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Dive into the research topics where Emek Demir is active.

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Featured researches published by Emek Demir.


Nucleic Acids Research | 2011

Pathway Commons, a web resource for biological pathway data

Ethan Cerami; Benjamin Gross; Emek Demir; Igor Rodchenkov; Özgün Babur; Nadia Anwar; Nikolaus Schultz; Gary D. Bader; Chris Sander

Pathway Commons (http://www.pathwaycommons.org) is a collection of publicly available pathway data from multiple organisms. Pathway Commons provides a web-based interface that enables biologists to browse and search a comprehensive collection of pathways from multiple sources represented in a common language, a download site that provides integrated bulk sets of pathway information in standard or convenient formats and a web service that software developers can use to conveniently query and access all data. Database providers can share their pathway data via a common repository. Pathways include biochemical reactions, complex assembly, transport and catalysis events and physical interactions involving proteins, DNA, RNA, small molecules and complexes. Pathway Commons aims to collect and integrate all public pathway data available in standard formats. Pathway Commons currently contains data from nine databases with over 1400 pathways and 687,000 interactions and will be continually expanded and updated.


Nature Biotechnology | 2009

The Systems Biology Graphical Notation

Nicolas Le Novère; Michael Hucka; Huaiyu Mi; Stuart L. Moodie; Falk Schreiber; Anatoly A. Sorokin; Emek Demir; Katja Wegner; Mirit I. Aladjem; Sarala M. Wimalaratne; Frank T. Bergman; Ralph Gauges; Peter Ghazal; Hideya Kawaji; Lu Li; Yukiko Matsuoka; Alice Villéger; Sarah E. Boyd; Laurence Calzone; Mélanie Courtot; Ugur Dogrusoz; Tom C. Freeman; Akira Funahashi; Samik Ghosh; Akiya Jouraku; Sohyoung Kim; Fedor A. Kolpakov; Augustin Luna; Sven Sahle; Esther Schmidt

Circuit diagrams and Unified Modeling Language diagrams are just two examples of standard visual languages that help accelerate work by promoting regularity, removing ambiguity and enabling software tool support for communication of complex information. Ironically, despite having one of the highest ratios of graphical to textual information, biology still lacks standard graphical notations. The recent deluge of biological knowledge makes addressing this deficit a pressing concern. Toward this goal, we present the Systems Biology Graphical Notation (SBGN), a visual language developed by a community of biochemists, modelers and computer scientists. SBGN consists of three complementary languages: process diagram, entity relationship diagram and activity flow diagram. Together they enable scientists to represent networks of biochemical interactions in a standard, unambiguous way. We believe that SBGN will foster efficient and accurate representation, visualization, storage, exchange and reuse of information on all kinds of biological knowledge, from gene regulation, to metabolism, to cellular signaling.


Nature Biotechnology | 2010

The BioPAX community standard for pathway data sharing

Emek Demir; Michael P. Cary; Suzanne M. Paley; Ken Fukuda; Christian Lemer; Imre Vastrik; Guanming Wu; Peter D'Eustachio; Carl F. Schaefer; Joanne S. Luciano; Frank Schacherer; Irma Martínez-Flores; Zhenjun Hu; Verónica Jiménez-Jacinto; Geeta Joshi-Tope; Kumaran Kandasamy; Alejandra López-Fuentes; Huaiyu Mi; Elgar Pichler; Igor Rodchenkov; Andrea Splendiani; Sasha Tkachev; Jeremy Zucker; Gopal Gopinath; Harsha Rajasimha; Ranjani Ramakrishnan; Imran Shah; Mustafa Syed; Nadia Anwar; Özgün Babur

Biological Pathway Exchange (BioPAX) is a standard language to represent biological pathways at the molecular and cellular level and to facilitate the exchange of pathway data. The rapid growth of the volume of pathway data has spurred the development of databases and computational tools to aid interpretation; however, use of these data is hampered by the current fragmentation of pathway information across many databases with incompatible formats. BioPAX, which was created through a community process, solves this problem by making pathway data substantially easier to collect, index, interpret and share. BioPAX can represent metabolic and signaling pathways, molecular and genetic interactions and gene regulation networks. Using BioPAX, millions of interactions, organized into thousands of pathways, from many organisms are available from a growing number of databases. This large amount of pathway data in a computable form will support visualization, analysis and biological discovery.


