Department of Cardiology, Royal United Hospital, Bath, United Kingdom.
Department for Health, University of Bath, Bath, United Kingdom.
Br J Radiol. 2023 Nov;96(1151):20220853. doi: 10.1259/bjr.20220853. Epub 2023 Jul 26.
To assess the diagnostic accuracy and clinical impact of automated artificial intelligence (AI) measurement of thoracic aorta diameter on routine chest CT.
A single-centre retrospective study involving three cohorts. 210 consecutive ECG-gated CT aorta scans (mean age 75 ± 13) underwent automated analysis (AI-Rad Companion Chest CT, Siemens) and were compared to a reference standard of specialist cardiothoracic radiologists for accuracy measuring aortic diameter. A repeated measures analysis tested reporting consistency in a second cohort (29 patients, mean age 61 ± 17) of immediate sequential pre-contrast and contrast CT aorta acquisitions. Potential clinical impact was assessed in a third cohort of 197 routine CT chests (mean age 66 ± 15) to document potential clinical impact.
AI analysis produced a full report in 387/436 (89%) and a partial report in 421/436 (97%). Manual AI agreement was good to excellent (ICC 0.76-0.92). Repeated measures analysis of expert and AI reports for the ascending aorta were moderate to good (ICC 0.57-0.88). AI diagnostic performance crossed the threshold for maximally accepted limits of agreement (>5 mm) at the aortic root on ECG-gated CTs. AI newly identified aortic dilatation in 27% of patients on routine thoracic imaging with a specificity of 99% and sensitivity of 77%.
AI has good agreement with expert readers at the mid-ascending aorta and has high specificity, but low sensitivity, at detecting dilated aortas on non-dedicated chest CTs.
An AI tool may improve the detection of previously unknown thoracic aorta dilatation on chest CTs current routine reporting.
评估自动人工智能(AI)测量常规胸部 CT 中胸主动脉直径的诊断准确性和临床影响。
这是一项单中心回顾性研究,涉及三个队列。210 例连续进行心电图门控 CT 主动脉扫描(平均年龄 75±13 岁),接受自动分析(西门子的 AI-Rad Companion Chest CT),并与专家心胸放射科医生的参考标准进行比较,以准确测量主动脉直径。重复测量分析测试了在第二个队列(29 例患者,平均年龄 61±17 岁)中即刻连续进行的对比前和对比 CT 主动脉采集的报告一致性。第三个队列为 197 例常规胸部 CT(平均年龄 66±15 岁),评估潜在的临床影响,以记录潜在的临床影响。
AI 分析产生了 436 次全报告中的 387 次(89%)和 436 次部分报告中的 421 次(97%)。手动 AI 一致性良好到优秀(ICC 0.76-0.92)。对于心电图门控 CT 上的升主动脉,专家和 AI 报告的重复测量分析为中度到良好(ICC 0.57-0.88)。AI 诊断性能在心电图门控 CT 上超过了最大可接受的协议限界(>5mm)。AI 在常规胸部成像中发现 27%的患者存在主动脉扩张,特异性为 99%,敏感性为 77%。
AI 在中升主动脉与专家读者具有良好的一致性,并且在检测非专用胸部 CT 上的扩张主动脉时具有高特异性,但敏感性低。
人工智能工具可能会提高对胸部 CT 上以前未知的胸主动脉扩张的检测,目前的常规报告。