Next Article in Journal
Molecular Features and Targeted Therapies in Extrahepatic Cholangiocarcinoma: Promises and Failures
Previous Article in Journal
Deubiquitinating Enzyme-Mediated Signaling Networks in Cancer Stem Cells
 
 
cancers-logo
Article Menu

Article Menu

Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

The CHEK2 Variant C.349A>G Is Associated with Prostate Cancer Risk and Carriers Share a Common Ancestor

by
Andreia Brandão
1,
Paula Paulo
1,
Sofia Maia
1,
Manuela Pinheiro
1,
Ana Peixoto
2,
Marta Cardoso
1,
Maria P. Silva
1,
Catarina Santos
2,
Rosalind A. Eeles
3,4,
Zsofia Kote-Jarai
3,
Kenneth Muir
5,6,
UKGPCS Collaborators
7,†,
Johanna Schleutker
8,9,
Ying Wang
10,
Nora Pashayan
11,12,
Jyotsna Batra
13,14,
APCB BioResource
13,14,
Henrik Grönberg
15,
David E. Neal
16,17,18,
Børge G. Nordestgaard
19,20,
Catherine M. Tangen
21,
Melissa C. Southey
22,23,24,
Alicja Wolk
25,26,
Demetrius Albanes
27,
Christopher A. Haiman
28,
Ruth C. Travis
29,
Janet L. Stanford
30,31,
Lorelei A. Mucci
32,
Catharine M. L. West
33,
Sune F. Nielsen
19,20,
Adam S. Kibel
34,
Olivier Cussenot
35,36,
Sonja I. Berndt
27,
Stella Koutros
27,
Karina Dalsgaard Sørensen
37,38,
Cezary Cybulski
39,
Eli Marie Grindedal
40,
Jong Y. Park
41,
Sue A. Ingles
42,
Christiane Maier
43,
Robert J. Hamilton
44,45,
Barry S. Rosenstein
46,47,
Ana Vega
48,49,50,
The IMPACT Study Steering Committee and Collaborators
7,‡,
Manolis Kogevinas
51,52,53,54,
Fredrik Wiklund
15,
Kathryn L. Penney
55,
Hermann Brenner
56,57,58,
Esther M. John
59,
Radka Kaneva
60,
Christopher J. Logothetis
61,
Susan L. Neuhausen
62,
Kim De Ruyck
63,
Azad Razack
64,
Lisa F. Newcomb
30,65,
Canary PASS Investigators
30,65,
Davor Lessel
66,
Nawaid Usmani
67,68,
Frank Claessens
69,
Manuela Gago-Dominguez
70,71,
Paul A. Townsend
72,
Monique J. Roobol
73,
The Profile Study Steering Committee
74,§,
The PRACTICAL Consortium
and
Manuel R. Teixeira
1,2,6,75,*
add Show full author list remove Hide full author list
1
Cancer Genetics Group, IPO Porto Research Center (CI-IPOP), Portuguese Oncology Institute of Porto (IPO Porto), 4200-072 Porto, Portugal
2
Department of Genetics, Portuguese Oncology Institute of Porto (IPO Porto), 4200-072 Porto, Portugal
3
The Institute of Cancer Research, London SM2 5NG, UK
4
Royal Marsden NHS Foundation Trust, London SW3 6JJ, UK
5
Division of Population Health, Health Services Research and Primary Care, University of Manchester, Oxford Road, Manchester M13 9PL, UK
6
Warwick Medical School, University of Warwick, Coventry CV4 7AL, UK
7
The Institute of Cancer Research, London SW7 3RP, UK
8
Institute of Biomedicine, University of Turku, FI-20014 Turun Yliopisto, 20050 Turku, Finland
9
Department of Medical Genetics, Genomics, Laboratory Division, Turku University Hospital, P.O. Box 52, 20521 Turku, Finland
10
Department of Population Science, American Cancer Society, 250 Williams Street, Atlanta, GA 30303, USA
11
Department of Applied Health Research, University College London, London WC1E 7HB, UK
12
Centre for Cancer Genetic Epidemiology, Department of Oncology, University of Cambridge, Strangeways Research Laboratory, Worts Causeway, Cambridge CB1 8RN, UK
13
Australian Prostate Cancer Research Centre-Qld, Institute of Health and Biomedical Innovation and School of Biomedical Sciences, Queensland University of Technology, Brisbane, QLD 4059, Australia
14
Translational Research Institute, Brisbane, QLD 4102, Australia
15
Department of Medical Epidemiology and Biostatistics, Karolinska Institute, SE-171 77 Stockholm, Sweden
16
Nuffield Department of Surgical Sciences, University of Oxford, Room 6603, Level 6, John Radcliffe Hospital, Headley Way, Headington, Oxford OX3 9DU, UK
17
Department of Oncology, University of Cambridge, Addenbrooke’s Hospital, Hills Road, Cambridge CB2 0QQ, UK
18
Cancer Research UK, Cambridge Research Institute, Li Ka Shing Centre, Cambridge CB2 0RE, UK
19
Faculty of Health and Medical Sciences, University of Copenhagen, 2200 Copenhagen, Denmark
20
Department of Clinical Biochemistry, Herlev and Gentofte Hospital, Copenhagen University Hospital, Herlev, 2200 Copenhagen, Denmark
21
SWOG Statistical Center, Fred Hutchinson Cancer Research Center, 1100 Fairview Avenue North, M3-C102, Seattle, WA 98109-1024, USA
22
Precision Medicine, School of Clinical Sciences at Monash Health, Monash University, Clayton, VIC 3168, Australia
23
Cancer Epidemiology Division, Cancer Council Victoria, 615 St Kilda Road, Melbourne, VIC 3004, Australia
24
Department of Clinical Pathology, The Melbourne Medical School, The University of Melbourne, Melbourne, VIC 3004, Australia
25
Unit of Cardiovascular and Nutritional Epidemiology, Institute of Environmental Medicine, Karolinska Institutet, SE-171 77 Stockholm, Sweden
26
Department of Surgical Sciences, Uppsala University, 75185 Uppsala, Sweden
27
Division of Cancer Epidemiology and Genetics, National Cancer Institute, NIH, Bethesda, ML 20892, USA
28
Center for Genetic Epidemiology, Department of Preventive Medicine, Keck School of Medicine, University of Southern California/Norris Comprehensive Cancer Center, Los Angeles, CA 90015, USA
29
Cancer Epidemiology Unit, Nuffield Department of Population Health, University of Oxford, Oxford OX3 7LF, UK
30
Division of Public Health Sciences, Fred Hutchinson Cancer Research Center, Seattle, DC 98109-1024, USA
31
Department of Epidemiology, School of Public Health, University of Washington, Seattle, DC 98195, USA
32
Department of Epidemiology, Harvard T. H. Chan School of Public Health, Boston, MA 02115, USA
33
Division of Cancer Sciences, University of Manchester, Manchester Academic Health Science Centre, Radiotherapy Related Research, The Christie Hospital NHS Foundation Trust, Manchester M13 9PL, UK
34
Division of Urologic Surgery, Brigham and Womens Hospital, 75 Francis Street, Boston, MA 02115, USA
35
Sorbonne Universite, GRC n 5, AP-HP, Tenon Hospital, 4 rue de la Chine, F-75020 Paris, France
36
CeRePP, Tenon Hospital, F-75020 Paris, France
37
Department of Molecular Medicine, Aarhus University Hospital, Palle Juul-Jensen Boulevard 99, 8200 Aarhus N, Denmark
38
Department of Clinical Medicine, Aarhus University, DK-8200 Aarhus N, Denmark
39
International Hereditary Cancer Center, Department of Genetics and Pathology, Pomeranian Medical University, 70-115 Szczecin, Poland
40
Department of Medical Genetics, Oslo University Hospital, 0424 Oslo, Norway
41
Department of Cancer Epidemiology, Moffitt Cancer Center, 12902 Magnolia Drive, Tampa, FL 33612, USA
42
Department of Preventive Medicine, Keck School of Medicine, University of Southern California/Norris Comprehensive Cancer Center, Los Angeles, CA 90015, USA
43
Humangenetik Tuebingen, Paul-Ehrlich-Str 23, D-72076 Tuebingen, Germany
44
Department of Surgical Oncology, Princess Margaret Cancer Centre, Toronto, ON M5G 2M9, Canada
45
Department of Surgery (Urology), University of Toronto, Toronto, ON M5T 1P5, Canada
46
Department of Radiation Oncology and Department of Genetics and Genomic Sciences, Box 1236, Icahn School of Medicine at Mount Sinai, One Gustave L. Levy Place, New York, NY 10029, USA
47
Department of Genetics and Genomic Sciences, Icahn School of Medicine at Mount Sinai, New York, NY 10029-5674, USA
48
Fundación Pública Galega Medicina Xenómica, 15706 Santiago de Compostela, Spain
49
Health Research Institute of Santiago de Compostela (IDIS), 15706 Santiago De Compostela, Spain
50
CIBER of Rare Diseases (CIBERER), 28029 Madrid, Spain
51
ISGlobal, 08036 Barcelona, Spain
52
IMIM (Hospital del Mar Medical Research Institute), 08003 Barcelona, Spain
53
Campus del Mar, Universitat Pompeu Fabra (UPF), 08003 Barcelona, Spain
54
CIBER Epidemiología y Salud Pública (CIBERESP), 28029 Madrid, Spain
55
Channing Division of Network Medicine, Department of Medicine, Brigham and Women’s Hospital/Harvard Medical School, Boston, MA 02184, USA
56
Division of Clinical Epidemiology and Aging Research, German Cancer Research Center (DKFZ), 69120 Heidelberg, Germany
57
German Cancer Consortium (DKTK), German Cancer Research Center (DKFZ), D-69120 Heidelberg, Germany
58
Division of Preventive Oncology, German Cancer Research Center (DKFZ) and National Center for Tumor Diseases (NCT), Im Neuenheimer Feld 460, 69120 Heidelberg, Germany
59
Departments of Epidemiology & Population Health and of Medicine, Division of Oncology, Stanford Cancer Institute, Stanford University School of Medicine, Stanford, CA 94304, USA
60
Molecular Medicine Center, Department of Medical Chemistry and Biochemistry, Medical University of Sofia, Sofia, 2 Zdrave Str., 1431 Sofia, Bulgaria
61
Department of Genitourinary Medical Oncology, The University of Texas M. D. Anderson Cancer Center, 1515 Holcombe Blvd., Houston, TX 77030, USA
62
Department of Population Sciences, Beckman Research Institute of the City of Hope, 1500 East Duarte Road, Duarte, CA 91010, USA
63
Faculty of Medicine and Health Sciences, Basic Medical Sciences, Ghent University, Proeftuinstraat 86, 9000 Gent, Belgium
64
Department of Surgery, Faculty of Medicine, University of Malaya, 50603 Kuala Lumpur, Malaysia
65
Department of Urology, University of Washington, 1959 NE Pacific Street, Box 356510, Seattle, WA 98195, USA
66
Institute of Human Genetics, University Medical Center Hamburg-Eppendorf, 20246 Hamburg, Germany
67
Department of Oncology, Cross Cancer Institute, University of Alberta, 11560 University Avenue, Edmonton, AB T6G 1Z2, Canada
68
Division of Radiation Oncology, Cross Cancer Institute, 11560 University Avenue, Edmonton, AB T6G 1Z2, Canada
69
Molecular Endocrinology Laboratory, Department of Cellular and Molecular Medicine, Campus Gasthuisberg, University of Leuven, Herestraat 49, P.O. Box 901, 3000 Leuven, Belgium
70
Group of Genomic Medicine, Galician Public Foundation of Genomic Medicine, Health Research Institute of Santiago de Compostela (IDIS), Galician Healthcare Service (SERGAS) University of Santiago de Compostela, 15782 Santiago de Compostela, Spain
71
Moores Cancer Center, Department of Family Medicine and Public Health, University of California San Diego, La Jolla, CA 92093-0012, USA
72
Division of Cancer Sciences, Manchester Cancer Research Centre, Faculty of Biology, Medicine and Health, Manchester Academic Health Science Centre, National Institute for Health Research (NIHR) Manchester Biomedical Research Centre, Health Innovation Manchester, University of Manchester, Manchester M13 9PL, UK
73
Department of Urology, Erasmus University Medical Center, 3015 CE Rotterdam, The Netherlands
74
Institute of Cancer Research and Royal Marsden Hospital, Sutton, Surrey SM2 5PT, UK
75
Biomedical Sciences Institute Abel Salazar (ICBAS), University of Porto, 4050-313 Porto, Portugal
*
Author to whom correspondence should be addressed.
http://www.icr.ac.uk/our-research/research-divisions/division-of-genetics-and-epidemiology/oncogenetics/research-projects/ukgpcs/ukgpcs-collaborators.
http://impact.icr.ac.uk.
§
https://clinicaltrials.gov/ct2/show/NCT02543905.
Further information on The PRACTICAL Consortium is provided in the Supplementary Information.
Cancers 2020, 12(11), 3254; https://doi.org/10.3390/cancers12113254
Submission received: 15 September 2020 / Revised: 19 October 2020 / Accepted: 20 October 2020 / Published: 4 November 2020