PLOS ONE | 2010

Automated network analysis identifies core pathways in glioblastoma.

Ethan Cerami; Emek Demir; Nikolaus Schultz; Barry S. Taylor; Chris Sander

Background Glioblastoma multiforme (GBM) is the most common and aggressive type of brain tumor in humans and the first cancer with comprehensive genomic profiles mapped by The Cancer Genome Atlas (TCGA) project. A central challenge in large-scale genome projects, such as the TCGA GBM project, is the ability to distinguish cancer-causing “driver” mutations from passively selected “passenger” mutations. Principal Findings In contrast to a purely frequency based approach to identifying driver mutations in cancer, we propose an automated network-based approach for identifying candidate oncogenic processes and driver genes. The approach is based on the hypothesis that cellular networks contain functional modules, and that tumors target specific modules critical to their growth. Key elements in the approach include combined analysis of sequence mutations and DNA copy number alterations; use of a unified molecular interaction network consisting of both protein-protein interactions and signaling pathways; and identification and statistical assessment of network modules, i.e. cohesive groups of genes of interest with a higher density of interactions within groups than between groups. Conclusions We confirm and extend the observation that GBM alterations tend to occur within specific functional modules, in spite of considerable patient-to-patient variation, and that two of the largest modules involve signaling via p53, Rb, PI3K and receptor protein kinases. We also identify new candidate drivers in GBM, including AGAP2/CENTG1, a putative oncogene and an activator of the PI3K pathway; and, three additional significantly altered modules, including one involved in microtubule organization. To facilitate the application of our network-based approach to additional cancer types, we make the method freely available as part of a software tool called NetBox.


Genome Biology | 2015

Systematic identification of cancer driving signaling pathways based on mutual exclusivity of genomic alterations

Özgün Babur; Mithat Gonen; Bülent Arman Aksoy; Nikolaus Schultz; Giovanni Ciriello; Chris Sander; Emek Demir

We present a novel method for the identification of sets of mutually exclusive gene alterations in a given set of genomic profiles. We scan the groups of genes with a common downstream effect on the signaling network, using a mutual exclusivity criterion that ensures that each gene in the group significantly contributes to the mutual exclusivity pattern. We test the method on all available TCGA cancer genomics datasets, and detect multiple previously unreported alterations that show significant mutual exclusivity and are likely to be driver events.


Bioinformatics | 2004

An ontology for collaborative construction and analysis of cellular pathways

Emek Demir; Özgün Babur; Ugur Dogrusoz; Attila Gursoy; A. Ayaz; Gürcan Gülesir; Gurkan Nisanci; Rengul Cetin-Atalay

MOTIVATION As the scientific curiosity in genome studies shifts toward identification of functions of the genomes in large scale, data produced about cellular processes at molecular level has been accumulating with an accelerating rate. In this regard, it is essential to be able to store, integrate, access and analyze this data effectively with the help of software tools. Clearly this requires a strong ontology that is intuitive, comprehensive and uncomplicated. RESULTS We define an ontology for an intuitive, comprehensive and uncomplicated representation of cellular events. The ontology presented here enables integration of fragmented or incomplete pathway information via collaboration, and supports manipulation of the stored data. In addition, it facilitates concurrent modifications to the data while maintaining its validity and consistency. Furthermore, novel structures for representation of multiple levels of abstraction for pathways and homologies is provided. Lastly, our ontology supports efficient querying of large amounts of data. We have also developed a software tool named pathway analysis tool for integration and knowledge acquisition (PATIKA) providing an integrated, multi-user environment for visualizing and manipulating network of cellular events. PATIKA implements the basics of our ontology.


