使用CHARMS进行早产预测模型的系统综述。

IF 1.9 4区 医学 Q2 NURSING Biological research for nursing Pub Date : 2021-10-01 Epub Date: 2021-06-23 DOI:10.1177/10998004211025641
Jeung-Im Kim, Joo Yun Lee
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引用次数: 6

摘要

目的:本研究旨在评估早产(PTB)的预测模型,并探讨PTB预测模型中常用的预测因子。方法:进行系统评价。我们根据PRISMA选择研究,根据TRIPOD分类研究,根据PROBAST评价研究,根据CHARMS提取和叙述合成数据。我们将模型中的预测因子分为社会经济因素、人口统计学因素、社会心理因素、生物医学因素和健康行为因素。结果:选取21项研究27个预测模型进行分析。只有16个模型(59.3%)将PTB结局定义为37周或更短,7个模型(25.9%)将PTB结局定义为32周或更短。根据是否包括高危孕妇和使用的结果定义,PTB的发病率有所不同。最常见的预测因素包括年龄(人口统计学因素)、身高、体重、体重指数、慢性病(生物医学因素)和吸烟(行为因素)。结论:在使用PTB预测模型时,必须注意结果定义和纳入标准,以选择适合病例的模型。许多研究使用PTB的子类别;然而,其中一些子类别没有正确指出,可能被误解为PTB(≤37周)。为了进一步建立肺结核预测模型,有必要确定目标人群并确定预测结果。
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Systematic Review of Prediction Models for Preterm Birth Using CHARMS.

Objective: This study sought to evaluate prediction models for preterm birth (PTB) and to explore predictors frequently used in PTB prediction models.

Methods: A systematic review was conducted. We selected studies according to the PRISMA, classified studies according to TRIPOD, appraised studies according to the PROBAST, and extracted and synthesized the data narratively according to the CHARMS. We classified the predictors in the models into socio-economic factors with demographic, psychosocial, biomedical, and health behavioral factors.

Results: Twenty-one studies with 27 prediction models were selected for the analysis. Only 16 models (59.3%) defined PTB outcomes as 37 weeks or less, and seven models (25.9%) defined PTB as 32 weeks or less. The PTB rates varied according to whether high-risk pregnant women were included and according to the outcome definition used. The most frequently included predictors were age (among demographic factors), height, weight, body mass index, and chronic disease (among biomedical factors), and smoking (among behavioral factors).

Conclusion: When using the PTB prediction model, one must pay attention to the outcome definition and inclusion criteria to select a model that fits the case. Many studies use the sub-categories of PTB; however, some of these sub-categories are not correctly indicated, and they can be misunderstood as PTB (≤ 37 weeks). To develop further PTB prediction models, it is necessary to set the target population and identify the outcomes to predict.

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来源期刊
CiteScore
5.10
自引率
4.00%
发文量
58
审稿时长
>12 weeks
期刊介绍: Biological Research For Nursing (BRN) is a peer-reviewed quarterly journal that helps nurse researchers, educators, and practitioners integrate information from many basic disciplines; biology, physiology, chemistry, health policy, business, engineering, education, communication and the social sciences into nursing research, theory and clinical practice. This journal is a member of the Committee on Publication Ethics (COPE)
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