Abstract

:

Simple Summary

It is well-recognised the strong contribution of genetic factors to prostate cancer (PrCa) susceptibility, thus genetic screening is critical for presymptomatic diagnosis and identification of individuals at high-risk. In this context, recurrent founder variants in cancer predisposing genes, by providing specific targets for early identification of carriers at risk of developing the disease, may be leveraged to implement cost-efficient targeted genetic screening strategies. The goal of this study was to investigate whether CHEK2 c.349A>G, the only recurrent “likely pathogenic” variant in CHEK2 gene reported in the Portuguese population, plays an important role in PrCa development, and the possibility of a founder effect behind its origin. Our results clearly demonstrate that c.349A>G in the CHEK2 tumour-suppressor gene is a founder variant significantly associated with an increased risk of PrCa, suggesting its potential usefulness for cost-effective targeted genetic screening in PrCa families.

Abstract

The identification of recurrent founder variants in cancer predisposing genes may have important implications for implementing cost-effective targeted genetic screening strategies. In this study, we evaluated the prevalence and relative risk of the CHEK2 recurrent variant c.349A>G in a series of 462 Portuguese patients with early-onset and/or familial/hereditary prostate cancer (PrCa), as well as in the large multicentre PRACTICAL case–control study comprising 55,162 prostate cancer cases and 36,147 controls. Additionally, we investigated the potential shared ancestry of the carriers by performing identity-by-descent, haplotype and age estimation analyses using high-density SNP data from 70 variant carriers belonging to 11 different populations included in the PRACTICAL consortium. The CHEK2 missense variant c.349A>G was found significantly associated with an increased risk for PrCa (OR 1.9; 95% CI: 1.1–3.2). A shared haplotype flanking the variant in all carriers was identified, strongly suggesting a common founder of European origin. Additionally, using two independent statistical algorithms, implemented by DMLE+2.3 and ESTIAGE, we were able to estimate the age of the variant between 2300 and 3125 years. By extending the haplotype analysis to 14 additional carrier families, a shared core haplotype was revealed among all carriers matching the conserved region previously identified in the high-density SNP analysis. These findings are consistent with CHEK2 c.349A>G being a founder variant associated with increased PrCa risk, suggesting its potential usefulness for cost-effective targeted genetic screening in PrCa families.

1. Introduction

Prostate cancer (PrCa) is one of the most commonly diagnosed cancers worldwide, representing the second leading cause of cancer mortality among men in the developed countries [1]. Despite the strong epidemiological evidence supporting a genetic contribution to PrCa, with 10–20% of the cases expected to occur in a hereditary/familial context, the genetic aetiology is still largely unknown [2]. To date, numerous family-based linkage and genome-wide association studies (GWAS) have reported more than 100 common low-penetrance genetic variants associated with PrCa risk, most of which were identified in populations of European ancestry [3,4,5,6,7,8]. However, no specific high-risk gene for PrCa has been identified. Apart from some well-established moderate-risk genes [9,10,11,12,13,14,15,16,17], a few additional candidate genes have, more recently, been proposed to explain PrCa heritability.
CHEK2 is a tumour suppressor gene that encodes a serine threonine kinase involved in pathways such as DNA repair, cell cycle arrest, mitosis, and apoptosis [18,19,20]. Although several germline variants in the CHEK2 gene have been associated with increased cancer risk, the knowledge regarding the full mutational spectra and specific variant-associated risk, particularity in PrCa, is still limited [21]. So far, the c.1100delC and p.I157T CHEK2 variants are the most comprehensively studied, being associated in large case–control studies with increased risk for different types of cancer, such as testicular germ cell tumours, breast and colorectal cancers [22,23,24]. Other cancer risk-associated CHEK2 variants have been reported [22], some of which in ethnically defined groups such as the Ashkenazi Jewish population [25], suggesting the influence of founder effects underlying CHEK2 mutational spectra.
Recently, we performed a comprehensive genetic screening of 94 genes associated with inherited cancer predisposition in a selected series of 121 Portuguese patients with early-onset disease and/or criteria for familial/hereditary PrCa [26]. Only one recurrent variant, namely CHEK2 c.349A>G, was identified in two Portuguese PrCa families. This variant, classified as “pathogenic/likely pathogenic” by ClinVar (http://www.ncbi.nlm.nih.gov/clinvar/, accessed in January 2020), has already been implicated in previous large-scale studies with increased risk for breast cancer (BrCa), but not PrCa development [22]. The existence of a recurrent “likely pathogenic” variant in the CHEK2 gene may be the reflection of a founder event. The identification of founder variants in cancer predisposing genes is important to improve risk assessment in specific populations, allowing more cost-efficient screening strategies by providing specific targets for early identification of carriers at risk to develop the disease. It remains unknown whether the CHEK2 variant c.349A>G may have arisen from a common founder ancestor or independently through time.
In this work, we aimed to further explore the relevance of the CHEK2 variant c.349A>G in early-onset/familial PrCa, by evaluating its prevalence in a series of 462 Portuguese PrCa patients with early-onset disease and/or criteria for familial/hereditary PrCa [27]. Additionally, we aimed to explore the hypothesis of a possible founder effect in the origin of this CHEK2 variant by performing haplotype and age estimation analyses in PrCa patients and controls from 11 different populations included in the PRATICAL (Prostate Cancer Association Group to Investigate Cancer Associated Alterations in the Genome) consortium.

