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. 2018 Dec 8;98(5):1111–1118. doi: 10.1007/s00277-018-3570-8

International external quality assurance of JAK2 V617F quantification

Julia Asp 1,, Vibe Skov 2, Beatriz Bellosillo 3, Thomas Kristensen 4, Eric Lippert 5, Frank Dicker 6, Jiri Schwarz 7, Marzena Wojtaszewska 8, Lars Palmqvist 1, Susanna Akiki 9, Anni Aggerholm 10, Morten Tolstrup Andersen 11, François Girodon 12, Lasse Kjær 2, Elisabeth Oppliger Leibundgut 13, Alessandro Pancrazzi 14, Marta Vorland 15, Hajnalka Andrikovics 16, Robert Kralovics 17, Bruno Cassinat 18, Margarida Coucelo 19, Aleksandar Eftimov 20, Karl Haslam 21, Rajko Kusec 22, Dorota Link-Lenczowska 23, Laurence Lodé 24, Karolina Matiakowska 25, Dina Naguib 26, Filippo Navaglia 27, Guy Wayne Novotny 28, Melanie J Percy 29, Andrey Sudarikov 30, Sylvie Hermouet 31,32, Niels Pallisgaard 2
PMCID: PMC6469832  PMID: 30535576

Abstract

External quality assurance (EQA) programs are vital to ensure high quality and standardized results in molecular diagnostics. It is important that EQA for quantitative analysis takes into account the variation in methodology. Results cannot be expected to be more accurate than limits of the technology used, and it is essential to recognize factors causing substantial outlier results. The present study aimed to identify parameters of specific importance for JAK2 V617F quantification by quantitative PCR, using different starting materials, assays, and technical platforms. Sixteen samples were issued to participating laboratories in two EQA rounds. In the first round, 19 laboratories from 11 European countries analyzing JAK2 V617F as part of their routine diagnostics returned results from in-house assays. In the second round, 25 laboratories from 17 countries participated. Despite variations in starting material, assay set-up and instrumentation the laboratories were generally well aligned in the EQA program. However, EQA based on a single technology appears to be a valuable tool to achieve standardization of the quantification of JAK2 V617F allelic burden.

Keywords: JAK2 V617F, External quality assurance, Myeloproliferative neoplasms, Quantitative PCR

Introduction

The discovery of the c.1849G>T mutation leading to the p.Val617Phe (V617F) substitution in JAK2 [14] has been a landmark in molecular diagnosis of the myeloproliferative neoplasms (MPN) polycythemia vera (PV), essential thrombocythemia (ET), and primary myelofibrosis (PMF). Quantification of the mutation has shown that mutation burden also could reflect different subtypes of MPN. The majority of patients with PV or fibrotic PMF have been reported to have more than 50% JAK2 V617F while the opposite has been seen in ET patients [5, 6]. In addition, quantification of the allelic burden in JAK2 V617F-positive patients is increasingly used to monitor treatment response of new targeted therapies as well as in transplanted patients [79].

For molecular diagnosis, it has been recommended that the assay should be sensitive enough to detect a mutant burden around 1% [10]. The combination of a sensitive detection and reproducible quantification of JAK2 V617F challenges the methodology used in a routine setting. Conventional Sanger sequencing does not show the required sensitivity in cases with low mutation burden, and methodologies involving next generation sequencing are unnecessarily labor intensive and expensive for mutation detection of a single nucleotide substitution. Instead, the use of quantitative polymerase chain reaction (qPCR) has been shown to be a both sensitive and cost-effective method [11] and superior in sensitivity compared to qualitative methods [12]. As a step towards standardization of reliable molecular diagnostics, the European Leukemia Net (ELN) and MPN&MPNr-EuroNet have evaluated performance of different allele-specific (AS)-qPCR assays [8]. This work, involving 12 laboratories from seven countries recommended a JAK2 V617F qPCR assay which showed consistent performance across different qPCR platforms [13]. Even so, variation between laboratories and different instrumental setups can be substantial despite the use of the same experimental protocol. To ensure high quality and standardized quantitative results, external quality assurance (EQA) programs are vital. A program dedicated to JAK2 V617F detection by qPCR is advantageous since no additional bias on quantification would be introduced by comparison to a different methodology. MPN&MPNr-EuroNet has performed two rounds of EQA based on qPCR assays. In addition to providing an EQA to participating laboratories in the network, the aim was to identify parameters critical for the quantification of JAK2 V617F. Such factors would have a substantial impact also on an EQA result, and thus need to be identified in order to design a beneficial EQA program which would be useful in clinical routine.

