Here, we present a protocol to accurately quantify multiple genetic alterations of a target region in a single reaction using drop-off ddPCR and a unique pair of hydrolysis probes.
Droplet digital polymerase chain reaction (ddPCR) is a highly sensitive quantitative polymerase chain reaction (PCR) method based on sample fractionation into thousands of nano-sized water-in-oil individual reactions. Recently, ddPCR has become one of the most accurate and sensitive tools for circulating tumor DNA (ctDNA) detection. One of the major limitations of the standard ddPCR technique is the restricted number of mutations that can be screened per reaction, as specific hydrolysis probes recognizing each possible allelic version are required. An alternative methodology, the drop-off ddPCR, increases throughput, since it requires only a single pair of probes to detect and quantify potentially all genetic alterations in the targeted region. Drop-off ddPCR displays comparable sensitivity to conventional ddPCR assays with the advantage of detecting a greater number of mutations in a single reaction. It is cost-effective, conserves precious sample material, and can also be used as a discovery tool when mutations are not known a priori.
Thousands of somatic mutations related to cancer development have been reported1. Among these, a few are predictive markers of the efficacy of targeted therapy 2,3 and genetic screening of these mutations is now routine clinical practice. Droplet digital PCR (ddPCR) technology can be used to monitor for the presence or the absence of mutations with high detection accuracy and is highly compatible with non-invasive liquid biopsies4,5. However, current ddPCR assays are primarily designed to detect mutations known a priori. This severely limits the use of ddPCR as a discovery tool when the mutation is unknown. Indeed, in the conventional ddPCR design, a hydrolysis probe recognizing the wild-type allele (WT Probe) competes with a specific probe recognizing the mutant allele (MUT Probe) (Figure 1A). The probe with higher affinity hybridizes to the template and releases its fluorophore, indicating the nature of the corresponding allele. The fluorescence data obtained for each droplet can be visualized in a scatter plot representing the fluorescence emitted by the WT and MUT probes in different dimensions. A schematic representation of a typical result for a conventional ddPCR assay is presented in Figure 1A. In this example, the blue cloud corresponds to the droplets containing WT alleles identified by the WT probe, whereas the red cloud corresponds to droplets in which the MUT allele has been amplified and identified by the MUT probe. Depending on the quantity of DNA loaded in the reaction, double positive droplets containing both WT and MUT amplicons can appear (green cloud). The light grey cloud corresponds to empty droplets.
Since most platforms allow for the detection of a limited number of fluorophores (usually 2, but up to 5), throughput of conventional ddPCR is limited. Therefore, targeting regions with multiple adjacent mutations requires design of technically challenging multiplex ddPCR assays or the use of multiple reactions targeting each mutation in parallel. The drop-off ddPCR strategy, overcomes this limitation as it can potentially detect any genetic alteration within a target region using a unique pair of WT hydrolysis probes. The first probe (Probe 1) covers a non-variable sequence, adjacent to the target region and the second probe (Probe 2) is complementary to the WT sequence of the target region where mutations are expected (Figure 1B). While the first probe quantifies the total amount of amplifiable molecules in the reaction, the second probe discriminates WT and MUT alleles by sub-optimal hybridization to mutant sequences. Probe 2 can identify multiple types of mutations in the target region (single or multiple nucleotide substitutions, deletion, etc.)6. As in conventional ddPCR, the light grey cloud corresponds to droplets containing no DNA molecules. It is important to recall that in this type of assay, optimal separation of WT and MUT clouds is dependent on the quantity of DNA loaded in the reaction, since droplets containing both WT and MUT target alleles cannot be distinguished from droplets containing only the WT form. Therefore, this assay requires that most droplets contain no more than one copy of the targeted gene.
The protocol presented here follows the ethics guidelines of the Institut Curie. All human samples were obtained from patients enrolled, after informed consent, in studies approved by the Institutional Review Board at Institut Curie.
1. Blood Collection, Plasma Storage and Cell-free DNA Extraction
NOTE: DNA extracted from any type of “tissue” can be used (e.g., fresh or formaldehyde-fixed paraffin embedded (FFPE) tissues, cells in culture or blood samples). Here, we provide detailed instructions for blood collection, plasma isolation and storage, and cell-free DNA (cfDNA) extraction.
2. ddPCR Probe and Primer Design (Figure 2A)
NOTE: The amplification of the targeted molecules in the drop-off ddPCR assay follows similar principles of qPCR. Each primer and probe is designed with the conventional dedicated software Primer37 (http://primer3.ut.ee/).
3. Optimization of the ddPCR Reaction (Figure 2A)
NOTE: Wild-type and mutant DNA controls used in this step can be obtained from cell lines, tumor samples or commercially available DNA reference standards, for example.
4. ddPCR Protocol (Figure 2B)
NOTE: Similar to conventional ddPCR, the drop-off ddPCR protocol consists of 4 steps: (i) PCR mix preparation, (ii) droplet generation, (iii) PCR amplification and (iv) data acquisition.
