment ganglia
selectWindow(max_projection);
run("Select None");
run("Remove Overlay");
if (Cell_counts_per_ganglia==true)
{
roiManager("reset");
if(Ganglia_detection=="DeepImageJ")
{
//ganglia_binary=ganglia_deepImageJ(max_projection,cell_channel,ganglia_channel);
args=max_projection+","+cell_channel+","+ganglia_channel;
//get ganglia outline
runMacro(segment_ganglia,args);
wait(5);
ganglia_binary=getTitle();
//draw_ganglia_outline(ganglia_binary,true);
}
else
{
ganglia_binary=draw_ganglia_outline(max_projection,cell_channel,ganglia_channel,false);
}
}
else ganglia_binary = "NA";
//neuron_subtype_matrix=0;
no_markers=0;
//if user wants to enter markers before hand, can do that at the start
//otherwise, option to enter them manually here
arr=Array.getSequence(sizeC);
arr=add_value_array(arr,1);
if(Enter_channel_details_now==true)
{
channel_names=marker_names_manual;//split(marker_names_manual, ",");
channel_numbers=marker_no_manual;//split(marker_no_manual, ",");
//get channel numbers by parsing array and converting values to integer
channel_numbers=convert_array_int(marker_no_manual);
no_markers=channel_names.length;
//Array.show(channel_names);
//Array.show(channel_numbers);
}
else
{
no_markers=getNumber("How many markers would you like to analyse?", 1);
string=getString("Enter names of markers separated by comma (,)", "Names");
channel_names=split(string, ",");
if(channel_names.length!=no_markers) exit("Channel names do not match the no of markers");
channel_numbers=newArray(sizeC);
marker_label_img=newArray(sizeC);
Dialog.create("Select channels for each marker");
for(i=0;i1)
{
channel_combinations=combinations(channel_names); //get all possible combinations and adds an underscore between name labels if multiple markers
channel_combinations=sort_marker_array(channel_combinations);
}
else
{
channel_combinations=channel_names; // pass single combination
}
channel_position=newArray();
marker_label_arr=newArray(); //store names of label images generated from StarDist
selectWindow(max_projection);
Stack.setDisplayMode("color");
row=0;
//iterate through all the channel combinations
//perform segmentation and update table
for(i=0;i1) marker_label_arr[i]=label_rescaled_img;//label_marker;
marker_count=roiManager("count"); // in case any neurons added after manual verification of markers
selectWindow(table_name);
//Table.set("Total "+cell_type, row, cell_count);
Table.set("Marker Combinations", row, channel_name);
Table.set("Number of cells per marker combination", row, marker_count);
Table.set("|", row, "|");
//Table.set(""+cell_type, row, marker_count/cell_count);
Table.update;
row+=1;
//selectWindow(max_projection);
roiManager("deselect");
//roi_file_name= String.join(channel_arr, "_");
roi_location_marker=results_dir+channel_name+"_ROIs.zip";
roiManager("save",roi_location_marker);
close(seg_marker_img);
roiManager("reset");
//Array.print(marker_label_arr);
if (Cell_counts_per_ganglia==true)
{
selectWindow(label_marker);
run("Remove Overlay");
run("Select None");
args=label_marker+","+ganglia_binary;
//get cell count per ganglia
runMacro(ganglia_cell_count,args);
close("label_overlap");
selectWindow("cells_ganglia_count");
cell_count_per_ganglia=Table.getColumn("Cell counts");
selectWindow(table_name);
Table.setColumn(channel_name+" counts per ganglia", cell_count_per_ganglia);
Table.update;
selectWindow("cells_ganglia_count");
