Skip to main content

TileDB-based array storage for genomics data collections.

Project description

PyPI-Server Unit tests

Cell Arrays

Cell Arrays is a Python package that provides a TileDB-backed store for large collections of genomic experimental data, such as millions of cells across multiple single-cell experiment objects.

The CellArrDataset is designed to store single-cell RNA-seq datasets but can be generalized to store any 2-dimensional experimental data.

Install

To get started, install the package from PyPI

pip install cellarr

Usage

Build a CellArrDataset

Building a CellArrDataset generates 4 TileDB files in the specified output directory:

  • gene_annotation: A TileDB file containing feature/gene annotations.
  • sample_metadata: A TileDB file containing sample metadata.
  • cell_metadata: A TileDB file containing cell metadata including mapping to the samples they are tagged with in sample_metadata.
  • A matrix TileDB file named by the layer_matrix_name parameter. This allows the package to store multiple different matrices, e.g. normalized, scaled for the same cell, gene, sample metadata attributes.

The organization is inspired by the MultiAssayExperiment data structure.

The TileDB matrix file is stored in a cell X gene orientation. This orientation is chosen because the fastest-changing dimension as new files are added to the collection is usually the cells rather than genes.

Note: Currently only supports either paths to H5AD or AnnData objects

To build a CellArrDataset from a collection of H5AD or AnnData objects:

import anndata
import numpy as np
import tempfile
from cellarr import build_cellarrdataset, CellArrDataset, MatrixOptions

# Create a temporary directory
tempdir = tempfile.mkdtemp()

# Read AnnData objects
adata1 = anndata.read_h5ad("path/to/object1.h5ad", "r")
# or just provide the path
adata2 = "path/to/object2.h5ad"

# Build CellArrDataset
dataset = build_cellarrdataset(
    output_path=tempdir,
    files=[adata1, adata2],
    matrix_options=MatrixOptions(dtype=np.float32),
)

The build process usually involves 4 steps:

  1. Scan the Collection: Scan the entire collection of files to create a unique set of feature ids (e.g. gene symbols). Store this set as the gene_annotation TileDB file.

  2. Sample Metadata: Store sample metadata in sample_metadata TileDB file. Each file is typically considered a sample, and an automatic mapping is created between files and samples if metadata is not provided.

  3. Store Cell Metadata: Store cell metadata in the cell_metadata TileDB file.

  4. Remap and Orient Data: For each dataset in the collection, remap and orient the feature dimension using the feature set from Step 1. This step ensures consistency in gene measurement and order, even if some genes are unmeasured or ordered differently in the original experiments.

Note: The objects to build the CellArrDataset are expected to be fairly consistent, especially along the feature dimension. if these are AnnData or H5ADobjects, all objects must contain an index (in the var slot) specifying the gene symbols.

Check out the documentation for more details.

Query a CellArrDataset

Users have the option to reuse the dataset object retuned when building the dataset or by creating a CellArrDataset object by initializing it to the path where the files were created.

# Create a CellArrDataset object from the existing dataset
dataset = CellArrDataset(dataset_path=tempdir)

# Query data from the dataset
gene_list = ["gene_1", "gene_95", "gene_50"]
expression_data = dataset[0:10, gene_list]

print(expression_data.matrix)

print(expression_data.gene_annotation)
 ## output 1
 <11x3 sparse matrix of type '<class 'numpy.float32'>'
      with 9 stored elements in COOrdinate format>

 ## output 2
 	cellarr_gene_index
 0	gene_1
 446	gene_50
 945	gene_95

Note

This project has been set up using PyScaffold 4.5. For details and usage information on PyScaffold see https://pyscaffold.org/.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

cellarr-0.1.3.tar.gz (109.9 kB view hashes)

Uploaded Source

Built Distribution

cellarr-0.1.3-py3-none-any.whl (21.3 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page