Blood online
Home About Blood Authors Subscriptions Permission Advertising Public Access contact us
 

 
Advanced
Current Issue
First Edition
Future Articles
Archives
Submit to Blood
Search
American Society of Hematology
Meeting Abstracts
Email Alerts
Blood, 1 March 2008, Vol. 111, No. 5, pp. 2785-2789.
Prepublished online as a Blood First Edition Paper on November 15, 2007; DOI 10.1182/blood-2007-06-095703.


This Article
Right arrow Abstract Freely available
Right arrow Full Text (PDF)
Right arrow Supplemental Methods and Tables
Right arrow All Versions of this Article:
blood-2007-06-095703v1
111/5/2785    most recent
Right arrow Alert me when this article is cited
Right arrow Alert me if a correction is posted
Right arrow Citation Map
Services
Right arrow Email this article to a friend
Right arrow Similar articles in this journal
Right arrow Similar articles in PubMed
Right arrow Alert me to new issues of the journal
Right arrow Download to citation manager
Right arrow reprints & permissions
Right arrow Rights and Permissions
Citing Articles
Right arrow Citing Articles via HighWire
Right arrow Citing Articles via CrossRef
Right arrow Citing Articles via Google Scholar
Google Scholar
Right arrow Articles by Pardanani, A.
Right arrow Articles by Tefferi, A.
Right arrow Search for Related Content
PubMed
Right arrow PubMed Citation
Right arrow Articles by Pardanani, A.
Right arrow Articles by Tefferi, A.
Related Collections
Right arrow Neoplasia
Right arrowRelated Article in Blood Online
Social Bookmarking
 Add to CiteULike   Add to Connotea   Add to Del.icio.us   Add to Digg   Add to Reddit   Add to Technorati  
What's this?

arrow to previous article Previous Article  |  Table of Contents  |  Next Article next article arrow

NEOPLASIA

Host genetic variation contributes to phenotypic diversity in myeloproliferative disorders

Animesh Pardanani1, Brooke L. Fridley2, Terra L. Lasho1, D. Gary Gilliland3,4, and Ayalew Tefferi1

Divisions of1 Hematology and 2 Biostatistics, Mayo Clinic, Rochester, MN; 3 Brigham and Women's Hospital and Dana-Farber Cancer Institute, Harvard Medical School, Boston, MA; and 4 Howard Hughes Medical Institute, Harvard Medical School, Boston, MA


    Abstract
 Top
 Abstract
 Introduction
 Methods
 Results
 Discussion
 Authorship
 References
 
JAK2V617F is an acquired mutation associated with polycythemia vera (PV), essential thrombocythemia (ET), and primary myelofibrosis (PMF). We tested the hypothesis that the paradox of a single disease allele associated with 3 distinctive clinical phenotypes could be explained in part by host-modifying influences. We screened for genetic variation within 4 candidate genes involved in JAK-STAT signaling, including receptors for erythropoietin (EPOR), thrombopoietin (MPL), and granulocyte colony-stimulating factor (GCSFR), and JAK2. We genotyped 32 linkage disequilibrium tag single nucleotide polymorphism (SNP) loci in 179 white patients: 84 had PV, 58 had PMF, and 37 had ET. Genotype-phenotype analysis showed 3 JAK2 SNPs (rs7046736, rs10815148, and rs12342421) to be significantly but reciprocally associated with PV (P < .001 for all; odds ratio = 0.16, 2.72, and 2.46, respectively) and ET (P < .001 for all; odds ratio = 3.05, 0.29, and 0.30, respectively) but not with PMF. Three additional JAK2 SNPs (rs10758669, rs3808850, and rs10974947) and a single EPOR SNP (rs318699) were also significantly associated with PV but not with ET or PMF. Finally, intragene haplotypes in JAK2 were significantly associated with PV only. Thus, host genetic variation may contribute to phenotypic diversity among myeloproliferative disorders, including in the presence of a shared disease allele.


