Detection of severe aortic stenosis by clinicians versus artificial intelligence: A retrospective clinical cohort study

IF 1.3 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS
Geoffrey A. Strange , Michael P. Feneley , David Prior , David Muller , Prasanna Venkataraman , Yiling Situ , Simon Stewart , David Playford
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Abstract

Many severe aortic stenosis (AS) cases are undetected and/or not considered for potentially life-saving treatment, with a persistent male-bias reported among those undergoing aortic valve replacement (AVR). We evaluated the clinical value of a validated artificial intelligence automated alert system (AI-AAS) that detects severe AS from routine echocardiographic measurements. In a retrospective, clinical cohort of 21,749 adults investigated with transthoracic echocardiography at two tertiary-referral centres, we identified 4057 women (aged 61.6 ± 18.1 years) and 5132 men (60.8 ± 17.5 years) with native aortic valves. We firstly applied the AI-AAS to the cardiologists' reported echo measurements, to detect all AS cases, including guideline-defined severe AS. Two expert clinicians then independently reviewed the original clinical diagnosis/management based on the initial report. Initially, 218/9189 (2.4 %, 95%CI 2.1–2.7 %) severe AS cases were diagnosed. The AI-AAS subsequently increased this number by 158 (52 % women) to 376 cases (4.1 %, 95%CI 3.7–4.5 %) of severe guideline-defined AS. Overall, more women were under-diagnosed (92/169 [54.4 %] versus 80/207 [38.6 %] men – adjusted odds ratio [aOR] 0.21, 95%CI 0.10–0.45). Even when accounting for potential contraindications to valvular intervention, women were persistently less likely to be considered for valvular intervention (aOR 0.54, 95%CI 0.31–0.95) and/or underwent AVR (aOR 0.29, 95%CI 0.09–0.74). Our study suggests an AI-AAS application that is agnostic to gender, haemodynamic bias, symptoms, or clinical factors, provides an objective alert to severe forms of AS (including guideline-defined severe AS) following a routine echocardiogram, and has the potential to increase the number of people (especially women) directed towards more definitive treatment/specialist care.
临床医生与人工智能对严重主动脉狭窄的检测:一项回顾性临床队列研究
许多严重主动脉瓣狭窄(AS)病例未被发现和/或未考虑进行可能挽救生命的治疗,在接受主动脉瓣置换术(AVR)的患者中,持续存在男性偏见。我们评估了经过验证的人工智能自动警报系统(AI-AAS)的临床价值,该系统可以通过常规超声心动图测量检测严重的AS。在一项回顾性临床队列研究中,在两家三级转诊中心通过经胸超声心动图对21,749名成年人进行了调查,我们确定了4057名女性(年龄61.6±18.1岁)和5132名男性(60.8±17.5岁)患有先天性主动脉瓣。我们首先将AI-AAS应用于心脏病专家报告的回声测量,以检测所有AS病例,包括指南定义的严重AS。然后,两位专家临床医生根据最初的报告独立审查了原始的临床诊断/管理。最初,诊断出218/9189例(2.4%,95%CI 2.1 - 2.7%)严重AS病例。AI-AAS随后增加了158例(52%为女性)至376例(4.1%,95%CI 3.7 - 4.5%)的严重指南定义AS。总体而言,更多的女性未被确诊(92/169[54.4%]对80/207[38.6%],男性校正优势比[aOR] 0.21, 95%CI 0.10-0.45)。即使考虑到瓣膜干预的潜在禁忌症,女性仍然不太可能被考虑进行瓣膜干预(aOR 0.54, 95%CI 0.31-0.95)和/或接受AVR (aOR 0.29, 95%CI 0.09-0.74)。我们的研究表明,AI-AAS的应用与性别、血流动力学偏差、症状或临床因素无关,可以在常规超声心动图检查后对严重形式的AS(包括指南定义的严重AS)提供客观警报,并有可能增加接受更明确治疗/专科护理的人数(尤其是女性)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.60
自引率
0.00%
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审稿时长
59 days
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