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老年人皮肤撕裂预测模型:系统评价和荟萃分析。

Prediction models for skin tears in the elderly: A systematic review and meta-analysis.

机构信息

Nursing College, Fujian University of Traditional Chinese Medicine, Fuzhou 350122, China.

Nursing College, Fujian Medical University, Fuzhou, China.

出版信息

Geriatr Nurs. 2024 Sep-Oct;59:103-112. doi: 10.1016/j.gerinurse.2024.06.030. Epub 2024 Jul 11.

Abstract

BACKGROUND

The prevalence of risk prediction models for skin tears in the elderly is growing; however, there is still debate regarding the usefulness and suitability of these models for clinical use and additional study.

OBJECTIVE

The purpose of this work is to perform a systematic review and meta-analysis of published research on skin tear risk prediction models in the elderly.

METHODS

We conducted a comprehensive search of various databases, including Cumulative Index to Nursing and Allied Health Literature (CINAHL), Embase, PubMed, Web of Science, MEDLINE, Scopus, The Cochrane Library, Wanfang Database, China Science and Technology Journal Database (VIP), and China National Knowledge Infrastructure (CNKI), from the beginning until November 27, 2023. Data extraction from the chosen studies encompassed various elements, such as study design, sample size, outcome definition, data source, predictors, model development, and performance. The assessment of bias and applicability was conducted using the Prediction Model Risk of Bias Assessment Tool (PROBAST) checklist. The Transparent Reporting of a Multivariable Prediction Model for Individual Prognosis or Diagnosis (TRIPOD) checklist was utilized to assess the transparency in reporting the prediction models-a meta-analysis of the most common predictors to assess predictor reliability. In addition, a narrative synthesis was carried out to provide an overview of the qualities, bias risk, and effectiveness of the current models. The reporting procedures of this meta-analysis conformed to the 2020 Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA 2020) statement.

RESULTS

Out of the initially retrieved 1499 studies, this review included eight prediction models from eight selected studies. All the studies employed logistic regression to develop prediction models for skin tears. The prevalence of skin tears in the elderly varied from 3.0% to 33.3%. Senile purpura and a history of previous skin tears were the most commonly utilized predictors. The reported values for the area under the curve (AUC) ranged from 0.765 to 0.854. All the studies exhibited a high risk of bias, primarily due to inadequate reporting in the outcome and analysis domains. Furthermore, serious questions concerning their applicability were highlighted by four studies.

CONCLUSION

Based on the PROBAST checklist, the current models for predicting skin tears in the elderly showed a high risk of bias. The development of new prediction models with bigger sample sizes, appropriate study designs, and external validation from multiple sources ought to be the primary focus of future research.

PATIENT OR PUBLIC CONTRIBUTION

There was no patient or public contribution to this systematic review.

REGISTRATION

PROSPERO registration number: CRD42023494387.

摘要

背景

老年人皮肤撕裂风险预测模型的流行程度正在增加;然而,对于这些模型在临床应用和进一步研究中的有用性和适用性仍存在争议。

目的

本研究旨在对老年人皮肤撕裂风险预测模型的已发表研究进行系统评价和荟萃分析。

方法

我们全面检索了多个数据库,包括 Cumulative Index to Nursing and Allied Health Literature(CINAHL)、Embase、PubMed、Web of Science、MEDLINE、Scopus、The Cochrane Library、万方数据库、中国科技期刊数据库(VIP)和中国国家知识基础设施(CNKI),检索时间截至 2023 年 11 月 27 日。从选定的研究中提取的数据包括研究设计、样本量、结局定义、数据来源、预测因素、模型开发和性能等方面。使用预测模型风险偏倚评估工具(PROBAST)清单评估偏倚和适用性。使用多变量个体预后或诊断预测模型透明报告(TRIPOD)清单评估预测模型的透明度-对最常见的预测因素进行荟萃分析以评估预测因素的可靠性。此外,还进行了叙述性综合,以提供对当前模型的质量、偏倚风险和有效性的概述。本荟萃分析的报告程序符合 2020 年系统评价和荟萃分析的首选报告项目(PRISMA 2020)声明。

结果

在最初检索到的 1499 项研究中,本综述纳入了 8 项研究的 8 个预测模型。所有研究均采用逻辑回归开发皮肤撕裂的预测模型。老年人皮肤撕裂的发生率从 3.0%到 33.3%不等。老年紫癜和既往皮肤撕裂史是最常用的预测因素。报告的曲线下面积(AUC)值范围为 0.765 至 0.854。所有研究均显示出较高的偏倚风险,主要是由于结局和分析领域的报告不充分。此外,有四项研究突出了严重的适用性问题。

结论

根据 PROBAST 清单,目前用于预测老年人皮肤撕裂的模型存在较高的偏倚风险。未来的研究应重点关注使用更大样本量、适当的研究设计和来自多个来源的外部验证来开发新的预测模型。

患者或公众贡献

本系统评价没有患者或公众的贡献。

注册

PROSPERO 注册号:CRD42023494387。

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