    Introduction
 Top
 Abstract
 Introduction
 Methods
 Results
 Discussion
 Authorship
 References
 
The recent discovery of JAK2V617F and related mutations in bcr-abl–negative myeloproliferative disorders (MPDs) has spawned great interest in their precise role in the pathogenesis of these disorders.1 JAK2V617F is found in more than 90% of patients with polycythemia vera (PV), and approximately 50% of patients with either primary myelofibrosis (PMF) or essential thrombocythemia (ET).2 It was unexpected that a single disease allele would be associated with these 3 distinct, although overlapping, clinical phenotypes. There are at least 2 possible explanations for this apparent paradox: other disease alleles that influence phenotype or host-modifying influences or both. Several lines of evidence support a role for other disease alleles. These include (1) the demonstration of heritable predisposition alleles for development of JAK2V617F-positive PV,3,4 (2) the demonstration of clonal hematopoiesis by X chromosome inactivation pattern (XCIP) analysis in informative females with JAK2V617F-negative ET,5(3) the observation that patients with JAK2V617F-positive PV may progress to acute myeloid leukemia that is JAK2V617F negative,6 and (4) the demonstration that only a proportion of clonal PV cells are JAK2V617F positive.7,8 However, host modifiers may contribute to phenotypic pleiotropy of MPDs, in the presence or absence of JAK2V617F. The observation that there is strain-specific variation in leukocytosis and myelofibrosis in murine models of JAK2V617F-mediated myeloproliferative disease provides indirect evidence in this regard.9

To examine the contribution of genetic factors other than JAK2V617F in the distinction between PV, PMF, and ET, we used a candidate gene approach. The choice of candidate genes reflects the key role of JAK-STAT signaling, which is constitutively activated through acquisition of somatic mutations (eg, JAK2V617F), in MPD pathogenesis. JAK2 plays a central role in mediating signaling downstream of key cytokine receptors that are required for normal hematopoietic development, including receptors for erythropoietin (EPOR), thrombopoietin (MPL), and granulocyte colony-stimulating factor (GCSFR).10,11 Therefore, we hypothesized that single nucleotide polymorphisms (SNPs) in EPOR, MPL, GCSFR, or JAK2 might influence MPD phenotype, possibly through altered interaction of the involved cytokine receptor with wild-type or mutant JAK2 (eg, erythrocytosis favoring a PV phenotype may ensue from the interaction between a "gain-of-function" SNP in EPOR and JAK2V617F). Data supporting this hypothesis includes (1) Janus kinases (JAKs) intimately associate with cytokine receptors and regulate the cell-surface expression of at least some of these receptors (eg, JAK2 regulates EPOR and MPL expression)12,13 and (2) JAK2V617F is most efficient in transforming hematopoietic cells that express type I cytokine receptors that lack a common chain, including EPOR, MPL, and GCSFR.14 This analysis of host genetic variation in these 4 candidate genes and its association with MPDs using SNP association and haplotype analyses supports a role for host modifiers in the phenotypic pleiotropy of MPDs.


    Methods
 Top
 Abstract
 Introduction
 Methods
 Results
 Discussion
 Authorship
 References
 
The current study was approved by the Mayo Clinic Institutional Review Board. Verbal and written informed consent was obtained from all patients and research was performed in accordance with the principles of the Declaration of Helsinki. We identified white patients with PV, ET, or PMF from our database of patients with MPD for analysis. Patient clinical data were carefully reviewed by A.P. and A.T., and diseases were classified according to World Health Organization criteria.15 DNA from peripheral blood granulocytes was isolated, and genotyping for JAK2V617F was performed with the use of a previously described assay (sensitivity ≤ 1%).16

Granulocyte DNA was used for SNP genotyping. We selected 32 LD tagSNPs using the Carlson method17 with a minimum allele frequency of at least 5% and an r2 value of 0.80 in the 4 candidate genes using the HapMap CEU database18 (JAK2 = 13, EPOR = 4, MPL = 5, GCSFR = 10; Table S1, available on the Blood website; see the Supplemental Materials link at the top of the online article).

