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Improve export to Phy property handling #3123

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Jul 3, 2024
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63 changes: 63 additions & 0 deletions src/spikeinterface/exporters/tests/test_export_to_phy.py
Original file line number Diff line number Diff line change
Expand Up @@ -91,6 +91,69 @@ def test_export_to_phy_by_property(sorting_analyzer_with_group_for_export, creat
assert template_inds.shape == (sorting_analyzer.unit_ids.size, 4)


def test_export_to_phy_metrics(sorting_analyzer_sparse_for_export, create_cache_folder):
cache_folder = create_cache_folder

sorting_analyzer = sorting_analyzer_sparse_for_export

# quality metrics are computed already
qm = sorting_analyzer.get_extension("quality_metrics").get_data()
output_folder = cache_folder / "phy_output_qm"
export_to_phy(
sorting_analyzer,
output_folder,
compute_pc_features=False,
compute_amplitudes=False,
n_jobs=1,
chunk_size=10000,
progress_bar=True,
add_quality_metrics=True,
)
for col_name in qm.columns:
assert (output_folder / f"cluster_{col_name}.tsv").is_file()

# quality metrics are computed already
tm_ext = sorting_analyzer.compute("template_metrics")
tm = tm_ext.get_data()
output_folder = cache_folder / "phy_output_tm_not_qm"
export_to_phy(
sorting_analyzer,
output_folder,
compute_pc_features=False,
compute_amplitudes=False,
n_jobs=1,
chunk_size=10000,
progress_bar=True,
add_quality_metrics=False,
add_template_metrics=True,
)
for col_name in tm.columns:
assert (output_folder / f"cluster_{col_name}.tsv").is_file()
for col_name in qm.columns:
assert not (output_folder / f"cluster_{col_name}.tsv").is_file()

# custom metrics
sorting_analyzer.sorting.set_property("custom_metric", np.random.rand(sorting_analyzer.unit_ids.size))
output_folder = cache_folder / "phy_output_custom"
export_to_phy(
sorting_analyzer,
output_folder,
compute_pc_features=False,
compute_amplitudes=False,
n_jobs=1,
chunk_size=10000,
progress_bar=True,
add_quality_metrics=False,
add_template_metrics=False,
additional_properties=["custom_metric"],
)
assert (output_folder / "cluster_custom_metric.tsv").is_file()
for col_name in tm.columns:
assert not (output_folder / f"cluster_{col_name}.tsv").is_file()
for col_name in qm.columns:
assert not (output_folder / f"cluster_{col_name}.tsv").is_file()


if __name__ == "__main__":
sorting_analyzer_sparse = make_sorting_analyzer(sparse=True)
sorting_analyzer_group = make_sorting_analyzer(sparse=False, with_group=True)
Expand Down
27 changes: 23 additions & 4 deletions src/spikeinterface/exporters/to_phy.py
Original file line number Diff line number Diff line change
Expand Up @@ -25,8 +25,10 @@ def export_to_phy(
sparsity: Optional[ChannelSparsity] = None,
copy_binary: bool = True,
remove_if_exists: bool = False,
peak_sign: Literal["both", "neg", "pos"] = "neg",
template_mode: str = "average",
add_quality_metrics: bool = True,
add_template_metrics: bool = True,
additional_properties: list | None = None,
dtype: Optional[npt.DTypeLike] = None,
verbose: bool = True,
use_relative_path: bool = False,
Expand All @@ -51,10 +53,14 @@ def export_to_phy(
If True, the recording is copied and saved in the phy "output_folder"
remove_if_exists : bool, default: False
If True and "output_folder" exists, it is removed and overwritten
peak_sign : "neg" | "pos" | "both", default: "neg"
Used by compute_spike_amplitudes
template_mode : str, default: "average"
Parameter "mode" to be given to SortingAnalyzer.get_template()
add_quality_metrics : bool, default: True
If True, quality metrics (if computed) are saved as Phy tsv and will appear in the ClusterView.
add_template_metrics : bool, default: True
If True, template metrics (if computed) are saved as Phy tsv and will appear in the ClusterView.
additional_properties : list | None, default: None
List of additional properties to be saved as Phy tsv and will appear in the ClusterView.
dtype : dtype or None, default: None
Dtype to save binary data
verbose : bool, default: True
Expand Down Expand Up @@ -244,7 +250,7 @@ def export_to_phy(
channel_group = pd.DataFrame({"cluster_id": [i for i in range(len(unit_ids))], "channel_group": unit_groups})
channel_group.to_csv(output_folder / "cluster_channel_group.tsv", sep="\t", index=False)

if sorting_analyzer.has_extension("quality_metrics"):
if sorting_analyzer.has_extension("quality_metrics") and add_quality_metrics:
qm_data = sorting_analyzer.get_extension("quality_metrics").get_data()
for column_name in qm_data.columns:
# already computed by phy
Expand All @@ -253,6 +259,19 @@ def export_to_phy(
{"cluster_id": [i for i in range(len(unit_ids))], column_name: qm_data[column_name].values}
)
metric.to_csv(output_folder / f"cluster_{column_name}.tsv", sep="\t", index=False)
if sorting_analyzer.has_extension("template_metrics") and add_template_metrics:
tm_data = sorting_analyzer.get_extension("template_metrics").get_data()
for column_name in tm_data.columns:
metric = pd.DataFrame(
{"cluster_id": [i for i in range(len(unit_ids))], column_name: tm_data[column_name].values}
)
metric.to_csv(output_folder / f"cluster_{column_name}.tsv", sep="\t", index=False)
if additional_properties is not None:
for prop_name in additional_properties:
prop_data = sorting.get_property(prop_name)
if prop_data is not None:
prop = pd.DataFrame({"cluster_id": [i for i in range(len(unit_ids))], prop_name: prop_data})
prop.to_csv(output_folder / f"cluster_{prop_name}.tsv", sep="\t", index=False)

if verbose:
print("Run:\nphy template-gui ", str(output_folder / "params.py"))
Expand Down