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基于决策树的规则优于风险评分,可用于预测儿童哮喘的预后。

Decision tree-based rules outperform risk scores for childhood asthma prognosis.

机构信息

Department of Epidemiology and Biostatistics, School of Public Health, Bloomington, IN, USA.

Children's Hospital Research Institute of Manitoba, Department of Pediatrics and Child Health, University of Manitoba, Winnipeg, MB, Canada.

出版信息

Pediatr Allergy Immunol. 2021 Oct;32(7):1464-1473. doi: 10.1111/pai.13530. Epub 2021 May 25.

Abstract

BACKGROUND

There are no widely accepted prognostic tools for childhood asthma; this is in part due to the multifactorial and time-dependent nature of mechanisms and risk factors that contribute to asthma development. Our study objective was to develop and evaluate the prognostic performance of conditional inference decision tree-based rules using the Pediatric Asthma Risk Score (PARS) predictors as an alternative to the existing logistic regression-based risk score for childhood asthma prediction at 7 years in a high-risk population.

METHODS

The Canadian Asthma Primary Prevention Study data were used to develop, compare, and contrast the prognostic performance (area under the curve [AUC], sensitivity, and specificity) of conditional inference tree-based decision rules to the pediatric asthma risk score for the prediction of childhood asthma at 7 years.

RESULTS

Conditional inference decision tree-based rules have higher prognostic performance (AUC: 0.85; 95% CI: 0.81, 0.88; sensitivity = 47%; specificity = 93%) than the pediatric asthma risk score at an optimal cutoff of ≥6 (AUC: 0.71; 95% CI: 0.67, 0.76; sensitivity = 60%; specificity = 74%). Moreover, the pediatric asthma risk score is not linearly related to asthma risk, and at any given pediatric asthma risk score value, different combinations of its pediatric asthma risk score clinical variables differentially predict asthma risk.

CONCLUSION

Conditional inference tree-based decision rules could be a useful childhood asthma prognostic tool, providing an alternative way to identify unique subgroups of at-risk children, and insights into associations and effect mechanisms that are suggestive of appropriate tailored preventive interventions. However, the feasibility and effectiveness of such decision rules in clinical practice is warranted.

摘要

背景

目前尚无广泛认可的儿童哮喘预后工具;这在一定程度上是由于促成哮喘发展的机制和风险因素具有多因素和时变的性质。我们的研究目的是开发和评估基于条件推理决策树的规则的预后性能,该规则使用儿科哮喘风险评分(PARS)预测因子作为替代现有的基于逻辑回归的风险评分,用于预测高风险人群中儿童哮喘在 7 岁时的发病情况。

方法

使用加拿大哮喘初级预防研究的数据来开发、比较和对比基于条件推理决策树的规则的预后性能(曲线下面积 [AUC]、敏感性和特异性)与儿科哮喘风险评分,以预测儿童在 7 岁时患哮喘的情况。

结果

基于条件推理决策树的规则具有比儿科哮喘风险评分更高的预后性能(AUC:0.85;95%CI:0.81,0.88;敏感性=47%;特异性=93%),其最佳截断值为≥6(AUC:0.71;95%CI:0.67,0.76;敏感性=60%;特异性=74%)。此外,儿科哮喘风险评分与哮喘风险之间并非线性相关,并且在给定的儿科哮喘风险评分值下,其儿科哮喘风险评分临床变量的不同组合可不同程度地预测哮喘风险。

结论

基于条件推理决策树的决策规则可能是一种有用的儿童哮喘预后工具,提供了一种识别高危儿童的独特亚组的替代方法,并深入了解提示适当定制预防干预措施的关联和作用机制。然而,在临床实践中评估此类决策规则的可行性和有效性是必要的。

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