1 Motivation and Summary

This vignettes summarizes our views and experiences on running GRaNIE for 10x multiome data. While GRaNIE has been developed originally for bulk data, it can in fact also be applied, with particular preprocessing, to single-cell data. As many tools that integrate single-cell data, some kind of aggregation is necessary to reduce the scarcity of the data - ATAC in particular. While many tools do this implicitly in their methods, somewhat hidden from the user, we employ here a different approach: We preprocess the data manually and feed it into GRaNIE in a pseudobulk manner so that the original frameworks works just as well, while giving a lot of flexibility to the user in how exactly the data preprocessing and granularity of the data should look like. From our experience, very often this is very question-specific and data-dependent, and no universal solution exists that works equally well for everything.

Disclaimer: These are just recommendations here based on our (limited) experience and testing so far. We cannot guarantee this works also well for your data. Feel free to contact us for questions and feedback, we are happy for discussions and comments.

2 General notes and sources

In this vignette, we pretty much follow this Seurat vignette for the preprocessing of the RNA and ATAC data and subsequent clustering for 10x multiome data. However, GRaNIE is not dependent on a specific way of preprocessing as long as the final count matrices that are used as input are appropriate - see subsequent chapters here for details on what appropriate means here in this context.

Thus, feel free to modify and extend the preprocessing and RNA/ATAC integration as proposed here - let us know whether and how well it worked, we are very happy for receiving feedback for GRaNIE in single-cell / pseudobulk mode.

If you do not have 10x multiome data, you need to find a way to match the ATAC and RNA data by yourself, and most of the steps in the tutorial below may not apply. Share your experiences with us how and whether you managed to run GRaNIE for your data!

3 Prerequisites: a multimodal Seurat object

The first step is to create a multimodal Seurat object with paired transcriptome and ATAC-seq profiles. For details on how to generate it, you only need the output of, for example, CellRanger ARC for 10x multiome experiments. You may check various excellent tutorials such as this Seurat vignette.

4 Data preprocessing

For the 10x multiome data, we next perform pre-processing and dimensional reduction on both assays independently, using standard approaches for RNA and ATAC-seq data, as summarized below:

4.1 RNA

In a nutshell, we perform a standard scRNA-seq normalization and processing:

  1. SCTransform
  2. RunPCA
  3. RunUMAP

4.2 ATAC

Similarly, we perform the following standard scATAC-seq normalization and processing:

  1. RunTFIDF
  2. FindTopFeatures
  3. RunSVD
  4. RunUMAP using reduction = 'lsi'

5 Integrating the modalities

For integrating both modalities, you can use any method you find appropriate for your data. Here, we use a weighted-nearest neighbor (WNN) analysis, an unsupervised framework to learn the relative utility of each data type in each cell. By learning cell-specific modality ‘weights’, and constructing a WNN graph that integrates the modalities, we represent a weighted combination of the RNA and ATAC-seq modalities that we can subsequently use for generating our pseudobulk samples.

In short, we run this on the Seurat object;

  1. FindMultiModalNeighbors with reduction.list = list("pca", "lsi"), dims.list = list(1:50, 2:50)
  2. RunUMAP

We now have both data modalities in a reduced dimensionality representation.

6 Clustering and pseudobulk creation

6.1 Methods

After integration of both RNA and ATAC modalities, we can now perform a clustering on RNA+ATAC data on the single cell level.

For the 10x multiome, we so far used the WNN graph for UMAP visualization and subsequent clustering as described here. However, many other methods may be used and we will update this vignette with alternatives in the future.

In a nutshell, these are the functions we may run here:

  1. FindClusters with a specific resolution value that we usually vary between 0.1 and 20. Reasonable cluster resolutions are data and question dependent. For recommendations, see the notes below.
  2. AggregateExpression to aggregate counts within each cluster to cluster pseudocounts based on their (cluster) identities. Each cluster forms a sample as used in the GRaNIE analysis. Importantly, we found that mean count aggregation works better than sum count aggregation: For the former, the resulting eGRNs from GraNIE are more stable and similar to each other as compared to the eGRNs that come from the sum count aggregation.

