Literature DB >> 34393517

Bead-Based Isolation of Circulating Tumor DNA from Pancreatic Cancer Patients Enables High Fidelity Next Generation Sequencing.

Sukirthini Balendran-Braun1, Markus Kieler2, Sandra Liebmann-Reindl3, Matthias Unseld2, Daniela Bianconi2, Gerald W Prager2, Berthold Streubel1,3.   

Abstract

INTRODUCTION: Pancreatic ductal adenocarcinoma (PDAC) is one of the most aggressive cancers and poses a challenge to the treating clinician. With the emergence of genomic profiling technologies, circulating tumor DNA (ctDNA) is increasingly recognized as a versatile biomarker for risk stratification and disease monitoring. We aimed to compare two commercially available NGS panels in a cohort of patients with advanced PDAC undergoing palliative chemotherapy.
METHODS: CtDNA was isolated with a magnetic bead-based protocol from two consecutive blood samples before and during chemotherapy in 21 patients with PDAC. Mutations were assessed by using a panel covering 15 (GP15) or 50 (GP50) cancer-associated genes. Results were compared to tumor tissue (GP15), if available.
RESULTS: Isolation of ctDNA resulted in a high mean value of 1.9 ng/µL (total volume of ~40 µL). Although the same number of patients were positive for at least one mutation (76%), the most commonly mutated oncogene in PDAC, KRAS, was detectable in an additional 25% of all patients with the GP15 panel due to a higher coverage. The genomic concordance rate between tissue DNA and ctDNA analyses was 65.22%. DISCUSSION: Our study demonstrates the feasibility of an NGS-based approach for ctDNA analysis and underlines the importance of using a disease-specific panel with a sufficiently high coverage.
© 2021 Balendran-Braun et al.

Entities:  

Keywords:  KRAS; NGS; PDAC; TP53; circulating tumor DNA; ctDNA; liquid biopsy; next generation sequencing; pancreatic ductal adenocarcinoma

Year:  2021        PMID: 34393517      PMCID: PMC8357621          DOI: 10.2147/CMAR.S308029

Source DB:  PubMed          Journal:  Cancer Manag Res        ISSN: 1179-1322            Impact factor:   3.989


Introduction

Pancreatic ductal adenocarcinoma (PDAC) ranks among the top leading causes of cancer deaths in the Western world and, in contrast to other tumor entities of the gastrointestinal tract like colorectal cancer, its incidence is rising.1,2 The dismal prognosis of this cancer type is caused by late diagnosis mostly in advanced stages with no chance for curative resection, a very high relapse rate and resistance to most of the tested therapies and targeted drugs.3–5 Current cancer statistics show a five year survival rate of only 5-10 % with no meaningful improvements during the last 20 years.6 Integrated analysis of the genomic landscape has identified four commonly mutated genes, namely KRAS, TP53, SMAD4, and CDKN2A.7–9 Given the aforementioned late detection rate, lack of reliable biomarkers and aggressive biology of PDAC, there is a strong need for finding new biomarkers to guide decision-making in the clinical management of patients affected by this type of cancer. One non-invasive and promising tool for early detection, predicting tumor recurrence and monitoring treatment responses as well as resistance is the analysis of circulating tumor DNA (ctDNA). CtDNA is a relatively small and highly variable fraction of circulating cell-free DNA (cfDNA), which is primarily composed of germline DNA that originates from normal cells.10,11 Assessment of ctDNA derived from the primary tumor and metastatic sites, which can be isolated from the peripheral blood provides a real-time picture of the tumor burden and treatment escape mechanism.12,13 Several studies have shown that ctDNA can be used to analyze somatic sequence alterations in various cancers through Next-Generation Sequencing (NGS).14–19 In the case of PDAC, a majority of studies report a very high overlap (>50%) of detected mutations between bulk tumor and ctDNA.20–26 However, the detection rate for the most frequently mutated gene KRAS largely varies in recently published reports ranging from 21.1% to almost 100%.20–36 It is clear that patient selection and related factors such as disease stage as well as the methods, which were used to isolate and analyze the ctDNA are crucial factors for the practical applicability of liquid biopsy in this disease. To date, liquid biopsy for PDAC is not routinely used in the clinic but potential applications range from using it as a prognostic biomarker for survival to monitoring treatment responses and disease recurrence as well as identifying molecular targets for personalized therapy.37 Therefore our aim was to assess the clinical applicability of two commercially available NGS gene panels to detect the most frequent mutations in ctDNA from two consecutive blood samples in patients with non-resectable locally advanced or metastatic PDAC who underwent systemic treatment.

Experimental Section

Patients

This is a single-center, prospective, observational study including patients with histologically proven non-resectable PDAC, which was either locally advanced or metastasized and who underwent a systemic treatment at the Medical University of Vienna between 05/2016 and 05/2018. The electronic medical history was queried for patient demographics, performance status, date of diagnosis, date of advanced disease, diagnosis and carbohydrate antigen 19–9 (CA19–9) level at baseline, treatment details and survival data. ECOG (Eastern Cooperative Oncology Group) performance status was derived, if not stated explicitly, from the medical history including comorbidities and overall assessment of the treating physician. Recurrent PDAC after resection of curative intent was stated as stage IV disease. The here presented data analysis received prior approval by the ethical committee of the Medical University of Vienna (EK 274/2011) and was performed according to Helsinki criteria of good scientific practice. Written consent of the study participants was obtained after they were informed about the study purpose and prior to study commencement.