Materials and methods

Participants

For the first quality assurance round (QA1), 19 laboratories from 11 countries across Europe analyzing JAK2 V617F by qPCR as part of their routine diagnostics returned results obtained with in-house assays. In the second QA (QA2), 25 laboratories from 17 countries participated.

Samples and references

Blood samples from JAK2 V617F-positive patients were collected after informed consent according to the guidelines of the Danish Regional Science Ethics Committee. In QA1, ten blood samples were collected, aliquoted, and distributed to participating laboratories by an overnight courier. DNA was extracted locally from whole blood according to each participant’s standard procedure. Six participants received extra blood and extracted DNA also from hemolyzed blood (n = 3) or granulocytes (n = 3) in addition to whole blood. In QA2, six unknown samples prepared by spiking JAK2 V617F-positive HEL cell line DNA into normal wild-type donor DNA was sent out. In both QA1 and QA2, a common reference for calibration corresponding to 75%, 23%, 3%, and 0.3% JAK2 V617F was created by spiking a 648 bp PCR fragment containing the c.1849G>T mutation into normal wild-type donor DNA and distributed with the samples. Droplet digital PCR (ddPCR, Bio-Rad, Hercules, CA, USA) was used to obtain a reference value for each sample in the trials by taking the mean of four replicates repeated three times. In QA2, values obtained by ddPCR in a separate laboratory were added to the mean as well.

Quantification of JAK2 V617F by qPCR

Copy numbers for JAK2 V617F and JAK2 WT and the allelic ratios of JAK2 V617F expressed as % [JAK2 V617F copy number/(JAK2 WT copy number + JAK2 V617F copy number)] were determined by the participating laboratories according to the assay used in the clinical routine. All results were sent to one laboratory for further analysis. To determine general variation of qPCR within an assay, data was collected from control samples and repeatedly analyzed according to the Larsen protocol [13] during 12 months in one laboratory. The analysis was performed by different persons on two PCR instruments, and batches for reagents were changed during the 12-month period. Percentage JAK2 V617F was calculated for each sample and the coefficient of variation (CV) for the assay was determined.

Results

Similar EQA results with different starting materials, qPCR assays, and qPCR instruments

To identify the parameters of specific importance for causing outliers in a JAK2 V617F EQA where a quantitative value of mutation burden is determined by qPCR, different starting materials, different qPCR assays, and different technical platforms were included. In total, 16 samples with unknown mutation burden were issued to participating laboratories. In QA1, samples were divided into four groups based on the reference levels of JAK2 V617F as determined by ddPCR: < 2% (n = 4), 2–10% (n = 3), 10–20% (n = 2), and > 30% (n = 2). Results were analyzed in detail for one sample in each group.

To test starting material for the analysis, six different laboratories extracted DNA from purified granulocytes or hemolyzed blood in addition to whole blood. JAK2 V617F was analyzed from both types of starting materials in parallel using routine protocol(s). Although differences could be noted between starting materials when comparisons were made within the same laboratory, the difference was in the same range as between the laboratories and different assays (Fig. 1).

Fig. 1.

Fig. 1

Comparison of different starting materials for quantitative analysis of JAK2 V617F on selected samples. JAK2 V617F detection was performed in parallel using different starting materials in samples with four different levels of JAK2 V617F mutation. One of the six participating laboratories analyzed the samples with two different assays yielding a total of seven sets of data. Assigned values of JAK2 V617F are reference values as determined by ddPCR. These are indicated in the graphs by headings and dotted lines

