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2.
Nat Commun ; 8(1): 1892, 2017 12 01.
Article in English | MEDLINE | ID: mdl-29196614

ABSTRACT

Several susceptibility loci for classical Hodgkin lymphoma have been reported. However, much of the heritable risk is unknown. Here, we perform a meta-analysis of two existing genome-wide association studies, a new genome-wide association study, and replication totalling 5,314 cases and 16,749 controls. We identify risk loci for all classical Hodgkin lymphoma at 6q22.33 (rs9482849, P = 1.52 × 10-8) and for nodular sclerosis Hodgkin lymphoma at 3q28 (rs4459895, P = 9.43 × 10-17), 6q23.3 (rs6928977, P = 4.62 × 10-11), 10p14 (rs3781093, P = 9.49 × 10-13), 13q34 (rs112998813, P = 4.58 × 10-8) and 16p13.13 (rs34972832, P = 2.12 × 10-8). Additionally, independent loci within the HLA region are observed for nodular sclerosis Hodgkin lymphoma (rs9269081, HLA-DPB1*03:01, Val86 in HLA-DRB1) and mixed cellularity Hodgkin lymphoma (rs1633096, rs13196329, Val86 in HLA-DRB1). The new and established risk loci localise to areas of active chromatin and show an over-representation of transcription factor binding for determinants of B-cell development and immune response.


Subject(s)
Genetic Predisposition to Disease , Hodgkin Disease/genetics , Alleles , Genome-Wide Association Study , HLA-DP beta-Chains/genetics , HLA-DRB1 Chains/genetics , Humans , Polymorphism, Single Nucleotide
3.
Blood ; 130(14): 1639-1643, 2017 10 05.
Article in English | MEDLINE | ID: mdl-28827410

ABSTRACT

Recent studies suggest that the evolutionary history of a cancer is important in forecasting clinical outlook. To gain insight into the clonal dynamics of multiple myeloma (MM) and its possible influence on patient outcomes, we analyzed whole exome sequencing tumor data for 333 patients from Myeloma XI, a UK phase 3 trial and 434 patients from the CoMMpass study, all of which had received immunomodulatory drug (IMiD) therapy. By analyzing mutant allele frequency distributions in tumors, we found that 17% to 20% of MM is under neutral evolutionary dynamics. These tumors are associated with poorer patient survival in nonintensively treated patients, which is consistent with the reduced therapeutic efficacy of microenvironment-modulating IMiDs. Our findings provide evidence that knowledge of the evolutionary history of MM has relevance for predicting patient outcomes and personalizing therapy.


Subject(s)
Gene Frequency , Immunologic Factors/therapeutic use , Multiple Myeloma/drug therapy , Multiple Myeloma/genetics , Mutation , Thalidomide/analogs & derivatives , Thalidomide/therapeutic use , Exome/drug effects , Female , Genetic Drift , Humans , Immunosuppressive Agents/therapeutic use , Kaplan-Meier Estimate , Lenalidomide , Male , Multiple Myeloma/diagnosis , Multiple Myeloma/pathology , Prognosis , Tumor Microenvironment/drug effects
4.
Sci Rep ; 7: 41071, 2017 01 23.
Article in English | MEDLINE | ID: mdl-28112199

ABSTRACT

B-cell malignancies (BCM) originate from the same cell of origin, but at different maturation stages and have distinct clinical phenotypes. Although genetic risk variants for individual BCMs have been identified, an agnostic, genome-wide search for shared genetic susceptibility has not been performed. We explored genome-wide association studies of chronic lymphocytic leukaemia (CLL, N = 1,842), Hodgkin lymphoma (HL, N = 1,465) and multiple myeloma (MM, N = 3,790). We identified a novel pleiotropic risk locus at 3q22.2 (NCK1, rs11715604, P = 1.60 × 10-9) with opposing effects between CLL (P = 1.97 × 10-8) and HL (P = 3.31 × 10-3). Eight established non-HLA risk loci showed pleiotropic associations. Within the HLA region, Ser37 + Phe37 in HLA-DRB1 (P = 1.84 × 10-12) was associated with increased CLL and HL risk (P = 4.68 × 10-12), and reduced MM risk (P = 1.12 × 10-2), and Gly70 in HLA-DQB1 (P = 3.15 × 10-10) showed opposing effects between CLL (P = 3.52 × 10-3) and HL (P = 3.41 × 10-9). By integrating eQTL, Hi-C and ChIP-seq data, we show that the pleiotropic risk loci are enriched for B-cell regulatory elements, as well as an over-representation of binding of key B-cell transcription factors. These data identify shared biological pathways influencing the development of CLL, HL and MM. The identification of these risk loci furthers our understanding of the aetiological basis of BCMs.