Isolation and Quantification of Cell-Free DNA from Blood Samples

Peripheral blood from patients was collected in cell-free DNA collection tubes (Roche) at day one of the first administration of the systemic chemotherapy regimen as well as 4–6 weeks after the first blood sample. Blood samples were proceeded within 12 hours of collection via a 2-step centrifugation protocol. First, plasma was separated from the other blood components by centrifugation at 2000 x g for 20 minutes. After transferring the upper plasma layer to a new conical tube, it was respun at 3200 x g for 30 minutes to remove cell debris. Subsequently the resulting plasma supernatant was stored at −20 °C in 10 mL cryotubes (VWR) until DNA isolation. Circulating DNA isolation from 5–10 mL plasma was performed on the Chemagic 360 Instrument (Perkin Elmer) with the isolation kit CMG-1111 (chemagic cfDNA 10k Kit special H12) according to manufacturer’s instruction. Cell-free DNA was eluted in ~40 µL elution buffer. DNA quantification was performed with Qubit® dsDNA HS Assay Kit (Invitrogen) according to the instructions provided by the manufacturer and purity was determined by Agilent 2200 TapeStation System. Cell-free DNA was stored at −20 °C until further analysis.

Isolation and Quantification of Genomic DNA

Genomic DNA was isolated from formalin fixed, paraffin embedded (FFPE) tissue sections using GeneRead DNA FFPE Kit (Qiagen) according to the user manual. DNA quantification was performed with Qubit® dsDNA HS Assay Kit (Invitrogen) according to the instructions provided by the manufacturer and purity was determined by Agilent 2200 TapeStation System. Genomic DNA was stored at −20 °C until further analysis.

Analyses of Cell-Free DNA and Sequencing Panels

TruSight Tumor 15 (GP15)

Library preparation was conducted using the Illumina TruSight Tumor 15 covering 15 genes, which are frequently mutated in solid tumors. Subsequent sequencing of pooled libraries was performed in several runs on the MiniSeq Illumina platform using MiniSeq High Output Reagent Kit (300-cycles). Data analysis was conducted using on-instrument Local Run Manager (LRM) Software with TruSight Tumor 15 analysis module. Passed-filter reads were aligned to human reference genome UCSC hg19 using banded Smith Waterman algorithm. Variants were called using Somatic Variant Caller developed by Illumina. All vcf-datasets were annotated using the Illumina VariantStudio 3.0 Software. Across all samples, several hotspot codons were manually evaluated using the Integrative Genomics Viewer (IGV) for potential low-abundance variants (0.1> VAF <2.0%). Annotated plasma variants had to have allele frequencies above a background threshold of the mean of our control samples (three different non-PDAC cfDNA samples).

AmpliSeqTM Cancer HotSpot Panel for Illumina (GP50)

Library preparation was conducted using AmpliSeq™ Library PLUS with AmpliSeq™ Cancer HotSpot Panel v2 for Illumina®. This panel is designed to amplify 207 amplicons covering hotspot regions of 50 genes with known association to cancer. Final libraries were sequenced together using MiniSeq High Output Reagent Kit (300-cycles). Data analysis was conducted using DNA Amplicon workflow via Basespace Sequence Hub. The NGS data alignment was performed with Burrows-Wheeler Aligner (BWA) and subsequently Somatic Variant Caller was used. Variant annotation was performed with Illumina VariantStudio 3.0 Software. Across all samples, several hotspot codons were manually evaluated using the Integrative Genomics Viewer (IGV) for potential low-abundance variants (0.1> VAF <2.0%). Annotated plasma variants had to have allele frequencies above a background threshold of the mean of our control samples (HD701 and HD729 Reference Standards (Horizon)).

Statistics

Descriptive statistics were calculated as mean, median or percentages as appropriate. Correlation between variant allele frequencies (VAF) between the two panels was calculated with Spearman correlation coefficient. The threshold for statistical significance was set at a p-value of less than 0.05.

Results

Patient Characteristics

A total of 21 patients with histologically proven PDAC were included in this study. Table 1 lists patient and tumor characteristics. There were 12 female (57.1%) and nine male (42.9%) patients. The median age at time of diagnosis of advanced disease was 64.3 years (interquartile range (IQR) 57.9–68.9 years). Three patients (14.3%) presented with locally advanced (unresectable) disease and 18 patients (85.7%) had metastasis at time of study inclusion. There were eight patients (38.1%) with a prior surgical resection. The median CA 19–9 levels were 481.5 kU/l (IQR 59.4–3355.0 kU/l). Levels of CA 19–9 were within the normal range in three patients (14.3%) and above in 18 patients (85.7%). The primary site of metastatic disease was liver (n = 11; 52.4%) followed by peritoneum (n = 5; 23.8%) and lung (n = 4; 19%). There were three patients (14.3%) with locally advanced disease, while 14 patients (66.7%) had one organ affected by metastatic spread and four patients (19%) had two or over two metastatic sites. The ECOG performance status was zero in 17 patients (81%) and one in four patients (19%).
Table 1

Characteristics of Patients and Tumors

Median age at diagnosis of advanced disease (median, range)64.3 (57.9–68.9)
Gender (%)
 Female12 (57.1)
 Male9 (42.9)
Disease stage (%)
 Locally advanced (unresectable)3 (14.3)
 Metastatic18 (85.7)
Prior surgical resection (%)8 (38.1)
Median CA 19–9 levels in kU/l (range)481.5 (59.4–3355.0)
CA 19–9 levels (%)
 Within normal range3 (14.3)
 Above normal range18 (85.7)
Site of metastatic disease (%)
 Liver11 (52.4)
 Peritoneum5 (23.8)
 Lung4 (19.0)
 Other1 (4.8)
Number of metastatic sites (%)
 03 (14.3)
 114 (66.7)
 22 (9.5)
 ≥32 (9.5)
ECOG Performance Status (%)
 017 (81)
 14 (19)

Abbreviations: CA-19-9, carbohydrate antigen 19–9; ECOG, Eastern Cooperative Oncology Group.

