Automated calculation and reporting of vancomycin area under the concentration–time curve: a simplified single-trough concentration-based equation approach

Author:

Kim Hyun-Ki1ORCID,Jeong Tae-Dong2,Ji Misuk3,Kim Sollip4,Lee Woochang4,Chun Sail4ORCID

Affiliation:

1. Department of Laboratory Medicine, Ulsan University Hospital, University of Ulsan College of Medicine, Ulsan, South Korea

2. Department of Laboratory Medicine, Ewha Womans University College of Medicine, Seoul, South Korea

3. Department of Laboratory Medicine, Veterans Health Service (VHS) Medical Center, Seoul, South Korea

4. Department of Laboratory Medicine, University of Ulsan College of Medicine and Asan Medical Center, Seoul, South Korea

Abstract

ABSTRACT Vancomycin, a crucial antibiotic for Gram-positive bacterial infections, requires therapeutic drug monitoring (TDM). Contemporary guidelines advocate for AUC-based monitoring; however, using Bayesian programs for AUC estimation poses challenges. We aimed to develop and evaluate a simplified AUC estimation equation using a steady-state trough concentration (C trough ) value. Utilizing 1,034 TDM records from 580 general hospitalized patients at a university-affiliated hospital in Ulsan, we created an equation named SSTA that calculates the AUC by applying C trough , body weight, and single dose as input variables. External validation included 326 records from 163 patients at a university-affiliated hospital in Seoul (EWUSH) and literature data from 20 patients at a university-affiliated hospital in Bangkok (MUSI). It was compared with other AUC estimation models based on the C trough , including a linear regression model (LR), a sophisticated model based on the first-order equation (VancoPK), and a Bayesian model (BSCt). Evaluation metrics, such as median absolute percentage error (MdAPE) and the percentage of observations within ±20% error (P20), were calculated. External validation using the EWUSH data set showed that SSTA, LR, VancoPK, and BSCt had MdAPE values of 6.4, 10.1, 6.6, and 7.5% and P20 values of 87.1, 82.5, 87.7, and 83.4%, respectively. External validation using the MUSI data set showed that SSTA, LR, and VancoPK had MdAPEs of 5.2, 9.4, and 7.2%, and P20 of 95, 90, and 95%, respectively. Owing to its decent AUC prediction performance, simplicity, and convenience for automated calculation and reporting, SSTA could be used as an adjunctive tool for the AUC-based TDM.

Publisher

American Society for Microbiology

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