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用于慢性肾脏病进展的预测模型:范围综述。

Prediction models used in the progression of chronic kidney disease: A scoping review.

机构信息

Curtin School of Population Health, Curtin University, Perth, WA, Australia.

La Trobe University, Melbourne, Bundoora, VIC, Australia.

出版信息

PLoS One. 2022 Jul 26;17(7):e0271619. doi: 10.1371/journal.pone.0271619. eCollection 2022.

Abstract

OBJECTIVE

To provide a review of prediction models that have been used to measure clinical or pathological progression of chronic kidney disease (CKD).

DESIGN

Scoping review.

DATA SOURCES

Medline, EMBASE, CINAHL and Scopus from the year 2011 to 17th February 2022.

STUDY SELECTION

All English written studies that are published in peer-reviewed journals in any country, that developed at least a statistical or computational model that predicted the risk of CKD progression.

DATA EXTRACTION

Eligible studies for full text review were assessed on the methods that were used to predict the progression of CKD. The type of information extracted included: the author(s), title of article, year of publication, study dates, study location, number of participants, study design, predicted outcomes, type of prediction model, prediction variables used, validation assessment, limitations and implications.

RESULTS

From 516 studies, 33 were included for full-text review. A qualitative analysis of the articles was compared following the extracted information. The study populations across the studies were heterogenous and data acquired by the studies were sourced from different levels and locations of healthcare systems. 31 studies implemented supervised models, and 2 studies included unsupervised models. Regardless of the model used, the predicted outcome included measurement of risk of progression towards end-stage kidney disease (ESKD) of related definitions, over given time intervals. However, there is a lack of reporting consistency on details of the development of their prediction models.

CONCLUSIONS

Researchers are working towards producing an effective model to provide key insights into the progression of CKD. This review found that cox regression modelling was predominantly used among the small number of studies in the review. This made it difficult to perform a comparison between ML algorithms, more so when different validation methods were used in different cohort types. There needs to be increased investment in a more consistent and reproducible approach for future studies looking to develop risk prediction models for CKD progression.

摘要

目的

综述用于衡量慢性肾脏病(CKD)临床或病理进展的预测模型。

设计

范围综述。

资料来源

2011 年至 2022 年 2 月 17 日,Medline、EMBASE、CINAHL 和 Scopus。

研究选择

所有在任何国家以同行评审期刊发表的英文书面研究,均开发了至少一种预测 CKD 进展风险的统计或计算模型。

资料提取

对符合全文审查标准的研究,评估其用于预测 CKD 进展的方法。提取的信息类型包括:作者、文章标题、发表年份、研究日期、研究地点、参与者人数、研究设计、预测结果、预测模型类型、使用的预测变量、验证评估、局限性和意义。

结果

从 516 篇研究中,有 33 篇被纳入全文审查。根据提取的信息对文章进行了定性分析。研究人群在各研究中存在异质性,研究数据来自不同层次和地点的医疗保健系统。31 项研究采用了有监督模型,2 项研究包含无监督模型。无论使用哪种模型,预测结果均包括在给定时间间隔内进展为终末期肾病(ESKD)或相关定义的风险评估。然而,在预测模型的开发细节方面,报告一致性较差。

结论

研究人员正在努力开发一种有效的模型,以提供对 CKD 进展的关键见解。本综述发现,在纳入的少数研究中,Cox 回归模型是主要应用的方法。这使得很难在不同的队列类型中使用不同的验证方法时,对 ML 算法进行比较。未来研究开发 CKD 进展风险预测模型时,需要加大对更一致和可重复方法的投入。

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