Characteristics of Patients and Tumors Abbreviations: CA-19-9, carbohydrate antigen 19–9; ECOG, Eastern Cooperative Oncology Group.

cfDNA Efficiency

In general, the amount of cfDNA, which can be obtained from plasma is relatively small compared to genomic DNA extracted from formalin-fixed paraffin-embedded (FFPE) tissue. Moreover, the fraction of cfDNA that originates from tumor cells (ctDNA) is extremely low. First, we analyzed quantity and quality of our cfDNA, which has been isolated using a magnetic bead-based protocol applicable for higher plasma volumes. All samples were isolated successfully and compared to other studies we revealed a considerably high mean cfDNA value of 1.9 ng/µL (range 0.49–4.76 ng/µL) in a volume of ~40 µL.33,38,39 One sample yielded 53 ng/µL cfDNA, which is substantially higher than the cfDNA amount of other samples and therefore not included into the mean-calculation. Due to the high concentration of DNA, we wanted to exclude contamination with high-molecular weight genomic DNA (gDNA) wherefore we performed fragment size analysis with the TapeStation System. CfDNA is highly fragmented and shows a size distribution of ~ 130 bp-180 bp. Generally, fragments higher than 1000 bp are considered as gDNA. The average cfDNA peak of our samples was around 180 bp and shows that there is little to no genomic DNA contamination (see quality control of representative PDAC samples in ). Even the quality of the cfDNA sample with 53 ng/µL was sufficient for NGS (). In summary, we conclude that all our samples were suitable for downstream applications such as NGS without any adaptation, which usually are necessary in cases of low cfDNA yields.

Mutational Profile of PDAC ctDNA Revealed with 15-Gene Panel

In a next step, we analyzed a total of 42 samples from 21 PDAC patients using a small gene panel containing 15 genes with a high coverage and high sensitivity. Paired-end sequencing resulted in average 3.84 Mio passed filter reads per sample and mean amplicon coverage of 23.086. The ctDNA variant detection limit depends on the background signal of our control samples. The control samples revealed allelic frequencies of 0–0.21%. Sixteen out of 21 sequenced patients (76.2%) exhibited at least one variant (see Figure 1A). The number of gene mutations per patient ranged from 1-3 in at least one time point. The identified variants revealed allelic frequencies of 0.1–22% and were distributed over the following six cancer-related genes: KRAS (n = 14; 66.6%), TP53 (n = 7; 33.3%), PIK3CA (n = 2; 9.5%), EGFR (n = 1; 4.8%), MET (n = 1; 4.8%), PDGFRA (n = 1; 4.8%) (see Figure 1B). All detected variants with known or likely pathogenic effect are listed in detail in . In all 16 patients at least one mutation was detected at baseline level. In eight of 16 patients (50%) all baseline variants were still found in the follow-up sample at varying percentages. In two patients (12.5%) (#3 and #15) one baseline mutation was also present in the follow-up sample at varying frequencies while a new mutation was identified in the subsequent sample and appeared during therapy. In patient #7 two baseline variants were also present with very low allele frequency in the consecutive sample while a TP53 variant disappeared. In the remaining five patients (31.3%) the baseline mutation was not detectable in the second sample. In summary, our 15-gene panel was sufficient to identify at least one tumor-associated mutation in 76.2% of our cases, which was suitable for follow-up monitoring.
Figure 1

Comparison between GP15 and GP50. Ratio of patients with at least one detectable mutation versus no detectable mutation according to the two panels (A). Absolute numbers of mutations detected with the two panels (B). Venn diagrams showing the number of patients with shared or exclusive mutations detected by the two panels (C). Correlation between variant allele frequency (VAF) between the two panels, r = Pearson r, P = p-value (D).

Comparison between GP15 and GP50. Ratio of patients with at least one detectable mutation versus no detectable mutation according to the two panels (A). Absolute numbers of mutations detected with the two panels (B). Venn diagrams showing the number of patients with shared or exclusive mutations detected by the two panels (C). Correlation between variant allele frequency (VAF) between the two panels, r = Pearson r, P = p-value (D).

