Sir Peter MacCallum Department of Oncology - Research Publications

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    Socrates: identification of genomic rearrangements in tumour genomes by re-aligning soft clipped reads
    Schroeder, J ; Hsu, A ; Boyle, SE ; Macintyre, G ; Cmero, M ; Tothill, RW ; Johnstone, RW ; Shackleton, M ; Papenfuss, AT (OXFORD UNIV PRESS, 2014-04-15)
    MOTIVATION: Methods for detecting somatic genome rearrangements in tumours using next-generation sequencing are vital in cancer genomics. Available algorithms use one or more sources of evidence, such as read depth, paired-end reads or split reads to predict structural variants. However, the problem remains challenging due to the significant computational burden and high false-positive or false-negative rates. RESULTS: In this article, we present Socrates (SOft Clip re-alignment To idEntify Structural variants), a highly efficient and effective method for detecting genomic rearrangements in tumours that uses only split-read data. Socrates has single-nucleotide resolution, identifies micro-homologies and untemplated sequence at break points, has high sensitivity and high specificity and takes advantage of parallelism for efficient use of resources. We demonstrate using simulated and real data that Socrates performs well compared with a number of existing structural variant detection tools. AVAILABILITY AND IMPLEMENTATION: Socrates is released as open source and available from http://bioinf.wehi.edu.au/socrates CONTACT: papenfuss@wehi.edu.au Supplementary information: Supplementary data are available at Bioinformatics online.
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    A community effort to create standards for evaluating tumor subclonal reconstruction
    Salcedo, A ; Tarabichi, M ; Espiritu, SMG ; Deshwar, AG ; David, M ; Wilson, NM ; Dentro, S ; Wintersinger, JA ; Liu, LY ; Ko, M ; Sivanandan, S ; Zhang, H ; Zhu, K ; Ou Yang, T-H ; Chilton, JM ; Buchanan, A ; Lalansingh, CM ; P'ng, C ; Anghel, CV ; Umar, I ; Lo, B ; Zou, W ; Simpson, JT ; Stuart, JM ; Anastassiou, D ; Guan, Y ; Ewing, AD ; Ellrott, K ; Wedge, DC ; Morris, Q ; Van Loo, P ; Boutros, PC ; Jha, A ; Huang, T ; Yang, T-P ; Peifer, M ; Sahinalp, C ; Malikic, S ; Vazquez-Garcia, I ; Mustonen, V ; Yang, H-T ; Lee, K-R ; Ji, Y ; Sengupta, S ; Rudewicz, J ; Nikolski, M ; Schaeverbeke, Q ; Yuan, K ; Markowetz, F ; Macintyre, G ; Cmero, M ; Chaudhary, B ; Leshchiner, I ; Livitz, D ; Getz, G ; Loher, P ; Yu, K ; Wang, W ; Zhu, H (NATURE RESEARCH, 2020-01)
    Tumor DNA sequencing data can be interpreted by computational methods that analyze genomic heterogeneity to infer evolutionary dynamics. A growing number of studies have used these approaches to link cancer evolution with clinical progression and response to therapy. Although the inference of tumor phylogenies is rapidly becoming standard practice in cancer genome analyses, standards for evaluating them are lacking. To address this need, we systematically assess methods for reconstructing tumor subclonality. First, we elucidate the main algorithmic problems in subclonal reconstruction and develop quantitative metrics for evaluating them. Then we simulate realistic tumor genomes that harbor all known clonal and subclonal mutation types and processes. Finally, we benchmark 580 tumor reconstructions, varying tumor read depth, tumor type and somatic variant detection. Our analysis provides a baseline for the establishment of gold-standard methods to analyze tumor heterogeneity.
