1. Computationally guided high-throughput design of self-assembling drug nanoparticles
- Author
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Apolonia Gardner, Johanna L’Heureux, Rosanna M. Zhang, Dominique Leboeuf, Elena M. Smekalova, Jaimie Rogner, Jee Won Yang, Joy Collins, Dongsoo Yun, Ruonan Cao, Christian K. Soule, Natsuda Navamajiti, Siddartha Tamang, Keiko Ishida, Aaron Lopes, Jaime H. Cheah, Paul Chamberlain, Robert Langer, Giovanni Traverso, Kaitlyn Hess, Ameya R. Kirtane, Yulia Rybakova, Abigail K. R. Lytton-Jean, Alison Hayward, Thomas von Erlach, Daniel Reker, and Tina Esfandiary
- Subjects
Taurocholic Acid ,Drug ,Computer science ,Skin Absorption ,media_common.quotation_subject ,Biomedical Engineering ,Drug Evaluation, Preclinical ,Bioengineering ,Mice, Inbred Strains ,Nanotechnology ,02 engineering and technology ,010402 general chemistry ,01 natural sciences ,Article ,Excipients ,Machine Learning ,03 medical and health sciences ,In vivo ,Candida albicans ,Self assembling ,Animals ,Humans ,General Materials Science ,Computer Simulation ,Tissue Distribution ,Drug nanoparticles ,Electrical and Electronic Engineering ,Terbinafine ,Throughput (business) ,030304 developmental biology ,media_common ,Drug Carriers ,0303 health sciences ,Sorafenib ,Condensed Matter Physics ,Glycyrrhizic Acid ,021001 nanoscience & nanotechnology ,Xenograft Model Antitumor Assays ,Atomic and Molecular Physics, and Optics ,Dynamic Light Scattering ,0104 chemical sciences ,High-Throughput Screening Assays ,Drug Design ,Nanoparticles ,Female ,Accelerated approval ,0210 nano-technology ,Ex vivo - Abstract
Nanoformulations are transforming our capacity to effectively deliver and treat a myriad of conditions. However, many nanoformulation approaches still suffer from high production complexity and low drug loading. One potential solution relies on harnessing co-assembly of drugs and small molecular excipients to facilitate nanoparticle formation through solvent exchange without the need for chemical synthesis, generating nanoparticles with up to 95% drug loading. However, there is currently no understanding which of the millions of possible combinations of small molecules can result in the formation of these nanoparticles. Here we report the development of a high-throughput screening platform coupled to machine learning to enable the rapid evaluation of such nanoformulations. Our platform identified 101 novel self-assembling drug nanoparticles from 2.1 million pairings derived from 788 candidate drugs with one of 2686 excipients, spanning treatments for multiple diseases and often harnessing well-known food additives, vitamins, or approved drugs as carrier materials – with potential for accelerated approval and translation. Given their long-term stability and potential for clinical impact, we further characterize novel sorafenib-glycyrrhizin and terbinafine-taurocholic acid nanoparticles ex vivo and in vivo. We anticipate that this platform could accelerate the development of safer and more efficacious nanoformulations with high drug loadings for a wide range of therapeutics.
- Published
- 2019
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