Opening the Black Box: Exploring Temporal Pattern of Type 2 Diabetes Complications in Patient Clustering Using Association Rules and Hidden Variable Discovery

Leila Yousefi, S. Swift, Mahir Arzoky, L. Sacchi, L. Chiovato, A. Tucker
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引用次数: 4

Abstract

There is a great deal of debate over the importance of explanation in AI models inferred from health data. In particular, there is a balance that needs to be made between the accuracy of complex 'deep' models such as convolutional neural networks and the transparency of models that aim to model data in a more 'human' way such as expert systems. In this paper, we explore the use of temporal association rules to validate and uncover the meaning behind discrete hidden variables that have been inferred from clinical diabetes data. We use a recently published technique based upon the IC* (Induction Causation) algorithm that limits the number of hidden variables and places them within a network structure. Here, we take the hidden variables and compare their underlying discrete states to clusters that have been generated from temporal association rules. This allows us to characterise the hidden states based upon different sequences of complications. Results are very promising, with many hidden states aligning with the discovered clusters giving us a direct interpretation.
打开黑箱:利用关联规则和隐藏变量发现探索患者聚类中2型糖尿病并发症的时间模式
关于从健康数据推断出的人工智能模型中解释的重要性,存在大量争论。特别是,需要在复杂的“深度”模型(如卷积神经网络)的准确性和旨在以更“人性化”的方式(如专家系统)建模数据的模型(如专家系统)的透明度之间取得平衡。在本文中,我们探索使用时间关联规则来验证和揭示从临床糖尿病数据推断出的离散隐藏变量背后的含义。我们使用了最近发表的一种基于IC*(归纳因果关系)算法的技术,该算法限制了隐藏变量的数量并将它们置于网络结构中。在这里,我们采用隐藏变量,并将其潜在的离散状态与从时间关联规则生成的集群进行比较。这使我们能够根据不同的复杂序列来描述隐藏状态。结果非常有希望,许多隐藏状态与发现的星团一致,给了我们一个直接的解释。
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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