Katunin Pavel, Zhou Jianbo, Shehata Ola M, Peden Andrew A, Cadby Ashley, Nikolaev Anton
Fresco Labs, London, United Kingdom.
Information Technologies and Programming Faculty, ITMO University, St. Petersburg, Russia.
Front Cell Dev Biol. 2021 Sep 24;9:697584. doi: 10.3389/fcell.2021.697584. eCollection 2021.
Modern data analysis methods, such as optimization algorithms or deep learning have been successfully applied to a number of biotechnological and medical questions. For these methods to be efficient, a large number of high-quality and reproducible experiments needs to be conducted, requiring a high degree of automation. Here, we present an open-source hardware and low-cost framework that allows for automatic high-throughput generation of large amounts of cell biology data. Our design consists of an epifluorescent microscope with automated XY stage for moving a multiwell plate containing cells and a perfusion manifold allowing programmed application of up to eight different solutions. Our system is very flexible and can be adapted easily for individual experimental needs. To demonstrate the utility of the system, we have used it to perform high-throughput Ca imaging and large-scale fluorescent labeling experiments.
现代数据分析方法,如优化算法或深度学习,已成功应用于许多生物技术和医学问题。为使这些方法高效,需要进行大量高质量且可重复的实验,这就要求高度自动化。在此,我们展示了一个开源硬件和低成本框架,它能够自动高通量生成大量细胞生物学数据。我们的设计包括一台带有自动XY载物台的落射荧光显微镜,用于移动装有细胞的多孔板,以及一个灌注歧管,可实现多达八种不同溶液的程序化施加。我们的系统非常灵活,能够轻松适应个体实验需求。为证明该系统的实用性,我们已用它来进行高通量钙成像和大规模荧光标记实验。