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Dive into the research topics where Angela Hadjipanayis is active.

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Featured researches published by Angela Hadjipanayis.


Proceedings of the National Academy of Sciences of the United States of America | 2011

Copy number variation detection in whole-genome sequencing data using the Bayesian information criterion

Ruibin Xi; Angela Hadjipanayis; Lovelace J. Luquette; Tae-Min Kim; Eunjung Lee; Jianhua Zhang; Mark D. Johnson; Donna M. Muzny; David A. Wheeler; Richard A. Gibbs; Raju Kucherlapati; Peter J. Park

DNA copy number variations (CNVs) play an important role in the pathogenesis and progression of cancer and confer susceptibility to a variety of human disorders. Array comparative genomic hybridization has been used widely to identify CNVs genome wide, but the next-generation sequencing technology provides an opportunity to characterize CNVs genome wide with unprecedented resolution. In this study, we developed an algorithm to detect CNVs from whole-genome sequencing data and applied it to a newly sequenced glioblastoma genome with a matched control. This read-depth algorithm, called BIC-seq, can accurately and efficiently identify CNVs via minimizing the Bayesian information criterion. Using BIC-seq, we identified hundreds of CNVs as small as 40 bp in the cancer genome sequenced at 10× coverage, whereas we could only detect large CNVs (> 15 kb) in the array comparative genomic hybridization profiles for the same genome. Eighty percent (14/16) of the small variants tested (110 bp to 14 kb) were experimentally validated by quantitative PCR, demonstrating high sensitivity and true positive rate of the algorithm. We also extended the algorithm to detect recurrent CNVs in multiple samples as well as deriving error bars for breakpoints using a Gibbs sampling approach. We propose this statistical approach as a principled yet practical and efficient method to estimate CNVs in whole-genome sequencing data.


Proceedings of the National Academy of Sciences of the United States of America | 2014

Characterization of HPV and host genome interactions in primary head and neck cancers

Michael Parfenov; Chandra Sekhar Pedamallu; Nils Gehlenborg; Samuel S. Freeman; Ludmila Danilova; Christopher A. Bristow; Semin Lee; Angela Hadjipanayis; Elena Ivanova; Matthew D. Wilkerson; Alexei Protopopov; Lixing Yang; Sahil Seth; Xingzhi Song; Jiabin Tang; Xiaojia Ren; Jianhua Zhang; Angeliki Pantazi; Netty Santoso; Andrew W. Xu; Harshad S. Mahadeshwar; David A. Wheeler; Robert I. Haddad; Joonil Jung; Akinyemi I. Ojesina; Natalia Issaeva; Wendell G. Yarbrough; D. Neil Hayes; Jennifer R. Grandism; Adel K. El-Naggar

Significance A significant proportion of head and neck cancer is driven by human papillomavirus (HPV) infection, and the expression of viral oncogenes is involved in the development of these tumors. However, the role of HPV integration in primary tumors beyond increasing the expression of viral oncoproteins is not understood. Here, we describe how HPV integration impacts the host genome by amplification of oncogenes and disruption of tumor suppressors as well as driving inter- and intrachromosomal rearrangements. Tumors that do and do not have HPV integrants display distinct gene expression profiles and DNA methylation patterns, which further support the view that the mechanisms by which tumors with integrated and nonintegrated HPV arise are distinct. Previous studies have established that a subset of head and neck tumors contains human papillomavirus (HPV) sequences and that HPV-driven head and neck cancers display distinct biological and clinical features. HPV is known to drive cancer by the actions of the E6 and E7 oncoproteins, but the molecular architecture of HPV infection and its interaction with the host genome in head and neck cancers have not been comprehensively described. We profiled a cohort of 279 head and neck cancers with next generation RNA and DNA sequencing and show that 35 (12.5%) tumors displayed evidence of high-risk HPV types 16, 33, or 35. Twenty-five cases had integration of the viral genome into one or more locations in the human genome with statistical enrichment for genic regions. Integrations had a marked impact on the human genome and were associated with alterations in DNA copy number, mRNA transcript abundance and splicing, and both inter- and intrachromosomal rearrangements. Many of these events involved genes with documented roles in cancer. Cancers with integrated vs. nonintegrated HPV displayed different patterns of DNA methylation and both human and viral gene expressions. Together, these data provide insight into the mechanisms by which HPV interacts with the human genome beyond expression of viral oncoproteins and suggest that specific integration events are an integral component of viral oncogenesis.


