Cell responses to varying electric fields can reveal insights on cell biology with important implications for pharmaceutical and basic research. In this work, we exploit spectral information content in Opto-Electronic Tweezers (OET) systems through machine learning for label-free characterization of cell dielectric properties aimed at cell classification and drug response evaluation. A customized Polymethyl-methacrylate (PMMA) chip with ITO substrates and an a-Si layer was designed for OET-based manipulation of cells and integrated with an inverted microscope. We obtained OET cell signatures as spectra responses of kinematic and dynamic descriptors, which are the result of time-lapse measurements at increasing frequencies of the OET. Machine learning algorithms enable automatic selection and characterization of the information content present in the OET signature so derived. Experiments are performed on three biological case studies, involving 1) the discrimination of cell types among U937 human leukemia cells, PC-3 human prostate cancer cells and HaCaT human immortalized keratinocytes; 2) the evaluation of the effects of the chemotherapeutic agent etoposide on U937 cells at different concentrations; and 3) the evaluation of the effects of different exposure times of etoposide on U937 cells. The obtained results demonstrate that multiple levels of dielectric information can be extracted via OET cell signatures and clearly pose OET as a promising tool for cell discrimination and drug response evaluation.

Filippi, J., Di Giuseppe, D., Casti, P., Mencattini, A., Antonelli, G., D'Orazio, M., et al. (2022). Exploiting spectral information in Opto-Electronic Tweezers for cell classification and drug response evaluation. SENSORS AND ACTUATORS. B, CHEMICAL, 368, 132200 [10.1016/j.snb.2022.132200].

Exploiting spectral information in Opto-Electronic Tweezers for cell classification and drug response evaluation

Casti P.;Mencattini A.;D'Orazio M.;Della-Morte Canosci D.;Ghibelli L.;Di Natale C.;Martinelli E.
2022-01-01

Abstract

Cell responses to varying electric fields can reveal insights on cell biology with important implications for pharmaceutical and basic research. In this work, we exploit spectral information content in Opto-Electronic Tweezers (OET) systems through machine learning for label-free characterization of cell dielectric properties aimed at cell classification and drug response evaluation. A customized Polymethyl-methacrylate (PMMA) chip with ITO substrates and an a-Si layer was designed for OET-based manipulation of cells and integrated with an inverted microscope. We obtained OET cell signatures as spectra responses of kinematic and dynamic descriptors, which are the result of time-lapse measurements at increasing frequencies of the OET. Machine learning algorithms enable automatic selection and characterization of the information content present in the OET signature so derived. Experiments are performed on three biological case studies, involving 1) the discrimination of cell types among U937 human leukemia cells, PC-3 human prostate cancer cells and HaCaT human immortalized keratinocytes; 2) the evaluation of the effects of the chemotherapeutic agent etoposide on U937 cells at different concentrations; and 3) the evaluation of the effects of different exposure times of etoposide on U937 cells. The obtained results demonstrate that multiple levels of dielectric information can be extracted via OET cell signatures and clearly pose OET as a promising tool for cell discrimination and drug response evaluation.
2022
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore ING-INF/07 - MISURE ELETTRICHE ED ELETTRONICHE
English
Lab-on-chip
Machine Learning
Multi-frequencies analysis
Opto-Electronic Tweezers
Filippi, J., Di Giuseppe, D., Casti, P., Mencattini, A., Antonelli, G., D'Orazio, M., et al. (2022). Exploiting spectral information in Opto-Electronic Tweezers for cell classification and drug response evaluation. SENSORS AND ACTUATORS. B, CHEMICAL, 368, 132200 [10.1016/j.snb.2022.132200].
Filippi, J; Di Giuseppe, D; Casti, P; Mencattini, A; Antonelli, G; D'Orazio, M; Corsi, F; Della-Morte Canosci, D; Ghibelli, L; Witte, C; Di Natale, C;...espandi
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/307777
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