S. Zvada, T. E. Chagwedera, Rosemary Chigwanda, C. Masimirembwa
{"title":"预测潜在药物-药物相互作用的实验药代动力学计算机程序","authors":"S. Zvada, T. E. Chagwedera, Rosemary Chigwanda, C. Masimirembwa","doi":"10.2174/1874073100903010008","DOIUrl":null,"url":null,"abstract":"Publisher's version available from http://aibst.com/pdf/Masimirembwa_TODMJ%5B1%5D.pdf,Polypharmacy as a result of combating co-infections, or combination therapy for better efficacy and reducing \nthe emergency of drug resistance, is on the increase in the African clinical setting in the advent of HIV/AIDS, and tuberculosis \n(TB) co-infections, and increasing incidences of malaria and other tropical infections. The clinicians and pharmacists \nare therefore faced with the challenge of prescribing drugs in combinations that are likely to result in severe adverse \neffects or compromising treatment success. The aim of this study was, therefore, to develop a simple stand alone or network \nbased experimental computational tool to assist doctors and pharmacists in detecting drug combinations likely to result \nin undesirable metabolism based drug-drug interactions (DDIs) and offer alternate safe prescription options. The \nmechanism of most drug-drug interactions is through inhibition and induction of drug metabolising enzymes. Models for \nthe prediction of reversible and irreversible inhibitors of the major drug metabolising enzyme system, cytochrome P450, \nwere used in developing the pharmacoinformatic tool. These models enable the prediction of likely in vivo drug-drug interactions \nfrom in vitro data. In vivo drug-drug interaction data from the literature was also loaded into the software to \nvalidate the system and to give clinical guidance on specific drug-drug interactions. In this first phase of the project, focus \nwas on medications used in the treatment of HIV/AIDS, TB, malaria and other diseases common in Africa. The prototypic \ntool was based on a Standard Query Language (SQL) database with DELPHI 6.0 as the user interface. Its user friendly \npages lead the doctor or pharmacist through drug combination entry functions and gives warning if an interaction is likely. \nSubsequent actions enable the operator to retrieve more information on the mechanism of interactions, the quantitative \nmeasure of the interaction, access to published abstracts on studies, and possible prescription options to minimise DDIs. \nThe software currently has data for 50 drugs used in the design and focuses on the treatment of tropical diseases in addition \nto classical cases of drug-drug interactions involving other general classes of drugs. The tool can be distributed on \nCompaq Disk (CD) and be run on any Personal Computer (PC) on windows. We have successfully developed a pharmacokinetic- \nbased tool with a potential to assist clinicians and pharmacists in detecting and rationalizing DDIs. The tool has \nproved very useful as a teaching tool on DDIs by using the more advanced functions that explore the performance of current \ndrug-drug interactions prediction models. From the available literature, it is clear that more studies need to be done to \nestablish the prevalence and mechanisms of DDIs in the treatment of infectious diseases. We are now adding more data, \nvalidating the tool and finally testing the acceptability of this tool among clinicians and pharmacists for routine use.","PeriodicalId":89636,"journal":{"name":"The open drug metabolism journal","volume":"3 1","pages":"8-16"},"PeriodicalIF":0.0000,"publicationDate":"2009-01-26","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":"{\"title\":\"An Experimental Pharmacokinetic Computer Program to Predict Potential Drug-Drug Interactions\",\"authors\":\"S. Zvada, T. E. Chagwedera, Rosemary Chigwanda, C. 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The aim of this study was, therefore, to develop a simple stand alone or network \\nbased experimental computational tool to assist doctors and pharmacists in detecting drug combinations likely to result \\nin undesirable metabolism based drug-drug interactions (DDIs) and offer alternate safe prescription options. The \\nmechanism of most drug-drug interactions is through inhibition and induction of drug metabolising enzymes. Models for \\nthe prediction of reversible and irreversible inhibitors of the major drug metabolising enzyme system, cytochrome P450, \\nwere used in developing the pharmacoinformatic tool. These models enable the prediction of likely in vivo drug-drug interactions \\nfrom in vitro data. In vivo drug-drug interaction data from the literature was also loaded into the software to \\nvalidate the system and to give clinical guidance on specific drug-drug interactions. In