To study the influence of assay protocols on EQA results, 19 laboratories from 11 countries analyzing JAK2 V617F by qPCR as part of their routine diagnostics returned results from their assay protocol used in clinical diagnostics in QA1. One of the laboratories returned results from two different assays yielding 20 sets of data in total. Various qPCR assay protocols were used: Larsen [13], n = 6; Lippert [5], n = 5; Ipsogen Mutaquant kit (Qiagen, Marseille, France), n = 4; and other protocols (in-house assays), n = 5. Although reported copy numbers in samples varied between laboratories (data not shown), the % JAK2 V617F was rather consistent across different assays (Table 1). In QA2, 25 laboratories from 17 countries returned results. Two of the laboratories returned results from two different assays yielding 27 sets of data. In QA2, the majority of participating laboratories used the Larsen assay (n = 18) or a modification of this assay (n = 4). Five laboratories reported results obtained by another assay. The six samples issued in QA2 were divided into the same groups as for QA1 (< 2% (n = 2), 2–10% (n = 1), 10–20% (n = 2), and > 30% (n = 1)) and one sample from each group was analyzed in detail. Overall, variations were similar in QA1 and in QA2 (Table 1). Although there was a relative consistency in quantification of JAK2 V617F allelic burdens above 2%, a higher variation was noted in samples with low mutation burden (< 2%).

Table 1.

% JAK2 V617F obtained using different qPCR assays

EQA1 Larsen (n = 6) Lippert (n = 5) Ipsogen (n = 4) Other* (n = 5)
ddPCR % Mean % CV% Mean % CV% Mean % CV% Mean % CV%
30 31 24 31 25 34 10 29 24
16 18 24 17 31 22 19 15 28
7.3 8.6 31 9.9 36 10 21 7.1 41
1.9 2.1 34 1.7 44 2.5 39 0.8 89
EQA2 Larsen incl. modified (n = 22) Other* (n = 5)
ddPCR % Mean % CV% Mean % CV%
66 61 14 65 17
22 19 32 22 46
4.6 4.0 44 4.5 51
1.0 0.7 34 0.8 37

*The “other” group does not include the same laboratories and protocols in EQA1 and EQA2

Next, we studied whether different qPCR platforms could introduce substantial variation. The majority of QA1 participants used instruments from Applied Biosystems (Foster City, CA, USA). Eleven sets of data were analyzed on these instruments (ABI7300/7500/7500FAST/7900HT). The remaining laboratories used Lightcycler LC480 (Roche Applied Science, Penzberg, Germany, n = 4), Rotorgene (3000A/Q; Corbett Life Science, Sydney, Australia; Qiagen, n = 3), or Stratagene (MX3000/MX3500; Agilent Technologies, Santa Clara, CA, USA, n = 2) for analysis. For all but Applied Biosystems instruments, groups were very small, which resulted in single outliers having a substantial impact on the results. In addition, different versions of instruments from the same manufacturer were used in all groups. Nonetheless, no major difference depending on qPCR instrument could be seen (Fig. 2).

Fig. 2.

Fig. 2

JAK2 V617F results obtained with different qPCR instruments on selected samples. Different versions of instruments were included in each group according to text. ABI n = 11, LC n = 4, Rotorgene n = 3, and Stratagene n = 2. Median values in each group are indicated by a black line in boxes. Assigned values of JAK2 V617F are reference values as determined by ddPCR. These are indicated in the graphs by headings

For comparison, CV for the Larsen assay over a stretch of one year was determined in one participating laboratory. During that period of time, a control sample of 4.5% JAK2 V617F was analyzed 97 times and a sample of 13% was analyzed 64 times on two instruments (Rotorgene Q, Fig. 3). CV for calculated % JAK2 V617F was 26% in both cases.

Fig. 3.

Fig. 3

Variation in control samples. Repeated analysis of control samples were performed during a 1-year period. The upper panel shows results from a sample with 4.5% JAK2 V617F; the lower panel shows results from a sample with 13% JAK2 V617F. SD was 1.2 and 3.5 respectively

To evaluate whether the differences between assays and qPCR instruments were substantial enough to affect the result of an EQA, z-scores were determined for selected samples in QA1. A z-score between 2 and − 2 was considered as satisfactory performance, a z-score between 2 and 3 or between − 2 and − 3 was considered as a warning, and a z-score above 3 or below − 3 was considered as critical. Results showed that three participants obtained a warning, while the remaining participants got a satisfactory performance. None was scored as “critical” (Table 2).

Table 2.

