Upgraded User-Friendly Image-Activated Microfluidic Cell Sorter Using an Optimized and Fast Deep Learning Algorithm.
Keondo LeeSeong-Eun KimSeokho NamJunsang DohWan Kyun ChungPublished in: Micromachines (2022)
Image-based cell sorting is essential in biological and biomedical research. The sorted cells can be used for downstream analysis to expand our knowledge of cell-to-cell differences. We previously demonstrated a user-friendly image-activated microfluidic cell sorting technique using an optimized and fast deep learning algorithm. Real-time isolation of cells was carried out using this technique with an inverted microscope. In this study, we devised a recently upgraded sorting system. The cell sorting techniques shown on the microscope were implemented as a real system. Several new features were added to make it easier for the users to conduct the real-time sorting of cells or particles. The newly added features are as follows: (1) a high-resolution linear piezo-stage is used to obtain in-focus images of the fast-flowing cells; (2) an LED strobe light was incorporated to minimize the motion blur of fast-flowing cells; and (3) a vertical syringe pump setup was used to prevent the cell sedimentation. The sorting performance of the upgraded system was demonstrated through the real-time sorting of fluorescent polystyrene beads. The sorter achieved a 99.4% sorting purity for 15 μm and 10 μm beads with an average throughput of 22.1 events per second (eps).
Keyphrases
- deep learning
- single cell
- induced apoptosis
- cell therapy
- cell cycle arrest
- high resolution
- machine learning
- healthcare
- stem cells
- artificial intelligence
- cell death
- convolutional neural network
- signaling pathway
- high throughput
- cell proliferation
- optical coherence tomography
- quantum dots
- low cost
- liquid chromatography
- data analysis
- neural network