GASP: Graph-based Approximate Sequential Pattern Mining for Electronic Health Records.

Wenqin Dong, Eric W Lee, Vicki Stover Hertzberg, Roy L Simpson, Joyce C Ho
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引用次数: 2

Abstract

Sequential pattern mining can be used to extract meaningful sequences from electronic health records. However, conventional sequential pattern mining algorithms that discover all frequent sequential patterns can incur a high computational and be susceptible to noise in the observations. Approximate sequential pattern mining techniques have been introduced to address these shortcomings yet, existing approximate methods fail to reflect the true frequent sequential patterns or only target single-item event sequences. Multi-item event sequences are prominent in healthcare as a patient can have multiple interventions for a single visit. To alleviate these issues, we propose GASP, a graph-based approximate sequential pattern mining, that discovers frequent patterns for multi-item event sequences. Our approach compresses the sequential information into a concise graph structure which has computational benefits. The empirical results on two healthcare datasets suggest that GASP outperforms existing approximate models by improving recoverability and extracts better predictive patterns.

Abstract Image

Abstract Image

基于图的电子健康记录近似顺序模式挖掘。
顺序模式挖掘可用于从电子健康记录中提取有意义的序列。然而,传统的顺序模式挖掘算法发现所有频繁的顺序模式会导致高计算量,并且容易受到观测噪声的影响。近似序列模式挖掘技术是为了解决这些问题而引入的,但现有的近似方法不能反映真实的频繁序列模式或仅针对单项事件序列。多项目事件序列在医疗保健中很重要,因为患者可以在一次就诊中进行多种干预。为了缓解这些问题,我们提出了GASP,一种基于图的近似顺序模式挖掘,它可以发现多项目事件序列的频繁模式。我们的方法将序列信息压缩成简洁的图结构,具有计算优势。在两个医疗数据集上的实证结果表明,GASP通过提高可恢复性和提取更好的预测模式来优于现有的近似模型。
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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