5. Data analysis (Figure 2C and Figure 3)
NOTE: PCR-positive and PCR-negative droplets are counted to provide an absolute quantification of the MUT and the WT alleles at the targeted region. The assigned droplets are used to compute the MAF in each well. Droplet quantification and analysis of drop-off assays can be performed using the ddPCR R package (https://github.com/daattali/ddpcr) developed by Attali and colleagues9,10. This R package automatically classifies droplets as empty, part of the “rain” (due to inefficient amplification), or as filled with a real positive signal (Figure 3). The following section presenting the different steps of the analysis is a brief version of the descriptive vignette of the algorithm written by its authors (see https://github.com/daattali/ddpcr/blob/master/vignettes/ algorithm.Rmd for more details). Data are exported to comma-separated values files (FileName_Amplitude.csv) and uploaded in the ddPCR package to be analyzed directly in R or through the dedicated web interface.
In a proof-of-concept study, KRAS exon 2 mutations (codons 12 and 13) and EGFR exon 19 deletions were investigated in FFPE tissues and plasma samples from cancer patients using the drop-off ddPCR strategy6.
The KRAS drop-off probe interrogated a 16 bp region encompassing multiple mutations in exon 2 of the KRAS gene, which harbor more than 95% of the known KRAS mutations in human cancers11. The reference probe was 20 bp in length and located 3 bp downstream. To optimize our assay, we used DNA extracted from cell lines containing 2 of the most frequently mutated KRAS amino acids: G12V (c.35GT, SW480) and G13D (c.38GA, HCT 116).
The EGFR drop-off assay was designed to scan for all activating deletions of EGFR exon 19. The assay used a 25 bp-long drop-off probe placed over the recurrent deleted region together with a reference probe of 21 bp, located 31 bp downstream in the same amplicon. To optimize our assay, we used a cfDNA reference standard set including the EGFR exon 19 deletion c.2235_2249del, p.Glu746_Ala750del.
Sensitivity, specificity and location of droplet clouds have been defined with control MUT samples and WT PBMC genomic DNA as shown in Figure 4A for KRAS. We further demonstrated that this type of assay works on multiple types of genetic alterations such as single substitution, multiple substitutions or deletions (Figure 4B) as well as on various sample types6.
Figure 1: The drop-off ddPCR requires a unique pair of hydrolysis oligo-probes to scan all mutations of a hotspot region. Assay designs with a schematic result displayed as two-dimensional scatter plots showing droplet fluorescence intensity. (A) Conventional ddPCR with mutant (MUT probe) and wild-type (WT probe) probes targeting the exact same region. (B) The drop-off ddPCR contains a reference probe (Probe 1) that anneals to a non-variable region and a drop-off probe (Probe 2) targeting the mutated region but complementary to the WT sequence, within the same amplicon. Please click here to view a larger version of this figure.
Figure 2: Drop-off ddPCR workflow for plasma DNA mutation profiling. The full workflow is composed of 5 major steps: (A) (1) design of primers and probes, (2) optimization of the assay, (B) (3) plasma isolation and cfDNA extraction, (4) ddPCR run and (C) (5) data analysis. Please click here to view a larger version of this figure.
Figure 3: Drop-off ddPCR analysis. Drop-off ddPCR analysis workflow highlighting important parameters that need to be fine-tuned. This ensures efficient automated identification of outliers, empty, rain or positive droplets; assigning MUT or WT droplets and computing the MAF for each well. Please click here to view a larger version of this figure.
Figure 4: Representative results – KRAS and EGFR drop-off ddPCR assays. (A) Example of results obtained during optimization steps of the drop-off ddPCR assay. Detection of mutant and/or wild-type DNA in a reaction containing 100% MUT DNA, 5% MUT DNA and 100% WT DNA. (B) Examples of plasma samples analyzed with the KRAS and the EGFR drop-off ddPCR assays showing the detection of single nucleotide and multiple substitutions in exon 2 of KRAS and a deletion in EGFR exon 19. This figure has been adapted from Decraene et al.6. Please click here to view a larger version of this figure.
To design an efficient drop-off ddPCR assay, optimization is crucial, and the protocol must be followed carefully. Each combination of primers and probes has a unique PCR reaction efficiency. Thus, an individual assay has to be carefully validated on control samples before being used on valuable test samples. Optimization and validation are important to certify peak signal detection and assess specificity and sensitivity. As described in the protocol, all mutations located in a target region covered by the "probe 2" can potentially be interrogated. Nonetheless, validation is recommended for mutations located at either 5' or 3' ends of "probe 2", since these may affect the efficiency of the drop-off assay.
The method presented here can be performed with DNA extracted from any type of "tissue", including FFPE tissues, cells in culture or blood samples. However, the quality of the nucleic acid extraction can dramatically impact ddPCR results. PCR inhibitors such as heparin, proteins, heme, phenol, proteases, collagen, melanin, detergents or salts have to be eliminated as much as possible during the sampling and the purification steps. Although DNA samples can be diluted to reduce the impact of PCR inhibitors on the ddPCR, dilution decreases sensitivity because fewer copies of the target will be tested per reaction. This should be taken into consideration when a certain level of sensitivity is to be reached, as a minimum of copies must be tested.
