e-learning

Clustering 3K PBMCs with Scanpy

Abstract

Single-cell RNA-seq analysis is a rapidly evolving field at the forefront of transcriptomic research, used in high-throughput developmental studies and rare transcript studies to examine cell heterogeneity within a populations of cells. The cellular resolution and genome wide scope make it possible to draw new conclusions that are not otherwise possible with bulk RNA-seq.

About This Material

This is a Hands-on Tutorial from the GTN which is usable either for individual self-study, or as a teaching material in a classroom.

Questions this will address

  • What are the steps to prepare single-cell RNA-Seq data for clustering?
  • How to cluster cells in single-cell RNA-Seq data?
  • How cell type annotation can be assigned to cell clusters?

Learning Objectives

  • Describe an AnnData object to store single-cell data
  • Explain the preprocessing steps for single-cell data
  • Evaluate quality of single-cell data and apply steps to select and filter cells and genes based on QC
  • Execute data normalization and scaling
  • Identify highly variable genes
  • Construct and run a dimensionality reduction using Principal Component Analysis
  • Perform a graph-based clustering for cells
  • Identify marker genes for the clusters
  • Construct and run a cell type annotation for the clusters

Licence: Creative Commons Attribution 4.0 International

Keywords: 10x, Single Cell

Target audience: Students

Resource type: e-learning

Version: 13

Status: Active

Prerequisites:

  • Dealing with Cross-Contamination in Fixed Barcode Protocols
  • Introduction to Galaxy Analyses
  • Pre-processing of 10X Single-Cell RNA Datasets
  • Pre-processing of Single-Cell RNA Data

Learning objectives:

  • Describe an AnnData object to store single-cell data
  • Explain the preprocessing steps for single-cell data
  • Evaluate quality of single-cell data and apply steps to select and filter cells and genes based on QC
  • Execute data normalization and scaling
  • Identify highly variable genes
  • Construct and run a dimensionality reduction using Principal Component Analysis
  • Perform a graph-based clustering for cells
  • Identify marker genes for the clusters
  • Construct and run a cell type annotation for the clusters

Date modified: 2024-10-04

Date published: 2019-12-19

Authors: Bérénice Batut, Diana Chiang Jurado, Hans-Rudolf Hotz, Mehmet Tekman, Pavankumar Videm


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