Bits Pilani KK Birla Goa Campus, Goa, India.
Canadian VIGOUR Centre, University of Alberta, Alberta, Canada; Department of Computing Science, University of Alberta, Edmonton, Alberta, Canada; Faculty of Medicine & Dentistry, University of Alberta, Alberta, Canada.
EBioMedicine. 2023 Apr;90:104479. doi: 10.1016/j.ebiom.2023.104479. Epub 2023 Feb 28.
Echocardiography (echo) based machine learning (ML) models may be useful in identifying patients at high-risk of all-cause mortality.
We developed ML models (ResNet deep learning using echo videos and CatBoost gradient boosting using echo measurements) to predict 1-year, 3-year, and 5-year mortality. Models were trained on the Mackay dataset, Taiwan (6083 echos, 3626 patients) and validated in the Alberta HEART dataset, Canada (997 echos, 595 patients). We examined the performance of the models overall, and in subgroups (healthy controls, at risk of heart failure (HF), HF with reduced ejection fraction (HFrEF) and HF with preserved ejection fraction (HFpEF)). We compared the models' performance to the MAGGIC risk score, and examined the correlation between the models' predicted probability of death and baseline quality of life as measured by the Kansas City Cardiomyopathy Questionnaire (KCCQ).
Mortality rates at 1-, 3- and 5-years were 14.9%, 28.6%, and 42.5% in the Mackay cohort, and 3.0%, 10.3%, and 18.7%, in the Alberta HEART cohort. The ResNet and CatBoost models achieved area under the receiver-operating curve (AUROC) between 85% and 92% in internal validation. In external validation, the AUROCs for the ResNet (82%, 82%, and 78%) were significantly better than CatBoost (78%, 73%, and 75%), for 1-, 3- and 5-year mortality prediction respectively, with better or comparable performance to the MAGGIC score. ResNet models predicted higher probability of death in the HFpEF and HFrEF (30%-50%) subgroups than in controls and at risk patients (5%-20%). The predicted probabilities of death correlated with KCCQ scores (all p < 0.05).
Echo-based ML models to predict mortality had good internal and external validity, were generalizable, correlated with patients' quality of life, and are comparable to an established HF risk score. These models can be leveraged for automated risk stratification at point-of-care.
Funding for Alberta HEART was provided by an Alberta Innovates - Health Solutions Interdisciplinary Team Grant no. AHFMRITG 200801018. P.K. holds a Canadian Institutes of Health Research (CIHR) Sex and Gender Science Chair and a Heart & Stroke Foundation Chair in Cardiovascular Research. A.V. and V.S. received funding from the Mitacs Globalink Research Internship.
基于超声心动图的机器学习(ML)模型可能有助于识别全因死亡率高的患者。
我们开发了 ML 模型(使用超声心动图视频的 ResNet 深度学习和使用超声心动图测量值的 CatBoost 梯度提升)来预测 1 年、3 年和 5 年的死亡率。模型在台湾 Mackay 数据集(6083 个超声心动图,3626 名患者)上进行训练,并在加拿大阿尔伯塔省心脏数据集(997 个超声心动图,595 名患者)上进行验证。我们总体上检查了模型的性能,并在亚组(健康对照组、心力衰竭风险组(HF)、射血分数降低的心力衰竭组(HFrEF)和射血分数保留的心力衰竭组(HFpEF))中进行了检查。我们将模型的性能与 MAGGIC 风险评分进行了比较,并检查了模型预测的死亡概率与基线生活质量(通过堪萨斯城心肌病问卷(KCCQ)测量)之间的相关性。
在 Mackay 队列中,1 年、3 年和 5 年的死亡率分别为 14.9%、28.6%和 42.5%,在阿尔伯塔省心脏队列中分别为 3.0%、10.3%和 18.7%。ResNet 和 CatBoost 模型在内部验证中的受试者工作特征曲线(AUROC)在 85%到 92%之间。在外部验证中,ResNet(82%、82%和 78%)的 AUROC 分别显著优于 CatBoost(78%、73%和 75%),用于预测 1 年、3 年和 5 年的死亡率,与 MAGGIC 评分的性能相当或更好。ResNet 模型预测 HFpEF 和 HFrEF(30%-50%)亚组的死亡概率高于对照组和高危患者(5%-20%)。预测的死亡概率与 KCCQ 评分相关(均 P<0.05)。
用于预测死亡率的基于超声心动图的 ML 模型具有良好的内部和外部有效性,可推广,与患者的生活质量相关,与既定的心力衰竭风险评分相当。这些模型可以在护理点进行自动风险分层。
阿尔伯塔省心脏的资助由加拿大艾伯塔省创新公司 - 健康解决方案跨学科团队拨款(项目编号:AHFMRITG 200801018)提供。P.K. 拥有加拿大卫生研究院(CIHR)性别科学主席和心脏与中风基金会心血管研究主席职位。A.V. 和 V.S. 获得了 Mitacs 全球实习研究员奖学金的资助。