Genotyping was performed using the GenomeLab SNPstream Genotyping System (Beckman Coulter, Fullerton, CA), with details provided in Document S1. Primers were designed using the web-based design site http://www.autoprimer.com provided by Beckman Coulter (Table S3). Controls included 2 genomic DNAs, each with 8 replicates per 384 well plate and 6 no DNA template wells. Call rates for each SNP ranged between 90% and 99.9%.

Assessment of linkage disequilibrium between the 32 tagSNPs and JAK2V617F using the measures of D' and r2 was completed with the use of the software package Haploview (Broad Institute, http://www.broad.mit.edu/mpg/haploview/).19 The contribution of genetic variation in candidate genes in discriminating among PV, ET, and PMF was assessed with a logistic regression adjusting for covariates of age at diagnosis, sex, and JAK2V617F status. The SNPs were coded as 0, 1, or 2 according to the number of rare alleles (ie, additive model), and JAK2V617F status was modeled as presence (either homozygous or heterozygous) or absence of the mutation. A total of 6 models were fit, one for presence or absence of each MPD, including and excluding JAK2V617F status from the model. Because the study participants were all of a similar "population" (ie, white), controlling for population stratification was not completed. Nominal P values for the single SNP analysis were reported, with many of the significant findings still maintaining significance after applying the overconservative Bonferroni correction for multiple testing.

For haplotype analysis, both intragene haplotypes as well as haplotypes based on a sliding window of 3 SNPs within each gene were considered, because of the large number of possible intragene haplotypes for JAK2 and GCSFR genes. Because haplotypes are not observed directly, we accounted for an unknown phase of haplotypes composed of tagSNPs by use of the score statistics developed by Schaid et al20 and implemented in the Splus library of HaploStat software (Mayo Clinic, http://mayoresearch.mayo.edu/mayo/research/schaid_lab/software.cfm). Simulated P values are reported for haplotype analysis, adjusting for multiple testing within the haplotype analysis. Because parameter estimates and effect sizes are not estimated with the score test, logistic regression models were fit to produce estimates of the haplotype effect sizes, for haplotypes with observed counts greater than 5. Because haplotypes are not observed directly, we first estimated for each person, all possible haplotypes and the posterior probability associated with each haplotype using the EM algorithm outlined by Excoffier and Slatkin,21 which is implemented in the Splus library of HaploStat (Mayo Clinic).20 This produces a design matrix containing the expected proportion of haplotypes for each person. Using this design matrix with posterior probabilities, logistic regression models were fit, treating the expected haplotypes as covariates in the model, resulting in an additive haplotype genetic model. Maximum likelihood estimates for the haplotype effect sizes were subsequently produced. This approach for haplotype analysis, in which the analysis is based on the expected proportion of haplotypes, is described in detail by Zaykin et al.22 Two models were fit; one in which covariates of age at diagnosis and sex were adjusted for in the haplotype analysis and one in which covariates of age at diagnosis, sex, and JAK2V617F status were adjusted for in the haplotype analysis.

The Cochran-Armitage trend test was used to assess differences in genotype frequencies between patients with MPD and the HapMap founder CEU population, with nominal P values reported.


    Results
 Top
 Abstract
 Introduction
 Methods
 Results
 Discussion
 Authorship
 References
 
We studied a total of 179 white patients seen in our MPD practice for whom complete clinical information, as well as archived granulocyte DNA, was available. Of these patients, 84 had PV, 58 had PMF, and 37 had ET. Demographic data, JAK2V617F status, and other relevant clinical data for study patients are presented in Table 1. Patients with PV and PMF were older than patients with ET at the time of diagnosis (median age, 56 and 58 years vs 47 years, respectively), and patients with PMF were tested for JAK2V617F approximately a year later in the disease course compared with patients with PV and ET (median, 21 months vs 12 and 11 months after diagnosis, respectively). Prevalence of JAK2V617F in each MPD was in accordance with published data.23


View this table:
[in this window]
[in a new window]

 
Table 1. Demographic data, JAK2V617F-status, and other characteristics of MPD patients

