Comprehensive Screening of Conditions for Block Copolymer Nanoaggregate Formation via Automated DLS
Lakshani J. Weerarathna, Oliver Weismantel, Tanja Junkers
- 发表年份
- 2025
- 引用次数
- 1
摘要
A fully automated robotic synthesizer for the screening of amphiphilic block copolymer (BCP) nanoparticle synthesis is presented. To reach this aim, BCP solutions are mixed in continuous flow with water, allowing for the automated variation of overall polymer concentration, mixing ratio of the water and organic solvent phase, and the overall flow rate of the system. Particle sizes are monitored online via a commercial dynamic light scattering instrument, and the obtained data are automatically analyzed. While the machine generally allows us to produce particles with a 10% standard deviation, the control software performs automatic outlier detection based on measurement of data in triplicates and repeats experiments until a statistically robust result is obtained. The synthesis platform was tested on 5 individual block copolymers, namely, poly(ethyl methacrylate)-block-poly(2-(dimethylamino)ethyl acrylate) (PEMA75-b-PDMAEA50), polystyrene-block-poly(2-(dimethylamino)ethyl acrylate) (PS50-b-PDMAEA25), polystyrene-block-poly(poly(ethylene glycol) methyl ether acrylate) (PS40-b-PPEGMEA35, PS90-b-PPEGMEA23), and polystyrene-block-poly(2-hydroxy ethyl acrylate) (PS90-b-PHEA14), which were obtained from reversible addition-fragmentation chain transfer polymerization. The screening revealed complex interdependencies of the synthesis parameters on the obtainable particle sizes. Generally, smaller particles were obtained at high water contents, high flow rates, and low polymer concentrations.
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