Bioinformatics | 2012

Software support for SBGN maps

Martijn P. van Iersel; Alice Villéger; Tobias Czauderna; Sarah E. Boyd; Frank Bergmann; Augustin Luna; Emek Demir; Anatoly Sorokin; Ugur Dogrusoz; Yukiko Matsuoka; Akira Funahashi; Mirit I. Aladjem; Huaiyu Mi; Stuart L. Moodie; Hiroaki Kitano; Nicolas Le Novère; Falk Schreiber

Motivation: LibSBGN is a software library for reading, writing and manipulating Systems Biology Graphical Notation (SBGN) maps stored using the recently developed SBGN-ML file format. The library (available in C++ and Java) makes it easy for developers to add SBGN support to their tools, whereas the file format facilitates the exchange of maps between compatible software applications. The library also supports validation of maps, which simplifies the task of ensuring compliance with the detailed SBGN specifications. With this effort we hope to increase the adoption of SBGN in bioinformatics tools, ultimately enabling more researchers to visualize biological knowledge in a precise and unambiguous manner. Availability and implementation: Milestone 2 was released in December 2011. Source code, example files and binaries are freely available under the terms of either the LGPL v2.1+ or Apache v2.0 open source licenses from http://libsbgn.sourceforge.net. Contact: [email protected]


Bioinformatics | 2010

ChiBE: interactive visualization and manipulation of BioPAX pathway models

Özgün Babur; Ugur Dogrusoz; Emek Demir; Chris Sander

SUMMARY Representing models of cellular processes or pathways in a graphically rich form facilitates interpretation of biological observations and generation of new hypotheses. Solving biological problems using large pathway datasets requires software that can combine data mapping, querying and visualization as well as providing access to diverse data resources on the Internet. ChiBE is an open source software application that features user-friendly multi-view display, navigation and manipulation of pathway models in BioPAX format. Pathway views are rendered in a feature-rich format, and may be laid out and edited with state-of-the-art visualization methods, including compound or nested structures for visualizing cellular compartments and molecular complexes. Users can easily query and visualize pathways through an integrated Pathway Commons query tool and analyze molecular profiles in pathway context. AVAILABILITY http://www.bilkent.edu.tr/%7Ebcbi/chibe.html. SUPPLEMENTARY INFORMATION Supplementary data are available at Bioinformatics online.


PLOS Computational Biology | 2013

Using biological pathway data with paxtools.

Emek Demir; Özgün Babur; Igor Rodchenkov; Bülent Arman Aksoy; Ken Fukuda; Benjamin E. Gross; Onur Sumer; Gary D. Bader; Chris Sander

A rapidly growing corpus of formal, computable pathway information can be used to answer important biological questions including finding non-trivial connections between cellular processes, identifying significantly altered portions of the cellular network in a disease state and building predictive models that can be used for precision medicine. Due to its complexity and fragmented nature, however, working with pathway data is still difficult. We present Paxtools, a Java library that contains algorithms, software components and converters for biological pathways represented in the standard BioPAX language. Paxtools allows scientists to focus on their scientific problem by removing technical barriers to access and analyse pathway information. Paxtools can run on any platform that has a Java Runtime Environment and was tested on most modern operating systems. Paxtools is open source and is available under the Lesser GNU public license (LGPL), which allows users to freely use the code in their software systems with a requirement for attribution. Source code for the current release (4.2.0) can be found in Software S1. A detailed manual for obtaining and using Paxtools can be found in Protocol S1. The latest sources and release bundles can be obtained from biopax.org/paxtools.


Frontiers in Bioengineering and Biotechnology | 2015

Promoting coordinated development of community-based information standards for modeling in biology: the COMBINE initiative

Michael Hucka; David Nickerson; Gary D. Bader; Frank Bergmann; Jonathan Cooper; Emek Demir; Alan Garny; Martin Golebiewski; Chris J. Myers; Falk Schreiber; Dagmar Waltemath; Nicolas Le Novère

The Computational Modeling in Biology Network (COMBINE) is a consortium of groups involved in the development of open community standards and formats used in computational modeling in biology. COMBINE’s aim is to act as a coordinator, facilitator, and resource for different standardization efforts whose domains of use cover related areas of the computational biology space. In this perspective article, we summarize COMBINE, its general organization, and the community standards and other efforts involved in it. Our goals are to help guide readers toward standards that may be suitable for their research activities, as well as to direct interested readers to relevant communities where they can best expect to receive assistance in how to develop interoperable computational models.

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Özgün Babur

Memorial Sloan Kettering Cancer Center

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Huaiyu Mi

University of Southern California

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Augustin Luna

Memorial Sloan Kettering Cancer Center

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Bülent Arman Aksoy

Memorial Sloan Kettering Cancer Center

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