基于因果关联规则改进个性化临床风险预测。

Chih-Wen Cheng, May D Wang
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引用次数: 4

摘要

建立临床风险预测模型是医疗数据挖掘的主要任务之一。在当前的大数据时代,先进的数据收集技术创造了对可扩展的、基于计算机的数据挖掘方法的新兴和迫切需求。这些方法可以以灵活、经济、高效的方式将数据转化为有用的、个性化的决策支持知识。在我们之前的研究中,我们开发了一个名为icuARM- II的工具,它可以使用时间规则挖掘框架生成个性化的临床风险预测证据。然而,icuARM-II的最终风险预测可能性的产生仍然依赖于人类的解释,这是主观的,而且大多数时候是有偏见的。在本研究中,我们提出了一种新的机制,通过引入因果分析的概念来改善icuARM-II的规则选择。生成的风险预测使用校准统计量进行定量评估。为了评估新规则选择机制的性能,我们进行了一个基于个性化实验室检测异常预测短期重症监护病房死亡率的案例研究。我们的研究结果表明,与传统的仅限置信度的规则选择方法相比,使用新的基于因果关系的规则选择解决方案可以更好地校准ICU风险预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Improving Personalized Clinical Risk Prediction Based on Causality-Based Association Rules.

Improving Personalized Clinical Risk Prediction Based on Causality-Based Association Rules.

Improving Personalized Clinical Risk Prediction Based on Causality-Based Association Rules.

Improving Personalized Clinical Risk Prediction Based on Causality-Based Association Rules.

Developing clinical risk prediction models is one of the main tasks of healthcare data mining. Advanced data collection techniques in current Big Data era have created an emerging and urgent need for scalable, computer-based data mining methods. These methods can turn data into useful, personalized decision support knowledge in a flexible, cost-effective, and productive way. In our previous study, we developed a tool, called icuARM- II, that can generate personalized clinical risk prediction evidence using a temporal rule mining framework. However, the generation of final risk prediction possibility with icuARM-II still relied on human interpretation, which was subjective and, most of time, biased. In this study, we propose a new mechanism to improve icuARM-II's rule selection by including the concept of causal analysis. The generated risk prediction is quantitatively assessed using calibration statistics. To evaluate the performance of the new rule selection mechanism, we conducted a case study to predict short-term intensive care unit mortality based on personalized lab testing abnormalities. Our results demonstrated a better-calibrated ICU risk prediction using the new causality-base rule selection solution by comparing with conventional confidence-only rule selection methods.

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