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Deep learning-enabled point-of-care sensing using multiplexed paper-based sensors

Zachary S. Ballard, Hyou‐Arm Joung, Artem Goncharov, Jesse Liang, Karina Nugroho, Dino Di Carlo, Omai B. Garner, Aydogan Özcan

2020npj Digital Medicine121 citationsDOIOpen Access PDF

Abstract

Abstract We present a deep learning-based framework to design and quantify point-of-care sensors. As a use-case, we demonstrated a low-cost and rapid paper-based vertical flow assay (VFA) for high sensitivity C-Reactive Protein (hsCRP) testing, commonly used for assessing risk of cardio-vascular disease (CVD). A machine learning-based framework was developed to (1) determine an optimal configuration of immunoreaction spots and conditions, spatially-multiplexed on a sensing membrane, and (2) to accurately infer target analyte concentration. Using a custom-designed handheld VFA reader, a clinical study with 85 human samples showed a competitive coefficient-of-variation of 11.2% and linearity of R 2 = 0.95 among blindly-tested VFAs in the hsCRP range (i.e., 0–10 mg/L). We also demonstrated a mitigation of the hook-effect due to the multiplexed immunoreactions on the sensing membrane. This paper-based computational VFA could expand access to CVD testing, and the presented framework can be broadly used to design cost-effective and mobile point-of-care sensors.

Topics & Concepts

MultiplexingPoint of careComputer sciencePoint (geometry)Deep learningRemote sensingArtificial intelligenceTelecommunicationsMedicineGeographyMathematicsNursingGeometryBiosensors and Analytical DetectionIoT and Edge/Fog ComputingCOVID-19 diagnosis using AI
Deep learning-enabled point-of-care sensing using multiplexed paper-based sensors | Litcius