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Strategy for the Prediction of Steady-State Exposure of Digoxin to Determine Drug-Drug Interaction Potential of Digoxin With Other Drugs in Digitalization Therapy.
- Source :
-
American journal of therapeutics [Am J Ther] 2019 Jan/Feb; Vol. 26 (1), pp. e54-e65. - Publication Year :
- 2019
-
Abstract
- Digoxin, a narrow therapeutic index drug, is widely used in congestive heart failure. However, the digitalization therapy involves dose titration and can exhibit drug-drug interaction. Ctrough versus area under the plasma concentration versus time curve in a dosing interval of 24 hours (AUC0-24h) and Cmax versus AUC0-24h for digoxin were established by linear regression. The predictions of digoxin AUC0-24h values were performed using published Ctrough or Cmax with appropriate regression lines. The fold difference, defined as the quotient of the observed/predicted AUC0-24h values, was evaluated. The mean square error and root mean square error, correlation coefficient (r), and goodness of the fold prediction were used to evaluate the models. Both Ctrough versus AUC0-24h (r = 0.9215) and Cmax versus AUC0-24h models for digoxin (r = 0.7781) showed strong correlations. Approximately 93.8% of the predicted digoxin AUC0-24h values were within 0.76-fold to 1.25-fold difference for Ctrough model. In sharp contrast, the Cmax model showed larger variability with only 51.6% of AUC0-24h predictions within 0.76-1.25-fold difference. The r value for observed versus predicted AUC0-24h for Ctrough (r = 0.9551; n = 177; P < 0.001) was superior to the Cmax (r = 0.6134; n = 275; P < 0.001) model. The mean square error and root mean square error (%) for the Ctrough model were 11.95% and 16.2% as compared to 67.17% and 42.3% obtained for the Cmax model. Simple linear regression models for Ctrough/Cmax versus AUC0-24h were derived for digoxin. On the basis of statistical evaluation, Ctrough was superior to Cmax model for the prediction of digoxin AUC0-24h and can be potentially used in a prospective setting for predicting drug-drug interaction or lack of it.
- Subjects :
- Area Under Curve
Cardiotonic Agents administration & dosage
Digoxin administration & dosage
Drug Administration Schedule
Drug Interactions
Drug Monitoring
Healthy Volunteers
Humans
Linear Models
Male
Prospective Studies
Cardiotonic Agents pharmacokinetics
Digoxin pharmacokinetics
Models, Biological
Subjects
Details
- Language :
- English
- ISSN :
- 1536-3686
- Volume :
- 26
- Issue :
- 1
- Database :
- MEDLINE
- Journal :
- American journal of therapeutics
- Publication Type :
- Academic Journal
- Accession number :
- 26808357
- Full Text :
- https://doi.org/10.1097/MJT.0000000000000435