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Dive into the research topics where Shawn Levy is active.

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Featured researches published by Shawn Levy.


Nature | 2012

Patterns and rates of exonic de novo mutations in autism spectrum disorders

Benjamin M. Neale; Yan Kou; Li Liu; Avi Ma'ayan; Kaitlin E. Samocha; Aniko Sabo; Chiao-Feng Lin; Christine Stevens; Li-San Wang; Vladimir Makarov; Pazi Penchas Polak; Seungtai Yoon; Jared Maguire; Emily L. Crawford; Nicholas G. Campbell; Evan T. Geller; Otto Valladares; Chad Shafer; Han Liu; Tuo Zhao; Guiqing Cai; Jayon Lihm; Ruth Dannenfelser; Omar Jabado; Zuleyma Peralta; Uma Nagaswamy; Donna M. Muzny; Jeffrey G. Reid; Irene Newsham; Yuanqing Wu

Autism spectrum disorders (ASD) are believed to have genetic and environmental origins, yet in only a modest fraction of individuals can specific causes be identified. To identify further genetic risk factors, here we assess the role of de novo mutations in ASD by sequencing the exomes of ASD cases and their parents (n = 175 trios). Fewer than half of the cases (46.3%) carry a missense or nonsense de novo variant, and the overall rate of mutation is only modestly higher than the expected rate. In contrast, the proteins encoded by genes that harboured de novo missense or nonsense mutations showed a higher degree of connectivity among themselves and to previous ASD genes as indexed by protein-protein interaction screens. The small increase in the rate of de novo events, when taken together with the protein interaction results, are consistent with an important but limited role for de novo point mutations in ASD, similar to that documented for de novo copy number variants. Genetic models incorporating these data indicate that most of the observed de novo events are unconnected to ASD; those that do confer risk are distributed across many genes and are incompletely penetrant (that is, not necessarily sufficient for disease). Our results support polygenic models in which spontaneous coding mutations in any of a large number of genes increases risk by 5- to 20-fold. Despite the challenge posed by such models, results from de novo events and a large parallel case–control study provide strong evidence in favour of CHD8 and KATNAL2 as genuine autism risk factors.


Nature | 2004

The ADP/ATP translocator is not essential for the mitochondrial permeability transition pore

Jason E. Kokoszka; Katrina G. Waymire; Shawn Levy; James E. Sligh; Jiyang Cai; Dean P. Jones; Grant R. MacGregor; Douglas C. Wallace

A sudden increase in permeability of the inner mitochondrial membrane, the so-called mitochondrial permeability transition, is a common feature of apoptosis and is mediated by the mitochondrial permeability transition pore (mtPTP). It is thought that the mtPTP is a protein complex formed by the voltage-dependent anion channel, members of the pro- and anti-apoptotic BAX-BCL2 protein family, cyclophilin D, and the adenine nucleotide (ADP/ATP) translocators (ANTs). The latter exchange mitochondrial ATP for cytosolic ADP and have been implicated in cell death. To investigate the role of the ANTs in the mtPTP, we genetically inactivated the two isoforms of ANT in mouse liver and analysed mtPTP activation in isolated mitochondria and the induction of cell death in hepatocytes. Mitochondria lacking ANT could still be induced to undergo permeability transition, resulting in release of cytochrome c. However, more Ca2+ than usual was required to activate the mtPTP, and the pore could no longer be regulated by ANT ligands. Moreover, hepatocytes without ANT remained competent to respond to various initiators of cell death. Therefore, ANTs are non-essential structural components of the mtPTP, although they do contribute to its regulation.


Nature Genetics | 2008

Strong association of de novo copy number mutations with sporadic schizophrenia

Bin Xu; J. Louw Roos; Shawn Levy; E. J. Van Rensburg; Joseph A. Gogos; Maria Karayiorgou

Schizophrenia is an etiologically heterogeneous psychiatric disease, which exists in familial and nonfamilial (sporadic) forms. Here, we examine the possibility that rare de novo copy number (CN) mutations with relatively high penetrance contribute to the genetic component of schizophrenia. We carried out a whole-genome scan and implemented a number of steps for finding and confirming CN mutations. Confirmed de novo mutations were significantly associated with schizophrenia (P = 0.00078) and were collectively ∼8 times more frequent in sporadic (but not familial) cases with schizophrenia than in unaffected controls. In comparison, rare inherited CN mutations were only modestly enriched in sporadic cases. Our results suggest that rare de novo germline mutations contribute to schizophrenia vulnerability in sporadic cases and that rare genetic lesions at many different loci can account, at least in part, for the genetic heterogeneity of this disease.


