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Featured researches published by Bastien Rance.


Briefings in Bioinformatics | 2015

Translational research platforms integrating clinical and omics data: a review of publicly available solutions

Vincent Canuel; Bastien Rance; Paul Avillach; Patrice Degoulet; Anita Burgun

The rise of personalized medicine and the availability of high-throughput molecular analyses in the context of clinical care have increased the need for adequate tools for translational researchers to manage and explore these data. We reviewed the biomedical literature for translational platforms allowing the management and exploration of clinical and omics data, and identified seven platforms: BRISK, caTRIP, cBio Cancer Portal, G-DOC, iCOD, iDASH and tranSMART. We analyzed these platforms along seven major axes. (1) The community axis regrouped information regarding initiators and funders of the project, as well as availability status and references. (2) We regrouped under the information content axis the nature of the clinical and omics data handled by each system. (3) The privacy management environment axis encompassed functionalities allowing control over data privacy. (4) In the analysis support axis, we detailed the analytical and statistical tools provided by the platforms. We also explored (5) interoperability support and (6) system requirements. The final axis (7) platform support listed the availability of documentation and installation procedures. A large heterogeneity was observed in regard to the capability to manage phenotype information in addition to omics data, their security and interoperability features. The analytical and visualization features strongly depend on the considered platform. Similarly, the availability of the systems is variable. This review aims at providing the reader with the background to choose the platform best suited to their needs. To conclude, we discuss the desiderata for optimal translational research platforms, in terms of privacy, interoperability and technical features.


Nature Communications | 2017

Induction of resident memory T cells enhances the efficacy of cancer vaccine

Mevyn Nizard; Hélène Roussel; Mariana O. Diniz; Soumaya Karaki; Thi Tran; Thibault Voron; Estelle Dransart; Federico Sandoval; Marc Riquet; Bastien Rance; Elie Marcheteau; Elizabeth Fabre; Marion Mandavit; Magali Terme; Charlotte Blanc; Jean-Baptiste Escudié; Laure Gibault; Françoise Le Pimpec Barthes; Clémence Granier; Luís Carlos de Souza Ferreira; Cécile Badoual; Ludger Johannes; Eric Tartour

Tissue-resident memory T cells (Trm) represent a new subset of long-lived memory T cells that remain in tissue and do not recirculate. Although they are considered as early immune effectors in infectious diseases, their role in cancer immunosurveillance remains unknown. In a preclinical model of head and neck cancer, we show that intranasal vaccination with a mucosal vector, the B subunit of Shiga toxin, induces local Trm and inhibits tumour growth. As Trm do not recirculate, we demonstrate their crucial role in the efficacy of cancer vaccine with parabiosis experiments. Blockade of TFGβ decreases the induction of Trm after mucosal vaccine immunization, resulting in the lower efficacy of cancer vaccine. In order to extrapolate this role of Trm in humans, we show that the number of Trm correlates with a better overall survival in lung cancer in multivariate analysis. The induction of Trm may represent a new surrogate biomarker for the efficacy of cancer vaccine. This study also argues for the development of vaccine strategies designed to elicit them.


Applied Clinical Informatics | 2016

Integrating Heterogeneous Biomedical Data for Cancer Research: the CARPEM infrastructure

Bastien Rance; Vincent Canuel; Hector Countouris; Pierre Laurent-Puig; Anita Burgun

Summary Cancer research involves numerous disciplines. The multiplicity of data sources and their heterogeneous nature render the integration and the exploration of the data more and more complex. Translational research platforms are a promising way to assist scientists in these tasks. In this article, we identify a set of scientific and technical principles needed to build a translational research platform compatible with ethical requirements, data protection and data-integration problems. We describe the solution adopted by the CARPEM cancer research program to design and deploy a platform able to integrate retrospective, prospective, and day-to-day care data. We designed a three-layer architecture composed of a data collection layer, a data integration layer and a data access layer. We leverage a set of open-source resources including i2b2 and tranSMART.


Briefings in Bioinformatics | 2016

Exploring and visualizing multidimensional data in translational research platforms

William Dunn; Anita Burgun; Marie-Odile Krebs; Bastien Rance

Abstract The unprecedented advances in technology and scientific research over the past few years have provided the scientific community with new and more complex forms of data. Large data sets collected from single groups or cross-institution consortiums containing hundreds of omic and clinical variables corresponding to thousands of patients are becoming increasingly commonplace in the research setting. Before any core analyses are performed, visualization often plays a key role in the initial phases of research, especially for projects where no initial hypotheses are dominant. Proper visualization of data at a high level facilitates researcher’s abilities to find trends, identify outliers and perform quality checks. In addition, research has uncovered the important role of visualization in data analysis and its implied benefits facilitating our understanding of disease and ultimately improving patient care. In this work, we present a review of the current landscape of existing tools designed to facilitate the visualization of multidimensional data in translational research platforms. Specifically, we reviewed the biomedical literature for translational platforms allowing the visualization and exploration of clinical and omics data, and identified 11 platforms: cBioPortal, interactive genomics patient stratification explorer, Igloo-Plot, The Georgetown Database of Cancer Plus, tranSMART, an unnamed data-cube-based model supporting heterogeneous data, Papilio, Caleydo Domino, Qlucore Omics, Oracle Health Sciences Translational Research Center and OmicsOffice® powered by TIBCO Spotfire. In a health sector continuously witnessing an increase in data from multifarious sources, visualization tools used to better grasp these data will grow in their importance, and we believe our work will be useful in guiding investigators in similar situations.