 
We selected 32 linkage disequilibrium (LD) tagSNPs using specific criteria (see "Methods") in the 4 candidate genes: JAK2 = 13, EPOR = 4, MPL = 5, and GCSFR = 10 (Table S1). One SNP within GCSFR showed evidence of deviation from Hardy Weinberg Equilibrium (rs4026505; P < .001). The association of individual SNPs with a particular MPD was studied after adjusting for age at diagnosis and sex. Here, we compared among the study patients with PV, PMF, or ET. In this analysis, 3 SNP loci within JAK2 (rs7046736, rs10815148, and rs12342421) were found to be significantly but reciprocally associated with PV (P < .001 for all; odds ratio = 0.16, 2.72, and 2.46, respectively) and ET (P < .0007 for all; odds ratio = 3.05, 0.29, and 0.30, respectively; Table 2). In other words, the presence of the minor allele increased the odds of one phenotype (say ET), while decreasing the odds of the other phenotype (PV). For instance, for SNP rs7046736, the presence of the C allele increased the odds of ET (odds ratio = 3.05) but decreased the odds of PV (odds ratio = 0.16) (Table 2). These 3 SNPs, which were not associated with PMF, exhibited high LD, with r2 measures of LD between 0.78 and 0.87 (Figure 1). Furthermore, 3 additional JAK2 SNPs (rs10758669, rs3808850, and rs10974947) were significantly associated with PV (P = .003, .009, and .005, respectively; odds ratio = 2.71, 0.36, and 0.34, respectively; Table 2) but not with ET or PMF (data not shown). Finally, the presence of the A allele at a single SNP locus in EPOR (rs318699, P = .001) significantly increased the odds of PV only (odds ratio, 1.87; Table 2).


View this table:
[in this window]
[in a new window]

 
Table 2. Significant associations between individual SNPs and PV or ET using logistic regression with covariates of age at diagnosis and sex

 


Figure 1
View larger version (58K):
[in this window]
[in a new window]

 
Figure 1. Linkage disequilibrium (LD) plot based on the 179 PV, ET, and PMF study participants. The numbers in the boxes are the r2 measure, and the boxes are colored according to D' measure.

 
When there are multiple causative variants, haplotypes offer increased power over individual SNPs to detect genotype-phenotype associations.24 When assessing haplotypes that span the gene (ie, intragene haplotypes), we found a significant or marginally significant association between haplotypes within JAK2 (P < .001) and PV but not ET and PMF (Table 3). When we looked instead at haplotypes based on a sliding window of 3 SNPs, we similarly observed haplotypes within JAK2 to be associated with PV alone (data not shown). Likewise, many of the SNPs found to be individually associated with PV (Table 2) were significant in the sliding window haplotype analysis (eg, rs7046736, rs10815148, and rs12342421) (data not shown). In contrast, no haplotypes within any of the candidate genes examined were found to be associated with ET or PMF.


View this table:
[in this window]
[in a new window]

 
Table 3. Significant association between JAK2 intragene haplotypes and PV

 
To examine the effect of JAK2V617F, we examined the association between each SNP and MPD phenotype after adjusting for the presence or absence of JAK2V617F, in addition to age at diagnosis and sex (Table 4). We found the 3 previously identified JAK2 SNPs (rs7046736, rs10815148, and rs12342421) to remain significantly associated with PV and ET, even after adjusting for JAK2V617F status (Table 4), with JAK2V617F in low LD (r2 < 0.13) with tag SNPs in the 4 genes (Figure 1). Likewise, when JAK2V617F status was included as a covariate for haplotype analysis, several haplotypes within JAK2 maintained global significance of association with PV (Table 3).


View this table:
[in this window]
[in a new window]

 
Table 4. Significant associations between individual SNPs and PV or ET using logistic regression with covariates of age at diagnosis, sex, and JAK2V617F status

 
We compared genotype frequencies for the study population to those found in the HapMap white population (founder CEU population; http://www.hapmap.org/; Table S2). When considering the entire group of patients with MPD compared with the HapMap white founder population, we found highly significant differences in genotype frequency at 6 SNP loci in the JAK2 gene (rs10758669, rs3808850, rs7849191, rs7046736, rs10815148, and rs12342421), but not in EPOR, MPL, or GCSFR (P < .001). Although the HapMap population may not be the ideal control for this comparative analysis, it does underscore the point that genetic variability in JAK2, and not EPOR, MPL, or GCSFR genes is the distinguishing characteristic between the 2 populations.