Proceedings of the National Academy of Sciences of the United States of America | 2012

Spectrum of somatic mitochondrial mutations in five cancers

Tatianna C. Larman; Steven R. DePalma; Angela Hadjipanayis; Alexei Protopopov; Jianhua Zhang; Stacey Gabriel; Lynda Chin; Christine E. Seidman; Raju Kucherlapati; Jonathan G. Seidman

Somatic mtDNA mutations have been reported in some human tumors, but their spectrum in different malignancies and their role in cancer development remain incompletely understood. Here, we describe the breadth of somatic and inherited mutations across the mitochondrial genome by sequence analyses of paired tumor and normal tissue samples from 226 individuals with five types of cancer using whole-genome data generated by The Cancer Genome Atlas Research Network. The frequencies of deleterious tumor-specific somatic mutations found in mtDNA varied across tumor types, ranging from 13% of glioblastomas to 63% of rectal adenocarcinomas. Compared with inherited mtDNA variants, somatic mtDNA mutations were enriched for nonsynonymous vs. synonymous changes (93 vs. 15; P < 2.2E−16) and were predicted to functionally impact the encoded protein. Somatic missense mutations in tumors were distributed uniformly among the mitochondrial protein genes, but 65% of somatic truncating mutations occurred in NADH dehydrogenase 5. Analysis of staging data in colon and rectal cancers revealed that the frequency of damaging mitochondrial mutations is the same in stages I and IV tumors. In summary, these data suggest that damaging somatic mtDNA mutations occur frequently (13–63%) in these five tumor types and likely confer a selective advantage in oncogenesis.


Cell Reports | 2018

A Pan-Cancer Compendium of Genes Deregulated by Somatic Genomic Rearrangement across More Than 1,400 Cases

Yiqun Zhang; Lixing Yang; Melanie H. Kucherlapati; Fengju Chen; Angela Hadjipanayis; Angeliki Pantazi; Christopher A. Bristow; Eunjung Lee; Harshad S. Mahadeshwar; Jiabin Tang; Jianhua Zhang; Sahil Seth; Semin Lee; Xiaojia Ren; Xingzhi Song; Huandong Sun; Jonathan G. Seidman; Lovelace J. Luquette; Ruibin Xi; Lynda Chin; Alexei Protopopov; Wei Li; Peter J. Park; Raju Kucherlapati; Chad J. Creighton

A systematic cataloging of genes affected by genomic rearrangement, using multiple patient cohorts and cancer types, can provide insight into cancer-relevant alterations outside of exomes. By integrative analysis of whole-genome sequencing (predominantly low pass) and gene expression data from 1,448 cancers involving 18 histopathological types in The Cancer Genome Atlas, we identified hundreds of genes for which the nearby presence (within 100 kb) of a somatic structural variant (SV) breakpoint is associated with altered expression. While genomic rearrangements are associated with widespread copy-number alteration (CNA) patterns, approximately 1,100 genes-including overexpressed cancer driver genes (e.g., TERT, ERBB2, CDK12, CDK4) and underexpressed tumor suppressors (e.g., TP53, RB1, PTEN, STK11)-show SV-associated deregulation independent of CNA. SVs associated with the disruption of topologically associated domains, enhancer hijacking, or fusion transcripts are implicated in gene upregulation. For cancer-relevant pathways, SVs considerably expand our understanding of how genes are affected beyond point mutation or CNA.


Cancer Cell | 2017

A Pan-Cancer Proteogenomic Atlas of PI3K/AKT/mTOR Pathway Alterations

Yiqun Zhang; Patrick Kwok Shing Ng; Melanie H. Kucherlapati; Fengju Chen; Yuexin Liu; Yiu Huen Tsang; Guillermo Velasco; Kang Jin Jeong; Rehan Akbani; Angela Hadjipanayis; Angeliki Pantazi; Christopher A. Bristow; Eunjung Lee; Harshad S. Mahadeshwar; Jiabin Tang; Jianhua Zhang; Lixing Yang; Sahil Seth; Semin Lee; Xiaojia Ren; Xingzhi Song; Huandong Sun; Jonathan G. Seidman; Lovelace J. Luquette; Ruibin Xi; Lynda Chin; Alexei Protopopov; Thomas F. Westbrook; Carl Simon Shelley; Toni K. Choueiri


Genome Biology | 2010

BIC-seq: a fast algorithm for detection of copy number alterations based on high-throughput sequencing data

Ruibin Xi; Joe Luquette; Angela Hadjipanayis; Tae-Min Kim; Peter J. Park

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Jianhua Zhang

University of Texas MD Anderson Cancer Center

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Alexei Protopopov

University of Texas MD Anderson Cancer Center

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Christopher A. Bristow

University of Texas MD Anderson Cancer Center

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Harshad S. Mahadeshwar

University of Texas MD Anderson Cancer Center

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Jiabin Tang

University of Texas MD Anderson Cancer Center

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