import functools import json import logging import os from pathlib import Path import random import subprocess from typing import Dict, List, Mapping, Optional, Tuple, Union import numpy as np import torch import pandas as pd from anndata import AnnData from matplotlib import pyplot as plt from matplotlib import axes from IPython import get_ipython from .. import logger def gene_vocabulary(): """ Generate the gene name2id and id2name dictionaries. """ pass def set_seed(seed): """set random seed.""" random.seed(seed) np.random.seed(seed) torch.manual_seed(seed) torch.backends.cudnn.deterministic = True torch.backends.cudnn.benchmark = False # if n_gpu > 0: # torch.cuda.manual_seed_all(seed) def add_file_handler(logger: logging.Logger, log_file_path: Path): """ Add a file handler to the logger. """ h = logging.FileHandler(log_file_path) # format showing time, name, function, and message formatter = logging.Formatter( "%(asctime)s-%(name)s-%(levelname)s-%(funcName)s: %(message)s", datefmt="%H:%M:%S", ) h.setFormatter(formatter) h.setLevel(logger.level) logger.addHandler(h) def category_str2int(category_strs: List[str]) -> List[int]: set_category_strs = set(category_strs) name2id = {name: i for i, name in enumerate(set_category_strs)} return [name2id[name] for name in category_strs] def isnotebook() -> bool: """check whether excuting in jupyter notebook.""" try: shell = get_ipython().__class__.__name__ if shell == "ZMQInteractiveShell": return True # Jupyter notebook or qtconsole elif shell == "TerminalInteractiveShell": return True # Terminal running IPython else: return False # Other type (?) except NameError: return False # Probably standard Python interpreter def get_free_gpu(): import subprocess import sys from io import StringIO import pandas as pd gpu_stats = subprocess.check_output( [ "nvidia-smi", "--format=csv", "--query-gpu=memory.used,memory.free", ] ).decode("utf-8") gpu_df = pd.read_csv( StringIO(gpu_stats), names=["memory.used", "memory.free"], skiprows=1 ) print("GPU usage:\n{}".format(gpu_df)) gpu_df["memory.free"] = gpu_df["memory.free"].map(lambda x: int(x.rstrip(" [MiB]"))) idx = gpu_df["memory.free"].idxmax() print( "Find free GPU{} with {} free MiB".format(idx, gpu_df.iloc[idx]["memory.free"]) ) return idx def get_git_commit(): return subprocess.check_output(["git", "rev-parse", "HEAD"]).decode("utf-8").strip() def get_git_diff(): commit = get_git_commit() return subprocess.check_output(["git", "diff", commit]).decode("utf-8").strip() def histogram( *data: List[np.ndarray], label: List[str] = ["train", "valid"], color: List[str] = ["blue", "red"], figsize: Tuple[int, int] = (9, 4), title: Optional[str] = None, show: bool = False, save: Optional[str] = None, ) -> axes.Axes: """ Plot histogram of the data. Args: data (List[np.ndarray]): The data to plot. label (List[str]): The label of the data. color (List[str]): The color of the data. figsize (Tuple[int, int]): The size of the figure. title (Optional[str]): The title of the figure. show (bool): Whether to show the figure. save (Optional[str]): The path to save the figure. Returns: axes.Axes: The axes of the figure. """ # show histogram of the clipped values assert len(data) == len(label), "The number of data and labels must be equal." fig, ax = plt.subplots(1, 1, figsize=figsize, dpi=150) max_value = max(np.max(data) for data in data) ax.hist( [d.flatten() for d in data], bins=np.arange(0, max_value + 1, 1) + 0.5 if max_value < 60 else 60, label=label, density=True, histtype="bar", linewidth=2, rwidth=0.85, color=color, ) ax.legend() ax.set_xlabel("counts") ax.set_ylabel("density") if title is not None: ax.set_title(title) if show: plt.show() if save is not None: fig.savefig(save, bbox_inches="tight") return ax def _indicate_col_name(adata: AnnData, promt_str: str) -> Optional[str]: """ Indicate the column name of the data. Args: adata (AnnData): The AnnData object. promt_str (str): The prompt string. Returns: Optional[str]: The column name. """ while True: col_name = input(promt_str) if col_name == "": col_name = None break elif col_name in adata.var.columns: