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Python implementation of the SCENIC pipeline for transcription factor inference from single-cell transcriptomics experiments.

Project description


pySCENIC
========

|buildstatus|_ |pypipackage|_ |docstatus|_

pySCENIC is a lightning-fast python implementation of the SCENIC_ pipeline (Single-Cell rEgulatory Network Inference and
Clustering) which enables biologists to infer transcription factors, gene regulatory networks and cell types from
single-cell RNA-seq data.

The pioneering work was done in R and results were published in Nature Methods [1]_.

pySCENIC can be run on a single desktop machine but easily scales to multi-core clusters to analyze thousands of cells
in no time. The latter is achieved via the dask_ framework for distributed computing [2]_.

The pipeline has three steps:

1. First transcription factors (TFs) and their target genes, together defining a regulon, are derived using gene inference methods which solely rely on correlations between expression of genes across cells. The arboretum_ package is used for this step.
2. These regulons are refined by pruning targets that do not have an enrichment for a corresponding motif of the TF effectively separating direct from indirect targets based on the presence of cis-regulatory footprints.
3. Finally, the original cells are differentiated and clustered on the activity of these discovered regulons.

.. note::
The most impactfull speed improvement is introduced by the arboretum_ package in step 1. This package provides an alternative to GENIE3 [3]_ called GRNBoost2. This package can be controlled from within pySCENIC.

.. sidebar:: **Quick Start**

* `Installation`_
* `Tutorial`_
* `Command Line Interface`_
* See notebooks_
* Report an issue_
* Releases at PyPI_

Features
--------

All the functionality of the original R implementation is available and in addition:

1. You can leverage multi-core and multi-node clusters using dask_ and its distributed_ scheduler.
2. We implemented a version of the recovery of input genes that takes into account weights associated with these genes.
3. Regulons, i.e. the regulatory network that connects a TF with its target genes, with targets that are repressed are now also derived and used for cell enrichment analysis.

Installation
------------

The lastest stable release of the **package** itself can be installed via :code:`pip install pyscenic`.

.. caution::
pySCENIC needs a python 3.5 or greater interpreter.

You can also install the bleeding edge (i.e. less stable) version of the package directly from the source:

.. code-block:: bash

git clone https://github.com/aertslab/pySCENIC.git
cd pySCENIC/
pip install .

To successfully use this pipeline you also need **auxilliary datasets**:

1. *Databases ranking the whole genome* of your species of interest based on regulatory features (i.e. transcription factors). Ranking databases are typically stored in the feather_ format.

================================= ========================== ======================= ============================
Database Species Search space # of orthologous species
================================= ========================== ======================= ============================
hg19-500bp-upstream-10species_ Homo sapiens [TSS+500bp,TSS[ 10
hg19-500bp-upstream-7species_ Homo sapiens [TSS+500bp,TSS[ 7
hg19-tss-centered-10kb-10species_ Homo sapiens TSS+/-10kbp 10
hg19-tss-centered-10kb-7species_ Homo sapiens TSS+/-10kbp 7
hg19-tss-centered-5kb-10species_ Homo sapiens TSS+/-5kbp 10
hg19-tss-centered-5kb-7species_ Homo sapiens TSS+/-5kbp 7

hg38-10kb-up-and-down-tss_ Homo sapiens [TSS+10kb,TSS-10kb] 9
hg38-500bp-up-100bp-down-tss_ Homo sapiens [TSS+500bp,TSS-100bp] 9

mm9-500bp-upstream-10species_ Mus musculus [TSS+500bp,TSS[ 10
mm9-500bp-upstream-7species_ Mus musculus [TSS+500bp,TSS[ 7
mm9-tss-centered-10kb-10species_ Mus musculus TSS+/-10kbp 10
mm9-tss-centered-10kb-7species_ Mus musculus TSS+/-10kbp 7
mm9-tss-centered-5kb-10species_ Mus musculus TSS+/-5kbp 10
mm9-tss-centered-5kb-7species_ Mus musculus TSS+/-5kbp 7

mm10-10kb-up-and-down-tss_ Mus musculus [TSS+10kb,TSS-10kb] 9
mm10-500bp-up-100bp-down-tss_ Mus musculus [TSS+500bp,TSS-100bp] 9
dm6-5kb-upstream-full-tx_ Drosophila melanogaster [TSS+5kb,full Tx] 11
================================= ========================== ======================= ============================

