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Reporting and handling of missing data in predictive research for prevalent undiagnosed type 2 diabetes mellitus: a systematic review

机译:流行病学未诊断的2型糖尿病的预测研究中报告和处理缺失数据的系统回顾

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Missing values are common in health research and omitting participants with missing data often leads to loss of statistical power, biased estimates and, consequently, inaccurate inferences. We critically reviewed the challenges posed by missing data in medical research and approaches to address them. To achieve this more efficiently, these issues were analyzed and illustrated through a systematic review on the reporting of missing data and imputation methods (prediction of missing values through relationships within and between variables) undertaken in risk prediction studies of undiagnosed diabetes. Prevalent diabetes risk models were selected based on a recent comprehensive systematic review, supplemented by an updated search of English-language studies published between 1997 and 2014. Reporting of missing data has been limited in studies of prevalent diabetes prediction. Of the 48 articles identified, 62.5% ( n =?30) did not report any information on missing data or handling techniques. In 21 (43.8%) studies, researchers opted out of imputation, completing case-wise deletion of participants missing any predictor values. Although imputation methods are encouraged to handle missing data and ensure the accuracy of inferences, this has seldom been the case in studies of diabetes risk prediction. Hence, we elaborated on the various types and patterns of missing data, the limitations of case-wise deletion and state-of the-art methods of imputations and their challenges. This review highlights the inexperience or disregard of investigators of the effect of missing data in risk prediction research. Formal guidelines may enhance the reporting and appropriate handling of missing data in scientific journals. Keywords Predictive Preventive and Personalized Medicine Diabetes mellitus Risk Guidelines Patterns Screening Modeling Patient Stratification.
机译:缺失值在健康研究中很常见,而遗漏参与者的数据往往会导致统计能力的丧失,估计值偏颇,从而得出不正确的推论。我们严格审查了医学研究中缺少数据所带来的挑战及其解决方法。为了更有效地实现这一目标,通过对未诊断糖尿病的风险预测研究中进行的缺失数据报告和估算方法(通过变量内部和变量之间的相互关系预测缺失值)进行系统审查,对这些问题进行了分析和说明。根据最近的全面系统评价,选择流行的糖尿病风险模型,并在1997年至2014年之间对英语研究进行了更新搜索作为补充。在流行性糖尿病预测研究中,缺失数据的报告受到限制。在确定的48篇文章中,有62.5%(n =?30)没有报告有关丢失数据或处理技术的任何信息。在21(43.8%)个研究中,研究人员选择了插补,从而完成了对缺少任何预测值的参与者的逐案删除。尽管鼓励采用插补方法来处理丢失的数据并确保推理的准确性,但在糖尿病风险预测研究中很少出现这种情况。因此,我们详细介绍了丢失数据的各种类型和模式,逐案删除的局限性以及最新的插补方法及其挑战。这篇评论着重指出了在风险预测研究中调查人员缺乏数据或缺乏数据影响的经验。正式指南可以增强科学期刊中报告和丢失数据的适当处理。关键词预防性和个性化药物糖尿病风险指南模式筛查建模患者分层。

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