Subject(s)
Genetic Pleiotropy/genetics , Genome-Wide Association Study , Hodgkin Disease/genetics , Leukemia, Lymphocytic, Chronic, B-Cell/genetics , Multiple Myeloma/genetics , Adaptor Proteins, Signal Transducing/genetics , Adult , Aged , Female , Genetic Predisposition to Disease , HLA-DQ beta-Chains/genetics , HLA-DRB1 Chains/genetics , Hodgkin Disease/pathology , Humans , Leukemia, Lymphocytic, Chronic, B-Cell/pathology , Male , Middle Aged , Multiple Myeloma/pathology , Oncogene Proteins/genetics , Polymorphism, Single Nucleotide/genetics , Risk Factors
5.
BMC Syst Biol ; 10(1): 81, 2016 08 22.
Article in English | MEDLINE | ID: mdl-27549182

ABSTRACT

BACKGROUND: Gene expression is known to be an intrinsically stochastic process which can involve single-digit numbers of mRNA molecules in a cell at any given time. The modelling of such processes calls for the use of exact stochastic simulation methods, most notably the Gillespie algorithm. However, this stochasticity, also termed "intrinsic noise", does not account for all the variability between genetically identical cells growing in a homogeneous environment. Despite substantial experimental efforts, determining appropriate model parameters continues to be a challenge. Methods based on approximate Bayesian computation can be used to obtain posterior parameter distributions given the observed data. However, such inference procedures require large numbers of simulations of the model and exact stochastic simulation is computationally costly. In this work we focus on the specific case of trying to infer model parameters describing reaction rates and extrinsic noise on the basis of measurements of molecule numbers in individual cells at a given time point. RESULTS: To make the problem computationally tractable we develop an exact, model-specific, stochastic simulation algorithm for the commonly used two-state model of gene expression. This algorithm relies on certain assumptions and favourable properties of the model to forgo the simulation of the whole temporal trajectory of protein numbers in the system, instead returning only the number of protein and mRNA molecules present in the system at a specified time point. The computational gain is proportional to the number of protein molecules created in the system and becomes significant for systems involving hundreds or thousands of protein molecules. CONCLUSIONS: We employ this simulation algorithm with approximate Bayesian computation to jointly infer the model's rate and noise parameters from published gene expression data. Our analysis indicates that for most genes the extrinsic contributions to noise will be small to moderate but certainly are non-negligible.


Subject(s)
Computational Biology/methods , Gene Expression Profiling , Single-Cell Analysis , Bayes Theorem , Models, Genetic , Statistics as Topic
6.
Nat Commun ; 7: 12050, 2016 07 01.
Article in English | MEDLINE | ID: mdl-27363682

ABSTRACT

Multiple myeloma (MM) is a plasma cell malignancy with a significant heritable basis. Genome-wide association studies have transformed our understanding of MM predisposition, but individual studies have had limited power to discover risk loci. Here we perform a meta-analysis of these GWAS, add a new GWAS and perform replication analyses resulting in 9,866 cases and 239,188 controls. We confirm all nine known risk loci and discover eight new loci at 6p22.3 (rs34229995, P=1.31 × 10(-8)), 6q21 (rs9372120, P=9.09 × 10(-15)), 7q36.1 (rs7781265, P=9.71 × 10(-9)), 8q24.21 (rs1948915, P=4.20 × 10(-11)), 9p21.3 (rs2811710, P=1.72 × 10(-13)), 10p12.1 (rs2790457, P=1.77 × 10(-8)), 16q23.1 (rs7193541, P=5.00 × 10(-12)) and 20q13.13 (rs6066835, P=1.36 × 10(-13)), which localize in or near to JARID2, ATG5, SMARCD3, CCAT1, CDKN2A, WAC, RFWD3 and PREX1. These findings provide additional support for a polygenic model of MM and insight into the biological basis of tumour development.


Subject(s)
Multiple Myeloma/genetics , Adaptor Proteins, Signal Transducing/genetics , Autophagy-Related Protein 5/genetics , Case-Control Studies , Chromosomal Proteins, Non-Histone , Cyclin-Dependent Kinase Inhibitor p16 , Cyclin-Dependent Kinase Inhibitor p18/genetics , Genetic Predisposition to Disease , Genome-Wide Association Study , Guanine Nucleotide Exchange Factors/genetics , Humans , Polycomb Repressive Complex 2/genetics , RNA, Long Noncoding/genetics , Transcription Factors/genetics , Ubiquitin-Protein Ligases/genetics
7.
J R Soc Interface ; 12(110): 0597, 2015 Sep 06.
Article in English | MEDLINE | ID: mdl-26333812

ABSTRACT

Biological organisms rely on their ability to sense and respond appropriately to their environment. The molecular mechanisms that facilitate these essential processes are however subject to a range of random effects and stochastic processes, which jointly affect the reliability of information transmission between receptors and, for example, the physiological downstream response. Information is mathematically defined in terms of the entropy; and the extent of information flowing across an information channel or signalling system is typically measured by the 'mutual information', or the reduction in the uncertainty about the output once the input signal is known. Here, we quantify how extrinsic and intrinsic noise affects the transmission of simple signals along simple motifs of molecular interaction networks. Even for very simple systems, the effects of the different sources of variability alone and in combination can give rise to bewildering complexity. In particular, extrinsic variability is apt to generate 'apparent' information that can, in extreme cases, mask the actual information that for a single system would flow between the different molecular components making up cellular signalling pathways. We show how this artificial inflation in apparent information arises and how the effects of different types of noise alone and in combination can be understood.


Subject(s)
Models, Theoretical
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