| Literature DB >> 33597679 |
Zachary S Ballard1,2, Hyou-Arm Joung1,3, Artem Goncharov1, Jesse Liang2,3, Karina Nugroho3, Dino Di Carlo2,3, Omai B Garner4, Aydogan Ozcan5,6,7.
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 R2 = 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.Year: 2020 PMID: 33597679 DOI: 10.1038/s41746-020-0274-y
Source DB: PubMed Journal: NPJ Digit Med ISSN: 2398-6352