Fast and precise measurements of live single-cell biophysical
properties
is significant in disease diagnosis, cytopathologic analysis, etc.
Existing methods still suffer from unsatisfied measurement accuracy
and low efficiency. We propose a computer vision method to track cell
dielectrophoretic movements on a microchip, enabling efficient and
accurate measurement of biophysical parameters of live single cells,
including cell radius, cytoplasm conductivity, and cell-specific membrane
capacitance, and in situ extraction of cell texture features. We propose
a prediction-iteration method to optimize the cell parameter measurement,
achieving high accuracy (less than 0.79% error) and high efficiency
(less than 30 s). We further propose a hierarchical classifier based
on a support vector machine and implement cell classification using
acquired cell physical parameters and texture features, achieving
high classification accuracies for identifying cell lines from different
tissues, tumor and normal cells, different tumor cells, different
leukemia cells, and tumor cells with different malignancies. The method
is label-free and biocompatible, allowing further live cell studies
on a chip, e.g., cell therapy, cell differentiation, etc