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Featured researches published by George Mias.


Cell | 2012

Personal Omics Profiling Reveals Dynamic Molecular and Medical Phenotypes

Rui Chen; George Mias; Jennifer Li-Pook-Than; Lihua Jiang; Hugo Y. K. Lam; Rong Chen; Elana Miriami; Konrad J. Karczewski; Manoj Hariharan; Frederick E. Dewey; Yong Cheng; Michael J. Clark; Hogune Im; Lukas Habegger; Suganthi Balasubramanian; Maeve O'Huallachain; Joel T. Dudley; Sara Hillenmeyer; Rajini Haraksingh; Donald Sharon; Ghia Euskirchen; Phil Lacroute; Keith Bettinger; Alan P. Boyle; Maya Kasowski; Fabian Grubert; Scott Seki; Marco Garcia; Michelle Whirl-Carrillo; Mercedes Gallardo

Personalized medicine is expected to benefit from combining genomic information with regular monitoring of physiological states by multiple high-throughput methods. Here, we present an integrative personal omics profile (iPOP), an analysis that combines genomic, transcriptomic, proteomic, metabolomic, and autoantibody profiles from a single individual over a 14 month period. Our iPOP analysis revealed various medical risks, including type 2 diabetes. It also uncovered extensive, dynamic changes in diverse molecular components and biological pathways across healthy and diseased conditions. Extremely high-coverage genomic and transcriptomic data, which provide the basis of our iPOP, revealed extensive heteroallelic changes during healthy and diseased states and an unexpected RNA editing mechanism. This study demonstrates that longitudinal iPOP can be used to interpret healthy and diseased states by connecting genomic information with additional dynamic omics activity.


The Journal of Allergy and Clinical Immunology | 2013

Whole-exome sequencing identifies tetratricopeptide repeat domain 7A (TTC7A) mutations for combined immunodeficiency with intestinal atresias

Rui Chen; Silvia Giliani; Gaetana Lanzi; George Mias; Silvia Lonardi; Kerry Dobbs; John P. Manis; Hogune Im; Jennifer E.G. Gallagher; Douglas H. Phanstiel; Ghia Euskirchen; Philippe Lacroute; Keith Bettinger; Daniele Moratto; Katja G. Weinacht; Davide Montin; Eleonora Gallo; Giovanna Mangili; Fulvio Porta; Lucia Dora Notarangelo; Stefania Pedretti; Waleed Al-Herz; Anne Marie Comeau; Russell S. Traister; Sung-Yun Pai; Graziella Carella; Fabio Facchetti; Kari C. Nadeau; Michael Snyder; Luigi D. Notarangelo

BACKGROUND Combined immunodeficiency with multiple intestinal atresias (CID-MIA) is a rare hereditary disease characterized by intestinal obstructions and profound immune defects. OBJECTIVE We sought to determine the underlying genetic causes of CID-MIA by analyzing the exomic sequences of 5 patients and their healthy direct relatives from 5 unrelated families. METHODS We performed whole-exome sequencing on 5 patients with CID-MIA and 10 healthy direct family members belonging to 5 unrelated families with CID-MIA. We also performed targeted Sanger sequencing for the candidate gene tetratricopeptide repeat domain 7A (TTC7A) on 3 additional patients with CID-MIA. RESULTS Through analysis and comparison of the exomic sequence of the subjects from these 5 families, we identified biallelic damaging mutations in the TTC7A gene, for a total of 7 distinct mutations. Targeted TTC7A gene sequencing in 3 additional unrelated patients with CID-MIA revealed biallelic deleterious mutations in 2 of them, as well as an aberrant splice product in the third patient. Staining of normal thymus showed that the TTC7A protein is expressed in thymic epithelial cells, as well as in thymocytes. Moreover, severe lymphoid depletion was observed in the thymus and peripheral lymphoid tissues from 2 patients with CID-MIA. CONCLUSIONS We identified deleterious mutations of the TTC7A gene in 8 unrelated patients with CID-MIA and demonstrated that the TTC7A protein is expressed in the thymus. Our results strongly suggest that TTC7A gene defects cause CID-MIA.


Metabolites | 2013

Integrative Analysis of Longitudinal Metabolomics Data from a Personal Multi-Omics Profile

Larissa Stanberry; George Mias; Winston Haynes; Roger Higdon; Michael Snyder; Eugene Kolker

The integrative personal omics profile (iPOP) is a pioneering study that combines genomics, transcriptomics, proteomics, metabolomics and autoantibody profiles from a single individual over a 14-month period. The observation period includes two episodes of viral infection: a human rhinovirus and a respiratory syncytial virus. The profile studies give an informative snapshot into the biological functioning of an organism. We hypothesize that pathway expression levels are associated with disease status. To test this hypothesis, we use biological pathways to integrate metabolomics and proteomics iPOP data. The approach computes the pathways’ differential expression levels at each time point, while taking into account the pathway structure and the longitudinal design. The resulting pathway levels show strong association with the disease status. Further, we identify temporal patterns in metabolite expression levels. The changes in metabolite expression levels also appear to be consistent with the disease status. The results of the integrative analysis suggest that changes in biological pathways may be used to predict and monitor the disease. The iPOP experimental design, data acquisition and analysis issues are discussed within the broader context of personal profiling.