2. Results

2.1. Frequency of the CHEK2 Variant c.349A>G

To evaluate the previously suggested contribution of CHEK2 variant c.349A>G to early-onset and/ or familial PrCa risk, we screened a series of 462 early-onset/familial PrCa cases and compared the frequency in cases with that previously obtained for 710 controls. In addition to the two PrCa cases previously reported [26], the c.349A>G variant was found in three PrCa cases, corroborating a higher frequency in cases (n = 5) comparing with controls (n = 1), rendering a borderline association with increased risk of PrCa (OR 7.7; 95% CI: 0.9–66.6; p = 0.06).
To further investigate the possible association with increased PrCa risk, we increased the statistical power by evaluating the frequency of the CHEK2 variant c.349A>G among the 91,309 individuals available from the PRATICAL consortium. The variant was found in 52 PrCa cases (including the four of the five patients previously identified in the Portuguese early-onset and/or hereditary PrCa series) and 18 heathy controls belonging to 11 worldwide spread populations of European ancestry (Table S1), corroborating the association with PrCa (OR 1.9; 95% CI: 1.1–3.2; p = 0.04) hinted by the analysis of the Portuguese early-onset/familial PrCa series.

2.2. Identification of IBD Haplotype and Phylogeographic Analysis

The identity-by-descent (IBD) analysis of the high-density SNP data from chromosome 22 revealed the existence of a shared haplotype with different lengths flanking the CHEK2 variant c.349A>G among all the 70 variant carriers from the different populations. As presented in Figure 1A, a conserved variant haplotype of ≈1 Mb (chr22: 28,374,461–29,327,347) was found in most of the populations. Noteworthy, we grouped the carriers from France, Germany, Netherlands, and Belgium into a single Western/Central European group, as well as the ones from Denmark and Sweden into a Scandinavian group, due to population size limitations. Interestingly, the Scandinavian carriers revealed the largest conserved haplotype, whereas the UK carriers presented a considerably smaller core haplotype (≈0.4 Mb, chr22: 28,795,304–29,182,169), compared to the other populations. This smaller haplotype consists of 15 common SNPs featured in the OncoArray DNA chip, in addition to the rare CHEK2 variant c.349A>G (Figure 1B).
The median-joining phylogenetic tree of the largest identified haplotype (≈1.5 Mb, chr22: 28,170,166–29,620,564) flanking the CHEK2 variant c.349A>G was also consistent with the IBD analysis, and revealed the existence of two major haplotypes shared by most of the populations (Figure 1C).

2.3. Age Estimation of the CHEK2 Variant c.349A>G

As the haplotype analysis suggested a founder ancestor among the carriers of the CHEK2 variant c.349A>G, we sought to estimate its age to obtain further insights regarding its origin and dissemination. A summary of these results is shown in Tables S2 and S3.
According to DMLE+2.3, the common ancestor of all carriers of the variant originated between 92 (95% CI: 78–118) and 113 (95% CI: 97–145) generations ago, which, considering generations of 25 years, translates into between 2300 and 2825 years ago (Figure 2, Table S2). For comparison, we used a different statistical approach based on a maximum likelihood algorithm employed by ESTIAGE. This analysis provided slightly older range estimates, suggesting that the variant arose approximately 123 (95% CI: 104–146) to 125 (95% CI: 106–148) generations ago, that is, 3075–3125 years ago assuming the 25-year generation time (Table S2).
To enlighten the dispersal patterns of the CHEK2 variant c.349A>G, we also obtained age estimates for the different populations separately, using DMLE+2.3 (Table S3, Figures S1–S7). However, due to sample size limitations, and to be consistent with the haplotype and phylogeographic analysis, we estimated the variant age in the Western/Central European populations as a group (Belgium, France, Germany and Netherlands), as well in the Scandinavian populations (Denmark and Sweden).
According to the results, the variant appears to have arisen first in the Western/Central region, between 81 (95% CI: 65–104) and 100 (95% CI: 81–132) generations ago, that is, between 2015 and 2500 years ago, assuming a 25-year generation time. Later, dispersed through Spain and Portugal around 61–73 and 53–61 generations ago, respectively, corresponding to the variant dating approximately 1525–1825 years in Spain and 1325–1525 years in Portugal. Slightly younger age estimates were obtained for the UK and Scandinavian carriers, suggesting a common ancestor dating 33 (95% CI: 27–44) to 54 (95% CI: 43–71) generations ago, i.e., 825–1350 years ago, for the first, and dating 42 (95% CI: 31–59) to 49 (95% CI: 38–70) generations ago for the latter, which equates roughly to 1050–1225 years ago.
Lastly, DMLE+2.3 estimates suggest that the CHEK2 variant c.349A>G was introduced more recently to the Australian and U.S. populations. The results revealed a common ancestor dating between 18 (95% CI: 13–24) and 27 (95% CI: 21–38) generations ago among the Australian carriers and dating between 16 (14–21) and 23 (20–29) generations ago among the US. carriers. Therefore, the common ancestor of those two populations arose approximately between 450 and 675 years ago, and between 400 and 575 years ago, respectively (Figure 3).

2.4. Haplotype Analysis Using Microsatellites

To further extend the haplotype analysis to additional variant carriers from IPO-Porto, five informative microsatellites markers were analysed on 14 probands with history of prostate, breast, gastric, and lung cancer, and on the 18 additional family members available.
Consistent with the high-density SNPs haplotype findings, the microsatellite analysis also identified a common haplotype of different lengths among all carriers of the variant (Table 1). All five informative families with the c.349A>G variant shared a common haplotype between markers D22S689 and D22S275, spanning a conserved region of approximately of ≈282 Kb. The same haplotype was compatible with the observed genotypes of the nine remaining probands for which the haplotype phase could not be explored, due to the lack of additional family members. The existence of a core haplotype shared among all carriers of the variant, independently of the cancer type, matching the conserved region previously identified in the high-density SNP analysis, strongly corroborates a founder effect in the CHEK2 variant c.349A>G.

