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Funded Projects › FP7

EU-ADR · Exploring and understanding adverse drug reactions by integrative mining of clinical records and biomedical knowledge

FP7Status: CLOSED1 February 200831 January 2012EU funding €4,500,000

Serious adverse effects resulting from the treatment with thalidomide prompted modern drug legislation more than 40 years ago. Post-marketing spontaneous reporting systems for suspected adverse drug reactions (ADRs) have been a cornerstone to detect safety signals in pharmacovigilance. It has become evident that adverse effects of drugs may be detected too late, when millions of persons have already been exposed.In this project, an alternative approach for the detection of ADR signals will be developed. Rather than relying on the physician's capability and willingness to recognize and report suspected ADRs, the system will systematically calculate the occurrence of disease (potentially ADRs) during specific drug use based on data available in electronic patient records. In this project, electronic health records (EHRs) of over 30 million patients from several European countries will be available. In an environment where rapid signal detection is feasible, rapid signal assessment is equally important. To rapidly assess signals, a number of resources will be used to substantiate the signals: causal reasoning based on information in the EHRs, semantic mining of the biomedical literature, and computational analysis of biological and chemical information (drugs, targets, anti-targets, SNPs, pathways, etc.).The overall objective of this project is the design, development and validation of a computerized system that exploits data from electronic healthcare records and biomedical databases for the early detection of adverse drug reactions. The EU-ADR system will generate signals using data and text mining, epidemiological and other computational techniques, and subsequently substantiate these signals in the light of current knowledge of biological mechanisms and in silico prediction capabilities. The system should be able to detect signals better and faster than spontaneous reporting systems and should allow for identification of subpopulations at higher risk for ADRs.

Consortium · 15 organisations

coordinator

ERASMUS UNIVERSITAIR MEDISCH CENTRUM ROTTERDAM

NL · €1,216,639

participant

UNIVERSIDAD POMPEU FABRA

ES · €425,551

participant

AGENZIA REGIONALE DI SANITA

IT · €181,895

participant

UNIVERSITE VICTOR SEGALEN BORDEAUX II

FR · €289,800

participant

UNIVERSIDAD DE SANTIAGO DE COMPOSTELA

ES · €121,216

participant

IRCCS CENTRO NEUROLESI BONINO PULEJO

IT · €137,150

participant

UNIVERSIDADE DE AVEIRO

PT · €286,650

participant

LONDON SCHOOL OF HYGIENE AND TROPICAL MEDICINE ROYAL CHARTER

UK · €197,098

participant

SOCIETA SERVIZI TELEMATICI SRL

IT · €179,825

participant

AARHUS UNIVERSITETSHOSPITAL

DK · €176,834

participant

THE UNIVERSITY OF NOTTINGHAM

UK · €308,647

participant

FUNDACIO INSTITUT HOSPITAL DEL MAR D INVESTIGACIONS MEDIQUES

ES · €396,859

participant

UNIVERSITA' DEGLI STUDI DI MILANO-BICOCCA

IT · €181,895

participant

Stichting Informatievoorziening voor Zorg en Onderzoek

NL · €179,825

participant

ASTRAZENECA AB

SE · €220,116

Research fields

View the official record on CORDIS →

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