Peng Shixuan, Chen Qisheng, Ke Weiqi, Wu Yongjun
Department of Oncology, The First People's Hospital of Xiangtan City, Xiangtan, Hunan, 411101, People's Republic of China.
Department of Oncology, Graduate Collaborative Training Base of The First People's Hospital of Xiangtan City, Hengyang Medical School, University of South China, Hengyang, Hunan, 421001, People's Republic of China.
Vasc Health Risk Manag. 2025 Jun 11;21:461-476. doi: 10.2147/VHRM.S511277. eCollection 2025.
Despite significant advancements in early reperfusion therapy and pharmacological treatment, which have reduced mortality rates after myocardial infarction in recent decades, the in-hospital mortality rate remains high due to factors such as rapid disease progression, comorbid conditions, and potential complications. We aimed to develop and validate a predictive model for in-hospital mortality in myocardial infarction patients.
LASSO regression analysis, univariate analysis, and multivariate logistic analysis were used to construct the nomogram in the training set, followed by model comparison, internal validation, and sensitivity analysis.
The analysis comprised 4688 patients in total. The population of patients was randomly assigned to the training set (n = 3512) and validation set (n = 1176). According to the results of LASSO regression analysis and other results, our nomogram contained a total of 10 independent variables related to patient death, including age, respiratory rate, blood glucose, lactate, PTT, BUN, cerebrovascular disease, chronic lung disease, mild liver disease, and metastatic solid cancer. Moreover, the web calculator and nomogram performed exceptionally well at predicting in-hospital death in myocardial infarction patients. The AUC for the training and validation sets' respective prediction models was 0.869 (95% CI: 0.849-0.889) and 0.846 (95% CI: 0.807-0.875) (<0.01). Compared to the Sequential Organ Failure Assessment (SOFA), the nomogram showed greater discrimination in the training and validation sets, and the calibration plots demonstrated an adequate fit for the nomogram in predicting the risk of in-hospital mortality in both groups. The decision curve analysis (DCA) of the nomogram demonstrated a higher net benefit in the training and validation sets and in terms of clinical usefulness than the SOFA.
We developed a useful nomogram model and developed a nomogram-based web calculator to predict in-hospital mortality in myocardial infarction patients, which will support doctors in patient counseling and logical diagnosis and therapy.
尽管早期再灌注治疗和药物治疗取得了显著进展,近几十年来心肌梗死后的死亡率有所降低,但由于疾病进展迅速、合并症和潜在并发症等因素,住院死亡率仍然很高。我们旨在开发并验证一种预测心肌梗死患者住院死亡率的模型。
在训练集中使用套索回归分析、单因素分析和多因素逻辑分析来构建列线图,随后进行模型比较、内部验证和敏感性分析。
分析共纳入4688例患者。患者群体被随机分为训练集(n = 3512)和验证集(n = 1176)。根据套索回归分析结果和其他结果,我们的列线图共包含10个与患者死亡相关的独立变量,包括年龄、呼吸频率、血糖、乳酸、部分凝血活酶时间、血尿素氮、脑血管疾病、慢性肺病、轻度肝病和转移性实体癌。此外,网络计算器和列线图在预测心肌梗死患者住院死亡方面表现出色。训练集和验证集各自预测模型的曲线下面积(AUC)分别为0.869(95%可信区间:0.849 - 0.889)和0.846(95%可信区间:0.807 - 0.875)(P < 0.01)。与序贯器官衰竭评估(SOFA)相比,列线图在训练集和验证集中显示出更大的区分度,校准图表明列线图在预测两组患者住院死亡风险方面拟合良好。列线图的决策曲线分析(DCA)显示,在训练集和验证集中以及在临床实用性方面,其净效益均高于SOFA。
我们开发了一个有用的列线图模型,并开发了基于列线图的网络计算器来预测心肌梗死患者的住院死亡率,这将有助于医生进行患者咨询以及合理的诊断和治疗。