def plot_QTdb_filtered_Result_with_syntax_filter(RFfolder,
                                                 TargetRecordList,
                                                 ResultFilterType,
                                                 showExpertLabels=False):
    # exit
    # ==========================
    # plot prediction result
    # ==========================
    reslist = getresultfilelist(RFfolder)
    qtdb = QTloader()
    non_result_extensions = ['out', 'json', 'log', 'txt']
    for fi, fname in enumerate(reslist):
        # block *.out
        file_extension = fname.split('.')[-1]
        if file_extension in non_result_extensions:
            continue
        print 'file name:', fname
        currecname = os.path.split(fname)[-1]
        print currecname
        #if currecname == 'result_sel820':
        #pdb.set_trace()
        if TargetRecordList is not None:
            if currecname not in TargetRecordList:
                continue
        # load signal and reslist
        with open(fname, 'r') as fin:
            (recID, reslist) = pickle.load(fin)
        # filter result of QT
        resfilter = ResultFilter(reslist)
        if len(ResultFilterType) >= 1 and ResultFilterType[0] == 'G':
            reslist = resfilter.group_local_result(cp_del_thres=1)
        reslist_syntax = reslist
        if len(ResultFilterType) >= 2 and ResultFilterType[1] == 'S':
            reslist_syntax = resfilter.syntax_filter(reslist)
        # empty signal result
        #if reslist is None or len(reslist) == 0:
        #continue
        #pdb.set_trace()
        sigstruct = qtdb.load(recID)
        if showExpertLabels == True:
            # Expert Label AdditionalPlot
            ExpertRes = qtdb.getexpertlabeltuple(recID)
            ExpertPoslist = map(lambda x: x[0], ExpertRes)
            AdditionalPlot = [
                ['kd', 'Expert Labels', ExpertPoslist],
            ]
        else:
            AdditionalPlot = None

        # plot res
        #resploter = ECGResultPloter(sigstruct['sig'],reslist)
        #resploter.plot(plotTitle = 'QT database',plotShow = True,plotFig = 2)
        # syntax_filter
        resploter_syntax = ECGResultPloter(sigstruct['sig'], reslist_syntax)
        resploter_syntax.plot(plotTitle='QT Record {}'.format(recID),
                              plotShow=True,
                              AdditionalPlot=AdditionalPlot)
Beispiel #2
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def plot_QTdb_filtered_Result_with_syntax_filter():
    # exit
    RFfolder = os.path.join(\
           projhomepath,\
           'TestResult',\
           'pc',\
           'r5')
    TargetRecordList = [
        'result_sel39',
        'result_sel41',
        'result_sel48',
    ]  #'sel38','sel42','result_sel821','result_sel14046']
    # ==========================
    # plot prediction result
    # ==========================
    reslist = glob.glob(os.path.join(\
           RFfolder,'*'))
    qtdb = QTloader()
    non_result_extensions = ['out', 'json', 'log']
    for fi, fname in enumerate(reslist):
        # block *.out
        file_extension = fname.split('.')[-1]
        if file_extension in non_result_extensions:
            continue
        print 'file name:', fname
        currecname = os.path.split(fname)[-1]
        print currecname
        #if currecname == 'result_sel820':
        #pdb.set_trace()
        if currecname not in TargetRecordList:
            pass
            continue
        # load signal and reslist
        with open(fname, 'r') as fin:
            (recID, reslist) = pickle.load(fin)
        # filter result of QT
        resfilter = ResultFilter(reslist)
        reslist = resfilter.group_local_result(cp_del_thres=1)
        reslist_syntax = resfilter.syntax_filter(reslist)
        # empty signal result
        #if reslist is None or len(reslist) == 0:
        #continue
        #pdb.set_trace()
        sigstruct = qtdb.load(recID)
        # plot res
        #resploter = ECGResultPloter(sigstruct['sig'],reslist)
        #resploter.plot(plotTitle = 'QT database',plotShow = True,plotFig = 2)
        # syntax_filter
        resploter_syntax = ECGResultPloter(sigstruct['sig'], reslist_syntax)
        resploter_syntax.plot(plotTitle='QT database syntax_filter',
                              plotShow=True)
Beispiel #3
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def plotMITdbTestResult():
    RFfolder = os.path.join(\
           projhomepath,\
           'TestResult',\
           'pc',\
           'r3')
    TargetRecordList = [
        'sel38',
        'sel42',
    ]
    # ==========================
    # plot prediction result
    # ==========================
    reslist = glob.glob(os.path.join(\
           RFfolder,'*'))
    for fi, fname in enumerate(reslist):
        # block *.out
        # filter file name
        if fname[-4:] == '.out' or '.json' in fname:
            continue
        currecname = os.path.split(fname)[-1]
        if currecname not in TargetRecordList:
            pass
        if not currecname.startswith('result'):
            continue
        print 'processing file', fname, '...'
        with open(fname, 'r') as fin:
            (recID, reslist) = pickle.load(fin)
        print 'pickle file loaded.'
        # load signal from MITdb
        print 'loading signal data from MITdb...'
        mitdb = MITdbLoader()
        rawsig = mitdb.load(recID)
        print 'signal loaded.'
        # filter result list
        resfilter = ResultFilter(reslist)
        reslist = resfilter.groupresult()
        # plot res
        resploter = ECGResultPloter(rawsig, reslist)
        dispRange = (20000, 21000)
        savefolderpath = os.path.join(curfolderpath, 'tmp', 'MITdbTestResult')
        # debug
        #pdb.set_trace()
        #resploter.plot()
        #resploter.plotAndsave(os.path.join(savefolderpath,recID),plotTitle = 'ID:{},Range:{}'.format(recID,dispRange),dispRange = dispRange)
        resploter.plot(plotTitle=recID)
        pdb.set_trace()
Beispiel #4
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    def debug_FN_FP(self,rawsig,reslist,FN,FP):
        # =================================
        # group result labels
        resgrper = ECGGrouper(reslist)
        ft_reslist = resgrper.group_local_result(reslist)

