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Dive into the research topics where Noah F. Greenwald is active.

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Featured researches published by Noah F. Greenwald.


Nature Genetics | 2017

Patient-derived xenografts undergo mouse-specific tumor evolution

Uri Ben-David; Gavin Ha; Yuen-Yi Tseng; Noah F. Greenwald; Coyin Oh; Juliann Shih; James M McFarland; Bang Wong; Jesse S. Boehm; Rameen Beroukhim; Todd R. Golub

Patient-derived xenografts (PDXs) have become a prominent cancer model system, as they are presumed to faithfully represent the genomic features of primary tumors. Here we monitored the dynamics of copy number alterations (CNAs) in 1,110 PDX samples across 24 cancer types. We observed rapid accumulation of CNAs during PDX passaging, often due to selection of preexisting minor clones. CNA acquisition in PDXs was correlated with the tissue-specific levels of aneuploidy and genetic heterogeneity observed in primary tumors. However, the particular CNAs acquired during PDX passaging differed from those acquired during tumor evolution in patients. Several CNAs recurrently observed in primary tumors gradually disappeared in PDXs, indicating that events undergoing positive selection in humans can become dispensable during propagation in mice. Notably, the genomic stability of PDXs was associated with their response to chemotherapy and targeted drugs. These findings have major implications for PDX-based modeling of human cancer.


Neuro-oncology | 2017

Clinical targeted exome-based sequencing in combination with genome-wide copy number profiling: precision medicine analysis of 203 pediatric brain tumors

Shakti Ramkissoon; Pratiti Bandopadhayay; Jaeho Hwang; Lori A. Ramkissoon; Noah F. Greenwald; Steven E. Schumacher; Ryan O’Rourke; Nathan Pinches; Patricia Ho; Hayley Malkin; Claire Sinai; Mariella G. Filbin; Ashley S. Plant; Wenya Linda Bi; Michael S. Chang; Edward Yang; Karen Wright; Peter Manley; Matthew Ducar; Sanda Alexandrescu; Hart G.W. Lidov; Ivana Delalle; Liliana Goumnerova; Alanna Church; Katherine A. Janeway; Marian H. Harris; Laura E. MacConaill; Rebecca D. Folkerth; Neal I. Lindeman; Charles D. Stiles

Background Clinical genomics platforms are needed to identify targetable alterations, but implementation of these technologies and best practices in routine clinical pediatric oncology practice are not yet well established. Methods Profile is an institution-wide prospective clinical research initiative that uses targeted sequencing to identify targetable alterations in tumors. OncoPanel, a multiplexed targeted exome-sequencing platform that includes 300 cancer-causing genes, was used to assess single nucleotide variants and rearrangements/indels. Alterations were annotated (Tiers 1-4) based on clinical significance, with Tier 1 alterations having well-established clinical utility. OncoCopy, a clinical genome-wide array comparative genomic hybridization (aCGH) assay, was also performed to evaluate copy number alterations and better define rearrangement breakpoints. Results Cancer genomes of 203 pediatric brain tumors were profiled across histological subtypes, including 117 samples analyzed by OncoPanel, 146 by OncoCopy, and 60 tumors subjected to both methodologies. OncoPanel revealed clinically relevant alterations in 56% of patients (44 cancer mutations and 20 rearrangements), including BRAF alterations that directed the use of targeted inhibitors. Rearrangements in MYB-QKI, MYBL1, BRAF, and FGFR1 were also detected. Furthermore, while copy number profiles differed across histologies, the combined use of OncoPanel and OncoCopy identified subgroup-specific alterations in 89% (17/19) of medulloblastomas. Conclusion The combination of OncoPanel and OncoCopy multiplex genomic assays can identify critical diagnostic, prognostic, and treatment-relevant alterations and represents an effective precision medicine approach for clinical evaluation of pediatric brain tumors.


Clinical Cancer Research | 2017

Landscape of Genomic Alterations in Pituitary Adenomas

Wenya Linda Bi; Peleg Horowtiz; Noah F. Greenwald; Malak Abedalthagafi; Pankaj K. Agarwalla; William J. Gibson; Yu Mei; Steven E. Schumacher; Uri Ben-David; Aaron Chevalier; Scott L. Carter; Grace Tiao; Priscilla K. Brastianos; Azra H. Ligon; Matthew Ducar; Laura E. MacConaill; Edward R. Laws; Sandro Santagata; Rameen Beroukhim; Ian F. Dunn

