Label-Free Differentiation of Cancer and Non-Cancer Cells Based on Machine-Learning-Algorithm-Assisted Fast Raman Imaging.
Qing HeWen YangWeiquan LuoStefan WilhelmBinbin WengPublished in: Biosensors (2022)
This paper proposes a rapid, label-free, and non-invasive approach for identifying murine cancer cells (B16F10 melanoma cancer cells) from non-cancer cells (C2C12 muscle cells) using machine-learning-assisted Raman spectroscopic imaging. Through quick Raman spectroscopic imaging, a hyperspectral data processing approach based on machine learning methods proved capable of presenting the cell structure and distinguishing cancer cells from non-cancer muscle cells without compromising full-spectrum information. This study discovered that biomolecular information-nucleic acids, proteins, and lipids-from cells could be retrieved efficiently from low-quality hyperspectral Raman datasets and then employed for cell line differentiation.
Keyphrases
- label free
- machine learning
- papillary thyroid
- induced apoptosis
- high resolution
- cell cycle arrest
- skeletal muscle
- squamous cell carcinoma
- molecular docking
- stem cells
- healthcare
- signaling pathway
- health information
- single cell
- endoplasmic reticulum stress
- cell proliferation
- fatty acid
- raman spectroscopy
- young adults
- electronic health record
- fluorescence imaging
- sensitive detection
- quantum dots