""" Geneformer tokenizer. **Input data:** | *Required format:* raw counts scRNAseq data without feature selection as .loom or anndata file. | *Required row (gene) attribute:* "ensembl_id"; Ensembl ID for each gene. | *Required col (cell) attribute:* "n_counts"; total read counts in that cell. | *Optional col (cell) attribute:* "filter_pass"; binary indicator of whether cell should be tokenized based on user-defined filtering criteria. | *Optional col (cell) attributes:* any other cell metadata can be passed on to the tokenized dataset as a custom attribute dictionary as shown below. **Usage:** .. code-block :: python >>> from geneformer import TranscriptomeTokenizer >>> tk = TranscriptomeTokenizer({"cell_type": "cell_type", "organ_major": "organ"}, nproc=4) >>> tk.tokenize_data("data_directory", "output_directory", "output_prefix") **Description:** | Input data is a directory with .loom or .h5ad files containing raw counts from single cell RNAseq data, including all genes detected in the transcriptome without feature selection. The input file type is specified by the argument file_format in the tokenize_data function. | The discussion below references the .loom file format, but the analagous labels are required for .h5ad files, just that they will be column instead of row attributes and vice versa due to the transposed format of the two file types. | Genes should be labeled with Ensembl IDs (loom row attribute "ensembl_id"), which provide a unique identifer for conversion to tokens. Other forms of gene annotations (e.g. gene names) can be converted to Ensembl IDs via Ensembl Biomart. Cells should be labeled with the total read count in the cell (loom column attribute "n_counts") to be used for normalization. | No cell metadata is required, but custom cell attributes may be passed onto the tokenized dataset by providing a dictionary of custom attributes to be added, which is formatted as loom_col_attr_name : desired_dataset_col_attr_name. For example, if the original .loom dataset has column attributes "cell_type" and "organ_major" and one would like to retain these attributes as labels in the tokenized dataset with the new names "cell_type" and "organ", respectively, the following custom attribute dictionary should be provided: {"cell_type": "cell_type", "organ_major": "organ"}. | Additionally, if the original .loom file contains a cell column attribute called "filter_pass", this column will be used as a binary indicator of whether to include these cells in the tokenized data. All cells with "1" in this attribute will be tokenized, whereas the others will be excluded. One may use this column to indicate QC filtering or other criteria for selection for inclusion in the final tokenized dataset. | If one's data is in other formats besides .loom or .h5ad, one can use the relevant tools (such as Anndata tools) to convert the file to a .loom or .h5ad format prior to running the transcriptome tokenizer. """ from __future__ import annotations import logging import pickle import warnings from pathlib import Path from typing import Literal import anndata as ad import numpy as np import scipy.sparse as sp from datasets import Dataset warnings.filterwarnings("ignore", message=".*The 'nopython' keyword.*") # noqa import loompy as lp # noqa logger = logging.getLogger(__name__) GENE_MEDIAN_FILE = Path(__file__).parent / "gene_median_dictionary.pkl" TOKEN_DICTIONARY_FILE = Path(__file__).parent / "token_dictionary.pkl" def rank_genes(gene_vector, gene_tokens): """ Rank gene expression vector. """ # sort by median-scaled gene values sorted_indices = np.argsort(-gene_vector) return gene_tokens[sorted_indices] def tokenize_cell(gene_vector, gene_tokens): """ Convert normalized gene expression vector to tokenized rank value encoding. """ # create array of gene vector with token indices # mask undetected genes nonzero_mask = np.nonzero(gene_vector)[0] # rank by median-scaled gene values return rank_genes(gene_vector[nonzero_mask], gene_tokens[nonzero_mask]) class TranscriptomeTokenizer: def __init__( self, custom_attr_name_dict=None, nproc=1, chunk_size=512, model_input_size=2048, special_token=False, gene_median_file=GENE_MEDIAN_FILE, token_dictionary_file=TOKEN_DICTIONARY_FILE, ): """ Initialize tokenizer. **Parameters:** custom_attr_name_dict : None, dict | Dictionary of custom attributes to be added to the dataset. | Keys are the names