Omics A Journal of Integrative Biology | 2014

Toward more transparent and reproducible omics studies through a common metadata checklist and data publications.

Eugene Kolker; Vural Ozdemir; Lennart Martens; William S. Hancock; Gordon A. Anderson; Nathaniel Anderson; Sukru Aynacioglu; Ancha Baranova; Shawn R. Campagna; Rui Chen; John Choiniere; Stephen P. Dearth; Wu-chun Feng; Lynnette R. Ferguson; Geoffrey C. Fox; Dmitrij Frishman; Robert L. Grossman; Allison P. Heath; Roger Higdon; Mara H. Hutz; Imre Janko; Lihua Jiang; Sanjay Joshi; Alexander E. Kel; Joseph W. Kemnitz; Isaac S. Kohane; Natali Kolker; Doron Lancet; Elaine Lee; Weizhong Li

Biological processes are fundamentally driven by complex interactions between biomolecules. Integrated high-throughput omics studies enable multifaceted views of cells, organisms, or their communities. With the advent of new post-genomics technologies, omics studies are becoming increasingly prevalent; yet the full impact of these studies can only be realized through data harmonization, sharing, meta-analysis, and integrated research. These essential steps require consistent generation, capture, and distribution of metadata. To ensure transparency, facilitate data harmonization, and maximize reproducibility and usability of life sciences studies, we propose a simple common omics metadata checklist. The proposed checklist is built on the rich ontologies and standards already in use by the life sciences community. The checklist will serve as a common denominator to guide experimental design, capture important parameters, and be used as a standard format for stand-alone data publications. The omics metadata checklist and data publications will create efficient linkages between omics data and knowledge-based life sciences innovation and, importantly, allow for appropriate attribution to data generators and infrastructure science builders in the post-genomics era. We ask that the life sciences community test the proposed omics metadata checklist and data publications and provide feedback for their use and improvement.


Quantitative biology (Beijing, China) | 2013

Personal genomes, quantitative dynamic omics and personalized medicine

George Mias; Michael Snyder

The rapid technological developments following the Human Genome Project have made possible the availability of personalized genomes. As the focus now shifts from characterizing genomes to making personalized disease associations, in combination with the availability of other omics technologies, the next big push will be not only to obtain a personalized genome, but to quantitatively follow other omics. This will include transcriptomes, proteomes, metabolomes, antibodyomes, and new emerging technologies, enabling the profiling of thousands of molecular components in individuals. Furthermore, omics profiling performed longitudinally can probe the temporal patterns associated with both molecular changes and associated physiological health and disease states. Such data necessitates the development of computational methodology to not only handle and descriptively assess such data, but also construct quantitative biological models. Here we describe the availability of personal genomes and developing omics technologies that can be brought together for personalized implementations and how these novel integrated approaches may effectively provide a precise personalized medicine that focuses on not only characterization and treatment but ultimately the prevention of disease.


Physical Review A | 2008

Quantum noise, scaling, and domain formation in a spinor Bose-Einstein condensate

George Mias; N. R. Cooper; S. M. Girvin

In this paper we discuss Bose-Einstein spinor condensates for


Scientific Reports | 2015

Metabolome progression during early gut microbial colonization of gnotobiotic mice

Angela Marcobal; Tahir Yusufaly; Steven K. Higginbottom; Michael Snyder; Justin L. Sonnenburg; George Mias

F=1


Omics A Journal of Integrative Biology | 2014

Metadata checklist for the integrated personal OMICS study: proteomics and metabolomics experiments.

Michael Snyder; George Mias; Larissa Stanberry; Eugene Kolker

atoms in the context of


Scientific Reports | 2016

MathIOmica: An Integrative Platform for Dynamic Omics.

George Mias; Tahir Yusufaly; Raeuf Roushangar; Lavida R.K. Brooks; Vikas Vikram Singh; Christina Christou

^{87}\text{R}\text{b}


Scientific Reports | 2013

Specific Plasma Autoantibody Reactivity in Myelodysplastic Syndromes

George Mias; Rui Chen; Yan Zhang; Kunju Sridhar; Donald Sharon; Li Xiao; Hogune Im; Michael Snyder; Peter L. Greenberg

, as studied experimentally by the Stamper-Kurn group [L. E. Sadler et al., Nature (London) 443, 312 (2006)]. The dynamical quantum fluctuations of a sample that starts as a condensate of

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Eugene Kolker

University of Washington

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