2025
Artificial intelligence-assisted chest radiograph interpretation in Role 2 military field hospital settings: a controlled experimental study
MAJOVSKY, Martin; Vojtech SEDLAK; Martin KOMARC; Tomas HENLIN; Martin CERNY et al.Základní údaje
Originální název
Artificial intelligence-assisted chest radiograph interpretation in Role 2 military field hospital settings: a controlled experimental study
Autoři
MAJOVSKY, Martin; Vojtech SEDLAK; Martin KOMARC; Tomas HENLIN; Martin CERNY; Peter MAJOVSKY; Tomas TUMA; Petr SUSTEK; Lucie SIROKA; Martin SOLC; Lukas MIKLAS; Jan KOLOUCH; Norbert SVOBODA; Jan PALENIK; Jan BRIXI; Tomas GOTTVALD; Ladislav SINDELAR; Stepan KASPER; Jaroslav CHOMIC; Ondrej KULIHA; Petr SVOBODA; David NETUKA a Vaclav MASOPUST
Vydání
TRAUMA SURGERY & ACUTE CARE OPEN, 2025, 2397-5776
Další údaje
Jazyk
angličtina
Typ výsledku
Článek v odborném periodiku
Obor
30212 Surgery
Stát vydavatele
Velká Británie a Severní Irsko
Utajení
není předmětem státního či obchodního tajemství
Odkazy
Impakt faktor
Impact factor: 2.200 v roce 2024
Označené pro přenos do RIV
Ano
Organizační jednotka
Ambis Univerzita
UT WoS
Klíčová slova česky
diagnostic accuracyMachine learningdiagnosisThoraxmilitary medicineartificial intelligence
Klíčová slova anglicky
diagnostic accuracy;Machine learning;diagnosis;Thorax;military medicine;artificial intelligence
Štítky
Změněno: 2. 2. 2026 17:09, Ing. Kateřina Lendrová
Anotace
V originále
Introduction Forward military field hospitals often operate in battle zone environments where access to specialized personnel, such as radiologists, is limited, complicating the accuracy of diagnostic imaging. Chest radiographs are crucial for assessing thoracic injuries and other conditions, but their interpretation frequently falls to non-radiologist personnel. This study evaluates the effectiveness of an artificial intelligence (AI)-assisted model in enhancing the diagnostic accuracy of chest radiographs in such resource-limited settings. Methods Nine board-certified military physicians from various non-radiology specialties interpreted 159 anonymized chest radiographs, both with and without the support of AI. The AI model, INSIGHT CXR, generated automated descriptions for 80 radiographs, whereas 79 were interpreted without AI support. A linear mixed-effects model was used to assess the difference in diagnostic accuracy between the two conditions. Secondary analyses examined the effects of radiograph type and physician specialty on diagnostic performance. Results AI support increased mean diagnostic accuracy by 9.4% (p<0.001) from pretest to post-test, representing a 23.15% relative improvement. This improvement was consistent across both normal and abnormal findings, with no significant differences observed based on radiograph type or physician specialty. These findings suggest that AI tools can serve as effective support in field hospitals, improving diagnostic precision and decision-making in the absence of radiologists. Conclusions This study highlights the potential for AI-assisted radiograph interpretation to enhance diagnostic accuracy in military field hospitals. If AI tools are proven reliable, they could be integrated into the workflow of forward field hospitals, improving the quality of care for injured personnel. Immediate benefits may include faster diagnoses, increased personnel readiness, optimized performance, and cost savings, leading to better outcomes in combat operations. Level of evidence II. Diagnostic Test.