3. Discussion

The CHEK2 gene plays a key role in DNA damage response [18], and although several germline variants have been associated with increased cancer risk, particularly in breast cancer [22,29], the mutational spectra, as observed in other cancer risk genes (e.g., BRCA1 and BRCA2 genes [30,31]), varies widely among different populations. For instance, the CHEK2 variant c.1100delC, which has been shown to increase breast cancer risk by 2-fold [29,32], is frequently found in northern European populations, but is rare in southern European populations [33].
The CHEK2 variant c.349A>G was initially reported in two BRCA1/2-negative familial BrCa patients, but no clear association was found with the disease at the time [34]. More recently, in a large-scale case–control study this variant was associated with an increased risk of BrCa (OR 2.26), but not PrCa [22]. The pathogenic nature of the CHEK2 variant c.349A>G has been supported by both functional and bioinformatic approaches, which suggested that this variant affects the forkhead-associated (FHA) domain of CHEK2, resulting in lack of phosphorylation and oligomerisation, leading to reduced CHEK2 kinase activity and, ultimately, loss of DNA damage response [26,35,36,37].
To further increase our understanding of the contribution of the CHEK2 variant c.349A>G, which is, to date, the only recurrent “likely pathogenic” variant in CHEK2 gene reported in the Portuguese population [26], we completed the genotyping of a series of 462 cases with criteria for early-onset and/or hereditary PrCa. The CHEK2 variant c.349A>G was more frequent in Portuguese PrCa patients (n = 5) compared to controls (n = 1), with an odds-ratio suggesting a borderline association with the disease. We sought to validate these findings with the large multicentre case–control PRACTICAL consortium, which comprised 55,162 PrCa cases and 36,147 controls from 53 worldwide studies. The CHEK2 variant c.349A>G was found in 52 PrCa cases and 18 controls of the PRACTICAL study, providing clear evidence of its association with increased risk for PrCa. A 2- to 3-fold increased PrCa risk has also been linked with other two well-studied CHEK2 founder variants, p.I157T and c.1100delC, reinforcing the importance of CHEK2 as a moderate-penetrance PrCa susceptibility gene [21]. A similar modest increased risk has also been reported for men harbouring pathogenic variants in other moderate-penetrance cancer genes, such as ATM [38], while a higher risk (up to 8-fold) is described for carriers of alterations in high-penetrance cancer-predisposing genes, such as those associated with hereditary breast and ovarian cancer syndrome (e.g., BRCA1 and, particularly, BRCA2) [39,40]. Noteworthy, a few founder variants prevalent in more genetically homogenous populations, such as the HOXB13 G84E variant in Nordic populations, have been strongly associated with high risk (OR, 3.4) of PrCa [41].
Another key aspect revealed by these results is the widespread distribution of this variant, which was found in carriers from 11 different countries, namely Australia, Belgium, Denmark, France, Germany, Netherlands, Portugal, Spain, Sweden, the UK, and U.S. The recurrence of the CHEK2 variant c.349A>G in, apparently, unrelated carriers from diverse populations could be due to independent origin or carriers might share a common ancestor. We addressed this question by performing haplotype analysis using high-density SNP data for all carriers available from the PRACTICAL dataset. The conserved IBD haplotype flanking the CHEK2 variant c.349A>G in all carriers highly indicates a single common founder. Moreover, the haplotype reconstructed network, characterised with two major haplotypes shared by distinct populations, suggests early recombination events splitting the initial haplotype into distinct haplotypes in the founding population, most likely of Central European origin, which were then carried as it rapidly spread. Noteworthy, a large conserved haplotype was identified among all Scandinavian carriers, suggesting some degree of isolation after the introduction of the variant into the population, whereas the UK carriers presented the smallest conserved haplotype, most likely as result of this population history of extensive migration waves introducing distinct levels of genetic differentiation into the region [42].
The conserved haplotype allied with the age estimates obtained by the two independent mathematical approaches, the Bayesian and the likelihood-based methods, interestingly corroborated an ancient founder origin for this variant, similar to what has been suggested for the CHEK2 variant 1100delC [43,44]. Furthermore, the age estimates obtained by DMLE+2.3 for the distinct populations corroborate the likely origin of the variant in the Western/Central European region suggested by the haplotype phylogeographic distribution, approximately between 2015 and 2500 years ago. According to the results, it appears that the founder Western/Central population carrying distinct haplotypes, subsequently spread to the Iberian Peninsula, UK, and Scandinavia regions. The variant age estimates obtained for these populations are consistent with the European past population history, characterised by extensive movements in the first millennium, the so-called Migration Period or the Barbarian Invasions, which originated from the Central Europe region [45]. The haplotype analysis and age estimates results obtained for the American and Australian carriers are also in line of a European origin, most likely from British colonisers, who carried the European variant as they initially settled in those regions (Figure 3) [46,47]. Nevertheless, since these populations also shared the haplotype with other European populations that expanded to those continents, though to a lesser extent, we cannot rule out other possible origins.
The estimates of the variant age may oscillate, since it depends heavily on the population growth rates used, which historical evidence has shown to vary greatly over time. Therefore, in the present work, we tried to account for this caveat, by employing two different population growth rate estimates. However, caution is still needed when interpreting the age estimates, since the method relies on strong assumptions that cannot be entirely verified [48]. On the other hand, it is important to take into consideration that estimates based on historical population data may also contain errors that are difficult to account. Nevertheless, the age estimates obtained in the present study were consistent using different statistical approaches and are in line with the demographic history of the populations.
Taking into consideration that CHEK2 variants have been previously associated with other types of cancer, such as breast cancer [22], we performed an additional microsatellite haplotype analysis of all carriers available at IPO-Porto. The microsatellite analysis further corroborated the founder nature of the CHEK2 variant c.349A>G, by revealing the existence of a core haplotype shared among all 14 families carrying the variant, which is highly suggestive of a single mutational event rather than multiple independent events trough time. Furthermore, the fact that the variant was found in families with history of prostate, breast, gastric, and lung cancer supports CHEK2 as a multiorgan cancer susceptibility gene, as previously suggested [49]. In fact, multiorgan susceptibly is characteristic of other genes in the DNA damage-signalling pathway, as has been observed for BRCA1, BRCA2, PALB2, and ATM genes [22,30,33,50,51,52,53].

4. Materials and Methods

4.1. Portuguese Early-Onset/Familial PrCa Sample Collection

To clarify the possible association of the CHEK2 variant c.349A>G with risk of early-onset/familial PrCa, we extended the genetic screening performed in a previous study of 121 cases [26] to the complete series of 462 cases with early-onset and/or familial PrCa [27]. As control data, we used the frequency obtained for 710 controls, previously described [26].

4.2. Genotyping of the CHEK2 Variant c.349A>G

Genotyping of the CHEK2 variant c.349A>G was performed, in the 341 cases not previously screened, using the KASP technology genotyping (KBioscience, Herts, UK) with the KASP assay primers previously reported [26].

4.3. Statistical Analysis

To evaluate the cancer-associated risk of the CHEK2 variant c.349A>G between cases and heathy controls in the Portuguese series of early-onset/familial PrCa and in the samples from the PRACTICAL Consortium, we estimated the odds ratios (ORs) and 95% confidence intervals (CIs) between carriers and non-carriers for the different studies. All analyses were carried out using R.

4.4. Practical Sample Collection

For the high-density SNP haplotype analysis, we assembled genotype data obtained with the Infinium OncoArray-500K BeadChip (Illumina) for 93,746 participants from 54 studies, as part of the PRACTICAL consortium [4].
As this variant has only been reported in populations of European ancestral origin, we restricted the dataset to 55,162 PrCa cases and 36,147 controls of European ancestry from 53 studies. From the Portuguese early-onset/familial PrCa sample collection, 354 PrCa cases and 180 controls were included in the PRACTICAL final dataset. The detailed sample collection is described in Table S4. All studies were approved by the respective institutional review boards (38.010: Inherited predisposition to prostate cancer), and informed consent was obtained for all participants.

4.5. OncoArray Genotyping and Quality Control

The OncoArray BeadChip includes a genome-wide backbone of 230,000 SNPs tagging most common genetic variants, and a customised panel of 250,000 SNPs developed from previous GWAS and fine-mapping studies of multiple cancer types, including PrCa [54]. The quality control of the high-density SNP data from chromosome 22 was performed as previously described [4]. Briefly, the procedure involved excluding SNPs with genotyping call rates <95% and failing Hardy–Weinberg equilibrium, as well as checking for duplicates/first-degree relatives and population ancestry using PLINK software [55]. We obtained a final dataset of 91,309 individuals and 8674 SNPs (Table S4), from here on termed as the PRACTICAL dataset.

4.6. Identity-By-Descent Analysis and Phylogeographic Haplotype Reconstruction

We performed identity-by-descent (IBD) and haplotype analysis for all carriers of the CHEK2 variant c.349A>G in the PRACTICAL dataset. To obtain the population-matched control dataset for the downstream analyses, we corrected for population structure by pruning the PRACTICAL dataset to remove SNPs with excessive background linkage disequilibrium (pairwise genotypic correlation r2 > 0.4) within a 50-SNP sliding window in 10 SNP steps, and applied principal components analysis (PCA), with PLINK 1.9 and R software, to identify and exclude outliers (Figure S8). Then, we randomly reduced the control data from the variant-carrying populations to obtain a final dataset with 100 control individuals per population, except for the Netherlands (with only 65 controls).
High-density SNP data from chromosome 22 belonging to 1135 individuals (the 70 carriers and 1065 non-carriers of the variant) were phased using BEAGLE 4.1 [56]. The existence of shared haplotypes between carriers was assessed by IBD analysis using the Refined IBD algorithm [57]. The ibdtrim parameter was set to 25. The length of the shared haplotype was calculated by the distance between the two last shared markers flanking the CHEK2 variant c.349A>G.
The phylogeographic patterns of variant-carrying haplotypes was determined by network reconstruction based on the median joining algorithm [58] using PopART v1.7 [59].

4.7. Age Estimation of the CHEK2 Variant c.349A>G

The SNPs flanking the margins of the different haplotypes identified by the IBD analysis, where recombination events were likely to have occurred, were selected for the estimation of the variant age using two statistical methods, the DMLE+2.3 [60] and ESTIAGE [61] software. The first method was used to estimate the age of the variant in the different populations separately, as well on the combined data of all populations to obtain an overall age estimate, whereas the second computational approach was only used to estimate the overall combined age of the variant, due to limitations of sample size per population group (as low as n = 4).
DMLE+2.3 uses a Bayesian method to compare differences in linkage disequilibrium between the variant and flanking markers in variant carriers and non-carriers. The software employs a Markov chain Monte Carlo (MCMC) method to generate the marginal posterior probability density of the variant age based on the observed haplotypes in variant-carrying or normal chromosomes; map distances between markers and variant site; population growth rates and an estimated proportion of the variant-carrying chromosomes sampled.
The population growth rates were estimated as described before, using the formula: r ( g e n ) = ln ( P p P 0 ) g , where r(gen) represents the population growth rate per generation, Pp is the estimated present population size, P0 is the estimated size of the population at reference time, and g is the number of generations between these two time points (assuming 25 years per generation) [48,62]. Historical and current population size estimations were retrieved for all populations from Official Governmental demographic information (Table S5). In addition, since the formula mentioned above assumes a constant exponential population growth rate, which may not represent the history of the population, two rate estimates were employed to account for possible fluctuations. The overall rate (r(gen)1) was calculated using the oldest and the most recent population size estimates for each population, and the second, older rate (r(gen)2), was estimated using only the population sizes of each population until the beginning of last century.
The proportion of variant-carrying chromosomes sampled was estimated according to the frequency of the variant in each country (estimated based on the PRACTICAL dataset) and the number of existing males as of 2017 (Table S5).
The ESTIAGE implements a likelihood-based method to estimate the age of the most recent common ancestor (MRCA). We used allele frequencies obtained from control individuals and both stepwise and equal variant models with a variant rate of ≈2 × 10−8 at each marker [63].
The genetic distances (cM) used in both software were obtained from the 1000 Genomes Phase 3 data [64], and positions absent from this map were interpolated.

