A Nomogram for Predicting Coronary Artery Lesions in Patients with Kawasaki Disease

Author:

Xuan Wenjie1,Liu Xiaoqun1,Yao Yinping1,Wang Yayun1,Lin Jinjing1,Chen Xiaohong1,Yao Huanying1

Affiliation:

1. Shaoxing People's Hospital

Abstract

Abstract Background As an acute systemic vasculitis, Kawasaki disease (KD) could develop coronary artery lesions (CAL) sometimes. However, its etiology was still unidentified. This study was to construct a predictive model based on clinical features and laboratory parameters, and then perform a rapid risk assessment of CAL. Methods We collected clinical and laboratory data retrospectively for all patients with KD who were hospitalized at our hospital from January 2016 to June 2023. All the patients were divided into CAL and non-CAL groups and then randomly assigned to a training set and a verification set. The independent risk variables of CAL were identified by univariate analysis and multivariate logistic regression analysis of the training set. These components were then utilized to build a predictive nomogram. Calibration curve and receiver operating characteristic curve were used to evaluate the performance of the model. The predictive nomogram was further validated in verification set. Results In the training set, 49 KD patients (19.9%) showed CAL. The proportion of fever days ≥ 10, C-reactive protein, total bilirubin were significantly higher, whereas age was younger, hemoglobin and albumin were lower in the CAL group than the non-CAL group. Younger age, fever days ≥ 10, higher C-reactive protein, lower hemoglobin and albumin were identified as independent risk factors. The nomogram constructed using these factors showed satisfactory calibration degree and discriminatory power (the area under the curve, 0.764). In the verification set, the area under the curve was 0.798. Conclusions Younger age, fever days longer than 10, lower hemoglobin and albumin levels, higher C-reactive protein levels were independent risk factors for CAL in KD patients. The predictive nomogram constructed utilizing 5 relevant risk factors could be conveniently used to facilitate the individualized prediction of CAL in KD patients.

Publisher

Research Square Platform LLC

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