One of the objectives of Pharmacometry (PMX) population modeling is the identification of significant and clinically relevant relationships between parameters and covariates. Here, we demonstrate how this complex selection task could benefit from supervised learning algorithms using importance scores. We compare various classical methods with three machine learning (ML) methods applied to NONMEM empirical Bayes estimates: random forest, neural networks (NNs), and support vector regression (SVR). The performance of the ML models is assessed using receiver operating characteristic (ROC) curves. The F1 score, which measures test accuracy, is used to compare ML and PMX approaches. Methods are applied to different scenarios of covariate influenc...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
Population pharmacokinetic-pharmacodynamic (PK-PD) models can be fitted using nonlinear mixed effect...
7noMachine learning (ML) algorithms have been used to forecast clinical outcomes or drug adverse eff...
In population pharmacokinetic (PK) models, interindividual variability is explained by implementatio...
Clinical pharmacology is a multidisciplinary data sciences field that utilizes mathematical and stat...
Nonlinear Mixed effect models are often used to describe population pharmacokinetics (PK) and Pharma...
Abstract Missing data create challenges in clinical research because they lead to loss of statistica...
© 2022 by the authors.Pharmacometrics is a multidisciplinary field utilizing mathematical models of ...
Propensity score matching (PSM) and propensity score weighting (PSW) are popular tools to estimate c...
High-throughput screening (HTS) is now a standard approach used in the pharmaceutical industry to id...
Several machine learning techniques were evaluated for the prediction of parameters relevant in phar...
This work investigates the predictive performance of 10 Machine learning models on three medical dat...
This work investigates the predictive performance of 10 Machine learning models on three medical dat...
Pharmacometrics (PM) and machine learning (ML) are both valuable for drug development to characteriz...
Pharmacometrics (PM) and machine learning (ML) are both valuable for drug development to characteriz...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
Population pharmacokinetic-pharmacodynamic (PK-PD) models can be fitted using nonlinear mixed effect...
7noMachine learning (ML) algorithms have been used to forecast clinical outcomes or drug adverse eff...
In population pharmacokinetic (PK) models, interindividual variability is explained by implementatio...
Clinical pharmacology is a multidisciplinary data sciences field that utilizes mathematical and stat...
Nonlinear Mixed effect models are often used to describe population pharmacokinetics (PK) and Pharma...
Abstract Missing data create challenges in clinical research because they lead to loss of statistica...
© 2022 by the authors.Pharmacometrics is a multidisciplinary field utilizing mathematical models of ...
Propensity score matching (PSM) and propensity score weighting (PSW) are popular tools to estimate c...
High-throughput screening (HTS) is now a standard approach used in the pharmaceutical industry to id...
Several machine learning techniques were evaluated for the prediction of parameters relevant in phar...
This work investigates the predictive performance of 10 Machine learning models on three medical dat...
This work investigates the predictive performance of 10 Machine learning models on three medical dat...
Pharmacometrics (PM) and machine learning (ML) are both valuable for drug development to characteriz...
Pharmacometrics (PM) and machine learning (ML) are both valuable for drug development to characteriz...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
Population pharmacokinetic-pharmacodynamic (PK-PD) models can be fitted using nonlinear mixed effect...
7noMachine learning (ML) algorithms have been used to forecast clinical outcomes or drug adverse eff...