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Co-occurrence of medical conditions: Exposing patterns throughprobabilistic topic modeling of snomed codes

机译:并存的医疗条件:通过标称代码的概率主题建模

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摘要

Patients associated with multiple co-occurring health conditions often face aggravated complications and less favorable outcomes. Co-occurring conditions are especially prevalent among individuals suffering from kidney disease, an increasingly widespread condition affecting 13% of the general population in the US. This study aims to identify and characterize patterns of co-occurring medical conditions in patients employing a probabilistic framework. Specifically, we apply topic modeling in a non-traditional way to find associations across SNOMED-CT codes assigned and recorded in the EHRs of > 13,000 patients diagnosed with kidney disease. Unlike most prior work on topic modeling, we apply the method to codes rather than to natural language. Moreover, we quantitatively evaluate the topics, assessing their tightness and distinctiveness, and also assess the medical validity of our results. Our experiments show that each topic is succinctly characterized by a few highly probable and unique disease codes, indicating that the topics are tight. Furthermore, inter-topic distance between each pair of topics is typically high, illustrating distinctiveness. Last, most coded conditions grouped together within a topic, are indeed reported toco-occur in the medical literature. Notably, our results uncover a few indirectassociations among conditions that have hitherto not beenreported as correlated in the medical literature.
机译:与多种同时出现的健康状况相关的患者通常会面临严重的并发症和不良的预后。并发疾病在患有肾脏疾病的个体中尤为普遍,这是一种越来越普遍的疾病,影响了美国13%的总人口。这项研究旨在确定和表征采用概率框架的患者中同时发生的医疗状况的模式。具体而言,我们以非传统方式应用主题建模,以查找在分配给SNOMED-CT代码并记录在诊断为肾脏疾病的13,000例患者的EHR中的SNOMED-CT代码之间的关联。与大多数以前的主题建模工作不同,我们将方法应用于代码而不是自然语言。此外,我们对主题进行定量评估,评估其紧密性和独特性,并评估结果的医学有效性。我们的实验表明,每个主题都以一些高度可能且独特的疾病代码简洁地表示出来,表明这些主题很紧。此外,每对主题之间的主题间距离通常较高,说明了区别。最后,将一个主题中分组在一起的大多数编码条件确实报告给在医学文献中同时出现。值得注意的是,我们的结果揭示了一些间接迄今为止尚未达到的条件之间的关联据医学文献报道。

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