4.8. Microsatellite Analysis

To extend the haplotype analysis to the carriers of the recurrent CHEK2 variant c.349A>G that were not genotyped using the OncoArray DNA chip, we used five polymorphic microsatellite markers flanking the gene, namely D22S310, D22S689, D22S275, D22S1150, and D22S280. A total of 14 probands carrying the CHEK2 variant c.349A>G, which included an additional early-onset PrCa case not included in the initial PrCa series, and 18 family members were genotyped. Primer sequences (except for the D22S689 marker) were derived from the UCSC Genome Browser database (genome build 37) [65]. Primers for the D22S689 marker were designed using the online Primer-BLAST tool [66]. All markers were assayed by PCR using fluorescently end-labelled primers and PCR products were run on a 3500 Genetic Analyzer together with the fluorescence labelled DNA fragment size standard 600-LIZ (Thermo Fisher Scientific, Waltham, MA, USA). Haplotype construction was performed manually, based on the genotypes obtained from probands and family members.

5. Conclusions

Our results provide evidence that the c.349A>G variant in the CHEK2 tumour-suppressor gene is significantly associated with increased risk of PrCa. Moreover, haplotype analysis using both high-density SNP and microsatellite data, as well as variant age estimates, strongly support a founder origin for this variant instead of multiple independent occurrences. The identification of founder variants, such as the one here reported, may contribute for the development of more cost-efficient screening strategies and counselling of high-risk families.

Supplementary Materials

The following are available online at https://www.mdpi.com/2072-6694/12/11/3254/s1, Figure S1: Age estimation of the CHEK2 variant c.349A>G in the Western/Central Europe populations (France, Belgium, Germany, and Netherlands) using the DMLE 2.3 software, Figure S2: Age estimation of the CHEK2 variant c.349A>G in the Spanish carriers using the DMLE 2.3 software, Figure S3: Age estimation of the CHEK2 variant c.349A>G in the Portuguese carriers using the DMLE 2.3 software, Figure S4: Age estimation of the CHEK2 variant c.349A>G in the British carriers using the DMLE 2.3 software, Figure S5: Age estimation of the CHEK2 variant c.349A>G in the Scandinavian carriers (Denmark and Sweden) using the DMLE 2.3 software, Figure S6: Age estimation of the CHEK2 variant c.349A>G in the Western/Central Europe populations (France, Belgium, Germany, and Netherlands) using the DMLE 2.3 software, Figure S7: Age estimation of the CHEK2 variant c.349A>G in U.S. carriers using the DMLE 2.3 software, Figure S8: PCA plots of all CHEK2 variant c.349A>G carriers along with control individuals from the 11 variant-carrying populations (Australia, Belgium, Denmark, France, Germany, Netherlands, Portugal, Spain, Sweden, UK, and USA) and China, the outlier population for the PCA analysis, Table S1: Characterisation of the populations carrying the CHEK2 variant c.349A>G included in the PRACTICAL consortium, Table S2: Overall age estimates of the CHEK2 variant c.349A>G, Table S3: Age estimates of the CHEK2 variant c.349A>G in the different populations, Table S4: Characterisation of the studies and participants from PRACTICAL consortium, Table S5: Population information for population growth rates estimation. Supplementary Information: supplementary authors, additional funding and acknowledgments.

Author Contributions

Conception and design: A.B., P.P. and M.R.T.; analyses, A.B., P.P., M.P., A.P., M.C., M.P.S., C.S.; writing—original draft preparation, A.B., P.P. and M.R.T.; writing—revision of the manuscript, A.B., P.P., M.R.T., S.M., M.P., A.P., M.C., M.P.S., C.S., R.A.E., Z.K.-J., K.M., UKGPCS Collaborators, J.S., Y.W., N.P., J.B., APCB BioResource, H.G., D.E.N., B.G.N.,C.M.T., M.C.S., A.W., D.A., C.A.H., R.C.T., J.L.S., L.A.M., C.M.L.W., S.F.N., S.K., S.I.B., A.S.K., O.C., K.D.S., C.C., E.M.G., J.Y.P., S.A.I., C.M., R.J.H., B.S.R., A.V., The IMPACT Study Steering Committee and Collaborators, M.K., F.W., K.L.P., H.B., E.M.J., R.K., C.J.L., S.L.N., K.D.R., A.R., L.F.N., Canary PASS Investigators, D.L., N.U., F.C., M.G.-D., P.A.T., M.J.R., The Profile Study Steering Committee, The PRACTICAL Consortium; resources and data acquisition, S.M., R.A.E., Z.K.-J., K.M., UKGPCS Collaborators, J.S., Y.W., N.P., J.B., APCB BioResource, H.G., D.E.N., B.G.N.,C.M.T., M.C.S., A.W., D.A., C.A.H., R.C.T., J.L.S., L.A.M., C.M.L.W., S.F.N., S.K., S.I.B., A.S.K., O.C., K.D.S., C.C., E.M.G., J.Y.P., S.A.I., C.M., R.J.H., B.S.R., A.V., The IMPACT Study Steering Committee and Collaborators, M.K., F.W., K.L.P., H.B., E.M.J., R.K., C.J.L., S.L.N., K.D.R., A.R., L.F.N., Canary PASS Investigators, D.L., N.U., F.C., M.G.-D., P.A.T., M.J.R., The Profile Study Steering Committee, The PRACTICAL Consortium. All authors have read and agreed to the published version of the manuscript.

Funding

We thank the funding support from IPO-Porto Research Center (CI-IPOP-16-2012) and from Fundação para a Ciência e a Tecnologia (FCT; PEst-OE/SAU/ UI0776/2014 and PTDC/DTP-PIC/1308/2014). The following authors were awarded with grants from FCT: PPa (UID/DTP/00776/2013/POCI-01-0145-FEDER-006868), SM (SFRH/BD/71397/2010) and PPi (SFRH/BD/73719/2010). The PRACTICAL consortium (http://practical.icr.ac.uk/) was supported by the Canadian Institutes of Health Research, European Commission’s Seventh Framework Programme grant agreement n° 223175 (HEALTH-F2-2009-223175), Cancer Research UK Grants C5047/A7357, C1287/A10118, C1287/A16563, C5047/A3354, C5047/A10692, C16913/A6135, and The National Institute of Health (NIH) Cancer Post-Cancer GWAS initiative grant: No. 1 U19 CA 148537-01 (the GAME-ON initiative). Genotyping of the OncoArray was funded by the US National Institutes of Health (NIH) [U19 CA 148537 for ELucidating Loci Involved in Prostate cancer SuscEptibility (ELLIPSE) project and X01HG007492 to the Center for Inherited Disease Research (CIDR) under contract number HHSN268201200008I] and by Cancer Research UK grant A8197/A16565. Additional analytic support was provided by NIH NCI U01 CA188392 (PI: Schumacher). We would also like to thank the following for funding support: The Institute of Cancer Research and The Everyman Campaign, The Prostate Cancer Research Foundation, Prostate Research Campaign UK (now PCUK), The Orchid Cancer Appeal, Rosetrees Trust, The National Cancer Research Network UK, The National Cancer Research Institute (NCRI) UK. We are grateful for support of NIHR funding to the NIHR Biomedical Research Centre at The Institute of Cancer Research and The Royal Marsden NHS Foundation Trust, NIHR funding to the Manchester Biomedical Research Centre and the Manchester Academic Health Sciences Centre.

Acknowledgments

We wish to thank all the patients and their relatives who took part in this study. We would also like to thank Emmanuelle Genin for kindly providing the source code and documentation for the ESTIAGE software.

Conflicts of Interest

The authors declare no conflict of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript, or in the decision to publish the results.

