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SNPmanifold

SNPmanifold is a Python package that learns a representative manifold for single cells based on their SNPs (Single-Nucleotide Polymorphisms) using VAE (Variational AutoEncoder) and UMAP (Uniform Manifold Approximation and Projection). It takes AD matrix, DP matrix, and VCF (or variant_name.tsv) as inputs. You can compile them from bam file(s) either conveniently by cellSNP-lite or by your custom scripts.

SNPmanifold first performs simple filtering on AD matrix and DP matrix for high-quality cells and SNPs. It then trains VAE and UMAP to learn a representative manifold for single cells according to their SNP-allelic ratios (AD/DP). Finally, it classifies cells into clones and infer their phylogeny based on the manifold.

Installation

Quick install can be achieved via pip

# for published version
pip install -U SNPmanifold

# or developing version
pip install -U git+https://github.com/StatBiomed/SNPmanifold

Or set a conda environment before installing (credits to Xinyi Lin). Replace $myenv with the environment name you prefer.

conda create -n $myenv python=3.8
conda activate $myenv

pip install -U git+https://github.com/StatBiomed/SNPmanifold

Quick Usage

Full documentation is at https://SNPmanifold.readthedocs.io.

Here is a quick start:

  1. Import SNPmanifold and create an object of the class SNP_VAE.
from SNPmanifold import SNP_VAE
  1. Run 4 methods (filtering, training, clustering, phylogeny) in order.

Each method can rerun sperately without reruning prior methods.