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Dive into the research topics where Sergiu Dumitriu is active.

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Featured researches published by Sergiu Dumitriu.


Human Mutation | 2015

The Matchmaker Exchange: a platform for rare disease gene discovery.

Anthony A. Philippakis; Danielle R. Azzariti; Sergi Beltran; Anthony J. Brookes; Catherine A. Brownstein; Michael Brudno; Han G. Brunner; Orion J. Buske; Knox Carey; Cassie Doll; Sergiu Dumitriu; Stephanie O.M. Dyke; Johan T. den Dunnen; Helen V. Firth; Richard A. Gibbs; Marta Girdea; Michael Gonzalez; Melissa Haendel; Ada Hamosh; Ingrid A. Holm; Lijia Huang; Ben Hutton; Joel B. Krier; Andriy Misyura; Christopher J. Mungall; Justin Paschall; Benedict Paten; Peter N. Robinson; François Schiettecatte; Nara Sobreira

There are few better examples of the need for data sharing than in the rare disease community, where patients, physicians, and researchers must search for “the needle in a haystack” to uncover rare, novel causes of disease within the genome. Impeding the pace of discovery has been the existence of many small siloed datasets within individual research or clinical laboratory databases and/or disease‐specific organizations, hoping for serendipitous occasions when two distant investigators happen to learn they have a rare phenotype in common and can “match” these cases to build evidence for causality. However, serendipity has never proven to be a reliable or scalable approach in science. As such, the Matchmaker Exchange (MME) was launched to provide a robust and systematic approach to rare disease gene discovery through the creation of a federated network connecting databases of genotypes and rare phenotypes using a common application programming interface (API). The core building blocks of the MME have been defined and assembled. Three MME services have now been connected through the API and are available for community use. Additional databases that support internal matching are anticipated to join the MME network as it continues to grow.


Human Mutation | 2013

PhenoTips: Patient Phenotyping Software for Clinical and Research Use

Marta Girdea; Sergiu Dumitriu; Marc Fiume; Sarah Bowdin; Kym M. Boycott; Sébastien Chénier; David Chitayat; Hanna Faghfoury; M. Stephen Meyn; Peter N. Ray; Joyce So; Dimitri J. Stavropoulos; Michael Brudno

We have developed PhenoTips: open source software for collecting and analyzing phenotypic information for patients with genetic disorders. Our software combines an easy‐to‐use interface, compatible with any device that runs a Web browser, with a standardized database back end. The PhenoTips’ user interface closely mirrors clinician workflows so as to facilitate the recording of observations made during the patient encounter. Collected data include demographics, medical history, family history, physical and laboratory measurements, physical findings, and additional notes. Phenotypic information is represented using the Human Phenotype Ontology; however, the complexity of the ontology is hidden behind a user interface, which combines simple selection of common phenotypes with error‐tolerant, predictive search of the entire ontology. PhenoTips supports accurate diagnosis by analyzing the entered data, then suggesting additional clinical investigations and providing Online Mendelian Inheritance in Man (OMIM) links to likely disorders. By collecting, classifying, and analyzing phenotypic information during the patient encounter, PhenoTips allows for streamlining of clinic workflow, efficient data entry, improved diagnosis, standardization of collected patient phenotypes, and sharing of anonymized patient phenotype data for the study of rare disorders. Our source code and a demo version of PhenoTips are available at http://phenotips.org.


Human Mutation | 2015

PhenomeCentral: A Portal for Phenotypic and Genotypic Matchmaking of Patients with Rare Genetic Diseases

Orion J. Buske; Marta Girdea; Sergiu Dumitriu; Bailey Gallinger; Taila Hartley; Heather Trang; Andriy Misyura; Tal Friedman; Chandree L. Beaulieu; William P. Bone; Amanda E. Links; Nicole L. Washington; Melissa Haendel; Peter N. Robinson; Cornelius F. Boerkoel; David Adams; William A. Gahl; Kym M. Boycott; Michael Brudno

The discovery of disease‐causing mutations typically requires confirmation of the variant or gene in multiple unrelated individuals, and a large number of rare genetic diseases remain unsolved due to difficulty identifying second families. To enable the secure sharing of case records by clinicians and rare disease scientists, we have developed the PhenomeCentral portal (https://phenomecentral.org). Each record includes a phenotypic description and relevant genetic information (exome or candidate genes). PhenomeCentral identifies similar patients in the database based on semantic similarity between clinical features, automatically prioritized genes from whole‐exome data, and candidate genes entered by the users, enabling both hypothesis‐free and hypothesis‐driven matchmaking. Users can then contact other submitters to follow up on promising matches. PhenomeCentral incorporates data for over 1,000 patients with rare genetic diseases, contributed by the FORGE and Care4Rare Canada projects, the US NIH Undiagnosed Diseases Program, the EU Neuromics and ANDDIrare projects, as well as numerous independent clinicians and scientists. Though the majority of these records have associated exome data, most lack a molecular diagnosis. PhenomeCentral has already been used to identify causative mutations for several patients, and its ability to find matching patients and diagnose these diseases will grow with each additional patient that is entered.


Human Mutation | 2015

The Matchmaker Exchange API: automating patient matching through the exchange of structured phenotypic and genotypic profiles.