Bioinformatics | 2005

A comprehensive evaluation of multicategory classification methods for microarray gene expression cancer diagnosis

Alexander R. Statnikov; Constantin F. Aliferis; Ioannis Tsamardinos; Douglas P. Hardin; Shawn Levy

MOTIVATION Cancer diagnosis is one of the most important emerging clinical applications of gene expression microarray technology. We are seeking to develop a computer system for powerful and reliable cancer diagnostic model creation based on microarray data. To keep a realistic perspective on clinical applications we focus on multicategory diagnosis. To equip the system with the optimum combination of classifier, gene selection and cross-validation methods, we performed a systematic and comprehensive evaluation of several major algorithms for multicategory classification, several gene selection methods, multiple ensemble classifier methods and two cross-validation designs using 11 datasets spanning 74 diagnostic categories and 41 cancer types and 12 normal tissue types. RESULTS Multicategory support vector machines (MC-SVMs) are the most effective classifiers in performing accurate cancer diagnosis from gene expression data. The MC-SVM techniques by Crammer and Singer, Weston and Watkins and one-versus-rest were found to be the best methods in this domain. MC-SVMs outperform other popular machine learning algorithms, such as k-nearest neighbors, backpropagation and probabilistic neural networks, often to a remarkable degree. Gene selection techniques can significantly improve the classification performance of both MC-SVMs and other non-SVM learning algorithms. Ensemble classifiers do not generally improve performance of the best non-ensemble models. These results guided the construction of a software system GEMS (Gene Expression Model Selector) that automates high-quality model construction and enforces sound optimization and performance estimation procedures. This is the first such system to be informed by a rigorous comparative analysis of the available algorithms and datasets. AVAILABILITY The software system GEMS is available for download from http://www.gems-system.org for non-commercial use. CONTACT [email protected].


Journal of Clinical Oncology | 2006

Increased Epidermal Growth Factor Receptor Gene Copy Number Is Associated With Poor Prognosis in Head and Neck Squamous Cell Carcinomas

Christine H. Chung; Kim Ely; Loris McGavran; Marileila Varella-Garcia; Joel Parker; Natalie Parker; Carolyn Jarrett; Jesse Carter; Barbara A. Murphy; James L. Netterville; Brian B. Burkey; Robert J. Sinard; Anthony J. Cmelak; Shawn Levy; Wendell G. Yarbrough; Robbert J. C. Slebos; Fred R. Hirsch

PURPOSE High epidermal growth factor receptor (EGFR) gene copy number is associated with poor prognosis in lung cancer, but such findings have not been reported for HNSCC. A better understanding of the EGFR pathway may improve the use of EGFR inhibitors in HNSCC. PATIENTS AND METHODS EGFR status was analyzed in 86 tumor samples from 82 HNSCC patients by fluorescent in situ hybridization (FISH) to determine EGFR gene copy number, by polymerase chain reaction and direct sequencing for activating mutations, and by DNA microarray and immunohistochemistry for RNA and protein expression. The results were associated with patient characteristics and clinical end points. RESULTS Forty-three (58%) of 75 samples with FISH results demonstrated EGFR high polysomy and/or gene amplification (FISH positive). The FISH-positive group did not differ from the FISH-negative group with respect to age, sex, race, tumor grade, subsites and stage, or EGFR expression by analyses of RNA or protein. No activating EGFR mutations were found. However, the FISH-positive group was associated with worse progression-free and overall survival (P < .05 and P < .01, respectively; log-rank test). When microarray data were interrogated using the FISH results as a supervising parameter, ECop (which is known to coamplify with EGFR and regulate nuclear factor-kappa B transcriptional activity) had higher expression in FISH-positive tumors. CONCLUSION High EGFR gene copy number by FISH is frequent in HNSCC and is a poor prognostic indicator. Additional investigation is indicated to determine the biologic significance and implications for EGFR inhibitor therapies in HNSCC.


