电子健康档案发现知识的可信解释

Bikramjit Singh Dhaliwal, Rayan Imran, C. Leung, Evan W. R. Madill
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引用次数: 4

摘要

在当前的大数据时代,大量的数据正在从各种各样的丰富数据源中快速生成。电子健康(e-health)记录是大数据的例子。随着技术的进步,越来越多的医疗保健实践逐渐得到电子流程和通信的支持。这使得健康信息学成为可能,其中计算机科学与医疗保健部门相结合,以解决医疗保健和医疗问题。大数据中包含有价值的信息和知识,可以通过数据科学、数据挖掘和机器学习技术来发现。许多这些技术采用“不透明盒子”方法来做出准确的预测。然而,这些技术对用户来说可能不是很清楚。由于用户不一定能够清楚地看到整个知识发现(如预测)过程,他们可能不容易信任发现的知识(如预测)。因此,在本文中,我们提出了一个系统,为从电子健康记录中发现的知识提供可信的解释。具体来说,我们的系统为用户提供了记录中重要特征的全局解释。它还为用户提供特定记录的本地解释。对现实生活中的电子健康记录的评估结果表明,我们的系统在为发现的知识提供可信的解释(例如,做出准确的预测)方面具有实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trustworthy Explanations for Knowledge Discovered from E-Health Records
In the current era of big data, very large amounts of data are generating at a rapid rate from a wide variety of rich data sources. Electronic health (e-health) records are examples of the big data. With the technological advancements, more healthcare practice has gradually been supported by electronic processes and communication. This enables health informatics, in which computer science meets the healthcare sector to address healthcare and medical problems. Embedded in the big data are valuable information and knowledge that can be discovered by data science, data mining and machine learning techniques. Many of these techniques apply "opaque box" approaches to make accurate predictions. However, these techniques may not be crystal clear to the users. As the users not necessarily be able to clearly view the entire knowledge discovery (e.g., prediction) process, they may not easily trust the discovered knowledge (e.g., predictions). Hence, in this paper, we present a system for providing trustworthy explanations for knowledge discovered from e-health records. Specifically, our system provides users with global explanations for the important features among the records. It also provides users with local explanations for a particular record. Evaluation results on real-life e-health records show the practicality of our system in providing trustworthy explanations to knowledge discovered (e.g., accurate predictions made).
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