PLOS ONE | 2018

Labeling for Big Data in radiation oncology: The Radiation Oncology Structures ontology

Jean-Emmanuel Bibault; Eric Zapletal; Bastien Rance; P. Giraud; Anita Burgun

Purpose Leveraging Electronic Health Records (EHR) and Oncology Information Systems (OIS) has great potential to generate hypotheses for cancer treatment, since they directly provide medical data on a large scale. In order to gather a significant amount of patients with a high level of clinical details, multicenter studies are necessary. A challenge in creating high quality Big Data studies involving several treatment centers is the lack of semantic interoperability between data sources. We present the ontology we developed to address this issue. Methods Radiation Oncology anatomical and target volumes were categorized in anatomical and treatment planning classes. International delineation guidelines specific to radiation oncology were used for lymph nodes areas and target volumes. Hierarchical classes were created to generate The Radiation Oncology Structures (ROS) Ontology. The ROS was then applied to the data from our institution. Results Four hundred and seventeen classes were created with a maximum of 14 children classes (average = 5). The ontology was then converted into a Web Ontology Language (.owl) format and made available online on Bioportal and GitHub under an Apache 2.0 License. We extracted all structures delineated in our department since the opening in 2001. 20,758 structures were exported from our “record-and-verify” system, demonstrating a significant heterogeneity within a single center. All structures were matched to the ROS ontology before integration into our clinical data warehouse (CDW). Conclusion In this study we describe a new ontology, specific to radiation oncology, that reports all anatomical and treatment planning structures that can be delineated. This ontology will be used to integrate dosimetric data in the Assistance Publique—Hôpitaux de Paris CDW that stores data from 6.5 million patients (as of February 2017).


GigaScience | 2017

An architecture for genomics analysis in a clinical setting using Galaxy and Docker

W Digan; H Countouris; M Barritault; D Baudoin; Pierre Laurent-Puig; Hélène Blons; A Burgun; Bastien Rance

Abstract Next-generation sequencing is used on a daily basis to perform molecular analysis to determine subtypes of disease (e.g., in cancer) and to assist in the selection of the optimal treatment. Clinical bioinformatics handles the manipulation of the data generated by the sequencer, from the generation to the analysis and interpretation. Reproducibility and traceability are crucial issues in a clinical setting. We have designed an approach based on Docker container technology and Galaxy, the popular bioinformatics analysis support open-source software. Our solution simplifies the deployment of a small-size analytical platform and simplifies the process for the clinician. From the technical point of view, the tools embedded in the platform are isolated and versioned through Docker images. Along the Galaxy platform, we also introduce the AnalysisManager, a solution that allows single-click analysis for biologists and leverages standardized bioinformatics application programming interfaces. We added a Shiny/R interactive environment to ease the visualization of the outputs. The platform relies on containers and ensures the data traceability by recording analytical actions and by associating inputs and outputs of the tools to EDAM ontology through ReGaTe. The source code is freely available on Github at https://github.com/CARPEM/GalaxyDocker.


data integration in the life sciences | 2014

ConQuR-Bio: Consensus Ranking with Query Reformulation for Biological Data

Bryan Brancotte; Bastien Rance; Alain Denise; Sarah Cohen-Boulakia

This paper introduces ConQuR-Bio which aims at assisting scientists when they query public biological databases. Various reformulations of the user query are generated using medical terminologies. Such alternative reformulations are then used to rank the query results using a new consensus ranking strategy. The originality of our approach thus lies in using consensus ranking techniques within the context of query reformulation. The ConQuR-Bio system is able to query the EntrezGene NCBI database. Our experiments demonstrate the benefit of using ConQuR-Bio compared to what is currently provided to users. ConQuR-Bio is available to the bioinformatics community at http://conqur-bio.lri.fr .


american medical informatics association annual symposium | 2015

Reviewing 741 patients records in two hours with FASTVISU.

Jean-Baptiste Escudié; Anne-Sophie Jannot; Eric Zapletal; Sarah S. Cohen; Georgia Malamut; Anita Burgun; Bastien Rance


The Journal of Molecular Diagnostics | 2018

Validity of Targeted Next-Generation Sequencing in Routine Care for Identifying Clinically Relevant Molecular Profiles in Non–Small-Cell Lung Cancer: Results of a 2-Year Experience on 1343 Samples

Antoine Legras; Marc Barritault; Anne Tallet; Elizabeth Fabre; Alice Guyard; Bastien Rance; William Digan; Nicolas Pécuchet; Etienne Giroux-Leprieur; Catherine Julié; Stéphane Jouveshomme; Véronique Duchatelle; Véronique Giraudet; Laure Gibault; Alain Cazier; Jean Pastre; Françoise Le Pimpec-Barthes; Pierre Laurent-Puig; Hélène Blons


BMC Medical Informatics and Decision Making | 2017

A novel data-driven workflow combining literature and electronic health records to estimate comorbidities burden for a specific disease: a case study on autoimmune comorbidities in patients with celiac disease

Jean-Baptiste Escudié; Bastien Rance; Georgia Malamut; Sherine Khater; Anita Burgun; Christophe Cellier; Anne-Sophie Jannot

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Anita Burgun

Paris Descartes University

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Alain Denise

University of Paris-Sud

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Eric Zapletal

École Normale Supérieure

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Hélène Blons

Paris Descartes University

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Sarah Cohen-Boulakia

French Institute for Research in Computer Science and Automation

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A Burgun

Paris Descartes University

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