Mutational Profile of PDAC ctDNA Revealed with 50-Gene Panel

Since KRAS, TP53, SMAD4, and CDKN2A are known driver genes for PDAC and GP15 does not cover the latter two, all 42 samples were concomitantly analyzed with a larger panel containing 50 genes, which automatically leads to lower coverage and thus lower sensitivity. Paired-end sequencing resulted in average 1.08 Mio passed filter reads per sample and mean amplicon coverage of 4370. The detection limit of cfDNA variants depends on the background signal of our control samples, which revealed allelic frequencies of 0–0.149%. Sixteen out of 21 sequenced patients (76.2%) exhibited at least one variant (see Figure 1A). The number of gene mutations per patient ranged from 1-4 in at least one time point. The identified variants revealed allelic frequencies of 0.17–23% and were distributed over the following five cancer-related genes: KRAS (n = 10; 47.6%), TP53 (n = 9; 42.8%), SMAD4 (n = 5; 23.8%), CDKN2A (n = 2; 9.5%), PIK3CA (n = 1; 4.8%) (see Figure 1B). All detected variants with known or likely pathogenic effect are listed in detail in . In patient #5 a mutation was only detectable in the consecutive sample, but not at baseline. In six patients the baseline variants were still found in the follow-up sample at varying percentages. In patient #4 one baseline mutation was also present in the consecutive sample while an additional mutation disappeared during therapy. In patient #2 the baseline mutations were not detectable during therapy, but a new variant emerged in the follow-up sample reflecting different subclones. In the remaining seven patients the detected baseline mutation disappeared under therapy. In summary, with this 50-gene panel we were able to detect at least one tumor-associated mutation in 76.2% of our cases, even if the variant-frequency of some mutations is very low.

15-Gene versus 50-Gene Panel for PDAC ctDNA Analysis

As stated above, KRAS and TP53 are the two most commonly mutated genes in PDAC. The overlap for these two genes in our samples analyzed with GP15 and GP50 is shown in Figure 1C. Moreover, a strong correlation of the variant allele frequency (VAF) for KRAS (Pearson r (r) = 0.9868, p =< 0.0001) and TP53 (r = 0.9854, p = 0.0001) between the two sequencing panels for all analyzed samples was observed (see Figure 1D). When comparing GP15 results with GP50, nine out of 21 patients (43.2%) revealed the same results regarding the GP15 genes. Five patients showed additional KRAS-mutations with GP15, which were not detectable with GP50 because of the low variant-frequency. Patients #3 and #5 had, among others, PIK3CA and MET mutations, respectively. These gene regions are not covered by GP50 and therefore were not detected. In two patients (#17 and #19) a low-frequency TP53 mutation was detected with GP50 (Figure 1C), which was found by GP15 as well, but had to be excluded because the allele frequency was not above the background threshold. As aforementioned, SMAD4 and CDKN2A are frequently mutated genes in PDAC, but both genes are not covered by GP15. In this sense, in five GP15-positive cases additional variants in SMAD4 and CDKN2A were detected with GP50. Moreover, in one GP15-negative patient (#6) we could identify SMAD4 and CDKN2A mutations, even though they are low-frequency variants. Ultimately, we have summarized the GP15 results with the two genes SMAD4 and CDKN2A, which were analyzed with GP50. Overall, 24 different variants with known or likely pathogenic effects were detected. The most commonly altered variants were KRAS p.G12D (n = 5), KRAS p.G12V (n = 3), KRAS p.G12R (n = 3) and the low-frequency variant CDKN2A p.Y129C (n = 2). All detected variants and the individual response to therapy are listed in detail in Table 2. In summary, four out of 21 (19.04%) cases revealed no pathogenic variants. It has been shown in previous studies that a therapy response is associated with a decreasing or unchanged mutant allele frequency, whereas an increase of ctDNA is associated with refractory disease.38,40,41 As a result, in seven of 21 (33.33%) PDAC patients the observed ctDNA dynamics suggests a correlation between ctDNA levels and response/non-response to cancer treatment. In ten of 21 (47.62%) patients a discordance of genetic and clinical data was observed (Table 2).
Table 2

Mutational Profile of 21 PDAC Patients (GP15 Results Combined with GP50 SMAD4 and CDKN2A Results). Paired-End Sequencing Resulted in a Mean Amplicon Coverage of 23.086 (GP15) and 4370 (GP50), respectively.

