Exemplo n.º 1
0
def plotISIDistributions(sessions,groups=None,sessionTypes=None,samplingRate=30000.0,save=False,fname=None,figsize=(10,6)):
    """Plots the isi distributions for all the cells in the given sessions"""
    fig = plt.figure(figsize=figsize)
    fig.subplots_adjust(left=0.05,right=.95)
    ISIs = {}
    ncells = 0
    if sessionTypes != None:
        sessionTypes = dict(zip(sessions,sessionTypes))
    for g in groups:
        for s in sessions:
            dataFile = h5py.File(os.path.expanduser('~/Documents/research/data/spikesorting/hmm/p=1e-20/%sg%.4d.hdf5' % (s,g)),'r')
            try:
                for c in dataFile['unitTimePoints'].keys():
                    isi = np.log(np.diff(dataFile['unitTimePoints'][c][:]/(samplingRate/1000)))
                    cn = 'g%dc%d' % (g,int(c))
                    if cn in ISIs:
                        ISIs[cn]['%s' %(s,)] = isi
                    else:
                        ISIs[cn] = {'%s' %(s,): isi}
            finally:
                dataFile.close()
        
    i = 1
    ncells = len(ISIs.keys())
    for c in ISIs.keys():
        ax = Subplot(fig,1,ncells,i)
        formatAxis(ax)
        fig.add_axes(ax)
        ax.set_title(c)
        for k,v in ISIs[c].items():
            if sessionTypes != None:
                L = sessionTypes[k]
            else:
                L = k
            n,b = np.histogram(v,bins=20,normed=True)
            plt.plot(b[:-1],n,label=L)
        i+=1
        ax.set_xlabel('ISI [ms]')
        xl,xh = int(np.round((b[0]-0.5)*2))/2,int(np.round((b[-1]+0.5)*2))/2
        xl = -0.5
        dx = np.round(10.0*(xh-xl)/4.0)/10
        xt_ = np.arange(xl,xh+1,dx)
        ax.set_xticks(xt_)
        ax.set_xticklabels(map(lambda s: r'$10^{%.1f}$' % (s,),xt_))

    fig.axes[-1].legend()
    if save:
        if fname == None:
            fname = os.path.expanduser('~/Documents/research/figures/isi_comparison.pdf')
        fig.savefig(fname,bbox='tight')
Exemplo n.º 2
0
def plotSpikes(qdata,save=False,fname='hmmSorting.pdf',tuning=False,figsize=(10,6)):

    allSpikes = qdata['allSpikes'] 
    unitSpikes = qdata['unitSpikes']
    spikeIdx = qdata['spikeIdx']
    spikeIdx = qdata['unitTimePoints']
    units = qdata['unitTimePoints']
    spikeForms = qdata['spikeForms']
    channels = qdata['channels']
    uniqueIdx = qdata['uniqueIdx']
    samplingRate = qdata.get('samplingRate',30000.0)
    """
    mustClose = False
    if isinstance(dataFile,str):
        dataFile = h5py.File(dataFile,'r')
        mustClose = True
    data = dataFile['data'][:]
    """
    keys = np.array(units.keys())
    x = np.arange(32)[None,:] + 42*np.arange(spikeForms.shape[1])[:,None]
    xt = np.linspace(0,31,spikeForms.shape[-1])[None,:] + 42*np.arange(spikeForms.shape[1])[:,None]
    xch = 10 + 42*np.arange(len(channels))
    for c in units.keys():
        ymin,ymax = (5000,-5000)
        fig = plt.figure(figsize=figsize)
        fig.subplots_adjust(hspace=0.3)
        print "Unit: %s " %(str(c),)
        print "\t Plotting waveforms..."
        sys.stdout.flush()
        #allspikes = data[units[c][:,None]+np.arange(-10,22)[None,:],:]
        #allspikes = allSpikes[spikeIdx[c]]
        allspikes = qdata['unitSpikes'][c]
        otherunits = keys[keys!=c]
        #nonOverlapIdx = np.prod(np.array([~np.lib.arraysetops.in1d(spikeIdx[c],spikeIdx[c1]) for c1 in otherunits]),axis=0).astype(np.bool)
        #nonOverlapIdx = np.prod(np.array([pdist_threshold(spikeIdx[c],spikeIdx[c1],3) for c1 in otherunits]),axis=0).astype(np.bool)
        #nonOverlapIdx = uniqueIdx[c]
        nonOverlapIdx = qdata['nonOverlapIdx'][c]
        overlapIdx = np.lib.arraysetops.setdiff1d(np.arange(qdata['unitTimePoints'][c].shape[0]),nonOverlapIdx)
        #allspikes = allSpikes[np.lib.arraysetops.union1d(nonOverlapIdx,overlapIdx)]
        ax = Subplot(fig,2,3,1)
        fig.add_axes(ax)
        formatAxis(ax)
        #plt.plot(x.T,sp,'b')
        m = allspikes[:].mean(0)
        s = allspikes[:].std(0)
        plt.plot(x.T,m,'k',lw=1.5)
        #find the minimum point for this template
        ich = spikeForms[int(c)].min(1).argmin()
        ix = spikeForms[int(c)][ich,:].argmin()
        #plt.plot(x.T,spikeForms[int(c)][:,ix-10:ix+22].T,'r')
        plt.plot(x.T,np.roll(spikeForms[int(c)],10-ix,axis=1)[:,:32].T,'r')
        for i in xrange(x.shape[0]):
            plt.fill_between(x[i],m[:,i]-s[:,i],m[:,i]+s[:,i],color='b',alpha=0.5)
        yl = ax.get_ylim()
        ymin = min(ymin,yl[0])
        ymax = max(ymax,yl[1])
        ax.set_title('All spikes (%d)' % (allspikes.shape[0],))