Finally, we tested for the clinical correlates of PV-associated alleles in patients with PMF and ET. Complete clinical and pathologic information at diagnosis was available for 32 (of 58) patients with PMF; we grouped patients based on frequency of the PV-associated allele (0, 1, or 2) at the relevant SNP loci. The PV-associated allele was present homozygously at one or more of the following SNPs: rs7046736, rs10815148, and rs12342421 (group 1; n = 4), or SNPs rs7046736, rs10815148, rs12342421, and rs10758669 (group 2; n = 8). Both groups showed significant association with leukocytosis (P = .009 and .03, respectively). Furthermore, group 1 showed a significant association with JAK2V617F (P = .02) and group 2 with lower platelet count (P = .05). Both groups also showed a trend toward higher hemoglobin level, although the association did not achieve statistical significance. Other clinical variables (eg, splenomegaly) did not show a significant association in this analysis. Similarly, we had complete data at diagnosis for 17 (of 37) patients with ET patients; again, both groups showed a significant association with JAK2V617F (P < .05).


    Discussion
 Top
 Abstract
 Introduction
 Methods
 Results
 Discussion
 Authorship
 References
 
Our findings reflect the distinctive genetic underpinnings of phenotypically related MPDs, including in the presence of a shared disease allele. The data suggest that (1) several SNPs and haplotypes within JAK2 show strong association with PV or ET, but not with PMF, and the particular distribution of alleles at the involved loci contributes to phenotypic discrimination between the 2 MPDs; and (2) in contrast, genetic variation in EPOR, MPL, and GCSFR genes does not contribute to MPD phenotypic diversity (with one exception; EPOR SNP rs318699 in PV).

Because we analyzed LD tagSNPs, the currently identified JAK2 and EPOR alleles represent markers for genomic regions of interest and not necessarily "disease-predisposing" or "causative" alleles for MPDs. Thus, it would be premature to speculate on the potential mechanism(s) underlying the association of a particular SNP allele with PV or ET or both based on current data. In this regard, higher resolution SNP analysis within JAK2 and its flanking regions on chromosome 9p in a larger cohort of patients and relevant controls will be required to identify specific alleles relevant for MPD pathogenesis.

Our analysis indicates that the currently identified JAK2 SNP alleles contribute to PV or ET expression regardless of JAK2V617F status (through accounting for JAK2V617F in our statistical model). This point has limited relevance for PV, given that virtually all patients (up to 95%) with PV harbor JAK2V617F. In contrast, the contribution of these alleles to the phenotypic distinction between JAK2V617F-harboring ET and PV will need to be confirmed in a large enough sample size that allows for such a stratified analysis.

Finally, it is possible that genetic variation at the currently identified SNPs also contributes to interindividual variation in blood counts in healthy persons, an effect that may be amplified through acquisition of somatic mutations such as JAK2V617F. A study of allele distribution at these SNPs and correlation with blood counts (eg, hemoglobin level and platelet count) in a large cohort of healthy persons may be informative in this regard.


    Authorship
 Top
 Abstract
 Introduction
 Methods
 Results
 Discussion
 Authorship
 References
 
Contribution: A.P., B.L.F., D.G.G., and A.T. wrote the paper; A.P. and A.T. participated in conception and design of the study; A.P., B.L.F., T.L.L., D.G.G., and A.T. performed research or participated in data analysis; A.P., T.L.L., and A.T. participated in collecting clinical data.

Conflict-of-interest disclosure: The authors declare no competing financial interests.

Correspondence: Animesh Pardanani, Mayo Clinic, Division of Hematology, 200 First Street SW, Rochester, MN 55905; e-mail: pardanani.animesh{at}mayo.edu.


    Acknowledgments
 
This work was supported by Myeloproliferative Disorders Foundation, Chicago, IL (A.P., T.L., and A.T.) and by the Robert A. Kyle Hematologic Malignancies Program.


