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Blood Test: A Simple Tool to Predict Long COVID

Blood Test: A Simple Tool to Predict Long COVID

by Dr. Jayashree Gopinath on Sep 30 2022 9:34 PM
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Highlights:
  • Long Covid is the name given to ongoing symptoms that are reported after suffering from COVID-19 infection
  • There are hopes that a diagnostic test could soon be developed to tell people if they will have the condition
  • A new simple blood test using artificial intelligence (AI) showcasing the changes in blood proteins, will give answers to this hope
A simple blood test taken at the time of COVID-19 infection could predict who is most likely to develop long COVID, according to a new study published in Lancet eBioMedicine.
Usually, protein levels in the body are stable, but researchers found a dramatic difference in levels of some of the proteins up to six weeks following infection, suggesting disruption to many important biological processes.

How Does Artificial Intelligence Help to Identify Long COVID?

In this study, researchers analyzed proteins in the blood of healthcare workers infected with COVID-19, and compared them to samples from healthcare workers who had not been infected.

Using an artificial intelligence (AI) algorithm, they identified a “signature” in the abundance of different proteins that successfully predicted whether or not the person would go on to report persistent symptoms a year after infection.

If these findings are repeated in a larger, independent group of patients, a test could potentially be offered alongside a polymerase chain reaction (PCR) test that could predict people’s likelihood of developing long COVID.

Even mild or asymptomatic COVID-19 disrupts the profile of proteins in our blood plasma. This means that even mild COVID-19 affects normal biological processes dramatically, up to at least six weeks after infection.

Does Long COVID Show Up in Blood Tests?

For the study, researchers analyzed blood plasma samples from 54 healthcare workers who had PCR- or antibody-confirmed infection, taken every week for six weeks in spring 2020, and compared them to samples taken over the same period from 102 healthcare workers who were not infected.

They used targeted mass spectrometry, a form of analysis that is extremely sensitive to tiny changes in the number of proteins in blood plasma, to look at how COVID-19 affected these proteins over six weeks.

They found abnormally high levels of 12 proteins out of the 91 studied among those infected by SARS-CoV-2, and that the degree of abnormality tracked with the severity of symptoms.

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At the time of the first infection, abnormal levels of 20 proteins studied were predictive of persistent symptoms after one year. Most of these proteins were linked to anti-coagulant (anti-clotting) and anti-inflammatory processes.

A machine learning algorithm, trained on the protein profiles of the participants, was able to distinguish all of the 11 healthcare workers who reported at least one persistent symptom at one year, from infected healthcare workers who did not report persistent symptoms after a year. Another machine learning tool was used to estimate the likelihood of error and suggested a possible error rate of 6% for this method.

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This tool predicting long COVID still needs to be validated in an independent, larger group of patients. However, using our approach, a test that predicts long COVID at the time of initial infection could be rolled out quickly and in a cost-effective way.

Identifying people who are likely to develop long COVID, opens the door to trialing treatments such as antivirals at this earlier, initial infection stage, to see if it can reduce the risk of later long COVID.

References:
  1. Mandal S, Barnett J, Brill SE ARC Study Group, et al. Long-COVID: a cross-sectional study of persisting symptoms, biomarker and imaging abnormalities following hospitalization for COVID-19Thorax 2021. .(https://thorax.bmj.com/content/76/4/396)
  2. Davis, Hannah E. et al. Characterizing long COVID in an international cohort: 7 months of symptoms and their impact. eClinicalMedicine. August 2021.(https://www.thelancet.com/journals/eclinm/article/PIIS2589-5370(21)00299-6/fulltext)


Source-Medindia


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