of the attributes in the loom file. | Values are the names of the attributes in the dataset. nproc : int | Number of processes to use for dataset mapping. chunk_size : int = 512 | Chunk size for anndata tokenizer. model_input_size : int = 2048 | Max input size of model to truncate input to. special_token : bool = False | Adds CLS token before and SEP token after rank value encoding. gene_median_file : Path | Path to pickle file containing dictionary of non-zero median | gene expression values across Genecorpus-30M. token_dictionary_file : Path | Path to pickle file containing token dictionary (Ensembl IDs:token). """ # dictionary of custom attributes {output dataset column name: input .loom column name} self.custom_attr_name_dict = custom_attr_name_dict # number of processes for dataset mapping self.nproc = nproc # chunk size for anndata tokenizer self.chunk_size = chunk_size # input size for tokenization self.model_input_size = model_input_size # add CLS and SEP tokens self.special_token = special_token # load dictionary of gene normalization factors # (non-zero median value of expression across Genecorpus-30M) with open(gene_median_file, "rb") as f: self.gene_median_dict = pickle.load(f) # load token dictionary (Ensembl IDs:token) with open(token_dictionary_file, "rb") as f: self.gene_token_dict = pickle.load(f) # gene keys for full vocabulary self.gene_keys = list(self.gene_token_dict.keys()) # protein-coding and miRNA gene list dictionary for selecting .loom rows for tokenization self.genelist_dict = dict(zip(self.gene_keys, [True] * len(self.gene_keys))) def tokenize_data( self, data_directory: Path | str, output_directory: Path | str, output_prefix: str, file_format: Literal["loom", "h5ad"] = "loom", use_generator: bool = False, ): """ Tokenize .loom files in data_directory and save as tokenized .dataset in output_directory. **Parameters:** data_directory : Path | Path to directory containing loom files or anndata files output_directory : Path | Path to directory where tokenized data will be saved as .dataset output_prefix : str | Prefix for output .dataset file_format : str | Format of input files. Can be "loom" or "h5ad". use_generator : bool | Whether to use generator or dict for tokenization. """ tokenized_cells, cell_metadata = self.tokenize_files( Path(data_directory), file_format ) tokenized_dataset = self.create_dataset( tokenized_cells, cell_metadata, use_generator=use_generator, ) output_path = (Path(output_directory) / output_prefix).with_suffix(".dataset") tokenized_dataset.save_to_disk(output_path) def tokenize_files( self, data_directory, file_format: Literal["loom", "h5ad"] = "loom" ): tokenized_cells = [] if self.custom_attr_name_dict is not None: cell_attr = [attr_key for attr_key in self.custom_attr_name_dict.keys()] cell_metadata = { attr_key: [] for attr_key in self.custom_attr_name_dict.values() } # loops through directories to tokenize .loom files file_found = 0 # loops through directories to tokenize .loom or .h5ad files tokenize_file_fn = ( self.tokenize_loom if file_format == "loom" else self.tokenize_anndata ) for file_path in data_directory.glob(f"*.{file_format}"): file_found = 1 print(f"Tokenizing {file_path}") file_tokenized_cells, file_cell_metadata = tokenize_file_fn(file_path) tokenized_cells += file_tokenized_cells if self.custom_attr_name_dict is not None: for k in cell_attr: cell_metadata[self.custom_attr_name_dict[k]] += file_cell_metadata[ k ] else: cell_metadata = None if file_found == 0: logger.error( f"No .{file_format} files found in directory {data_directory}." ) raise return tokenized_cells, cell_metadata def tokenize_anndata(self, adata_file_path, target_sum=10_000): adata = ad.read(adata_file_path, backed="r") if self.custom_attr_name_dict is not None: file_cell_metadata = { attr_key: [] for attr_key in self.custom_attr_name_dict.keys() } coding_miRNA_loc = np.where( [self.genelist_dict.get(i, False) for i in adata.var["ensembl_id"]] )[0] norm_factor_vector = np.array( [ self.gene_median_dict[i] for i in adata.var["ensembl_id"][coding_miRNA_loc] ] ) coding_miRNA_ids = adata.var["ensembl_id"][coding_miRNA_loc] coding_miRNA_tokens = np.array( [self.gene_token_dict[i] for i in coding_miRNA_ids] ) try: _ = adata.obs["filter_pass"] except KeyError: var_exists = False else: var_exists = True if var_exists: filter_pass_loc = np.where([i == 1 for i in adata.obs["filter_pass"]])[0] elif