Patient #SampleGene SymbolAmino Acid ChangeVariant Frequency (%)Detection Threshold ControlsCodon ChangeTherapy ResponsectDNA Dynamics versus CT Results
11st sampleKRASp.G12D4.430.053c.35G>APDUnexpected (decrease of VAF in PD)
SMAD4p.Y131D1.840.008c.392A>G
2nd sampleKRASp.G12D2.010.053c.35G>A
SMAD4p.Y131D0.000.008c.392A>G
21st samplePIK3CAp.Q546L4.400.000c. 1637A>TPRConsistent
KRASp.G12V6.960.000c.35G>T
TP53p.R273H1.910.050c.818G>A
SMAD4p.Q256*0.000.061c.766C>T
2nd samplePIK3CAp.Q546L0.000.000c. 1637A>T
KRASp.G12V0.000.000c.35G>T
TP53p.R273H0.000.050c.818G>A
SMAD4p.Q256*0.560.061c.766C>T
31st samplePIK3CAp.G1007V0.250.104c.3020G>TSDUnexpected (increase of VAF and new variant in follow-up sample in SD)
EGFRp.Q791H0.220.023c.2373G>T
PDGFRAp.L839P0.000.034c.2516T>C
2nd samplePIK3CAp.G1007V1.580.104c.3020G>T
EGFRp.Q791H1.500.023c.2373G>T
PDGFRAp.L839P1.250.034c.2516T>C
41st sampleKRASp.G12R1.370.015c.34G>CPDunexpected (decrease of VAF in PD)
TP53p.D208V1.820.000c.623_624delACinsTT
2nd sampleKRASp.G12R0.190.015c.34G>C
TP53p.D208V0.330.000c.623_624delACinsTT
51st sampleMETp.G1201V2.060.212c.3602G>TPDConsistent
SMAD4p.R496H0.000.035c.1487G>A
2nd sampleMETp.G1201V0.000.212c.3602G>T
SMAD4p.R496H0.430.035c.1487G>A
61st sampleSMAD4p.R445*0.170.062c.1333C>TPDConsistent
CDKN2Ap.Y129C0.230.029c.385A>G
2nd sampleSMAD4p.R445*0.240.062c.1333C>T
CDKN2Ap.Y129C0.480.029c.385A>G
71st sampleKRASp.G12D4.540.053c.35G>APRConsistent
TP53p.P152T1.660.000c.454C>A
KRASp.A146T0.190.049c.437C>T
2nd sampleKRASp.G12D0.090.053c.35G>A
TP53p.P152T0.000.000c.454C>A
KRASp.A146T0.150.049c.437C>T
81st sampleKRASp.G12V0.790.000c.35G>TSDConsistent
2nd sampleKRASp.G12V0.170.000c.35G>T
91st sample/PR/
2nd sample/
101st sampleKRASp.G12V0.870.000c.35G>TPRUnexpected (stable VAF in PR)
2nd sampleKRASp.G12V0.430.000c.35G>T
111st sampleKRASp.G12D0.410.053c.35G>APDUnexpected (decrease of VAF in PD)
2nd sampleKRASp.G12D0.120.053c.35G>A
121st sampleKRASp.A146T0.240.049c.437C>TSDUnexpected (mutation disappeared during therapy in stable disease)
2nd sampleKRASp.A146T0.000.049c.437C>T
131st sampleKRASp.Q61R21.730.037c.182A>GPDUnexpected (decrease of VAF in PD)
TP53p.F212SfsTer316.580.000c.635_636delTT
2nd sampleKRASp.Q61R8.040.037c.182A>G
TP53p.F212SfsTer32.900.000c.635_636delTT
141st sampleKRASp.G12R15.180.015c.34G>CSDConsistent
TP53p.G245V16.740.000c.734G>T
2nd sampleKRASp.G12R0.870.015c.34G>C
TP53p.G245V1.670.000c.734G>T
151st sampleKRASp.A134S0.000.000c.400G>TPDConsistent
TP53p.Y126D1.410.009c.376T>G
2nd sampleKRASp.A134S1.470.000c.400G>T
TP53p.Y126D0.360.009c.376T>G
161st sampleKRASp.G12D2.790.053c.35G>APDUnexpected (decrease of VAF in PD)
TP53p.R282W1.320.090c.844C>T
2nd sampleKRASp.G12D1.830.053c.35G>A
TP53p.R282W1.100.090c.844C>T
171st sampleKRASp.G12R0.850.015c.34G>CSDUnexpected (mutations disappeared during therapy in stable disease)
CDKN2Ap.Y129C0.400.029c.385A>G
2nd sampleKRASp.G12R0.000.015c.34G>C
CDKN2Ap.Y129C0.000.029c.385A>G
181st sample/PD/
2nd sample/
191st sample/SD/
2nd sample/
201st sample/SD/
2nd sample/
211st sampleKRASp.G12D0.460.053c.35G>APDUnexpected (decrease of VAF in PD)
SMAD4p.R135*0.640.073c.403C>T
2nd sampleKRASp.G12D0.080.053c.35G>A
SMAD4p.R135*0.000.073c.403C>T

Abbreviations: PD, progressive disease; SD, stable disease; PR, partial response; VAF, variant allele frequency.

Mutational Profile of 21 PDAC Patients (GP15 Results Combined with GP50 SMAD4 and CDKN2A Results). Paired-End Sequencing Resulted in a Mean Amplicon Coverage of 23.086 (GP15) and 4370 (GP50), respectively. Abbreviations: PD, progressive disease; SD, stable disease; PR, partial response; VAF, variant allele frequency.

Comparison of Primary and Recurrent Tumors

Depending on the availability, FFPE tissue samples of the primary tumor (n = 8) or liver metastasis (n = 3) were retrieved. To compare the mutations of the primary (FFPE) and recurrent tumor (which is represented by the ctDNA) the GP15 was used. In tissue DNA, alterations in KRAS were observed in all (n = 11) and in TP53 in 81% (n =9) of the available samples. In five (45.45%) patients blood-tissue mutational profiles were fully concordant (Table 3). KRAS and TP53 mutations were detectable in the tumor tissue of three (27.27%) patients, while ctDNA analysis only revealed the KRAS mutation in the respective sample (partially concordant mutational profiles). The remaining three (27.27%) patients only had detectable TP53 and/or KRAS mutations in the primary tumor or liver metastases but not in the corresponding ctDNA analysis with the GP15. Overall, genomic concordance rate between tissue DNA and ctDNA analyses was 65.22%, which means that 15/23 mutations that were present in the primary tumor/metastatic site could also be detected in ctDNA. More precisely, concordance rate was 72.72% for KRAS and 44.44% for TP53.
Table 3

Comparison of Mutations of cfDNA (Baseline) and Primary Tumor Sample/Metastatic Site of Eleven PDAC Patients