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    Genomic footprints of activated telomere maintenance mechanisms in cancer
    Sieverling, L ; Hong, C ; Koser, SD ; Ginsbach, P ; Kleinheinz, K ; Hutter, B ; Braun, DM ; Cortes-Ciriano, I ; Xi, R ; Kabbe, R ; Park, PJ ; Eils, R ; Schlesner, M ; Brors, B ; Rippe, K ; Jones, DTW ; Feuerbach, L (NATURE PORTFOLIO, 2020-02-05)
    Cancers require telomere maintenance mechanisms for unlimited replicative potential. They achieve this through TERT activation or alternative telomere lengthening associated with ATRX or DAXX loss. Here, as part of the ICGC/TCGA Pan-Cancer Analysis of Whole Genomes (PCAWG) Consortium, we dissect whole-genome sequencing data of over 2500 matched tumor-control samples from 36 different tumor types aggregated within the ICGC/TCGA Pan-Cancer Analysis of Whole Genomes (PCAWG) Consortium to characterize the genomic footprints of these mechanisms. While the telomere content of tumors with ATRX or DAXX mutations (ATRX/DAXXtrunc) is increased, tumors with TERT modifications show a moderate decrease of telomere content. One quarter of all tumor samples contain somatic integrations of telomeric sequences into non-telomeric DNA. This fraction is increased to 80% prevalence in ATRX/DAXXtrunc tumors, which carry an aberrant telomere variant repeat (TVR) distribution as another genomic marker. The latter feature includes enrichment or depletion of the previously undescribed singleton TVRs TTCGGG and TTTGGG, respectively. Our systematic analysis provides new insight into the recurrent genomic alterations associated with telomere maintenance mechanisms in cancer.
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    Prostate cancer cell-intrinsic interferon signaling regulates dormancy and metastatic outgrowth in bone
    Owen, KL ; Gearing, LJ ; Zanker, DJ ; Brockwell, NK ; Khoo, WH ; Roden, DL ; Cmero, M ; Mangiola, S ; Hong, MK ; Spurling, AJ ; McDonald, M ; Chan, C-L ; Pasam, A ; Lyons, RJ ; Duivenvoorden, HM ; Ryan, A ; Butler, LM ; Mariadason, JM ; Phan, TG ; Hayes, VM ; Sandhu, S ; Swarbrick, A ; Corcoran, NM ; Hertzog, PJ ; Croucher, P ; Hovens, C ; Parker, BS (WILEY, 2020-06-04)
    The latency associated with bone metastasis emergence in castrate-resistant prostate cancer is attributed to dormancy, a state in which cancer cells persist prior to overt lesion formation. Using single-cell transcriptomics and ex vivo profiling, we have uncovered the critical role of tumor-intrinsic immune signaling in the retention of cancer cell dormancy. We demonstrate that loss of tumor-intrinsic type I IFN occurs in proliferating prostate cancer cells in bone. This loss suppresses tumor immunogenicity and therapeutic response and promotes bone cell activation to drive cancer progression. Restoration of tumor-intrinsic IFN signaling by HDAC inhibition increased tumor cell visibility, promoted long-term antitumor immunity, and blocked cancer growth in bone. Key findings were validated in patients, including loss of tumor-intrinsic IFN signaling and immunogenicity in bone metastases compared to primary tumors. Data herein provide a rationale as to why current immunotherapeutics fail in bone-metastatic prostate cancer, and provide a new therapeutic strategy to overcome the inefficacy of immune-based therapies in solid cancers.
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    Using equivalence class counts for fast and accurate testing of differential transcript usage
    Cmero, M ; Davidson, NM ; Oshlack, A (F1000 Research Ltd, 2019-04-29)
    Background: RNA sequencing has enabled high-throughput and fine-grained quantitative analyses of the transcriptome. While differential gene expression is the most widely used application of this technology, RNA-seq data also has the resolution to infer differential transcript usage (DTU), which can elucidate the role of different transcript isoforms between experimental conditions, cell types or tissues. DTU has typically been inferred from exon-count data, which has issues with assigning reads unambiguously to counting bins, and requires alignment of reads to the genome. Recently, approaches have emerged that use transcript quantification estimates directly for DTU. Transcript counts can be inferred from 'pseudo' or lightweight aligners, which are significantly faster than traditional genome alignment. However, recent evaluations show lower sensitivity in DTU analysis compared to exon-level analysis. Transcript abundances are estimated from equivalence classes (ECs), which determine the transcripts that any given read is compatible with. Recent work has proposed performing a variety of RNA-seq analysis directly on equivalence class counts (ECCs). Methods: Here we demonstrate that ECCs can be used effectively with existing count-based methods for detecting DTU. We evaluate this approach on simulated human and drosophila data, as well as on a real dataset through subset testing. Results: We find that ECCs have similar sensitivity and false discovery rates as exon-level counts but can be generated in a fraction of the time through the use of pseudo-aligners. Conclusions: We posit that equivalence class read counts are a natural unit on which to perform differential transcript usage analysis.
