Brin Dana, Gilat Efrat K, Raskin Daniel, Goitein Orly
Department of Diagnostic Imaging, Chaim Sheba Medical Center, Sheba 2, Tel Hashomer, 5266202, Israel.
Faculty of Medicine, Tel-Aviv University, Tel Aviv, Israel.
Int J Cardiovasc Imaging. 2025 Jul 7. doi: 10.1007/s10554-025-03456-0.
Incidental pulmonary embolism (PE) is detected in 1% of cardiac CT angiography (CCTA) scans, despite the targeted aortic opacification and limited field of view. While artificial intelligence (AI) algorithms have proven effective in detecting PE in CT pulmonary angiography (CTPA), their use in CCTA remains unexplored. This study aimed to evaluate the feasibility of an AI algorithm for detecting incidental PE in CCTA scans. A dedicated AI algorithm was retrospectively applied to CCTA scans to detect PE. Radiology reports were reviewed using a natural language processing (NLP) tool to detect mentions of PE. Discrepancies between the AI and radiology reports triggered a blinded review by a cardiothoracic radiologist. All scans identified as positive for PE were thoroughly assessed for radiographic features, including the location of emboli and right ventricular (RV) strain. The performance of the AI algorithm for PE detection was compared to the original radiology report. Between 2021 and 2023, 1534 CCTA scans were analyzed. The AI algorithm identified 27 positive PE scans, with a subsequent review confirming PE in 22/27 cases. Of these, 10 (45.5%) were missed in the initial radiology report, all involving segmental or subsegmental arteries (P < 0.05) with no evidence of RV strain. This study demonstrates the feasibility of using an AI algorithm to detect incidental PE in CCTA scans. A notable radiology report miss rate (45.5%) of segmental and subsegmental emboli was documented. While these findings emphasize the potential value of AI for PE detection in the daily radiology workflow, further research is needed to fully determine its clinical impact.
尽管心脏CT血管造影(CCTA)扫描采用了靶向主动脉造影剂充盈和有限视野技术,但仍有1%的扫描发现了偶发性肺栓塞(PE)。虽然人工智能(AI)算法已被证明在CT肺动脉造影(CTPA)中检测PE有效,但其在CCTA中的应用仍未得到探索。本研究旨在评估一种AI算法在CCTA扫描中检测偶发性PE的可行性。将一种专用AI算法回顾性应用于CCTA扫描以检测PE。使用自然语言处理(NLP)工具审查放射学报告,以检测是否提及PE。AI与放射学报告之间的差异引发了心胸放射科医生的盲法审查。对所有被确定为PE阳性的扫描进行全面评估,以确定其影像学特征,包括栓子位置和右心室(RV)应变。将AI算法检测PE的性能与原始放射学报告进行比较。在2021年至2023年期间,分析了1534例CCTA扫描。AI算法识别出27例PE阳性扫描,随后的审查证实其中22/27例为PE。其中,10例(45.5%)在初始放射学报告中漏诊,均累及节段性或亚节段性动脉(P < 0.05),且无RV应变证据。本研究证明了使用AI算法在CCTA扫描中检测偶发性PE的可行性。记录到节段性和亚节段性栓子的放射学报告漏诊率显著(45.5%)。虽然这些发现强调了AI在日常放射学工作流程中检测PE的潜在价值,但仍需要进一步研究以充分确定其临床影响。