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Prediction of treatment efficacy for prostate cancer using a mathematical model
Author(s) -
Huiming Peng,
Weiling Zhao,
Hua Tan,
Zhiwei Ji,
Jingsong Li,
King C. Li,
Xiaobo Zhou
Publication year - 2016
Publication title -
scientific reports
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.24
H-Index - 213
ISSN - 2045-2322
DOI - 10.1038/srep21599
Subject(s) - prostate cancer , immunotherapy , immune system , androgen deprivation therapy , medicine , prostate , vaccination , tumor microenvironment , oncology , mechanism (biology) , cancer , immunology , cancer research , bioinformatics , biology , epistemology , philosophy
Prostate immune system plays a critical role in the regulation of prostate cancer development regarding androgen-deprivation therapy (ADT) and/or immunotherapy (vaccination). In this study, we developed a mathematical model to explore the interactions between prostate tumor and immune microenvironment. This model was used to predict treatment outcomes for prostate cancer with ADT, vaccination, Treg depletion and/or IL-2 neutralization. Animal data were used to guide construction, parameter selection, and validation of our model. Our analysis shows that Treg depletion and/or IL-2 neutralization can effectively improve the treatment efficacy of combined therapy with ADT and vaccination. Treg depletion has a higher synergetic effect than that from IL-2 neutralization. This study highlights a potential therapeutic strategy in effectively managing prostate tumor growth and provides a framework of systems biology approach in studying tumor-related immune mechanism and consequent selection of therapeutic regimens.

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