Curation Tutorial

After spike sorting and computing quality metrics, you can automatically curate the spike sorting output using the quality metrics that you have calculated.

Import the modules and/or functions necessary from spikeinterface

import spikeinterface.core as si

Let’s generate a simulated dataset, and imagine that the ground-truth sorting is in fact the output of a sorter.

recording, sorting = si.generate_ground_truth_recording()
print(recording)
print(sorting)
GroundTruthRecording (InjectTemplatesRecording): 4 channels - 25.0kHz - 1 segments
                      250,000 samples - 10.00s - float32 dtype - 3.81 MiB
GroundTruthSorting (NumpySorting): 10 units - 1 segments - 25.0kHz

Create SortingAnalyzer

For this example, we will need a SortingAnalyzer and some extensions to be computed first

analyzer = si.create_sorting_analyzer(sorting=sorting, recording=recording, format="memory")
analyzer.compute(["random_spikes", "waveforms", "templates", "noise_levels"])

analyzer.compute("principal_components", n_components=3, mode="by_channel_local")
print(analyzer)
estimate_sparsity (no parallelization):   0%|          | 0/10 [00:00<?, ?it/s]
estimate_sparsity (no parallelization): 100%|██████████| 10/10 [00:00<00:00, 420.73it/s]

compute_waveforms (no parallelization):   0%|          | 0/10 [00:00<?, ?it/s]
compute_waveforms (no parallelization): 100%|██████████| 10/10 [00:00<00:00, 304.91it/s]

noise_level (no parallelization):   0%|          | 0/20 [00:00<?, ?it/s]
noise_level (no parallelization): 100%|██████████| 20/20 [00:00<00:00, 280.35it/s]

Fitting PCA:   0%|          | 0/10 [00:00<?, ?it/s]
Fitting PCA: 100%|██████████| 10/10 [00:00<00:00, 139.17it/s]

Projecting waveforms:   0%|          | 0/10 [00:00<?, ?it/s]
Projecting waveforms: 100%|██████████| 10/10 [00:00<00:00, 1277.12it/s]
SortingAnalyzer: 4 channels - 10 units - 1 segments - memory - sparse - has recording
Loaded 5 extensions: random_spikes, waveforms, templates, noise_levels, principal_components

Then we compute some quality metrics:

metrics_ext = analyzer.compute("quality_metrics", metric_names=["snr", "isi_violation", "nearest_neighbor"])
metrics = metrics_ext.get_data()
print(metrics)
         snr  isi_violations_ratio  ...  nn_hit_rate  nn_miss_rate
0  17.947979                   0.0  ...     0.800000      0.024543
1   7.052109                   0.0  ...     0.776224      0.029533
2  21.460305                   0.0  ...     0.868493      0.014877
3  16.970603                   0.0  ...     0.862420      0.015159
4  11.669369                   0.0  ...     0.857343      0.015914
5  33.842303                   0.0  ...     0.899329      0.006457
6   6.978850                   0.0  ...     0.790698      0.017714
7  10.555908                   0.0  ...     0.791781      0.025307
8  19.153602                   0.0  ...     0.842254      0.011468
9  25.332683                   0.0  ...     0.857325      0.021346

[10 rows x 5 columns]

We can now threshold each quality metric and select units based on some rules.

The easiest and most intuitive way is to use boolean masking with a dataframe.

Then create a list of unit ids that we want to keep

keep_mask = (metrics["snr"] > 7.5) & (metrics["isi_violations_ratio"] < 0.2) & (metrics["nn_hit_rate"] > 0.80)
print(keep_mask)

keep_unit_ids = keep_mask[keep_mask].index.values
keep_unit_ids = [unit_id for unit_id in keep_unit_ids]
print(keep_unit_ids)
0    False
1    False
2     True
3     True
4     True
5     True
6    False
7    False
8     True
9     True
dtype: bool
['2', '3', '4', '5', '8', '9']

And now let’s create a sorting that contains only curated units and save it.

curated_sorting = sorting.select_units(keep_unit_ids)
print(curated_sorting)


curated_sorting.save(folder="curated_sorting", overwrite=True)
GroundTruthSorting (UnitsSelectionSorting): 6 units - 1 segments - 25.0kHz
NumpyFolder (NumpyFolderSorting): 6 units - 1 segments - 25.0kHz
Unit IDs
    ['2' '3' '4' '5' '8' '9']
Annotations
  • name : GroundTruthSorting
Properties
    gt_unit_locations[[-7.513984 24.590143 31.434225 ] [ 0.98156494 -1.0153077 17.657873 ] [28.941467 20.55073 9.031672 ] [ 8.809062 28.534002 5.103483 ] [16.802534 -7.2681074 6.821733 ] [17.855476 27.663452 42.896606 ]]


We can also save the analyzer with only theses units

clean_analyzer = analyzer.select_units(unit_ids=keep_unit_ids, format="zarr", folder="clean_analyzer")

print(clean_analyzer)
SortingAnalyzer: 4 channels - 6 units - 1 segments - zarr - sparse - has recording
Loaded 6 extensions: random_spikes, waveforms, templates, noise_levels, principal_components, quality_metrics

Total running time of the script: (0 minutes 0.603 seconds)

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