        # delete white point
        reslist = filter(lambda x:x[1]=='R',reslist)
        
        # R wave pos only
        ft_reslist = filter(lambda x:x[1]=='R',ft_reslist)
        # filtering
        ft_reslist = resgrper.syntax_filter(ft_reslist,Max_Len_Ratio = 1.0/5.0)
        # =================================
        FN_plot_line = ['rd','False Negtive',FN['pos']]
        FP_plot_line = ['ks','False Negtive',FP['pos']]
        #res_plot_line = ['ko','filtered R',map(lambda x:x[0],ft_reslist)]
        # plot res
        resploter = ECGResultPloter(rawsig,reslist)
        resploter.plot(plotTitle = 'Detection Result:'+FN['recname'][0],AdditionalPlot = [FN_plot_line,FP_plot_line,])
Beispiel #5
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def plotMITdbTestResult():
    RFfolder = os.path.join(\
           projhomepath,\
           'TestResult',\
           'pc',\
           'r3')
    TargetRecordList = ['sel38','sel42',]
    # ==========================
    # plot prediction result
    # ==========================
    reslist = glob.glob(os.path.join(\
           RFfolder,'*'))
    for fi,fname in enumerate(reslist):
        # block *.out
        # filter file name
        if fname[-4:] == '.out' or '.json' in fname:
            continue
        currecname = os.path.split(fname)[-1]
        if currecname not in TargetRecordList:
            pass
        if not currecname.startswith('result'):
            continue
        print 'processing file name:',fname
        with open(fname,'r') as fin:
            (recID,reslist) = pickle.load(fin)
        # load signal
        mitdb = MITdbLoader()
        rawsig = mitdb.load(recID)
        # plot res
        # group result labels
        resgrper = ECGGrouper(reslist)
        reslist = resgrper.group_local_result(reslist)

        resploter = ECGResultPloter(rawsig,reslist)
        dispRange = (20000,21000)
        savefolderpath = ur'E:\ECGResults\MITdbTestResult\pic'
        # debug
        #resploter.plot()
        resploter.plot(plotTitle = 'ID:{},Range:{}'.format(recID,dispRange),dispRange = dispRange)
def EvalQTdbResults(resultfilelist, OutputFolder):
    if resultfilelist == None or len(resultfilelist) == 0:
        print "Empty result file list!"
        return None
    FN = {'pos': [], 'label': [], 'recname': []}
    FP = {'pos': [], 'label': [], 'recname': []}
    Err = {'err': [], 'pos': [], 'label': [], 'recname': []}
    #========================================
    # select best round to compare with refs
    #========================================
    bRselector = BestRoundSelector()
    #InvalidRecordList = conf['InvalidRecords']

