A. Ercument Cicek
Carnegie Mellon University
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Publication
Featured researches published by A. Ercument Cicek.
Neuron | 2015
Stephan J. Sanders; Xin He; A. Jeremy Willsey; A. Gulhan Ercan-Sencicek; Kaitlin E. Samocha; A. Ercument Cicek; Vanessa Hus Bal; Somer L. Bishop; Shan Dong; Arthur P. Goldberg; Cai Jinlu; John F. Keaney; Lambertus Klei; Jeffrey D. Mandell; Daniel Moreno-De-Luca; Christopher S. Poultney; Elise B. Robinson; Louw Smith; Tor Solli-Nowlan; Mack Y. Su; Nicole A. Teran; Michael F. Walker; Donna M. Werling; Arthur L. Beaudet; Rita M. Cantor; Eric Fombonne; Daniel H. Geschwind; Dorothy E. Grice; Catherine Lord; Jennifer K. Lowe
Analysis of de novo CNVs (dnCNVs) from the full Simons Simplex Collection (SSC) (N = 2,591 families) replicates prior findings of strong association with autism spectrum disorders (ASDs) and confirms six risk loci (1q21.1, 3q29, 7q11.23, 16p11.2, 15q11.2-13, and 22q11.2). The addition of published CNV data from the Autism Genome Project (AGP) and exome sequencing data from the SSC and the Autism Sequencing Consortium (ASC) shows that genes within small de novo deletions, but not within large dnCNVs, significantly overlap the high-effect risk genes identified by sequencing. Alternatively, large dnCNVs are found likely to contain multiple modest-effect risk genes. Overall, we find strong evidence that de novo mutations are associated with ASD apart from the risk for intellectual disability. Extending the transmission and de novo association test (TADA) to include small de novo deletions reveals 71 ASD risk loci, including 6 CNV regions (noted above) and 65 risk genes (FDR ≤ 0.1).
Nature Neuroscience | 2016
Menachem Fromer; Panos Roussos; Solveig K. Sieberts; Jessica S. Johnson; David H. Kavanagh; Thanneer M. Perumal; Douglas M. Ruderfer; Edwin C. Oh; Aaron Topol; Hardik Shah; Lambertus Klei; Robin Kramer; Dalila Pinto; Zeynep H. Gümüş; A. Ercument Cicek; Kristen Dang; Andrew Browne; Cong Lu; Lu Xie; Ben Readhead; Eli A. Stahl; Jianqiu Xiao; Mahsa Parvizi; Tymor Hamamsy; John F. Fullard; Ying-Chih Wang; Milind Mahajan; Jonathan Derry; Joel T. Dudley; Scott E. Hemby
Over 100 genetic loci harbor schizophrenia-associated variants, yet how these variants confer liability is uncertain. The CommonMind Consortium sequenced RNA from dorsolateral prefrontal cortex of people with schizophrenia (N = 258) and control subjects (N = 279), creating a resource of gene expression and its genetic regulation. Using this resource, ∼20% of schizophrenia loci have variants that could contribute to altered gene expression and liability. In five loci, only a single gene was involved: FURIN, TSNARE1, CNTN4, CLCN3 or SNAP91. Altering expression of FURIN, TSNARE1 or CNTN4 changed neurodevelopment in zebrafish; knockdown of FURIN in human neural progenitor cells yielded abnormal migration. Of 693 genes showing significant case-versus-control differential expression, their fold changes were ≤ 1.33, and an independent cohort yielded similar results. Gene co-expression implicates a network relevant for schizophrenia. Our findings show that schizophrenia is polygenic and highlight the utility of this resource for mechanistic interpretations of genetic liability for brain diseases.
