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Photon-Counting CT Shows More Post-COVID-19 Lung Damage

By HospiMedica International staff writers
Posted on 05 Dec 2022
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Image: Ultra-high-resolution photon-counting CT reveals bronchiolectasis (Photo courtesy of Medical University of Vienna)
Image: Ultra-high-resolution photon-counting CT reveals bronchiolectasis (Photo courtesy of Medical University of Vienna)

Photon-counting detector (PCD) CT has emerged in the last decade as a promising imaging tool. It works by converting X-ray photons directly into an electrical signal. This avoids the intermediate step of conversion by means of a photodiode found in conventional CT scanners that use energy-integrating detectors. The result significantly reduces energy and signal loss at the detector site. While PCD CT is not yet widely available, it has shown promise in the research setting. Now, a new study has shown that PCD CT outperforms conventional CT in detecting subtle damage in the lungs of patients with persistent symptoms of COVID-19. The technology could lead the way to earlier treatment and better outcomes for the growing number of people with COVID-related lung damage, according to researchers.

Researchers at the Medical University of Vienna (Vienna, Austria) studied PCD CT's potential as a method for imaging the lungs of people with persistent symptoms after COVID-19. They compared PCD CT with conventional CT in 20 adults, mean age 54 years. The participants had one or more COVID-19-related persisting symptoms, such as cough and fatigue. Conventional CT showed post-COVID-19 lung abnormalities in 15 of 20 (75%) participants. PCD CT revealed additional lung abnormalities in half of the participants. The most common abnormality found by PCD CT was bronchiolectasis, damage to the airways that can cause difficulties in clearing mucus from the lungs.

PCD CT's ability to detect these subtle lung abnormalities is especially important, because patients with persistent symptoms following COVID-19 can develop irreversible lung damage known as lung fibrosis. Conventional CT is one of the primary methods for detecting and diagnosing lung fibrosis, but it can miss the subtle abnormalities indicative of early-stage fibrosis. The more accurate estimation of the severity of lung abnormalities afforded by PCD CT could also benefit lung disease monitoring and treatment response evaluation.

"In our study investigating lung abnormalities in symptomatic post-COVID patients, we were able to detect subtle lung abnormalities in 10 of 20 participants using PCD CT that were not seen in conventional CT," said study senior author Benedikt Heidinger, M.D., from the Department of Biomedical Imaging and Image-guided Therapy at the Medical University of Vienna. "Moreover, PCD CT has potential in decreasing radiation dose and in artifact reduction, representing direct benefits to patients."

"PCD CT may help to identify earlier and more effectively post-COVID patients at risk for developing lung fibrosis, and, hopefully, allow for timely treatment allocation, such as pulmonary rehabilitation, in the future," added Dr. Heidinger. "Future trials including clinical outcomes such as quality of life, pulmonary function testing and histology will reveal the true benefit of this exciting new detector technology."

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