    # for each record test result
    for fi, fname in enumerate(resultfilelist):

        print 'json load :', fname
        with open(fname, 'rU') as fin:
            Results = json.load(fin)
            Results = Results[0]
        # skip invalid records
        currecordname = Results[0]
        #if currecordname in InvalidRecordList:
        #continue
        # ==================================
        # filter result of QT
        # ==================================
        reslist = Results[1]
        resfilter = ResultFilter(reslist)
        reslist = resfilter.group_local_result(cp_del_thres=1)
        reslist = resfilter.syntax_filter(reslist)
        fResults = (Results[0], reslist)

        fResults = [
            fResults,
        ]
        # show filtered results & raw results
        #for recname , recRes in Results:

        # Evaluate prediction result statistics
        #
        ECGstats = ECGstatistics(fResults)
        pErr, pFN = ECGstats.eval(debug=False)
        # get False Positive
        pFP = ECGstats.pFP
        # one test Error stat
        print '[picle filename]:{}'.format(fname)
        print '[{}] files left.'.format(len(resultfilelist) - fi)
        evallabellist, evalstats = ECGstatistics.dispstat0(pFN=pFN, pErr=pErr)
        # select best Round
        numofFN = len(pFN['pos'])
        if numofFN == 0:
            ExtraInfo = 'Best Round ResultFileName[{}]\nTestSet :{}\n#False Negtive:{}\n'.format(
                fname, [x[0] for x in Results], numofFN)
            bRselector.input(evallabellist, evalstats, ExtraInfo=ExtraInfo)
        # ==============================================
        for kk in Err:
            Err[kk].extend(pErr[kk])
        for kk in FN:
            FN[kk].extend(pFN[kk])
        for kk in FP:
            FP[kk].extend(pFP[kk])

    #====================================
    # write to log file
    #EvalLogfilename = os.path.join(curfolderpath,'res.log')
    output_log_filename = os.path.join(OutputFolder, 'RecordResults.log')
    EvalLogfilename = output_log_filename
    # display error stat for each label & save results to logfile
    ECGstatistics.dispstat0(
        pFN=FN,
        pErr=Err,
        LogFileName=EvalLogfilename,
        LogText='Statistics of Results in FilePath [{}]'.format(
            os.path.split(resultfilelist[0])[0]),
        OutputFolder=OutputFolder)
    with open(os.path.join(curfolderpath, 'Err.txt'), 'w') as fout:
        pickle.dump(Err, fout)
    # find best round
    bRselector.dispBestRound()
    bRselector.dumpBestRound(EvalLogfilename)

    ECGstats.stat_record_analysis(pErr=Err,
                                  pFN=FN,
                                  LogFileName=EvalLogfilename)
    # write csv file
    outputfilename = os.path.join(OutputFolder, 'FalsePositive.csv')
    ECGstats.FP2CSV(FP, Err, outputfilename)
    # False Negtive
    outputfilename = os.path.join(OutputFolder, 'FalseNegtive.csv')
    ECGstats.FN2CSV(FN, Err, outputfilename)
Beispiel #7
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        file_extension = fname.split('.')[-1]
        if file_extension in non_result_extensions:
            continue
        print 'file name:', fname
        currecname = os.path.split(fname)[-1]
        print currecname
        #if currecname == 'result_sel820':
        #pdb.set_trace()
        if currecname not in TargetRecordList:
            pass
            #continue
        # load signal and reslist
        with open(fname, 'r') as fin:
            (recID, reslist) = pickle.load(fin)
        # filter result of QT
        resfilter = ResultFilter(reslist)
        reslist = resfilter.group_local_result(cp_del_thres=1)
        # empty signal result
        #if reslist is None or len(reslist) == 0:
        #continue
        #pdb.set_trace()
        sigstruct = qtdb.load(recID)
        # plot figure
        # plot res
        resploter = ECGResultPloter(sigstruct['sig'], reslist)
        resploter.plot(plotTitle='QT database')

