Single-Cell ATAC-seq Analysis via Latent feature Extraciton


License
MIT
Install
pip install scale-atac==1.0.8

Documentation

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Single-Cell ATAC-seq analysis via Latent feature Extraction

News

2021.04 A new online integration tool SCALEX on scRNA-seq and scATAC-seq is available!
2021.03.23 Introduce the highly_variable_genes from scanpy to filter peaks
2021.01.14 Update to compatible with h5ad file and scanpy

Installation

SCALE neural network is implemented in Pytorch framework.
Running SCALE on CUDA is recommended if available.

install from PyPI

pip install scale

install latest develop version from GitHub

pip install git+https://github.com/jsxlei/SCALE.git

or download and install

git clone git://github.com/jsxlei/SCALE.git
cd SCALE
python setup.py install

Installation only requires a few minutes.

Quick Start

Input

  • h5ad file
  • count matrix file:
    • row is peak and column is barcode, in txt / tsv (sep="\t") or csv (sep=",") format
  • mtx folder contains three files:
    • count file: count in mtx format, filename contains key word "count" / "matrix"
    • peak file: 1-column of peaks chr_start_end, filename contains key word "peak"
    • barcode file: 1-column of barcodes, filename contains key word "barcode"
  • h5mu file, e.g. filename.h5mu/atac

Run

SCALE.py -d [input]

Output

Output will be saved in the output folder including:

  • model.pt: saved model to reproduce results cooperated with option --pretrain
  • adata.h5ad: saved data including Leiden cluster assignment, latent feature matrix and UMAP results.
  • umap.pdf: visualization of 2d UMAP embeddings of each cell

Imputation

Get binary imputed data in adata.h5ad file using scanpy adata.obsm['binary'] with option --binary (recommended for saving storage)

SCALE.py -d [input] --binary  

or get numerical imputed data in adata.h5ad file using scanpy adata.obsm['imputed'] with option --impute

SCALE.py -d [input] --impute

Useful options

  • save results in a specific folder: [-o] or [--outdir]
  • embed feature by tSNE or UMAP: [--embed] tSNE/UMAP
  • filter low quality cells by valid peaks number, default 100: [--min_peaks]
  • filter low quality peaks by valid cells number, default 3: [--min_cells]
  • filter peaks by selecting highly variable features, default 100,000: [--n_feature], disable by [--n_feature] -1.
  • modify the initial learning rate, default is 0.002: [--lr]
  • change iterations by watching the convergence of loss, default is 30000: [-i] or [--max_iter]
  • change random seed for parameter initialization, default is 18: [--seed]
  • binarize the imputation values: [--binary]

Help

Look for more usage of SCALE

SCALE.py --help 

Use functions in SCALE packages.

import scale
from scale import *
from scale.plot import *
from scale.utils import *

Running time

Tutorial

Tutorial Forebrain Run SCALE on dense matrix Forebrain dataset (k=8, 2088 cells)

Data availability

Reference

Lei Xiong, Kui Xu, Kang Tian, Yanqiu Shao, Lei Tang, Ge Gao, Michael Zhang, Tao Jiang & Qiangfeng Cliff Zhang. SCALE method for single-cell ATAC-seq analysis via latent feature extraction. Nature Communications, (2019).