Salehi Mahan, Alabed Samer, Sharkey Michael, Maiter Ahmed, Dwivedi Krit, Yardibi Tarik, Selej Mona, Hameed Abdul, Charalampopoulos Athanasios, Kiely David G, Swift Andrew J
Department of Infection, Immunity and Cardiovascular Disease, University of Sheffield, Sheffield, UK.
NIHR Biomedical Research Centre, Sheffield, UK.
ERJ Open Res. 2025 May 12;11(3). doi: 10.1183/23120541.00592-2024. eCollection 2025 May.
Tricuspid regurgitation jet velocity (TRJV) on echocardiography is used for screening patients with suspected pulmonary hypertension (PH). Artificial intelligence (AI) tools, such as the US2.AI, have been developed for automated evaluation of echocardiograms and can yield measurements that aid PH detection. This study evaluated the performance and utility of the US2.AI in a consecutive cohort of patients with suspected PH.
1031 patients who had been investigated for suspected PH between 2009-2021 were retrospectively identified from the ASPIRE registry. All patients had undergone echocardiography and right heart catheterisation (RHC). Based on RHC results, 771 (75%) patients with a mean pulmonary arterial pressure >20 mmHg were classified as having a diagnosis of PH (as per the 2022 European guidelines). Echocardiograms were evaluated manually and by the US2.AI tool to yield TRJV measurements.
The AI tool demonstrated high interpretation yield, successfully measuring TRJV in 87% of echocardiograms. Manually and automatically derived TRJV values showed excellent agreement (intraclass correlation coefficient 0.94, 95% CI 0.94-0.95) with minimal bias (Bland-Altman analysis). Automated TRJV measurements showed equally high diagnostic accuracy for PH as manual measurements (area under the curve 0.88, 95% CI 0.84-0.90 0.88, 95% CI 0.86-0.91).
Automated TRJV measurements on echocardiography were similar to manual measurements, with similarly high and noninferior diagnostic accuracy for PH. These findings demonstrate that automated measurement of TRJV on echocardiography is feasible, accurate and reliable and support the implementation of AI-based approaches to echocardiogram evaluation and diagnostic imaging for PH.
超声心动图检查中的三尖瓣反流喷射速度(TRJV)用于筛查疑似肺动脉高压(PH)患者。已开发出人工智能(AI)工具,如US2.AI,用于超声心动图的自动评估,并可得出有助于PH检测的测量值。本研究评估了US2.AI在连续的疑似PH患者队列中的性能和效用。
从ASPIRE注册中心回顾性识别出2009年至2021年间因疑似PH接受检查的1031例患者。所有患者均接受了超声心动图检查和右心导管检查(RHC)。根据RHC结果,771例(75%)平均肺动脉压>20 mmHg的患者被分类为患有PH(根据2022年欧洲指南)。对超声心动图进行了手动评估,并通过US2.AI工具得出TRJV测量值。
该AI工具显示出较高的解读率,在87%的超声心动图中成功测量出TRJV。手动和自动得出的TRJV值显示出极佳的一致性(组内相关系数0.94,95% CI 0.94 - 0.95),偏差极小(Bland - Altman分析)。自动TRJV测量对PH的诊断准确性与手动测量相当(曲线下面积0.88,95% CI 0.84 - 0.90 0.88,95% CI 0.86 - 0.91)。
超声心动图上的自动TRJV测量与手动测量相似,对PH具有同样高且不劣的诊断准确性。这些发现表明,超声心动图上TRJV的自动测量是可行、准确且可靠的,并支持采用基于AI的方法进行超声心动图评估和PH的诊断成像。