In silico optimization of cancer therapies with multiple types of nanoparticles applied at different times

Comput Methods Programs Biomed. 2021 Mar:200:105886. doi: 10.1016/j.cmpb.2020.105886. Epub 2020 Dec 1.

Abstract

Background and objective: Cancer tumors constitute a complicated environment for conventional anti-cancer treatments to confront, so solutions with higher complexity and, thus, robustness to diverse conditions are required. Alternations in the tumor composition have been documented, as a result of a conventional treatment, making an ensemble of cells drug resistant. Consequently, a possible answer to this problem could be the delivery of the pharmaceutic compound with the assistance of nano-particles (NPs) that modify the delivery characteristics and biodistribution of the therapy. Nonetheless, to tackle the dynamic response of the tumor, a variety of application times of different types of NPs could be a way forward.

Methods: The in silico optimization was investigated here, in terms of the design parameters of multiple NPs and their application times. The optimization methodology used an open-source simulator to provide the fitness of each possible treatment. Because the number of different NPs that will achieve the best performance is not known a priori, the evolutionary algorithm utilizes a variable length genome approach, namely a metameric representation and accordingly modified operators.

Results: The results highlight the fact that different application times have a significant effect on the robustness of a treatment. Whereas, applying all NPs at earlier time slots and without the ordered sequence unveiled by the optimization process, proved to be less effective.

Conclusions: The design and development of a dynamic tool that will navigate through the large search space of possible combinations can provide efficient solutions that prove to be beyond human intuition.

Keywords: Cancer treatment; Metameric representation; Nano-particles; Optimization; PhysiCell.

MeSH terms

  • Computer Simulation
  • Humans
  • Nanoparticles*
  • Neoplasms* / drug therapy
  • Tissue Distribution