Literature DB >> 34849522

Neural network-enhanced real-time impedance flow cytometry for single-cell intrinsic characterization.

Yongxiang Feng1, Zhen Cheng2, Huichao Chai1, Weihua He1, Liang Huang3, Wenhui Wang1.   

Abstract

Single-cell impedance flow cytometry (IFC) is emerging as a label-free and non-invasive method for characterizing the electrical properties and revealing sample heterogeneity. At present, most IFC studies utilize phenomenological parameters (e.g., impedance amplitude, phase and opacity) to characterize single cells instead of intrinsic biophysical metrics (e.g., radius r, cytoplasm conductivity σi and specific membrane capacitance Csm). Intrinsic parameters are normally calculated off-line by time-consuming model-fitting methods. Here, we propose to employ neural network (NN)-enhanced IFC to achieve both real-time single-cell intrinsic characterization and intrinsic parameter-based cell classification at high throughput. Three intrinsic parameters (r, σi and Csm) can be obtained online and in real-time via a trained NN at 0.3 ms per single-cell event, achieving significant improvement in calculation speed. Experiments involving four cancer cells and one lymphocyte cell demonstrated 91.5% classification accuracy in the cell type for a test group of 9751 cell samples. By performing a viability assay, we provide evidence that the IFC test per se would not substantially affect the cell property. We envision that the NN-enhanced real-time IFC will provide a new platform for high-throughput, real-time and online cell intrinsic electrical characterization.

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Year:  2022        PMID: 34849522     DOI: 10.1039/d1lc00755f

Source DB:  PubMed          Journal:  Lab Chip        ISSN: 1473-0189            Impact factor:   6.799


  1 in total

1.  Automated biophysical classification of apoptotic pancreatic cancer cell subpopulations by using machine learning approaches with impedance cytometry.

Authors:  Carlos Honrado; Armita Salahi; Sara J Adair; John H Moore; Todd W Bauer; Nathan S Swami
Journal:  Lab Chip       Date:  2022-09-27       Impact factor: 7.517

  1 in total

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