References

  1. Bray, F.; Ferlay, J.; Soerjomataram, I.; Siegel, R.L.; Torre, L.A.; Jemal, A. Global cancer statistics 2018: GLOBOCAN estimates of incidence and mortality worldwide for 36 cancers in 185 countries. CA Cancer J. Clin. 2018, 68, 394–424. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  2. Bashir, M.N. Epidemiology of prostate cancer. Asian Pac. J. Cancer Prev. 2015, 16, 5137–5141. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  3. Al Olama, A.A.; Kote-Jarai, Z.; Schumacher, F.R.; Wiklund, F.; Berndt, S.I.; Benlloch, S.; Giles, G.G.; Severi, G.; Neal, D.E.; Hamdy, F.C.; et al. A meta-analysis of genome-wide association studies to identify prostate cancer susceptibility loci associated with aggressive and non-aggressive disease. Hum. Mol. Genet. 2013, 22, 408–415. [Google Scholar] [CrossRef] [Green Version]
  4. Schumacher, F.R.; Al Olama, A.A.; Berndt, S.I.; Benlloch, S.; Ahmed, M.; Saunders, E.J.; Dadaev, T.; Leongamornlert, D.; Anokian, E.; Cieza-Borrella, C.; et al. Association analyses of more than 140,000 men identify 63 new prostate cancer susceptibility loci. Nat. Genet. 2018, 50, 928–936. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  5. Al Olama, A.A.; Kote-Jarai, Z.; Giles, G.G.; Guy, M.; Morrison, J.; Severi, G.; Leongamornlert, D.A.; Tymrakiewicz, M.; Jhavar, S.; Saunders, E.; et al. Multiple loci on 8q24 associated with prostate cancer susceptibility. Nat. Genet. 2009, 41, 1058–1060. [Google Scholar] [CrossRef] [PubMed]
  6. Eeles, R.A.; Kote-Jarai, Z.; Al Olama, A.A.; Giles, G.G.; Guy, M.; Severi, G.; Muir, K.; Hopper, J.L.; Henderson, B.E.; Haiman, C.A.; et al. Identification of seven new prostate cancer susceptibility loci through a genome-wide association study. Nat. Genet. 2009, 41, 1116–1121. [Google Scholar] [CrossRef]
  7. Eeles, R.; Goh, C.; Castro, E.; Bancroft, E.; Guy, M.; Al Olama, A.A.; Easton, D.; Kote-Jarai, Z. The genetic epidemiology of prostate cancer and its clinical implications. Nat. Rev. Urol. 2014, 11, 18–31. [Google Scholar] [CrossRef]
  8. Al Olama, A.A.; Kote-Jarai, Z.; Berndt, S.I.; Conti, D.V.; Schumacher, F.; Han, Y.; Benlloch, S.; Hazelett, D.J.; Wang, Z.; Saunders, E.; et al. A meta-analysis of 87,040 individuals identifies 23 new susceptibility loci for prostate cancer. Nat. Genet. 2014, 46, 1103–1109. [Google Scholar] [CrossRef] [Green Version]
  9. Brechka, H.; Bhanvadia, R.R.; VanOpstall, C.; Griend, D.J.V. HOXB13 mutations and binding partners in prostate development and cancer: Function, clinical significance, and future directions. Genes Dis. 2017, 4, 75–87. [Google Scholar] [CrossRef]
  10. Ewing, C.M.; Ray, A.M.; Lange, E.M.; Zuhlke, K.A.; Robbins, C.M.; Tembe, W.D.; Wiley, K.E.; Isaacs, S.D.; Johng, D.; Wang, Y.; et al. Germline mutations in HOXB13 and prostate-cancer risk. N. Engl. J. Med. 2012, 366, 141–149. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  11. Kote-Jarai, Z.; Mikropoulos, C.; Leongamornlert, D.A.; Dadaev, T.; Tymrakiewicz, M.; Saunders, E.J.; Jones, M.; Jugurnauth-Little, S.; Govindasami, K.; Guy, M.; et al. Prevalence of the HOXB13 G84E germline mutation in British men and correlation with prostate cancer risk, tumour characteristics and clinical outcomes. Ann. Oncol. 2015, 26, 756–761. [Google Scholar] [CrossRef]
  12. Breyer, J.P.; Avritt, T.G.; McReynolds, K.M.; Dupont, W.D.; Smith, J.R. Confirmation of the HOXB13 G84E germline mutation in familial prostate cancer. Cancer Epidemiol. Biomark. Prev. 2012, 21, 1348–1353. [Google Scholar] [CrossRef] [Green Version]
  13. Castro, E.; Eeles, R. The role of BRCA1 and BRCA2 in prostate cancer. Asian J. Androl. 2012, 14, 409–414. [Google Scholar] [CrossRef] [Green Version]
  14. Maia, S.; Cardoso, M.; Paulo, P.; Pinheiro, M.; Pinto, P.; Santos, C.; Pinto, C.; Peixoto, A.; Henrique, R.; Teixeira, M.R. The role of germline mutations in the BRCA1/2 and mismatch repair genes in men ascertained for early-onset and/or familial prostate cancer. Fam. Cancer 2016, 15, 111–121. [Google Scholar] [CrossRef]
  15. Petrovics, G.; Price, D.K.; Lou, H.; Chen, Y.; Garland, L.; Bass, S.; Jones, K.; Kohaar, I.; Ali, A.; Ravindranath, L.; et al. Increased frequency of germline BRCA2 mutations associates with prostate cancer metastasis in a racially diverse patient population. Prostate Cancer Prostatic Dis. 2019, 22, 406–410. [Google Scholar] [CrossRef]
  16. Grindedal, E.M.; Møller, P.; Eeles, R.; Stormorken, A.T.; Bowitz-Lothe, I.M.; Landrø, S.M.; Clark, N.; Kvåle, R.; Shanley, S.; Mæhle, L. Germline mutations in mismatch repair genes associated with prostate cancer. Cancer Epidemiol. Biomark. Prev. 2009, 18, 2460–2467. [Google Scholar] [CrossRef] [Green Version]
  17. Guedes, L.B.; Antonarakis, E.S.; Schweizer, M.T.; Mirkheshti, N.; Almutairi, F.; Park, J.C.; Glavaris, S.; Hicks, J.; Eisenberger, M.A.; De Marzo, A.M.; et al. MSH2 loss in primary prostate cancer. Clin. Cancer Res. 2017, 23, 6863–6874. [Google Scholar] [CrossRef] [Green Version]
  18. Seppälä, E.H.; Ikonen, T.; Mononen, N.; Autio, V.; Rökman, A.; Matikainen, M.P.; Tammela, T.L.J.; Schleutker, J. CHEK2 variants associate with hereditary prostate cancer. Br. J. Cancer 2003, 89, 1966–1970. [Google Scholar] [CrossRef] [Green Version]
  19. Cybulski, C.; Huzarski, T.; Górski, B.; Masojć, B.; Mierzejewski, M.; Dȩbniak, T.; Gliniewicz, B.; Matyjasik, J.; Złowocka, E.; Kurzawski, G.; et al. A novel founder CHEK2 mutation is associated with increased prostate cancer risk. Cancer Res. 2004, 64, 2677–2679. [Google Scholar] [CrossRef] [Green Version]
  20. Ertych, N.; Stolz, A.; Valerius, O.; Braus, G.H.; Bastians, O. CHK2-BRCA1 tumor-suppressor axis restrains oncogenic Aurora-A kinase to ensure proper mitotic microtubule assembly. Proc. Natl. Acad. Sci. USA 2016, 113, 1817–1822. [Google Scholar] [CrossRef] [Green Version]
  21. Wang, Y.; Dai, B.; Ye, D. CHEK2 mutation and risk of prostate cancer: A systematic review and meta-analysis. Int. J. Clin. Exp. Med. 2015, 8, 15708–15715. [Google Scholar]
  22. Southey, M.C.C.; Goldgar, D.E.E.; Winqvist, R.; Pylkäs, K.; Couch, F.; Tischkowitz, M.; Foulkes, W.D.D.; Dennis, J.; Michailidou, K.; van Rensburg, E.J.J.; et al. PALB2, CHEK2 and ATM rare variants and cancer risk: Data from COGS. J. Med. Genet. 2016, 53, 800–811. [Google Scholar] [CrossRef] [Green Version]
  23. Xiang, H.P.; Geng, X.P.; Ge, W.W.; Li, H. Meta-analysis of CHEK2 1100delC variant and colorectal cancer susceptibility. Eur. J. Cancer 2011, 47, 2546–2551. [Google Scholar] [CrossRef] [PubMed]
  24. Aldubayan, S.H.; Pyle, L.C.; Gamulin, M.; Kulis, T.; Moore, N.D.; Taylor-Weiner, A.; Hamid, A.A.; Reardon, B.; Wubbenhorst, B.; Godse, R.; et al. Association of inherited pathogenic variants in checkpoint kinase 2 (CHEK2) with susceptibility to testicular germ cell tumors. JAMA Oncol. 2019, 5, 514–522. [Google Scholar] [CrossRef]
  25. Shaag, A.; Walsh, T.; Renbaum, P.; Kirchhoff, T.; Nafa, K.; Shiovitz, S.; Mandell, J.B.; Welcsh, P.; Lee, M.K.; Ellis, N.; et al. Functional and genomic approaches reveal an ancient CHEK2 allele associated with breast cancer in the Ashkenazi Jewish population. Hum. Mol. Genet. 2005, 14, 555–563. [Google Scholar] [CrossRef] [Green Version]
  26. Paulo, P.; Maia, S.; Pinto, C.; Pinto, P.; Monteiro, A.; Peixoto, A.; Teixeira, M.R. Targeted next generation sequencing identifies functionally deleterious germline mutations in novel genes in early-onset/familial prostate cancer. PLoS Genet. 2018, 14, e1007355. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  27. Maia, S.; Cardoso, M.; Pinto, P.; Pinheiro, M.; Santos, C.; Peixoto, A.; Bento, M.J.; Oliveira, J.; Henrique, R.; Jerónimo, C.; et al. Identification of two novel HOXB13 germline mutations in Portuguese prostate cancer patients. PLoS ONE 2015, 10, e0132728. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  28. Eccles, D. Worldmap Wdb Combined. Available online: http://user.interface.org.nz/~gringer/hacking/wdb2svg.txt (accessed on 6 January 2020).
  29. Easton, D. CHEK2*1100delC and susceptibility to breast cancer: A collaborative analysis involving 10,860 breast cancer cases and 9,065 controls from 10 studies. Am. J. Hum. Genet. 2004, 74, 1175–1182. [Google Scholar] [CrossRef] [Green Version]
  30. Peixoto, A.; Santos, C.; Pinto, P.; Pinheiro, M.; Rocha, P.; Pinto, C.; Bizarro, S.; Veiga, I.; Principe, A.S.; Maia, S.; et al. The role of targeted BRCA1/BRCA2 mutation analysis in hereditary breast/ovarian cancer families of Portuguese ancestry. Clin. Genet. 2015, 88, 41–48. [Google Scholar] [CrossRef]
  31. Rebbeck, T.R.; Friebel, T.M.; Friedman, E.; Hamann, U.; Huo, D.; Kwong, A.; Olah, E.; Olopade, O.I.; Solano, A.R.; Teo, S.H.; et al. Mutational spectrum in a worldwide study of 29,700 families with BRCA1 or BRCA2 mutations. Hum. Mutat. 2018, 39, 593–620. [Google Scholar] [CrossRef] [Green Version]
  32. Weischer, M.; Bojesen, S.E.; Ellervik, C.; Tybjærg-Hansen, A.; Nordestgaard, B.G. CHEK2*1100delC genotyping for clinical assessment of breast cancer risk: Meta-analyses of 26,000 patient cases and 27,000 controls. J. Clin. Oncol. 2008, 26, 542–548. [Google Scholar] [CrossRef] [Green Version]
  33. Apostolou, P.; Fostira, F. Hereditary breast cancer: The Era of new susceptibility genes. Biomed. Res. Int. 2013, 2013, 11. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  34. Schutte, M.; Seal, S.; Barfoot, R.; Meijers-Heijboer, H.; Wasielewski, M.; Evans, D.G.; Eccles, D.; Meijers, C.; Lohman, F.; Klijn, J.; et al. Variants in CHEK2 other than 1100delC do not make a major contribution to breast cancer susceptibility. Am. J. Hum. Genet. 2003, 72, 1023–1028. [Google Scholar] [CrossRef] [Green Version]
  35. Li, J.; Williams, B.L.; Haire, L.F.; Goldberg, M.; Wilker, E.; Durocher, D.; Yaffe, M.B.; Jackson, S.P.; Smerdon, S.J. Structural and functional versatility of the FHA domain in DNA-damage signaling by the tumor suppressor kinase Chk2. Mol. Cell 2002, 9, 1045–1054. [Google Scholar] [CrossRef]
  36. Sodha, N.; Mantoni, T.S.; Tavtigian, S.V.; Eeles, R.; Garrett, M.D. Rare germ line CHEK2 variants identified in breast cancer families encode proteins that show impaired activation. Cancer Res. 2006, 66, 8966–8970. [Google Scholar] [CrossRef] [Green Version]
  37. Wu, X.; Dong, X.; Liu, W.; Chen, J. Characterization of CHEK2 mutations in prostate cancer. Hum. Mutat. 2006, 27, 742–747. [Google Scholar] [CrossRef]
  38. Angèle, S.; Falconer, A.; Edwards, S.M.; Dörk, T.; Bremer, M.; Moullan, N.; Chapot, B.; Muir, K.; Houlston, R.; Norman, A.R.; et al. ATM polymorphisms as risk factors for prostate cancer development. Br. J. Cancer 2004, 91, 783–787. [Google Scholar] [CrossRef] [PubMed]
  39. Leongamornlert, D.; Mahmud, N.; Tymrakiewicz, M.; Saunders, E.; Dadaev, T.; Castro, E.; Goh, C.; Govindasami, K.; Guy, M.; O’Brien, L.; et al. Germline BRCA1 mutations increase prostate cancer risk. Br. J. Cancer 2012, 106, 1697–1701. [Google Scholar] [CrossRef] [Green Version]
