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Artificial intelligence application for rapid fabrication of size-tunable PLGA microparticles in microfluidics. | LitMetric

AI Article Synopsis

  • Researchers combined artificial intelligence (AI) with microfluidics to create synthetic polymeric particles, focusing on size uniformity for stability.
  • The study centered on predicting the size of poly(D,L-lactide-co-glycolide) (PLGA) microparticles using machine learning, examining factors like PLGA concentration and flow rates.
  • Developed multiple artificial neural network (ANN) models facilitated quick size predictions for particles from various microfluidic systems, paving the way for efficient production in fields like biomedicine and pharmaceuticals.

Article Abstract

In this study, synthetic polymeric particles were effectively fabricated by combining modern technologies of artificial intelligence (AI) and microfluidics. Because size uniformity is a key factor that significantly influences the stability of polymeric particles, therefore, this work aimed to establish a new AI application using machine learning technology for prediction of the size of poly(D,L-lactide-co-glycolide) (PLGA) microparticles produced by diverse microfluidic systems either in the form of single or multiple particles. Experimentally, the most effective factors for tuning droplet/particle sizes are PLGA concentrations and the flow rates of dispersed and aqueous phases in microfluidics. These factors were utilized to develop five different and simple in structure artificial neural network (ANN) models that are capable of predicting PLGA particle sizes produced by different microfluidic systems either individually or jointly merged. The systematic development of ANN models allowed ultimate construction of a single in silico model which consists of data for three different microfluidic systems. This ANN model eventually allowed rapid prediction of particle sizes produced using various microfluidic systems. This AI application offers a new platform for further rapid and economical exploration of polymer particles production in defined sizes for various applications including biomimetic studies, biomedicine, and pharmaceutics.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7658240PMC
http://dx.doi.org/10.1038/s41598-020-76477-5DOI Listing

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