2 research outputs found
Electroporation-Assisted Surface-Enhanced Raman Detection for Long-Term, Label-Free, and Noninvasive Molecular Profiling of Live Single Cells
Molecule characterization of live
single cells is greatly
important
in disease diagnoses and personalized treatments. Conventional molecule
detection methods, such as mass spectrography, gene sequencing, or
immunofluorescence, are usually destructive or labeled and unable
to monitor the dynamic change of live cellular molecules. Herein,
we propose an electroporation-assisted surface-enhanced Raman scattering
(EP-SERS) method using a microchip to implement label-free, noninvasive,
and continuous detections of the molecules of live single cells. The
microchip containing microelectrodes with nanostructured EP-SERS probes
has a multifunction of cell positioning, electroporation, and SERS
detection. The EP-SERS method capably detects both the intracellular
and extracellular molecules of live single cells without losing cell
viability so as to enable long-term monitoring of the molecular pathological
process in situ. We detect the molecules of single
cells for two breast cancer cell lines with different malignancies
(MCF-7 and MDA-MB-231), one liver cancer cell line (Huh-7), and one
normal cell line (293T) using the EP-SERS method and classify these
cell types to achieve high accuracies of 91.4β98.3% using their
SERS spectra. Furthermore, 24 h continuous monitoring of the heterogeneous
molecular responses of different cancer cell lines under doxorubicin
treatment is successfully implemented using the EP-SERS method. This
work provides a long-term, label-free, and biocompatible approach
to simultaneously detect intracellular and extracellular molecules
of live single cells on a chip, which would facilitate research and
applications of cancer diagnoses and personalized treatments
Computer-Vision-Based Dielectrophoresis Mobility Tracking for Characterization of Single-Cell Biophysical Properties
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