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DNBelab Series Single-Cell analysis workflow

Project description

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DNBelab_C_Series_HT_singlecell-analysis-software

Introduction

An open source and flexible pipeline to analyze high-throughput DNBelab C SeriesTM single-cell datasets.

Hardware/Software requirements

  • x86-64 compatible processors.
  • require at least 50GB of RAM and 4 CPU.
  • centos 7.x 64-bit operating system (Linux kernel 3.10.0, compatible with higher software and hardware configuration).

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Support

  • Please use github issue tracker for questions. issues

[!TIP]

CHANGELOG: 2.1.3 pre-release

  1. Added single-cell immune repertoire analysis.
  2. Optimizing high memory usage when performing combined single-cell ATAC analysis
  3. Improved single-cell RNA sequencing I/O for high-thread scenarios, reducing analysis time.
  4. Added the function of checking whether the gtf format is correct and generating a new gtf file in the correct format.

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