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An interpretable stacking ensemble learning framework based on multi-dimensional data for real-time prediction of drug concentration: The example of olanzapine.
Zhu, Xiuqing; Hu, Jinqing; Xiao, Tao; Huang, Shanqing; Wen, Yuguan; Shang, Dewei.
Afiliación
  • Zhu X; Department of Pharmacy, The Affiliated Brain Hospital of Guangzhou Medical University, Guangzhou, China.
  • Hu J; Guangdong Engineering Technology Research Center for Translational Medicine of Mental Disorders, Guangzhou, China.
  • Xiao T; Department of Pharmacy, The Affiliated Brain Hospital of Guangzhou Medical University, Guangzhou, China.
  • Huang S; Guangdong Engineering Technology Research Center for Translational Medicine of Mental Disorders, Guangzhou, China.
  • Wen Y; Department of Pharmacy, The Affiliated Brain Hospital of Guangzhou Medical University, Guangzhou, China.
  • Shang D; Department of Clinical Research, Guangdong Second Provincial General Hospital, Guangzhou, China.
Front Pharmacol ; 13: 975855, 2022.
Article en En | MEDLINE | ID: mdl-36238557
ABSTRACT
Background and

Aim:

Therapeutic drug monitoring (TDM) has evolved over the years as an important tool for personalized medicine. Nevertheless, some limitations are associated with traditional TDM. Emerging data-driven model forecasting [e.g., through machine learning (ML)-based approaches] has been used for individualized therapy. This study proposes an interpretable stacking-based ML framework to predict concentrations in real time after olanzapine (OLZ) treatment.

Methods:

The TDM-OLZ dataset, consisting of 2,142 OLZ measurements and 472 features, was formed by collecting electronic health records during the TDM of 927 patients who had received OLZ treatment. We compared the performance of ML algorithms by using 10-fold cross-validation and the mean absolute error (MAE). The optimal subset of features was analyzed by a random forest-based sequential forward feature selection method in the context of the top five heterogeneous regressors as base models to develop a stacked ensemble regressor, which was then optimized via the grid search method. Its predictions were explained by using local interpretable model-agnostic explanations (LIME) and partial dependence plots (PDPs).

Results:

A state-of-the-art stacking ensemble learning framework that integrates optimized extra trees, XGBoost, random forest, bagging, and gradient-boosting regressors was developed for nine selected features [i.e., daily dose (OLZ), gender_male, age, valproic acid_yes, ALT, K, BW, MONO#, and time of blood sampling after first administration]. It outperformed other base regressors that were considered, with an MAE of 0.064, R-square value of 0.5355, mean squared error of 0.0089, mean relative error of 13%, and ideal rate (the percentages of predicted TDM within ± 30% of actual TDM) of 63.40%. Predictions at the individual level were illustrated by LIME plots, whereas the global interpretation of associations between features and outcomes was illustrated by PDPs.

Conclusion:

This study highlights the feasibility of the real-time estimation of drug concentrations by using stacking-based ML strategies without losing interpretability, thus facilitating model-informed precision dosing.
Palabras clave

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Tipo de estudio: Prognostic_studies / Risk_factors_studies Idioma: En Revista: Front Pharmacol Año: 2022 Tipo del documento: Article País de afiliación: China

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Tipo de estudio: Prognostic_studies / Risk_factors_studies Idioma: En Revista: Front Pharmacol Año: 2022 Tipo del documento: Article País de afiliación: China
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