MATLAB Plasmonic Nanoparticle Virion Counting and Interpretation System in Urban Populations
Bryan Hong, Jai Pal

TL;DR
This paper presents a novel plasmonic nanoparticle-based system for rapid, highly accurate RSV detection and virion quantification in urban populations, outperforming current diagnostic methods in speed and precision.
Contribution
The study introduces a new microcapillary laser detection system for RSV that achieves near-perfect accuracy and rapid results, with a validated virion counting mechanism.
Findings
99.99% diagnostic accuracy
Average detection time of 5.2 minutes
Virion counting accuracy of 98.52%
Abstract
One of the biggest issues currently plaguing the field of medicine is the lack of an accurate and efficient form of disease diagnosis especially in urban settings such as major cities. For example, the two most commonly utilized test diagnosis systems, the PCR and rapid test, sacrifice either accuracy or speed to achieve the other, and this could slow down epidemiologists working to combat the spread. Another issue currently present is the issue of viral quantification or the counting of virions within a nasal sample. These can provide doctors with crucial information in treating infections; however, the current mediums are underdeveloped and unstandardized. This project's goals were to 1) create an accurate and rapid RSV diagnostic test that could be replicated and utilized efficiently in urban settings and 2) design a viral quantification mechanism that counts the number of virions to…
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Taxonomy
TopicsBiosensors and Analytical Detection · Retinal and Optic Conditions · Advanced Biosensing Techniques and Applications
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
