Yang Huihui, Dou Jie, Guo Ruoling, Sun Mingliang, Gao Jie, Shu Hong-Jun, Sun Hewei, Zhao Xintao, Song Yuhua, Hou Yanchun, Wang Xiaojun, Luo Donglei
Graduate School of Chengde Medical University, Chengde, 06700, China.
Department of Cardiology, Chengde Central Hospital, Second Clinical College of Chengde Medical University, Chengde, 067000, China.
Lipids Health Dis. 2025 Feb 25;24(1):72. doi: 10.1186/s12944-025-02486-w.
Coronary heart disease (CHD) represents a severe form of ischemic cardiac condition that necessitates timely and accurate diagnosis. Although coronary angiography (CAG) remains widely used to detect CHD, healthcare facilities, medical expenses, and equipment technology often limit its availability. Therefore, it is imperative to identify a non-invasive diagnostic approach with high accuracy for CHD.
This cross-sectional research included patients with chest pain (≥ 18 years) hospitalized at Chengde Central Hospital between September 2020 and March 2024. Among the participants, 70% were split into the training, and 30% were randomly entered into the validation sets. In the training dataset, univariate and multivariate logistic regression analyses were rigorously employed to ascertain predictors of CHD. A model was formulated by incorporating these predictors in a nomogram, which was evaluated for accuracy using calibration curves. The model's discrimination was quantified by calculating the area under the receiver operating characteristic (ROC) curve, denoted as the area under the curve (AUC), and its clinical application value was determined through decision curve analysis (DCA). Finally, we compare our model against the pretest probability (PTP) calculated by the Update Diamond-Forrester Model (UDFM) as recommended by the ECS guidelines to comprehensively assess its performance.
This study included 1501 patients who presented with chest pain, with a mean age of 60.45 years, 865 males (57.60%). Multivariate logistic regression analysis revealed TyG index, MHR, male, age, diabetes, systolic blood pressure (SBP), regional wall motion abnormality (RWMA), ST-T changes, and low-density lipoprotein cholesterol (LDL-C) as independent predictors of CHD. A novel nomogram incorporating these independent risk factors exhibited high accuracy and perfect consistency, with a training set AUC calculated to be 0.733 (95% CI: 0.698-0.768), and the validation set maintained a strong performance at 0.721 (95% CI: 0.663-0.779). The calibration curves and the Hosmer-Lemeshow test confirmed the well-fitting model (P = 0.576 and P = 0.694). ROC curve analysis and DCA demonstrated that the model has robust forecasting capability.
The nomogram model in this study exhibited good discriminative ability, calibration, and a favorable net benefit. Its predictive performance exceeds that of the traditional PTP tool and may serve as a non-invasive and promising approach to aid clinicians in the early identification of CHD risk in patients presenting with chest pain.
冠心病(CHD)是一种严重的缺血性心脏病,需要及时准确的诊断。尽管冠状动脉造影(CAG)仍然广泛用于检测冠心病,但医疗设施、医疗费用和设备技术常常限制了其可用性。因此,必须确定一种用于冠心病的高精度非侵入性诊断方法。
这项横断面研究纳入了2020年9月至2024年3月在承德市中心医院住院的胸痛患者(≥18岁)。在参与者中,70%被分为训练集,30%被随机纳入验证集。在训练数据集中,严格采用单变量和多变量逻辑回归分析来确定冠心病的预测因素。通过将这些预测因素纳入列线图来构建模型,并使用校准曲线评估其准确性。通过计算受试者操作特征(ROC)曲线下的面积(表示为曲线下面积,AUC)来量化模型的辨别力,并通过决策曲线分析(DCA)确定其临床应用价值。最后,我们将我们的模型与欧洲心脏病学会(ESC)指南推荐的更新版钻石-福雷斯特模型(UDFM)计算的验前概率(PTP)进行比较,以全面评估其性能。
本研究纳入了1501例胸痛患者,平均年龄60.45岁,男性865例(57.60%)。多变量逻辑回归分析显示,TyG指数、心率变异性(MHR)、男性、年龄、糖尿病、收缩压(SBP)、室壁运动异常(RWMA)、ST-T改变和低密度脂蛋白胆固醇(LDL-C)是冠心病的独立预测因素。纳入这些独立危险因素的新型列线图显示出高精度和完美的一致性,训练集AUC计算为0.7