Back to Search Start Over

A Computer Vision Algorithm for the Digitalization of Colorimetric Lateral Flow Assay Readouts

Authors :
Jan Madsen
Luca Pezzarossa
Susan Ibi Preus
Winnie Edith Svendsen
Source :
2020 Symposium on Design, Test, Integration & Packaging of MEMS and MOEMS (DTIP).
Publication Year :
2020
Publisher :
IEEE, 2020.

Abstract

Lateral flow assays (LFAs) are low-cost testing tools widely used for home, point-of-care, or laboratory medical diagnostics. These tests typically use colorimetry to report the presence and the concentration of a certain physical/ biological quantity, showing the result as a color marker. This work presents a computer vision algorithm for the digitalization of LFA readouts, enabling precise and reliable results at low-cost. The algorithm receives as input an image of a sample, identifies the color marker, and computes its average color intensity. In contrast to existing algorithms, the proposed one can detect color markers that are not characterized by a predetermined precise shape, size, and position, since the topology is identified and analyzed by the algorithm itself. The evaluation of the proposed algorithm on a set of LFA strips shows correct functionality and execution time of less than a second.

Details

Database :
OpenAIRE
Journal :
2020 Symposium on Design, Test, Integration & Packaging of MEMS and MOEMS (DTIP)
Accession number :
edsair.doi...........9409a41bac7ff918c00eeb57851d00d9