    #==========================
    #show evaluation statistics
    #==========================
    #TestN_Eval(RFfolder)
Beispiel #8
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 def getFN_FP(self,reslist,mit_expertlabel_list,recname,fs = 250):
     FN = {
             'pos':[],
             'label':[],
             'recname':[]
         }
     FP = {
             'pos':[],
             'label':[],
             'recname':[]
         }
     match_dist_thres = fs/5
     # load signal
     cFN = 0
     #mitdb = MITdbLoader()
     #rawsig = mitdb.load(recID)
     # plot res
     # group result labels
     resgrper = ECGGrouper(reslist)
     reslist = resgrper.group_local_result(reslist)
     
     # R wave pos only
     reslist = filter(lambda x:x[1]=='R',reslist)
     # filtering
     reslist = resgrper.syntax_filter(reslist,Max_Len_Ratio = 1.0/5.0)
     res_poslist,res_labellist = zip(*reslist)
     # ------------------------------------------------
     # for each expert label find its closest match,if 
     # distance of this match exceeds match_dist_thres,
     # then it is a classification dismatch.
     # ------------------------------------------------
     N_reslist = len(res_poslist)
     N_TP = 0
     matched_pred_ind_set = set()
     matched_reslist_indexlist = []
     for expmpos in mit_expertlabel_list:
         # find the closest match in reslist
         close_ind = bisect.bisect_left(res_poslist,expmpos)
         if close_ind>= N_reslist:
             FN['pos'].append(expmpos)
             FN['label'].append('R')
             FN['recname'].append(recname)
             cFN += 1
             continue
         matchdist = abs(res_poslist[close_ind]-expmpos)
         if close_ind>0:
             # may find better match
             if abs(res_poslist[close_ind-1]-expmpos)<matchdist:
                 matchdist = abs(res_poslist[close_ind-1]-expmpos)
                 close_ind -= 1
         if matchdist>match_dist_thres or close_ind in matched_pred_ind_set:
             FN['pos'].append(expmpos)
             FN['label'].append('R')
             FN['recname'].append(recname)
             cFN+=1
             continue
         # find a right match:
         N_TP += 1
         matched_pred_ind_set.add(close_ind)
         matched_reslist_indexlist.append(close_ind)
     # find False Positive
     matched_reslist_indexlist.sort()
     start_ind = 0
     for m_ind in  matched_reslist_indexlist:
         while start_ind<N_reslist and start_ind != m_ind:
             # a FP
             FP['pos'].append(res_poslist[start_ind])
             FP['label'].append('R')
             FP['recname'].append(recname)
             start_ind += 1
         start_ind += 1
     return (FN,FP,N_TP)
Beispiel #9
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def FN_stat(csvfilepath = r'MITdb_FalseNegtive_stat.csv'):
    # analysis false negtive status
    RFfolder = os.path.join(\
           projhomepath,\
           'TestResult',\
           'pc',\
           'r3')
    # write FN statistics to csv file
    csv = CSVwriter(csvfilepath)
    title_line = ['record name','False Negtive number','Expert Label Number']
    csv.output([title_line,])