Orion J. Buske; François Schiettecatte; Benjamin Hutton; Sergiu Dumitriu; Andriy Misyura; Lijia Huang; Taila Hartley; Marta Girdea; Nara Sobreira; Christopher J. Mungall; Michael Brudno

Despite the increasing prevalence of clinical sequencing, the difficulty of identifying additional affected families is a key obstacle to solving many rare diseases. There may only be a handful of similar patients worldwide, and their data may be stored in diverse clinical and research databases. Computational methods are necessary to enable finding similar patients across the growing number of patient repositories and registries. We present the Matchmaker Exchange Application Programming Interface (MME API), a protocol and data format for exchanging phenotype and genotype profiles to enable matchmaking among patient databases, facilitate the identification of additional cohorts, and increase the rate with which rare diseases can be researched and diagnosed. We designed the API to be straightforward and flexible in order to simplify its adoption on a large number of data types and workflows. We also provide a public test data set, curated from the literature, to facilitate implementation of the API and development of new matching algorithms. The initial version of the API has been successfully implemented by three members of the Matchmaker Exchange and was immediately able to reproduce previously identified matches and generate several new leads currently being validated. The API is available at https://github.com/ga4gh/mme‐apis.


international conference on internet and web applications and services | 2008

A Competency-Oriented Modeling Approach for Personalized E-Learning Systems

Mihaela Brut; Sabin C. Buraga; Sergiu Dumitriu; Gheorghe Grigoras; Marta Girdea

In order to optimize the information retrieval and adaptation facilities inside an e-learning system, there is necessary to improve accessibility and to correlate the educational materials, the users and the information. For this purpose, we present a semantic Web-based modeling approach for the materials annotations and user competences profile, based on the same domain ontology set. The ontologies constitute thus the binder between the materials and users, and we illustrate how their reasoning support contributes to the efficiency improvement of the search and adaptive Web services. As illustrative example, we present our developed I*Teach Web repository of educational scenarios.


Archive | 2007

From Information Wiki to Knowledge Wiki via Semantic Web technologies

Sergiu Dumitriu; Marta Girdea; Sabin C. Buraga

The paper presents an enhanced version of an existing wiki platform (XWiki), in order to integrate knowledge, based on various Semantic Web technologies. In particular, we describe how metadata, microformats, ontologies are meaningfully used in this context, and we show the utility of our approach via two use cases.


Frontiers of Medicine in China | 2016

Distributed Cognition and Process Management Enabling Individualized Translational Research: The NIH Undiagnosed Diseases Program Experience

Amanda E. Links; David D. Draper; Elizabeth Lee; Jessica Guzman; Zaheer M. Valivullah; Valerie Maduro; Vlad Lebedev; Maxim Didenko; Garrick Tomlin; Michael Brudno; Marta Girdea; Sergiu Dumitriu; Melissa Haendel; Christopher J. Mungall; Damian Smedley; Harry Hochheiser; Andrew M. Arnold; Bert Coessens; Steven Verhoeven; William P. Bone; David Adams; Cornelius F. Boerkoel; William A. Gahl; Murat Sincan

The National Institutes of Health Undiagnosed Diseases Program (NIH UDP) applies translational research systematically to diagnose patients with undiagnosed diseases. The challenge is to implement an information system enabling scalable translational research. The authors hypothesized that similar complex problems are resolvable through process management and the distributed cognition of communities. The team, therefore, built the NIH UDP integrated collaboration system (UDPICS) to form virtual collaborative multidisciplinary research networks or communities. UDPICS supports these communities through integrated process management, ontology-based phenotyping, biospecimen management, cloud-based genomic analysis, and an electronic laboratory notebook. UDPICS provided a mechanism for efficient, transparent, and scalable translational research and thereby addressed many of the complex and diverse research and logistical problems of the NIH UDP. Full definition of the strengths and deficiencies of UDPICS will require formal qualitative and quantitative usability and process improvement measurement.


symbolic and numeric algorithms for scientific computing | 2007

Peer-to-Peer Wikis: Replication of Highly Dynamic Content on XWiki

Sergiu Dumitriu; Sabin C. Buraga

After identifying certain usage scenarios for a P2P wiki, we propose a generic model regarding a P2P wiki platform, that can be configured to adapt to several usage scenarios, from massively distributed wikis to small mobile collaborative tools. The platform is built as a XWiki plugin collection and consists of a set of loosely coupled components providing services to be used in the context of grid computing.


the florida ai research society | 2007

Knowledge Management in a Wiki Platform via Microformats.

Sergiu Dumitriu; Marta Girdea; Sabin C. Buraga


Archive | 2017

Ga4Gh/Mme-Apis: Matchmaker Exchange Api V1.1

Orion J. Buske; Ben Hutton; Sergiu Dumitriu; François Schiettecatte; Tudorgroza; Jessica X. Chong; Harindra; Christopher J. Mungall; Allasm

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Christopher J. Mungall

Lawrence Berkeley National Laboratory

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Sabin C. Buraga

Alexandru Ioan Cuza University

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Ben Hutton

Wellcome Trust Sanger Institute

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Kym M. Boycott

Children's Hospital of Eastern Ontario

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Amanda E. Links

National Institutes of Health

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