Monet: An open-source Python package for analyzing and integrating single-cell RNA-Seq data using PCA-based latent spaces.
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# Monet
Monet is an open-source Python package for analyzing and integrating scRNA-Seq data using PCA-based latent spaces.
Datasets from the [Monet paper (Wagner, 2020)](https://www.biorxiv.org/content/10.1101/2020.06.08.140673v2) can be found in a [separate repository](https://github.com/flo-compbio/monet-paper).
Additional documentation is in the works! For questions and requests, please create an “issue” on GitHub.
## Getting started
### Installation
To install Monet, please first use [conda](https://docs.conda.io/en/latest/) to install the packages pandas, scipy, scikit-learn, and plotly. If you are new to conda, you can either [install Anaconda](https://docs.anaconda.com/anaconda/install/), which includes all of the aforementioned packages, or you can [install miniconda](https://docs.conda.io/en/latest/miniconda.html) and then manually install these packages. I also recommend using [Jupyter electronic notebooks](https://jupyter.org/) to analyze scRNA-Seq data, which requires installation of the jupyter package (also with conda).
Once these prerequisites are installed, you can install Monet using pip:
`sh $ pip install monet `
### Tutorials
The following tutorials demonstrate how to use Monet to perform various basic and advanced analysis tasks. The Jupyter electronic notebooks can be [downloaded from GitHub](https://github.com/flo-compbio/monet-tutorials).
#### Basics 1. [Loading and saving expression data](https://nbviewer.jupyter.org/github/flo-compbio/monet-tutorials/blob/master/010%20-%20Loading%20and%20saving%20expression%20data.ipynb) 2. Importing data from scanpy (coming soon) 3. [Visualizing data with t-SNE](https://nbviewer.jupyter.org/github/flo-compbio/monet-tutorials/blob/master/030%20-%20Visualizing%20data%20with%20t-SNE.ipynb)
#### Clustering 1. [Clustering data with Galapagos (t-SNE plus DBSCAN)](https://nbviewer.jupyter.org/github/flo-compbio/monet-tutorials/blob/master/040%20-%20Clustering%20data%20with%20Galapagos%20%28t-SNE%20plus%20DBSCAN%29.ipynb) (link currently broken, apologies for the inconvenience) 2. Annotating clusters with cell types (coming soon)
#### Denoising 1. [Denoising data with ENHANCE](https://nbviewer.jupyter.org/github/flo-compbio/monet-tutorials/blob/master/060%20-%20Denoising%20data%20with%20ENHANCE.ipynb)
#### Data integration 1. [Training a Monet model (for integrative anlayses)](https://nbviewer.jupyter.org/github/flo-compbio/monet-tutorials/blob/master/070%20-%20Train%20a%20Monet%20model%20%28for%20integrative%20analyses%29.ipynb) 2. [Plotting a batch-corrected t-SNE using mutual nearest neighbors (Haghverdi et al.%2C 2018)](https://nbviewer.jupyter.org/github/flo-compbio/monet-tutorials/blob/master/080%20-%20Plot%20a%20batch-corrected%20t-SNE%20using%20mutual%20nearest%20neighbors%20%28Haghverdi%20et%20al.%2C%202018%29.ipynb) 3. [Transferring labels between datasets using K-nearest neighbor classification](https://nbviewer.jupyter.org/github/flo-compbio/monet-tutorials/blob/master/090%20-%20Label%20transfer%20using%20K-nearest%20neighbor%20classification.ipynb)
## Copyright and License
Copyright (c) 2020 Florian Wagner
Monet is licensed under an OSI-compliant 3-clause BSD license. For details, see [LICENSE](LICENSE).
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