This is a list of links to papers that have essential information on
single-cell transcriptomics.
A practical guide to single-cell RNA-sequencing for biomedical research and clinical applications
Guidelines for reporting single-cell RNA-seq experiments
Optimizing biological inferences from single-cell data
Single-cell RNA-sequencing protocols for cell atlas projects
Transcriptional profiling of physically interacting cells
Combinatorial single-cell CRISPR screens by direct guide RNA capture and targeted sequencing
Integrative single-cell analysis
A systematic evaluation of single cell RNA-seq analysis pipelines
Urgent need for consistent standards in functional enrichment analysis
These are online-accessible books related to single cell analysis.
Multimodal single-cell analysis
These are courses and other resources that will give an overall
introduction to single cell analysis and provide opportunities to learn
about computational biology strategies using scRNA-seq
Introduction to Single-Cell RNA-Seq Technologies
Here are slides from a class that focuses on the computational biology of single-cell RNA-seq analysis. To access the slides, click here.
Analysis of Single Cell RNA-Seq Data
A course that covers all of the steps of scRNA-seq processing. It includes common analysis strategies and discusses central biological questions that can be addressed using scRNA-seq. To access this course, click here. Be sure to look at the section titled ‘Identifying Cell Populations’. It provides essential information about cell types. To access that section, click here.
Analysis of Single Cell RNA-Seq Data (University of Cambridge)
A course that discusses questions that can be addressed using scRNA-seq and the current computational and statistical methods available. It was designed for those who are interested in learning about computational analysis of scRNA-seq data. To access this course, click here.
Overview Talk of Single Cell Genomics Day 2020
Here is an overview of the new computational analysis strategies and experimental technologies presented at Single Cell Genomics Day 2020. To access this video, click here. To access the slides used in the video, click here.
Machine Learning for Single Cell Analysis Workshop
A course that helps its participants receive an introduction to emerging trends in single cell analysis, learn how to analyze single cell data sets, and develop an understanding of machine learning foundations. To access this workshop, click here.
Here are databases/portals/atlases that can be helpful for
single-cell analysis.
Broad Institute Single Cell Portal
Single-Cell Portal was developed to facilitate sharing scientific results and disseminating data generated from single cell technologies. To access it, click here.
Mouse Brain Cell Atlas
Mouse Brain Cell Atlas uses the interactive online software (DropViz) to serve as a reference for development, disease, and evolution. To access it, click here.
CancerSEA CancerSEA is a database that aims to comprehensively decode distinct functional states of cancer cells at single-cell resolution. To access it, click here.
Here are some R packages and tools that can be used for single-cell
analysis.
Bioconductor Single-Cell R-Packages This is a link to a list of R packages for sc-RNA analysis accessible through Bioconductor. To access the list, click here.
Orchestrating Single-Cell Analysis with Bioconductor
This is a website that teaches some common workflows for scRNA-seq data. It focuses on how to make use of cutting-edge Bioconductor tools to process, analyze, visualize, and explore scRNA-seq data. To access this book, click here.
Bioconductor workflow for single-cell RNA sequencing: Normalization, dimensionality reduction, clustering, and lineage inference
This is an integrated workflow that provides a step-by-step tutorial to the methodology and associated software for dimensionality reduction, cell clustering, inference of cell lineages and pseudo-times, and differential expression analysis along lineages. To access this workflow, click here.
Introduction to singleCellTK
This is an R package used for interactive scRNA-seq analysis, which allows users to upload raw scRNA-seq count matrices and perform downstream scRNA-seq analysis interactively through a web interface or through R functions using the command line interface. To access this package, click here.
Stephanie Hicks Lab Projects
This is a list of projects and references from the Stephanie Hicks lab. Here you can find a lot of single-cell work with various goals to understand the depth of single-cell analysis. To access the list of projects, click here.
Multiplexing Cost Calculator
This is a handy single-cell price calculator. To access it, click here.
10X Genomics Cell Ranger Pipeline
This a set of analysis pipelines that processes Chromium single-cell RNA-seq output to align reads, generate feature-barcode matrices and perform clustering and gene expression analysis. It utilizes the STAR aligner. To access the pipelines, click here.
Drop-Seq Alignment Guide
This has Java tools for analyzing Drop-Seq data. This software pipeline performs many analyses including massive de-multiplexing of the data, alignment of reads to a reference genome, and processing of cellular and molecular barcodes. To access this guide, click here.
Seurat R toolkit for single cell genomics
This is an R package designed for quality control, analysis, and exploration of single-cell RNA-seq data. It enables users to identify and interpret sources of heterogeneity from single-cell transcriptomic measurements and to integrate diverse types of single-cell data. To access this package, click here.
Alevin
This is a tool used for a quasi-mapping approach. One may consider using Alevin for 10X Genomics or Drop-seq. To access the tool, click here.
Spatial Alevin
This is a tutorial that will show how to generate the spatially-resolved gene-count matrix for each spot using Alevin and visualize it using Seurat. To access the tutorial, click here.
ReactomeGSA
This package allows for Gene Set Enrichment Analysis using the Reactome database. It allows for comparison of independent datasets across species as well as different omics including single-cell RNA-seq analysis. It also has inbuilt plotting tools. To access the paper that introduces this package, click here.
Version 1.1.2: Added Twitter thread https://twitter.com/mdziemann/status/1626407797939384320?t=Y9rLCPnENn02-KeJb4dtNA&s=31