Zhidian Diao, Lingyan Kan, Yilong Zhao, Huaibo Yang, Jingyun Song, Chen Wang, Yang Liu, Fengli Zhang, Teng Xu, Rongze Chen, Yuetong Ji, Xixian Wang, Xiaoyan Jing, Jian Xu, Yuandong Li, Bo Ma
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引用次数: 0
摘要
直接从原位样本中对单个细胞进行识别、分拣和测序,对于深入分析微生物组的结构和功能具有巨大潜力。在这项工作中,我们基于人工智能(AI)辅助的用于细胞表型筛选的目标检测模型和用于单细胞导出的跨界面接触方法,开发了一种名为 EasySort AUTO 的基于索引的自动系统,该系统可对单个微生物细胞进行分拣,然后将其打包到微滴中,并以精确索引的 "一细胞一试管 "方式自动导出。目标细胞根据人工智能辅助物体检测模型自动识别,然后通过光学镊子移动进行分拣。然后,我们开发的一种跨界面接触式微流控打印方法可以自动将细胞从芯片转移到试管中,从而与后续的单细胞培养或测序结合起来。该系统的单细胞打印效率大于 93%。单细胞打印系统的吞吐量约为 120 个细胞/小时。此外,大于 80% 的酵母和大肠杆菌单细胞都可以培养,这表明在分拣过程中细胞活力得到了很好的保持。最后,人工智能辅助目标检测支持从混合酵母样品中高精度地自动分拣目标细胞,这一点已通过下游单细胞增殖测定得到验证。EasySort AUTO 的自动化、指数维持和活力保持功能表明,它在单细胞分拣方面具有出色的应用潜力。
Artificial intelligence-assisted automatic and index-based microbial single-cell sorting system for One-Cell-One-Tube.
Identification, sorting, and sequencing of individual cells directly from in situ samples have great potential for in-depth analysis of the structure and function of microbiomes. In this work, based on an artificial intelligence (AI)-assisted object detection model for cell phenotype screening and a cross-interface contact method for single-cell exporting, we developed an automatic and index-based system called EasySort AUTO, where individual microbial cells are sorted and then packaged in a microdroplet and automatically exported in a precisely indexed, "One-Cell-One-Tube" manner. The target cell is automatically identified based on an AI-assisted object detection model and then mobilized via an optical tweezer for sorting. Then, a cross-interface contact microfluidic printing method that we developed enables the automated transfer of cells from the chip to the tube, which leads to coupling with subsequent single-cell culture or sequencing. The efficiency of the system for single-cell printing is >93%. The throughput of the system for single-cell printing is ~120 cells/h. Moreover, >80% of single cells of both yeast and Escherichia coli are culturable, suggesting the superior preservation of cell viability during sorting. Finally, AI-assisted object detection supports automated sorting of target cells with high accuracy from mixed yeast samples, which was validated by downstream single-cell proliferation assays. The automation, index maintenance, and vitality preservation of EasySort AUTO suggest its excellent application potential for single-cell sorting.