.. _hg19-500bp-upstream-10species: http://pyscenic.aertslab.org/databases/hg19-500bp-upstream-10species.mc9nr.feather
.. _hg19-500bp-upstream-7species: http://pyscenic.aertslab.org/databases/hg19-500bp-upstream-7species.mc9nr.feather
.. _hg19-tss-centered-10kb-10species: http://pyscenic.aertslab.org/databases/hg19-tss-centered-10kb-10species.mc9nr.feather
.. _hg19-tss-centered-10kb-7species: http://pyscenic.aertslab.org/databases/hg19-tss-centered-10kb-7species.mc9nr.feather
.. _hg19-tss-centered-5kb-10species: http://pyscenic.aertslab.org/databases/hg19-tss-centered-5kb-10species.mc9nr.feather
.. _hg19-tss-centered-5kb-7species: http://pyscenic.aertslab.org/databases/hg19-tss-centered-5kb-7species.mc9nr.feather

.. _hg38-10kb-up-and-down-tss: http://pyscenic.aertslab.org/databases/hg38__refseq-r80__10kb_up_and_down_tss.mc9nr.feather
.. _hg38-500bp-up-100bp-down-tss: http://pyscenic.aertslab.org/databases/hg38__refseq-r80__500bp_up_and_100bp_down_tss.mc9nr.feather

.. _mm9-500bp-upstream-10species: http://pyscenic.aertslab.org/databases/mm9-500bp-upstream-10species.mc9nr.feather
.. _mm9-500bp-upstream-7species: http://pyscenic.aertslab.org/databases/mm9-500bp-upstream-7species.mc9nr.feather
.. _mm9-tss-centered-10kb-10species: http://pyscenic.aertslab.org/databases/mm9-tss-centered-10kb-10species.mc9nr.feather
.. _mm9-tss-centered-10kb-7species: http://pyscenic.aertslab.org/databases/mm9-tss-centered-10kb-7species.mc9nr.feather
.. _mm9-tss-centered-5kb-10species: http://pyscenic.aertslab.org/databases/mm9-tss-centered-5kb-10species.mc9nr.feather
.. _mm9-tss-centered-5kb-7species: http://pyscenic.aertslab.org/databases/mm9-tss-centered-5kb-7species.mc9nr.feather

.. _mm10-10kb-up-and-down-tss: http://pyscenic.aertslab.org/databases/mm10__refseq-r80__10kb_up_and_down_tss.mc9nr.feather
.. _mm10-500bp-up-100bp-down-tss: http://pyscenic.aertslab.org/databases/mm10__refseq-r80__500bp_up_and_100bp_down_tss.mc9nr.feather

.. _dm6-5kb-upstream-full-tx: http://pyscenic.aertslab.org/databases/dm6-5kb-upstream-full-tx-11species.mc8nr.feather

2. *Motif annotation* database providing the missing link between an enriched motif and the transcription factor that binds this motif. This pipeline needs a TSV text file where every line represents a particular annotation.

======================= ==========================
Annotations Species
======================= ==========================
`HGNC annotations`_ Homo sapiens
`MGI annotations`_ Mus musculus
`Flybase annotations`_ Drosophila melanogaster
======================= ==========================

.. _`HGNC annotations`: http://pyscenic.aertslab.org/resources/motifs-v9-nr.hgnc-m0.001-o0.0.tbl
.. _`MGI annotations`: http://pyscenic.aertslab.org/resources/motifs-v9-nr.mgi-m0.001-o0.0.tbl
.. _`Flybase annotations`: http://pyscenic.aertslab.org/resources/motifs-v8-nr.flybase-m0.001-o0.0.tbl

.. caution::
These ranking databases are 1.1 Gb each so downloading them might take a while. An annotations file is typically 100Mb in size.

Tutorial
--------

For this tutorial 3,005 single cell transcriptomes taken from the mouse brain (somatosensory cortex and
hippocampal regions) are used as an example [4]_. The analysis is done in a Jupyter_ notebook.