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    High-coverage whole-genome analysis of 1220 cancers reveals hundreds of genes deregulated by rearrangement-mediated cis-regulatory alterations
    Zhang, Y ; Chen, F ; Fonseca, NA ; He, Y ; Fujita, M ; Nakagawa, H ; Zhang, Z ; Brazma, A ; Creighton, CJ (NATURE PUBLISHING GROUP, 2020-02-05)
    The impact of somatic structural variants (SVs) on gene expression in cancer is largely unknown. Here, as part of the ICGC/TCGA Pan-Cancer Analysis of Whole Genomes (PCAWG) Consortium, which aggregated whole-genome sequencing data and RNA sequencing from a common set of 1220 cancer cases, we report hundreds of genes for which the presence within 100 kb of an SV breakpoint associates with altered expression. For the majority of these genes, expression increases rather than decreases with corresponding breakpoint events. Up-regulated cancer-associated genes impacted by this phenomenon include TERT, MDM2, CDK4, ERBB2, CD274, PDCD1LG2, and IGF2. TERT-associated breakpoints involve ~3% of cases, most frequently in liver biliary, melanoma, sarcoma, stomach, and kidney cancers. SVs associated with up-regulation of PD1 and PDL1 genes involve ~1% of non-amplified cases. For many genes, SVs are significantly associated with increased numbers or greater proximity of enhancer regulatory elements near the gene. DNA methylation near the promoter is often increased with nearby SV breakpoint, which may involve inactivation of repressor elements.
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    Comprehensive analysis of chromothripsis in 2,658 human cancers using whole-genome sequencing
    Cortes-Ciriano, I ; Lee, JJ-K ; Xi, R ; Jain, D ; Jung, YL ; Yang, L ; Gordenin, D ; Klimczak, LJ ; Zhang, C-Z ; Pellman, DS ; Park, PJ ; Akdemir, KC ; Alvarez, EG ; Baez-Ortega, A ; Beroukhim, R ; Boutros, PC ; Bowtell, DDL ; Brors, B ; Burns, KH ; Campbell, PJ ; Chan, K ; Chen, K ; Dueso-Barroso, A ; Dunford, AJ ; Edwards, PA ; Estivill, X ; Etemadmoghadam, D ; Feuerbach, L ; Fink, JL ; Frenkel-Morgenstern, M ; Garsed, DW ; Gerstein, M ; Gordenin, DA ; Haan, D ; Haber, JE ; Hess, JM ; Hutter, B ; Imielinski, M ; Jones, DTW ; Ju, YS ; Kazanov, MD ; Koh, Y ; Korbel, JO ; Kumar, K ; Lee, EA ; Li, Y ; Lynch, AG ; Macintyre, G ; Markowetz, F ; Martincorena, I ; Martinez-Fundichely, A ; Miyano, S ; Nakagawa, H ; Navarro, FCP ; Ossowski, S ; Pearson, J ; Puiggros, M ; Rippe, K ; Roberts, ND ; Roberts, SA ; Rodriguez-Martin, B ; Schumacher, SE ; Scully, R ; Shackleton, M ; Sidiropoulos, N ; Sieverling, L ; Stewart, C ; Torrents, D ; Tubio, JMC ; Villasante, I ; Waddell, N ; Wala, JA ; Weischenfeldt, J ; Yao, X ; Yoon, S-S ; Zamora, J ; Alsop, K ; Christie, EL ; Fereday, S ; Mileshkin, L ; Mitchell, C ; Thorne, H ; Traficante, N ; Cmero, M ; Cowin, PA ; Hamilton, A ; Mir Arnau, G ; Vedururu, R ; Grimmond, SM ; Hofmann, O ; Morrison, C ; Oien, KA ; Pairojkul, C ; Waring, PM ; van de Vijver, MJ ; Behren, A (Nature Research, 2020-03)
    Chromothripsis is a mutational phenomenon characterized by massive, clustered genomic rearrangements that occurs in cancer and other diseases. Recent studies in selected cancer types have suggested that chromothripsis may be more common than initially inferred from low-resolution copy-number data. Here, as part of the Pan-Cancer Analysis of Whole Genomes (PCAWG) Consortium of the International Cancer Genome Consortium (ICGC) and The Cancer Genome Atlas (TCGA), we analyze patterns of chromothripsis across 2,658 tumors from 38 cancer types using whole-genome sequencing data. We find that chromothripsis events are pervasive across cancers, with a frequency of more than 50% in several cancer types. Whereas canonical chromothripsis profiles display oscillations between two copy-number states, a considerable fraction of events involve multiple chromosomes and additional structural alterations. In addition to non-homologous end joining, we detect signatures of replication-associated processes and templated insertions. Chromothripsis contributes to oncogene amplification and to inactivation of genes such as mismatch-repair-related genes. These findings show that chromothripsis is a major process that drives genome evolution in human cancer.
