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A Predictive Mathematical Modeling Approach for the Study of Doxorubicin Treatment in Triple Negative Breast Cancer
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|作者:
Matthew T. McKenna
Jared A. Weis
Stephanie L. Barnes
Darren R. Tyson
Michael I. Miga
Vito Quaranta
Thomas E. Yankeelov
机构:
[1] Vanderbilt University Institute of Imaging Science,Department of Biomedical Engineering
[2] Vanderbilt University,Department of Biomedical Engineering
[3] The University of Texas at Austin,Department of Cancer Biology
[4] Vanderbilt University School of Medicine,Department of Radiology & Radiological Sciences
[5] Vanderbilt University School of Medicine,Department of Diagnostic Medicine, Dell Medical School
[6] The University of Texas at Austin,Institute for Computational and Engineering Sciences
[7] The University of Texas at Austin,Livestrong Cancer Institutes
[8] The University of Texas at Austin,undefined
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Doxorubicin forms the basis of chemotherapy regimens for several malignancies, including triple negative breast cancer (TNBC). Here, we present a coupled experimental/modeling approach to establish an in vitro pharmacokinetic/pharmacodynamic model to describe how the concentration and duration of doxorubicin therapy shape subsequent cell population dynamics. This work features a series of longitudinal fluorescence microscopy experiments that characterize (1) doxorubicin uptake dynamics in a panel of TNBC cell lines, and (2) cell population response to doxorubicin over 30 days. We propose a treatment response model, fully parameterized with experimental imaging data, to describe doxorubicin uptake and predict subsequent population dynamics. We found that a three compartment model can describe doxorubicin pharmacokinetics, and pharmacokinetic parameters vary significantly among the cell lines investigated. The proposed model effectively captures population dynamics and translates well to a predictive framework. In a representative cell line (SUM-149PT) treated for 12 hours with doxorubicin, the mean percent errors of the best-fit and predicted models were 14% (±10%) and 16% (±12%), which are notable considering these statistics represent errors over 30 days following treatment. More generally, this work provides both a template for studies quantitatively investigating treatment response and a scalable approach toward predictions of tumor response in vivo.
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