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Featured researches published by Paul Avillach.


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.


Drug Safety | 2013

A Reference Standard for Evaluation of Methods for Drug Safety Signal Detection Using Electronic Healthcare Record Databases

Preciosa M. Coloma; Paul Avillach; Francesco Salvo; Martijn J. Schuemie; Carmen Ferrajolo; Antoine Pariente; Annie Fourrier-Réglat; Mariam Molokhia; Vaishali Patadia; Johan van der Lei; Miriam Sturkenboom; Gianluca Trifirò

BackgroundThe growing interest in using electronic healthcare record (EHR) databases for drug safety surveillance has spurred development of new methodologies for signal detection. Although several drugs have been withdrawn postmarketing by regulatory authorities after scientific evaluation of harms and benefits, there is no definitive list of confirmed signals (i.e. list of all known adverse reactions and which drugs can cause them). As there is no true gold standard, prospective evaluation of signal detection methods remains a challenge.ObjectiveWithin the context of methods development and evaluation in the EU-ADR Project (Exploring and Understanding Adverse Drug Reactions by integrative mining of clinical records and biomedical knowledge), we propose a surrogate reference standard of drug-adverse event associations based on existing scientific literature and expert opinion.MethodsThe reference standard was constructed for ten top-ranked events judged as important in pharmacovigilance. A stepwise approach was employed to identify which, among a list of drug-event associations, are well recognized (known positive associations) or highly unlikely (‘negative controls’) based on MEDLINE-indexed publications, drug product labels, spontaneous reports made to the WHO’s pharmacovigilance database, and expert opinion. Only drugs with adequate exposure in the EU-ADR database network (comprising ≈60 million person-years of healthcare data) to allow detection of an association were considered. Manual verification of positive associations and negative controls was independently performed by two experts proficient in clinical medicine, pharmacoepidemiology and pharmacovigilance. A third expert adjudicated equivocal cases and arbitrated any disagreement between evaluators.ResultsOverall, 94 drug-event associations comprised the reference standard, which included 44 positive associations and 50 negative controls for the ten events of interest: bullous eruptions; acute renal failure; anaphylactic shock; acute myocardial infarction; rhabdomyolysis; aplastic anaemia/pancytopenia; neutropenia/agranulocytosis; cardiac valve fibrosis; acute liver injury; and upper gastrointestinal bleeding. For cardiac valve fibrosis, there was no drug with adequate exposure in the database network that satisfied the criteria for a positive association.ConclusionA strategy for the construction of a reference standard to evaluate signal detection methods that use EHR has been proposed. The resulting reference standard is by no means definitive, however, and should be seen as dynamic. As knowledge on drug safety evolves over time and new issues in drug safety arise, this reference standard can be re-evaluated.


Journal of Thrombosis and Haemostasis | 2012

Risk factors and clinical outcome of unsuspected pulmonary embolism in cancer patients: a case‐control study

M. Sahut D’Izarn; A. Caumont Prim; B. Planquette; M. P. Revel; Paul Avillach; G. Chatellier; O. Sanchez; G. Meyer

Summary.  Background:  Little is known about the risk factors and outcome of unsuspected pulmonary embolism (UPE) in cancer patients.


Pharmacoepidemiology and Drug Safety | 2010

A potential competition bias in the detection of safety signals from spontaneous reporting databases

Antoine Pariente; Marie Didailler; Paul Avillach; Ghada Miremont-Salamé; Annie Fourrier-Réglat; Françoise Haramburu; Nicholas Moore

To study whether reports related to known drug‐event associations could hinder the detection of new signals by increasing the detection thresholds when using disporportionality analyses in spontaneous reporting (SR) databases.


PLOS Computational Biology | 2012

Automatic Filtering and Substantiation of Drug Safety Signals

Anna Bauer-Mehren; Erik M. van Mullingen; Paul Avillach; Maria C. Carrascosa; Ricard Garcia-Serna; Janet Piñero; Bharat Singh; Pedro Lopes; José Luís Oliveira; Gayo Diallo; Ernst Ahlberg Helgee; Scott Boyer; Jordi Mestres; Ferran Sanz; Jan A. Kors; Laura I. Furlong

Drug safety issues pose serious health threats to the population and constitute a major cause of mortality worldwide. Due to the prominent implications to both public health and the pharmaceutical industry, it is of great importance to unravel the molecular mechanisms by which an adverse drug reaction can be potentially elicited. These mechanisms can be investigated by placing the pharmaco-epidemiologically detected adverse drug reaction in an information-rich context and by exploiting all currently available biomedical knowledge to substantiate it. We present a computational framework for the biological annotation of potential adverse drug reactions. First, the proposed framework investigates previous evidences on the drug-event association in the context of biomedical literature (signal filtering). Then, it seeks to provide a biological explanation (signal substantiation) by exploring mechanistic connections that might explain why a drug produces a specific adverse reaction. The mechanistic connections include the activity of the drug, related compounds and drug metabolites on protein targets, the association of protein targets to clinical events, and the annotation of proteins (both protein targets and proteins associated with clinical events) to biological pathways. Hence, the workflows for signal filtering and substantiation integrate modules for literature and database mining, in silico drug-target profiling, and analyses based on gene-disease networks and biological pathways. Application examples of these workflows carried out on selected cases of drug safety signals are discussed. The methodology and workflows presented offer a novel approach to explore the molecular mechanisms underlying adverse drug reactions.


