ethan1115's picture
Upload folder using huggingface_hub
0161e74 verified
import logging
import multiprocessing as mp
import os
from typing import Any, Literal
import anndata as ad
import pandas as pd
import polars as pl
import scanpy as sc
from pdex import parallel_differential_expression
from cell_eval.utils import guess_is_lognorm
from ._pipeline import MetricPipeline
from ._types import PerturbationAnndataPair, initialize_de_comparison
logger = logging.getLogger(__name__)
class MetricsEvaluator:
"""
Evaluates benchmarking metrics of a predicted and real anndata object.
Arguments
=========
adata_pred: ad.AnnData | str
Predicted anndata object or path to anndata object.
adata_real: ad.AnnData | str
Real anndata object or path to anndata object.
de_pred: pl.DataFrame | str | None = None
Predicted differential expression results or path to differential expression results.
If `None`, differential expression will be computed using parallel_differential_expression
de_real: pl.DataFrame | str | None = None
Real differential expression results or path to differential expression results.
If `None`, differential expression will be computed using parallel_differential_expression
control_pert: str = "non-targeting"
Control perturbation name.
pert_col: str = "target"
Perturbation column name.
de_method: str = "wilcoxon"
Differential expression method.
num_threads: int = -1
Number of threads for parallel differential expression.
batch_size: int = 100
Batch size for parallel differential expression.
outdir: str = "./cell-eval-outdir"
Output directory.
allow_discrete: bool = False
Allow discrete data.
prefix: str | None = None
Prefix for output files.
pdex_kwargs: dict[str, Any] | None = None
Keyword arguments for parallel_differential_expression.
These will overwrite arguments passed to MetricsEvaluator.__init__ if they conflict.
"""
def __init__(
self,
adata_pred: ad.AnnData | str,
adata_real: ad.AnnData | str,
de_pred: pl.DataFrame | str | None = None,
de_real: pl.DataFrame | str | None = None,
control_pert: str = "non-targeting",
pert_col: str = "target",
de_method: str = "wilcoxon",
num_threads: int = -1,
batch_size: int = 100,
outdir: str = "./cell-eval-outdir",
allow_discrete: bool = False,
prefix: str | None = None,
pdex_kwargs: dict[str, Any] | None = None,
skip_de: bool = False,
):
# Enable a global string cache for categorical columns
pl.enable_string_cache()
if os.path.exists(outdir):
logger.warning(
f"Output directory {outdir} already exists, potential overwrite occurring"
)
os.makedirs(outdir, exist_ok=True)
self.anndata_pair = _build_anndata_pair(
real=adata_real,
pred=adata_pred,
control_pert=control_pert,
pert_col=pert_col,
allow_discrete=allow_discrete,
)
if skip_de:
self.de_comparison = None
else:
self.de_comparison = _build_de_comparison(
anndata_pair=self.anndata_pair,
de_pred=de_pred,
de_real=de_real,
de_method=de_method,
num_threads=num_threads if num_threads != -1 else mp.cpu_count(),
batch_size=batch_size,
allow_discrete=allow_discrete,
outdir=outdir,
prefix=prefix,
pdex_kwargs=pdex_kwargs or {},
)
self.outdir = outdir
self.prefix = prefix
def compute(
self,
profile: Literal["full", "vcc", "minimal", "de", "anndata"] = "full",
metric_configs: dict[str, dict[str, Any]] | None = None,
skip_metrics: list[str] | None = None,
basename: str = "results.csv",
write_csv: bool = True,
break_on_error: bool = False,
) -> tuple[pl.DataFrame, pl.DataFrame]:
pipeline = MetricPipeline(
profile=profile,
metric_configs=metric_configs,
break_on_error=break_on_error,
)
if skip_metrics is not None:
pipeline.skip_metrics(skip_metrics)
pipeline.compute_de_metrics(self.de_comparison)
pipeline.compute_anndata_metrics(self.anndata_pair)
results = pipeline.get_results()
agg_results = pipeline.get_agg_results()
if write_csv:
if self.prefix is not None:
self.prefix = self.prefix.replace(
"/", "-"
) # some prefixes (e.g. HepG2/C3A) may have slashes in them
if basename is not None:
basename = basename.replace(
"/", "-"
) # some basenames (e.g. HepG2/C3A_results.csv) may have slashes in them
outpath = os.path.join(
self.outdir,
f"{self.prefix}_{basename}" if self.prefix else basename,
)
agg_outpath = os.path.join(
self.outdir,
f"{self.prefix}_agg_{basename}" if self.prefix else f"agg_{basename}",
)
logger.info(f"Writing perturbation level metrics to {outpath}")
results.write_csv(outpath)
logger.info(f"Writing aggregate metrics to {agg_outpath}")
agg_results.write_csv(agg_outpath)
return results, agg_results
def _build_anndata_pair(
real: ad.AnnData | str,
pred: ad.AnnData | str,
control_pert: str,
pert_col: str,
allow_discrete: bool = False,
):
if isinstance(real, str):
logger.info(f"Reading real anndata from {real}")
real = ad.read_h5ad(real)
if isinstance(pred, str):
logger.info(f"Reading pred anndata from {pred}")
pred = ad.read_h5ad(pred)
# Validate that the input is normalized and log-transformed
_convert_to_normlog(real, which="real", allow_discrete=allow_discrete)
_convert_to_normlog(pred, which="pred", allow_discrete=allow_discrete)
# Build the anndata pair
return PerturbationAnndataPair(
real=real, pred=pred, control_pert=control_pert, pert_col=pert_col
)
def _convert_to_normlog(
adata: ad.AnnData,
which: str | None = None,
allow_discrete: bool = False,
):
"""Performs a norm-log conversion if the input is integer data (inplace).
