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Deep learning-enabled multiplexed point-of-care sensor using a paper-based fluorescence vertical flow assay

Medical Physics 2023-05-01 v1 Applied Physics Biological Physics

Abstract

We demonstrate multiplexed computational sensing with a point-of-care serodiagnosis assay to simultaneously quantify three biomarkers of acute cardiac injury. This point-of-care sensor includes a paper-based fluorescence vertical flow assay (fxVFA) processed by a low-cost mobile reader, which quantifies the target biomarkers through trained neural networks, all within <15 min of test time using 50 microliters of serum sample per patient. This fxVFA platform is validated using human serum samples to quantify three cardiac biomarkers, i.e., myoglobin, creatine kinase-MB (CK-MB) and heart-type fatty acid binding protein (FABP), achieving less than 0.52 ng/mL limit-of-detection for all three biomarkers with minimal cross-reactivity. Biomarker concentration quantification using the fxVFA that is coupled to neural network-based inference is blindly tested using 46 individually activated cartridges, which showed a high correlation with the ground truth concentrations for all three biomarkers achieving > 0.9 linearity and < 15 % coefficient of variation. The competitive performance of this multiplexed computational fxVFA along with its inexpensive paper-based design and handheld footprint make it a promising point-of-care sensor platform that could expand access to diagnostics in resource-limited settings.

Keywords

Cite

@article{arxiv.2301.10934,
  title  = {Deep learning-enabled multiplexed point-of-care sensor using a paper-based fluorescence vertical flow assay},
  author = {Artem Goncharov and Hyou-Arm Joung and Rajesh Ghosh and Gyeo-Re Han and Zachary S. Ballard and Quinn Maloney and Alexandra Bell and Chew Tin Zar Aung and Omai B. Garner and Dino Di Carlo and Aydogan Ozcan},
  journal= {arXiv preprint arXiv:2301.10934},
  year   = {2023}
}

Comments

17 Pages, 6 Figures

R2 v1 2026-06-28T08:20:50.634Z