时间序列分析作为临床预测建模的输入:模拟儿科ICU的心脏骤停。

Curtis E Kennedy, James P Turley
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引用次数: 41

摘要

背景:每年有成千上万的儿童在儿科重症监护室经历心脏骤停事件。这些孩子中的大多数都死了。心脏骤停预测工具被用作医疗急救小组评估的一部分,以识别标准医院病床上心脏骤停高风险的患者。然而,没有模型来预测儿科重症监护病房的心脏骤停,那里的骤停风险是标准医院病床的10倍。目前的工具是基于多变量方法,不能表征心脏骤停之前的恶化。表征恶化需要时间序列方法。本研究的目的是提出一种方法,将允许时间序列数据用于临床预测模型。这些方法的成功实施有可能为儿科重症监护环境带来骤停预测,可能允许采取可以挽救生命和预防残疾的干预措施。方法:我们回顾了使用时间序列数据的非临床领域的预测模型,并确定了使用时间序列临床数据构建预测模型所需的步骤。我们通过将其应用于在儿科重症监护病房建立心脏骤停预测模型的具体案例来说明该方法。结果:基因组分析的时间过程分析研究提供了一个建模模板,该模板与从临床时间序列数据开发模型所需的步骤相兼容。步骤包括:1)选择候选变量;2)规定测量参数;3)定义数据格式;4)定义时间窗口持续时间和分辨率;5)计算未直接测量的候选变量的潜在变量;6)计算时间序列特征作为潜变量;7)创建数据子集来度量由于不同类别的候选变量而导致的模型性能影响;8)减少候选特征的数量;9)各种数据子集的训练模型;10)测量模型在未见数据中的性能特征,以估计模型的外部有效性。结论:我们提出了一个十步过程,该过程产生包含时间序列特征的数据集,并且适合通过多种方法进行预测建模。我们通过一个儿科重症监护环境中心脏骤停预测的例子说明了这一过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Time series analysis as input for clinical predictive modeling: modeling cardiac arrest in a pediatric ICU.

Background: Thousands of children experience cardiac arrest events every year in pediatric intensive care units. Most of these children die. Cardiac arrest prediction tools are used as part of medical emergency team evaluations to identify patients in standard hospital beds that are at high risk for cardiac arrest. There are no models to predict cardiac arrest in pediatric intensive care units though, where the risk of an arrest is 10 times higher than for standard hospital beds. Current tools are based on a multivariable approach that does not characterize deterioration, which often precedes cardiac arrests. Characterizing deterioration requires a time series approach. The purpose of this study is to propose a method that will allow for time series data to be used in clinical prediction models. Successful implementation of these methods has the potential to bring arrest prediction to the pediatric intensive care environment, possibly allowing for interventions that can save lives and prevent disabilities.

Methods: We reviewed prediction models from nonclinical domains that employ time series data, and identified the steps that are necessary for building predictive models using time series clinical data. We illustrate the method by applying it to the specific case of building a predictive model for cardiac arrest in a pediatric intensive care unit.

Results: Time course analysis studies from genomic analysis provided a modeling template that was compatible with the steps required to develop a model from clinical time series data. The steps include: 1) selecting candidate variables; 2) specifying measurement parameters; 3) defining data format; 4) defining time window duration and resolution; 5) calculating latent variables for candidate variables not directly measured; 6) calculating time series features as latent variables; 7) creating data subsets to measure model performance effects attributable to various classes of candidate variables; 8) reducing the number of candidate features; 9) training models for various data subsets; and 10) measuring model performance characteristics in unseen data to estimate their external validity.

Conclusions: We have proposed a ten step process that results in data sets that contain time series features and are suitable for predictive modeling by a number of methods. We illustrated the process through an example of cardiac arrest prediction in a pediatric intensive care setting.

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来源期刊
Theoretical Biology and Medical Modelling
Theoretical Biology and Medical Modelling MATHEMATICAL & COMPUTATIONAL BIOLOGY-
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6-12 weeks
期刊介绍: Theoretical Biology and Medical Modelling is an open access peer-reviewed journal adopting a broad definition of "biology" and focusing on theoretical ideas and models associated with developments in biology and medicine. Mathematicians, biologists and clinicians of various specialisms, philosophers and historians of science are all contributing to the emergence of novel concepts in an age of systems biology, bioinformatics and computer modelling. This is the field in which Theoretical Biology and Medical Modelling operates. We welcome submissions that are technically sound and offering either improved understanding in biology and medicine or progress in theory or method.
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