Tanvi Ojha, Atushi Patel, Krishihan Sivapragasam, Radha Sharma, Tina Vosoughi, Becky Skidmore, Andrew D Pinto, Banafshe Hosseini
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Covidence was used for citation management, and the risk of bias was assessed using the Prediction Model Risk of Bias Assessment Tool.</p><p><strong>Results: </strong>From 1231 initial articles, 15 met our inclusion criteria. The sample size ranged from 74 to 87,413 patients. Most studies used multiple ML techniques, with logistic regression (n=7, 47%) and random forests (n=6, 40%) being the most common. Key outcomes included predicting asthma exacerbations, classifying asthma phenotypes, predicting asthma diagnoses, and identifying potential risk factors. For predicting exacerbations, recurrent neural networks and XGBoost showed high performance, with XGBoost achieving an area under the receiver operating characteristic curve (AUROC) of 0.76. In classifying asthma phenotypes, support vector machines were highly effective, achieving an AUROC of 0.79. For diagnosis prediction, artificial neural networks outperformed logistic regression, with an AUROC of 0.63. To identify risk factors focused on symptom severity and lung function, random forests achieved an AUROC of 0.88. Sound-based studies distinguished wheezing from nonwheezing and asthmatic from normal coughs. The risk of bias assessment revealed that most studies (n=8, 53%) exhibited low to moderate risk, ensuring a reasonable level of confidence in the findings. Common limitations across studies included data quality issues, sample size constraints, and interpretability concerns.</p><p><strong>Conclusions: </strong>This review highlights the diverse application of ML in predicting pediatric asthma outcomes, with each model offering unique strengths and challenges. Future research should address data quality, increase sample sizes, and enhance model interpretability to optimize ML utility in clinical settings for pediatric asthma management.</p>","PeriodicalId":73551,"journal":{"name":"JMIR AI","volume":"3 ","pages":"e57983"},"PeriodicalIF":0.0000,"publicationDate":"2024-08-27","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11387921/pdf/","citationCount":"0","resultStr":"{\"title\":\"Exploring Machine Learning Applications in Pediatric Asthma Management: Scoping Review.\",\"authors\":\"Tanvi Ojha, Atushi Patel, Krishihan Sivapragasam, Radha Sharma, Tina Vosoughi, Becky Skidmore, Andrew D Pinto, Banafshe Hosseini\",\"doi\":\"10.2196/57983\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>The integration of machine learning (ML) in predicting asthma-related outcomes in children presents a novel approach in pediatric health care.</p><p><strong>Objective: </strong>This scoping review aims to analyze studies published since 2019, focusing on ML algorithms, their applications, and predictive performances.</p><p><strong>Methods: </strong>We searched Ovid MEDLINE ALL and Embase on Ovid, the Cochrane Library (Wiley), CINAHL (EBSCO), and Web of Science (core collection). The search covered the period from January 1, 2019, to July 18, 2023. Studies applying ML models in predicting asthma-related outcomes in children aged <18 years were included. Covidence was used for citation management, and the risk of bias was assessed using the Prediction Model Risk of Bias Assessment Tool.</p><p><strong>Results: </strong>From 1231 initial articles, 15 met our inclusion criteria. The sample size ranged from 74 to 87,413 patients. Most studies used multiple ML techniques, with logistic regression (n=7, 47%) and random forests (n=6, 40%) being the most common. Key outcomes included predicting asthma exacerbations, classifying asthma phenotypes, predicting asthma diagnoses, and identifying potential risk factors. For predicting exacerbations, recurrent neural networks and XGBoost showed high performance, with XGBoost achieving an area under the receiver operating characteristic curve (AUROC) of 0.76. 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引用次数: 0
