AI in the Identification of Lung Contusions Through Chest Radiological Examination in Blunt Thoracic Trauma
Artificial Intelligence in the Identification of Lung Contusions Through Chest Radiological Examination in Blunt Thoracic Trauma
IRCCS Azienda Ospedaliero-Universitaria di Bologna
135 participants
Dec 15, 2024
OBSERVATIONAL
Conditions
Summary
The observational study focuses on comparing the interpretation of chest radiological examinations performed using a computer-based system with the standard interpretation conducted by a radiologist. The "LUNIT" system serves as a tool designed to assist radiologists in detecting the 10 most common abnormalities visible on chest radiographs, with proven efficacy in large case series. The investigation addresses the need to evaluate lung injuries resulting from thoracic trauma, which are linked to a higher risk of complications requiring close monitoring to detect potential respiratory failure. The primary aim of the study is to assess the accuracy of the LUNIT system in interpreting chest radiographs for the identification of lung contusions compared to the standard radiologist-based interpretation.
Eligibility
Inclusion Criteria3
- Age ≥ 18 years
- Patients presenting to the general Emergency Department of the IRCCS AOU of Bologna between June 1, 2014, and June 1, 2024, for blunt thoracic trauma
- Performance of chest HRCT within 48 hours of standard chest X-ray
Exclusion Criteria1
- none
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Locations(1)
View Full Details on ClinicalTrials.gov
For the most up-to-date information, visit the official listing.
NCT06777056