Dec 17, 2021
Version 1.1 is now available.
pandas
matplotlib
and seaborn
Jun 1, 2020
Version 1.0 is now available. The v1.0 has added a lot of new functionality:
See v1.0 for more details.
Jan 14, 2020
Version 0.4.1 is now available. We added support of feature top_pcs
for Mapping
Nov 26, 2019
Version 0.4.0 is now available. Numerous changes have been introduced. Please check v0.4.0 for details.
STREAM (Single-cell Trajectories Reconstruction, Exploration And Mapping) is an interactive pipeline capable of disentangling and visualizing complex branching trajectories from both single-cell transcriptomic and epigenomic data.
STREAM is now published in Nature Communications! Please cite our paper Chen H, et al. Single-cell trajectories reconstruction, exploration and mapping of omics data with STREAM. Nature Communications, volume 10, Article number: 1903 (2019). if you find STREAM helpful for your research.
STREAM is written using the class anndata
Wolf et al. Genome Biology (2018) and available as user-friendly open source software and can be used interactively as a web-application at stream.pinellolab.org, as a bioconda package https://bioconda.github.io/recipes/stream/README.html and as a standalone command-line tool with Docker https://github.com/pinellolab/STREAM
$ conda install -c bioconda stream
If you are new to conda environment:
If Anaconda (or miniconda) is already installed with Python 3, skip to 2) otherwise please download and install Python3 Anaconda from here: https://www.anaconda.com/download/
Open a terminal and add the Bioconda channel with the following commands:
$ conda config --add channels defaults $ conda config --add channels bioconda $ conda config --add channels conda-forge
env_stream
, install stream, jupyter, and activate it with the following commands:$ conda create -n env_stream python=3.7 stream=1.0 jupyter $ conda activate env_stream
$ conda create -n env_stream python=3.7 stream=1.0 stream_atac jupyter $ conda activate env_stream
jupyter notebook
within env_stream
:You should see the notebook open in your browser.
Example for scRNA-seq: 1.1-STREAM_scRNA-seq (Bifurcation).ipynb
Example for scRNA-seq: 1.2-STREAM_scRNA-seq (Multifurcation) on 2D visulization.ipynb
Example for scRNA-seq: 1.3-STREAM_scRNA-seq (Multifurcation) on original embedding.ipynb
Example for scATAC-seq(using peaks): 2.1-STREAM_scATAC-seq_peaks.ipynb
Example for scATAC-seq(using k-mers): 2.2-STREAM_scATAC-seq_k-mers.ipynb
Example for scATAC-seq(using motifs): 2.3-STREAM_scATAC-seq_motifs.ipynb
Example for mapping feature: 3-STREAM_mapping.ipynb
Example for complex trajectories: 4-STREAM_complex_trajectories.ipynb
Tutorials for v0.4.1 and earlier versions can be found here
With Docker no installation is required, the only dependence is Docker itself. Users will completely get rid of all the installation and configuration issues. Docker will do all the dirty work for you!
Docker can be downloaded freely from here: https://store.docker.com/search?offering=community&type=edition
To get an image of STREAM, simply execute the following command:
$ docker pull pinellolab/stream
Basic usage of docker run
$ docker run [OPTIONS] IMAGE [COMMAND] [ARG...]Options:
--publish , -p Publish a container’s port(s) to the host --volume , -v Bind mount a volume --workdir , -w Working directory inside the container
To use STREAM inside the docker container:
$ docker run --entrypoint /bin/bash -v /your/data/file/path/:/data -w /data -p 8888:8888 -it pinellolab/stream:1.0
root@46e09702ce87:/data# jupyter notebook --ip 0.0.0.0 --port 8888 --no-browser --allow-root
Access the notebook through your desktops browser on http://127.0.0.1:8888. The notebook will prompt you for a token which was generated when you create the notebook.
STREAM interactive websiteIn order to make STREAM user friendly and accessible to non-bioinformatician, we have created an interactive website: http://stream.pinellolab.org
The website can also run on a local machine. More details can be found https://github.com/pinellolab/STREAM_web
Credits: H Chen, L Albergante, JY Hsu, CA Lareau, GL Bosco, J Guan, S Zhou, AN Gorban, DE Bauer, MJ Aryee, DM Langenau, A Zinovyev, JD Buenrostro, GC Yuan, L Pinello
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