Literature DB >> 22422938

Reconsidering the paradigm of cancer immunotherapy by computationally aided real-time personalization.

Yuri Kogan1, Karin Halevi-Tobias, Moran Elishmereni, Stanimir Vuk-Pavlović, Zvia Agur.   

Abstract

Although therapeutic vaccination often induces markers of tumor-specific immunity, therapeutic responses remain rare. An improved understanding of patient-specific dynamic interactions of immunity and tumor progression, combined with personalized application of immune therapeutics would increase the efficacy of immunotherapy. Here, we developed a method to predict and enhance the individual response to immunotherapy by using personalized mathematical models, constructed in the early phase of treatment. Our approach includes an iterative real-time in-treatment evaluation of patient-specific parameters from the accruing clinical data, construction of personalized models and their validation, model-based simulation of subsequent response to ongoing therapy, and suggestion of potentially more effective patient-specific modified treatment. Using a mathematical model of prostate cancer immunotherapy, we applied our model to data obtained in a clinical investigation of an allogeneic whole-cell therapeutic prostate cancer vaccine. Personalized models for the patients who responded to treatment were derived and validated by data collected before treatment and during its early phase. Simulations, based on personalized models, suggested that an increase in vaccine dose and administration frequency would stabilize the disease in most patients. Together, our findings suggest that application of our method could facilitate development of a new paradigm for studies of in-treatment personalization of the immune agent administration regimens (P-trials), with treatment modifications restricted to an approved range, resulting in more efficacious immunotherapies. ©2012 AACR

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Year:  2012        PMID: 22422938     DOI: 10.1158/0008-5472.CAN-11-4166

Source DB:  PubMed          Journal:  Cancer Res        ISSN: 0008-5472            Impact factor:   12.701


  21 in total

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2.  Establishing the Quantitative Relationship Between Lanreotide Autogel®, Chromogranin A, and Progression-Free Survival in Patients with Nonfunctioning Gastroenteropancreatic Neuroendocrine Tumors.

Authors:  Núria Buil-Bruna; Marion Dehez; Amandine Manon; Thi Xuan Quyen Nguyen; Iñaki F Trocóniz
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3.  Mathematical model approach to describe tumour response in mice after vaccine administration and its applicability to immune-stimulatory cytokine-based strategies.

Authors:  Zinnia P Parra-Guillen; Pedro Berraondo; Emmanuel Grenier; Benjamin Ribba; Iñaki F Troconiz
Journal:  AAPS J       Date:  2013-04-19       Impact factor: 4.009

4.  Bone marrow minimal residual disease was an early response marker and a consistent independent predictor of survival after anti-GD2 immunotherapy.

Authors:  Nai-Kong V Cheung; Irina Ostrovnaya; Deborah Kuk; Irene Y Cheung
Journal:  J Clin Oncol       Date:  2015-01-05       Impact factor: 44.544

5.  From Fitting the Average to Fitting the Individual: A Cautionary Tale for Mathematical Modelers.

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6.  A population pharmacodynamic model for lactate dehydrogenase and neuron specific enolase to predict tumor progression in small cell lung cancer patients.

Authors:  Núria Buil-Bruna; José-María López-Picazo; Marta Moreno-Jiménez; Salvador Martín-Algarra; Benjamin Ribba; Iñaki F Trocóniz
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Review 7.  Optimizing the future: how mathematical models inform treatment schedules for cancer.

Authors:  Deepti Mathur; Ethan Barnett; Howard I Scher; Joao B Xavier
Journal:  Trends Cancer       Date:  2022-03-09

8.  Personalizing immunotherapy: Balancing predictability and precision.

Authors:  Zvia Agur; Stanimir Vuk-Pavlović
Journal:  Oncoimmunology       Date:  2012-10-01       Impact factor: 8.110

Review 9.  Cancer vaccines: state of the art of the computational modeling approaches.

Authors:  Francesco Pappalardo; Ferdinando Chiacchio; Santo Motta
Journal:  Biomed Res Int       Date:  2012-12-23       Impact factor: 3.411

Review 10.  From computational modelling of the intrinsic apoptosis pathway to a systems-based analysis of chemotherapy resistance: achievements, perspectives and challenges in systems medicine.

Authors:  M L Würstle; E Zink; J H M Prehn; M Rehm
Journal:  Cell Death Dis       Date:  2014-05-29       Impact factor: 8.469

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