2021
DOI: 10.1002/psp4.12745
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A continued learning approach for model‐informed precision dosing: Updating models in clinical practice

Abstract: Model‐informed precision dosing (MIPD) is a quantitative dosing framework that combines prior knowledge on the drug‐disease‐patient system with patient data from therapeutic drug/ biomarker monitoring (TDM) to support individualized dosing in ongoing treatment. Structural models and prior parameter distributions used in MIPD approaches typically build on prior clinical trials that involve only a limited number of patients selected according to some exclusion/inclusion criteria. Compared to the prior clinical t… Show more

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Cited by 15 publications
(14 citation statements)
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“…Recently, the PRECISION 21 trial using a single-model approach implemented in a Bayesian dashboard for infliximab dosing showed significant clinical benefit over label dosing during maintenance therapy. Due to the acknowledged benefits of MIPD in personalized medicine, 11,26 great efforts are being made to improve components of MIPD, such as methods for the selection of models 13,27 and methods for the estimation of parameters. 28,29 In this study, we investigated alternative approaches allowing the incorporation of multiple PopPK models simultaneously for MIPD.…”
Section: Discussionmentioning
confidence: 99%
“…Recently, the PRECISION 21 trial using a single-model approach implemented in a Bayesian dashboard for infliximab dosing showed significant clinical benefit over label dosing during maintenance therapy. Due to the acknowledged benefits of MIPD in personalized medicine, 11,26 great efforts are being made to improve components of MIPD, such as methods for the selection of models 13,27 and methods for the estimation of parameters. 28,29 In this study, we investigated alternative approaches allowing the incorporation of multiple PopPK models simultaneously for MIPD.…”
Section: Discussionmentioning
confidence: 99%
“…One method of improving model predictiveness for MIPD is continuous learning, in which an initial model is used in MIPD and then refit as additional data become available [ 17 , 18 , 19 ]. Previous work has shown a 3–13% reduction in error for vancomycin models using data from only 200 patients [ 17 ], and significant improvements in target attainment for busulfan in a prospective dosing study [ 18 ].…”
Section: Introductionmentioning
confidence: 99%
“…59,[74][75][76][77] An approach that could further these CDS systems is to provide a continuous or self-learning process to automate or semiautomate model refinement as new data becomes available. 59,78,79 This type of system could extract data directly from the EHR or a database/network and could even be set up across institutions. 79 In addition, with advances in mobile and wearable biosensor technologies and devices, data could be collected in real time and provide feedback to patients and clinicians, as well as be connected to CDS systems.…”
Section: Applications To Support Ehr Systems and Data Collectionmentioning
confidence: 99%
“…59,78,79 This type of system could extract data directly from the EHR or a database/network and could even be set up across institutions. 79 In addition, with advances in mobile and wearable biosensor technologies and devices, data could be collected in real time and provide feedback to patients and clinicians, as well as be connected to CDS systems. 17,75 Figure 2 illustrates a potential EHR-integrated CDS system for MIPD.…”
Section: Applications To Support Ehr Systems and Data Collectionmentioning
confidence: 99%