摘要
背景将机器学习(ML)应用于预测儿童哮喘相关结果是儿科医疗保健领域的一种新方法:本范围综述旨在分析 2019 年以来发表的研究,重点关注 ML 算法、其应用和预测性能:我们检索了 Ovid MEDLINE ALL 和 Embase on Ovid、Cochrane Library (Wiley)、CINAHL (EBSCO) 和 Web of Science (core collection)。检索时间为 2019 年 1 月 1 日至 2023 年 7 月 18 日。应用 ML 模型预测儿童哮喘相关结果的研究 结果:从最初的 1231 篇文章中,有 15 篇符合我们的纳入标准。样本量从 74 到 87413 名患者不等。大多数研究使用了多种 ML 技术,其中最常见的是逻辑回归(7 篇,占 47%)和随机森林(6 篇,占 40%)。主要结果包括预测哮喘加重、哮喘表型分类、预测哮喘诊断和确定潜在风险因素。在预测病情恶化方面,递归神经网络和 XGBoost 表现出色,其中 XGBoost 的接收者工作特征曲线下面积 (AUROC) 为 0.76。在哮喘表型分类方面,支持向量机非常有效,AUROC 达到 0.79。在诊断预测方面,人工神经网络的表现优于逻辑回归,AUROC 为 0.63。在识别以症状严重程度和肺功能为重点的风险因素时,随机森林的 AUROC 为 0.88。基于声音的研究区分了喘息与非喘息以及哮喘性咳嗽与正常咳嗽。偏倚风险评估显示,大多数研究(8 项,53%)显示出低至中度偏倚风险,确保了研究结果具有合理的可信度。各项研究的共同局限性包括数据质量问题、样本量限制和可解释性问题:本综述强调了 ML 在预测小儿哮喘结果中的多样化应用,每种模型都具有独特的优势和挑战。未来的研究应解决数据质量问题、增加样本量并提高模型的可解释性,以优化 ML 在儿科哮喘管理临床环境中的应用。
Exploring Machine Learning Applications in Pediatric Asthma Management: Scoping Review.
Background: The integration of machine learning (ML) in predicting asthma-related outcomes in children presents a novel approach in pediatric health care.
Objective: This scoping review aims to analyze studies published since 2019, focusing on ML algorithms, their applications, and predictive performances.
Methods: We searched Ovid MEDLINE ALL and Embase on Ovid, the Cochrane Library (Wiley), CINAHL (EBSCO), and Web of Science (core collection). The search covered the period from January 1, 2019, to July 18, 2023. Studies applying ML models in predicting asthma-related outcomes in children aged <18 years were included. Covidence was used for citation management, and the risk of bias was assessed using the Prediction Model Risk of Bias Assessment Tool.
Results: From 1231 initial articles, 15 met our inclusion criteria. The sample size ranged from 74 to 87,413 patients. Most studies used multiple ML techniques, with logistic regression (n=7, 47%) and random forests (n=6, 40%) being the most common. Key outcomes included predicting asthma exacerbations, classifying asthma phenotypes, predicting asthma diagnoses, and identifying potential risk factors. For predicting exacerbations, recurrent neural networks and XGBoost showed high performance, with XGBoost achieving an area under the receiver operating characteristic curve (AUROC) of 0.76. In classifying asthma phenotypes, support vector machines were highly effective, achieving an AUROC of 0.79. For diagnosis prediction, artificial neural networks outperformed logistic regression, with an AUROC of 0.63. To identify risk factors focused on symptom severity and lung function, random forests achieved an AUROC of 0.88. Sound-based studies distinguished wheezing from nonwheezing and asthmatic from normal coughs. The risk of bias assessment revealed that most studies (n=8, 53%) exhibited low to moderate risk, ensuring a reasonable level of confidence in the findings. Common limitations across studies included data quality issues, sample size constraints, and interpretability concerns.
Conclusions: This review highlights the diverse application of ML in predicting pediatric asthma outcomes, with each model offering unique strengths and challenges. Future research should address data quality, increase sample sizes, and enhance model interpretability to optimize ML utility in clinical settings for pediatric asthma management.