Zhejiang Chinese Medical University, Hangzhou, Zhejiang, China
Lishui Municipal Central Hospital, the Fifth Affiliated Hospital of Wenzhou Medical University, Lishui, Zhejiang, China
Pol Arch Intern Med. 2023 Jan 24;133(1). doi: 10.20452/pamw.16325. Epub 2022 Aug 23.
Nomograms of prognosis in patients with a history of cardiac arrest (CA) have been established. However, there are some shortcomings and interferences in their clinical application.
Our study aimed at developing a utility nomogram to predict the risk of in‑hospital death in post‑CA patients.
We retrospectively extracted data from the MIMIC‑IV database. The least absolute shrinkage and selection operator logistic regression and multivariable logistic regression were used to investigate independent risk factors. A nomogram defined as a prediction model was established for these independent risk factors. The model performance was measured by examining discrimination (area under the receiver operating characteristic curve [AUC]), calibration (calibration curve analysis), and utility (decision curve analysis [DCA]).
A total of 1724 post‑CA patients were enrolled in the study. Of those, 788 survived and 936 died. The incidence of in‑hospital death was 54.3%. In this nomogram, the predictors included age, malignant cancer, bicarbonate, blood urea nitrogen, sodium, heart rate, respiratory rate, temperature, SPO2, norepinephrine prescription, and lactate level. The internally validated nomogram showed good discrimination (AUC 0.801; 95% CI, 0.775-0.835). The calibration curve analysis and DCA confirmed that this prediction model can be clinically useful.
We established a risk prediction model based on the admission characteristics to accurately predict the clinical outcome in post‑CA patients. The nomogram might help with the risk identification and individual clinical interventions.
已有用于预测有心脏骤停(CA)病史患者预后的列线图。然而,它们在临床应用中存在一些缺点和干扰。
本研究旨在开发一种效用列线图来预测 CA 后患者住院期间死亡的风险。
我们从 MIMIC-IV 数据库中回顾性提取数据。使用最小绝对收缩和选择算子逻辑回归和多变量逻辑回归来研究独立的危险因素。将这些独立危险因素定义为预测模型的列线图建立。通过检查判别能力(接受者操作特征曲线下面积[AUC])、校准(校准曲线分析)和效用(决策曲线分析[DCA])来衡量模型性能。
共纳入 1724 例 CA 后患者,其中 788 例存活,936 例死亡,住院死亡率为 54.3%。在这个列线图中,预测因子包括年龄、恶性肿瘤、碳酸氢盐、血尿素氮、钠、心率、呼吸频率、体温、SPO2、去甲肾上腺素处方和乳酸水平。内部验证的列线图显示出良好的判别能力(AUC 0.801;95%CI,0.775-0.835)。校准曲线分析和 DCA 证实了该预测模型具有临床应用价值。
我们建立了一个基于入院特征的风险预测模型,可以准确预测 CA 后患者的临床结局。该列线图有助于识别风险和进行个体化临床干预。