基于心电图的机器学习模拟器模型用于预测心脏风险分层的新型超声心动图衍生表型:一项前瞻性多中心队列研究。

IF 1.6 Q3 HEALTH CARE SCIENCES & SERVICES Journal of Patient-Centered Research and Reviews Pub Date : 2022-04-18 eCollection Date: 2022-01-01 DOI:10.17294/2330-0698.1893
Heenaben B Patel, Naveena Yanamala, Brijesh Patel, Sameer Raina, Peter D Farjo, Srinidhi Sunkara, Márton Tokodi, Nobuyuki Kagiyama, Grace Casaclang-Verzosa, Partho P Sengupta
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引用次数: 0

摘要

目的心电图(ECG)衍生的机器学习模型可以预测超声心动图(echo)衍生的收缩或舒张功能指标。然而,收缩和舒张功能障碍经常共存,这就需要对最佳风险分层进行综合评估。我们探索了一种心电图衍生模型,该模型模拟了回声衍生模型,该模型结合了多个参数,用于识别具有重大心脏不良事件(MACE)风险的患者表型组。方法在本前瞻性多中心研究的亚研究中,来自3个机构(n=727)的患者组成内部队列,保留第4个机构作为外部测试集(n=518)。使用先前验证的患者相似性分析模型将患者标记为低/高风险表型组。这些标签被用于训练心电图衍生的深度神经网络模型,以预测每个表型组的MACE风险。经过5次交叉验证训练后,在保留的外部数据集上对模型进行测试。结果我们的心电图衍生模型对患者进行了稳健的分类,受试者工作特征曲线下面积分别为0.86 (95% CI: 0.79-0.91)和0.84 (95% CI: 0.80-0.87),灵敏度分别为80%和76%,特异性分别为88%和75%。心电图衍生模型显示,高风险患者与低风险患者发生MACE的可能性增加(21%对3%;P<0.001),与回声训练模型相似(21% vs 5%;P<0.001),表明具有可比性。结论:这种新的心电图衍生的机器学习模型为预测收缩期和舒张期功能障碍综合环境与MACE高风险相关的患者亚组提供了一种经济有效的策略。
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Electrocardiogram-Based Machine Learning Emulator Model for Predicting Novel Echocardiography-Derived Phenogroups for Cardiac Risk-Stratification: A Prospective Multicenter Cohort Study.

Purpose: Electrocardiography (ECG)-derived machine learning models can predict echocardiography (echo)-derived indices of systolic or diastolic function. However, systolic and diastolic dysfunction frequently coexists, which necessitates an integrated assessment for optimal risk-stratification. We explored an ECG-derived model that emulates an echo-derived model that combines multiple parameters for identifying patient phenogroups at risk for major adverse cardiac events (MACE).

Methods: In this substudy of a prospective, multicenter study, patients from 3 institutions (n=727) formed an internal cohort, and the fourth institution was reserved as an external test set (n=518). A previously validated patient similarity analysis model was used for labeling the patients as low-/high-risk phenogroups. These labels were utilized for training an ECG-derived deep neural network model to predict MACE risk per phenogroup. After 5-fold cross-validation training, the model was tested on the reserved external dataset.

Results: Our ECG-derived model showed robust classification of patients, with area under the receiver operating characteristic curve of 0.86 (95% CI: 0.79-0.91) and 0.84 (95% CI: 0.80-0.87), sensitivity of 80% and 76%, and specificity of 88% and 75% for the internal and external test sets, respectively. The ECG-derived model demonstrated an increased probability for MACE in high-risk vs low-risk patients (21% vs 3%; P<0.001), which was similar to the echo-trained model (21% vs 5%; P<0.001), suggesting comparable utility.

Conclusions: This novel ECG-derived machine learning model provides a cost-effective strategy for predicting patient subgroups in whom an integrated milieu of systolic and diastolic dysfunction is associated with a high risk of MACE.

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来源期刊
Journal of Patient-Centered Research and Reviews
Journal of Patient-Centered Research and Reviews HEALTH CARE SCIENCES & SERVICES-
自引率
5.90%
发文量
35
审稿时长
20 weeks
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