        ax = Subplot(fig,2,3,2)
        fig.add_axes(ax)
        formatAxis(ax)
        if len(nonOverlapIdx)>0:
            m =  allspikes[:][nonOverlapIdx,:,:].mean(0)
            s =  allspikes[:][nonOverlapIdx,:,:].std(0)
            plt.plot(x.T,m,'k',lw=1.5)
            for i in xrange(x.shape[0]):
                plt.fill_between(x[i],m[:,i]-s[:,i],m[:,i]+s[:,i],color='b',alpha=0.5)
        #plt.plot(x.T,spikeForms[int(c)][:,ix-10:ix+22].T,'r')
        plt.plot(x.T,np.roll(spikeForms[int(c)],10-ix,axis=1)[:,:32].T,'r')
        yl = ax.get_ylim()
        ymin = min(ymin,yl[0])
        ymax = max(ymax,yl[1])
        #for sp in allspikes[nonOverlapIdx,:,:]:
        #    plt.plot(x.T,sp,'r')

        ax.set_title('Non-overlap spikes (%d)' %(nonOverlapIdx.shape[0],))
        ax = Subplot(fig,2,3,3)
        fig.add_axes(ax)
        formatAxis(ax)
        if len(overlapIdx)>0:
            m =  allspikes[:][overlapIdx,:,:].mean(0)
            s =  allspikes[:][overlapIdx,:,:].std(0)
            plt.plot(x.T,m,'k',lw=1.5)
            for i in xrange(x.shape[0]):
                plt.fill_between(x[i],m[:,i]-s[:,i],m[:,i]+s[:,i],color='b',alpha=0.5)
        #plt.plot(x.T,spikeForms[int(c)][:,ix-10:ix+22].T,'r')
        plt.plot(x.T,np.roll(spikeForms[int(c)],10-ix,axis=1)[:,:32].T,'r')
        yl = ax.get_ylim()
        ymin = min(ymin,yl[0])
        ymax = max(ymax,yl[1])
        #for sp in allspikes[~nonOverlapIdx,:,:]:
        #    plt.plot(x.T,sp,'g')
        ax.set_title('Overlap spikes (%d)' % ((overlapIdx).shape[0],))
        for a in fig.axes:
            a.set_ylim((ymin,ymax))
            a.set_xticks(xch)
            a.set_xticklabels(map(str,channels))
            a.set_xlabel('Channels')
        for a in fig.axes[1:]:
            a.set_yticklabels([])
        fig.axes[0].set_ylabel('Amplitude')
        """
        isi distribution
        """
        print "\t ISI distribution..."
        sys.stdout.flush()
        timepoints = qdata['unitTimePoints'][c][:]/(samplingRate/1000)
        if len(timepoints)<2:
            print "Too few spikes. Aborting..."
            continue 
        isi = np.log(np.diff(timepoints))
        n,b = np.histogram(isi,100)
        ax = Subplot(fig,2,3,4)
        fig.add_axes(ax)
        formatAxis(ax)
        ax.plot(b[:-1],n,'k')
        yl = ax.get_ylim()
        ax.vlines(0.0,0,yl[1],'r',lw=1.5)
        ax.set_xlabel('ISI [ms]')
        #get xticklabels
        xl,xh = int(np.round((b[0]-0.5)*2))/2,int(np.round((b[-1]+0.5)*2))/2
        xl = -0.5
        dx = np.round(10.0*(xh-xl)/5.0)/10
        xt_ = np.arange(xl,xh+1,dx)
        ax.set_xticks(xt_)
        ax.set_xticklabels(map(lambda s: r'$10^{%.1f}$' % (s,),xt_))

        """
        auto-correlogram
        """
        print "\t auto-correllogram..."
        sys.stdout.flush()
        if not 'autoCorr' in qdata:
            if isinstance(qdata,dict):
                qdata['autoCorr'] = {}
            else:
                qdata.create_group('autoCorr')
        if not c in qdata['autoCorr']:
            C = pdist_threshold2(timepoints,timepoints,50)
            qdata['autoCorr'][c] = C
            if not isinstance(qdata,dict):
                qdata.flush()
        else:
            C = qdata['autoCorr'][c][:]
        n,b = np.histogram(C[C!=0],np.arange(-50,50))
        ax = Subplot(fig,2,3,5)
        fig.add_axes(ax)
        formatAxis(ax)
        ax.plot(b[:-1],n,'k')
        ax.fill_betweenx([0,n.max()],-1.0,1.0,color='r',alpha=0.3)
        ax.set_xlabel('Lag [ms]')
        if tuning:
            print "\tPlotting tuning..."
            sys.stdout.flush()
            #attempt to get tuning for the current session, based on PWD
            stimCounts,isiCounts,angles,spikedata = gt.getTuning(sptrain=timepoints)        
            #reshape to number of orientations X number of reps, collapsing
            #across everything else
            #angles = np.append(angles,[angles[0]])
            C = stimCounts['0'].transpose((1,0,2,3))
            C = C.reshape(C.shape[0],C.size/C.shape[0])
            ax = plt.subplot(2,3,6,polar=True) 
            ax.errorbar(angles*np.pi/180,C.mean(1),C.std(1))

        if save:
            if not os.path.isabs(fname):
                fn = os.path.expanduser('~/Documents/research/figures/SpikeSorting/hmm/%s' % (fname.replace('.pdf','Unit%s.pdf' %(str(c),)),))
            else:
                fn = fname.replace('.pdf','Unit%s.pdf' %(str(c),))

            fig.savefig(fn,bbox='tight')

    if not save:
        plt.draw()
    """