Title of article :
Computerized techniques pave the way for drug-drug interaction prediction and interpretation
Author/Authors :
Safdari Reza Department of Health Information Management - School of Allied Medical Sciences - Tehran University of Medical Sciences - Tehran, Iran , Ferdousi Reza Department of Health Information Management - School of Allied Medical Sciences - Tehran University of Medical Sciences - Tehran, Iran , Niakan-Kalhori Sharareh R. Department of Health Information Management - School of Allied Medical Sciences - Tehran University of Medical Sciences - Tehran, Iran , Omidi Yadollah Research Center for Pharmaceutical Nanotechnology - Faculty of Pharmacy - Tabriz University of Medical Sciences - Tabriz, Iran , Aziziheris Kamal Department of Mathematical Sciences - University of Tabriz - Tabriz, Iran
Abstract :
Health care industry also
patients penalized by medical errors that are
inevitable but highly preventable. Vast majority
of medical errors are related to adverse drug
reactions, while drug-drug interactions (DDIs)
are the main cause of adverse drug reactions
(ADRs). DDIs and ADRs have mainly
been reported by haphazard case studies.
Experimental in vivo and in vitro researches
also reveals DDI pairs. Laboratory and experimental researches are valuable but also expensive
and in some cases researchers may suffer from limitations.
Methods: In the current investigation, the latest published works were studied to analyze the trend
and pattern of the DDI modelling and the impacts of machine learning methods. Applications
of computerized techniques were also investigated for the prediction and interpretation of DDIs.
Results: Computerized data-mining in pharmaceutical sciences and related databases provide
new key transformative paradigms that can revolutionize the treatment of diseases and hence
medical care. Given that various aspects of drug discovery and pharmacotherapy are closely
related to the clinical and molecular/biological information, the scientifically sound databases
(e.g., DDIs, ADRs) can be of importance for the success of pharmacotherapy modalities.
Conclusion: A better understanding of DDIs not only provides a robust means for designing more
effective medicines but also grantees patient safety.
Keywords :
Drug-drug interaction , Data mining , Machin learning , Pharmacokinetics Pharmacodinamics , Text minimg
Journal title :
Bioimpacts