Cell classification is a fundamental task in biological research and medical practices. In this study, we proposed a singlecell classification pipeline through machine learning and hyperspectral stimulated Raman scattering imaging. The pipeline proposed is validated by using hyperspectral SRS images of two types of pancreatic cancer cells before and after the treatment of drugs that affects cellular cholesterol level. The result demonstrates that the proposed machine learning pipeline is capable of classifying cells with different metabolite dynamics, which provides possibilities for wide applications in cell analysis.
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