Division of Cardiology, Mount Sinai Heart, Icahn School of Medicine at Mount Sinai St. Luke's, New York, NY, USA.
Department of Internal Medicine, Icahn School of Medicine at Mount Sinai, New York, NY, USA.
Echocardiography. 2020 Apr;37(4):505-519. doi: 10.1111/echo.14638. Epub 2020 Mar 17.
Patients undergoing exercise echocardiography with no evidence of myocardial ischemia are considered a low-risk group; however, this group is likely heterogeneous in terms of short-term adverse events and subsequent cardiac testing. We hypothesized that unsupervised cluster modeling using clinical and stress characteristics can detect heterogeneity in cardiovascular risk and need for subsequent cardiac testing among these patients.
We retrospectively studied 445 patients who had exercise echocardiography results negative for myocardial ischemia. All patients were followed for adverse cardiovascular events, subsequent cardiac testing, and nonacute coronary syndrome (ACS) revascularization. The heterogeneity of the study subjects was tested using computational clustering, an exploratory statistical method designed to uncover invisible natural groups within data. Clinical and stress predictors of adverse events were extracted and used to construct 3 unsupervised cluster models: clinical, stress, and combined. The study population was split into training (357 patients) and testing sets (88 patients).
In the training set, the clinical, stress, and combined cluster models yielded 5, 4, and 3 clusters, respectively. Each model had 1 high-risk and 1 low-risk cluster while other clusters were intermediate. The combined model showed a better predictive ability compared to the clinical or stress models alone. The need for future testing mirrored the pattern of adverse cardiovascular events. A risk score derived from the combined cluster model predicted end points with acceptable accuracy. The patterns of risk and the calculated risk scores were preserved in the testing set.
Patients with no evidence of ischemia on exercise stress echocardiography represent a heterogeneous group. Cluster-based modeling using combined clinical and stress characteristics can expose this heterogeneity. The findings can help better risk-stratify this group of patients and aid cost-effective healthcare utilization toward better diagnostics and therapeutics.
接受运动超声心动图检查且无心肌缺血证据的患者被认为是低风险人群;然而,就短期不良事件和随后的心脏检查而言,该人群可能存在异质性。我们假设,使用临床和应激特征的无监督聚类建模可以检测出这些患者的心血管风险和随后进行心脏检查的需求的异质性。
我们回顾性研究了 445 例运动超声心动图结果为心肌缺血阴性的患者。所有患者均随访不良心血管事件、随后的心脏检查和非急性冠脉综合征(ACS)血运重建情况。使用计算聚类(一种旨在揭示数据中隐藏的自然群体的探索性统计方法)测试研究对象的异质性。提取临床和应激不良事件预测因子,并用于构建 3 个无监督聚类模型:临床、应激和综合。将研究人群分为训练集(357 例)和测试集(88 例)。
在训练集中,临床、应激和综合聚类模型分别产生了 5、4 和 3 个聚类。每个模型都有 1 个高危和 1 个低危聚类,而其他聚类则为中危。综合模型的预测能力优于临床或应激模型。未来的检查需求反映了不良心血管事件的模式。源自综合聚类模型的风险评分可准确预测终点。风险模式和计算出的风险评分在测试集中得以保留。
运动应激超声心动图检查无缺血证据的患者代表了一个异质群体。使用综合临床和应激特征的基于聚类的建模可以揭示这种异质性。研究结果可以帮助更好地对这群患者进行风险分层,并有助于通过更好的诊断和治疗来实现更具成本效益的医疗保健利用。