this first phase of the project, focus \\nwas on medications used in the treatment of HIV/AIDS, TB, malaria and other diseases common in Africa. The prototypic \\ntool was based on a Standard Query Language (SQL) database with DELPHI 6.0 as the user interface. Its user friendly \\npages lead the doctor or pharmacist through drug combination entry functions and gives warning if an interaction is likely. \\nSubsequent actions enable the operator to retrieve more information on the mechanism of interactions, the quantitative \\nmeasure of the interaction, access to published abstracts on studies, and possible prescription options to minimise DDIs. \\nThe software currently has data for 50 drugs used in the design and focuses on the treatment of tropical diseases in addition \\nto classical cases of drug-drug interactions involving other general classes of drugs. The tool can be distributed on \\nCompaq Disk (CD) and be run on any Personal Computer (PC) on windows. We have successfully developed a pharmacokinetic- \\nbased tool with a potential to assist clinicians and pharmacists in detecting and rationalizing DDIs. The tool has \\nproved very useful as a teaching tool on DDIs by using the more advanced functions that explore the performance of current \\ndrug-drug interactions prediction models. From the available literature, it is clear that more studies need to be done to \\nestablish the prevalence and mechanisms of DDIs in the treatment of infectious diseases. 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An Experimental Pharmacokinetic Computer Program to Predict Potential Drug-Drug Interactions
Publisher's version available from http://aibst.com/pdf/Masimirembwa_TODMJ%5B1%5D.pdf,Polypharmacy as a result of combating co-infections, or combination therapy for better efficacy and reducing
the emergency of drug resistance, is on the increase in the African clinical setting in the advent of HIV/AIDS, and tuberculosis
(TB) co-infections, and increasing incidences of malaria and other tropical infections. The clinicians and pharmacists
are therefore faced with the challenge of prescribing drugs in combinations that are likely to result in severe adverse
effects or compromising treatment success. The aim of this study was, therefore, to develop a simple stand alone or network
based experimental computational tool to assist doctors and pharmacists in detecting drug combinations likely to result
in undesirable metabolism based drug-drug interactions (DDIs) and offer alternate safe prescription options. The
mechanism of most drug-drug interactions is through inhibition and induction of drug metabolising enzymes. Models for
the prediction of reversible and irreversible inhibitors of the major drug metabolising enzyme system, cytochrome P450,
were used in developing the pharmacoinformatic tool. These models enable the prediction of likely in vivo drug-drug interactions
from in vitro data. In vivo drug-drug interaction data from the literature was also loaded into the software to
validate the system and to give clinical guidance on specific drug-drug interactions. In this first phase of the project, focus
was on medications used in the treatment of HIV/AIDS, TB, malaria and other diseases common in Africa. The prototypic
tool was based on a Standard Query Language (SQL) database with DELPHI 6.0 as the user interface. Its user friendly
pages lead the doctor or pharmacist through drug combination entry functions and gives warning if an interaction is likely.
Subsequent actions enable the operator to retrieve more information on the mechanism of interactions, the quantitative
measure of the interaction, access to published abstracts on studies, and possible prescription options to minimise DDIs.
The software currently has data for 50 drugs used in the design and focuses on the treatment of tropical diseases in addition
to classical cases of drug-drug interactions involving other general classes of drugs. The tool can be distributed on
Compaq Disk (CD) and be run on any Personal Computer (PC) on windows. We have successfully developed a pharmacokinetic-
based tool with a potential to assist clinicians and pharmacists in detecting and rationalizing DDIs. The tool has
proved very useful as a teaching tool on DDIs by using the more advanced functions that explore the performance of current
drug-drug interactions prediction models. From the available literature, it is clear that more studies need to be done to
establish the prevalence and mechanisms of DDIs in the treatment of infectious diseases. We are now adding more data,
validating the tool and finally testing the acceptability of this tool among clinicians and pharmacists for routine use.