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    Cancer LncRNA Census reveals evidence for deep functional conservation of long noncoding RNAs in tumorigenesis
    Carlevaro-Fita, J ; Lanzos, A ; Feuerbach, L ; Hong, C ; Mas-Ponte, D ; Pedersen, JS ; Johnson, R ; Abascal, F ; Amin, SB ; Bader, GD ; Barenboim, J ; Beroukhim, R ; Bertl, J ; Boroevich, KA ; Brunak, S ; Campbell, PJ ; Carlevaro-Fita, J ; Chakravarty, D ; Chan, CWY ; Chen, K ; Choi, JK ; Deu-Pons, J ; Dhingra, P ; Diamanti, K ; Feuerbach, L ; Fink, JL ; Fonseca, NA ; Frigola, J ; Gambacorti-Passerini, C ; Garsed, DW ; Gerstein, M ; Getz, G ; Gonzalez-Perez, A ; Guo, Q ; Gut, IG ; Haan, D ; Hamilton, MP ; Haradhvala, NJ ; Harmanci, AO ; Helmy, M ; Herrmann, C ; Hess, JM ; Hobolth, A ; Hodzic, E ; Hong, C ; Hornshoj, H ; Isaev, K ; Izarzugaza, JMG ; Johnson, TA ; Juul, M ; Juul, RI ; Kahles, A ; Kahraman, A ; Kellis, M ; Khurana, E ; Kim, J ; Kim, JK ; Kim, Y ; Komorowski, J ; Korbel, JO ; Kumar, S ; Lanzos, A ; Larsson, E ; Lawrence, MS ; Lee, D ; Lehmann, K-V ; Li, S ; Li, X ; Lin, Z ; Liu, EM ; Lochovsky, L ; Lou, S ; Madsen, T ; Marchal, K ; Martincorena, I ; Martinez-Fundichely, A ; Maruvka, YE ; McGillivray, PD ; Meyerson, W ; Muinos, F ; Mularoni, L ; Nakagawa, H ; Nielsen, MM ; Paczkowska, M ; Park, K ; Park, K ; Pedersen, JS ; Pich, O ; Pons, T ; Pulido-Tamayo, S ; Raphael, BJ ; Reimand, J ; Reyes-Salazar, I ; Reyna, MA ; Rheinbay, E ; Rubin, MA ; Rubio-Perez, C ; Sabarinathan, R ; Sahinalp, SC ; Saksena, G ; Salichos, L ; Sander, C ; Schumacher, SE ; Shackleton, M ; Shapira, O ; Shen, C ; Shrestha, R ; Shuai, S ; Sidiropoulos, N ; Sieverling, L ; Sinnott-Armstrong, N ; Stein, LD ; Stuart, JM ; Tamborero, D ; Tiao, G ; Tsunoda, T ; Umer, HM ; Uuskula-Reimand, L ; Valencia, A ; Vazquez, M ; Verbeke, LPC ; Wadelius, C ; Wadi, L ; Wang, J ; Warrell, J ; Waszak, SM ; Weischenfeldt, J ; Wheeler, DA ; Wu, G ; Yu, J ; Zhang, J ; Zhang, X ; Zhang, Y ; Zhao, Z ; Zou, L ; von Mering, C (NATURE PUBLISHING GROUP, 2020-02-05)
    Long non-coding RNAs (lncRNAs) are a growing focus of cancer genomics studies, creating the need for a resource of lncRNAs with validated cancer roles. Furthermore, it remains debated whether mutated lncRNAs can drive tumorigenesis, and whether such functions could be conserved during evolution. Here, as part of the ICGC/TCGA Pan-Cancer Analysis of Whole Genomes (PCAWG) Consortium, we introduce the Cancer LncRNA Census (CLC), a compilation of 122 GENCODE lncRNAs with causal roles in cancer phenotypes. In contrast to existing databases, CLC requires strong functional or genetic evidence. CLC genes are enriched amongst driver genes predicted from somatic mutations, and display characteristic genomic features. Strikingly, CLC genes are enriched for driver mutations from unbiased, genome-wide transposon-mutagenesis screens in mice. We identified 10 tumour-causing mutations in orthologues of 8 lncRNAs, including LINC-PINT and NEAT1, but not MALAT1. Thus CLC represents a dataset of high-confidence cancer lncRNAs. Mutagenesis maps are a novel means for identifying deeply-conserved roles of lncRNAs in tumorigenesis.
