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Clustering Patient Medical Records via Sparse Subspace Representation

机译:通过稀疏子空间表示对患者病历进行聚类

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The health industry is facing increasing challenge with "big data" as traditional methods fail to manage the scale and complexity. This paper examines clustering of patient records for chronic diseases to facilitate a better construction of care plans. We solve this problem under the framework of subspace clustering. Our novel contribution lies in the exploitation of sparse representation to discover subspaces automatically and a domain-specific construction of weighting matrices for patient records. We show the new formulation is readily solved by extending existing e_1-regularized optimization algorithms. Using a cohort of both diabetes and stroke data we show that we outperform existing benchmark clustering techniques in the literature.
机译:由于传统方法无法管理规模和复杂性,因此卫生行业面临的“大数据”挑战日益严峻。本文研究了慢性病患者记录的分类,以促进更好地制定护理计划。我们在子空间聚类的框架下解决了这个问题。我们的新颖贡献在于利用稀疏表示来自动发现子空间以及针对患者记录的加权矩阵的特定于域的构造。我们表明,通过扩展现有的e_1-regularized优化算法可以轻松解决新公式。使用糖尿病和中风数据的队列研究表明,我们优于文献中现有的基准聚类技术。

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