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Developing risk prediction models for type 2 diabetes: a systematic review of methodology and reporting.

机译:开发2型糖尿病的风险预测模型:方法和报告的系统回顾。

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摘要

BACKGROUND: The World Health Organisation estimates that by 2030 there will be approximately 350 million people with type 2 diabetes. Associated with renal complications, heart disease, stroke and peripheral vascular disease, early identification of patients with undiagnosed type 2 diabetes or those at an increased risk of developing type 2 diabetes is an important challenge. We sought to systematically review and critically assess the conduct and reporting of methods used to develop risk prediction models for predicting the risk of having undiagnosed (prevalent) or future risk of developing (incident) type 2 diabetes in adults. METHODS: We conducted a systematic search of PubMed and EMBASE databases to identify studies published before May 2011 that describe the development of models combining two or more variables to predict the risk of prevalent or incident type 2 diabetes. We extracted key information that describes aspects of developing a prediction model including study design, sample size and number of events, outcome definition, risk predictor selection and coding, missing data, model-building strategies and aspects of performance. RESULTS: Thirty-nine studies comprising 43 risk prediction models were included. Seventeen studies (44%) reported the development of models to predict incident type 2 diabetes, whilst 15 studies (38%) described the derivation of models to predict prevalent type 2 diabetes. In nine studies (23%), the number of events per variable was less than ten, whilst in fourteen studies there was insufficient information reported for this measure to be calculated. The number of candidate risk predictors ranged from four to sixty-four, and in seven studies it was unclear how many risk predictors were considered. A method, not recommended to select risk predictors for inclusion in the multivariate model, using statistical significance from univariate screening was carried out in eight studies (21%), whilst the selection procedure was unclear in ten studies (26%). Twenty-one risk prediction models (49%) were developed by categorising all continuous risk predictors. The treatment and handling of missing data were not reported in 16 studies (41%). CONCLUSIONS: We found widespread use of poor methods that could jeopardise model development, including univariate pre-screening of variables, categorisation of continuous risk predictors and poor handling of missing data. The use of poor methods affects the reliability of the prediction model and ultimately compromises the accuracy of the probability estimates of having undiagnosed type 2 diabetes or the predicted risk of developing type 2 diabetes. In addition, many studies were characterised by a generally poor level of reporting, with many key details to objectively judge the usefulness of the models often omitted.
机译:背景:世界卫生组织估计,到2030年,将有大约3.5亿人患有2型糖尿病。与肾脏并发症,心脏病,中风和周围血管疾病相关,早期发现未确诊的2型糖尿病或罹患2型糖尿病的风险增加的患者是一项重要的挑战。我们试图系统地审查和严格评估用于开发风险预测模型的方法的执行和报告,该模型用于预测成人的未诊断(普遍)或未来发展(事件)2型糖尿病的风险。方法:我们对PubMed和EMBASE数据库进行了系统搜索,以鉴定2011年5月之前发表的研究,这些研究描述了结合两个或多个变量来预测2型糖尿病患病风险的模型的开发。我们提取了关键信息,这些信息描述了开发预测模型的各个方面,包括研究设计,事件的样本大小和数量,结果定义,风险预测器的选择和编码,缺失的数据,模型构建策略以及性能方面。结果:纳入了包括43个风险预测模型的三十九项研究。十七项研究(44%)报告了预测2型糖尿病事件模型的发展,而15项研究(38%)描述了预测流行2型糖尿病模型的模型。在9项研究(23%)中,每个变量的事件数少于10,而在14项研究中,报告的信息不足以计算此度量。候选风险预测因素的数量从四到六十四不等,在七项研究中,尚不清楚考虑了多少个风险预测因素。在八项研究(21%)中使用了单变量筛选的统计显着性,不建议选择一种风险预测方法以纳入多变量模型,而在十项研究中(26%)尚不清楚选择方法。通过对所有连续的风险预测因素进行分类,开发了21个风险预测模型(占49%)。 16项研究未报告缺失数据的处理和处理(41%)。结论:我们发现不良方法的广泛使用可能会危害模型开发,包括变量的单变量预筛选,连续风险预测器的分类以及对缺失数据的不良处理。不良方法的使用会影响预测模型的可靠性,并最终损害未诊断出的2型糖尿病或发展为2型糖尿病的预测风险的概率估计的准确性。此外,许多研究的特点是报告水平普遍较差,客观地判断模型有用性的许多关键细节通常被省略。

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