Affiliation:
1. Department of Pharmacy, The First Affiliated Hospital Fujian Medical University Fuzhou China
2. Department of Pharmacy, National Regional Medical Center, Binhai Campus of The First Affiliated Hospital Fujian Medical University Fuzhou China
3. School of Mechanical Engineering and Automation Fuzhou University Fuzhou China
Abstract
AimsAlthough there are various model‐based approaches to individualized vancomycin (VCM) administration, few have been reported for adult patients with periprosthetic joint infection (PJI). This work attempted to develop a machine learning (ML)‐based model for predicting VCM trough concentration in adult PJI patients.MethodsThe dataset of 287 VCM trough concentrations from 130 adult PJI patients was split into a training set (229) and a testing set (58) at a ratio of 8:2, and an independent external 32 concentrations were collected as a validation set. A total of 13 covariates and the target variable (VCM trough concentration) were included in the dataset. A covariate model was respectively constructed by support vector regression, random forest regression and gradient boosted regression trees and interpreted by SHapley Additive exPlanation (SHAP).ResultsThe SHAP plots visualized the weight of the covariates in the models, with estimated glomerular filtration rate and VCM daily dose as the 2 most important factors, which were adopted for the model construction. Random forest regression was the optimal ML algorithm with a relative accuracy of 82.8% and absolute accuracy of 67.2% (R2 =.61, mean absolute error = 2.4, mean square error = 10.1), and its prediction performance was verified in the validation set.ConclusionThe proposed ML‐based model can satisfactorily predict the VCM trough concentration in adult PJI patients. Its construction can be facilitated with only 2 clinical parameters (estimated glomerular filtration rate and VCM daily dose), and prediction accuracy can be rationalized by SHAP values, which highlights a profound practical value for clinical dosing guidance and timely treatment.
Funder
Fujian Provincial Health Technology Project