David A. Hormuth, II

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

Optimal Control Theory for Personalized Therapeutic Regimens in Oncology: Background, History, Challenges, and Opportunities


Journal article


Angela M. Jarrett, D. Faghihi, D. Hormuth, E. Lima, J. Virostko, G. Biros, D. Patt, T. Yankeelov
Journal of Clinical Medicine, 2020

Semantic Scholar DOI PubMedCentral PubMed
Cite

Cite

APA   Click to copy
Jarrett, A. M., Faghihi, D., Hormuth, D., Lima, E., Virostko, J., Biros, G., … Yankeelov, T. (2020). Optimal Control Theory for Personalized Therapeutic Regimens in Oncology: Background, History, Challenges, and Opportunities. Journal of Clinical Medicine.


Chicago/Turabian   Click to copy
Jarrett, Angela M., D. Faghihi, D. Hormuth, E. Lima, J. Virostko, G. Biros, D. Patt, and T. Yankeelov. “Optimal Control Theory for Personalized Therapeutic Regimens in Oncology: Background, History, Challenges, and Opportunities.” Journal of Clinical Medicine (2020).


MLA   Click to copy
Jarrett, Angela M., et al. “Optimal Control Theory for Personalized Therapeutic Regimens in Oncology: Background, History, Challenges, and Opportunities.” Journal of Clinical Medicine, 2020.


BibTeX   Click to copy

@article{angela2020a,
  title = {Optimal Control Theory for Personalized Therapeutic Regimens in Oncology: Background, History, Challenges, and Opportunities},
  year = {2020},
  journal = {Journal of Clinical Medicine},
  author = {Jarrett, Angela M. and Faghihi, D. and Hormuth, D. and Lima, E. and Virostko, J. and Biros, G. and Patt, D. and Yankeelov, T.}
}

Abstract

Optimal control theory is branch of mathematics that aims to optimize a solution to a dynamical system. While the concept of using optimal control theory to improve treatment regimens in oncology is not novel, many of the early applications of this mathematical technique were not designed to work with routinely available data or produce results that can eventually be translated to the clinical setting. The purpose of this review is to discuss clinically relevant considerations for formulating and solving optimal control problems for treating cancer patients. Our review focuses on two of the most widely used cancer treatments, radiation therapy and systemic therapy, as they naturally lend themselves to optimal control theory as a means to personalize therapeutic plans in a rigorous fashion. To provide context for optimal control theory to address either of these two modalities, we first discuss the major limitations and difficulties oncologists face when considering alternate regimens for their patients. We then provide a brief introduction to optimal control theory before formulating the optimal control problem in the context of radiation and systemic therapy. We also summarize examples from the literature that illustrate these concepts. Finally, we present both challenges and opportunities for dramatically improving patient outcomes via the integration of clinically relevant, patient-specific, mathematical models and optimal control theory.


Share



Follow this website


You need to create an Owlstown account to follow this website.


Sign up

Already an Owlstown member?

Log in