break elif col_name in adata.obs.columns: break else: print(f"The column {col_name} is not in the data. " f"Please input again.") return col_name def find_required_colums( adata: AnnData, id: str, configs_dir: Union[str, Path], update: bool = False, ) -> List[Optional[str]]: """ Find the required columns in AnnData, including celltype column, str_celltype column, the gene name column, and the experimental batch key. This function asks the user to input the required column names if the first time loading the data. The names are saved in the config file and will be automatically loaded next time. Args: adata (AnnData): The AnnData object. id (str): The id of the AnnData object, will be used as the file name for saving the config file. configs_dir (Union[str, Path]): The directory of saved config files. update (bool): Whether to update the config file. Returns: List[Optional[str]]: The required columns, including celltype_col, str_celltype_col, gene_col, and batch_col. """ if isinstance(configs_dir, str): configs_dir = Path(configs_dir) if not configs_dir.exists(): configs_dir.mkdir() config_file = configs_dir / f"{id}.json" if not config_file.exists() or update: print( "The config file does not exist, this may be the first time " "loading the data. \nPlease input the required column names." ) print(adata) celltype_col = _indicate_col_name( adata, "Please input the celltype column name (skip if not applicable): ", ) str_celltype_col = _indicate_col_name( adata, "Please input the str_celltype column name: " ) gene_col = _indicate_col_name(adata, "Please input the gene column name: ") batch_col = _indicate_col_name(adata, "Please input the batch column name: ") config = { "celltype_col": celltype_col, "str_celltype_col": str_celltype_col, "gene_col": gene_col, "batch_col": batch_col, } with open(config_file, "w") as f: json.dump(config, f) else: with open(config_file, "r") as f: config = json.load(f) return [ config["celltype_col"], config["str_celltype_col"], config["gene_col"], config["batch_col"], ] def tensorlist2tensor(tensorlist, pad_value): max_len = max(len(t) for t in tensorlist) dtype = tensorlist[0].dtype device = tensorlist[0].device tensor = torch.zeros(len(tensorlist), max_len, dtype=dtype, device=device) tensor.fill_(pad_value) for i, t in enumerate(tensorlist): tensor[i, : len(t)] = t return tensor def map_raw_id_to_vocab_id( raw_ids: Union[np.ndarray, torch.Tensor], gene_ids: np.ndarray, ) -> Union[np.ndarray, torch.Tensor]: """ Map some raw ids which are indices of the raw gene names to the indices of the Args: raw_ids: the raw ids to map gene_ids: the gene ids to map to """ if isinstance(raw_ids, torch.Tensor): device = raw_ids.device dtype = raw_ids.dtype return_pt = True raw_ids = raw_ids.cpu().numpy() elif isinstance(raw_ids, np.ndarray): return_pt = False dtype = raw_ids.dtype else: raise ValueError(f"raw_ids must be either torch.Tensor or np.ndarray.") if raw_ids.ndim != 1: raise ValueError(f"raw_ids must be 1d, got {raw_ids.ndim}d.") if gene_ids.ndim != 1: raise ValueError(f"gene_ids must be 1d, got {gene_ids.ndim}d.") mapped_ids: np.ndarray = gene_ids[raw_ids] assert mapped_ids.shape == raw_ids.shape if return_pt: return torch.from_numpy(mapped_ids).type(dtype).to(device) return mapped_ids.astype(dtype) def load_pretrained( model: torch.nn.Module, pretrained_params: Mapping[str, torch.Tensor], strict: bool = False, prefix: Optional[List[str]] = None, verbose: bool = True, ) -> torch.nn.Module: """ Load pretrained weights to the model. Args: model (torch.nn.Module): The model to load weights to. pretrained_params (Mapping[str, torch.Tensor]): The pretrained parameters. strict (bool): Whether to strictly enforce that the keys in :attr:`pretrained_params` match the keys returned by this module's :meth:`Module.state_dict`. Default to False. prefix (List[str]): The list of prefix strings to match with the keys in :attr:`pretrained_params`. The matched keys will be loaded. Default to None. Returns: torch.nn.Module: The model with pretrained weights. """ use_flash_attn = getattr(model, "use_fast_transformer", True) if