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Frequency Tree Clustering for ICU Mortality Analytics using Graph Databases Circulatory System Diseases Case Study

机译:使用图数据库循环系统疾病案例研究的ICU死亡率分析的频率树聚类

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Mortality analytics is an emerging research area that discovers and communicates meaningful patterns in clinical data to reduce mortality rates. Nonetheless, intensive care unit (ICU) mortality analytics for leading causes, such as circulatory system diseases (CDS), is still complicated due to the interactions of different mortality causes. To improve analytics accuracy and quality, clustering analysis can provide clinicians with interpretable insights about clinical data. Although robust tools to support the clinicians are still emerging. Recently, Frequency Tree (F-Tree) has been utilized effectively to cluster data points using the frequencies of data categories. While F-Tree clustering would result in interpretable data patterns and effective (accurate) clustering in various domains, straightforward adoption of F-Tree clustering in healthcare domain will be hindered by memory overhead and slow analytics retrieval. In this regard, we propose an integration between F-Tree clustering and graph databases as a ICU mortality analytics tool that enriches F-Tree with a robust retrieval engine. Modeling F-Tree using such a retrieval engine improves its clustering and association retrieval quality in terms of interpretability, scalability, and efficiency (timing) assessments.
机译:死亡率分析是一个出现的研究区域,在临床数据中发现和传达有意义的模式,以减少死亡率。尽管如此,由于不同死亡率的相互作用,强化护理单位(ICU)导致循环系统疾病(CDS)等循环系统疾病(CDS)的死亡率分析仍然变得复杂。为了提高分析准确性和质量,聚类分析可以为临床医生提供有关临床数据的可解释的见解。虽然支持临床医生的强大工具仍然是新兴的。最近,频率树(F树)已经用数据类别的频率有效地利用群集数据点。虽然F-Tree聚类将导致可解释的数据模式和有效(准确)在各个域中的聚类,但是在医疗领域中的F-Tree聚类的直接采用将受到内存开销和慢速分析检索的阻碍。在这方面,我们提出了F-Tree聚类和图形数据库之间的集成,作为ICU死亡率分析工具,以强大的检索引擎丰富F树。使用这种检索引擎建模F树在可解释性,可扩展性和效率(时序)评估方面提高了其聚类和关联检索质量。

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