Purpose: Pituitary adenomas are the second most common primary brain tumor, yet their genetic profiles are incompletely understood. Experimental Design: We performed whole-exome sequencing of 42 pituitary macroadenomas and matched normal DNA. These adenomas included hormonally active and inactive tumors, ones with typical or atypical histology, and ones that were primary or recurrent. Results: We identified mutations, insertions/deletions, and copy-number alterations. Nearly one-third of samples (29%) had chromosome arm-level copy-number alterations across large fractions of the genome. Despite such widespread genomic disruption, these tumors had few focal events, which is unusual among highly disrupted cancers. The other 71% of tumors formed a distinct molecular class, with somatic copy number alterations involving less than 6% of the genome. Among the highly disrupted group, 75% were functional adenomas or atypical null-cell adenomas, whereas 87% of the less-disrupted group were nonfunctional adenomas. We confirmed this association between functional subtype and disruption in a validation dataset of 87 pituitary adenomas. Analysis of previously published expression data from an additional 50 adenomas showed that arm-level alterations significantly impacted transcript levels, and that the disrupted samples were characterized by expression changes associated with poor outcome in other cancers. Arm-level losses of chromosomes 1, 2, 11, and 18 were significantly recurrent. No significantly recurrent mutations were identified, suggesting no genes are altered by exonic mutations across large fractions of pituitary macroadenomas. Conclusions: These data indicate that sporadic pituitary adenomas have distinct copy-number profiles that associate with hormonal and histologic subtypes and influence gene expression. Clin Cancer Res; 23(7); 1841–51. ©2016 AACR.


Genome Research | 2018

SvABA: genome-wide detection of structural variants and indels by local assembly

Jeremiah Wala; Pratiti Bandopadhayay; Noah F. Greenwald; Ryan O'Rourke; Ted Sharpe; Chip Stewart; Steve Schumacher; Yilong Li; Joachim Weischenfeldt; Xiaotong Yao; Chad Nusbaum; Peter J. Campbell; Gad Getz; Matthew Meyerson; Cheng-Zhong Zhang; Marcin Imielinski; Rameen Beroukhim

Structural variants (SVs), including small insertion and deletion variants (indels), are challenging to detect through standard alignment-based variant calling methods. Sequence assembly offers a powerful approach to identifying SVs, but is difficult to apply at scale genome-wide for SV detection due to its computational complexity and the difficulty of extracting SVs from assembly contigs. We describe SvABA, an efficient and accurate method for detecting SVs from short-read sequencing data using genome-wide local assembly with low memory and computing requirements. We evaluated SvABAs performance on the NA12878 human genome and in simulated and real cancer genomes. SvABA demonstrates superior sensitivity and specificity across a large spectrum of SVs and substantially improves detection performance for variants in the 20-300 bp range, compared with existing methods. SvABA also identifies complex somatic rearrangements with chains of short (<1000 bp) templated-sequence insertions copied from distant genomic regions. We applied SvABA to 344 cancer genomes from 11 cancer types and found that short templated-sequence insertions occur in ∼4% of all somatic rearrangements. Finally, we demonstrate that SvABA can identify sites of viral integration and cancer driver alterations containing medium-sized (50-300 bp) SVs.


PLOS ONE | 2017

Genomic profile of human meningioma cell lines

Yu Mei; Wenya Linda Bi; Noah F. Greenwald; Nathalie Y. R. Agar; Rameen Beroukhim; Gavin P. Dunn; Ian F. Dunn

Meningiomas, derived from arachnoid cap cells, are the most common intracranial tumor. High-grade meningiomas, as well as those located at the skull base or near venous sinuses, frequently recur and are challenging to manage. Next-generation sequencing is identifying novel pharmacologic targets in meningiomas to complement surgery and radiation. However, due to the lack of in vitro models, the importance and implications of these genetic variants in meningioma pathogenesis and therapy remain unclear. We performed whole exome sequencing to assess single nucleotide variants and somatic copy number variants in four human meningioma cell lines, including two benign lines (HBL-52 and Ben-Men-1) and two malignant lines (IOMM-Lee and CH157-MN). The two malignant cell lines harbored an elevated rate of mutations and copy number alterations compared to the benign lines, consistent with the genetic profiles of high-grade meningiomas. In addition, these cell lines also harbored known meningioma driver mutations in neurofibromin 2 (NF2) and TNF receptor-associated factor 7 (TRAF7). These findings demonstrate the relevance of meningioma cell lines as a model system, especially as tools to investigate the signaling pathways of, and subsequent resistance to, therapeutics currently in clinical trials.