    Footnotes
 
Submitted June 13, 2007; accepted November 9, 2007.

Prepublished online as Blood First Edition Paper, November 15, 2007 DOI: 10.1182/blood-2007-06-095703

An Inside Blood analysis of this article appears at the front of this issue.

The online version of this article contains a data supplement.

The publication costs of this article were defrayed in part by page charge payment. Therefore, and solely to indicate this fact, this article is hereby marked "advertisement" in accordance with 18 USC section 1734.


    References
 Top
 Abstract
 Introduction
 Methods
 Results
 Discussion
 Authorship
 References
 

  1. Tefferi A and Gilliland DG. Oncogenes in myeloproliferative disorders. Cell Cycle 2007; 6:550–566.[Medline] [Order article via Infotrieve]

  2. Levine RL, Belisle C, Wadleigh M, et al. X-inactivation-based clonality analysis and quantitative JAK2V617F assessment reveal a strong association between clonality and JAK2V617F in PV but not ET/MMM, and identifies a subset of JAK2V617F-negative ET and MMM patients with clonal hematopoiesis. Blood 2006; 107:4139–4141.[Abstract/Free Full Text]

  3. Bellanne-Chantelot C, Chaumarel I, Labopin M, et al. Genetic and clinical implications of the Val617Phe JAK2 mutation in 72 families with myeloproliferative disorders. Blood 2006; 108:346–352.[Abstract/Free Full Text]

  4. Pardanani A, Lasho T, McClure R, et al. Discordant distribution of JAK2V617F mutation in siblings with familial myeloproliferative disorders. Blood 2006; 107:4572–4573.[Free Full Text]

  5. Kiladjian JJ, Elkassar N, Cassinat B, et al. Essential thrombocythemias without V617F JAK2 mutation are clonal hematopoietic stem cell disorders. Leukemia 2006; 20:1181–1183.[CrossRef][Medline] [Order article via Infotrieve]

  6. Jelinek J, Oki Y, Gharibyan V, et al. JAK2 mutation 1849G>T is rare in acute leukemias but can be found in CMML, Philadelphia chromosome-negative CML, and megakaryocytic leukemia. Blood 2005; 106:3370–3373.[Abstract/Free Full Text]

  7. Nussenzveig RH, Swierczek SI, Jelinek J, et al. Polycythemia vera is not initiated by JAK2V617F mutation. Exp Hematol 2007; 35:32–38.[Medline] [Order article via Infotrieve]

  8. Pardanani A, Lasho TL, Finke C, et al. Extending Jak2V617F and MplW515 mutation analysis to single hematopoietic colonies and B and T lymphocytes. Stem Cells 2007; 25:2358–2362.[CrossRef][Medline] [Order article via Infotrieve]

  9. Wernig G, Mercher T, Okabe R, et al. Expression of Jak2V617F causes a polycythemia vera-like disease with associated myelofibrosis in a murine bone marrow transplant model. Blood 2006; 107:4274–4281.[Abstract/Free Full Text]

  10. Neubauer H, Cumano A, Muller M, et al. Jak2 deficiency defines an essential developmental checkpoint in definitive hematopoiesis. Cell 1998; 93:397–409.[CrossRef][Medline] [Order article via Infotrieve]

  11. Parganas E, Wang D, Stravopodis D, et al. Jak2 is essential for signaling through a variety of cytokine receptors. Cell 1998; 93:385–395.[CrossRef][Medline] [Order article via Infotrieve]

  12. Huang LJ, Constantinescu SN, Lodish HF. The N-terminal domain of Janus kinase 2 is required for Golgi processing and cell surface expression of erythropoietin receptor. Mol Cell 2001; 8:1327–1338.[CrossRef][Medline] [Order article via Infotrieve]

  13. Royer Y, Staerk J, Costuleanu M, et al. Janus kinases affect thrombopoietin receptor cell surface localization and stability. J Biol Chem 2005; 280:27251–27261.[Abstract/Free Full Text]

  14. Lu X, Levine R, Tong W, et al. Expression of a homodimeric type I cytokine receptor is required for JAK2V617F-mediated transformation. Proc Natl Acad Sci U S A 2005; 102:18962–18967.[Abstract/Free Full Text]

  15. Vardiman JW, Brunning RD, Harris NL. WHO histologic classification of chronic myeloproliferative diseases. In Jaffe ES, Harris NL, Stein H, Vardiman JW (Eds.). Tumours of the haematopoietic and lymphoid tissues2001;Lyon, France International Agency for Research on Cancer (IARC) Press pp. 17–44.