    TargetRecordList = ['sel38','sel42',]
    # ==========================
    # analysis FN 
    # ==========================
    match_dist_thres = 50
    nFN = 0
    nExpLabel = 0
    reslist = glob.glob(os.path.join(RFfolder,'*'))
    N_reslist = len(reslist)
    for fi,fname in enumerate(reslist):
        # block *.out
        # filter file name
        if fname[-4:] == '.out' or '.json' in fname:
            continue
        currecname = os.path.split(fname)[-1]
        if currecname not in TargetRecordList:
            pass
        if not currecname.startswith('result'):
            continue
        print 'processing file:',fname
        print '{} files left.'.format(N_reslist-fi-1)
        with open(fname,'r') as fin:
            (recID,reslist) = pickle.load(fin)
        # load signal
        cFN = 0
        cExpLabel = 0
        mitdb = MITdbLoader()
        rawsig = mitdb.load(recID)
        # plot res
        # group result labels
        resgrper = ECGGrouper(reslist)
        reslist = resgrper.group_local_result(reslist)
        res_poslist,res_labellist = zip(*reslist)
        #--------------------------------------
        # for each expert label find its closest match,if distance of this match exceeds match_dist_thres,then it is a classification dismatch.
        N_res = len(res_poslist)
        cExpLabel = len(mitdb.markpos)
        for expmpos in mitdb.markpos:
            # find the closest match in reslist
            close_ind = bisect.bisect_left(res_poslist,expmpos)
            matchdist = abs(res_poslist[close_ind]-expmpos)
            if close_ind+1<N_res:
                matchdist = min(matchdist,abs(res_poslist[close_ind+1]-expmpos))
            if matchdist>match_dist_thres:
                cFN+=1
        # to csv
        csv.output([[currecname,cFN,cExpLabel],])
        # total stat
        nFN += cFN
        nExpLabel += cExpLabel
        print
        print 'record[{}] FN rate:{},PD rate:{}'.format(fname,float(cFN)/cExpLabel,1-float(cFN)/cExpLabel)
    # =================================
    # total FN
    # =================================
    print 'Total FN rate:{},PD rate:{}'.format(float(nFN)/nExpLabel,1.0-float(nFN)/nExpLabel)
Beispiel #10
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def EvalQTdbResults(resultfilelist, OutputFolder):
    if resultfilelist == None or len(resultfilelist) == 0:
        print "Empty result file list!"
        return None
    FN = {'pos': [], 'label': [], 'recname': []}
    FP = {'pos': [], 'label': [], 'recname': []}
    Err = {'err': [], 'pos': [], 'label': [], 'recname': []}
    #========================================
    # select best round to compare with refs
    #========================================
    bRselector = BestRoundSelector()
    #InvalidRecordList = conf['InvalidRecords']

    # for each record test result
    for fi, fname in enumerate(resultfilelist):

        print 'pickle load :', fname
        with open(fname, 'rU') as fin:
            Results = pickle.load(fin)
        # skip invalid records
        currecordname = Results[0]
        #if currecordname in InvalidRecordList:
        #continue
        # ==================================
        # filter result of QT
        # ==================================
        reslist = Results[1]
        resfilter = ResultFilter(reslist)
        reslist = resfilter.group_local_result(cp_del_thres=1)
        #reslist = resfilter.syntax_filter(reslist)
        fResults = (Results[0], reslist)

        fResults = [
            fResults,
        ]
        # show filtered results & raw results
        #for recname , recRes in Results:

        # Evaluate prediction result statistics
        #
        ECGstats = ECGstatistics(fResults)
        pErr, pFN = ECGstats.eval(debug=False)
        # get False Positive
        pFP = ECGstats.pFP
        # one test Error stat
        print '[picle filename]:{}'.format(fname)
        print '[{}] files left.'.format(len(resultfilelist) - fi)
        evallabellist, evalstats = ECGstatistics.dispstat0(pFN=pFN, pErr=pErr)
        # select best Round
        numofFN = len(pFN['pos'])
        if numofFN == 0:
            ExtraInfo = 'Best Round ResultFileName[{}]\nTestSet :{}\n#False Negtive:{}\n'.format(
                fname, [x[0] for x in Results], numofFN)
            bRselector.input(evallabellist, evalstats, ExtraInfo=ExtraInfo)
        # ==============================================
        for kk in Err:
            Err[kk].extend(pErr[kk])
        for kk in FN:
            FN[kk].extend(pFN[kk])
        for kk in FP:
            FP[kk].extend(pFP[kk])

    return (FN, FP, Err)