First we import the necessary modules and declare some constants:

.. code-block:: python

import os
import glob
import pickle
import pandas as pd
import numpy as np

from dask.diagnostics import ProgressBar

from arboretum.utils import load_tf_names
from arboretum.algo import grnboost2

from pyscenic.rnkdb import FeatherRankingDatabase as RankingDatabase
from pyscenic.utils import modules_from_adjacencies, load_motifs
from pyscenic.prune import prune, prune2df, df2regulons
from pyscenic.aucell import aucell

import seaborn as sns

DATA_FOLDER="~/tmp"
RESOURCES_FOLDER="~/resources"
DATABASE_FOLDER = "~/databases/"
SCHEDULER="123.122.8.24:8786"
DATABASES_GLOB = os.path.join(DATABASE_FOLDER, "mm9-*.feather")
MOTIF_ANNOTATIONS_FNAME = os.path.join(RESOURCES_FOLDER, "motifs-v9-nr.mgi-m0.001-o0.0.tbl")
MM_TFS_FNAME = os.path.join(RESOURCES_FOLDER, 'mm_tfs.txt')
SC_EXP_FNAME = os.path.join(RESOURCES_FOLDER, "GSE60361_C1-3005-Expression.txt")
REGULONS_FNAME = os.path.join(DATA_FOLDER, "regulons.p")
MOTIFS_FNAME = os.path.join(DATA_FOLDER, "motifs.csv")


