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基于初次治疗前获得的人口统计学和实验室数据开发的机器学习模型预测冠状动脉瘤的性能有限。

Limited Performance of Machine Learning Models Developed Based on Demographic and Laboratory Data Obtained Before Primary Treatment to Predict Coronary Aneurysms.

作者信息

Kim Mi-Jin, Kim Gi-Beom, Yang Dongha, Jang Yeon-Jin, Yu Jeong-Jin

机构信息

Department of Pediatrics, Asan Medical Center, University of Ulsan College of Medicine, 88, Olympic-ro 43-Gil, Songpa-Gu, Seoul 05505, Republic of Korea.

Department of Pediatrics, Seoul National University Children's Hospital, Seoul 03080, Republic of Korea.

出版信息

Biomedicines. 2025 Apr 29;13(5):1073. doi: 10.3390/biomedicines13051073.

Abstract

: Kawasaki disease is the leading cause of acquired heart disease in children within developed countries. Although treatment with intravenous immunoglobulin (IVIG) significantly reduces the incidence of coronary artery aneurysm (CAA), the risk of it persists, affecting long-term patient outcomes. While intensified primary treatment is recommended for patients at high risk of IVIG resistance or CAA development, a universally accepted predictive model for such resistance remains unestablished. This study aims to develop a machine learning model to predict the occurrence of CAAs prior to initiating IVIG therapy. : Data from two nationwide epidemiological surveys conducted between 2012 and 2017 were analyzed, encompassing 17,189 patients with calculable coronary artery z-scores and Harada scores. Various supervised machine learning algorithms were applied to develop a model for predicting CAA. Afterward, unsupervised learning techniques were employed to explore the data's inherent structure. : The Harada score's receiver operating characteristic (ROC) analysis yielded an area under the curve (AUC) of 0.558. The highest AUC among the machine learning models was 0.661, achieved by the Light Gradient Boosting Machine. However, this model's sensitivity was 0.615, and specificity was 0.647, indicating limited clinical applicability. Unsupervised learning revealed no distinct distribution patterns between patients with/without CAAs. : Despite utilizing a large dataset to develop a machine learning-based prediction model for CAAs, the performance was unsatisfactory. Future studies should focus on enhancing predictive models by incorporating additional clinical data, such as acute-phase coronary artery diameter measurements, to improve accuracy and clinical utility.

摘要

川崎病是发达国家儿童后天性心脏病的主要病因。尽管静脉注射免疫球蛋白(IVIG)治疗可显著降低冠状动脉瘤(CAA)的发病率,但该病风险依然存在,影响患者长期预后。虽然对于有IVIG抵抗或CAA发生高风险的患者推荐强化初始治疗,但尚未建立一个被普遍接受的此类抵抗预测模型。本研究旨在开发一种机器学习模型,以在开始IVIG治疗前预测CAA的发生。

对2012年至2017年间进行的两项全国性流行病学调查数据进行了分析,涵盖17189例可计算冠状动脉z评分和原田评分的患者。应用各种监督式机器学习算法开发预测CAA的模型。之后,采用无监督学习技术探索数据的内在结构。

原田评分的受试者工作特征(ROC)分析得出曲线下面积(AUC)为0.558。机器学习模型中最高的AUC为0.661,由轻梯度提升机实现。然而,该模型的敏感性为0.615,特异性为0.647,表明临床适用性有限。无监督学习未发现有/无CAA患者之间存在明显的分布模式。

尽管利用了一个大型数据集来开发基于机器学习的CAA预测模型,但其性能并不理想。未来的研究应专注于通过纳入额外的临床数据(如急性期冠状动脉直径测量)来增强预测模型,以提高准确性和临床实用性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8a21/12108861/53ed12717318/biomedicines-13-01073-g001.jpg

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