Pharmacoepidemiology and Drug Safety | 2013

The EU-ADR Web Platform: delivering advanced pharmacovigilance tools

José Luís Oliveira; Pedro Lopes; Tiago Nunes; David Campos; Scott Boyer; Ernst Ahlberg; Erik M. van Mulligen; Jan A. Kors; Bharat Singh; Laura I. Furlong; Ferran Sanz; Anna Bauer-Mehren; Maria C. Carrascosa; Jordi Mestres; Paul Avillach; Gayo Diallo; Carlos Díaz Acedo; Johan van der Lei

Pharmacovigilance methods have advanced greatly during the last decades, making post‐market drug assessment an essential drug evaluation component. These methods mainly rely on the use of spontaneous reporting systems and health information databases to collect expertise from huge amounts of real‐world reports. The EU‐ADR Web Platform was built to further facilitate accessing, monitoring and exploring these data, enabling an in‐depth analysis of adverse drug reactions risks.


PLOS Computational Biology | 2013

Phenome-Wide Association Studies on a Quantitative Trait: Application to TPMT Enzyme Activity and Thiopurine Therapy in Pharmacogenomics

Antoine Neuraz; Laurent Chouchana; Georgia Malamut; Christine Le Beller; Denis Roche; Philippe Beaune; Patrice Degoulet; Anita Burgun; Marie-Anne Loriot; Paul Avillach

Phenome-Wide Association Studies (PheWAS) investigate whether genetic polymorphisms associated with a phenotype are also associated with other diagnoses. In this study, we have developed new methods to perform a PheWAS based on ICD-10 codes and biological test results, and to use a quantitative trait as the selection criterion. We tested our approach on thiopurine S-methyltransferase (TPMT) activity in patients treated by thiopurine drugs. We developed 2 aggregation methods for the ICD-10 codes: an ICD-10 hierarchy and a mapping to existing ICD-9-CM based PheWAS codes. Eleven biological test results were also analyzed using discretization algorithms. We applied these methods in patients having a TPMT activity assessment from the clinical data warehouse of a French academic hospital between January 2000 and July 2013. Data after initiation of thiopurine treatment were analyzed and patient groups were compared according to their TPMT activity level. A total of 442 patient records were analyzed representing 10,252 ICD-10 codes and 72,711 biological test results. The results from the ICD-9-CM based PheWAS codes and ICD-10 hierarchy codes were concordant. Cross-validation with the biological test results allowed us to validate the ICD phenotypes. Iron-deficiency anemia and diabetes mellitus were associated with a very high TPMT activity (p = 0.0004 and p = 0.0015, respectively). We describe here an original method to perform PheWAS on a quantitative trait using both ICD-10 diagnosis codes and biological test results to identify associated phenotypes. In the field of pharmacogenomics, PheWAS allow for the identification of new subgroups of patients who require personalized clinical and therapeutic management.


Circulation-arrhythmia and Electrophysiology | 2013

Characteristics and Outcomes of Sudden Cardiac Arrest During Sports in Women

Eloi Marijon; Wulfran Bougouin; David S. Celermajer; Marie-Cécile Perier; Florence Dumas; Nordine Benameur; Nicole Karam; Lionel Lamhaut; Muriel Tafflet; Hazrije Mustafic; Natalia Machado de Deus; Jean-Yves Le Heuzey; Michel Desnos; Paul Avillach; Christian Spaulding; Alain Cariou; Christof Prugger; Jean-Philippe Empana; Xavier Jouven

Background—No specific data are available on characteristics and outcome of sudden cardiac death (SCD) during sport activities among women in the general population. Methods and Results—From a prospective 5-year national survey, involving 820 subjects 10 to 75 years old who presented with SCD (resuscitated or not) during competitive or recreational sport activities, 43 (5.2%) such events occurred in women, principally during jogging, cycling, and swimming. The level of activity at the time of SCD was moderate to vigorous in 35 cases (81.4%). The overall incidence of sport-related SCD, among 15- to 75-year-old women, was estimated as 0.59 (95% confidence interval [CI], 0.39–0.79) to 2.17 (95% CI, 1.38–2.96) per year per million female sports participants for the 80th and 20th percentiles of reporting districts, respectively. Compared with men, the incidence of SCDs in women was dramatically lower, particularly in the 45- to 54-year range (relative risk, 0.033; 95% CI, 0.015–0.075). Despite similar circumstances of occurrence, survival at hospital admission (46.5%; 95% CI, 31.0–60.0) was significantly higher than that for men (30.0%; 95% CI, 26.8–33.2; P=0.02), although this did not reach statistical significance for hospital discharge. Favorable neurological outcomes were similar (80%). Cause of death seemed less likely to be associated with structural heart disease in women compared with men (58.3% versus 95.8%; P=0.003). Conclusions—Sports-related SCDs in women participants seems dramatically less common (up to 30-fold less frequent) compared with men. Our results also suggest a higher likelihood of successful resuscitation as well as less frequency of structural heart disease in women compared with men.