Patient #SampleGene SymbolAmino Acid ChangeVariant Frequency (%)Tissue TypeGene SymbolAmino Acid ChangeVariant Frequency (%)
Blood Derived ctDNAPrimary Tumor/Metastatic Site (FFPE)
21st samplePIK3CAp.Q546L4.40LMBPIK3CAp.Q546L13.2
KRASp.G12V6.96KRASp.G12V28.2
TP53p.R273H1.91TP53p.R273H19.1
31st samplePIK3CAp.G1007V0.25PTPIK3CAp.G1007V0.23
EGFRp.Q791H0.22EGFRp.Q791H0.14
61st sample///PTKRASp.G12D7.4
71st sampleKRASp.G12D4.54PTKRASp.G12D10.6
TP53p.P152T1.66TP53p.P152T6.3
KRASp.A146T0.19KRASp.A146T0.07
81st sampleKRASp.G12V0.79PTKRASp.G12V3.4
TP53p.D281N1.4
111st sampleKRASp.G12D0.41PTKRASp.G12D6.4
TP53p.A138V8.1
131st sampleKRASp.Q61R21.73PTKRASp.Q61R23.3
TP53p.F212SfsTer316.58TP53p.F212SfsTer318.8
141st sampleKRASp.G12R15.18LMBKRASp.G12R22.2
TP53p.G245V16.74TP53p.G245V26
181st sample///PTKRASp.G12N5.2
TP53p.R175H4.8
201st sample///LMBKRASp.G12V23
TP53p.R248Q9
211st sampleKRASp.G12D0.46PTKRASp.G12D8
TP53p.C135_T140delinsS8.6

Abbreviations: LMB, liver metastasis biopsy; PT, primary tumor.

Comparison of Mutations of cfDNA (Baseline) and Primary Tumor Sample/Metastatic Site of Eleven PDAC Patients Abbreviations: LMB, liver metastasis biopsy; PT, primary tumor.

Discussion

Liquid biopsy is increasingly recognized as a versatile tool for the detection of disease relapse and treatment monitoring of cancer patients.42,43 However, the plethora of potential methods, ranging from PCR-based techniques to NGS-based systems, complicates the comparison between different studies and ultimately limits the conclusions, which could be drawn on their clinical utility. Due to declining costs, the wide availability and the possibility to simultaneously detect multiple different mutations, NGS-based methods have also become very popular when analyzing low input samples like ctDNA from blood plasma of cancer patients. Given that a substantial proportion of patients, even if they present with metastatic disease, have unexpectedly low amounts of ctDNA,44 it is important to consider that the coverage of the used sequencing panel is mostly determined by the number of analyzed genes. The aim of this study was to assess the clinical applicability of two commercially available NGS gene panels (15 versus 50 genes), to detect the most frequent mutations in ctDNA from two consecutive blood samples in patients with advanced PDAC, which undergo systemic treatment. Generally, the amount of total cfDNA, which can be isolated from plasma is quite small. Most studies give remarkably little detail about the quantity of cfDNA, which they have gained with their chosen DNA extraction methods. Some few studies reported about cfDNA levels in PDAC patients, which are much lower than our yield.33,38,39 By using a bead-based isolation approach applicable for higher plasma volumes, we were able to obtain relatively high mean cfDNA values (1.9 ng/µL in a volume of ~40 µL) with minimal genomic DNA contamination. These samples were suitable for NGS without any adaptation. The cfDNA sample collected at the second time point of patient #10 revealed a concentration of 53 ng/µL, much higher than our mean value. Such a high value suggests the assumption that genomic DNA contamination is present; even so the quality control displayed a characteristic profile of cfDNA (). Therefore, this sample was used for further analysis without any concerns. A non-malignant pathological process leading to the release of high amounts of cfDNA into the blood stream45–47 cannot be the only explanation since KRAS p.G12V variant allele frequency was almost unchanged in both samples (Table 2) despite of 20x cfDNA concentration differences (2.51 ng/µL versus 53.0 ng/µL). To the best of our knowledge, we present here for the first time results of this promising isolation approach. Some downstream applications require high levels of cfDNA, therefore our results could be of interest for the medical and biobanking communities. With our 15-gene panel at least one tumor-associated mutation in 76.16% of the patients in our cohort could be identified. With our 50-gene panel we were able to detect in 76.16% of the cases a mutation as well; even though the mutation-positive cases are slightly different. Differences are mainly caused by the number of assessed genes, amplicon coverages and amplicon positions. Variant allele frequency of some mutations detected with the 50-gene panel is very low. Although we have used controls to determine the background threshold, these results are still not reliable enough for routine clinical practice, as with the TP53 low-frequency variants in patients #17 and #19. One possible option to overcome this issue is to combine NGS results with droplet digital PCR just for specific low-frequency mutations.31 Since droplet digital PCR is a more sensitive method,48,49 it would help to validate true positive low-level mutations detected by NGS. Despite the same detection rate of 76.16% for at least one mutation, the 15-gene panel seems to be more informative (five additional KRAS mutations were detected), sensitive and reliable based on our results in respect of routine clinical practice. During tumorigenesis KRAS mutations are among the first to occur and consequently they are seen as founder mutations.– Correspondingly, KRAS is the most frequently mutated gene in patients with PDAC. In accordance with these studies, we also predominantly detected mutations in KRAS, more precisely in codon 12. In general, therapy response is associated with a decreasing or unchanged mutant allele frequency, whereas an increase of ctDNA is associated with refractory disease.38,40,41 With both our panels we were able to observe changes of the ctDNA allele frequencies under therapy. In 33.33% (7/21) of our cases a correlation between mutational frequency and therapy response assessed by CT-scans can be assumed. For example in patient #14 the mutational frequencies of both detected mutations dropped and correspondingly the follow-up CT-scan showed that the tumor lesions were not progressing. Furthermore, it can be hypothesized that both mutations originate from the same tumor clone because of the similar allele frequency (Table 2). In contrast, in 47.62% (10/21) of our cases a discordance of genetic and clinical data was observed. Patient #4 revealed a KRAS and TP53 mutation and the allele frequency of both decreased during therapy, which would indicate a therapy response. Contrary to this, disease reassessment by CT-scan revealed a disease progression. Based on such findings we propose that it is important to be cautious with the interpretation of mutation frequencies in respect to clinical response. Furthermore, in patients #12 and #17 baseline mutations were not detectable during therapy, although disease reassessment showed a stable disease. Regarding the radiological response evaluation, it should be considered that standard imaging methods cannot always reliably distinguish between vital tumor tissue and fibrotic masses, which could complicate the assessment of treatment responses. In eleven of 21 patients (52.38%) primary tissue or metastatic sites were analyzed for comparison. In 5/11 patients sequencing analysis revealed a complete blood-tissue concordance of the mutational landscape and in 3/11 patients there was a partial concordance. In the latter case (#8, #11 and #21), KRAS mutations are presented in both analyses, whereas TP53 mutations were not detectable in ctDNA. One possible explanation for the absence of TP53 mutations could be a different clonal composition of the tumor in further treatment lines compared to the primary tumor. Treatment could have eradicated most of these clones during first line treatment.53 In patients #18 and #20 KRAS and TP53 mutations were detected only in the tissue of the primary tumor or metastasis but missing in ctDNA analyses. A reason for the discrepancy in the mutational profile between tissue and ctDNA might be low ctDNA levels in these samples, a limitation, which has been described in patients who are under treatment.39,53,54 In summary, the genomic concordance rate between tissue and ctDNA in our cohort was 65.22% for all mutations and in particular 72.72% for KRAS, which is higher than the rates reported by a previous study from Patel et al.25 These results emphasize the potential of ctDNA as a biomarker in PDAC and underline the promising cfDNA-isolation technique. Limitations of this study are the relatively small number of included patients and that blood samples were only collected early in the treatment course, which would miss potential outgrowing tumor clones that arise shortly before therapy response evaluation. We decided to collect blood samples early in the treatment course because we speculated to be able to anticipate the treatment response before radiological reassessment would be performed. Our results demonstrate that by following these early ctDNA dynamics we were successful in predicting the clinical outcome in about half of all patients with a detectable mutation at baseline. In the other half of the patients treatment responses were not predictable. The selection of the NGS sequencing panels was based on the covered genes, however at the time of study initiation no PDAC-specific product suitable for ctDNA was available. We would highly encourage the development of a commercially available NGS sequencing panel optimized for ctDNA analysis in PDAC, which focuses only on a limited number of genes that are typically mutated in this disease, like KRAS, TP53, CDKN2A, SMAD4, and KDM6A. With this gene panel it would be possible to simultaneously assess multiple genes to maximize the rate of patients with at least one mutation, which can be monitored during therapy while maintaining a sufficiently high coverage essential for detecting low-abundance ctDNA.

