French National Center for Scientific Research, Bordeaux, CRPP, UPR 8641, Pessac, 33600, France.
Biomedical Research Institute, National Institute of Advanced Industrial Science and Technology, Tsukuba 305-8565, Ibaraki, Japan.
Sci Rep. 2017 Jan 6;7:40072. doi: 10.1038/srep40072.
A microfluidic on-chip imaging cell sorter has several advantages over conventional cell sorting methods, especially to identify cells with complex morphologies such as clusters. One of the remaining problems is how to efficiently discriminate targets at the species level without labelling. Hence, we developed a label-free microfluidic droplet-sorting system based on image recognition of cells in droplets. To test the applicability of this method, a mixture of two plankton species with different morphologies (Dunaliella tertiolecta and Phaeodactylum tricornutum) were successfully identified and discriminated at a rate of 10 Hz. We also examined the ability to detect the number of objects encapsulated in a droplet. Single cell droplets sorted into collection channels showed 91 ± 4.5% and 90 ± 3.8% accuracy for D. tertiolecta and P. tricornutum, respectively. Because we used image recognition to confirm single cell droplets, we achieved highly accurate single cell sorting. The results indicate that the integrated method of droplet imaging cell sorting can provide a complementary sorting approach capable of isolating single target cells from a mixture of cells with high accuracy without any staining.
一种微流控芯片成像细胞分选器相对于传统的细胞分选方法具有多个优势,特别是对于识别具有复杂形态的细胞,如细胞簇。目前仍存在一个问题,即如何在不进行标记的情况下有效地在物种水平上区分目标物。因此,我们开发了一种基于微流控液滴中细胞图像识别的无标记微流控液滴分选系统。为了测试该方法的适用性,我们成功地以 10 Hz 的速度识别和区分了两种形态不同的浮游生物(杜氏盐藻和三角褐指藻)的混合物。我们还检验了检测液滴中包裹的物体数量的能力。分选到收集通道的单细胞液滴对杜氏盐藻和三角褐指藻的准确率分别为 91±4.5%和 90±3.8%。因为我们使用图像识别来确认单细胞液滴,所以实现了高度准确的单细胞分选。结果表明,液滴成像细胞分选的集成方法可以提供一种互补的分选方法,能够在不进行任何染色的情况下从细胞混合物中以高精度分离单个目标细胞。