PLOS ONE | 2013

Drug-induced acute myocardial infarction: identifying 'prime suspects' from electronic healthcare records-based surveillance system

Preciosa M. Coloma; Martijn J. Schuemie; Gianluca Trifirò; Laura I. Furlong; Erik M. van Mulligen; Anna Bauer-Mehren; Paul Avillach; Jan A. Kors; Ferran Sanz; Jordi Mestres; José Luís Oliveira; Scott Boyer; Ernst Ahlberg Helgee; Mariam Molokhia; Justin Matthews; David Prieto-Merino; Rosa Gini; Ron M. C. Herings; Giampiero Mazzaglia; Gino Picelli; Lorenza Scotti; Lars Pedersen; Johan van der Lei; Miriam Sturkenboom

Background Drug-related adverse events remain an important cause of morbidity and mortality and impose huge burden on healthcare costs. Routinely collected electronic healthcare data give a good snapshot of how drugs are being used in ‘real-world’ settings. Objective To describe a strategy that identifies potentially drug-induced acute myocardial infarction (AMI) from a large international healthcare data network. Methods Post-marketing safety surveillance was conducted in seven population-based healthcare databases in three countries (Denmark, Italy, and the Netherlands) using anonymised demographic, clinical, and prescription/dispensing data representing 21,171,291 individuals with 154,474,063 person-years of follow-up in the period 1996–2010. Primary care physicians’ medical records and administrative claims containing reimbursements for filled prescriptions, laboratory tests, and hospitalisations were evaluated using a three-tier triage system of detection, filtering, and substantiation that generated a list of drugs potentially associated with AMI. Outcome of interest was statistically significant increased risk of AMI during drug exposure that has not been previously described in current literature and is biologically plausible. Results Overall, 163 drugs were identified to be associated with increased risk of AMI during preliminary screening. Of these, 124 drugs were eliminated after adjustment for possible bias and confounding. With subsequent application of criteria for novelty and biological plausibility, association with AMI remained for nine drugs (‘prime suspects’): azithromycin; erythromycin; roxithromycin; metoclopramide; cisapride; domperidone; betamethasone; fluconazole; and megestrol acetate. Limitations Although global health status, co-morbidities, and time-invariant factors were adjusted for, residual confounding cannot be ruled out. Conclusion A strategy to identify potentially drug-induced AMI from electronic healthcare data has been proposed that takes into account not only statistical association, but also public health relevance, novelty, and biological plausibility. Although this strategy needs to be further evaluated using other healthcare data sources, the list of ‘prime suspects’ makes a good starting point for further clinical, laboratory, and epidemiologic investigation.


Journal of the American Medical Informatics Association | 2016

An informatics research agenda to support precision medicine: seven key areas

Jessica D. Tenenbaum; Paul Avillach; Marge M. Benham-Hutchins; Matthew K. Breitenstein; Erin L. Crowgey; Mark A. Hoffman; Xia Jiang; Subha Madhavan; John E. Mattison; Radhakrishnan Nagarajan; Bisakha Ray; Dmitriy Shin; Shyam Visweswaran; Zhongming Zhao; Robert R. Freimuth

The recent announcement of the Precision Medicine Initiative by President Obama has brought precision medicine (PM) to the forefront for healthcare providers, researchers, regulators, innovators, and funders alike. As technologies continue to evolve and datasets grow in magnitude, a strong computational infrastructure will be essential to realize PM’s vision of improved healthcare derived from personal data. In addition, informatics research and innovation affords a tremendous opportunity to drive the science underlying PM. The informatics community must lead the development of technologies and methodologies that will increase the discovery and application of biomedical knowledge through close collaboration between researchers, clinicians, and patients. This perspective highlights seven key areas that are in need of further informatics research and innovation to support the realization of PM.

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Marius Fieschi

Aix-Marseille University

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Johan van der Lei

Erasmus University Medical Center

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Rosa Gini

Erasmus University Rotterdam

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Miriam Sturkenboom

Erasmus University Medical Center

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Preciosa M. Coloma

Erasmus University Medical Center

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Ron M. C. Herings

Erasmus University Rotterdam

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