Endocrinology | 2017

Clinical Identification of Oncogenic Drivers and Copy-Number Alterations in Pituitary Tumors

Wenya Linda Bi; Noah F. Greenwald; Shakti Ramkissoon; Malak Abedalthagafi; Shannon Coy; Keith L. Ligon; Yu Mei; Laura E. MacConaill; Matt Ducar; Le Min; Sandro Santagata; Ursula B. Kaiser; Rameen Beroukhim; Edward R. Laws; Ian F. Dunn

Pituitary tumors are the second most common adult primary brain tumor, with a variable clinical course. Recent work has identified a number of genetic determinants of pituitary tumor subtypes, which may augment traditional histopathologic classification schemes. We sought to determine whether pituitary tumors could be stratified based on objective molecular characteristics using a clinical genomics assay. We performed a retrospective analysis of patients operated on at the Brigham and Womens Hospital from 2012 to 2016 whose pituitary tumors were profiled using multiplexed next-generation sequencing. We analyzed 127 pituitary tumors, including 114 adenomas, 5 craniopharyngiomas, and 8 tumors of other histologies. We observed recurrent BRAFV600E mutations in papillary craniopharyngiomas, CTNNB1 mutations in adamantinomatous craniopharyngiomas, and activating GNAS mutations in growth hormone-secreting adenomas. Furthermore, we validated the presence of two distinct genomic subclasses in adenomas (i.e., those with disrupted or quiet copy-number profiles) and the significant association of disruption with functional hormone status (P < 0.05). We report the clinical implementation of next-generation sequencing of pituitary tumors. We confirmed previously identified molecular subclasses for these tumors and show that routine screening as part of clinical practice is both feasible and informative. This large-scale proof-of-principle study may help to guide future institutional efforts for pituitary tumor classification as well as the incorporation of such techniques into prospective analysis as part of clinical trials.


PLOS ONE | 2017

Radiographic prediction of meningioma grade by semantic and radiomic features

T Coroller; Wenya Linda Bi; Elizabeth Huynh; Malak Abedalthagafi; Ayal A. Aizer; Noah F. Greenwald; Chintan Parmar; Vivek Narayan; Winona W. Wu; Samuel Miranda de Moura; Saksham Gupta; Rameen Beroukhim; Patrick Y. Wen; Ossama Al-Mefty; Ian F. Dunn; Sandro Santagata; Brian M. Alexander; Raymond Huang; Hugo J.W.L. Aerts

Objectives The clinical management of meningioma is guided by tumor grade and biological behavior. Currently, the assessment of tumor grade follows surgical resection and histopathologic review. Reliable techniques for pre-operative determination of tumor grade may enhance clinical decision-making. Methods A total of 175 meningioma patients (103 low-grade and 72 high-grade) with pre-operative contrast-enhanced T1-MRI were included. Fifteen radiomic (quantitative) and 10 semantic (qualitative) features were applied to quantify the imaging phenotype. Area under the curve (AUC) and odd ratios (OR) were computed with multiple-hypothesis correction. Random-forest classifiers were developed and validated on an independent dataset (n = 44). Results Twelve radiographic features (eight radiomic and four semantic) were significantly associated with meningioma grade. High-grade tumors exhibited necrosis/hemorrhage (ORsem = 6.6, AUCrad = 0.62–0.68), intratumoral heterogeneity (ORsem = 7.9, AUCrad = 0.65), non-spherical shape (AUCrad = 0.61), and larger volumes (AUCrad = 0.69) compared to low-grade tumors. Radiomic and sematic classifiers could significantly predict meningioma grade (AUCsem = 0.76 and AUCrad = 0.78). Furthermore, combining them increased the classification power (AUCradio = 0.86). Clinical variables alone did not effectively predict tumor grade (AUCclin = 0.65) or show complementary value with imaging data (AUCcomb = 0.84). Conclusions We found a strong association between imaging features of meningioma and histopathologic grade, with ready application to clinical management. Combining qualitative and quantitative radiographic features significantly improved classification power.


Oncotarget | 2016

Increased expression of programmed death ligand 1 (PD-L1) in human pituitary tumors

Yu Mei; Wenya Linda Bi; Noah F. Greenwald; Ziming Du; Nathalie Y. R. Agar; Ursula B. Kaiser; Whitney W. Woodmansee; David A. Reardon; Gordon J. Freeman; Peter E. Fecci; Edward R. Laws; Sandro Santagata; Gavin P. Dunn; Ian F. Dunn

