Predicting surgical intervention in paediatric cervical abscesses using machine learning: a comparative analysis.

Ryota Koshu, Masao Noda, Haruna Nakamoto, Takahiro Fukuhara, Makoto Ito
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Abstract

Background: Paediatric cervical abscesses necessitate careful assessment to determine appropriate treatment strategies. Some patients require surgical intervention, although conservative management is effective. However, the criteria for the surgical indications remain unclear. Machine learning models have demonstrated promise in improving diagnostic accuracy across different medical fields.

Objective: This study aimed to assess the use of machine learning models in predicting the requirement for surgical intervention in paediatric cervical abscesses and compare their performance with that of traditional logistic regression.

Methods: A retrospective analysis was conducted on 55 paediatric patients diagnosed with cervical abscesses between 2010 and 2024. The patient demographics, clinical findings, laboratory data, and imaging characteristics were examined. Six predictive models were developed: logistic regression, Random Forest, Lasso regression, Support Vector Machine (SVM), Extreme Gradient Boosting (XGBoost), and Light Gradient Boosting Machine. Model performance was evaluated using the area under the curve (AUC), accuracy, precision, recall, and F1-score. Feature importance was examined to identify the main predictive factors.

Results: Among all the factors, abscess size was the most significant predictor of surgical intervention. Machine-learning models, especially XGBoost, outperformed logistic regression, achieving the highest AUC, accuracy, and recall. Inflammatory markers, including neutrophil-to-lymphocyte ratio and neutrophil count, also substantially contributed to the prediction accuracy.

Conclusion: Machine learning models, particularly XGBoost, provide superior predictive performance compared with logistic regression, providing a valuable tool for optimising treatment decisions in paediatric cervical abscesses. These models improve clinical decision-making by integrating multiple factors, decreasing unnecessary surgeries, and enhancing patient outcomes.

使用机器学习预测小儿宫颈脓肿的手术干预:比较分析。
背景:儿科宫颈脓肿需要仔细评估,以确定适当的治疗策略。有些患者需要手术干预,尽管保守治疗是有效的。然而,手术指征的标准仍不明确。机器学习模型在提高不同医学领域的诊断准确性方面表现出了希望。目的:本研究旨在评估机器学习模型在预测小儿宫颈脓肿手术干预需求中的应用,并将其与传统逻辑回归的效果进行比较。方法:对2010 ~ 2024年诊断为宫颈脓肿的55例患儿进行回顾性分析。检查了患者的人口统计学、临床表现、实验室数据和影像学特征。建立了6种预测模型:logistic回归、随机森林、Lasso回归、支持向量机(SVM)、极端梯度增强(XGBoost)和轻梯度增强机。使用曲线下面积(AUC)、准确度、精密度、召回率和f1评分来评估模型的性能。检测特征重要性以确定主要预测因素。结果:在所有因素中,脓肿大小是手术干预最显著的预测因素。机器学习模型,尤其是XGBoost,优于逻辑回归,实现了最高的AUC、准确率和召回率。炎症标志物,包括中性粒细胞与淋巴细胞比率和中性粒细胞计数,也对预测准确性有很大贡献。结论:与逻辑回归相比,机器学习模型,特别是XGBoost,提供了优越的预测性能,为优化儿科宫颈脓肿的治疗决策提供了有价值的工具。这些模型通过整合多种因素、减少不必要的手术和提高患者预后来改善临床决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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