Conclusions

This study demonstrates the feasibility of using an NGS-based analyzing method for ctDNA in PDAC patients undergoing a palliative chemotherapy. Our results underscore the importance of precise DNA isolation to yield high quality samples for further ctDNA analysis and the selection of a gene panel with a high coverage. Further validation of our findings, with a specifically for this purpose developed NGS-based gene panel, in a larger patient cohort is warranted.
  52 in total

Review 1.  Cell-free nucleic acids as biomarkers in cancer patients.

Authors:  Heidi Schwarzenbach; Dave S B Hoon; Klaus Pantel
Journal:  Nat Rev Cancer       Date:  2011-05-12       Impact factor: 60.716

2.  Detection of K-ras gene mutation by liquid biopsy in patients with pancreatic cancer.

Authors:  Hideaki Kinugasa; Kazuhiro Nouso; Koji Miyahara; Yuki Morimoto; Chihiro Dohi; Koichiro Tsutsumi; Hironari Kato; Takehiro Matsubara; Hiroyuki Okada; Kazuhide Yamamoto
Journal:  Cancer       Date:  2015-03-30       Impact factor: 6.860

3.  Combined circulating tumor DNA and protein biomarker-based liquid biopsy for the earlier detection of pancreatic cancers.

Authors:  Joshua D Cohen; Ammar A Javed; Christopher Thoburn; Fay Wong; Jeanne Tie; Peter Gibbs; C Max Schmidt; Michele T Yip-Schneider; Peter J Allen; Mark Schattner; Randall E Brand; Aatur D Singhi; Gloria M Petersen; Seung-Mo Hong; Song Cheol Kim; Massimo Falconi; Claudio Doglioni; Matthew J Weiss; Nita Ahuja; Jin He; Martin A Makary; Anirban Maitra; Samir M Hanash; Marco Dal Molin; Yuxuan Wang; Lu Li; Janine Ptak; Lisa Dobbyn; Joy Schaefer; Natalie Silliman; Maria Popoli; Michael G Goggins; Ralph H Hruban; Christopher L Wolfgang; Alison P Klein; Cristian Tomasetti; Nickolas Papadopoulos; Kenneth W Kinzler; Bert Vogelstein; Anne Marie Lennon
Journal:  Proc Natl Acad Sci U S A       Date:  2017-09-05       Impact factor: 11.205

Review 4.  Pancreatic cancer.