  40. Kote-Jarai, Z.; Leongamornlert, D.; Saunders, E.; Tymrakiewicz, M.; Castro, E.; Mahmud, N.; Guy, M.; Edwards, S.; O’Brien, L.; Sawyer, E.; et al. BRCA2 is a moderate penetrance gene contributing to young-onset prostate cancer: Implications for genetic testing in prostate cancer patients. Br. J. Cancer 2011, 105, 1230–1234. [Google Scholar] [CrossRef]
  41. Karlsson, R.; Aly, M.; Clements, M.; Zheng, L.; Adolfsson, J.; Xu, J.; Grönberg, H.; Wiklund, F. A population-based assessment of germline HOXB13 G84E mutation and prostate cancer risk. Eur. Urol. 2014, 65, 169–176. [Google Scholar] [CrossRef] [Green Version]
  42. Leslie, S.; Winney, B.; Hellenthal, G.; Davison, D.; Boumertit, A.; Day, T.; Hutnik, K.; Royrvik, E.C.; Cunliffe, B.; Lawson, D.J.; et al. The fine-scale genetic structure of the British population. Nature 2015, 519, 309–314. [Google Scholar] [CrossRef] [Green Version]
  43. Meijers-Heijboer, H.; Van den Ouweland, A.; Klijn, J.; Wasielewski, M.; De Shoo, A.; Oldenburg, R.; Hollestelle, A.; Houben, M.; Crepin, E.; Van Veghel-Plandsoen, M.; et al. Low-penetrance susceptibility to breast cancer due to CHEK2*1100delC in noncarriers of BRCA1 or BRCA2 mutations: The CHEK2-breast cancer consortium. Nat. Genet. 2002, 31, 55–59. [Google Scholar] [CrossRef]
  44. Vahteristo, P.; Bartkova, J.; Eerola, H.; Syrjäkoski, K.; Ojala, S.; Kilpivaara, O.; Tamminen, A.; Kononen, J.; Aittomäki, K.; Heikkilä, P.; et al. A CHEK2 genetic variant contributing to a substantial fraction of familial breast cancer. Am. J. Hum. Genet. 2002, 71, 432–438. [Google Scholar] [CrossRef] [Green Version]
  45. Heather, P. Empires and Barbarians: Migration, Development, and the Birth of Europe; Pan Macmillan: London, UK, 2010; pp. 1–734. [Google Scholar]
  46. Bryc, K.; Durand, E.Y.; Macpherson, J.M.; Reich, D.; Mountain, J.L. The genetic ancestry of african americans, latinos, and european Americans across the United States. Am. J. Hum. Genet. 2015, 96, 37–53. [Google Scholar] [CrossRef] [Green Version]
  47. McEvoy, B.P.; Lind, J.M.; Wang, E.T.; Moyzis, R.K.; Visscher, P.M.; Van Holst Pellekaan, S.M.; Wilton, A.N. Whole-genome genetic diversity in a sample of Australians with deep aboriginal ancestry. Am. J. Hum. Genet. 2010, 87, 297–305. [Google Scholar] [CrossRef] [Green Version]
  48. Greenwood, C.M.T.; Sun, S.; Veenstra, J.; Hamel, N.; Niell, B.; Gruber, S.; Foulkes, W.D. How old is this mutation?—A study of three Ashkenazi Jewish founder mutations. BMC Genet. 2010, 11, 39. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  49. Cybulski, C.; Górski, B.; Huzarski, T.; Masojć, B.; Mierzejewski, M.; Dȩbniak, T.; Teodorczyk, U.; Byrski, T.; Gronwald, J.; Matyjasik, J.; et al. CHEK2 is a multiorgan cancer susceptibility gene. Am. J. Hum. Genet. 2004, 75, 1131–1135. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  50. Pinto, P.; Paulo, P.; Santos, C.; Rocha, P.; Pinto, C.; Veiga, I.; Pinheiro, M.; Peixoto, A.; Teixeira, M.R. Implementation of next-generation sequencing for molecular diagnosis of hereditary breast and ovarian cancer highlights its genetic heterogeneity. Breast Cancer Res. Treat. 2016, 159, 245–256. [Google Scholar] [CrossRef]
  51. Roy, R.; Chun, J.; Powell, S.N. BRCA1 and BRCA2: Different roles in a common pathway of genome protection. Nat. Rev. Cancer 2012, 12, 68–78. [Google Scholar] [CrossRef] [Green Version]
  52. Susswein, L.R.; Marshall, M.L.; Nusbaum, R.; Vogel Postula, K.J.; Weissman, S.M.; Yackowski, L.; Vaccari, E.M.; Bissonnette, J.; Booker, J.K.; Cremona, M.L.; et al. Pathogenic and likely pathogenic variant prevalence among the first 10,000 patients referred for next-generation cancer panel testing. Genet. Med. 2016, 18, 823–832. [Google Scholar] [CrossRef] [Green Version]
  53. Pinto, P.; Peixoto, A.; Santos, C.; Rocha, P.; Pinto, C.; Pinheiro, M.; Leça, L.; Martins, A.T.; Ferreira, V.; Bartosch, C.; et al. Analysis of founder mutations in rare tumors associated with hereditary breast/ovarian cancer reveals a novel association of BRCA2 mutations with ampulla of vater carcinomas. PLoS ONE 2016, 11, e0161438. [Google Scholar] [CrossRef]
  54. Amos, C.I.; Dennis, J.; Wang, Z.; Byun, J.; Schumacher, F.R.; Gayther, S.A.; Casey, G.; Hunter, D.J.; Sellers, T.A.; Gruber, S.B.; et al. The oncoarray consortium: A network for understanding the genetic architecture of common cancers. Cancer Epidemiol. Biomark. Prev. 2017, 26, 126–135. [Google Scholar] [CrossRef] [Green Version]
  55. Purcell, S.; Neale, B.; Todd-Brown, K.; Thomas, L.; Ferreira, M.A.R.; Bender, D.; Maller, J.; Sklar, P.; De Bakker, P.I.W.; Daly, M.J.; et al. PLINK: A tool set for whole-genome association and population-based linkage analyses. Am. J. Hum. Genet. 2007, 81, 559–575. [Google Scholar] [CrossRef] [Green Version]
  56. Browning, S.R.; Browning, B.L. Rapid and accurate haplotype phasing and missing-data inference for whole-genome association studies by use of localized haplotype clustering. Am. J. Hum. Genet. 2007, 81, 1084–1097. [Google Scholar] [CrossRef] [Green Version]
  57. Browning, B.L.; Browning, S.R. Improving the accuracy and efficiency of identity-by-descent detection in population data. Genetics 2013, 194, 459–471. [Google Scholar] [CrossRef] [Green Version]
  58. Bandelt, H.J.; Forster, P.; Röhl, A. Median-joining networks for inferring intraspecific phylogenies. Mol. Biol. Evol. 1999, 16, 37–48. [Google Scholar] [CrossRef] [PubMed]
  59. Leigh, J.W.; Bryant, D. POPART: Full-feature software for haplotype network construction. Methods Ecol. Evol. 2015, 6, 1110–1116. [Google Scholar] [CrossRef]
  60. Reeve, J.P.; Rannala, B. DMLE+: Bayesian linkage disequilibrium gene mapping. Bioinformatics 2002, 18, 894–895. [Google Scholar] [CrossRef] [Green Version]
  61. Genin, E.; Tullio-Pelet, A.; Begeot, F.; Lyonnet, S.; Abel, L. Estimating the age of rare disease mutations: The example of Triple-A syndrome. J. Med. Genet. 2004, 41, 445–449. [Google Scholar] [CrossRef] [Green Version]
  62. Pin, E.; Pastrello, C.; Tricarico, R.; Papi, L.; Quaia, M.; Fornasarig, M.; Carnevali, I.; Oliani, C.; Fornasin, A.; Agostini, M.; et al. MUTYH c.933+3A>C, associated with a severely impaired gene expression, is the first Italian founder mutation in MUTYH-Associated Polyposis. Int. J. Cancer 2013, 132, 1060–1069. [Google Scholar] [CrossRef]
  63. Nachman, M.W.; Crowell, S.L. Estimate of the mutation rate per nucleotide in humans. Genetics 2000, 156, 297–304. [Google Scholar]
  64. Consortium, T.G.P.; Auton, A.; Abecasis, G.R.; Altshuler, D.M.; Durbin, R.M.; Abecasis, G.R.; Bentley, D.R.; Chakravarti, A.; Clark, A.G.; Donnelly, P.; et al. A global reference for human genetic variation. Nature 2015, 526, 68. [Google Scholar] [CrossRef] [Green Version]
  65. Williams, J.E.; Zaremba, E.; Jackson, B.; Nikuni, T.; Griffin, A. Dynamical instability of a condensate induced by a rotating thermal gas. Phys. Rev. Lett. 2002, 88, 704011–704014. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  66. Ye, J.; Coulouris, G.; Zaretskaya, I.; Cutcutache, I.; Rozen, S.; Madden, T.L. Primer-BLAST: A tool to design target-specific primers for polymerase chain reaction. BMC Bioinform. 2012, 13, 134. [Google Scholar] [CrossRef] [Green Version]
Figure 1. Shared identity-by-descent (IBD) haplotype between all carriers of the CHEK2 variant c.349A>G. (A). Shared IBD segments by populations: Australia, Portugal, Scandinavia (Denmark and Sweden), Spain, Western/Central Europe populations (Belgium, France, Germany and Netherlands), UK, and U.S. (B) Characterisation of IBD core segment shared by all carriers (≈0.4 Mb in detail, represented in light orange in Figure 1A). (C) Median joining phylogenetic tree of the largest shared haplotype region flanking the CHEK2 variant c.349A>G between all carriers (indicated in light grey in Figure 1A).
Figure 1. Shared identity-by-descent (IBD) haplotype between all carriers of the CHEK2 variant c.349A>G. (A). Shared IBD segments by populations: Australia, Portugal, Scandinavia (Denmark and Sweden), Spain, Western/Central Europe populations (Belgium, France, Germany and Netherlands), UK, and U.S. (B) Characterisation of IBD core segment shared by all carriers (≈0.4 Mb in detail, represented in light orange in Figure 1A). (C) Median joining phylogenetic tree of the largest shared haplotype region flanking the CHEK2 variant c.349A>G between all carriers (indicated in light grey in Figure 1A).
Cancers 12 03254 g001
Figure 2. Overall age estimation of the CHEK2 variant c.349A>G using the DMLE+2.3 software, considering the 70 carriers. Distribution of the posterior probability for the age estimation, assuming 0.00028 as the proportion of variant-carrying chromosomes and the two population growth rates 0.10 and 0.13.
Figure 2. Overall age estimation of the CHEK2 variant c.349A>G using the DMLE+2.3 software, considering the 70 carriers. Distribution of the posterior probability for the age estimation, assuming 0.00028 as the proportion of variant-carrying chromosomes and the two population growth rates 0.10 and 0.13.
Cancers 12 03254 g002
Figure 3. Possible geographic dispersal scenario inferred from present data of the populations carrying CHEK2 variant c.349A>G, with the average age estimates obtained by DMLE+2.3, using the two population growth rates. Background map adapted from the map outline published under the terms of the GNU Free Documentation License, Version 1.2 [28].
Figure 3. Possible geographic dispersal scenario inferred from present data of the populations carrying CHEK2 variant c.349A>G, with the average age estimates obtained by DMLE+2.3, using the two population growth rates. Background map adapted from the map outline published under the terms of the GNU Free Documentation License, Version 1.2 [28].
Cancers 12 03254 g003
Table 1. Microsatellite marker haplotypes of the 14 families carrying the CHEK2 variant c.349A>G.
Table 1. Microsatellite marker haplotypes of the 14 families carrying the CHEK2 variant c.349A>G.
Microsatellite Markers
Family D22S310D22S689CHEK2D22S275 (Intragenic)D22S1150D22S280
1 *181294_159216211
2 *183294_159220211
3 *181294_159216205/211
4 *179294_159216/220205
5 *183/187290/294_159/163218/220205/211
6185/189294_159/161216/220205
7187294_159216211
8185294_159216211
9177/185294/298_159/161220209
10179/187294_159/167218/220205/209
11177/189294_159216205
12185294_159216205/209
13185294_159220209
14177/181294/302_159216/226205/213
* Included in the high-density SNP haplotype analysis performed with the PRACTICAL samples. The shared core haplotype associated with the variant is represented in bold.
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Brandão, A.; Paulo, P.; Maia, S.; Pinheiro, M.; Peixoto, A.; Cardoso, M.; Silva, M.P.; Santos, C.; Eeles, R.A.; Kote-Jarai, Z.; et al. The CHEK2 Variant C.349A>G Is Associated with Prostate Cancer Risk and Carriers Share a Common Ancestor. Cancers 2020, 12, 3254. https://doi.org/10.3390/cancers12113254

