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KAUST scientists develop virus mutation tracker

KAUST · · Healthcare Research

KAUST researchers developed CovMT, a COVID-19 mutation tracking system for authorities and scientists to detect variants. CovMT tracks mutation fingerprints using daily data from the GISAID database of over 1.5 million viral genomes. The system identifies mutation hot spots, enabling public health authorities to stay ahead of new variants. Why it matters: This system provides a tool for rapid variant detection and informed public health decision-making in the region and globally.

Harnessing nanoparticles for COVID testing

KAUST · · Healthcare Research

KAUST researchers are developing a streamlined COVID-19 diagnostic testing method using superparamagnetic nanoparticles (MNPs). The team, led by Assistant Professor Mo Li, aims to address reagent shortages and improve automation by creating an in-house extraction kit compatible with inactivated samples. Associate Professor Samir Hamdan identified a protocol for making silica-coated MNPs that survive inactivation reagents, enabling magnetic separation without centrifugation. Why it matters: This innovation could significantly increase testing capacity in Saudi Arabia and globally by reducing biosafety risks, reagent dependence, and manual processing.

Understanding the COVID wave

KAUST · · Healthcare Research

KAUST professor David Ketcheson uses mathematical modeling to understand COVID-19 transmission. He applies differential equations to explain the progression of SARS-CoV-2, utilizing the SIR model to predict the spread. Ketcheson's analysis suggests that the reproduction number for COVID-19 could be as high as 5, emphasizing the need for social distancing. Why it matters: This highlights the role of mathematical modeling and data analysis in understanding and predicting the spread of infectious diseases, particularly in the context of pandemic response.