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用机器学习预测儿童哮喘发作:系统评价与荟萃分析。

Predicting paediatric asthma exacerbations with machine learning: a systematic review with meta-analysis.

机构信息

Pediatric Unit, Department of Clinical, Surgical, Diagnostic and Pediatric Sciences, University of Pavia, Pavia, Italy.

Pediatric Clinic, Fondazione IRCCS Policlinico San Matteo, Pavia, Italy.

出版信息

Eur Respir Rev. 2024 Nov 13;33(174). doi: 10.1183/16000617.0118-2024. Print 2024 Oct.

Abstract

BACKGROUND

Asthma exacerbations in children pose a significant burden on healthcare systems and families. While traditional risk assessment tools exist, artificial intelligence (AI) offers the potential for enhanced prediction models.

OBJECTIVE

This study aims to systematically evaluate and quantify the performance of machine learning (ML) algorithms in predicting the risk of hospitalisation and emergency department (ED) admission for acute asthma exacerbations in children.

METHODS

We performed a systematic review with meta-analysis, following the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. The risk of bias and applicability for eligible studies was assessed according to the prediction model study risk of bias assessment tool (PROBAST). The protocol of our systematic review was registered in the International Prospective Register of Systematic Reviews.

RESULTS

Our meta-analysis included seven articles encompassing a total of 17 ML-based prediction models. We found a pooled area under the curve (AUC) of 0.67 (95% CI 0.61-0.73; I=99%; p<0.0001 for heterogeneity) for models predicting ED admission, indicating moderate accuracy. Notably, models predicting child hospitalisation demonstrated a higher pooled AUC of 0.79 (95% CI 0.76-0.82; I=95%; p<0.0001 for heterogeneity), suggesting good discriminatory power.

CONCLUSION

This study provides the most comprehensive assessment of AI-based algorithms in predicting paediatric asthma exacerbations to date. While these models show promise and ML-based hospitalisation prediction models, in particular, demonstrate good accuracy, further external validation is needed before these models can be reliably implemented in real-life clinical practice.

摘要

背景

儿童哮喘发作对医疗保健系统和家庭造成了重大负担。虽然存在传统的风险评估工具,但人工智能 (AI) 提供了增强预测模型的潜力。

目的

本研究旨在系统评估和量化机器学习 (ML) 算法在预测儿童急性哮喘发作住院和急诊 (ED) 就诊风险方面的性能。

方法

我们按照系统评价和荟萃分析的首选报告项目 (PRISMA) 指南进行了系统评价和荟萃分析。根据预测模型研究风险偏倚评估工具 (PROBAST) 评估合格研究的风险偏倚和适用性。我们的系统评价方案已在国际前瞻性注册系统评价中注册。

结果

我们的荟萃分析包括七篇文章,共包含 17 个基于 ML 的预测模型。我们发现预测 ED 就诊的模型的汇总曲线下面积 (AUC) 为 0.67(95%CI 0.61-0.73;I=99%;p<0.0001 表示异质性),表明准确性中等。值得注意的是,预测儿童住院的模型的汇总 AUC 为 0.79(95%CI 0.76-0.82;I=95%;p<0.0001 表示异质性),表明具有良好的区分能力。

结论

这是迄今为止对基于 AI 的算法在预测儿科哮喘发作方面进行的最全面评估。虽然这些模型显示出前景,特别是基于 ML 的住院预测模型表现出良好的准确性,但需要进一步的外部验证,然后才能在实际临床实践中可靠地实施这些模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bcbb/11558535/42cffbb1bfc2/ERR-0118-2024.01.jpg

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