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Featured researches published by Barbara Mirel.


Bioinformatics | 2010

ConceptGen: a gene set enrichment and gene set relation mapping tool

Maureen A. Sartor; Vasudeva Mahavisno; Venkateshwar G. Keshamouni; James D. Cavalcoli; Zach Wright; Alla Karnovsky; Rork Kuick; H. V. Jagadish; Barbara Mirel; Terry E. Weymouth; Brian D. Athey; Gilbert S. Omenn

MOTIVATION The elucidation of biological concepts enriched with differentially expressed genes has become an integral part of the analysis and interpretation of genomic data. Of additional importance is the ability to explore networks of relationships among previously defined biological concepts from diverse information sources, and to explore results visually from multiple perspectives. Accomplishing these tasks requires a unified framework for agglomeration of data from various genomic resources, novel visualizations, and user functionality. RESULTS We have developed ConceptGen, a web-based gene set enrichment and gene set relation mapping tool that is streamlined and simple to use. ConceptGen offers over 20,000 concepts comprising 14 different types of biological knowledge, including data not currently available in any other gene set enrichment or gene set relation mapping tool. We demonstrate the functionalities of ConceptGen using gene expression data modeling TGF-beta-induced epithelial-mesenchymal transition and metabolomics data comparing metastatic versus localized prostate cancers.


Nucleic Acids Research | 2009

Michigan molecular interactions r2: from interacting proteins to pathways.

V. Glenn Tarcea; Terry E. Weymouth; Alexander S. Ade; Aaron V. Bookvich; Jing Gao; Vasudeva Mahavisno; Zach Wright; Adriane Chapman; Magesh Jayapandian; Arzucan Özgür; Yuanyuan Tian; James D. Cavalcoli; Barbara Mirel; Jignesh M. Patel; Dragomir R. Radev; Brian D. Athey; David J. States; H. V. Jagadish

Molecular interaction data exists in a number of repositories, each with its own data format, molecule identifier and information coverage. Michigan molecular interactions (MiMI) assists scientists searching through this profusion of molecular interaction data. The original release of MiMI gathered data from well-known protein interaction databases, and deep merged this information while keeping track of provenance. Based on the feedback received from users, MiMI has been completely redesigned. This article describes the resulting MiMI Release 2 (MiMIr2). New functionality includes extension from proteins to genes and to pathways; identification of highlighted sentences in source publications; seamless two-way linkage with Cytoscape; query facilities based on MeSH/GO terms and other concepts; approximate graph matching to find relevant pathways; support for querying in bulk; and a user focus-group driven interface design. MiMI is part of the NIHs; National Center for Integrative Biomedical Informatics (NCIBI) and is publicly available at: http://mimi.ncibi.org.


Journal of Biomedical Informatics | 2011

The Biomedical Resource Ontology (BRO) to enable resource discovery in clinical and translational research

Jessica D. Tenenbaum; Patricia L. Whetzel; Kent Anderson; Charles D. Borromeo; Ivo D. Dinov; Davera Gabriel; Beth Kirschner; Barbara Mirel; Tim Morris; Natasha Noy; Csongor Nyulas; David S. Rubenson; Paul Saxman; Harpreet Singh; Nancy B Whelan; Zach Wright; Brian D. Athey; Michael J. Becich; Geoffrey S. Ginsburg; Mark A. Musen; Kevin A. Smith; Alice F. Tarantal; Daniel L. Rubin; Peter Lyster

The biomedical research community relies on a diverse set of resources, both within their own institutions and at other research centers. In addition, an increasing number of shared electronic resources have been developed. Without effective means to locate and query these resources, it is challenging, if not impossible, for investigators to be aware of the myriad resources available, or to effectively perform resource discovery when the need arises. In this paper, we describe the development and use of the Biomedical Resource Ontology (BRO) to enable semantic annotation and discovery of biomedical resources. We also describe the Resource Discovery System (RDS) which is a federated, inter-institutional pilot project that uses the BRO to facilitate resource discovery on the Internet. Through the RDS framework and its associated Biositemaps infrastructure, the BRO facilitates semantic search and discovery of biomedical resources, breaking down barriers and streamlining scientific research that will improve human health.


Journal of the American Medical Informatics Association | 2012

The NIH National Center for Integrative Biomedical Informatics (NCIBI)

Brian D. Athey; James D. Cavalcoli; H. V. Jagadish; Gilbert S. Omenn; Barbara Mirel; Matthias Kretzler; Charles F. Burant; Raphael D. Isokpehi; Charles DeLisi

The National Center for Integrative and Biomedical Informatics (NCIBI) is one of the eight NCBCs. NCIBI supports information access and data analysis for biomedical researchers, enabling them to build computational and knowledge models of biological systems to address the Driving Biological Problems (DBPs). The NCIBI DBPs have included prostate cancer progression, organ-specific complications of type 1 and 2 diabetes, bipolar disorder, and metabolic analysis of obesity syndrome. Collaborating with these and other partners, NCIBI has developed a series of software tools for exploratory analysis, concept visualization, and literature searches, as well as core database and web services resources. Many of our training and outreach initiatives have been in collaboration with the Research Centers at Minority Institutions (RCMI), integrating NCIBI and RCMI faculty and students, culminating each year in an annual workshop. Our future directions include focusing on the TranSMART data sharing and analysis initiative.