Neoplasia | 2015
Alessio Imperiale; François-Marie Moussallieh; Philippe Roche; Stéphanie Battini; A. Ercument Cicek; F. Sebag; Laurent Brunaud; Anne Barlier; Karim Elbayed; Anderson Loundou; Philippe Bachellier; B. Goichot; Constantine A. Stratakis; Karel Pacak; Izzie-Jacques Namer; David Taïeb
Succinate dehydrogenase gene (SDHx) mutations increase susceptibility to develop pheochromocytomas/paragangliomas (PHEOs/PGLs). In the present study, we evaluate the performance and clinical applications of 1H high-resolution magic angle spinning (HRMAS) nuclear magnetic resonance (NMR) spectroscopy–based global metabolomic profiling in a large series of PHEOs/PGLs of different genetic backgrounds. Eighty-seven PHEOs/PGLs (48 sporadic/23 SDHx/7 von Hippel-Lindau/5 REarranged during Transfection/3 neurofibromatosis type 1/1 hypoxia-inducible factor 2α), one SDHD variant of unknown significance, and two Carney triad (CTr)–related tumors were analyzed by HRMAS-NMR spectroscopy. Compared to sporadic, SDHx-related PHEOs/PGLs exhibit a specific metabolic signature characterized by increased levels of succinate (P < .0001), methionine (P = .002), glutamine (P = .002), and myoinositol (P < .0007) and decreased levels of glutamate (P < .0007), regardless of their location and catecholamine levels. Uniquely, ATP/ascorbate/glutathione was found to be associated with the secretory phenotype of PHEOs/PGLs, regardless of their genotype (P < .0007). The use of succinate as a single screening test retained excellent accuracy in distinguishing SDHx versus non–SDHx-related tumors (sensitivity/specificity: 100/100%). Moreover, the quantification of succinate could be considered a diagnostic alternative for assessing SDHx-related mutations of unknown pathogenicity. We were also able, for the first time, to uncover an SDH-like pattern in the two CTr-related PGLs. The present study demonstrates that HRMAS-NMR provides important information for SDHx-related PHEO/PGL characterization. Besides the high succinate–low glutamate hallmark, SDHx tumors also exhibit high values of methionine, a finding consistent with the hypermethylation pattern of these tumors. We also found important levels of glutamine, suggesting that glutamine metabolism might be involved in the pathogenesis of SDHx-related PHEOs/PGLs.
very large data bases | 2014
A. Ercument Cicek; Mehmet Ercan Nergiz; Yücel Saygin
The rise of mobile technologies in the last decade has led to vast amounts of location information generated by individuals. From the knowledge discovery point of view, these data are quite valuable, but the inherent personal information in the data raises privacy concerns. There exists many algorithms in the literature to satisfy the privacy requirements of individuals, by generalizing, perturbing, and suppressing their data. Current techniques that try to ensure a level of indistinguishability between trajectories in a dataset are direct applications of
PLOS Computational Biology | 2013
A. Ercument Cicek; Ilya R. Bederman; Leigh Henderson; Mitchell L. Drumm; Gultekin Ozsoyoglu
BMC Systems Biology | 2011
Ali Cakmak; Xinjian Qi; Sarp A Coskun; Mitali Das; En Cheng; A. Ercument Cicek; Nicola Lai; Gultekin Ozsoyoglu; Z. Meral Ozsoyoglu
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Journal of Bioinformatics and Computational Biology | 2012
Ali Cakmak; Xinjian Qi; A. Ercument Cicek; Ilya R. Bederman; Leigh Henderson; Mitchell L. Drumm; Gultekin Ozsoyoglu
health information science | 2013
Stephen R. Johnson; Xinjian Qi; A. Ercument Cicek; Gultekin Ozsoyoglu
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BMC Systems Biology | 2012
Sarp A Coskun; Xinjian Qi; Ali Cakmak; En Cheng; A. Ercument Cicek; Lei Yang; Rishiraj Jadeja; Ranjan K. Dash; Nicola Lai; Gultekin Ozsoyoglu; Zehra Meral Ozsoyoglu
Genome Biology | 2015
Xin He; A. Ercument Cicek; Yuhao Wang; Marcel H. Schulz; Hai-Son Le; Ziv Bar-Joseph
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