6.2 Choosing the right number of clusters

We strongly suggest choosing a resolution that gives at least 20-30 clusters, as fewer clusters (or samples consequently in the GRaNIE analysis) can cause statistical issues and artifacts as observed in the enhancer-gene diagnostic plots for some datasets. If the desired number of clusters is small, pay close(r) attention to the enhancer-gene QC plots, in particular whether the signal from the randomized connections looks flat (enough). For more details, see the Package Details.

On the other extreme, too many clusters will result in data that becomes too scares - especially the ATAC-seq data suffers from scarcity. Throughout our experiments, we have seen that when having too many clusters (close to or more than 100, for example), the scarcity of ATAC becomes so big that either man peaks are filtered out in the filterData() function or that the abundance of zeros results in very few connections in the eGRN. Thus, we advise on an intermediate level of cluster that is also plausible biologically, but testing different cluster resolutions is generally also a good idea for initial exploration.

7 Preparing the input data for GRaNIE

Lastly, we need a few processing steps to bring both RNA and ATAC count matrices into the required format that can be directly used by GRaNIE. This encompasses mainly simple transformation steps.

7.1 ATAC

No special steps are needed here except for creating a peakID column. For more details, see the example scripts we provide and link in this document.

7.2 RNA

For RNA, one extra step is needed: We need to translate the gene names as provided by Seurat into proper Ensembl IDs. To do so, there are two options:

  1. The feature file as provided as output from CellRanger can be used for it. It is called features.tsv.gz or alike and contains in total 6 columns (Ensembl ID, gene name, set name, chr, start, end). This can be utilized to use the Ensembl IDs in the ID column of the RNA count matrix (default name is ENSEMBL).
  2. If this file is not available, we provide example files for both hg38 and mm10 that can be used. You can download them here.

7.3 Metadata

Creating a metadata file is optional but recommended. We usually create a simple data frame with two columns:

  1. Cluster number as given by Seurat
  2. Number of cells for each cluster.

However, you may add additional metadata such as cluster annotation or other information to it.

8 Running GRaNIE

We are now all set to run GRaNIE, using the cluster-specific count matrices for both ATAC and RNA and, optionally, the metadata file. We usually use GRaNIE in the default mode, as the pseudobulk data mimics bulk data close enough from our experience.

We want to emphasize in particular to use filterData() to filter both RNA and particularly ATAC to exclude peaks that have very low count values. We usually use minNormalizedMean_peaks_bulk = 5 and minNormalizedMean_RNA_bulk = 1 although other values may be reasonable too. Let us know what your experiences are, we are happy for any feedback. Especially for analyses with many clusters, many peaks have very low means from our experience with consequently low variation - so excluding them may be a better idea than keeping them to remove noise.

Depending on the number of clusters, GRaNIE may run a little longer than the typical bulk analysis but from our experience not much longer.

9 Scripts and example data

If you are interested, we can provide a set of scripts that can help setting up a GRaNIE analysis for 10x multiome data. They are still in development, and will be made available here once they are mature enough.

9.1 Data processing and GRaNIE preparation

We provide a script to takes a Seurat object with ATAC and RNA assays as input and processes the data according to what we described here in this vignette, performs 10 and more clustering runs for resolutions between 0.5 and 20 (user-adjustable) and produces the properly processed count and metadata files that can be directly used as input for GRaNIE.

9.2 Running GRaNIE in batch mode

We also provide a script that runs GRaNIE in batch mode, once per cluster resolution as produced in the step before. The input is essentially a folder, along with GraNIE parameters for a standard analysis, and the function then iterates over all input files and performs one GraNIE analysis at a time for a user-provided list of cluster resolutions.

10 Further notes and FAQs

Over time, we will add here further notes and compile a list of FAQs.

11 Session Info

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