BMC Bioinformatics | 2009

Open Biomedical Ontology-based Medline exploration

Weijian Xuan; Manhong Dai; Barbara Mirel; Jean Song; Brian D. Athey; Stanley J. Watson; Fan Meng

BackgroundEffective Medline database exploration is critical for the understanding of high throughput experimental results and the development of novel hypotheses about the mechanisms underlying the targeted biological processes. While existing solutions enhance Medline exploration through different approaches such as document clustering, network presentations of underlying conceptual relationships and the mapping of search results to MeSH and Gene Ontology trees, we believe the use of multiple ontologies from the Open Biomedical Ontology can greatly help researchers to explore literature from different perspectives as well as to quickly locate the most relevant Medline records for further investigation.ResultsWe developed an ontology-based interactive Medline exploration solution called PubOnto to enable the interactive exploration and filtering of search results through the use of multiple ontologies from the OBO foundry. The PubOnto program is a rich internet application based on the FLEX platform. It contains a number of interactive tools, visualization capabilities, an open service architecture, and a customizable user interface. It is freely accessible at: http://brainarray.mbni.med.umich.edu/brainarray/prototype/pubonto.


Technical Communication Quarterly | 2008

Researching Telemedicine: Capturing Complex Clinical Interactions with a Simple Interface Design

Barbara Mirel; Ellen Barton; Mark S. Ackerman

Telemedicine has been shown to be an effective means of managing follow-up care in chronic diseases such as depression. Exactly why telemedicine calls work, however, remains largely unknown because there are no adequate research tools to describe the complex communicative interactions in these encounters. We report here an ongoing project to investigate the efficacy of telemedicine in depression care, arguing that technical communication specialists have unique contributions to make to this kind of research.


BMC Genomics | 2010

Cross-domain neurobiology data integration and exploration.

Weijian Xuan; Manhong Dai; Josh Buckner; Barbara Mirel; Jean Song; Brian D. Athey; Stanley J. Watson; Fan Meng

BackgroundUnderstanding the biomedical implications of data from high throughput experiments requires solutions for effective cross-scale and cross-domain data exploration. However, existing solutions do not provide sufficient support for linking molecular level data to neuroanatomical structures, which is critical for understanding high level neurobiological functions.ResultsOur work integrates molecular level data with high level biological functions and we present results using anatomical structure as a scaffold. Our solution also allows the sharing of intermediate data exploration results with other web applications, greatly increasing the power of cross-domain data exploration and mining.ConclusionsThe Flex-based PubAnatomy web application we developed enables highly interactive visual exploration of literature and experimental data for understanding the relationships between molecular level changes, pathways, brain circuits and pathophysiological processes. The prototype of PubAnatomy is freely accessible at:[http://brainarray.mbni.med.umich.edu/Brainarray/prototype/PubAnatomy]


BMC Bioinformatics | 2014

Scientists' sense making when hypothesizing about disease mechanisms from expression data and their needs for visualization support.

Barbara Mirel; Carsten Görg

A common class of biomedical analysis is to explore expression data from high throughput experiments for the purpose of uncovering functional relationships that can lead to a hypothesis about mechanisms of a disease. We call this analysis expression driven, -omics hypothesizing. In it, scientists use interactive data visualizations and read deeply in the research literature. Little is known, however, about the actual flow of reasoning and behaviors (sense making) that scientists enact in this analysis, end-to-end. Understanding this flow is important because if bioinformatics tools are to be truly useful they must support it. Sense making models of visual analytics in other domains have been developed and used to inform the design of useful and usable tools. We believe they would be helpful in bioinformatics. To characterize the sense making involved in expression-driven, -omics hypothesizing, we conducted an in-depth observational study of one scientist as she engaged in this analysis over six months. From findings, we abstracted a preliminary sense making model. Here we describe its stages and suggest guidelines for developing visualization tools that we derived from this case. A single case cannot be generalized. But we offer our findings, sense making model and case-based tool guidelines as a first step toward increasing interest and further research in the bioinformatics field on scientists’ analytical workflows and their implications for tool design.


computational systems bioinformatics | 2007

An active visual search interface for Medline.

Weijian Xuan; Manhong Dai; Barbara Mirel; Justin Wilson; Brian D. Athey; Stanley J. Watson; Fan Meng

Searching the Medline database is almost a daily necessity for many biomedical researchers. However, available Medline search solutions are mainly designed for the quick retrieval of a small set of most relevant documents. Because of this search model, they are not suitable for the large-scale exploration of literature and the underlying biomedical conceptual relationships, which are common tasks in the age of high throughput experimental data analysis and cross-discipline research. We try to develop a new Medline exploration approach by incorporating interactive visualization together with powerful grouping, summary, sorting and active external content retrieval functions. Our solution, PubViz, is based on the FLEX platform designed for interactive web applications and its prototype is publicly available at: http://brainarray.mbni.med.umich.edu/Brainarray/DataMining/PubViz.


Technical Communication Quarterly | 2006

Social Determinants of Preparing a Cyber-Infrastructure Innovation for Diffusion

Barbara Mirel; Nicholas Johnson

This study presents a case of asynchronous, collaborative problem solving aimed at readying a sophisticated distributed technology for large-scale diffusion. We analyzed e-mail transcripts of 30 technologists negotiating complex technical improvements necessary for wide-scale diffusion and found that the groups social interactions and discursive practices determined the improvements they were willing to realize. We detail these social dynamics and their effects on readying technologies for diffusion and argue that technology teams need to become more aware of diffusion as a social dynamic.

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Fan Meng

University of Michigan

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Manhong Dai

University of Michigan

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Jean Song

University of Michigan

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