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Using Unsupervised Clustering to Identify Pregnancy Co-Morbidities

机译:使用无监督聚类来识别妊娠合并症

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摘要

Absent a priori knowledge, unsupervised techniques identify meaningful clusters that can form the basis for subsequent analyses. This study explored the problem of inferring comorbidity-based profiles of complex diseases through unsupervised clustering methodologies. This study first considered the K-Modes algorithm, followed by, the self organizing map (SOM) technique to extract co-morbidity based clusters from a healthcare discharge dataset. After validation of general cluster composition for diabetes mellitus, co-morbidity based clusters were identified for pregnancy. The SOM technique was found to infer distinct clusterings of pregnancy ranging from normal birth to preterm birth, and potentially interesting comorbidities that could be validated by published literature The promising results suggest that the SOM technique is a valuable unsupervised clustering method for discovering co-morbidity based clusters.
机译:缺乏先验知识,无监督的技术可以识别出有意义的聚类,这些聚类可以构成后续分析的基础。本研究探讨了通过无监督聚类方法来推断基于合并症的复杂疾病的问题。这项研究首先考虑了K-Modes算法,然后考虑了自组织图(SOM)技术从医疗保健出院数据集中提取基于合并症的聚类。在确认了糖尿病的总体簇组成后,确定了基于合并症的簇用于妊娠。发现SOM技术可以推断出从正常分娩到早产的各种不同的妊娠聚类,以及潜在有趣的合并症,可以通过已发表的文献进行验证。有希望的结果表明,SOM技术是一种有价值的无监督聚类方法,可用于发现合并症。集群。

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