Artificial Intelligence (AI) cannot detect COVID-19 by just listening to cough sounds.
Cough sounds do not help Artificial Intelligence (AI) technology to predict COVID-19 better, reports a new study. The AI classifiers trained on audio recordings cannot accurately predict whether someone has COVID-19 by analyzing the sound of their coughs, according to the study led by the UK's Alan Turing Institute.
‘Artificial Intelligence (AI) performs poorly in detecting COVID-19 by listening to the cough sounds.’
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As first reported in a paper from researchers led by the Massachusetts Institute of Technology, there were claims that AI could detect the difference in cough sounds between those with and without COVID-19 with up to 98.5 percent accuracy, reports The Register. Read More..
The result led to efforts to build an app powered by the algorithms to provide people with a cheap and easy method to test for the novel coronavirus.
Cough in a Box Technology to Detect COVID-19
The Department of Health and Social Care in the UK even went so far as to award Fujitsu two contracts totaling more than 1,00,000 pounds to develop the government's so-called "Cough In A Box" initiative in 2021, according to the report.The software would collect audio recordings of coughs from users to analyze on its Covid-19 app.
Researchers from The Alan Turing Institute and Royal Statistical Society, commissioned by the UK Health Security Agency, conducted an independent review of audio-based AI tech as a COVID-19 screening tool.
Is Detecting COVID-19 Through Cough Sounds Effective?
They found that even the most accurate cough-detecting model outperformed a model based on user-reported systems and demographic data like age and gender.The researchers examined data from over 67,000 people recruited through the National Health Service's Test and Trace and REACT-1 programmes, which asked participants to send back COVID-19 nose and throat swab test results as well as recordings of them coughing, breathing, and talking.
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"But as we continued to analyze the results, it appeared that the accuracy was likely due to an effect in statistics called confounding -- where models learn other variables which correlate with the true signal, as opposed to the true signal itself," Kieran Baker, a statistics PhD student at King's College London and research assistant at the Alan Turing Institute, was quoted as saying.
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"When we evaluated these models on the matched data, the models failed to perform well, and so we conclude that our models cannot detect a COVID-19 bio-acoustic marker from this data," Baker said.
Source-IANS