Nature Genetics | 2009

Genome-wide association study identifies a new breast cancer susceptibility locus at 6q25.1.

Wei Zheng; Jirong Long; Yu-Tang Gao; Chun Li; Ying Zheng; Yong Bin Xiang; Wanqing Wen; Shawn Levy; Sandra L. Deming; Jonathan L. Haines; Kai Gu; Alecia M. Fair; Qiuyin Cai; Wei Lu; Xiao-Ou Shu

We carried out a genome-wide association study among Chinese women to identify risk variants for breast cancer. After analyzing 607,728 SNPs in 1,505 cases and 1,522 controls, we selected 29 SNPs for a fast-track replication in an independent set of 1,554 cases and 1,576 controls. We further investigated four replicated loci in a third set of samples comprising 3,472 cases and 900 controls. SNP rs2046210 at 6q25.1, located upstream of the gene encoding estrogen receptor α (ESR1), showed strong and consistent association with breast cancer across all three stages. Adjusted odds ratio (95% CI) were 1.36 (1.24–1.49) and 1.59 (1.40–1.82), respectively, for genotypes A/G and A/A versus G/G (P for trend 2.0 × 10−15) in the pooled analysis of samples from all three stages. We also found a similar, albeit weaker, association in an independent study comprising 1,591 cases and 1,466 controls of European ancestry (Ptrend = 0.01). These results strongly implicate 6q25.1 as a susceptibility locus for breast cancer.


Science | 2015

Exome sequencing in amyotrophic lateral sclerosis identifies risk genes and pathways

Elizabeth T. Cirulli; Brittany N. Lasseigne; Slavé Petrovski; Peter C. Sapp; Patrick A. Dion; Claire S. Leblond; Julien Couthouis; Yi Fan Lu; Quanli Wang; Brian Krueger; Zhong Ren; Jonathan Keebler; Yujun Han; Shawn Levy; Braden E. Boone; Jack R. Wimbish; Lindsay L. Waite; Angela L. Jones; John P. Carulli; Aaron G. Day-Williams; John F. Staropoli; Winnie Xin; Alessandra Chesi; Alya R. Raphael; Diane McKenna-Yasek; Janet Cady; J.M.B.Vianney de Jong; Kevin Kenna; Bradley Smith; Simon Topp

New players in Lou Gehrigs disease Amyotrophic lateral sclerosis (ALS), often referred to as “Lou Gehrigs disease,” is a progressive neurodegenerative disease that affects nerve cells in the brain and the spinal cord. Cirulli et al. sequenced the expressed genes of nearly 3000 ALS patients and compared them with those of more than 6000 controls (see the Perspective by Singleton and Traynor). They identified several proteins that were linked to disease in patients. One such protein, TBK1, is implicated in innate immunity and autophagy and may represent a therapeutic target. Science, this issue p. 1436; see also p. 1422 Analysis of the expressed genes of nearly 2900 patients with amyotrophic lateral sclerosis and about 6400 controls reveals a disease predisposition–associated gene. [Also see Perspective by Singleton and Traynor] Amyotrophic lateral sclerosis (ALS) is a devastating neurological disease with no effective treatment. We report the results of a moderate-scale sequencing study aimed at increasing the number of genes known to contribute to predisposition for ALS. We performed whole-exome sequencing of 2869 ALS patients and 6405 controls. Several known ALS genes were found to be associated, and TBK1 (the gene encoding TANK-binding kinase 1) was identified as an ALS gene. TBK1 is known to bind to and phosphorylate a number of proteins involved in innate immunity and autophagy, including optineurin (OPTN) and p62 (SQSTM1/sequestosome), both of which have also been implicated in ALS. These observations reveal a key role of the autophagic pathway in ALS and suggest specific targets for therapeutic intervention.


