2020
DOI: 10.1002/cpt.1987
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Quantitative Systems Pharmacology Approaches for Immuno‐Oncology: Adding Virtual Patients to the Development Paradigm

Abstract: Drug development in oncology commonly exploits the tools of molecular biology to gain therapeutic benefit through reprograming of cellular responses. In immuno‐oncology (IO) the aim is to direct the patient’s own immune system to fight cancer. After remarkable successes of antibodies targeting PD1/PD‐L1 and CTLA4 receptors in targeted patient populations, the focus of further development has shifted toward combination therapies. However, the current drug‐development approach of exploiting a vast number of poss… Show more

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Cited by 56 publications
(55 citation statements)
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References 75 publications
(160 reference statements)
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“…Notably, there are a number of methods for the virtual patient generation with different algorithms to address potential biases. [21][22][23][24][25] Here, we use the methods that are similar to the recently published studies. 53 54 The optimal techniques for virtual patient generation based on the availability of clinical data is an active area of research that is undergoing rapid development.…”
Section: Open Accessmentioning
confidence: 99%
See 1 more Smart Citation
“…Notably, there are a number of methods for the virtual patient generation with different algorithms to address potential biases. [21][22][23][24][25] Here, we use the methods that are similar to the recently published studies. 53 54 The optimal techniques for virtual patient generation based on the availability of clinical data is an active area of research that is undergoing rapid development.…”
Section: Open Accessmentioning
confidence: 99%
“…While there exist various methodologies in the virtual patient generation, the optimization of these algorithms is under active investigation. [21][22][23][24][25] In this study, we aim to determine the relationship between our QSP platform and the virtual cohort with the patient cohort and results of the clinical trial. We discuss the limitations related to our choice of methodology, which need to be taken into account while interpreting the present numerical results and comparisons.…”
mentioning
confidence: 99%
“…A key component in target validation is building of confidence in the therapeutic hypothesis using quantitative systems pharmacology (QSP) models. Such mechanistic models integrate information on drug pharmacokinetics (PK), target binding, and biological processes of interest and mechanisms of action, resulting from prior knowledge and available preclinical and clinical data, to quantitatively predict efficacy and safety responses over time and translate molecular data to clinical outcomes (24). QSP provides an ideal quantitative framework for integration of diverse big data sources, including omics (i.e., genomics, transcriptomics, proteomics, and metabolomics) and imaging, the dimensionality of which can be reduced by using ML methods.…”
Section: Targetmentioning
confidence: 99%
“…Additionally, inter-patient variability requires consideration in clinical response prediction [ 147 ]. To address these challenges, virtual patients (VPs) were generated to conduct virtual clinical trials [ 148 , 149 ]. VPs are typically defined by an array of pathophysiological parameters, such as gender, age, weight, genotype, phenotype, and biomarkers [ 150 , 151 ].…”
Section: Model Informed In Vitro To In Vivo Translationmentioning
confidence: 99%