Authors:  Jorg Kleeff; Murray Korc; Minoti Apte; Carlo La Vecchia; Colin D Johnson; Andrew V Biankin; Rachel E Neale; Margaret Tempero; David A Tuveson; Ralph H Hruban; John P Neoptolemos
Journal:  Nat Rev Dis Primers       Date:  2016-04-21       Impact factor: 52.329

5.  Circulating free DNA as non-invasive diagnostic biomarker for childhood solid tumors.

Authors:  Sho Kurihara; Yuka Ueda; Yoshiyuki Onitake; Taijiro Sueda; Emi Ohta; Nagisa Morihara; Shoko Hirano; Fumiko Irisuna; Eiso Hiyama
Journal:  J Pediatr Surg       Date:  2015-08-28       Impact factor: 2.545

6.  Detection of circulating tumor DNA in early- and late-stage human malignancies.

Authors:  Chetan Bettegowda; Mark Sausen; Rebecca J Leary; Isaac Kinde; Yuxuan Wang; Nishant Agrawal; Bjarne R Bartlett; Hao Wang; Brandon Luber; Rhoda M Alani; Emmanuel S Antonarakis; Nilofer S Azad; Alberto Bardelli; Henry Brem; John L Cameron; Clarence C Lee; Leslie A Fecher; Gary L Gallia; Peter Gibbs; Dung Le; Robert L Giuntoli; Michael Goggins; Michael D Hogarty; Matthias Holdhoff; Seung-Mo Hong; Yuchen Jiao; Hartmut H Juhl; Jenny J Kim; Giulia Siravegna; Daniel A Laheru; Calogero Lauricella; Michael Lim; Evan J Lipson; Suely Kazue Nagahashi Marie; George J Netto; Kelly S Oliner; Alessandro Olivi; Louise Olsson; Gregory J Riggins; Andrea Sartore-Bianchi; Kerstin Schmidt; le-Ming Shih; Sueli Mieko Oba-Shinjo; Salvatore Siena; Dan Theodorescu; Jeanne Tie; Timothy T Harkins; Silvio Veronese; Tian-Li Wang; Jon D Weingart; Christopher L Wolfgang; Laura D Wood; Dongmei Xing; Ralph H Hruban; Jian Wu; Peter J Allen; C Max Schmidt; Michael A Choti; Victor E Velculescu; Kenneth W Kinzler; Bert Vogelstein; Nickolas Papadopoulos; Luis A Diaz
Journal:  Sci Transl Med       Date:  2014-02-19       Impact factor: 17.956

7.  Analysis of circulating tumor DNA to monitor metastatic breast cancer.

Authors:  Sarah-Jane Dawson; Dana W Y Tsui; Muhammed Murtaza; Heather Biggs; Oscar M Rueda; Suet-Feung Chin; Mark J Dunning; Davina Gale; Tim Forshew; Betania Mahler-Araujo; Sabrina Rajan; Sean Humphray; Jennifer Becq; David Halsall; Matthew Wallis; David Bentley; Carlos Caldas; Nitzan Rosenfeld
Journal:  N Engl J Med       Date:  2013-03-13       Impact factor: 91.245

8.  Core signaling pathways in human pancreatic cancers revealed by global genomic analyses.

Authors:  Siân Jones; Xiaosong Zhang; D Williams Parsons; Jimmy Cheng-Ho Lin; Rebecca J Leary; Philipp Angenendt; Parminder Mankoo; Hannah Carter; Hirohiko Kamiyama; Antonio Jimeno; Seung-Mo Hong; Baojin Fu; Ming-Tseh Lin; Eric S Calhoun; Mihoko Kamiyama; Kimberly Walter; Tatiana Nikolskaya; Yuri Nikolsky; James Hartigan; Douglas R Smith; Manuel Hidalgo; Steven D Leach; Alison P Klein; Elizabeth M Jaffee; Michael Goggins; Anirban Maitra; Christine Iacobuzio-Donahue; James R Eshleman; Scott E Kern; Ralph H Hruban; Rachel Karchin; Nickolas Papadopoulos; Giovanni Parmigiani; Bert Vogelstein; Victor E Velculescu; Kenneth W Kinzler
Journal:  Science       Date:  2008-09-04       Impact factor: 47.728

9.  Early changes in plasma DNA levels of mutant KRAS as a sensitive marker of response to chemotherapy in pancreatic cancer.

Authors:  Marzia Del Re; Caterina Vivaldi; Eleonora Rofi; Enrico Vasile; Mario Miccoli; Chiara Caparello; Paolo Davide d'Arienzo; Lorenzo Fornaro; Alfredo Falcone; Romano Danesi
Journal:  Sci Rep       Date:  2017-08-11       Impact factor: 4.379

10.  Plasma ctDNA RAS mutation analysis for the diagnosis and treatment monitoring of metastatic colorectal cancer patients.

Authors:  J Vidal; L Muinelo; A Dalmases; F Jones; D Edelstein; M Iglesias; M Orrillo; A Abalo; C Rodríguez; E Brozos; Y Vidal; S Candamio; F Vázquez; J Ruiz; M Guix; L Visa; V Sikri; J Albanell; B Bellosillo; R López; C Montagut
Journal:  Ann Oncol       Date:  2017-06-01       Impact factor: 32.976

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