Journal article
Equation learning to identify nano-engineered particle-cell interactions: an interpretable machine learning approach
ST Johnston, M Faria
Nanoscale | Published : 2022
DOI: 10.1039/d2nr04668g
Abstract
Designing nano-engineered particles capable of the delivery of therapeutic and diagnostic agents to a specific target remains a significant challenge. Understanding how interactions between particles and cells are impacted by the physicochemical properties of the particle will help inform rational design choices. Mathematical and computational techniques allow for details regarding particle-cell interactions to be isolated from the interwoven set of biological, chemical, and physical phenomena involved in the particle delivery process. Here we present a machine learning framework capable of elucidating particle-cell interactions from experimental data. This framework employs a data-driven mo..
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Awarded by Australian Research Council
Funding Acknowledgements
S. T. J. is supported by the Australian Research Council (project no. DE200100988). M. F. is supported by a gift from the estate of Rejane Louise Langlois. The authors thank the anonymous referees for their helpful feedback.