使用统计学习模型开发和验证慢性阻塞性肺疾病快速筛选问卷。

IF 2.3 3区 医学 Q2 RESPIRATORY SYSTEM
Xiaoyue Wang, Hong He, Liang Xu, Cuicui Chen, Jieqing Zhang, Na Li, Xianxian Chen, Weipeng Jiang, Li Li, Linlin Wang, Yuanlin Song, Jing Xiao, Jun Zhang, Dongni Hou
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引用次数: 0

摘要

背景:主动靶向病例发现是识别慢性阻塞性肺疾病(COPD)早期诊断和干预的高风险个体的一种经济有效的方法。卫生保健机构需要一种精确实用的慢性阻塞性肺病筛查仪器。方法:我们使用多中心随机横断面调查数据库(n = 5281)创建了四个统计学习模型来预测COPD的风险。选择识别气道阻塞个体的最小预测因子集和最佳统计学习模型来构建新的病例发现问卷。我们在一个前瞻性队列(n = 958)中验证了其性能,并将其与先前报道的三种病例发现工具进行了比较。结果:从643个变量中选择了7个预测因子,包括年龄、晨间咳嗽、喘息、戒烟年数、性别、工作和吸烟年数。在4种统计学习模型中,广义加性模型模型在发展截面数据集(AUC = 0.813)和前瞻性验证数据集(AUC = 0.880)上的曲线下面积(AUC)均最高。我们的问卷在横断面验证数据集上优于其他三种工具。结论:我们开发了一套COPD病例调查问卷,这是一种识别COPD高危人群的有效且具有成本效益的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Developing and validating a chronic obstructive pulmonary disease quick screening questionnaire using statistical learning models.

Developing and validating a chronic obstructive pulmonary disease quick screening questionnaire using statistical learning models.

Developing and validating a chronic obstructive pulmonary disease quick screening questionnaire using statistical learning models.

Developing and validating a chronic obstructive pulmonary disease quick screening questionnaire using statistical learning models.

Background: Active targeted case-finding is a cost-effective way to identify individuals with high-risk for early diagnosis and interventions of chronic obstructive pulmonary disease (COPD). A precise and practical COPD screening instrument is needed in health care settings.

Methods: We created four statistical learning models to predict the risk of COPD using a multi-center randomized cross-sectional survey database (n = 5281). The minimal set of predictors and the best statistical learning model in identifying individuals with airway obstruction were selected to construct a new case-finding questionnaire. We validated its performance in a prospective cohort (n = 958) and compared it with three previously reported case-finding instruments.

Results: A set of seven predictors was selected from 643 variables, including age, morning productive cough, wheeze, years of smoking cessation, gender, job, and pack-year of smoking. In four statistical learning models, generalized additive model model had the highest area under curve (AUC) value both on the developing cross-sectional data set (AUC = 0.813) and the prospective validation data set (AUC = 0.880). Our questionnaire outperforms the other three tools on the cross-sectional validation data set.

Conclusions: We developed a COPD case-finding questionnaire, which is an efficient and cost-effective tool for identifying high-risk population of COPD.

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来源期刊
Chronic Respiratory Disease
Chronic Respiratory Disease RESPIRATORY SYSTEM-
CiteScore
5.90
自引率
7.30%
发文量
47
审稿时长
11 weeks
期刊介绍: Chronic Respiratory Disease is a peer-reviewed, open access, scholarly journal, created in response to the rising incidence of chronic respiratory diseases worldwide. It publishes high quality research papers and original articles that have immediate relevance to clinical practice and its multi-disciplinary perspective reflects the nature of modern treatment. The journal provides a high quality, multi-disciplinary focus for the publication of original papers, reviews and commentary in the broad area of chronic respiratory disease, particularly its treatment and management.
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