Phenotyping neuroblastoma cells through intelligent scrutiny of stain-free biomarkers in holographic flow cytometry

Author:

Pirone Daniele12ORCID,Montella Annalaura34ORCID,Sirico Daniele1,Mugnano Martina1ORCID,Del Giudice Danila1,Kurelac Ivana56ORCID,Tirelli Matilde37ORCID,Iolascon Achille34ORCID,Bianco Vittorio1ORCID,Memmolo Pasquale1ORCID,Capasso Mario34ORCID,Miccio Lisa1ORCID,Ferraro Pietro1ORCID

Affiliation:

1. CNR-ISASI, Institute of Applied Sciences and Intelligent Systems “E. Caianiello,” 1 via Campi Flegrei 34, 80078 Pozzuoli, Napoli, Italy

2. Department of Electrical Engineering and Information Technologies (DIETI), Università degli Studi di Napoli “Federico II,” 2 via Claudio 21, 80125 Napoli, Italy

3. CEINGE Biotecnologie Avanzate 3 , Napoli, Italy

4. Department of Molecular Medicine and Medical Biotechnology (DMMBM), Università degli Studi di Napoli “Federico II,” 4 Napoli, Italy

5. Department of Medical and Surgical Sciences (DIMEC) – Alma Mater Studiorum—University of Bologna 5 , 40138 Bologna, Italy

6. Centre for Applied Biomedical Research (CRBA), University of Bologna 6 , 40138 Bologna, Italy

7. European School of Molecular Medicine, Università degli Studi di Milano 7 , Milano, Italy

Abstract

To efficiently tackle certain tumor types, finding new biomarkers for rapid and complete phenotyping of cancer cells is highly demanded. This is especially the case for the most common pediatric solid tumor of the sympathetic nervous system, namely, neuroblastoma (NB). Liquid biopsy is in principle a very promising tool for this purpose, but usually enrichment and isolation of circulating tumor cells in such patients remain difficult due to the unavailability of universal NB cell-specific surface markers. Here, we show that rapid screening and phenotyping of NB cells through stain-free biomarkers supported by artificial intelligence is a viable route for liquid biopsy. We demonstrate the concept through a flow cytometry based on label-free holographic quantitative phase-contrast microscopy empowered by machine learning. In detail, we exploit a hierarchical decision scheme where at first level NB cells are classified from monocytes with 97.9% accuracy. Then we demonstrate that different phenotypes are discriminated within NB class. Indeed, for each cell classified as NB its belonging to one of four NB sub-populations (i.e., CHP212, SKNBE2, SHSY5Y, and SKNSH) is evaluated thus achieving accuracy in the range 73.6%–89.1%. The achieved results solve the realistic problem related to the identification circulating tumor cell, i.e., the possibility to recognize and detect tumor cells morphologically similar to blood cells, which is the core issue in liquid biopsy based on stain-free microscopy. The presented approach operates at lab-on-chip scale and emulates real-world scenarios, thus representing a future route for liquid biopsy by exploiting intelligent biomedical imaging.

Funder

Italian Ministry of Education, University and Research - PRIN 2017

Publisher

AIP Publishing

Subject

Biomedical Engineering,Biomaterials,Biophysics,Bioengineering

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