Nature Genetics | 2011

Exome sequencing supports a de novo mutational paradigm for schizophrenia

Bin Xu; J. Louw Roos; Phillip Dexheimer; Braden Boone; Brooks Plummer; Shawn Levy; Joseph A. Gogos; Maria Karayiorgou

Despite its high heritability, a large fraction of individuals with schizophrenia do not have a family history of the disease (sporadic cases). Here we examined the possibility that rare de novo protein-altering mutations contribute to the genetic component of schizophrenia by sequencing the exomes of 53 sporadic cases, 22 unaffected controls and their parents. We identified 40 de novo mutations in 27 cases affecting 40 genes, including a potentially disruptive mutation in DGCR2, a gene located in the schizophrenia-predisposing 22q11.2 microdeletion region. A comparison to rare inherited variants indicated that the identified de novo mutations show a large excess of non-synonymous changes in schizophrenia cases, as well as a greater potential to affect protein structure and function. Our analyses suggest a major role for de novo mutations in schizophrenia as well as a large mutational target, which together provide a plausible explanation for the high global incidence and persistence of the disease.


Gastroenterology | 2010

Experimentally Derived Metastasis Gene Expression Profile Predicts Recurrence and Death in Patients With Colon Cancer

J. Joshua Smith; Natasha G. Deane; Fei Wu; Nipun B. Merchant; Bing Zhang; Aixiang Jiang; Pengcheng Lu; J. Chad Johnson; Carl R. Schmidt; Christina E. Bailey; Steven Eschrich; Christian Kis; Shawn Levy; M. Kay Washington; Martin J. Heslin; Robert J. Coffey; Timothy J. Yeatman; Yu Shyr; R. Daniel Beauchamp

BACKGROUND & AIMS Staging inadequately predicts metastatic risk in patients with colon cancer. We used a gene expression profile derived from invasive, murine colon cancer cells that were highly metastatic in an immunocompetent mouse model to identify patients with colon cancer at risk of recurrence. METHODS This phase 1, exploratory biomarker study used 55 patients with colorectal cancer from Vanderbilt Medical Center (VMC) as the training dataset and 177 patients from the Moffitt Cancer Center as the independent dataset. The metastasis-associated gene expression profile developed from the mouse model was refined with comparative functional genomics in the VMC gene expression profiles to identify a 34-gene classifier associated with high risk of metastasis and death from colon cancer. A metastasis score derived from the biologically based classifier was tested in the Moffitt dataset. RESULTS A high score was significantly associated with increased risk of metastasis and death from colon cancer across all pathologic stages and specifically in stage II and stage III patients. The metastasis score was shown to independently predict risk of cancer recurrence and death in univariate and multivariate models. For example, among stage III patients, a high score translated to increased relative risk of cancer recurrence (hazard ratio, 4.7; 95% confidence interval, 1.566-14.05). Furthermore, the metastasis score identified patients with stage III disease whose 5-year recurrence-free survival was >88% and for whom adjuvant chemotherapy did not increase survival time. CONCLUSION A gene expression profile identified from an experimental model of colon cancer metastasis predicted cancer recurrence and death, independently of conventional measures, in patients with colon cancer.


Nature Genetics | 2012

De novo gene mutations highlight patterns of genetic and neural complexity in schizophrenia

Bin Xu; Iuliana Ionita-Laza; J. Louw Roos; Braden Boone; Scarlet Woodrick; Yan-Yan Sun; Shawn Levy; Joseph A. Gogos; Maria Karayiorgou

To evaluate evidence for de novo etiologies in schizophrenia, we sequenced at high coverage the exomes of families recruited from two populations with distinct demographic structures and history. We sequenced a total of 795 exomes from 231 parent-proband trios enriched for sporadic schizophrenia cases, as well as 34 unaffected trios. We observed in cases an excess of de novo nonsynonymous single-nucleotide variants as well as a higher prevalence of gene-disruptive de novo mutations relative to controls. We found four genes (LAMA2, DPYD, TRRAP and VPS39) affected by recurrent de novo events within or across the two populations, which is unlikely to have occurred by chance. We show that de novo mutations affect genes with diverse functions and developmental profiles, but we also find a substantial contribution of mutations in genes with higher expression in early fetal life. Our results help define the genomic and neural architecture of schizophrenia.

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Nripesh Prasad

University of Alabama in Huntsville

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Hong-Wen Deng

University of Missouri–Kansas City

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Han Yan

Xi'an Jiaotong University

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Braden Boone

Vanderbilt University Medical Center

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Douglas C. Wallace

Children's Hospital of Philadelphia

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Liang Wang

Xi'an Jiaotong University

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Robert J. Coffey

Vanderbilt University Medical Center

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Yu Shyr

Vanderbilt University

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Xiao Gang Liu

Xi'an Jiaotong University

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