AMA Style

Brandão A, Paulo P, Maia S, Pinheiro M, Peixoto A, Cardoso M, Silva MP, Santos C, Eeles RA, Kote-Jarai Z, et al. The CHEK2 Variant C.349A>G Is Associated with Prostate Cancer Risk and Carriers Share a Common Ancestor. Cancers. 2020; 12(11):3254. https://doi.org/10.3390/cancers12113254

Chicago/Turabian Style

Brandão, Andreia, Paula Paulo, Sofia Maia, Manuela Pinheiro, Ana Peixoto, Marta Cardoso, Maria P. Silva, Catarina Santos, Rosalind A. Eeles, Zsofia Kote-Jarai, and et al. 2020. "The CHEK2 Variant C.349A>G Is Associated with Prostate Cancer Risk and Carriers Share a Common Ancestor" Cancers 12, no. 11: 3254. https://doi.org/10.3390/cancers12113254

APA Style

Brandão, A., Paulo, P., Maia, S., Pinheiro, M., Peixoto, A., Cardoso, M., Silva, M. P., Santos, C., Eeles, R. A., Kote-Jarai, Z., Muir, K., UKGPCS Collaborators, Schleutker, J., Wang, Y., Pashayan, N., Batra, J., APCB BioResource, Grönberg, H., Neal, D. E., ... Teixeira, M. R. (2020). The CHEK2 Variant C.349A>G Is Associated with Prostate Cancer Risk and Carriers Share a Common Ancestor. Cancers, 12(11), 3254. https://doi.org/10.3390/cancers12113254

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop