2019
DOI: 10.1371/journal.pone.0226869
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Personal response to immune checkpoint inhibitors of patients with advanced melanoma explained by a computational model of cellular immunity, tumor growth, and drug

Abstract: Immune checkpoint inhibitors, such as pembrolizumab, are transforming clinical oncology. Yet, insufficient overall response rate, and accelerated tumor growth rate in some patients, highlight the need for identifying potential responders. To construct a computational model, identifying response predictors, and enabling immunotherapy personalization. The combined dynamics of cellular immunity, pembrolizumab, and the melanoma cancer were modeled by a set of ordinary differential equations. The model relies on a … Show more

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Cited by 13 publications
(10 citation statements)
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“…The inter-patient variation in the values of the T cell toxicity parameter explains the rich variation in response, including a pattern roughly resembling HPD. Virtual clinical trials (see above) in the Perlstein and colleagues' model 77 successfully retrieve real-life clinical trial results, showing that the ratio of reinvigoration rate to baseline tumor load can serve to cluster patients according to the predicted quality of their response. 79 Such endeavors demonstrate how multiple personal model parameters, which are impossible to estimate in the REVIEW clinical setting, can be combined into one quantifiable measure helping to classify responsive/nonresponsive patients.…”
Section: Milestone S2: Experimentally Supported Mathematical Models Fmentioning
confidence: 99%
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“…The inter-patient variation in the values of the T cell toxicity parameter explains the rich variation in response, including a pattern roughly resembling HPD. Virtual clinical trials (see above) in the Perlstein and colleagues' model 77 successfully retrieve real-life clinical trial results, showing that the ratio of reinvigoration rate to baseline tumor load can serve to cluster patients according to the predicted quality of their response. 79 Such endeavors demonstrate how multiple personal model parameters, which are impossible to estimate in the REVIEW clinical setting, can be combined into one quantifiable measure helping to classify responsive/nonresponsive patients.…”
Section: Milestone S2: Experimentally Supported Mathematical Models Fmentioning
confidence: 99%
“…from different organization levels in one framework, facilitating the personalization process in a scale-insensitive way, to ultimately determine personal drug-disease-host dynamics and predict personal responses to ICBs. The understanding, emerging from the analysis of the mathematical models, that relatively small changes in personal parameters can significantly affect a patient's response, as suggested, for example, for T cell functionality, 77 forces one to revisit the basics of drug development. The "one-size-fits-all" paradigm is still the central pillar in drug development, in which the performance of an investigational new drug is evaluated by the response of hundreds, or even thousands, of patients to one specific treatment protocol.…”
Section: Future Directionsmentioning
confidence: 99%
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“…Based on a system of three ordinary differential equations to describe the interaction between tumor cells, Treg cells, and cytotoxic T cells, this model could explain why, in response to ICBs, the tumor can worsen before starting regressing. Other multi-cellular models have been used to derive in silico patients to test different possible dynamics of treatment response ( 111 , 112 ), that could be compared with longitudinal measurements of tumor load from PET/CT imaging ( 112 ). Longitudinal data are often limited to non-invasive imaging and, in a few cases, to transcriptomics, IHC, TCR, and genome sequencing data ( 113 , 114 ) for a limited number of time points due to invasiveness of biopsies.…”
Section: The Potential Of Looking At the Dynamicity And Plasticity Ofmentioning
confidence: 99%
“…This enables in silico simulations of the system's behavior under different administration schedules of the drug(s), hence predicting the patient response to each application regimen. Models of this kind have proven useful for this purpose in a wide range of medical fields, including cancer immunotherapy by ICBs ( 29 , 30 ). In sepsis, previous mathematical modeling has focused mainly on the shift of equilibrium between the pro- and anti-inflammatory signaling cascades, not considering the immunosuppressive arm ( 31 , 32 ).…”
Section: Introductionmentioning
confidence: 99%