run("Close");
roiManager("reset");
}
//as there is no hu, not performing spatial analysis between Hu and marker
close(label_marker);
}
//if more than one marker to analyse; if more than one marker, then it multiplies the marker labels from above to find coexpressing cells
else if(channel_arr.length>=1)
{
for(j=0;j0)
{
roiManager("save",roi_location_marker);
}
marker_count=roiManager("count"); // in case any neurons added after analysis of markers
selectWindow(table_name);
//Table.set("Total "+cell_type, row, cell_count);
Table.set("Marker Combinations", row, roi_file_name);
Table.set("Number of cells per marker combination", row, marker_count);
Table.set("|", row, "|");
//Table.set(""+cell_type, row, marker_count/cell_count);
Table.update;
row+=1;
if (Cell_counts_per_ganglia==true)
{
if(roiManager("count")>0)
{
selectWindow(result);
run("Remove Overlay");
run("Select None");
args=result+","+ganglia_binary;
//get cell count per ganglia
runMacro(ganglia_cell_count,args);
close("label_overlap");
selectWindow("cells_ganglia_count");
cell_count_per_ganglia=Table.getColumn("Cell counts");
selectWindow("cells_ganglia_count");
run("Close");
roiManager("reset");
selectWindow(table_name);
Table.setColumn(roi_file_name+" counts per ganglia", cell_count_per_ganglia);
}
else{
cell_count_per_ganglia = 0;
Table.set(roi_file_name+" counts per ganglia", 0,cell_count_per_ganglia);
}
Table.update;
}
roiManager("reset");
}
}
close(result);
}
}
//remove zeroes in the array
selectWindow(table_name);
marker_combinations=Table.getColumn("Marker Combinations");
marker_combinations=Array.deleteValue(marker_combinations, 0);
Table.setColumn("Marker Combinations", marker_combinations);
//trim marker combination column to remove zeroes
marker_comb_length=marker_combinations.length;
no_cells_marker=Table.getColumn("Number of cells per marker combination");
no_cells_marker=Array.trim(no_cells_marker,marker_comb_length);
Table.setColumn("Number of cells per marker combination", no_cells_marker);
//replace zeroes in divider column with divider
file_array=Table.getColumn("|");
file_array=replace_str_arr(file_array,0,"|");
Table.setColumn("|", file_array);
Table.update;
close("label_img_*");
//remove zeroes in the file name
selectWindow(table_name);
file_array=Table.getColumn("File name");
file_array=Array.deleteValue(file_array, 0);
Table.setColumn("File name", file_array);
selectWindow(table_name);
Table.save(results_dir+"Cell_counts.csv");
//save max projection if its scaled image, can use this for further processing later
selectWindow(max_projection);
run("Remove Overlay");
run("Select None");
saveAs("Tiff", results_dir+max_save_name);
//run("Close");
roiManager("UseNames", "false");
print("Files saved at: "+results_dir);
close("*");
exit("Multi-channel Neuron analysis complete");
//close("Image correlation. Local region size = 3 pixels");
//function to segment cells using max projection, image to segment, model file location
//no of tiles for stardist, width and height of image
//returns the ROI manager with ROIs overlaid on the image.
function segment_cells(max_projection,img_seg,model_file,n_tiles,width,height,scale_factor,neuron_seg_lower_limit,probability,overlap)
{
//need to have the file separator as \\\\ in the file path when passing to StarDist Command from Macro.
//regex uses \ as an escape character, so \\ gives one backslash \, \\\\ gives \\.
