Single-cell sequencing guide: the ultimate guide to single-cell RNA sequencing
Get started with single-cell RNA sequencing. Accelerate your research & learn all you need to know in this single-cell sequencing guide.
As a scientist, you have probably come across single-cell sequencing in your field. But what is it exactly? How can you apply it to your research? Which technology should you choose? And what do you need to consider before you launch your project?
This single-cell sequencing guide answers all these questions and more.
- What is single-cell RNA sequencing?
- Where does single-cell RNA sequencing come from?
- What are key concepts of single-cell sequencing?
- How does single-cell RNA sequencing work?
- What are common applications of single-cell sequencing?
- In which research areas is single-cell sequencing used?
- What single-cell RNA sequencing technology should I use?
- Technology comparison
- How much does single-cell sequencing cost?
- Things to consider before you start with single-cell sequencing
Single-cell sequencing guide: What is single-cell RNA sequencing?
First of all: What is it?
Single-cell RNA sequencing measures gene expression right down to the level of individual cells. A simple way of looking at this is to use a smoothie as an analogy.
Take a sip of your smoothie and you taste a combination of all the ingredients. Maybe you'll be able to guess some of them, but there's no way you can deconstruct your smoothie entirely and list its components and their ratios by taste alone.
You need more detail. You need a more advanced method.
This metaphor shows the limitations of conventional (bulk) RNA sequencing. Because you analyze thousands to millions of cells together, you will only get an average gene expression level for all the cells combined.
While this might be enough for some research questions, sometimes you need more than just an average. You need more detail. You need a more advanced method.
Enter single-cell RNA sequencing.
Single-cell sequencing allows you to work out the recipe for your cellular smoothies. You'll discover the exact ingredient list and the ratio between them. You will now know how many apples, oranges, strawberries, and bananas were used to make it.
With gene expression information at the single-cell level, single-cell RNA sequencing allows you to precisely determine the different cell types and subtypes in your sample.
Compared to the average gene expression level obtained with bulk RNA sequencing, single-cell sequencing gives you an unprecedented high-resolution view of your samples, right down to their most fundamental building block: the single cell.
Where does single-cell RNA sequencing come from?
Single-cell RNA sequencing didn't just appear overnight. It's the result of many different scientific innovations and advances in recent years. Here's an overview of the innovations that got us to where we are today.
Amplification
The first challenge to overcome before single-cell genome or transcriptome sequencing was possible was that the tiny amount of RNA contained within a single cell was too low to measure.
And in 2009, researchers managed to amplify the RNA from a single cell sufficiently to sequence it for the first time.
Barcoding
The next innovation was adding cell-specific barcodes to the primers used in amplification. Cell-specific barcodes allow multiple cells to be pooled into a single sequencing library. This process of pooling cells is called multiplexing, which made high throughput possible for single-cell RNA sequencing.
Amplification with In-Vitro Transcription
Another important innovation was using In-Vitro Transcription, or IVT, as the first step in the amplification process. IVT amplification is linear, whereas PCR-based amplification is exponential.
Using linear amplification reduces the bias toward highly-expressed genes and increases the sensitivity of the technology.
Upscaling
With most of the technical hurdles overcome, the next challenge was to scale up the technology while keeping costs down.
Single Cell Discoveries uses lab automation, microfluidics, and highly standardized protocols to achieve this. It led to the introduction of standard technologies such as SORT-seq and 10x Genomics. And this opened the way to cost-effective single-cell sequencing of several hundred to tens of thousands of cells per sample.
All these innovations have led to a surge in published scientific research across many applications and research areas. In fact, the number of publications linked to single-cell sequencing has doubled on average each year for the past ten years.
Source: Pubmed, October 2022
What are the key concepts of single-cell RNA sequencing?
Before we take a closer look at how single-cell RNA sequencing works, we need to cover four key factors crucial to understanding single-cell sequencing projects.
The first two of these factors help determine the cost of your single-cell experiment and your experiment design. These factors are the number of cells per sample and the number of reads per cell.
Number of cells per sample
The number of cells per sample means the final number of cells that can be used in the data analysis stage.
Single-cell sequencing projects can be anywhere between a few hundred to 10,000 cells per sample. You set a target number of cells before you start your experiment, but it's not guaranteed that you'll meet that target.
Many things can influence the outcome, such as the quality of the input material, the platform used, and the cell type in question. You can take various precautions to ensure the target is more likely to be met, but the results often fluctuate.
We'll examine how many cells you need per sample for your analysis later in this guide.
Sequencing depth
The sequencing depth is defined as the number of raw sequencing reads per cell and is something you decide before you start your experiment. This means sequencing depth is closely related to the concept of the number of cells per sample we described above.
The number of reads usually varies between 30,000 and 150,000 per cell in a typical single-cell RNA sequencing project, so the sequencing depth and the number of cells per sample both significantly impact your experiment's costs.
We'll also look at how deep you should sequence your samples later in this guide.
Number of detected genes per cell
Another key factor in determining dataset quality or complexity is the number of detected genes per cell. This is expressed as how many genes are detected on average over all the cells in a sample.
Typical numbers vary based on the sample type. Inactivated immune cells might have about 1,200 genes per cell, whereas activated immune cells can express up to 4,000 genes per cell.
