Gao Yuan, Peng Lu, Liu Jianglin, Zhao Cuifen
Department of Pediatrics, Qilu Hospital of Shandong University, Jinan, 250012, China.
Clin Rheumatol. 2025 Feb;44(2):799-809. doi: 10.1007/s10067-025-07321-2. Epub 2025 Jan 14.
We aimed to develop a useful nomogram for early identification of Kawasaki disease (KD) children at a high risk of intravenous immunoglobulin (IVIG) resistance and coronary artery lesion (CAL) complications to improve KD management.
Clinical data from 400 patients treated at our hospital between January 1, 2016, and December 31, 2023, were collected. Lasso regression was utilized to screen risk factors for IVIG resistance and CAL involvement. Subsequently, a Logistic regression model incorporating parameters screened by Lasso regression was established and visualized as a nomogram. The discrimination, calibration, clinical applicability, and universality of the model were evaluated using receiver operating characteristic (ROC) curves, calibration curves, decision curve analysis (DCA), and internal validation.
NEU%, HDL-C, and MHR were identified as predictors of IVIG resistance by Lasso regression, with C-index of the Logistic model being 0.886 for the training set and 0.855 for the validation set. For predicting CAL development, sex, fever date before the first IVIG administration, KD type, and the level of HDL-C and MHR were the optimal variables, yielding C-index of 0.915 and 0.866 for the training and validation set, respectively. Calibration curves for both validation sets performed well, indicating strong predictive abilities of the models.
We established a nomogram for predicting IVIG resistance that incorporates NEU%, HDL-C, and MHR and a second nomogram for CAL complications incorporating sex, fever date, KD type, and the level of HDL-C and MHR in KD patients, based on the Lasso-Logistic regression model. These nomograms were of guiding significance for screening KD children at high risk of developing IVIG resistance and CAL complications, thereby improving prognosis. Key Points • Two nomograms were established to predict IVIG resistance and CAL complications in KD patients, based on the Lasso-Logistic regression model.
我们旨在开发一种实用的列线图,用于早期识别静脉注射免疫球蛋白(IVIG)抵抗和冠状动脉病变(CAL)并发症高风险的川崎病(KD)患儿,以改善KD的管理。
收集了2016年1月1日至2023年12月31日在我院接受治疗的400例患者的临床数据。采用Lasso回归筛选IVIG抵抗和CAL累及的危险因素。随后,建立了一个包含Lasso回归筛选参数的Logistic回归模型,并将其可视化为列线图。使用受试者工作特征(ROC)曲线、校准曲线、决策曲线分析(DCA)和内部验证对模型的辨别力、校准度、临床适用性和普遍性进行评估。
Lasso回归确定中性粒细胞百分比(NEU%)、高密度脂蛋白胆固醇(HDL-C)和单核细胞与高密度脂蛋白胆固醇比值(MHR)为IVIG抵抗的预测因子,Logistic模型在训练集的C指数为0.886,在验证集为0.855。对于预测CAL的发生,性别、首次IVIG给药前的发热天数、KD类型以及HDL-C和MHR水平是最佳变量,训练集和验证集的C指数分别为0.915和0.866。两个验证集的校准曲线表现良好,表明模型具有较强的预测能力。
基于Lasso-Logistic回归模型,我们建立了一个包含NEU%、HDL-C和MHR的预测IVIG抵抗的列线图,以及一个包含KD患者性别、发热天数、KD类型以及HDL-C和MHR水平的预测CAL并发症的列线图。这些列线图对于筛查发生IVIG抵抗和CAL并发症高风险的KD患儿具有指导意义,从而改善预后。要点•基于Lasso-Logistic回归模型建立了两个列线图,用于预测KD患者的IVIG抵抗和CAL并发症。