//Windows file separator \ is actually \\ as one backslash is an escape character
//StarDist command takes the escape character as well, so pass 16 backlash to get 4xbackslash in the StarDIst macro command (which is then converted into 2)
model_file=replace(model_file, "\\\\","\\\\\\\\\\\\\\\\");
choice=0;
roiManager("reset");
//model_file="D:\\\\Gut analysis toolbox\\\\models\\\\2d_enteric_neuron\\\\TF_SavedModel.zip";
selectWindow(img_seg);
run("Command From Macro", "command=[de.csbdresden.stardist.StarDist2D],args=['input':'"+img_seg+"', 'modelChoice':'Model (.zip) from File', 'normalizeInput':'true', 'percentileBottom':'1.0', 'percentileTop':'99.8', 'probThresh':'"+probability+"', 'nmsThresh':'"+overlap+"', 'outputType':'Label Image', 'modelFile':'"+model_file+"', 'nTiles':'"+n_tiles+"', 'excludeBoundary':'2', 'roiPosition':'Automatic', 'verbose':'false', 'showCsbdeepProgress':'false', 'showProbAndDist':'false'], process=[false]");
wait(50);
temp=getTitle();
run("Duplicate...", "title=label_image");
label_image=getTitle();
run("Remove Overlay");
close(temp);
roiManager("reset");
selectWindow(label_image);
wait(20);
//remove all labels touching the borders
run("Remove Border Labels", "left right top bottom");
wait(10);
rename("Label-killBorders"); //renaming as the remove border labels gives names with numbers in brackets
//revert labelled image back to original size
if(scale_factor!=1)
{
selectWindow("Label-killBorders");
//run("Duplicate...", "title=label_original");
run("Scale...", "x=- y=- width="+width+" height="+height+" interpolation=None create title=label_original");
close("Label-killBorders");
}
else
{
selectWindow("Label-killBorders");
rename("label_original");
}
wait(5);
//rename("label_original");
//size filtering
selectWindow("label_original");
run("Label Size Filtering", "operation=Greater_Than_Or_Equal size="+neuron_seg_lower_limit);
label_filter=getTitle();
resetMinAndMax();
close("label_original");
//convert the labels to ROIs
runMacro(label_to_roi,label_filter);
wait(10);
close(label_image);
selectWindow(max_projection);
roiManager("show all");
close(label_filter);
}
//multiply label images of markers to get double positive cells
//exclude based no size and only keep cells if there is overlap
function multiply_markers(marker1,marker2,minimum_size,maximum_size)
{
//marker 1 is ref channel For neuron segmentation with Hu, its Hu and then marker of choice in marker2
// Init GPU
run("CLIJ2 Macro Extensions", "cl_device=");
Ext.CLIJ2_clear();
Ext.CLIJ2_pushCurrentZStack(marker1);
Ext.CLIJ2_pushCurrentZStack(marker2);
// Exclude Labels Outside Size Range
//minimum_size = 300.0;
//maximum_size = 3000.0;
Ext.CLIJ2_excludeLabelsOutsideSizeRange(marker2, marker2_filt, minimum_size, maximum_size);
// Greater Or Equal Constant; convert label image to binary
constant = 1.0;
Ext.CLIJ2_greaterOrEqualConstant(marker2_filt, marker2_bin, constant);
Ext.CLIJ2_release(marker2_filt);
// Mean Intensity Map -> Area fraction
Ext.CLIJ2_meanIntensityMap(marker2_bin, marker1, area_frac);
Ext.CLIJ2_release(marker2_bin);
// Greater Or Equal Constant
constant = 0.4;
Ext.CLIJ2_greaterOrEqualConstant(area_frac, marker2_area_filt, constant);
Ext.CLIJ2_release(area_frac);
// Multiply Images
Ext.CLIJ2_multiplyImages(marker1, marker2_area_filt, marker2_processed);
Ext.CLIJ2_release(marker2_area_filt);
Ext.CLIJ2_release(marker1);
Ext.CLIJ2_closeIndexGapsInLabelMap(marker2_processed, marker2_idx);
Ext.CLIJ2_release(marker2_processed);
Ext.CLIJ2_pull(marker2_idx);
//waitForUser;
setTool(3); //freehand tool
return marker2_idx;
}
//remove space from strings in array
function trim_space_arr(arr)
{
for (i = 0; i < arr.length; i++)
{
