Machine Learning Assisted Spectral Fingerprinting for Immune Cell Phenotyping

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Abstract

Spectral fingerprinting has emerged as a powerful tool, adept at identifying chemical compounds and deciphering complex interactions within cells and engineered nanomaterials. Using near-infrared (NIR) fluorescence spectral fingerprinting coupled with machine learning techniques, we uncover complex interactions between DNA-functionalized single-walled carbon nanotubes (DNA-SWCNTs) and live macrophage cells, enabling in situ phenotype discrimination. Through the use of Raman microscopy, we showcase statistically higher DNA-SWCNT uptake and a significantly lower defect ratio in M1 macrophages as compared to M2 and naïve phenotypes. NIR fluorescence data also indicate that distinctive intra-endosomal environments of these cell types give rise to significant differences in many optical features such as emission peak intensities, center wavelengths, and peak intensity ratios. Such features serve as distinctive markers for identifying different macrophage phenotypes. We further use a support vector machine (SVM) model trained on SWCNT fluorescence data to identify M1 and M2 macrophages, achieving an impressive accuracy of > 95%. Finally, we observe that the stability of DNA-SWCNT complexes, influenced by DNA sequence length, is a crucial consideration for applications such as cell phenotyping or mapping intra-endosomal microenvironments using AI techniques. Our findings suggest that shorter DNA-sequences like GT 6 give rise to more improved model accuracy (> 87%) due to increased active interactions of SWCNTs with biomolecules in the endosomal microenvironment. Implications of this research extend to the development of nanomaterial-based platforms for cellular identification, holding promise for potential applications in real time monitoring of in vivo cellular differentiation.

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  1. the study affirms the potency of SWCNT-based spectral fingerprinting, particularly when coupled with machine learning, as an invaluable tool for precisely categorizing cellular states based on complex spectral data.

    This is an interesting application of machine learning to expand the phenotyping capacity of cell types that are hard to distinguish without more intensive or destructive methods.

  2. In a previous study, we have shown that DNA-SWCNTs can be used to map intracellular processes based on modulations in their Raman spectra.

    Do you suspect there are any intrinsic differences in the Raman or NIR spectral for M1 or M2 macrophages without the addition of the DNA-SWCNTs? It would be interesting to know to what extent this works as a label-free approach for applications without the addition of single-walled carbon nanotubes.