  16. Pardanani A, Lasho TL, Schwager S, et al. JAK2V617F prevalence and allele burden in nonsplanchnic venous thrombosis in the absence of overt myeloproliferative disorder [letter]. Leukemia 2007; 21:1828–1829.[CrossRef][Medline] [Order article via Infotrieve]

  17. Carlson CS, Eberle MA, Rieder MJ, et al. Selecting a maximally informative set of single-nucleotide polymorphisms for association analyses using linkage disequilibrium. Am J Hum Genet 2004; 74:106–120.[CrossRef][Medline] [Order article via Infotrieve]

  18. International HapMap Project. HapMap CEU database http://www.hapmap.org Accessed November 2006.

  19. Barrett JC, Fry B, Maller J, et al. Haploview: analysis and visualization of LD and haplotype maps. Bioinformatics 2005; 21:263–265.[Abstract/Free Full Text]

  20. Schaid DJ, Rowland CM, Tines DE, et al. Score tests for association between traits and haplotypes when linkage phase is ambiguous. Am J Hum Genet 2002; 70:425–434.[CrossRef][Medline] [Order article via Infotrieve]

  21. Excoffier L and Slatkin M. Maximum-likelihood estimation of molecular haplotype frequencies in a diploid population. Mol Biol Evol 1995; 12:921–927.[Abstract]

  22. Zaykin DV, Westfall PH, Young SS, et al. Testing association of statistically inferred haplotypes with discrete and continuous traits in samples of unrelated individuals. Hum Hered 2002; 53:79–91.[Medline] [Order article via Infotrieve]

  23. Baxter EJ, Scott LM, Campbell PJ, et al. Acquired mutation of the tyrosine kinase JAK2 in human myeloproliferative disorders. Lancet 2005; 365:1054–1061.[Medline] [Order article via Infotrieve]

  24. Bader JS. The relative power of SNPs and haplotype as genetic markers for association tests. Pharmacogenomics 2001; 2:11–24.[CrossRef][Medline] [Order article via Infotrieve]


Add to CiteULike CiteULike   Add to Connotea Connotea   Add to Del.icio.us Del.icio.us   Add to Digg Digg   Add to Reddit Reddit   Add to Technorati Technorati    What's this?

Related Article in Blood Online:

JAK2: how many faces in MPDs?
Alessandro M. Vannucchi
Blood 2008 111: 2499. [Full Text] [PDF]



This article has been cited by other articles:


Home page
BloodHome page
C. Saint-Martin, G. Leroy, F. Delhommeau, G. Panelatti, S. Dupont, C. James, I. Plo, D. Bordessoule, C. Chomienne, A. Delannoy, et al.
Analysis of the Ten-Eleven Translocation 2 (TET2) gene in familial myeloproliferative neoplasms
Blood, August 20, 2009; 114(8): 1628 - 1632.
[Abstract] [Full Text] [PDF]


Home page
Cancer Epidemiol. Biomarkers Prev.Home page
A. M. Vannucchi, G. Masala, E. Antonioli, M. Chiara Susini, P. Guglielmelli, L. Pieri, L. Maggi, S. Caini, D. Palli, C. Bogani, et al.
Increased Risk of Lymphoid Neoplasms in Patients with Philadelphia Chromosome-Negative Myeloproliferative Neoplasms
Cancer Epidemiol. Biomarkers Prev., July 1, 2009; 18(7): 2068 - 2073.
[Abstract] [Full Text] [PDF]