Single cell RNA sequencing workflow
There are several different technologies and platforms that can be used for single-cell sequencing, and each follows the same 5-step process. We go into this process in greater detail in our post 'How does single-cell RNA sequencing work?', but for the purposes of this guide, here's a brief overview.
Step 1: Generate a single-cell suspension
The sample is dissociated into single cells floating in suspension.
Step 2: Isolate the cells
The cells need to be isolated from each other and this is either done by sorting them with a Flow Cytometer (FACS) machine, or with microfluidics.
Step 3: Cell barcoding and amplification
The individual cells are barcoded so they can be identified and amplified so that the RNA can be sequenced.
Step 4: NGS library preparation and sequencing
All the material from all the cells is pooled into a single library, barcoded again (to mark the sample) and the library sent for sequencing.
Step 5: Data analysis
The raw sequencing data is mapped to the appropriate reference transcriptome and analyzed using specialized data analysis pipelines.
Read more: How does single-cell sequencing work? »
What are common applications of single-cell RNA sequencing?
Single-cell RNA sequencing can be used in almost every biological question that requires a detailed understanding of a cell population. This means that single-cell RNA sequencing has many different applications.
We describe this in greater detail in our post 'Single-cell sequencing: Common applications'.
This is what you can do:
- Identify cell types within a sample
- Identify new drug targets and measuring efficacy
- Reconstruct cell development pathways
- Immune profiling
- And more
In which research areas is single-cell sequencing used?
Single-cell sequencing is also used in many different research fields. You can find out more in our post 'Single-cell sequencing: Common research areas'. Here's a short summary:
Of course, single-cell sequencing is not limited to these applications and research areas. As we said earlier, the possibilities are endless!
What single-cell RNA sequencing technology should I use?
There are several different technologies that can be used in single-cell sequencing projects. But which should you choose?
The answer to this depends on your project. Different biological questions and hypotheses may require different approaches, and therefore a different technological solution.
We have a post that explains in-depth the most important technologies, their benefits, and how they compare to each other. You can read it here: 'Which single-cell RNA sequencing technology should I use?'
The technology/platform options are:
Read more: Which single-cell RNA sequencing technology should I use? »
Technology comparison
SORT-seq | VASA-seq | 10x Genomics | |
---|---|---|---|
Platform | 384-well plates | 384-well plates | Microfluidics |
FACS sorting | Required | Required | Optional |
Optimal cell number | 384 – 1,500 | 384 – 1,500 | 3,000 – 10,000 |
Coverage | 3’ | Full length | 3’ and 5’ |
Detected RNA species | mRNA | (immature) mRNA & non-coding RNA | mRNA |
Immune Repertoire Sequencing | No | No | Yes |
Suitable for all sample types | Yes | Yes | No |
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How much does single-cell sequencing cost?
Single-cell sequencing can be expensive, especially when compared to conventional bulk RNA sequencing methods. But there is a good reason why this technology is expensive, and you can mitigate these costs if you carefully consider the design of your experiment.
Here's a quick overview of the most important factors of the high price of this relatively new technology.
The costs of the reagents
Because all the biomolecular reactions happen at a single-cell level, a higher volume of reagent is needed for single-cell sequencing, which drives up the price. Generally speaking, reagent costs are 10-20 times higher than for bulk RNA sequencing experiments.
The costs of sequencing
Transcriptome analysis at single-cell level requires a high sequencing depth to obtain a statistically significant dataset. As with the reagents, a typical single-cell sequencing experiment also requires 10 to 20 times more sequencing reads per sample.
The technology
To enable scaling and standardization of the process, advanced devices are needed for single-cell sequencing. Furthermore, a lot of money has been invested in researching and developing the reagent kits, which are not very straightforward.
The set-up of your experiment
The eventual price of your experiment depends on three factors, which you control:
- the number of samples
- the number of cells per sample
- the required number of reads per cell
The math is pretty simple: more samples, cells, and reads results in a higher price for your project. Therefore, it is critical to carefully consider the set-up of your experiment in relation to the biological question you're trying to answer.
A well-designed experiment can be a real budget saver.
Read more: How much does single-cell sequencing cost? »
Things to consider before you start with single-cell sequencing
Ready to get started with single-cell sequencing?
- Your biological question: This is the most important consideration, as it dictates the set-up of your experiment. Once you know exactly what you are trying to find out, we will advise you on how best to set up the experiment. Before consulting us, don't forget to check the literature on single-cell sequencing in your field.
- Your sample type: Think about what cell-type you are interested in and how many cells you can collect. You need to know this from the start because your sample type can determine which technology you should choose. For example, a small number of cells or large cells are not compatible with 10x Genomics.
- Your budget: Single-cell sequencing is expensive, so before reaching out to us, make sure to have a clear idea on your budget. Is your budget limited? Schedule a call with one of our specialists today to see how we can help.
Read more: Things to consider before you start with single-cell sequencing »
Wrapping it up
So now you have an overview of single-cell RNA sequencing and how it can be used. If you're wondering whether to - or how to - apply single-cell sequencing in your field, we can help.
Book a free consultation today to discuss your ideas or download our pricing information below.
Or, read more about the experience of a client in our case studies.
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