Preliminary work
~~~~~~~~~~~~~~~~

The scRNA-Seq data is downloaded from GEO: https://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE60361 and loaded into memory:

.. code-block:: python

ex_matrix = pd.read_csv(SC_EXP_FNAME, sep='\t', header=0, index_col=0).T
ex_matrix.shape

::

(3005, 19970)

and the list of Transcription Factors (TF) for *Mus musculus* are read from file.
The list of known TFs for Mm was prepared from TFCat (cf. notebooks_ section).

.. code-block:: python

tf_names = load_tf_names(MM_TFS_FNAME)


Finally the ranking databases are loaded:

.. code-block:: python

db_fnames = glob.glob(DATABASES_GLOB)
def name(fname):
return os.path.basename(fname).split(".")[0]
dbs = [RankingDatabase(fname=fname, name=name(fname)) for fname in db_fnames]
dbs

::

[FeatherRankingDatabase(name="mm9-tss-centered-10kb-10species"),
FeatherRankingDatabase(name="mm9-500bp-upstream-7species"),
FeatherRankingDatabase(name="mm9-500bp-upstream-10species"),
FeatherRankingDatabase(name="mm9-tss-centered-5kb-10species"),
FeatherRankingDatabase(name="mm9-tss-centered-10kb-7species"),
FeatherRankingDatabase(name="mm9-tss-centered-5kb-7species")]

Phase I: Inference of co-expression modules
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~

In the initial phase of the pySCENIC pipeline the single cell expression profiles are used to infer
co-expression modules from.

Run GENIE3 or GRNBoost from arboretum_ to infer co-expression modules
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^

The arboretum package is used for this phase of the pipeline. For this notebook only a sample of 1,000 cells is used
for the co-expression module inference is used.

.. code-block:: python

adjacencies = grnboost2(ex_matrix, tf_names=tf_names, verbose=True)

Derive potential regulons from these co-expression modules
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^

Regulons are derived from adjacencies based on three methods.

The first method to create the TF-modules is to select the best targets for each transcription factor:

1. Targets with importance > the 50th percentile.
2. Targets with importance > the 75th percentile
2. Targets with importance > the 90th percentile.

The second method is to select the top targets for a given TF:

1. Top 50 targets (targets with highest weight)

The alternative way to create the TF-modules is to select the best regulators for each gene (this is actually how GENIE3 internally works). Then, these targets can be assigned back to each TF to form the TF-modules. In this way we will create three more gene-sets:

1. Targets for which the TF is within its top 5 regulators
2. Targets for which the TF is within its top 10 regulators
3. Targets for which the TF is within its top 50 regulators

A distinction is made between modules which contain targets that are being activated and genes that are being repressed. Relationship between TF and its target, i.e. activator or repressor, is derived using the original expression profiles. The Pearson product-moment correlation coefficient is used to derive this information.

In addition, the transcription factor is added to the module and modules that have less than 20 genes are removed.

.. code-block:: python

modules = list(modules_from_adjacencies(adjacencies, ex_matrix))


Phase II: Prune modules for targets with cis regulatory footprints (aka RcisTarget)
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~

.. code-block:: python

# Calculate a list of enriched motifs and the corresponding target genes for all modules.
with ProgressBar():
df = prune2df(dbs, modules, MOTIF_ANNOTATIONS_FNAME)

# Create regulons from this table of enriched motifs.
regulons = df2regulons(df)

# Save the enriched motifs and the discovered regulons to disk.
df.to_csv(MOTIFS_FNAME)
with open(REGULONS_FNAME, "wb") as f:
pickle.dump(regulons, f)

Directly calculating regulons without the intermediate dataframe of enriched features is also possible:

.. code-block:: python

regulons = prune(dbs, modules, MOTIF_ANNOTATIONS_FNAME)


Clusters can be leveraged in the following way:

.. code-block:: python

# The clusters can be leveraged via the dask framework:
df = prune2df(dbs, modules, MOTIF_ANNOTATIONS_FNAME, client_or_address=SCHEDULER)

# or alternatively:
regulons = prune(dbs, modules, MOTIF_ANNOTATIONS_FNAME, client_or_address=SCHEDULER)

Reloading the enriched motifs and regulons from file should be done as follows:

.. code-block:: python

df = load_motifs(MOTIFS_FNAME)
with open(REGULONS_FNAME, "rb") as f:
regulons = pickle.load(f)

Phase III: Cellular regulon enrichment matrix (aka AUCell)
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~

We characterize the different cells in a single-cell transcriptomics experiment via the enrichment of the previously discovered
regulons. Enrichment of a regulon is measured as the Area Under the recovery Curve (AUC) of the genes that define this regulon.

.. code-block:: python

auc_mtx = aucell(ex_matrix, regulons, num_workers=4)
sns.clustermap(auc_mtx, figsize=(8,8))

Command Line Interface
----------------------

A command line version of the tool is included. This tool is available after proper installation of the package via :code:`pip`.

.. code-block:: bash

{ ~ } » pyscenic ~
usage: pySCENIC [-h] {grnboost,ctx,aucell} ...

Single-CEll regulatory Network Inference and Clustering

positional arguments:
{grnboost,ctx,aucell}
sub-command help
grnboost Derive co-expression modules from expression matrix.
ctx Find enriched motifs for a gene signature and
optionally prune targets from this signature based on
cis-regulatory cues.
aucell Find enrichment of regulons across single cells.

optional arguments:
-h, --help show this help message and exit

Arguments can be read from file using a @args.txt construct.

Website
-------

For more information, please visit LCB_ and SCENIC_.

License
-------

GNU General Public License v3


Acknowledgments
---------------

We are grateful to all providers of TF-annotated position weight matrices, in particular Martha Bulyk (UNIPROBE), Wyeth Wasserman and Albin Sandelin (JASPAR), BioBase (TRANSFAC), Scot Wolfe and Michael Brodsky (FlyFactorSurvey) and Timothy Hughes (cisBP).

References
----------

.. [1] Aibar, S. et al. SCENIC: single-cell regulatory network inference and clustering. Nat Meth 14, 1083–1086 (2017).
.. [2] Rocklin, M. Dask: parallel computation with blocked algorithms and task scheduling. conference.scipy.org
.. [3] Huynh-Thu, V. A. et al. Inferring regulatory networks from expression data using tree-based methods. PLoS ONE 5, (2010).
.. [4] Zeisel, A. et al. Cell types in the mouse cortex and hippocampus revealed by single-cell RNA-seq. Science 347, 1138–1142 (2015).
.. _dask: https://dask.pydata.org/en/latest/
.. _distributed: https://distributed.readthedocs.io/en/latest/
.. _LCB: https://aertslab.org
.. _feather: https://github.com/wesm/feather
.. _arboretum: https://arboretum.readthedocs.io
.. _notebooks: https://github.com/aertslab/pySCENIC/tree/master/notebooks
.. _issue: https://github.com/aertslab/pySCENIC/issues/new
.. _SCENIC: http://scenic.aertslab.org
.. _PyPI: https://pypi.python.org/pypi/pyscenic
.. _Jupyter: http://jupyter.org

.. |buildstatus| image:: https://travis-ci.org/aertslab/pySCENIC.svg?branch=master
.. _buildstatus: https://travis-ci.org/aertslab/pySCENIC

.. |pypipackage| image:: https://badge.fury.io/py/pyscenic.svg
.. _pypipackage: https://badge.fury.io/py/pyscenic

.. |docstatus| image:: https://readthedocs.org/projects/pyscenic/badge/?version=latest
.. _docstatus: http://pyscenic.readthedocs.io/en/latest/?badge=latest

.. |bioconda| image:: https://img.shields.io/badge/install%20with-bioconda-brightgreen.svg?style=flat-square
.. _bioconda: https://anaconda.org/bioconda/pyscenic



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