Krishna Hema, Desai Kevin, Slostad Brody, Bhayani Siddharth, Arnold Joshua H, Ouwerkerk Wouter, Hummel Yoran, Lam Carolyn S P, Ezekowitz Justin, Frost Matthew, Jiang Zhubo, Equilbec Cyril, Twing Aamir, Pellikka Patricia A, Frazin Leon, Kansal Mayank
Division of Cardiology, University of Illinois at Chicago, Chicago, Illinois; Jesse Brown VA Medical Center, Chicago, Illinois.
Department of Medicine, University of Illinois at Chicago, Chicago, Illinois.
J Am Soc Echocardiogr. 2023 Jul;36(7):769-777. doi: 10.1016/j.echo.2023.03.008. Epub 2023 Mar 22.
Aortic stenosis (AS) is a common form of valvular heart disease, present in over 12% of the population age 75 years and above. Transthoracic echocardiography (TTE) is the first line of imaging in the adjudication of AS severity but is time-consuming and requires expert sonographic and interpretation capabilities to yield accurate results. Artificial intelligence (AI) technology has emerged as a useful tool to address these limitations but has not yet been applied in a fully hands-off manner to evaluate AS. Here, we correlate artificial neural network measurements of key hemodynamic AS parameters to experienced human reader assessment.
Two-dimensional and Doppler echocardiographic images from patients with normal aortic valves and all degrees of AS were analyzed by an artificial neural network (Us2.ai) with no human input to measure key variables in AS assessment. Trained echocardiographers blinded to AI data performed manual measurements of these variables, and correlation analyses were performed.
Our cohort included 256 patients with an average age of 67.6 ± 9.5 years. Across all AS severities, AI closely matched human measurement of aortic valve peak velocity (r = 0.97, P < .001), mean pressure gradient (r = 0.94, P < .001), aortic valve area by continuity equation (r = 0.88, P < .001), stroke volume index (r = 0.79, P < .001), left ventricular outflow tract velocity-time integral (r = 0.89, P < .001), aortic valve velocity-time integral (r = 0.96, P < .001), and left ventricular outflow tract diameter (r = 0.76, P < .001).
Artificial neural networks have the capacity to closely mimic human measurement of all relevant parameters in the adjudication of AS severity. Application of this AI technology may minimize interscan variability, improve interpretation and diagnosis of AS, and allow for precise and reproducible identification and management of patients with AS.
主动脉瓣狭窄(AS)是一种常见的心脏瓣膜疾病形式,在75岁及以上人群中的发病率超过12%。经胸超声心动图(TTE)是判定AS严重程度的一线成像方法,但耗时且需要专业的超声检查和解读能力才能得出准确结果。人工智能(AI)技术已成为解决这些局限性的有用工具,但尚未以完全无需人工干预的方式应用于AS评估。在此,我们将关键血流动力学AS参数的人工神经网络测量结果与经验丰富的人类读者评估结果进行关联。
由人工神经网络(Us2.ai)在无人工输入的情况下分析正常主动脉瓣患者及所有程度AS患者的二维和多普勒超声心动图图像,以测量AS评估中的关键变量。对AI数据不知情的训练有素的超声心动图医生对这些变量进行手动测量,并进行相关性分析。
我们的队列包括256例患者,平均年龄为67.6±9.5岁。在所有AS严重程度中,AI与人类对主动脉瓣峰值速度(r = 0.97,P <.001)、平均压力阶差(r = 0.94,P <.001)、连续性方程计算的主动脉瓣面积(r = 0.88,P <.001)、每搏量指数(r = 0.79,P <.001)、左心室流出道速度时间积分(r = 0.89,P <.001)、主动脉瓣速度时间积分(r = 0.96,P <.001)和左心室流出道直径(r = 0.76,P <.001)的测量结果密切匹配。
人工神经网络有能力在判定AS严重程度时紧密模仿人类对所有相关参数的测量。这种AI技术的应用可能会使扫描间变异性最小化,改善AS的解读和诊断,并实现对AS患者的精确且可重复的识别和管理。