Issue 9, 2021

User-friendly image-activated microfluidic cell sorting technique using an optimized, fast deep learning algorithm

Abstract

Image-activated cell sorting is an essential biomedical research technique for understanding the unique characteristics of single cells. Deep learning algorithms can be used to extract hidden cell features from high-content image information to enable the discrimination of cell-to-cell differences in image-activated cell sorters. However, such systems are challenging to implement from a technical perspective due to the advanced imaging and sorting requirements and the long processing times of deep learning algorithms. Here, we introduce a user-friendly image-activated microfluidic sorting technique based on a fast deep learning model under the TensorRT framework to enable sorting decisions within 3 ms. The proposed sorter employs a significantly simplified operational procedure based on the use of a syringe connected to a piezoelectric actuator. The sorter has a 2.5 ms latency. The utility of the sorter was demonstrated through real-time sorting of fluorescent polystyrene beads and cells. The sorter achieved 98.0%, 95.1%, and 94.2% sorting purities for 15 μm and 10 μm beads, HL-60 and Jurkat cells, and HL-60 and K562 cells, respectively, with a throughput of up to 82.8 events per second (eps).

Graphical abstract: User-friendly image-activated microfluidic cell sorting technique using an optimized, fast deep learning algorithm

Supplementary files

Article information

Article type
Paper
Submitted
24 Jul 2020
Accepted
10 Mar 2021
First published
18 Mar 2021

Lab Chip, 2021,21, 1798-1810

User-friendly image-activated microfluidic cell sorting technique using an optimized, fast deep learning algorithm

K. Lee, S. Kim, J. Doh, K. Kim and W. K. Chung, Lab Chip, 2021, 21, 1798 DOI: 10.1039/D0LC00747A

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