Data analysis packages

For data generated at the DcGC, we offer the following analysis packages:

  • Single-cell RNA-seq
  • Spatial Transcriptomics
  • Bulk Differential Gene Expression
  • Mapping and Counting
  • Peak Calling
  • Validation of CRISPR/Cas experiments
  • Variation analysis

Each package includes basic quality control, a specific set of analyses and output files, and a round of discussion and assistance with interpreting the results.

  • Setup of Custom Species
  • Sequence Data Upload
  • Data Retrieval from Archive
1.scRNA-seq
Single-cell RNA-seq analysis
Applicable to single-cell RNA-seq data from:
Smart-seq2, 10x Genomics and Parse Biosciences

The analysis includes mapping and generating a gene-by-cell counts table, followed by an in-house pipeline that includes quality control and filtering, normalization, dimensionality reduction, clustering and UMAP, and cluster annotation, all documented in a detailed report.

2.spatial
Spatial transcriptomics analysis
Applicable to spatial data from 10x Genomics’ Visium and Xenium platforms

The analysis includes mapping and generating a gene-by-spot counts table, followed by an in-house pipeline that includes typical single-cell RNA-seq analysis steps plus visualizations of the results in their spatial context.

3.bulk DGE
Differential gene expression analysis
Applicable to bulk RNA-seq data

The analysis includes mapping and generating a gene-by-sample counts table, followed by an exploratory analysis with PCA, batch correction, sample correlation, and finally the identification of genes with differential expression between conditions of interest.

4.mapping & counting
Mapping and Counting
Applicable to:
bulk RNA-seq data, single-cell RNA-seq data, spatial RNA-seq and RNA in-situ data

If you plan to conduct an in-depth analysis independently, we offer a basic analysis package that includes mapping raw transcriptome data to the reference genome and counting mapped reads per gene.

5.peak calling
Peak calling analysis
Applicable to bulk ATAC-seq, CUT&RUN, and CUT&TAG data

We use and contribute to nfcore pipelines, which process raw ATAC-seq, CUT&RUN and CUT&TAG data by mapping the reads to the reference genome, filtering and calling peaks.

6.CRISPR/Cas
Validation of CRISPR/Cas experiments
Applicable to bulk DNA-seq data

To facilitate rapid and intuitive interpretation of CRISPR/Cas editing experiments, we use CRISPResso2, which maps reads to the target region, quantifies substitutions, insertions and deletions (indels), and categorizes indels in coding regions as frameshift and in-frame events.

7.variation analysis
Variation analysis
Applicable to bulk DNA-seq data

Using the nfcore/sarek pipeline, we map raw reads against the reference genome, identify germline and somatic small nucleotide variants (SNVs) and copy-number variants (CNV), and perform functional annotation to predict the impact of these variants on genes, transcripts, proteins, and regulatory regions.

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