Prediction Models for Type 2 Diabetes Risk in the General Population: A Systematic Review of Observational Studies.

IF 2.1 Q3 ENDOCRINOLOGY & METABOLISM
International Journal of Endocrinology and Metabolism Pub Date : 2021-03-22 eCollection Date: 2021-07-01 DOI:10.5812/ijem.109206
Samaneh Asgari, Davood Khalili, Farhad Hosseinpanah, Farzad Hadaegh
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引用次数: 9

Abstract

Objectives: This study aimed to provide an overview of prediction models of undiagnosed type 2 diabetes mellitus (U-T2DM) or the incident T2DM (I-T2DM) using the transparent reporting of a multivariable prediction model for individual prognosis or diagnosis (TRIPOD) checklist and the prediction model risk of the bias assessment tool (PROBAST).

Data sources: Both PUBMED and EMBASE databases were searched to guarantee adequate and efficient coverage.

Study selection: Articles published between December 2011 and October 2019 were considered.

Data extraction: For each article, information on model development requirements, discrimination measures, calibration, overall performance, clinical usefulness, overfitting, and risk of bias (ROB) was reported.

Results: The median (interquartile range; IQR) number of the 46 study populations for model development was 5711 (1971 - 27426) and 2457 (2060 - 6995) individuals for I-T2DM and U-T2DM, respectively. The most common reported predictors were age and body mass index, and only the Qrisk-2017 study included social factors (e.g., Townsend score). Univariable analysis was reported in 46% of the studies, and the variable selection procedure was not clear in 17.4% of them. Moreover, internal and external validation was reported in 43% the studies, while over 63% of them reported calibration. The median (IQR) of AUC for I-T2DM models was 0.78 (0.74 - 0.82); the corresponding value for studies derived before October 2011 was 0.80 (0.77 - 0.83). The highest discrimination index was reported for Qrisk-2017 with C-statistics of 0.89 for women and 0.87 for men. Low ROB for I-T2DM and U-T2DM was assessed at 18% and 41%, respectively.

Conclusions: Among prediction models, an intermediate to poor quality was reassessed in several aspects of model development and validation. Generally, despite its new risk factors or new methodological aspects, the newly developed model did not increase our capability in screening/predicting T2DM, mainly in the analysis part. It was due to the lack of external validation of the prediction models.

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普通人群2型糖尿病风险预测模型:一项观察性研究的系统综述
目的:本研究旨在通过透明报告个体预后或诊断的多变量预测模型(TRIPOD)清单和预测模型风险偏倚评估工具(PROBAST),对未确诊的2型糖尿病(U-T2DM)或T2DM (I-T2DM)的预测模型进行概述。数据来源:检索了PUBMED和EMBASE数据库,以确保充分和有效的覆盖。研究选择:纳入2011年12月至2019年10月间发表的文章。数据提取:对于每篇文章,报告了关于模型开发要求、判别措施、校准、总体性能、临床有用性、过拟合和偏倚风险(ROB)的信息。结果:中位数(四分位数间距;46个研究人群中I-T2DM和U-T2DM模型开发的IQR数分别为5711(1971 - 27426)和2457(2060 - 6995)例。最常见的预测因素是年龄和体重指数,只有Qrisk-2017研究纳入了社会因素(例如汤森评分)。46%的研究报告了单变量分析,17.4%的研究报告的变量选择程序不明确。此外,43%的研究报告了内部和外部验证,而超过63%的研究报告了校准。I-T2DM模型AUC的中位数(IQR)为0.78 (0.74 ~ 0.82);2011年10月之前的研究对应值为0.80(0.77 ~ 0.83)。Qrisk-2017的歧视指数最高,女性的c统计值为0.89,男性为0.87。I-T2DM和U-T2DM的低ROB分别为18%和41%。结论:在预测模型中,在模型开发和验证的几个方面重新评估了中等到较差的质量。总的来说,尽管有新的危险因素或新的方法方面,新开发的模型并没有提高我们筛查/预测T2DM的能力,主要是在分析部分。这是由于预测模型缺乏外部验证。
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来源期刊
CiteScore
3.10
自引率
4.80%
发文量
0
期刊介绍: The aim of the International Journal of Endocrinology and Metabolism (IJEM) is to increase knowledge, stimulate research in the field of endocrinology, and promote better management of patients with endocrinological disorders. To achieve this goal, the journal publishes original research papers on human, animal and cell culture studies relevant to endocrinology.
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