Deep Label-Free Cell Imaging of Liquid Biopsies for Cancer Monitoring

HORIZON.1.1HORIZON-ERC-POCID: 101100664
EC Contribution
€1,500
Consortium Size
1 orgs
Summary

We will develop and commercialize an innovative device for diagnosis and monitoring of cancer in liquid biopsies based on a label-free interferometric phase microscopy (IPM) unit, coupled with dedicated real-time artificial intelligence (AI) for cell classification. This device will materialize an innovative approach for the much-anticipated imaging flow cytometry, dramatically decreasing its costs, and improving patient care by accurate monitoring of cancer in the clinical lab from a simple lab test (liquid biopsy). The success of the project is dependent on four high-risk/high-gain aspects: (a) Building the first clinical IPM device. (b) Designing and manufacturing a disposable microfluidic device for imaging flow cytometry. (c) Obtaining high-enough acquisition and processing throughput in imaging flow cytometry of urine samples. (d) Training a deep natural network to detect cancer cells based on the information-deep label-free IPM images of cancer cells during flow. The proposed PoC project stems from my on-going ERC StG project that focuses on the application of IPM for grading the metastatic potential of cancer cells, as a basic-science research tool.

Consortium (1)

Project Results (2)

Source: CORDIS, the EU research results database.

Publications (2)
Label-free imaging flow cytometry for cell classification based directly on multiple off-axis holographic projections
Journal of Biomedical Optics· 2025DOI
Dana Aharoni, Matan Dudaie, Itay Barnea, Natan Tzvi Shaked
Analyzing Blood Cells of High-Risk Myelodysplastic Syndrome Patients Using Interferometric Phase Microscopy and Fluorescent Flow Cytometry
Bioengineering· 2024DOI
Itay Barnea; Lior Luria; Arik Girsault; Ofira Dabah; Matan Dudaie; Simcha K. Mirsky; Drorit Merkel; Natan T. Shaked