How To Analyse qPCR Results With Multiple Reference Genes (2024)

A question that I often come across for those who are calculating relative gene expression values in qPCR is, how to go about using this method if there is more than one reference (housekeeping) gene?

There are a few ways to work with multiple reference genes in this instance. One way is to select the single best gene from the numerous ones tested to be used as the reference. This can be done by using a variety of software which can determine the best reference gene to use, such as geNorm (available in Biogazelle’s qbase+ program) or Normfinder (a free Excel add-on).

Assuming the multiple reference genes in question work very well and are not affected by the experimental conditions, it is possible to use them all to determine the relative gene expression levels. This approach was described by Vandesompele and others in 2002 and Hellemans and colleagues in 2007, both published in Genome Biology, which I thoroughly recommend reading.

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The equation

The equation for using multiple reference genes to calculate the relative gene expression is displayed below.

The first thing I will say is: don’t panic! It is actually not as confusing as it looks. It is actually very similar to the Pfaffl equation, the only difference here being the geometric averaging of all the relative quantities (RQ), i.e. the (EREF)∆Ct REF part, of the multiple reference genes used on the denominator (bottom) part of the equation.

The E in the equation refers to the base of exponential amplification. A value of 2, like in the delta-delta Ct method, indicates that after each PCR cycle, the amount of product will double. In other words, a value represents a 100% efficient reaction.

How to use the equation

I will start with an example of a qPCR experiment, where I have Ct values for control and treated samples. I have performed qPCR using 2 reference genes (REF 1, REF 2) and my gene of interest (GOI). Each group has 3 biological repeats (1, 2 and 3). This could be a theoretical example of a cell culture experiment which has been repeated three times. Each qPCR was run in duplicate (technical repeats) and an average Ct value calculated, which are presented in the Ct column. The example data is presented below.

1. Calculate primer efficiencies

Like the Pfaffl method, the first thing that is required is to determine the primer efficiencies for your GOI and REF genes, in order to calculate the base of exponential amplification value. How to calculate primer efficiencies has been described in detail previously, so please refer to this post before continuing further.

Once you have the primer efficiencies, these will be in the format of a percentage, for example, 98%. However, this percentage is not entered directly into the equation, rather it needs to be converted.

A converted primer efficiency value of 2 indicates a 100% efficiency. This is the case when using the delta-delta Ct method. In other words, for every PCR cycle, the amount of DNA will multiply by2. On the other hand, an efficiency of 90% would give a base of exponential amplification value of 1.90 and an efficiency of 110% would give a value of 2.10.

If you are still unsure, an easy way to convert the primer efficiency percentage is to divide the percentage by 100 and add 1.

For this example, I will pretend I have calculated the primer efficiency of my genes as follows:

  • GOI = 1.93 (93%)
  • REF 1 = 2.01 (101%)
  • REF 2 = 1.97 (97%)

2. Select a calibrator sample to determine delta Ct (∆Ct)

The next step is to decide which sample, or group of samples, to use as a calibrator when calculating the ∆Ctvalues for all the samples. As mentioned previously, this is the part which confuses a lot of people.

A common way of doing this is to just match the experimental samples and determine the relative gene expression ratios separately. This is all well and true for experiments that have matched pairs, such as the case in cell culture experiments. However, this is difficult when the two experimental groups vary in n numbers and do not have matched pairs.

Another way is to select a sample with the highest or lowest GOI Ct value, reflecting the sample with the lowest or highest relative gene expression value respectively. This way, all the results will be relative to this sample.

I personally average the Ct values of the Control group biological replicates to create a ‘Control average Ct’. By doing so would mean that the results are presented relative to the control average Ct values.

Whichever sample, or group of samples, you use as your calibrator is fine so long as this is consistent throughout the analyses and is reported in the results so it is clear. Remember, the results produced at the end are relative gene expression values.

With this in mind, we next need to average the Control group Ct values for each gene.

So, for REF 1 this will be the average of 17.18, 16.96 and 17.11, which works out as 17.08. Repeating this for the REF 2 and GOI will give the following results.

3. Calculate delta Ct(∆Ct) values

Next, we need to calculate ∆Ct for all the samples within the different genes. The equation for ∆Ct can be found below.

To do this, simply subtract the sample Ct values from the calibrator Ct (in this example this will be the ‘Control average Ct‘ value).

So, to calculate the∆Ct for the sample ‘Treated 1‘ for REF 2, you need to do 20.89 – 21.10, which equals -0.21. By repeating this for all the samples, for both genes, we get the results below.

4. Calculate relative quantity (RQ) values

The next step is to create RQ values for each sample, separately for each gene. The equation for calculating RQ is displayed below.

Where E in the equation refers to the base of exponential amplification (i.e. the efficiency of the reaction). Remember, these were calculated for each primer pair used in Step 1 above.

To show you one example, I will calculate the RQ for the Control 1 sample. For the REF 1 gene, I calculated thebase of exponential amplification to be 2.01 (i.e. 101% efficiency). So the RQ in this sample will be 2.01-0.10 which comes to 0.99. For the REF 2 gene, I calculated thebase of exponential amplification to be 1.97 (i.e. 97% efficiency). So the RQ in this sample will be 1.970.24 which comes to 1.18. And for the GOI, I calculated thebase of exponential amplification to be 1.93 (i.e. 93% efficiency). So the RQ in this sample will be 1.930.08 which comes to 1.05. I have extended the results to repeat this analysis for all of the samples.

5. Calculate the geometric mean of the reference genes RQ values

This next step is the part which takes into account multiple reference genes. Specifically, the geometric mean of the reference gene RQ values must be created for each sample used. To do this in Excel, use the ‘=GEOMEAN‘ function.

