Yücel Gül, Arslan Ahmet Kadir, Özgör Bilge, Güngör Serdal
Inonu University, Malatya, Turkey
Pediatric Neurology, İnönü Üniversitesi Tıp Fakültesi, Malatya, Turkey.
BMJ Paediatr Open. 2025 Jun 3;9(1):e002908. doi: 10.1136/bmjpo-2024-002908.
This study aimed to develop a risk prediction model based on association rule mining to predict recurrent febrile seizures (RFS).
This is a retrospective observational study that examined the medical records of 105 children who were followed up with febrile seizure (FS) in a tertiary paediatric emergency department between October 2022 and December 2023. Children were divided into RFS and simple FS groups. RFS was defined as seizures occurring more than once within 24 hours of the first FS in the same febrile illness. Risk factors associated with RFS were determined by univariate and multivariate analyses. χ, Mann-Whitney U, receiver operating characteristics (ROC), multiple logistic regression and Classification Based on Association Rules Algorithm (CBA) analyses were applied to the dataset to obtain high-level outputs.
RFS was detected in 32 out of 105 cases with FS (30.5%). Potential risk factors contributing to the development of RFS were seizure duration, number of recurrent seizures, family history, body temperature, time from fever onset to seizure, time from seizure onset to arrival at the emergency department, hyponatraemia, osmotic pressure and low haemoglobin level. The CBA algorithm obtained a total of 11 classification rules for the two patient groups. Additionally, the cut-off values obtained from CBA and ROC analysis showed satisfactory consistency. The CBA model achieved 97% overall accuracy classification performance.
The developed CBA model shows good predictive ability for RFS. The relevant model can be used as a risk estimation tool to identify children at risk of developing RFS.
本研究旨在基于关联规则挖掘开发一种风险预测模型,以预测复发性热性惊厥(RFS)。
这是一项回顾性观察研究,研究对象为2022年10月至2023年12月期间在一家三级儿科急诊科接受热性惊厥(FS)随访的105名儿童的病历。将儿童分为RFS组和单纯FS组。RFS定义为在同一次发热性疾病中,首次FS发作后24小时内发作超过一次。通过单因素和多因素分析确定与RFS相关的危险因素。对数据集应用χ检验、曼-惠特尼U检验、受试者工作特征(ROC)曲线分析、多元逻辑回归分析和基于关联规则算法的分类(CBA)分析,以获得高级输出结果。
105例FS患儿中,32例(30.5%)检测到RFS。导致RFS发生的潜在危险因素包括惊厥持续时间、复发惊厥次数、家族史、体温发热开始至惊厥发作的时间、惊厥发作至到达急诊科的时间、低钠血症、渗透压和低血红蛋白水平。CBA算法为两组患者共获得11条分类规则。此外,CBA分析和ROC分析得到的临界值显示出令人满意的一致性。CBA模型的总体分类准确率达到97%。
所开发的CBA模型对RFS具有良好的预测能力。该相关模型可作为一种风险评估工具,用于识别有发生RFS风险 的儿童。