磁流体
纳米技术
磁性纳米粒子
生物分析
材料科学
流体学
纳米颗粒
微流控
磁场
胶体
微技术
纳米机器人学
稳健性(进化)
相容性(地球化学)
磁珠
计算机科学
机器人学
纳米医学
作者
Christina C. K. Au Yeung,Ruotong Zhang,Chengzhi Zhang,Xiaoxue Fan,Yang Cao,Chi Won Song,Haisong Lin,Ho Cheung Shum
出处
期刊:Lab on a Chip
[Royal Society of Chemistry]
日期:2025-11-26
卷期号:26 (1): 154-163
摘要
Droplet robotics is an emerging area of research focused on harnessing externally programmable physical fields to drive liquid droplet motion and automate complex fluidic operations. One approach for driving droplet robotic systems utilizes magnetic attraction between droplets and magnetic actuators to enable programmable automated droplet manipulation through the introduction of magnetic components, such as nanoparticles, into the droplet. Compared to other droplet actuation mechanisms, magnetic actuation offers notable advantages including simple system design, high tolerance to liquid properties and flexible system control. However, the incorporation of magnetic ferrofluid nanoparticles introduces challenges related to their intrinsic physical colloidal stability and chemical catalytic characteristics, resulting in physicochemical incompatibility issues, restricting broader utilization in bioanalytical applications. In this work, the physicochemical incompatibilities of ferrofluid nanoparticles are investigated and resolved through surface modifications to the ferrofluid nanoparticles, enabling the development of a physicochemically compatible ferrofluid droplet robotic system. The system addresses compatibility issues including low colloidal stability and compromised chemical catalytic activity in HRP-based enzymatic assays. As a result, the enhanced actuation robustness and efficiency, as well as chemical quantification sensitivity and reliability, enable automated assays to be conducted. The enhanced physicochemical compatibility of the ferrofluid droplet robotic system facilitates the use of ferrofluid for highly efficient magnetically driven automated bioanalytical processes.
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