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Screening for severe drug-drug interactions in patients with multiple sclerosis: A comparison of three drug interaction databases

Background: Patients with multiple sclerosis (MS) often undergo complex treatment regimens, resulting in an increased risk of polypharmacy and potential drug-drug interactions (pDDIs). Drug interaction databases are useful for identifying pDDIs to support safer medication use. Objective: To compare...

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Autores principales: Hecker, Michael, Frahm, Niklas, Bachmann, Paula, Debus, Jane Louisa, Haker, Marie-Celine, Mashhadiakbar, Pegah, Langhorst, Silvan Elias, Baldt, Julia, Streckenbach, Barbara, Heidler, Felicita, Zettl, Uwe Klaus
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9416235/
https://www.ncbi.nlm.nih.gov/pubmed/36034780
http://dx.doi.org/10.3389/fphar.2022.946351
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author Hecker, Michael
Frahm, Niklas
Bachmann, Paula
Debus, Jane Louisa
Haker, Marie-Celine
Mashhadiakbar, Pegah
Langhorst, Silvan Elias
Baldt, Julia
Streckenbach, Barbara
Heidler, Felicita
Zettl, Uwe Klaus
author_facet Hecker, Michael
Frahm, Niklas
Bachmann, Paula
Debus, Jane Louisa
Haker, Marie-Celine
Mashhadiakbar, Pegah
Langhorst, Silvan Elias
Baldt, Julia
Streckenbach, Barbara
Heidler, Felicita
Zettl, Uwe Klaus
author_sort Hecker, Michael
collection PubMed
description Background: Patients with multiple sclerosis (MS) often undergo complex treatment regimens, resulting in an increased risk of polypharmacy and potential drug-drug interactions (pDDIs). Drug interaction databases are useful for identifying pDDIs to support safer medication use. Objective: To compare three different screening tools regarding the detection and classification of pDDIs in a cohort of MS patients. Furthermore, we aimed at ascertaining sociodemographic and clinical factors that are associated with the occurrence of severe pDDIs. Methods: The databases Stockley’s, Drugs.com and MediQ were used to identify pDDIs by screening the medication schedules of 627 patients. We determined the overlap of the identified pDDIs and the level of agreement in pDDI severity ratings between the three databases. Logistic regression analyses were conducted to determine patient risk factors of having a severe pDDI. Results: The most different pDDIs were identified using MediQ (n = 1,161), followed by Drugs.com (n = 923) and Stockley’s (n = 706). The proportion of pDDIs classified as severe was much higher for Stockley’s (37.4%) than for Drugs.com (14.4%) and MediQ (0.9%). Overall, 1,684 different pDDIs were identified by at least one database, of which 318 pDDIs (18.9%) were detected with all three databases. Only 55 pDDIs (3.3%) have been reported with the same severity level across all databases. A total of 336 pDDIs were classified as severe (271 pDDIs by one database, 59 by two databases and 6 by three databases). Stockley’s and Drugs.com revealed 47 and 23 severe pDDIs, respectively, that were not included in the other databases. At least one severe pDDI was found for 35.2% of the patients. The most common severe pDDI was the combination of acetylsalicylic acid with enoxaparin, and citalopram was the drug most frequently involved in different severe pDDIs. The strongest predictors of having a severe pDDI were a greater number of drugs taken, an older age, living alone, a higher number of comorbidities and a lower educational level. Conclusions: The information on pDDIs are heterogeneous between the databases examined. More than one resource should be used in clinical practice to evaluate pDDIs. Regular medication reviews and exchange of information between treating physicians can help avoid severe pDDIs.
