Julakanti Raghav R, Padang Ratnasari, Scott Christopher G, Dahl Jordi, Al-Shakarchi Nader J, Metzger Coby, Lanyado Alon, Jackson John I, Nkomo Vuyisile T, Pellikka Patricia A
Department of Cardiovascular Medicine, Mayo Clinic, 200 First Street SW, Rochester, MN 55905, USA.
Division of Biomedical Statistics and Informatics, Mayo Clinic, Rochester, MN, USA.
Eur Heart J Digit Health. 2024 Nov 11;6(1):63-72. doi: 10.1093/ehjdh/ztae085. eCollection 2025 Jan.
Aortic stenosis (AS) is a common and progressive disease, which, if left untreated, results in increased morbidity and mortality. Monitoring and follow-up care can be challenging due to significant variability in disease progression. This study aimed to develop machine learning models to predict the risks of disease progression and mortality in patients with mild AS.
A comprehensive database including 9611 patients with serial transthoracic echocardiograms was collected from a single institution across three clinical sites. The data set included parameters from echocardiograms, electrocardiograms, laboratory values, and diagnosis codes. Data from a single clinical site were preserved as an independent test group. Machine learning models were trained to identify progression to severe stenosis and all-cause mortality and tested in their performance for endpoints at 2 and 5 years. In the independent test group, the AS progression model differentiated those with progression to severe AS within 2 and 5 years with an area under the curve (AUC) of 0.86 for both. The feature of greatest importance was aortic valve mean gradient, followed by other valve haemodynamic measurements including valve area and dimensionless index. The mortality model identified those with mortality within 2 and 5 years with an AUC of 0.84 and 0.87, respectively. Smaller reduced-input validation models had similarly robust findings.
Machine learning models can be used in patients with mild AS to identify those at high risk of disease progression and mortality. Implementation of such models may facilitate real-time, patient-specific follow-up recommendations.
主动脉瓣狭窄(AS)是一种常见的进行性疾病,若不治疗,会导致发病率和死亡率上升。由于疾病进展存在显著差异,监测和后续护理具有挑战性。本研究旨在开发机器学习模型,以预测轻度AS患者的疾病进展和死亡风险。
从一个机构的三个临床站点收集了一个包含9611例患者系列经胸超声心动图的综合数据库。数据集包括超声心动图、心电图、实验室检查值和诊断编码的参数。来自单个临床站点的数据被保留作为独立测试组。训练机器学习模型以识别进展为重度狭窄和全因死亡的情况,并测试其在2年和5年终点的性能。在独立测试组中,AS进展模型在2年和5年内区分出进展为重度AS的患者,曲线下面积(AUC)均为0.86。最重要的特征是主动脉瓣平均压差,其次是其他瓣膜血流动力学测量值,包括瓣口面积和无量纲指数。死亡模型在2年和5年内识别出死亡患者,AUC分别为0.84和0.87。较小的减少输入验证模型也有类似的稳健结果。
机器学习模型可用于轻度AS患者,以识别疾病进展和死亡风险高的患者。实施此类模型可能有助于进行实时、针对患者的随访建议。