The precise identification and counting of T lymphocytes (T-cells) in solid cancers represents a challenging topic since their number is directly correlated to disease severity and therapy response. Recently, this goal has been made effective thanks to the help of Artificial Intelligence, that has boosted the performance of a microscopy imaging system in detecting target cells. However, to date, the T-cells evaluation is based on immunohistochemistry, that is time-consuming, marker-dependent and requires highly qualified personnel to evaluate the samples. Here we report a fully label-free method, based on holographic microscopy imaging in flow cytometry combined with machine learning, to identify T-lymphocytes with respect to a background of multiple cell lines.
Pirone, D., Cavina, B., Mugnano, M., Bianco, V., Miccio, L., Perrone, A.M., et al. (2024). Strategies of T-Cells Identification in AI-Powered Quantitative Phase Imaging Flow Cytometry [10.1109/RTSI61910.2024.10761908].
Strategies of T-Cells Identification in AI-Powered Quantitative Phase Imaging Flow Cytometry
Cavina B.;Perrone A. M.;Porcelli A. M.;Gasparre G.;Kurelac I.;
2024
Abstract
The precise identification and counting of T lymphocytes (T-cells) in solid cancers represents a challenging topic since their number is directly correlated to disease severity and therapy response. Recently, this goal has been made effective thanks to the help of Artificial Intelligence, that has boosted the performance of a microscopy imaging system in detecting target cells. However, to date, the T-cells evaluation is based on immunohistochemistry, that is time-consuming, marker-dependent and requires highly qualified personnel to evaluate the samples. Here we report a fully label-free method, based on holographic microscopy imaging in flow cytometry combined with machine learning, to identify T-lymphocytes with respect to a background of multiple cell lines.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.