temp=String.trim(arr[i]); //arr[i]+val;
arr[i]=temp;
}
return arr;
}
//add a value to every element of an array
function add_value_array(arr,val)
{
for (i = 0; i < arr.length; i++)
{
temp=arr[i]+val;
arr[i]=parseInt(temp);
}
return arr;
}
//convert arr to int
function convert_array_int(arr)
{
for (i = 0; i < arr.length; i++)
{
arr[i]=parseInt(arr[i]);
}
return arr;
}
//function to scale imag
function scale_image(img,scale_factor,name)
{
if(scale_factor!=1)
{
selectWindow(img);
Stack.getDimensions(width, height, channels, slices, frames);
new_width=round(width*scale_factor);
new_height=round(height*scale_factor);
scaled_img=name+"_resize";
run("Scale...", "x=- y=- width="+new_width+" height="+new_height+" interpolation=None create title="+scaled_img);
//close(img);
selectWindow(name+"_resize");
}
else
{
scaled_img=img;
}
return scaled_img;
}
//generate every possible combination of markers
function combinations(arr)
{
len=arr.length;
str="";
p=Math.pow(2,len);
arr_str=newArray();
for(i=0;i0) //bitwise AND comparison
{
//print(arr[j]);
str+=arr[j]+",";
}
//else print("Nothing");
}
if(str!="") str=substring(str,0,str.length-1); //if not empty string, remove the comma at the end
arr_str[i]=str;
str="";
//str+="\n";
}
return arr_str;
}
//sort the string array based on the number of strings/markers
function sort_marker_array(arr)
{
//print(no_combinations);
rank_idx=1;
rank_array=newArray();
no_markers=1;
//first value is empty string, so deleting that
arr=Array.deleteValue(arr,"");
no_combinations=arr.length;
do
{
for (i = 0; i < no_combinations; i++)
{
arr_str=split(arr[i], ",");
if(arr_str.length==no_markers)
{
rank_array[i]=rank_idx;
rank_idx+=1;
}
}
no_markers+=1;
}
while (rank_idx<=no_combinations)
//Array.show(arr);
//Array.show(rank_array);
//change order of markers based on the order specified in rank_array
Array.sort(rank_array,arr);
//Array.show(arr1);
return arr;
}
//find if a string is contained within an array of strings
//case insensitive
function find_str_array(arr,name)
{
name=".*"+toLowerCase(name)+".*";
no_str=arr.length;
position="NA";
for (i=0; i1)
{
for(ch=1;ch<=channels;ch++)
{
selectWindow(img);
Stack.setChannel(ch);
getLut(reds, greens, blues);
Ext.CLIJ2_push(img);
radius_x = 2.0;
radius_y = 2.0;
sigma = 10.0;
proj_img="proj_img"+ch;
Ext.CLIJ2_extendedDepthOfFocusVarianceProjection(img, proj_img, radius_x, radius_y, sigma);
Ext.CLIJ2_pull(proj_img);
setLut(reds, greens, blues);
//Ext.CLIJ2_pull(img);
concat_ch=concat_ch+"c"+ch+"="+proj_img+" ";
}
Ext.CLIJ2_clear();
//print(concat_ch);
run("Merge Channels...", concat_ch+" create");
Stack.setDisplayMode("color");
}
else
{
selectWindow(img);
getLut(reds, greens, blues);
Ext.CLIJ2_push(img);
radius_x = 2.0;
radius_y = 2.0;
sigma = 10.0;
proj_img="proj_img";
Ext.CLIJ2_extendedDepthOfFocusVarianceProjection(img, proj_img, radius_x, radius_y, sigma);
Ext.CLIJ2_pull(proj_img);
setLut(reds, greens, blues);
}
max_name="MAX_"+img;
rename(max_name);
setVoxelSize(vox_width, vox_height, vox_depth, vox_unit);
close(img);
return max_name;
}
//function to create ganglia image for saving annotations; move this to separate file later on
function create_ganglia_img(max_projection,ganglia_channel,cell_channel)
{
selectWindow(max_projection);
run("Select None");
Stack.setChannel(ganglia_channel);
run("Duplicate...", "title=ganglia_ch duplicate channels="+ganglia_channel);
run("Green");
selectWindow(max_projection);
run("Select None");
Stack.setChannel(cell_channel);
run("Duplicate...", "title=cells_ch duplicate channels="+cell_channel);
run("Magenta");
run("Merge Channels...", "c1=ganglia_ch c2=cells_ch create");
composite_img=getTitle();
run("RGB Color");
ganglia_rgb=getTitle();
return ganglia_rgb;
}