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spelling pubmed-94162352022-08-27 Screening for severe drug-drug interactions in patients with multiple sclerosis: A comparison of three drug interaction databases Hecker, Michael Frahm, Niklas Bachmann, Paula Debus, Jane Louisa Haker, Marie-Celine Mashhadiakbar, Pegah Langhorst, Silvan Elias Baldt, Julia Streckenbach, Barbara Heidler, Felicita Zettl, Uwe Klaus Front Pharmacol Pharmacology Background: Patients with multiple sclerosis (MS) often undergo complex treatment regimens, resulting in an increased risk of polypharmacy and potential drug-drug interactions (pDDIs). Drug interaction databases are useful for identifying pDDIs to support safer medication use. Objective: To compare three different screening tools regarding the detection and classification of pDDIs in a cohort of MS patients. Furthermore, we aimed at ascertaining sociodemographic and clinical factors that are associated with the occurrence of severe pDDIs. Methods: The databases Stockley’s, Drugs.com and MediQ were used to identify pDDIs by screening the medication schedules of 627 patients. We determined the overlap of the identified pDDIs and the level of agreement in pDDI severity ratings between the three databases. Logistic regression analyses were conducted to determine patient risk factors of having a severe pDDI. Results: The most different pDDIs were identified using MediQ (n = 1,161), followed by Drugs.com (n = 923) and Stockley’s (n = 706). The proportion of pDDIs classified as severe was much higher for Stockley’s (37.4%) than for Drugs.com (14.4%) and MediQ (0.9%). Overall, 1,684 different pDDIs were identified by at least one database, of which 318 pDDIs (18.9%) were detected with all three databases. Only 55 pDDIs (3.3%) have been reported with the same severity level across all databases. A total of 336 pDDIs were classified as severe (271 pDDIs by one database, 59 by two databases and 6 by three databases). Stockley’s and Drugs.com revealed 47 and 23 severe pDDIs, respectively, that were not included in the other databases. At least one severe pDDI was found for 35.2% of the patients. The most common severe pDDI was the combination of acetylsalicylic acid with enoxaparin, and citalopram was the drug most frequently involved in different severe pDDIs. The strongest predictors of having a severe pDDI were a greater number of drugs taken, an older age, living alone, a higher number of comorbidities and a lower educational level. Conclusions: The information on pDDIs are heterogeneous between the databases examined. More than one resource should be used in clinical practice to evaluate pDDIs. Regular medication reviews and exchange of information between treating physicians can help avoid severe pDDIs. Frontiers Media S.A. 2022-08-05 /pmc/articles/PMC9416235/ /pubmed/36034780 http://dx.doi.org/10.3389/fphar.2022.946351 Text en Copyright © 2022 Hecker, Frahm, Bachmann, Debus, Haker, Mashhadiakbar, Langhorst, Baldt, Streckenbach, Heidler and Zettl. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Pharmacology
Hecker, Michael
Frahm, Niklas
Bachmann, Paula
Debus, Jane Louisa
Haker, Marie-Celine
Mashhadiakbar, Pegah
Langhorst, Silvan Elias
Baldt, Julia
Streckenbach, Barbara
Heidler, Felicita
Zettl, Uwe Klaus
Screening for severe drug-drug interactions in patients with multiple sclerosis: A comparison of three drug interaction databases
title Screening for severe drug-drug interactions in patients with multiple sclerosis: A comparison of three drug interaction databases
title_full Screening for severe drug-drug interactions in patients with multiple sclerosis: A comparison of three drug interaction databases
title_fullStr Screening for severe drug-drug interactions in patients with multiple sclerosis: A comparison of three drug interaction databases
title_full_unstemmed Screening for severe drug-drug interactions in patients with multiple sclerosis: A comparison of three drug interaction databases
title_short Screening for severe drug-drug interactions in patients with multiple sclerosis: A comparison of three drug interaction databases
title_sort screening for severe drug-drug interactions in patients with multiple sclerosis: a comparison of three drug interaction databases
topic Pharmacology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9416235/
https://www.ncbi.nlm.nih.gov/pubmed/36034780
http://dx.doi.org/10.3389/fphar.2022.946351
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