Example #1
0
 def generate_prediction(self, model, **kwargs):
     isi_var = self.get_prediction(model)
     if isi_var is None:
         if kwargs:
             self.params.update(kwargs)
         if 'variation_measure' not in self.params:
             self.params.update(variation_measure='lv')
         spiketrains = model.produce_spiketrains(**self.params)
         isi_list = [isi(st) for st in spiketrains]
         if self.params['variation_measure'] == 'lv':
             isi_var = []
             for intervals in isi_list:
                 if intervals.size > 2:
                     isi_var.append(lv(intervals))
         elif self.params['variation_measure'] == 'cv':
             isi_var = []
             for intervals in isi_list:
                 if intervals.size > 2:
                     isi_var.append(cv(intervals))
         elif self.params['variation_measure'] == 'isi':
             isi_var = [
                 float(item) for sublist in isi_list for item in sublist
             ]
         else:
             raise ValueError('Variation measure not known.')
         self.set_prediction(model, isi_var)
     return isi_var
Example #2
0
 def test_2short_spike_train(self):
     seq = [1]
     with self.assertWarns(UserWarning):
         """
         Catches UserWarning: Input size is too small. Please provide
         an input with more than 1 entry.
         """
         self.assertTrue(math.isnan(es.lv(seq, with_nan=True)))
Example #3
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 def test_lv_with_list(self):
     seq = self.test_seq
     assert_array_almost_equal(es.lv(seq), self.target, decimal=9)
Example #4
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 def test_lv_with_plain_array(self):
     seq = np.array(self.test_seq)
     assert_array_almost_equal(es.lv(seq), self.target, decimal=9)
Example #5
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 def test_lv_with_quantities(self):
     seq = pq.Quantity(self.test_seq, units='ms')
     assert_array_almost_equal(es.lv(seq), self.target, decimal=9)
Example #6
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    def generate_prediction(self, model=None):
        prediction = lv(model.get_membrane_potential())
        return prediction

        return prediction
Example #7
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 def test_lv_with_plain_array(self):
     seq = np.array(self.test_seq)
     assert_array_almost_equal(es.lv(seq), self.target, decimal=9)
Example #8
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 def test_lv_with_list(self):
     seq = self.test_seq
     assert_array_almost_equal(es.lv(seq), self.target, decimal=9)
Example #9
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 def test_lv_with_quantities(self):
     seq = pq.Quantity(self.test_seq, units='ms')
     assert_array_almost_equal(es.lv(seq), self.target, decimal=9)
Example #10
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    def generate_prediction(self, model = None):
        prediction = lv(model.get_membrane_potential())
        return prediction

        return prediction
Example #11
0
def main(p,file,save_path):
    pre = 10*pq.ms
    post = 10*pq.ms
    fid = PIO(file)
    blk = fid.read_block()
    FR,ISI,contact_trains = get_contact_sliced_trains(blk,pre=pre,post=post)
    binsize = 2*pq.ms
    for unit in blk.channel_indexes[-1].units:
        root = blk.annotations['ratnum'] + blk.annotations['whisker'] + 'c{}'.format(unit.name[-1])
        trains = contact_trains[unit.name]
        all_isi = np.array([])
        CV_array = np.array([])
        LV_array = np.array([])
        for interval in ISI[unit.name]:
            all_isi = np.concatenate([all_isi,interval])
            if np.all(np.isfinite(interval)):
                CV_array = np.concatenate([CV_array,[cv(interval)]])
                LV_array = np.concatenate([LV_array,[lv(interval)]])

        all_isi = all_isi * interval.units
        CV_array = CV_array
        CV = np.mean(CV_array)
        LV = np.mean(LV_array)

        ## calculate data for PSTH
        b,durations = get_binary_trains(contact_trains[unit.name])
        b_times = np.where(b)[1] * pq.ms#interval.units
        b_times-=pre
        PSTH,t_edges = np.histogram(b_times,bins=np.arange(-np.array(pre),np.max(durations)+np.array(post),float(binsize)))
        plt.bar(t_edges[:-1],
                PSTH.astype('f8')/len(durations)/binsize*1000,
                width=float(binsize),
                align='edge',
                alpha=0.8
                )

        ax = plt.gca()
        thresh = 500 * pq.ms
        ax.set_xlim(-15, thresh.__int__())
        ax.set_xlabel('Time after contact (ms)')
        ax.set_ylabel('Spikes per second')
        ax.set_title('PSTH for: {}'.format(root))

        plt.savefig(os.path.join(save_path,root+'_PSTH.svg'))
        plt.close('all')
        # ============================================

        # PLOT ISIs
        plt.figure()
        thresh = 100 * pq.ms
        if len(all_isi[np.logical_and(np.isfinite(all_isi), all_isi < thresh)])==0:
            return
        ax = sns.distplot(all_isi[np.logical_and(np.isfinite(all_isi), all_isi < thresh)],
                          bins=np.arange(0,100,1),
                          kde_kws={'color':'k','lw':3,'alpha':0.5,'label':'KDE'})
        ax.set_xlabel('ISI '+all_isi.dimensionality.latex)
        ax.set_ylabel('Percentage of all ISIs')

        a_inset = plt.axes([.55, .5, .2, .2], facecolor='w')
        a_inset.grid(color='k',linestyle=':',alpha=0.4)
        a_inset.axvline(CV,color='k',lw=0.5)
        a_inset.set_title('CV = {:0.2f}\nLV = {:0.2f}'.format(CV,LV))
        a_inset.set_xlabel('CV')
        a_inset.set_ylabel('# of Contacts')
        sns.distplot(CV_array,color='g',kde=False)
        ax.set_title('ISI distribution for {}'.format(root))
        plt.savefig(os.path.join(save_path, root + '_ISI.svg'))
        plt.close('all')
Example #12
0
 def test_2short_spike_train(self):
     seq = [1]
     self.assertTrue(math.isnan(es.lv(seq, with_nan=True)))
Example #13
0
 def test_2short_spike_train(self):
     seq = [1]
     self.assertTrue(math.isnan(es.lv(seq, with_nan=True)))