Will skip if the input is not integer data.
"""
if guess_is_lognorm(adata=adata, validate=not allow_discrete):
logger.info(
"Input is found to be log-normalized already - skipping transformation."
)
return # Input is already log-normalized
# User specified that they want to allow discrete data
if allow_discrete:
if which:
logger.info(
f"Discovered integer data for {which}. Configuration set to allow discrete. "
"Make sure this is intentional."
)
else:
logger.info(
"Discovered integer data. Configuration set to allow discrete. "
"Make sure this is intentional."
)
return # proceed without conversion
# Convert the data to norm-log
if which:
logger.info(f"Discovered integer data for {which}. Converting to norm-log.")
sc.pp.normalize_total(adata=adata, inplace=True) # normalize to median
sc.pp.log1p(adata) # log-transform (log1p)
def _build_de_comparison(
anndata_pair: PerturbationAnndataPair | None = None,
de_pred: pl.DataFrame | str | None = None,
de_real: pl.DataFrame | str | None = None,
de_method: str = "wilcoxon",
num_threads: int = 1,
batch_size: int = 100,
allow_discrete: bool = False,
outdir: str | None = None,
prefix: str | None = None,
pdex_kwargs: dict[str, Any] | None = None,
):
return initialize_de_comparison(
real=_load_or_build_de(
mode="real",
de_path=de_real,
anndata_pair=anndata_pair,
de_method=de_method,
num_threads=num_threads,
batch_size=batch_size,
allow_discrete=allow_discrete,
outdir=outdir,
prefix=prefix,
pdex_kwargs=pdex_kwargs or {},
),
pred=_load_or_build_de(
mode="pred",
de_path=de_pred,
anndata_pair=anndata_pair,
de_method=de_method,
num_threads=num_threads,
batch_size=batch_size,
allow_discrete=allow_discrete,
outdir=outdir,
prefix=prefix,
pdex_kwargs=pdex_kwargs or {},
),
)
def _build_pdex_kwargs(
reference: str,
groupby_key: str,
num_workers: int,
batch_size: int,
metric: str,
allow_discrete: bool,
pdex_kwargs: dict[str, Any] | None = None,
) -> dict[str, Any]:
pdex_kwargs = pdex_kwargs or {}
if "reference" not in pdex_kwargs:
pdex_kwargs["reference"] = reference
if "groupby_key" not in pdex_kwargs:
pdex_kwargs["groupby_key"] = groupby_key
if "num_workers" not in pdex_kwargs:
pdex_kwargs["num_workers"] = num_workers
if "batch_size" not in pdex_kwargs:
pdex_kwargs["batch_size"] = batch_size
if "metric" not in pdex_kwargs:
pdex_kwargs["metric"] = metric
if "is_log1p" not in pdex_kwargs:
if allow_discrete:
pdex_kwargs["is_log1p"] = False
else:
pdex_kwargs["is_log1p"] = True
# always return polars DataFrames
pdex_kwargs["as_polars"] = True
return pdex_kwargs
def _load_or_build_de(
mode: Literal["pred", "real"],
de_path: pl.DataFrame | str | None = None,
anndata_pair: PerturbationAnndataPair | None = None,
de_method: str = "wilcoxon",
num_threads: int = 1,
batch_size: int = 100,
outdir: str | None = None,
prefix: str | None = None,
allow_discrete: bool = False,
pdex_kwargs: dict[str, Any] | None = None,
) -> pl.DataFrame:
if de_path is None:
if anndata_pair is None:
raise ValueError("anndata_pair must be provided if de_path is not provided")
logger.info(f"Computing DE for {mode} data")
pdex_kwargs = _build_pdex_kwargs(
reference=anndata_pair.control_pert,
groupby_key=anndata_pair.pert_col,
num_workers=num_threads,
metric=de_method,
batch_size=batch_size,
allow_discrete=allow_discrete,
pdex_kwargs=pdex_kwargs or {},
)
logger.info(f"Using the following pdex kwargs: {pdex_kwargs}")
frame = parallel_differential_expression(
adata=anndata_pair.real if mode == "real" else anndata_pair.pred,
**pdex_kwargs,
)
if outdir is not None:
if prefix is not None:
prefix = prefix.replace(
"/", "-"
) # some prefixes (e.g. HepG2/C3A) may have slashes in them
pathname = f"{mode}_de.csv" if not prefix else f"{prefix}_{mode}_de.csv"
logger.info(f"Writing {mode} DE results to: {pathname}")
frame.write_csv(os.path.join(outdir, pathname))
return frame # type: ignore
elif isinstance(de_path, str):
logger.info(f"Reading {mode} DE results from {de_path}")
if pdex_kwargs:
logger.warning("pdex_kwargs are ignored when reading from a CSV file")
return pl.read_csv(
de_path,
schema_overrides={
"target": pl.Utf8,
"feature": pl.Utf8,
},
)
elif isinstance(de_path, pl.DataFrame):
if pdex_kwargs:
logger.warning("pdex_kwargs are ignored when reading from a CSV file")
return de_path
elif isinstance(de_path, pd.DataFrame):
if pdex_kwargs:
logger.warning("pdex_kwargs are ignored when reading from a CSV file")
return pl.from_pandas(de_path)
else:
raise TypeError(f"Unexpected type for de_path: {type(de_path)}")