Volume 2, 2023

Real-time, smartphone-based processing of lateral flow assays for early failure detection and rapid testing workflows

Abstract

Despite their simplicity, lateral flow immunoassays (LFIAs) remain a crucial weapon in the diagnostic arsenal, particularly at the point-of-need. However, methods for analysing LFIAs still rely heavily on sub-optimal human readout and rudimentary end-point analysis. This negatively impacts both testing accuracy and testing times, ultimately lowering diagnostic throughput. Herein, we present an automated computational imaging method for processing and analysing multiple LFIAs in real-time and in parallel. This method relies on the automated detection of signal intensity at the test line, control line, and background, and employs statistical comparison of these values to predictively categorise tests as “positive”, “negative”, or “failed”. We show that such a computational methodology can be transferred to a smartphone and detail how real-time analysis of LFIAs can be leveraged to decrease the time-to-result and increase testing throughput. We compare our method to naked-eye readout and demonstrate a shorter time-to-result across a range of target antigen concentrations and fewer false negatives compared to human subjects at low antigen concentrations.

Graphical abstract: Real-time, smartphone-based processing of lateral flow assays for early failure detection and rapid testing workflows

Associated articles

Supplementary files

Article information

Article type
Paper
Submitted
03 Nov 2022
Accepted
30 Nov 2022
First published
01 Dec 2022
This article is Open Access
Creative Commons BY-NC license

Sens. Diagn., 2023,2, 100-110

Real-time, smartphone-based processing of lateral flow assays for early failure detection and rapid testing workflows

M. Colombo, L. Bezinge, A. Rocha Tapia, C. Shih, A. J. de Mello and D. A. Richards, Sens. Diagn., 2023, 2, 100 DOI: 10.1039/D2SD00197G

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