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Incorporating repeated measurements into prediction models in the critical care setting: a framework, systematic review and meta-analysis

机译:在重症监护环境中将重复测量纳入预测模型:框架,系统评价和荟萃分析

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The incorporation of repeated measurements into multivariable prediction research may greatly enhance predictive performance. However, the methodological possibilities vary widely and a structured overview of the possible and utilized approaches lacks. Therefore, we [1] propose a structured framework for these approaches, [2] determine what methods are currently used to incorporate repeated measurements in prediction research in the critical care setting and, where possible, [3] assess the added discriminative value of incorporating repeated measurements. The proposed framework consists of three domains: the observation window (static or dynamic), the processing of the raw data (raw data modelling, feature extraction and reduction) and the type of modelling. A systematic review was performed to identify studies which incorporate repeated measurements to predict (e.g. mortality) in the critical care setting. The within-study difference in c-statistics between models with versus without repeated measurements were obtained and pooled in a meta-analysis. From the 2618 studies found, 29 studies incorporated multiple repeated measurements. The annual number of studies with repeated measurements increased from 2.8/year (2000–2005) to 16.0/year (2016–2018). The majority of studies that incorporated repeated measurements for prediction research used a dynamic observation window, and extracted features directly from the data. Differences in c statistics ranged from ??0.048 to 0.217 in favour of models that utilize repeated measurements. Repeated measurements are increasingly common to predict events in the critical care domain, but their incorporation is lagging. A framework of possible approaches could aid researchers to optimize future prediction models.
机译:将重复测量合并到多变量预测研究中可以大大提高预测性能。但是,方法学的可能性千差万别,缺乏对可能的和所采用的方法的结构化概述。因此,我们[1]为这些方法提出了一个结构化的框架,[2]确定了目前在重症监护环境中将哪些方法用于重复测量纳入预测研究中,并在可能的情况下[3]评估了合并的附加判别价值重复测量。所提出的框架包括三个领域:观察窗口(静态或动态),原始数据的处理(原始数据建模,特征提取和归约)以及建模类型。进行了系统的审查以鉴定纳入重症监护环境中重复测量以预测(例如死亡率)的研究。获得或不进行重复测量的模型之间在c统计量内的研究内差异,并汇总在荟萃分析中。从发现的2618个研究中,有29个研究纳入了多次重复测量。每年重复测量的研究数量从2.8 /年(2000-2005年)增加到16.0 /年(2016-2018年)。将重复测量合并到预测研究中的大多数研究都使用动态观察窗,并直接从数据中提取特征。 c统计量的差异范围从0.048到0.217,有利于使用重复测量的模型。重复测量在预测重症监护领域的事件时越来越普遍,但合并却滞后。可能的方法框架可以帮助研究人员优化未来的预测模型。

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