Literature DB >> 34019213

Fast screening of covariates in population models empowered by machine learning.

Emeric Sibieude1,2, Akash Khandelwal3, Jan S Hesthaven4, Pascal Girard2, Nadia Terranova5.   

Abstract

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 influence based on simulated pharmacokinetics data. ML achieved similar or better F1 scores than stepwise covariate modeling (SCM) and conditional sampling for stepwise approach based on correlation tests (COSSAC). Correlations between covariates and the number of false covariates does not affect the performance of any method, but effect size has an impact. Methods are not equivalent with respect to computational speed; SCM is 30 and 100-times slower than NN and SVR, respectively. The results are validated in an additional scenario involving 100 covariates. Taken together, the results indicate that ML methods can greatly increase the efficiency of population covariate model building in the case of large datasets or complex models that require long run-times. This can provide fast initial covariate screening, which can be followed by more conventional PMX approaches to assess the clinical relevance of selected covariates and build the final model.

Entities:  

Mesh:

Year:  2021        PMID: 34019213      PMCID: PMC8225540          DOI: 10.1007/s10928-021-09757-w

Source DB:  PubMed          Journal:  J Pharmacokinet Pharmacodyn        ISSN: 1567-567X            Impact factor:   2.745


  7 in total

1.  A novel analytical framework for risk stratification of real-world data using machine learning: A small cell lung cancer study.

Authors:  Luca Marzano; Adam S Darwich; Salomon Tendler; Asaf Dan; Rolf Lewensohn; Luigi De Petris; Jayanth Raghothama; Sebastiaan Meijer
Journal:  Clin Transl Sci       Date:  2022-07-29       Impact factor: 4.438

2.  Application of Machine Learning in Translational Medicine: Current Status and Future Opportunities.

Authors:  Nadia Terranova; Karthik Venkatakrishnan; Lisa J Benincosa
Journal:  AAPS J       Date:  2021-05-18       Impact factor: 4.009

3.  Pharmacometric modeling and machine learning analyses of prognostic and predictive factors in the JAVELIN Gastric 100 phase III trial of avelumab.

Authors:  Nadia Terranova; Jonathan French; Haiqing Dai; Matthew Wiens; Akash Khandelwal; Ana Ruiz-Garcia; Juliane Manitz; Anja von Heydebreck; Mary Ruisi; Kevin Chin; Pascal Girard; Karthik Venkatakrishnan
Journal:  CPT Pharmacometrics Syst Pharmacol       Date:  2022-01-19

4.  Population pharmacokinetic model selection assisted by machine learning.

Authors:  Emeric Sibieude; Akash Khandelwal; Pascal Girard; Jan S Hesthaven; Nadia Terranova
Journal:  J Pharmacokinet Pharmacodyn       Date:  2021-10-27       Impact factor: 2.745

5.  Contribution of machine learning to tumor growth inhibition modeling for hepatocellular carcinoma patients under Roblitinib (FGF401) drug treatment.

Authors:  Mélanie Wilbaux; David Demanse; Yi Gu; Astrid Jullion; Andrea Myers; Vasiliki Katsanou; Christophe Meille
Journal:  CPT Pharmacometrics Syst Pharmacol       Date:  2022-06-21

6.  A Multi-Centre Study to Risk Stratify Colorectal Polyp Surveillance Patients Utilising Volatile Organic Compounds and Faecal Immunochemical Test.

Authors:  Subashini Chandrapalan; Farah Khasawneh; Baljit Singh; Stephen Lewis; James Turvill; Krishna Persaud; Ramesh P Arasaradnam
Journal:  Cancers (Basel)       Date:  2022-10-09       Impact factor: 6.575

7.  A Systems-Based Analysis of Mono- and Combination Therapy for Carbapenem-Resistant Klebsiella pneumoniae Bloodstream Infections.

Authors:  Courtney L Luterbach; Hongqiang Qiu; Patrick O Hanafin; Rajnikant Sharma; Joseph Piscitelli; Feng-Chang Lin; Jenni Ilomaki; Eric Cober; Robert A Salata; Robert C Kalayjian; Richard R Watkins; Yohei Doi; Keith S Kaye; Roger L Nation; Robert A Bonomo; Cornelia B Landersdorfer; David van Duin; Gauri G Rao
Journal:  Antimicrob Agents Chemother       Date:  2022-09-20       Impact factor: 5.938

  7 in total

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