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Featured researches published by Lisa Murray.


Bioinformatics | 2012

Strelka: Accurate somatic small-variant calling from sequenced tumor-normal sample pairs.

Christopher T. Saunders; Wendy Wong; Sajani Swamy; Jennifer Becq; Lisa Murray; R. Keira Cheetham

MOTIVATION Whole genome and exome sequencing of matched tumor-normal sample pairs is becoming routine in cancer research. The consequent increased demand for somatic variant analysis of paired samples requires methods specialized to model this problem so as to sensitively call variants at any practical level of tumor impurity. RESULTS We describe Strelka, a method for somatic SNV and small indel detection from sequencing data of matched tumor-normal samples. The method uses a novel Bayesian approach which represents continuous allele frequencies for both tumor and normal samples, while leveraging the expected genotype structure of the normal. This is achieved by representing the normal sample as a mixture of germline variation with noise, and representing the tumor sample as a mixture of the normal sample with somatic variation. A natural consequence of the model structure is that sensitivity can be maintained at high tumor impurity without requiring purity estimates. We demonstrate that the method has superior accuracy and sensitivity on impure samples compared with approaches based on either diploid genotype likelihoods or general allele-frequency tests. AVAILABILITY The Strelka workflow source code is available at ftp://[email protected]/. CONTACT [email protected]


Blood | 2012

Monitoring chronic lymphocytic leukemia progression by whole genome sequencing reveals heterogeneous clonal evolution patterns

Anna Schuh; Jennifer Becq; Sean Humphray; Adrian Alexa; Adam Burns; Ruth Clifford; Stephan M. Feller; Russell Grocock; Shirley Henderson; Irina Khrebtukova; Zoya Kingsbury; Shujun Luo; David McBride; Lisa Murray; Toshi Menju; Adele Timbs; Mark T. Ross; Jenny C. Taylor; David R. Bentley

Chronic lymphocytic leukemia is characterized by relapse after treatment and chemotherapy resistance. Similarly, in other malignancies leukemia cells accumulate mutations during growth, forming heterogeneous cell populations that are subject to Darwinian selection and may respond differentially to treatment. There is therefore a clinical need to monitor changes in the subclonal composition of cancers during disease progression. Here, we use whole-genome sequencing to track subclonal heterogeneity in 3 chronic lymphocytic leukemia patients subjected to repeated cycles of therapy. We reveal different somatic mutation profiles in each patient and use these to establish probable hierarchical patterns of subclonal evolution, to identify subclones that decline or expand over time, and to detect founder mutations. We show that clonal evolution patterns are heterogeneous in individual patients. We conclude that genome sequencing is a powerful and sensitive approach to monitor disease progression repeatedly at the molecular level. If applied to future clinical trials, this approach might eventually influence treatment strategies as a tool to individualize and direct cancer treatment.


Cell | 2012

Genome Sequencing and Analysis of the Tasmanian Devil and Its Transmissible Cancer

Elizabeth P. Murchison; Ole Schulz-Trieglaff; Zemin Ning; Ludmil B. Alexandrov; Markus J. Bauer; Beiyuan Fu; Matthew M. Hims; Zhihao Ding; Sergii Ivakhno; Caitlin Stewart; Bee Ling Ng; Wendy Wong; Bronwen Aken; Simon White; Amber E. Alsop; Jennifer Becq; Graham R. Bignell; R. Keira Cheetham; William Cheng; Thomas Richard Connor; Anthony J. Cox; Zhi-Ping Feng; Yong Gu; Russell Grocock; Simon R. Harris; Irina Khrebtukova; Zoya Kingsbury; Mark Kowarsky; Alexandre Kreiss; Shujun Luo

Summary The Tasmanian devil (Sarcophilus harrisii), the largest marsupial carnivore, is endangered due to a transmissible facial cancer spread by direct transfer of living cancer cells through biting. Here we describe the sequencing, assembly, and annotation of the Tasmanian devil genome and whole-genome sequences for two geographically distant subclones of the cancer. Genomic analysis suggests that the cancer first arose from a female Tasmanian devil and that the clone has subsequently genetically diverged during its spread across Tasmania. The devil cancer genome contains more than 17,000 somatic base substitution mutations and bears the imprint of a distinct mutational process. Genotyping of somatic mutations in 104 geographically and temporally distributed Tasmanian devil tumors reveals the pattern of evolution and spread of this parasitic clonal lineage, with evidence of a selective sweep in one geographical area and persistence of parallel lineages in other populations. PaperClip


Leukemia | 2014

Intraclonal heterogeneity is a critical early event in the development of myeloma and precedes the development of clinical symptoms

Brian A. Walker; Christopher P. Wardell; Lorenzo Melchor; Annamaria Brioli; David C. Johnson; Martin Kaiser; Fabio Mirabella; Lucía López-Corral; Sean Humphray; Lisa Murray; Mark T. Ross; David R. Bentley; Norma C. Gutiérrez; Ramón García-Sanz; J. F. San Miguel; Faith E. Davies; D. González; Gareth J. Morgan

