Journal
NPJ COMPUTATIONAL MATERIALS
Volume 7, Issue 1, Pages -Publisher
NATURE PORTFOLIO
DOI: 10.1038/s41524-021-00614-5
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Funding
- European Union [800983]
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The EVONANO platform aims to evolve nanomedicines for anti-cancer treatments by simulating tumor growth and using machine learning to optimize nanoparticle designs. It demonstrates how in silico models combined with machine learning can efficiently optimize nanomedicine for cancer treatment.
We present the EVONANO platform for the evolution of nanomedicines with application to anti-cancer treatments. Our work aims to decrease both the time and cost required to develop nanoparticle designs. EVONANO includes a simulator to grow tumours, extract representative scenarios, and simulate nanoparticle transport through these scenarios in order to predict nanoparticle distribution. The nanoparticle designs are optimised using machine learning to efficiently find the most effective anti-cancer treatments. We demonstrate EVONANO with two examples optimising the properties of nanoparticles and treatment to selectively kill cancer cells over a range of tumour environments. Our platform shows how in silico models that capture both tumour and tissue-scale dynamics can be combined with machine learning to optimise nanomedicine.
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