not use_flash_attn: pretrained_params = { k.replace("Wqkv.", "in_proj_"): v for k, v in pretrained_params.items() } if prefix is not None and len(prefix) > 0: if isinstance(prefix, str): prefix = [prefix] pretrained_params = { k: v for k, v in pretrained_params.items() if any(k.startswith(p) for p in prefix) } model_dict = model.state_dict() if strict: if verbose: for k, v in pretrained_params.items(): logger.info(f"Loading parameter {k} with shape {v.shape}") model_dict.update(pretrained_params) model.load_state_dict(model_dict) else: if verbose: for k, v in pretrained_params.items(): if k in model_dict and v.shape == model_dict[k].shape: logger.info(f"Loading parameter {k} with shape {v.shape}") pretrained_params = { k: v for k, v in pretrained_params.items() if k in model_dict and v.shape == model_dict[k].shape } model_dict.update(pretrained_params) model.load_state_dict(model_dict) return model # Wrapper for all scib metrics, we leave out some metrics like hvg_score, cell_cyvle, # trajectory_conservation, because we only evaluate the latent embeddings here and # these metrics are evaluating the reconstructed gene expressions or pseudotimes. def eval_scib_metrics( adata: AnnData, batch_key: str = "str_batch", label_key: str = "celltype", notes: Optional[str] = None, ) -> Dict: import scib results = scib.metrics.metrics( adata, adata_int=adata, batch_key=batch_key, label_key=label_key, embed="X_scGPT", isolated_labels_asw_=False, silhouette_=True, hvg_score_=False, graph_conn_=True, pcr_=True, isolated_labels_f1_=False, trajectory_=False, nmi_=True, # use the clustering, bias to the best matching ari_=True, # use the clustering, bias to the best matching cell_cycle_=False, kBET_=False, # kBET return nan sometimes, need to examine ilisi_=False, clisi_=False, ) if notes is not None: logger.info(f"{notes}") logger.info(f"{results}") result_dict = results[0].to_dict() logger.info( "Biological Conservation Metrics: \n" f"ASW (cell-type): {result_dict['ASW_label']:.4f}, graph cLISI: {result_dict['cLISI']:.4f}, " f"isolated label silhouette: {result_dict['isolated_label_silhouette']:.4f}, \n" "Batch Effect Removal Metrics: \n" f"PCR_batch: {result_dict['PCR_batch']:.4f}, ASW (batch): {result_dict['ASW_label/batch']:.4f}, " f"graph connectivity: {result_dict['graph_conn']:.4f}, graph iLISI: {result_dict['iLISI']:.4f}" ) result_dict["avg_bio"] = np.mean( [ result_dict["NMI_cluster/label"], result_dict["ARI_cluster/label"], result_dict["ASW_label"], ] ) # remove nan value in result_dict result_dict = {k: v for k, v in result_dict.items() if not np.isnan(v)} return result_dict def compute_perturbation_metrics( results: Dict, ctrl_adata: AnnData, non_zero_genes: bool = False, return_raw: bool = False, ) -> Dict: """ Given results from a model run and the ground truth, compute metrics Args: results (:obj:`Dict`): The results from a model run ctrl_adata (:obj:`AnnData`): The adata of the control condtion non_zero_genes (:obj:`bool`, optional): Whether to only consider non-zero genes in the ground truth when computing metrics return_raw (:obj:`bool`, optional): Whether to return the raw metrics or the mean of the metrics. Default is False. Returns: :obj:`Dict`: The metrics computed """ from scipy.stats import pearsonr # metrics: # Pearson correlation of expression on all genes, on DE genes, # Pearson correlation of expression change on all genes, on DE genes, metrics_across_genes = { "pearson": [], "pearson_de": [], "pearson_delta": [], "pearson_de_delta": [], } metrics_across_conditions = { "pearson": [], "pearson_delta": [], } conditions = np.unique(results["pert_cat"]) assert not "ctrl" in conditions, "ctrl should not be in test conditions" condition2idx = {c: np.where(results["pert_cat"] == c)[0] for c in conditions} mean_ctrl = np.array(ctrl_adata.X.mean(0)).flatten() # (n_genes,) assert ctrl_adata.X.max() <= 1000, "gene expression should be log transformed" true_perturbed = results["truth"] # (n_cells, n_genes) assert true_perturbed.max() <= 1000, "gene expression should be log transformed" true_mean_perturbed_by_condition = np.array( [true_perturbed[condition2idx[c]].mean(0) for c in conditions] ) # (n_conditions, n_genes) true_mean_delta_by_condition = true_mean_perturbed_by_condition - mean_ctrl zero_rows = np.where(np.all(true_mean_perturbed_by_condition == 0, axis=1))[ 0 ].tolist() zero_cols = np.where(np.all(true_mean_perturbed_by_condition == 0, axis=0))[ 0 ].tolist() pred_perturbed = results["pred"] # (n_cells, n_genes) pred_mean_perturbed_by_condition = np.array( [pred_perturbed[condition2idx[c]].mean(0) for c in conditions] ) # (n_conditions, n_genes) pred_mean_delta_by_condition = pred_mean_perturbed_by_condition - mean_ctrl def corr_over_genes(x, y, conditions, res_list, skip_rows=[], non_zero_mask=None): """compute pearson correlation over genes for each condition""" for i, c in enumerate(conditions): if i in skip_rows: continue x_, y_ = x[i], y[i] if non_zero_mask is not None: x_ = x_[non_zero_mask[i]] y_ = y_[non_zero_mask[i]] res_list.append(pearsonr(x_, y_)[0]) corr_over_genes( true_mean_perturbed_by_condition, pred_mean_perturbed_by_condition, conditions, metrics_across_genes["pearson"], zero_rows, non_zero_mask=true_mean_perturbed_by_condition != 0 if non_zero_genes else None, ) corr_over_genes( true_mean_delta_by_condition, pred_mean_delta_by_condition, conditions, metrics_across_genes["pearson_delta"], zero_rows, non_zero_mask=true_mean_perturbed_by_condition != 0 if non_zero_genes else None, ) def find_DE_genes(adata, condition, geneid2idx, non_zero_genes=False, top_n=20): """ Find the DE genes for a condition """ key_components = next( iter(adata.uns["rank_genes_groups_cov_all"].keys()) ).split("_") assert len(key_components) == 3, "rank_genes_groups_cov_all key is not valid" condition_key = "_".join([key_components[0], condition, key_components[2]]) de_genes = adata.uns["rank_genes_groups_cov_all"][condition_key] if non_zero_genes: de_genes = adata.uns["top_non_dropout_de_20"][condition_key] # de_genes = adata.uns["rank_genes_groups_cov_all"][condition_key] # de_genes = de_genes[adata.uns["non_zeros_gene_idx"][condition_key]] # assert len(de_genes) > top_n de_genes = de_genes[:top_n] de_idx = [geneid2idx[i] for i in de_genes] return de_idx, de_genes geneid2idx = dict(zip(ctrl_adata.var.index.values, range(len(ctrl_adata.var)))) de_idx = { c: find_DE_genes(ctrl_adata, c, geneid2idx, non_zero_genes)[0] for c in conditions } mean_ctrl_de = np.array( [mean_ctrl[de_idx[c]] for c in conditions] ) # (n_conditions, n_diff_genes) true_mean_perturbed_by_condition_de = np.array( [ true_mean_perturbed_by_condition[i, de_idx[c]] for i, c in enumerate(conditions) ] ) # (n_conditions, n_diff_genes) zero_rows_de = np.where(np.all(true_mean_perturbed_by_condition_de == 0, axis=1))[ 0 ].tolist() true_mean_delta_by_condition_de = true_mean_perturbed_by_condition_de - mean_ctrl_de pred_mean_perturbed_by_condition_de = np.array( [ pred_mean_perturbed_by_condition[i, de_idx[c]] for i, c in enumerate(conditions) ] ) # (n_conditions, n_diff_genes) pred_mean_delta_by_condition_de = pred_mean_perturbed_by_condition_de - mean_ctrl_de corr_over_genes( true_mean_perturbed_by_condition_de, pred_mean_perturbed_by_condition_de, conditions, metrics_across_genes["pearson_de"], zero_rows_de, ) corr_over_genes( true_mean_delta_by_condition_de, pred_mean_delta_by_condition_de, conditions, metrics_across_genes["pearson_de_delta"], zero_rows_de, ) if not return_raw: for k, v in metrics_across_genes.items(): metrics_across_genes[k] = np.mean(v) for k, v in metrics_across_conditions.items(): metrics_across_conditions[k] = np.mean(v) metrics = metrics_across_genes return metrics # wrapper to make sure all methods are called only on the main process def main_process_only(func): @functools.wraps(func) def wrapper(*args, **kwargs): if os.environ.get("LOCAL_RANK", "0") == "0": return func(*args, **kwargs) return wrapper # class wrapper to make sure all methods are called only on the main process class MainProcessOnly: def __init__(self, obj): self.obj = obj def __getattr__(self, name): attr = getattr(self.obj, name) if callable(attr): attr = main_process_only(attr) return attr