Purpose Subsets of pituitary tumors exhibit an aggressive clinical courses and recur despite surgery, radiation, and chemotherapy. Because modulation of the immune response through inhibition of T-cell checkpoints has led to durable clinical responses in multiple malignancies, we explored whether pituitary adenomas express immune-related biomarkers that could suggest suitability for immunotherapy. Specifically, programmed death ligand 1 (PD-L1) has emerged as a potential biomarker whose expression may portend more favorable responses to immune checkpoint blockade therapies. We thus investigated the expression of PD-L1 in pituitary adenomas. Methods PD-L1 RNA and protein expression were evaluated in 48 pituitary tumors, including functioning and non-functioning adenomas as well as atypical and recurrent tumors. Tumor infiltrating lymphocyte populations were also assessed by immunohistochemistry. Results Pituitary tumors express variable levels of PD-L1 transcript and protein. PD-L1 RNA and protein expression were significantly increased in functioning (growth hormone and prolactin-expressing) pituitary adenomas compared to non-functioning (null cell and silent gonadotroph) adenomas. Moreover, primary pituitary adenomas harbored higher levels of PD-L1 mRNA compared to recurrent tumors. Tumor infiltrating lymphocytes were observed in all pituitary tumors and were positively correlated with increased PD-L1 expression, particularly in the functional subtypes. Conclusions Human pituitary adenomas harbor PD-L1 across subtypes, with significantly higher expression in functioning adenomas compared to non-functioning adenomas. This expression is accompanied by the presence of tumor infiltrating lymphocytes. These findings suggest the existence of an immune response to pituitary tumors and raise the possibility of considering checkpoint blockade immunotherapy in cases refractory to conventional management.


Science | 2017

Artificial intelligence in research

Mrinal Musib; Feng Wang; Michael A. Tarselli; Rachel Yoho; Kun-Hsing Yu; Rigoberto Medina Andrés; Noah F. Greenwald; Xubin Pan; Chien-Hsiu Lee; Jian Zhang; Ken Dutton-Regester; Jake Wyatt Johnston; Icell M. Sharafeldin

We asked young scientists to describe an example of artificial intelligence or machine learning in research, its broader implications in the field, and the challenges scientists face when using such technologies. Our surveys responses reflected a variety of countries and fields, but only 6% came


Cell Communication and Signaling | 2017

Osteoglycin promotes meningioma development through downregulation of NF2 and activation of mTOR signaling

Yu Mei; Ziming Du; Changchen Hu; Noah F. Greenwald; Malak Abedalthagafi; Nathalie Y. R. Agar; Gavin P. Dunn; Wenya Linda Bi; Sandro Santagata; Ian F. Dunn

BackgroundMeningiomas are the most common primary intracranial tumors in adults. While a majority of meningiomas are slow growing neoplasms that may cured by surgical resection, a subset demonstrates more aggressive behavior and insidiously recurs despite surgery and radiation, without effective alternative treatment options. Elucidation of critical mitogenic pathways in meningioma oncogenesis may offer new therapeutic strategies. We performed an integrated genomic and molecular analysis to characterize the expression and function of osteoglycin (OGN) in meningiomas and explored possible therapeutic approaches for OGN-expressing meningiomas.MethodsOGN mRNA expression in human meningiomas was assessed by RNA microarray and RNAscope. The impact of OGN on cell proliferation, colony formation, and mitogenic signaling cascades was assessed in a human meningioma cell line (IOMM-Lee) with stable overexpression of OGN. Furthermore, the functional consequences of introducing an AKT inhibitor in OGN-overexpressing meningioma cells were assessed.ResultsOGN mRNA expression was dramatically increased in meningiomas compared to a spectrum of other brain tumors and normal brain. OGN-overexpressing meningioma cells demonstrated an elevated rate of cell proliferation, cell cycle activation, and colony formation as compared with cells transfected with control vector. In addition, NF2 mRNA and protein expression were both attenuated in OGN-overexpressing cells. Conversely, mTOR pathway and AKT activation increased in OGN-overexpressing cells compared to control cells. Lastly, introduction of an AKT inhibitor reduced OGN expression in meningioma cells and resulted in increased cell death and autophagy, suggestive of a reciprocal relationship between OGN and AKT.ConclusionWe identify OGN as a novel oncogene in meningioma proliferation. AKT inhibition reduces OGN protein levels in meningioma cells, with a concomitant increase in cell death, which provides a promising treatment option for meningiomas with OGN overexpression.

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Ian F. Dunn

Brigham and Women's Hospital

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Sandro Santagata

Brigham and Women's Hospital

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Malak Abedalthagafi

Brigham and Women's Hospital

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Wenya Linda Bi

Brigham and Women's Hospital

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Ossama Al-Mefty

Brigham and Women's Hospital

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Yu Mei

Brigham and Women's Hospital

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Gavin P. Dunn

Washington University in St. Louis

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