Worm Generator: A System for High-Throughput in Vivo Screening.

Anqi Yang, Xiang Lin,Zijian Liu,Xin Duan, Yurou Yuan, Jiaxuan Zhang, Qilin Liang,Xianglin Ji, Nannan Sun,Huajun Yu,Weiwei He,Lili Zhu,Bingzhe Xu,Xudong Lin

Nano letters(2023)

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摘要
Large-scale screening of molecules in organisms requires high-throughput and cost-effective evaluating tools during preclinical development. Here, a novel screening strategy combining hierarchically structured biohybrid triboelectric nanogenerators (HB-TENGs) arrays with computational bioinformatics analysis for high-throughput pharmacological evaluation using is described. Unlike the traditional methods for behavioral monitoring of the animals, which are laborious and costly, HB-TENGs with micropillars are designed to efficiently convert animals' behaviors into friction deformation and result in a contact-separation motion between two triboelectric layers to generate electrical outputs. The triboelectric signals are recorded and extracted to various bioinformation for each screened compound. Moreover, the information-rich electrical readouts are successfully demonstrated to be sufficient to predict a drug's identity by multiple-Gaussian-kernels-based machine learning methods. This proposed strategy can be readily applied to various fields and is especially useful in explorations to accelerate the identification of novel therapeutics.
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关键词
Caenorhabditis elegans,drug screening,high-throughput,microfluidics,triboelectric nanogenerator
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