AI Article Synopsis

  • Chest CT has been crucial in managing COVID-19 by helping with screening, diagnosis, and follow-up, highlighting the importance of accurately quantifying pneumonia for treatment outcomes.
  • A study showed that radiologists tend to overestimate lung involvement in COVID-19 patients, with an average overestimation of about 10-15%.
  • The use of AI decision support significantly reduced this overestimation error from 9.5% to 1.0%, demonstrating that AI can effectively counteract human biases in radiological assessments.

Article Abstract

Chest computed tomography (CT) has played a valuable, distinct role in the screening, diagnosis, and follow-up of COVID-19 patients. The quantification of COVID-19 pneumonia on CT has proven to be an important predictor of the treatment course and outcome of the patient although it remains heavily reliant on the radiologist's subjective perceptions. Here, we show that with the adoption of CT for COVID-19 management, a new type of psychophysical bias has emerged in radiology. A preliminary survey of 40 radiologists and a retrospective analysis of CT data from 109 patients from two hospitals revealed that radiologists overestimated the percentage of lung involvement by 10.23 ± 4.65% and 15.8 ± 6.6%, respectively. In the subsequent randomised controlled trial, artificial intelligence (AI) decision support reduced the absolute overestimation error (P < 0.001) from 9.5% ± 6.6 (No-AI analysis arm, n = 38) to 1.0% ± 5.2 (AI analysis arm, n = 38). These results indicate a human perception bias in radiology that has clinically meaningful effects on the quantitative analysis of COVID-19 on CT. The objectivity of AI was shown to be a valuable complement in mitigating the radiologist's subjectivity, reducing the overestimation tenfold.Trial registration: https://Clinicaltrial.gov . Identifier: NCT05282056, Date of registration: 01/02/2022.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10039355PMC
http://dx.doi.org/10.1038/s41598-023-31910-3DOI Listing

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