DocumentCode :
3706596
Title :
Automagically Encoding Adverse Drug Reactions in MedDRA
Author :
Margherita Zorzi;Carlo Combi;Riccardo Lora;Marco Pagliarini;Ugo Moretti
Author_Institution :
Dept. of Comput. Sci., Univ. of Verona, Verona, Italy
fYear :
2015
Firstpage :
90
Lastpage :
99
Abstract :
Pharmacovigilance is the field of science devoted to the collection, analysis, and prevention of Adverse Drug Reactions (ADRs). Efficient strategies for the extraction of information about ADRs from free text sources are essential to support the important task of detecting and classifying unexpected pathologies, possibly related to (therapy-related) drug use. Narrative ADR descriptions may be collected in different ways, e.g., Either by monitoring social networks or through the so called "spontaneous reporting, the main method pharmacovigilance adopts in order to identify ADRs. The encoding of free-text ADR descriptions according to MedDRA standard terminology is central for report analysis. It is a complex work, which has to be manually implemented by the pharmacovigilance experts. The manual encoding is expensive (in terms of time). Moreover, a problem about the accuracy of the encoding may occur, since the number of reports is growing up day by day. In this paper, we propose Magi Coder, an efficient Natural Language Processing algorithm able to automatically derive MedDRA terminologies from free text ADR descriptions. Magi Coder is part of Vigi Work, a web application for online ADR reporting and analysis. From a practical point of view, Magi Coder reduces the encoding time of ADR reports. Pharmacologists have simply to review and validate the MedDRA terms proposed by Magi Coder, instead of choosing the right terms among the 70K terms of MedDRA. Such improvement in the efficiency of pharmacologists´ work has a relevant impact also on the quality of the following data analysis. Our proposal is based on a general approach, not depending on the considered language. Indeed, we developed Magi Coder for the Italian pharmacovigilance language, but preliminarily analyses show that it is robust to language and dictionary changes.
Keywords :
"Drugs","Encoding","Natural language processing","Terminology","Data mining","Pathology"
Publisher :
ieee
Conference_Titel :
Healthcare Informatics (ICHI), 2015 International Conference on
Type :
conf
DOI :
10.1109/ICHI.2015.18
Filename :
7349679
Link To Document :
بازگشت