The mechanisms involved in the progression from monoclonal gammopathy of undetermined significance (MGUS) and smoldering myeloma (SMM) to malignant multiple myeloma (MM) and plasma cell leukemia (PCL) are poorly understood but believed to involve the sequential acquisition of genetic hits. We performed exome and whole-genome sequencing on a series of MGUS (n=4), high-risk (HR)SMM (n=4), MM (n=26) and PCL (n=2) samples, including four cases who transformed from HR-SMM to MM, to determine the genetic factors that drive progression of disease. The pattern and number of non-synonymous mutations show that the MGUS disease stage is less genetically complex than MM, and HR-SMM is similar to presenting MM. Intraclonal heterogeneity is present at all stages and using cases of HR-SMM, which transformed to MM, we show that intraclonal heterogeneity is a typical feature of the disease. At the HR-SMM stage of disease, the majority of the genetic changes necessary to give rise to MM are already present. These data suggest that clonal progression is the key feature of transformation of HR-SMM to MM and as such the invasive clinically predominant clone typical of MM is already present at the SMM stage and would be amenable to therapeutic intervention at that stage.


PLOS ONE | 2009

Genomic Diversity among Drug Sensitive and Multidrug Resistant Isolates of Mycobacterium tuberculosis with Identical DNA Fingerprints

Stefan Niemann; Claudio U. Köser; Sebastien Gagneux; Claudia Plinke; Helen Rachel Bignell; Richard J. Carter; R. Keira Cheetham; Anthony J. Cox; Niall Anthony Gormley; Paula Kokko-Gonzales; Lisa Murray; Roberto Rigatti; Vincent Peter Smith; Felix P. M. Arends; Helen S. Cox; Geoff Smith; John A. C. Archer

Background Mycobacterium tuberculosis complex (MTBC), the causative agent of tuberculosis (TB), is characterized by low sequence diversity making this bacterium one of the classical examples of a genetically monomorphic pathogen. Because of this limited DNA sequence variation, routine genotyping of clinical MTBC isolates for epidemiological purposes relies on highly discriminatory DNA fingerprinting methods based on mobile and repetitive genetic elements. According to the standard view, isolates exhibiting the same fingerprinting pattern are considered direct progeny of the same bacterial clone, and most likely reflect ongoing transmission or disease relapse within individual patients. Methodology/Principal Findings Here we further investigated this assumption and used massively parallel whole-genome sequencing to compare one drug-susceptible (K-1) and one multidrug resistant (MDR) isolate (K-2) of a rapidly spreading M. tuberculosis Beijing genotype clone from a high incidence region (Karakalpakstan, Uzbekistan). Both isolates shared the same IS6110 RFLP pattern and the same allele at 23 out of 24 MIRU-VNTR loci. We generated 23.9 million (K-1) and 33.0 million (K-2) paired 50 bp purity filtered reads corresponding to a mean coverage of 483.5 fold and 656.1 fold respectively. Compared with the laboratory strain H37Rv both Beijing isolates shared 1,209 SNPs. The two Beijing isolates differed by 130 SNPs and one large deletion. The susceptible isolate had 55 specific SNPs, while the MDR variant had 75 specific SNPs, including the five known resistance-conferring mutations. Conclusions Our results suggest that M. tuberculosis isolates exhibiting identical DNA fingerprinting patterns can harbour substantial genomic diversity. Because this heterogeneity is not captured by traditional genotyping of MTBC, some aspects of the transmission dynamics of tuberculosis could be missed or misinterpreted. Furthermore, a valid differentiation between disease relapse and exogenous reinfection might be impossible using standard genotyping tools if the overall diversity of circulating clones is limited. These findings have important implications for clinical trials of new anti-tuberculosis drugs.


Blood | 2011

Whole Genome Sequencing Illuminates the Genetic and Biological Features Underlying the Transition of SMM to MM

Brian A. Walker; Christopher P. Wardell; Lucía López-Corral; Sean Humphray; Lisa Murray; Mark T. Ross; Ramón García-Sanz; David R. Bentley; J. F. San Miguel; David Gonzalez; Gareth J. Morgan


Blood | 2012

Intra-Clonal Heterogeneity Is a Critical Early Event in the Preclinical Stages of Multiple Myeloma and Is Subject to Darwinian Fluctuation throughout the Disease

Lorenzo Melchor; Brian A. Walker; Christopher P. Wardell; Annamaria Brioli; Martin Kaiser; Lucía López-Corral; Sean Humphray; Lisa Murray; Mark T. Ross; David R. Bentley; Ramón García-Sanz; Jesús F. San Miguel; Faith E. Davies; David Gonzalez; Gareth J. Morgan

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Brian A. Walker

University of Arkansas for Medical Sciences

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Christopher P. Wardell

University of Arkansas for Medical Sciences

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Gareth J. Morgan

University of Arkansas for Medical Sciences

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Ramón García-Sanz

Spanish National Research Council

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