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    Integrative pathway enrichment analysis of multivariate omics data
    Paczkowska, M ; Barenboim, J ; Sintupisut, N ; Fox, NS ; Zhu, H ; Abd-Rabbo, D ; Mee, MW ; Boutros, PC ; Reimand, J (NATURE PUBLISHING GROUP, 2020-02-05)
    Multi-omics datasets represent distinct aspects of the central dogma of molecular biology. Such high-dimensional molecular profiles pose challenges to data interpretation and hypothesis generation. ActivePathways is an integrative method that discovers significantly enriched pathways across multiple datasets using statistical data fusion, rationalizes contributing evidence and highlights associated genes. As part of the ICGC/TCGA Pan-Cancer Analysis of Whole Genomes (PCAWG) Consortium, which aggregated whole genome sequencing data from 2658 cancers across 38 tumor types, we integrated genes with coding and non-coding mutations and revealed frequently mutated pathways and additional cancer genes with infrequent mutations. We also analyzed prognostic molecular pathways by integrating genomic and transcriptomic features of 1780 breast cancers and highlighted associations with immune response and anti-apoptotic signaling. Integration of ChIP-seq and RNA-seq data for master regulators of the Hippo pathway across normal human tissues identified processes of tissue regeneration and stem cell regulation. ActivePathways is a versatile method that improves systems-level understanding of cellular organization in health and disease through integration of multiple molecular datasets and pathway annotations.
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    Reconstructing evolutionary trajectories of mutation signature activities in cancer using TrackSig
    Rubanova, Y ; Shi, R ; Harrigan, CF ; Li, R ; Wintersinger, J ; Sahin, N ; Deshwar, A ; PCAWG Evolution and Heterogeneity Working Group, ; Morris, Q ; PCAWG Consortium, (Nature Research (part of Springer Nature), 2020-02-05)
    The type and genomic context of cancer mutations depend on their causes. These causes have been characterized using signatures that represent mutation types that co-occur in the same tumours. However, it remains unclear how mutation processes change during cancer evolution due to the lack of reliable methods to reconstruct evolutionary trajectories of mutational signature activity. Here, as part of the ICGC/TCGA Pan-Cancer Analysis of Whole Genomes (PCAWG) Consortium, which aggregated whole-genome sequencing data from 2658 cancers across 38 tumour types, we present TrackSig, a new method that reconstructs these trajectories using optimal, joint segmentation and deconvolution of mutation type and allele frequencies from a single tumour sample. In simulations, we find TrackSig has a 3-5% activity reconstruction error, and 12% false detection rate. It outperforms an aggressive baseline in situations with branching evolution, CNA gain, and neutral mutations. Applied to data from 2658 tumours and 38 cancer types, TrackSig permits pan-cancer insight into evolutionary changes in mutational processes.