David A. Hormuth, II

Research Scientist | Biomedical Engineering + Imaging Science > > Computational Oncology

A mathematical model for predicting the spatiotemporal response of breast cancer cells treated with doxorubicin


Journal article


Hugo J M Miniere, Ernesto A. B. F. Lima, G. Lorenzo, D. Hormuth, Sophia Ty, A. Brock, T. Yankeelov
Cancer Biology & Therapy, 2024

Semantic Scholar DOI PubMedCentral PubMed
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APA   Click to copy
Miniere, H. J. M., Lima, E. A. B. F., Lorenzo, G., Hormuth, D., Ty, S., Brock, A., & Yankeelov, T. (2024). A mathematical model for predicting the spatiotemporal response of breast cancer cells treated with doxorubicin. Cancer Biology &Amp; Therapy.


Chicago/Turabian   Click to copy
Miniere, Hugo J M, Ernesto A. B. F. Lima, G. Lorenzo, D. Hormuth, Sophia Ty, A. Brock, and T. Yankeelov. “A Mathematical Model for Predicting the Spatiotemporal Response of Breast Cancer Cells Treated with Doxorubicin.” Cancer Biology & Therapy (2024).


MLA   Click to copy
Miniere, Hugo J. M., et al. “A Mathematical Model for Predicting the Spatiotemporal Response of Breast Cancer Cells Treated with Doxorubicin.” Cancer Biology &Amp; Therapy, 2024.


BibTeX   Click to copy

@article{hugo2024a,
  title = {A mathematical model for predicting the spatiotemporal response of breast cancer cells treated with doxorubicin},
  year = {2024},
  journal = {Cancer Biology & Therapy},
  author = {Miniere, Hugo J M and Lima, Ernesto A. B. F. and Lorenzo, G. and Hormuth, D. and Ty, Sophia and Brock, A. and Yankeelov, T.}
}

Abstract

ABSTRACT Tumor heterogeneity contributes significantly to chemoresistance, a leading cause of treatment failure. To better personalize therapies, it is essential to develop tools capable of identifying and predicting intra- and inter-tumor heterogeneities. Biology-inspired mathematical models are capable of attacking this problem, but tumor heterogeneity is often overlooked in in-vivo modeling studies, while phenotypic considerations capturing spatial dynamics are not typically included in in-vitro modeling studies. We present a data assimilation-prediction pipeline with a two-phenotype model that includes a spatiotemporal component to characterize and predict the evolution of in-vitro breast cancer cells and their heterogeneous response to chemotherapy. Our model assumes that the cells can be divided into two subpopulations: surviving cells unaffected by the treatment, and irreversibly damaged cells undergoing treatment-induced death. MCF7 breast cancer cells were previously cultivated in wells for up to 1000 hours, treated with various concentrations of doxorubicin and imaged with time-resolved microscopy to record spatiotemporally-resolved cell count data. Images were used to generate cell density maps. Treatment response predictions were initialized by a training set and updated by weekly measurements. Our mathematical model successfully calibrated the spatiotemporal cell growth dynamics, achieving median [range] concordance correlation coefficients of > .99 [.88, >.99] and .73 [.58, .85] across the whole well and individual pixels, respectively. Our proposed data assimilation-prediction approach achieved values of .97 [.44, >.99] and .69 [.35, .79] for the whole well and individual pixels, respectively. Thus, our model can capture and predict the spatiotemporal dynamics of MCF7 cells treated with doxorubicin in an in-vitro setting.


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