For example, for the ‘Control 1‘ sample, this will be the geometric mean of 0.94 and 1.18. In Excel, the formula will be ‘=GEOMEAN(0.94,1.18)‘. If more reference genes were used in the experiment, then these RQ values can also be added on here too. The geometric mean of the aforementioned calculation gives 1.05.

I have calculated the geometric means of the two reference genes in the example (‘REF 1‘ and ‘REF 2‘) for all the samples below.

6. Calculate relative gene expression values

Finally, we now have all of the components to be able to calculate relative gene expression values. To calculate the relative gene expression values, simply divide the RQ of the GOI by the geometric mean of the RQ values for the reference genes (i.e. that created in the previous step).

You will notice that this equation is the same one at the start of this article – just a simplified way of writing it.

Taking ‘Treated sample 1‘ as an example, the relative gene expression value will be 23.56 divided by 0.68, which gives 34.81.

How To Analyse qPCR Results With Multiple Reference Genes (2024)

FAQs

How to use multiple reference genes in qPCR? ›

Specifically, the geometric mean of the reference gene RQ values must be created for each sample used. To do this in Excel, use the '=GEOMEAN' function. For example, for the 'Control 1' sample, this will be the geometric mean of 0.94 and 1.18. In Excel, the formula will be '=GEOMEAN(0.94,1.18)'.

What is the best way to analyze qPCR data? ›

There are two main ways to analyze qPCR data: double delta Ct analysis and the relative standard curve method (Pfaffl method). Both methods make assumptions and have their limitations, so the method you should use for your analysis will depend on your experimental design.

How do you interpret qPCR CT values? ›

The PCR Ct (cycle threshold) value refers to the number of cycles needed to replicate enough DNA/RNA to be detected (crosses a threshold line). A Ct value of 20 means it took fewer cycles to produce enough DNA/RNA than a Ct of 30. The lower Ct value means there was more DNA/RNA in the sample to begin with.

How do you choose a reference gene for qPCR? ›

When performing a trial to select stable reference genes it is critical that the genes selected are from different biological pathways and that their expression is independently regulated. Ideally all reference gene candidates are tested on a selection of five test and five control samples.

How many housekeeping genes do you need for qPCR? ›

We recommend that you test at least two, but preferably three, normalizing or housekeeping genes to help to ensure the reliability of internal controls. The ideal normalizing gene to use will depend on the species and conditions of the sample you will be testing.

How to normalize RT-qPCR data? ›

It has been suggested that RT-qPCR data should be normalized to at least two reference genes which expression has been demonstrated to be stable in the conditions studied [3,11]. The most frequently used genes for normalization are glyceraldehyde-3-phosphate dehydrogenase (Gapdh) and beta-actin (ActinB).

How do you explain qPCR results? ›

The principle of the qPCR is based on the fact that at each PCR cycle, the number of PCR products doubles. If there is a difference of 2 cycles between two reactions (see figure), we can say that there is 4 times more copies in the pink reaction than in the orange reaction.

Which statistical test should I use for qPCR? ›

One possible method is the Shapiro–Wilk test (Shapiro and Wilk 1965). The assumptions of normality or not normality are difficult to demonstrate in many qPCR projects given the low number of biological replicates available. In the case where normality is uncertain, the Wilcoxon test can be used.

What is too high Ct value in qPCR? ›

Ideally, Ct values should be between 15 to 30. Anything above or below this range is not reliable and means that you need to adjust the template concentration.

What is a good CQ value? ›

Cq values of less than 30 are strong and indicative that there is abundant target nucleic acid in the sample. Values of up to 37 indicate moderate amounts of target nucleic acid. Anything higher is classified as weak and shows minimal amounts of target nucleic acid.

How do you analyze PCR results? ›

PCR products are most commonly analyzed by agarose gel electrophoresis. The results can be visualized by ethidium bromide or non-toxic dyes such as SYBR® green. The intensity of the band can be used to estimate the amount of product of given molecular weight relative to a ladder.

Why are reference genes important? ›

Normalisation of the data with these reference genes is essential for correcting results of different amounts of input RNA, uneven loading, reverse-transcription yield, efficiency of amplification and variation within experimental conditions 9, 13.

What are the best housekeeping genes for qPCR? ›

Commonly used housekeeping genes in Q-RT-PCR include beta actin (ACTB), glyceraldeyde-3-phosphate dehydrogenase (GAPDH), ribosome small subunit (18S) ribsosomal RNA (rRNA), Ubiquitin C (UBC), hypoxanthine guanine phosphoribosyl transferase (HPRT), succinate dehydrogenase complex, subunit A (SDHA) and Tyrosine 3- ...

Which RT is best for qPCR? ›

AMV RT is recommended for one-step and two-step RT-PCR and RT-qPCR, reverse transcription of RNAs <5kb and primer extension, particularly if the template RNA has strong secondary structure.

Why use two housekeeping genes? ›

It is recommended that multiple Housekeeping genes be utilized for each gene expression experiment, to account for any impact that an experimental condition may have on the expression of an individual Housekeeping gene.

What is the technique to make multiple copies of genes? ›

With the technique called polymerase chain reaction (PCR), scientists can make multiple copies of a specific genetic sequence within DNA. PCR is a powerful tool for researchers because it allows for other types of genetic analysis that require large quantities of DNA.

Can you multiplex qPCR? ›

You can, under carefully optimized conditions, perform multiplex qPCR to measure the expression of three or four genes simultaneously in a reaction. This can provide huge savings in cost, reagents and time, but the resulting experiments are more complex, and validation becomes more time-consuming.

Can genes be transcribed multiple times? ›

A gene can be transcribed many times, whenever the protein product that the gene encodes is required by the cell. Transcription is the first step in gene expression whereby a gene within the DNA is used to make a complementary mRNA)molecule.

References

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