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Exploration of the Nanomedicine-Design Space with High-throughput Screening and Machine Learning*

Authors :
Albert Y. Xue
Eric J. Berns
Chad A. Mirkin
Andrew Lee
Milan Mrksich
Neda Bagheri
Gokay Yamankurt
Source :
Spherical Nucleic Acids ISBN: 9781003056713, Spherical Nucleic Acids ISBN: 9780429200151
Publication Year :
2020
Publisher :
Jenny Stanford Publishing, 2020.

Abstract

Only a tiny fraction of the nanomedicine-design space has been explored, owing to the structural complexity of nanomedicines and the lack of relevant high-throughput synthesis and analysis methods. Here, we report a methodology for determining structure–activity relationships and design rules for spherical nucleic acids (SNAs) functioning as cancer-vaccine candidates. First, we identified ~1,000 candidate SNAs on the basis of reasonable ranges for 11 design parameters that can be systematically and independently varied to optimize SNA performance. Second, we developed a high-throughput method for making SNAs at the picomolar scale in a 384-well format, and used a mass spectrometry assay to rapidly measure SNA immune activation. Third, we used machine learning to quantitatively model SNA immune activation and identify the minimum number of SNAs needed to capture optimum structure–activity relationships for a given SNA library. Our methodology is general, can reduce the number of nanoparticles that need to be tested by an order of magnitude, and could serve as a screening tool for the development of nanoparticle therapeutics.

Details

ISBN :
978-1-00-305671-3
978-0-429-20015-1
ISBNs :
9781003056713 and 9780429200151
Database :
OpenAIRE
Journal :
Spherical Nucleic Acids ISBN: 9781003056713, Spherical Nucleic Acids ISBN: 9780429200151
Accession number :
edsair.doi.dedup.....4d1af144e955dda34223e643f406809f
Full Text :
https://doi.org/10.1201/9781003056713-21