Suppr超能文献

基于学习的川崎病静脉注射免疫球蛋白抵抗和冠状动脉病变预测模型:技术方面与研究特征综述

Learning-Based Models for Predicting IVIG Resistance and Coronary Artery Lesions in Kawasaki Disease: A Review of Technical Aspects and Study Features.

作者信息

Mirata Danilo, Tiezzi Anna Chiara, Buffoni Lorenzo, Pagnini Ilaria, Maccora Ilaria, Marrani Edoardo, Mastrolia Maria Vincenza, Simonini Gabriele, Giani Teresa

机构信息

Pediatric Department, School of Sciences of Human Health, University of Florence, Florence, Italy.

Department of Physics and Astronomy, School of Physical, Mathematical and Natural Sciences, University of Florence, Sesto Fiorentino, Italy.

出版信息

Paediatr Drugs. 2025 Apr 3. doi: 10.1007/s40272-025-00693-7.

Abstract

Kawasaki disease (KD) is a common pediatric vasculitis, with coronary artery lesions (CALs) representing its most severe complication. Early identification of high-risk patients, including those with disease resistant to first-line treatments, is essential to guide personalized therapeutic approaches. Given the limited reliability of current scoring systems, there has been growing interest in the development of new prognostic models based on machine learning algorithms and artificial intelligence (AI). AI has the potential to revolutionize the management of KD by improving patient stratification and supporting more targeted treatment strategies. This narrative review examines recent applications of AI in stratifying patients with KD, with a particular focus on the ability of models to predict intravenous immunoglobulin resistance and the risk of CALs. We analyzed studies published between January 2019 and April 2024 that incorporated AI-based predictive models. In total, 21 papers met the inclusion criteria and were subject to technical and statistical review; 90% of these were conducted in patients from Asian hospitals. Most of the studies (18/21; 85.7%) were retrospective, and two-thirds included fewer than 1000 patients. Significant heterogeneity in study design and parameter selection was observed across the studies. Resistance to intravenous immunoglobulin emerged as a key factor in AI-based models for predicting CALs. Only five models demonstrated a sensitivity > 80%, and four studies provided access to the underlying algorithms and datasets. Challenges such as small sample sizes, class imbalance, and the need for multicenter validation currently limit the clinical applicability of machine-learning-based predictive models. The effectiveness of AI models is heavily influenced by the quantity and quality of data, labeling accuracy, and the completeness of the training datasets. Additionally, issues such as noise and missing data can negatively affect model performance and generalizability. These limitations highlight the need for rigorous validation and open access to model code to ensure transparency and reproducibility. Collaboration and data sharing will be essential for refining AI algorithms, improving patient stratification, and optimizing treatment strategies.

摘要

川崎病(KD)是一种常见的儿童血管炎,冠状动脉病变(CALs)是其最严重的并发症。早期识别高危患者,包括对一线治疗耐药的患者,对于指导个性化治疗方法至关重要。鉴于当前评分系统的可靠性有限,人们对基于机器学习算法和人工智能(AI)开发新的预后模型的兴趣与日俱增。人工智能有潜力通过改善患者分层和支持更具针对性的治疗策略,彻底改变川崎病的管理方式。这篇叙述性综述探讨了人工智能在川崎病患者分层中的最新应用,特别关注模型预测静脉注射免疫球蛋白耐药性和冠状动脉病变风险的能力。我们分析了2019年1月至2024年4月期间发表的纳入基于人工智能预测模型的研究。共有21篇论文符合纳入标准,并接受了技术和统计审查;其中90%是在亚洲医院的患者中进行的。大多数研究(18/21;85.7%)是回顾性的,三分之二的研究纳入患者少于1000例。各研究在研究设计和参数选择上存在显著异质性。静脉注射免疫球蛋白耐药性成为基于人工智能的冠状动脉病变预测模型的关键因素。只有五个模型的灵敏度>80%,四项研究提供了基础算法和数据集的访问权限。样本量小、类别不平衡以及多中心验证的需求等挑战目前限制了基于机器学习的预测模型的临床适用性。人工智能模型的有效性在很大程度上受到数据的数量和质量、标注准确性以及训练数据集完整性的影响。此外,噪声和数据缺失等问题可能会对模型性能和可推广性产生负面影响。这些局限性凸显了严格验证和开放模型代码访问以确保透明度和可重复性的必要性。合作和数据共享对于完善人工智能算法、改善患者分层以及优化治疗策略至关重要。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验