Drop-off ddPCR can be applied to many types of molecular alterations (single and multiple nucleotide substitutions, deletions, etc.). Besides using only two probes to detect all alterations (thereby increasing practicality and cost-effectiveness of the assay), drop-off ddPCR generates less background noise6 and shows increased sensitivity compared to multiplex assays. Additionally, since it is performed in a single reaction, minimal amounts of patient samples are consumed. This assay is particularly appealing in the context of liquid biopsy because the amount of ctDNA is often low in these samples.
Indeed, the method presented here is applicable for mutation screening in liquid-biopsy material and has already proven its utility for clinical practice (ESR1 mutation screening in the PADA-1 clinical trial – NCT03079011). However, it is crucial to use amplicons as short as possible in this setting because of the fragmentation of cfDNA8.
Downstream characterization still needs to be performed separately to identify the exact mutation carried by mutant alleles. However, because therapeutic decisions are primarily based on the mutational status of hotspot regions of targetable oncogenes (WT vs mutant), the ability of drop-off ddPCR to immediately identify mutations makes it a powerful diagnostic tool. Moreover, the exact mutation does not need to be known a priori to design an assay in contradistinction to current commercial solutions. In addition, drop-off ddPCRs can be combined with specific conventional ddPCR assays to further increase the number of mutations screened for (data not shown). Finally, drop-off ddPCR can be applied to other fields of research. In particular, it may prove to be a useful tool for screening positive colonies in genome editing experiments.
The authors have nothing to disclose.
This work was supported by Institut Curie SiRIC (grant INCa- DGOS-4654). The authors wish also to thank Caroline Hego for her contribution to the video.
K2EDTA tube (color code : lavender) | BD | 367863 | EDTA tubes are used to obtain a whole blood or EDTA plasma sample |
QIAamp Circulating Nucleic Acid Kit (manual protocol) | Qiagen | 55114 | For isolation of free-circulating DNA from human plasma |
QIAsymphony DSP Circulating DNA Kit (automated protocol) | Qiagen | 937556 | For isolation of free-circulating DNA from human plasma |
QIAsymphony SP system | Qiagen | 9001297 | fully integrated and automated system for cfDNA, DNA or RNA purification |
QIAvac 24 Plus | Qiagen | 19413 | For purification of up to 24 cfDNAs simultaneously |
Qubit fluorometer | Invitrogen | Q33226 | The Qubit fluorometer is a benchtop fluorometer for the quantitation of DNA |
QX100 or QX200 reader | Bio-Rad | 186-3003 or186-4003, respectively | The reader measures fluorescence intensity of each droplet and detects the size and shape as droplets pass the detector |
QX100 or QX200 droplet generator | Bio-Rad | 186-3002 or 186-4002, respectively | Instrument used for droplet generation |
C1000 thermal cycler | Bio-Rad | 1851196 | Modular thermal cycler platform, includes C1000 Touch thermal cycler chassis, 96-well fast reaction module |
Plate sealer | Bio-Rad | 181-4000 | PX1™ PCR plate sealer |
DG8 cartridge holder | Bio-Rad | 186-3051 | Positions and holds the DG8 cartridge in the instrument for droplet generation |
Droplet generator cartridges and gaskets | Bio-Rad | 186-4007 | Microfluidic DG8 cartridge used to mix sample and oil to generate droplets; DG8 gaskets seal the cartridge to prevent evaporation and apply the pressure required for droplet formation |
PCR supermix | Bio-Rad | 186-3010 | ddPCR supermix for probes (no dUTP) |
96-well PCR plates | Eppendorf | 951020362 | 96-well semi-skirted plates |
Foil seal | Bio-Rad | 181-4040 | Pierceable foil heat seal |
ddPCR Droplet Reader Oil | Bio-Rad | 186-3004 | oil used in the read |
Droplet Generation Oil for Probes | Bio-Rad | 186-3005 | oil for droplet generation |
DNA loBind Tube 1.5 mL | Eppendorf | 0030 108.051 | Eppendorf LoBind Tubes maximize sample recovery by significantly reducing sample-to-surface binding |
Multiplex I cfDNA Reference Standard Set | HORIZON | HD780 | The Multiplex I cfDNA Reference Standards are highly-characterized, biologically-relevant reference materials used to assess the performance of cfDNA assays that detect somatic mutations |
QUBIT DSDNA HS ASSAY KIT, 500 | Life Technologies | Q32854 | The HS assay is highly selective for double-stranded DNA (dsDNA) over RNA and is designed to be accurate for initial sample concentrations from 10 pg/µL to 100 ng/µL |
Qubit Assay Tubes | Life Technologies | Q32856 | Qubit assay tubes are 500 µL thin-walled polypropylene tubes for use with the Qubit Fluorometer |