Department of Clinical Pharmacy, The 920th Hospital of Joint Logistics Support Force, 212 Daguan Rd, Kunming, 650032, China.
College of Pharmacy, Dali University, Dali, 671000, China.
J Transl Med. 2024 Aug 6;22(1):743. doi: 10.1186/s12967-024-05544-6.
Severe heart failure (HF) has a higher mortality during vulnerable period while targeted predictive tools, especially based on drug exposures, to accurately assess its prognoses remain largely unexplored. Therefore, this study aimed to utilize drug information as the main predictor to develop and validate survival models for severe HF patients during this period.
We extracted severe HF patients from the MIMIC-IV database (as training and internal validation cohorts) as well as from the MIMIC-III database and local hospital (as external validation cohorts). Three algorithms, including Cox proportional hazards model (CoxPH), random survival forest (RSF), and deep learning survival prediction (DeepSurv), were applied to incorporate the parameters (partial hospitalization information and exposure durations of drugs) for constructing survival prediction models. The model performance was assessed mainly using area under the receiver operator characteristic curve (AUC), brier score (BS), and decision curve analysis (DCA). The model interpretability was determined by the permutation importance and Shapley additive explanations values.
A total of 11,590 patients were included in this study. Among the 3 models, the CoxPH model ultimately included 10 variables, while RSF and DeepSurv models incorporated 24 variables, respectively. All of the 3 models achieved respectable performance metrics while the DeepSurv model exhibited the highest AUC values and relatively lower BS among these models. The DCA also verified that the DeepSurv model had the best clinical practicality.
The survival prediction tools established in this study can be applied to severe HF patients during vulnerable period by mainly inputting drug treatment duration, thus contributing to optimal clinical decisions prospectively.
严重心力衰竭(HF)在脆弱期的死亡率较高,而专门用于准确评估其预后的预测工具,尤其是基于药物暴露的预测工具,仍在很大程度上有待探索。因此,本研究旨在利用药物信息作为主要预测因素,为该时期的严重 HF 患者开发和验证生存模型。
我们从 MIMIC-IV 数据库(作为训练和内部验证队列)以及 MIMIC-III 数据库和当地医院(作为外部验证队列)中提取严重 HF 患者。应用三种算法,包括 Cox 比例风险模型(CoxPH)、随机生存森林(RSF)和深度学习生存预测(DeepSurv),将参数(部分住院信息和药物暴露持续时间)纳入构建生存预测模型。主要采用接收者操作特征曲线下面积(AUC)、Brier 得分(BS)和决策曲线分析(DCA)评估模型性能。通过置换重要性和 Shapley 加法解释值确定模型的可解释性。
共有 11590 名患者纳入本研究。在这 3 种模型中,CoxPH 模型最终纳入了 10 个变量,而 RSF 和 DeepSurv 模型分别纳入了 24 个变量。这 3 种模型的性能指标都相当可观,而 DeepSurv 模型在这些模型中具有最高的 AUC 值和相对较低的 BS。DCA 还验证了 DeepSurv 模型具有最佳的临床实用性。
本研究建立的生存预测工具可通过主要输入药物治疗持续时间应用于脆弱期的严重 HF 患者,从而有助于前瞻性地做出最佳临床决策。