not var_exists: print( f"{adata_file_path} has no column attribute 'filter_pass'; tokenizing all cells." ) filter_pass_loc = np.array([i for i in range(adata.shape[0])]) tokenized_cells = [] for i in range(0, len(filter_pass_loc), self.chunk_size): idx = filter_pass_loc[i : i + self.chunk_size] n_counts = adata[idx].obs["n_counts"].values[:, None] X_view = adata[idx, coding_miRNA_loc].X X_norm = X_view / n_counts * target_sum / norm_factor_vector X_norm = sp.csr_matrix(X_norm) tokenized_cells += [ rank_genes(X_norm[i].data, coding_miRNA_tokens[X_norm[i].indices]) for i in range(X_norm.shape[0]) ] # add custom attributes for subview to dict if self.custom_attr_name_dict is not None: for k in file_cell_metadata.keys(): file_cell_metadata[k] += adata[idx].obs[k].tolist() else: file_cell_metadata = None return tokenized_cells, file_cell_metadata def tokenize_loom(self, loom_file_path, target_sum=10_000): if self.custom_attr_name_dict is not None: file_cell_metadata = { attr_key: [] for attr_key in self.custom_attr_name_dict.keys() } with lp.connect(str(loom_file_path)) as data: # define coordinates of detected protein-coding or miRNA genes and vector of their normalization factors coding_miRNA_loc = np.where( [self.genelist_dict.get(i, False) for i in data.ra["ensembl_id"]] )[0] norm_factor_vector = np.array( [ self.gene_median_dict[i] for i in data.ra["ensembl_id"][coding_miRNA_loc] ] ) coding_miRNA_ids = data.ra["ensembl_id"][coding_miRNA_loc] coding_miRNA_tokens = np.array( [self.gene_token_dict[i] for i in coding_miRNA_ids] ) # define coordinates of cells passing filters for inclusion (e.g. QC) try: data.ca["filter_pass"] except AttributeError: var_exists = False else: var_exists = True if var_exists: filter_pass_loc = np.where([i == 1 for i in data.ca["filter_pass"]])[0] elif not var_exists: print( f"{loom_file_path} has no column attribute 'filter_pass'; tokenizing all cells." ) filter_pass_loc = np.array([i for i in range(data.shape[1])]) # scan through .loom files and tokenize cells tokenized_cells = [] for _ix, _selection, view in data.scan( items=filter_pass_loc, axis=1, batch_size=self.chunk_size ): # select subview with protein-coding and miRNA genes subview = view.view[coding_miRNA_loc, :] # normalize by total counts per cell and multiply by 10,000 to allocate bits to precision # and normalize by gene normalization factors subview_norm_array = ( subview[:, :] / subview.ca.n_counts * target_sum / norm_factor_vector[:, None] ) # tokenize subview gene vectors tokenized_cells += [ tokenize_cell(subview_norm_array[:, i], coding_miRNA_tokens) for i in range(subview_norm_array.shape[1]) ] # add custom attributes for subview to dict if self.custom_attr_name_dict is not None: for k in file_cell_metadata.keys(): file_cell_metadata[k] += subview.ca[k].tolist() else: file_cell_metadata = None return tokenized_cells, file_cell_metadata def create_dataset( self, tokenized_cells, cell_metadata, use_generator=False, keep_uncropped_input_ids=False, ): print("Creating dataset.") # create dict for dataset creation dataset_dict = {"input_ids": tokenized_cells} if self.custom_attr_name_dict is not None: dataset_dict.update(cell_metadata) # create dataset if use_generator: def dict_generator(): for i in range(len(tokenized_cells)): yield {k: dataset_dict[k][i] for k in dataset_dict.keys()} output_dataset = Dataset.from_generator(dict_generator, num_proc=self.nproc) else: output_dataset = Dataset.from_dict(dataset_dict) def format_cell_features(example): # Store original uncropped input_ids in separate feature if keep_uncropped_input_ids: example["input_ids_uncropped"] = example["input_ids"] example["length_uncropped"] = len(example["input_ids"]) # Truncate/Crop input_ids to input size if self.special_token: example["input_ids"] = example["input_ids"][ 0 : self.model_input_size - 2 ] # truncate to leave space for CLS and SEP token example["input_ids"] = np.insert( example["input_ids"], 0, self.gene_token_dict.get("") ) example["input_ids"] = np.insert( example["input_ids"], len(example["input_ids"]), self.gene_token_dict.get(""), ) else: # Truncate/Crop input_ids to input size example["input_ids"] = example["input_ids"][0 : self._model_input_size] example["length"] = len(example["input_ids"]) return example output_dataset_truncated = output_dataset.map( format_cell_features, num_proc=self.nproc ) return output_dataset_truncated