Z-scores for selected JAK2 V617F samples

z-score*
ddPCR % JAK2 V617F < − 3.0 − 3.0–− 2.0 − 2.0–− 1.0 − 1.0–0 0–1.0 1.0–2.0 2.0–3.0 > 3.0
30 1 2 7 7 3
16 3 8 5 4
7.3 2 8 7 2 1
1.9 4 6 8 1 1

*Frequency of participants with each z-score indicated in table

Discussion

Bias altering qPCR results may occur at several steps of JAK2 V617F assays, even when laboratories use the same methodology. Starting material for the analysis as well as technical platform, assay design and batch variations can influence the results. Even among laboratories using the same qPCR protocol for quantitative assays, considerable variation has been reported [14]. Standardized results are vital not only to aid in diagnosis of patients but also in clinical, multicenter studies. One way to test how well individual laboratories align to predicted results is through participating in EQA. Moreover, EQA are central tools for the accreditation and assessment of laboratory performance. To design a useful EQA for quantitative analysis, it is important to take into account the variation of the methodology in focus. If expectations of consistency in results are set too high, beyond the limits of the technology used, there is a risk that a well-performing laboratory will get poor or inadequate results just because of natural variation in the method, or because of the influence of a particular parameter which has not been identified as important for outcome. Therefore, it is essential to recognize factors which would cause substantial outliers in the tests, as well as which variation could be expected from different qPCR technical platforms.

A previous study has shown that the results obtained for the detection of the JAK2 mutation were comparable in whole blood and in purified granulocytes, and that no false negative was reported in whole blood if the qPCR assay used was able to detect < 1% JAK2 V617F [15]. However, in this study, the allelic ratio was reported to be on average 15% lower in whole blood than in purified granulocytes; the low-average JAK2 V617F values was due to a minority of the whole blood samples. The choice of the starting material could thus be of importance in individual cases depending on the question asked. In the present study, the starting material used for the analysis did not affect the performance in EQA for the majority of laboratories.

In both QA1 and QA2, samples with low mutation burden (< 2% JAK2 V617F) were included, and a greater variation was seen for these samples. This reflects the sensitivity of the assay and the qPCR setup in each laboratory. In addition, when dealing with low JAK2 V617F copy numbers stochastic variation will add to the overall variation. However, for low mutation burden, specificity of the assay is an equally important issue. The background level where cross-reaction with the wild-type allele could occur must be clearly defined by each laboratory to avoid false positive results [10].

To be able to compare results, over time as well as between laboratories, there is a need to standardize the results with respect to the quantitative level of mutation burden. In chronic myeloid leukemia, where the level of expression of the fusion gene BCR-ABL1 is correlated to prognosis, a conversion factor has been established to correct for differences across laboratories. This factor is used to align results to an international scale which is anchored to clinical results [16, 17]. However, the original conversion factor was based on the sample exchange with a reference laboratory and this procedure is both time-consuming and expensive and a risk for inborn errors due to bias cannot be ruled out. To overcome this, primary references intended for the calibration of a secondary reference material have been established [18]. In addition, a certified reference plasmid for the calibration of BCR-ABL1 quantification has been manufactured [19]. As reported in a previous international study [11], a common reference material remains a useful tool for laboratories also for JAK2 V617F, as it allows decreasing or suppressing differences in copy numbers in certain laboratories. In addition, it also allows adjustment for batch variations, e.g., due to differences in quality of primer oligonucleotides. A first WHO reference panel for JAK2 V617F has recently been established and is now available [20]. This holds promise to further improve assay standardization. With increasing clinical demands for molecular monitoring, both EQA programs and standardized JAK2 V617F reference material are needed to identify and maintain validated laboratories.

In conclusion, variation in method due to the starting material, assay set-up, or qPCR equipment did not result in significant outliers in the EQA programs included in this study. However, EQA based on a single technology remains a valuable tool to achieve standardization of JAK2 V617F quantification.

Acknowledgements

We thank Pia Nielsen, Lone Hartmann Hansen and Tina Brandt Christensen for technical assistance.

Funding information

RK acknowledges the support received by the Austrian Science Fund (FWF): F4702-B20 and P29018-B30.

Conflict of interest

FD is employed by the MLL Munich Leukemia Laboratory. SA is a member of Qiagen Scientific Advisory Board—Haemato Oncology.

Informed consent

Informed consent was obtained from all patients for being included in the study.

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