...
首页> 外文期刊>Journal of biomedical informatics. >Learning predictive models that use pattern discovery--a bootstrap evaluative approach applied in organ functioning sequences.
【24h】

Learning predictive models that use pattern discovery--a bootstrap evaluative approach applied in organ functioning sequences.

机译:学习使用模式发现的预测模型-一种应用于器官功能序列的自举评估方法。

获取原文
获取原文并翻译 | 示例
           

摘要

An important problem in the Intensive Care is how to predict on a given day of stay the eventual hospital mortality for a specific patient. A recent approach to solve this problem suggested the use of frequent temporal sequences (FTSs) as predictors. Methods following this approach were evaluated in the past by inducing a model from a training set and validating the prognostic performance on an independent test set. Although this evaluative approach addresses the validity of the specific models induced in an experiment, it falls short of evaluating the inductive method itself. To achieve this, one must account for the inherent sources of variation in the experimental design. The main aim of this work is to demonstrate a procedure based on bootstrapping, specifically the .632 bootstrap procedure, for evaluating inductive methods that discover patterns, such as FTSs. A second aim is to apply this approach to find out whether a recently suggested inductive method that discovers FTSs of organ functioning status is superior over a traditional method that does not use temporal sequences when compared on each successive day of stay at the Intensive Care Unit. The use of bootstrapping with logistic regression using pre-specified covariates is known in the statistical literature. Using inductive methods of prognostic models based on temporal sequence discovery within the bootstrap procedure is however novel at least in predictive models in the Intensive Care. Our results of applying the bootstrap-based evaluative procedure demonstrate the superiority of the FTS-based inductive method over the traditional method in terms of discrimination as well as accuracy. In addition we illustrate the insights gained by the analyst into the discovered FTSs from the bootstrap samples.
机译:重症监护中的一个重要问题是如何预测在给定的住院天中特定患者的最终医院死亡率。解决该问题的最新方法建议使用频繁时间序列(FTS)作为预测因子。过去,通过从训练集中引入模型并在独立测试集中验证预后表现来评估采用这种方法的方法。尽管这种评估方法解决了在实验中引入的特定模型的有效性,但仍未能评估归纳方法本身。为了实现这一目标,必须考虑到实验设计中固有的变化源。这项工作的主要目的是演示一种基于引导的过程,特别是.632引导过程,用于评估发现模式的归纳方法,例如FTS。第二个目的是应用这种方法来发现最近建议的一种发现器官功能状态FTS的归纳方法是否优于在重症监护室连续第二天住院时不使用时间序列的传统方法。在统计文献中,使用通过自定义协变量进行逻辑回归的自举法是众所周知的。然而,至少在重症监护的预测模型中,使用基于引导程序内时间序列发现的预后模型的归纳方法是新颖的。我们应用基于引导程序的评估程序的结果证明了基于FTS的归纳方法在区分和准确性方面优于传统方法。此外,我们还说明了分析师对自举样本中发现的FTS的见解。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号