Home page
CA Cancer J ClinHome page
A. M. Vannucchi, P. Guglielmelli, and A. Tefferi
Advances in Understanding and Management of Myeloproliferative Neoplasms
CA Cancer J Clin, May 1, 2009; 59(3): 171 - 191.
[Abstract] [Full Text] [PDF]


Home page
haematolHome page
F. Passamonti and E. Rumi
Clinical relevance of JAK2 (V617F) mutant allele burden
Haematologica, January 1, 2009; 94(1): 7 - 10.
[Full Text] [PDF]


Home page
BloodHome page
R. L. Levine and D. G. Gilliland
Myeloproliferative disorders
Blood, September 15, 2008; 112(6): 2190 - 2198.
[Abstract] [Full Text] [PDF]


Home page
BloodHome page
O. Landgren, L. R. Goldin, S. Y. Kristinsson, E. A. Helgadottir, J. Samuelsson, and M. Bjorkholm
Increased risks of polycythemia vera, essential thrombocythemia, and myelofibrosis among 24 577 first-degree relatives of 11 039 patients with myeloproliferative neoplasms in Sweden
Blood, September 15, 2008; 112(6): 2199 - 2204.
[Abstract] [Full Text] [PDF]


Home page
BloodHome page
K. Van Pelt, F. Nollet, D. Selleslag, L. Knoops, S. N. Constantinescu, A. Criel, and J. Billiet
The JAK2V617F mutation can occur in a hematopoietic stem cell that exhibits no proliferative advantage: a case of human allogeneic transplantation
Blood, August 1, 2008; 112(3): 921 - 922.
[Full Text] [PDF]


Home page
haematolHome page
A. M. Vannucchi and P. Guglielmelli
Molecular pathophysiology of Philadelphia-negative myeloproliferative disorders: beyond JAK2 and MPL mutations
Haematologica, July 1, 2008; 93(7): 972 - 976.
[Full Text] [PDF]


Home page
BloodHome page
R. L. Levine
JAK2V617F: you can't have too much
Blood, April 15, 2008; 111(8): 3913 - 3913.
[Full Text] [PDF]


Home page
ASH Education BookHome page
C. James
The JAK2V617F Mutation in Polycythemia Vera and Other Myeloproliferative Disorders: One Mutation for Three Diseases?
Hematology, January 1, 2008; 2008(1): 69 - 75.
[Abstract] [Full Text] [PDF]


Home page
ASH Education BookHome page
R. L. Levine and M. Heaney
New Advances in the Pathogenesis and Therapy of Essential Thrombocythemia
Hematology, January 1, 2008; 2008(1): 76 - 82.
[Abstract] [Full Text] [PDF]


This Article
Right arrow Abstract Freely available
Right arrow Full Text (PDF)
Right arrow Supplemental Methods and Tables
Right arrow All Versions of this Article:
blood-2007-06-095703v1
111/5/2785    most recent
Right arrow Alert me when this article is cited
Right arrow Alert me if a correction is posted
Right arrow Citation Map
Services
Right arrow Email this article to a friend
Right arrow Similar articles in this journal
Right arrow Similar articles in PubMed
Right arrow Alert me to new issues of the journal
Right arrow Download to citation manager
Right arrow reprints & permissions
Right arrow Rights and Permissions
Citing Articles
Right arrow Citing Articles via HighWire
Right arrow Citing Articles via CrossRef
Right arrow Citing Articles via Google Scholar
Google Scholar
Right arrow Articles by Pardanani, A.
Right arrow Articles by Tefferi, A.
Right arrow Search for Related Content
PubMed
Right arrow PubMed Citation
Right arrow Articles by Pardanani, A.
Right arrow Articles by Tefferi, A.
Related Collections
Right arrow Neoplasia
Right arrowRelated Article in Blood Online
Social Bookmarking
 Add to CiteULike   Add to Connotea   Add to Del.icio.us   Add to Digg   Add to Reddit   Add to Technorati  
What's this?

 click for free articles
home about blood authors subscriptions permissions advertising public access contact us
  Copyright © 2008 by American Society of Hematology         Online ISSN: 1528-0020