Gupta Aashray K, Mustafiz Cecil, Mutahar Daud, Zaka Ammar, Parvez Razeen, Mridha Naim, Stretton Brandon, Kovoor Joshua G, Bacchi Stephen, Ramponi Fabio, Chan Justin C Y, Zaman Sarah, Chow Clara, Kovoor Pramesh, Bennetts Jayme S, Maddern Guy J
Discipline of Surgery, University of Adelaide, Adelaide, Australia.
School of Medicine and Dentistry, Griffith University, Southport, Australia.
Can J Cardiol. 2025 Aug;41(8):1564-1583. doi: 10.1016/j.cjca.2025.01.037. Epub 2025 Feb 17.
Acute coronary syndrome (ACS) remains one of the leading causes of death globally. Accurate and reliable mortality risk prediction of ACS patients is essential for developing targeted treatment strategies and improve prognostication. Traditional models for risk stratification such as the GRACE and TIMI risk scores offer moderate discriminative value, and do not incorporate contemporary predictors of ACS prognosis. Machine learning (ML) models have emerged as an alternate method that may offer improved risk assessment. This review compares ML models with traditional risk scores for predicting all-cause mortality in patients with ACS.
PubMed, Embase, Web of Science, Cochrane, CINAHL, Scopus, and IEEE XPlore databases were searched through October 30, 2024, as well as Google Scholar and manual screening of reference lists from included studies and the grey literature for studies comparing ML models with traditional statistical methods for event prediction of ACS patients. The primary outcome was comparative discrimination measured by C-statistics with 95% confidence intervals (CIs) in estimating risk of all-cause mortality.
Twelve studies were included (250,510 patients). The summary C-statistic of best-performing ML models across all end points was 0.88 (95% CI 0.86-0.91), compared with 0.82 (95% CI 0.80-0.85) for traditional methods. The difference in C-statistic between ML models and traditional methods was 0.06 (P < 0.0007). Five studies undertook external validation. The PROBAST tool demonstrated high risk of bias for all studies. Common sources of bias included reporting bias and selection bias. Best-performing ML models demonstrated superior discrimination of all-cause mortality for ACS patients compared with traditional risk scores.
Despite outperforming well established prognostic tools such as the GRACE and TIMI scores, current clinical applications of ML approaches remain uncertain, particularly in view of the need for greater model validation.
急性冠状动脉综合征(ACS)仍然是全球主要的死亡原因之一。准确可靠地预测ACS患者的死亡风险对于制定针对性的治疗策略和改善预后至关重要。传统的风险分层模型,如GRACE和TIMI风险评分,具有中等的鉴别价值,且未纳入ACS预后的当代预测因素。机器学习(ML)模型已成为一种可能提供改进风险评估的替代方法。本综述比较了ML模型与传统风险评分在预测ACS患者全因死亡率方面的差异。
检索了截至2024年10月30日的PubMed、Embase、Web of Science、Cochrane、CINAHL、Scopus和IEEE XPlore数据库,以及谷歌学术,并对纳入研究的参考文献列表和灰色文献进行人工筛选,以查找比较ML模型与传统统计方法用于ACS患者事件预测的研究。主要结局是通过C统计量及其95%置信区间(CI)衡量的比较鉴别能力,用于估计全因死亡率风险。
纳入了12项研究(共250,510例患者)。所有终点中表现最佳的ML模型的汇总C统计量为0.88(95%CI 0.86 - 0.91),而传统方法为0.82(95%CI 0.80 - 0.85)。ML模型与传统方法之间C统计量的差异为0.06(P < 0.0007)。5项研究进行了外部验证。PROBAST工具显示所有研究均存在高偏倚风险。常见的偏倚来源包括报告偏倚和选择偏倚。与传统风险评分相比,表现最佳的ML模型对ACS患者全因死亡率的鉴别能力更强。
尽管ML方法优于GRACE和TIMI评分等成熟的预后工具,但目前ML方法在临床中的应用仍不确定,特别是考虑到需要进行更大规模的模型验证。