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path: root/wqflask/basicStatistics/updatedBasicStatisticsPage.py
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from htmlgen import HTMLgen2 as HT

from base.templatePage import templatePage
from dbFunction import webqtlDatabaseFunction
import BasicStatisticsFunctions

#Window generated from the Trait Data and Analysis page (DataEditingPage.py) with updated stats figures; takes the page's values that can bed edited by the user
class updatedBasicStatisticsPage(templatePage):
	
	plotMinInformative = 4
	
	def __init__(self, fd):	

		templatePage.__init__(self, fd)

		if not fd.genotype:
			fd.readGenotype()
			this_strainlist = fd.strainlist

		if fd.allstrainlist:
			this_strainlist = fd.allstrainlist
			
		fd.readData(this_strainlist)
		
		specialStrains = [] #This appears to be the "other/non-RISet strainlist" without parents/f1 strains; not sure what to name it
		setStrains = []
		for item in this_strainlist:
			if item not in fd.strainlist and item.find('F1') < 0:
				specialStrains.append(item)
			else:
				continue
			
		specialStrains.sort()
		if specialStrains:
			specialStrains = fd.f1list+fd.parlist+specialStrains			

		self.dict['title'] = 'Basic Statistics'
		TD_LR = HT.TD(valign="top",width="100%",bgcolor="#fafafa")

		stats_row = HT.TR()
		stats_cell = HT.TD()
		stats_script = HT.Script(language="Javascript")	

		#Get strain names, values, and variances
		strain_names = fd.formdata.getvalue('strainNames').split(',')
		strain_vals = fd.formdata.getvalue('strainVals').split(',')
		strain_vars = fd.formdata.getvalue('strainVars').split(',')

		vals = []
		if (len(strain_names) > 0):
			if (len(strain_names) > 3):
				#Need to create "vals" object
				for i in range(len(strain_names)):
					try:
						 this_strain_val = float(strain_vals[i])
					except:
						 continue
					try:
						 this_strain_var = float(strain_vars[i])						 
					except:
						 this_strain_var = None
						
					thisValFull = [strain_names[i], this_strain_val, this_strain_var]	
					vals.append(thisValFull)
	
				stats_tab_list = [HT.Href(text="Basic Table", url="#statstabs-1", Class="stats_tab"),HT.Href(text="Probability Plot", url="#statstabs-2", Class="stats_tab"), 
								HT.Href(text="Bar Graph (by name)", url="#statstabs-3", Class="stats_tab"), HT.Href(text="Bar Graph (by rank)", url="#statstabs-4", Class="stats_tab"), 
								HT.Href(text="Box Plot", url="#statstabs-5", Class="stats_tab")]
				stats_tabs = HT.List(stats_tab_list)
				
				stats_container = HT.Div(id="stats_tabs", Class="ui-tabs")
				stats_container.append(stats_tabs)
				
				stats_script_text = """$(function() { $("#stats_tabs").tabs();});""" #Javascript enabling tabs
				
				table_div = HT.Div(id="statstabs-1", style="height:320px;width:740px;overflow:scroll;")
				table_container = HT.Paragraph()	
			
				statsTable = HT.TableLite(cellspacing=0, cellpadding=0, width="100%")
				this_trait_type = fd.formdata.getvalue('trait_type', None)
				this_cellid = fd.formdata.getvalue('cellid', None)
				statsTableCell = BasicStatisticsFunctions.basicStatsTable(vals=vals, trait_type=this_trait_type, cellid=this_cellid)
				statsTable.append(HT.TR(HT.TD(statsTableCell)))
	
				table_container.append(statsTable)
				table_div.append(table_container)
				stats_container.append(table_div)
	
				normalplot_div = HT.Div(id="statstabs-2", style="height:540px;width:740px;overflow:scroll;")
				normalplot_container = HT.Paragraph()
				normalplot = HT.TableLite(cellspacing=0, cellpadding=0, width="100%")
				plotTitle = fd.formdata.getvalue("normalPlotTitle","")
				normalplot_img = BasicStatisticsFunctions.plotNormalProbability(vals=vals, RISet=fd.RISet, title=plotTitle, specialStrains=specialStrains)
				normalplot.append(HT.TR(HT.TD(normalplot_img)))
				normalplot.append(HT.TR(HT.TD(HT.BR(),HT.BR(),"This plot evaluates whether data are \
				normally distributed. Different symbols represent different groups.",HT.BR(),HT.BR(),
				"More about ", HT.Href(url="http://en.wikipedia.org/wiki/Normal_probability_plot", 
						target="_blank", text="Normal Probability Plots"), " and more about interpreting these plots from the ", HT.Href(url="/glossary.html#normal_probability", target="_blank", text="glossary"))))				
				normalplot_container.append(normalplot)
				normalplot_div.append(normalplot_container)
				stats_container.append(normalplot_div)
	
				barName_div = HT.Div(id="statstabs-3", style="height:540px;width:740px;overflow:scroll;")
				barName_container = HT.Paragraph()
				barName = HT.TableLite(cellspacing=0, cellpadding=0, width="100%")
				barName_img = BasicStatisticsFunctions.plotBarGraph(identification=fd.identification, RISet=fd.RISet, vals=vals, type="name")
				barName.append(HT.TR(HT.TD(barName_img)))		
				barName_container.append(barName)
				barName_div.append(barName_container)
				stats_container.append(barName_div)
	
				barRank_div = HT.Div(id="statstabs-4", style="height:540px;width:740px;overflow:scroll;")
				barRank_container = HT.Paragraph()
				barRank = HT.TableLite(cellspacing=0, cellpadding=0, width="100%")
				barRank_img = BasicStatisticsFunctions.plotBarGraph(identification=fd.identification, RISet=fd.RISet, vals=vals, type="rank")
				barRank.append(HT.TR(HT.TD(barRank_img)))	
				barRank_container.append(barRank)
				barRank_div.append(barRank_container)
				stats_container.append(barRank_div)		

				boxplot_div = HT.Div(id="statstabs-5", style="height:540px;width:740px;overflow:scroll;")
				boxplot_container = HT.Paragraph()
				boxplot = HT.TableLite(cellspacing=0, cellpadding=0, width="100%")
				boxplot_img, boxplot_link = BasicStatisticsFunctions.plotBoxPlot(vals)
				boxplot.append(HT.TR(HT.TD(boxplot_img, HT.P(), boxplot_link, align="left")))		
				boxplot_container.append(boxplot)
				boxplot_div.append(boxplot_container)
				stats_container.append(boxplot_div)					
	
				stats_cell.append(stats_container)	
				stats_script.append(stats_script_text)
		
				submitTable = HT.TableLite(cellspacing=0, cellpadding=0, width="100%")
				stats_row.append(stats_cell)
				
				submitTable.append(stats_row)
				submitTable.append(stats_script)
		
				TD_LR.append(submitTable)
				self.dict['body'] = str(TD_LR)						
			else:
					heading = "Basic Statistics"
					detail = ['Fewer than %d case data were entered for %s data set. No statitical analysis has been attempted.' % (self.plotMinInformative, fd.RISet)]
					self.error(heading=heading,detail=detail)
					return
		else:
			heading = "Basic Statistics"
			detail = ['Empty data set, please check your data.']
			self.error(heading=heading,detail=detail)
			return