• search hit 3 of 10
Back to Result List

Bayesian Data Assimilation to Support Informed Decision Making in Individualized Chemotherapy

  • An essential component of therapeutic drug/biomarker monitoring (TDM) is to combine patient data with prior knowledge for model-based predictions of therapy outcomes. Current Bayesian forecasting tools typically rely only on the most probable model parameters (maximum a posteriori (MAP) estimate). This MAP-based approach, however, does neither necessarily predict the most probable outcome nor does it quantify the risks of treatment inefficacy or toxicity. Bayesian data assimilation (DA) methods overcome these limitations by providing a comprehensive uncertainty quantification. We compare DA methods with MAP-based approaches and show how probabilistic statements about key markers related to chemotherapy-induced neutropenia can be leveraged for more informative decision support in individualized chemotherapy. Sequential Bayesian DA proved to be most computationally efficient for handling interoccasion variability and integrating TDM data. For new digital monitoring devices enabling more frequent data collection, these features will beAn essential component of therapeutic drug/biomarker monitoring (TDM) is to combine patient data with prior knowledge for model-based predictions of therapy outcomes. Current Bayesian forecasting tools typically rely only on the most probable model parameters (maximum a posteriori (MAP) estimate). This MAP-based approach, however, does neither necessarily predict the most probable outcome nor does it quantify the risks of treatment inefficacy or toxicity. Bayesian data assimilation (DA) methods overcome these limitations by providing a comprehensive uncertainty quantification. We compare DA methods with MAP-based approaches and show how probabilistic statements about key markers related to chemotherapy-induced neutropenia can be leveraged for more informative decision support in individualized chemotherapy. Sequential Bayesian DA proved to be most computationally efficient for handling interoccasion variability and integrating TDM data. For new digital monitoring devices enabling more frequent data collection, these features will be of critical importance to improve patient care decisions in various therapeutic areas.show moreshow less

Download full text files

  • pmnr827.pdfeng
    (2878KB)

    SHA-1: 9bbad354974d600564a5e2174845ec8b01061acf

Export metadata

Additional Services

Search Google Scholar Statistics
Metadaten
Author details:Corinna Maier, Niklas HartungORCiD, Jana de WiljesORCiDGND, Charlotte KloftORCiDGND, Wilhelm HuisingaORCiDGND
URN:urn:nbn:de:kobv:517-opus4-445500
DOI:https://doi.org/10.25932/publishup-44550
ISSN:1866-8372
Title of parent work (German):Postprints der Universität Potsdam : Mathematisch Naturwissenschaftliche Reihe
Publication series (Volume number):Zweitveröffentlichungen der Universität Potsdam : Mathematisch-Naturwissenschaftliche Reihe (827)
Publication type:Postprint
Language:English
Date of first publication:2020/03/03
Publication year:2020
Publishing institution:Universität Potsdam
Release date:2020/03/03
Tag:Induced neutropenia; Model; Myelosuppression; Prediction
Issue:827
Number of pages:14
Source:CPT: Pharmacometrics & Systems Pharmacology XX (2020) 1–12 DOI:10.1002/psp4.12492
Organizational units:Mathematisch-Naturwissenschaftliche Fakultät
DDC classification:6 Technik, Medizin, angewandte Wissenschaften / 61 Medizin und Gesundheit / 610 Medizin und Gesundheit
Peer review:Referiert
Publishing method:Open Access
License (German):License LogoCC-BY - Namensnennung 4.0 International
External remark:Bibliographieeintrag der Originalveröffentlichung/Quelle
Accept ✔
This website uses technically necessary session cookies. By continuing to use the website, you agree to this. You can find our privacy policy here.