利用出院摘要对重症监护中的低血压患者进行表型分析。

Yang Dai, Sharukh Lokhandwala, William Long, Roger Mark, Li-Wei H Lehman
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摘要

在重症患者中,低血压代表着代偿机制的失败,可能导致器官灌注不足和衰竭。在这项工作中,我们采用了一种数据驱动的方法来发现表型,并将重症监护室(ICU)中患者的相似性和队列结构可视化。我们使用分层 Dirichlet 过程(HDP)作为非参数主题建模技术,自动学习患者的 d 维特征表示,捕捉出院摘要中记录的疾病、症状、药物和检查结果的潜在 "主题 "结构。然后,我们使用 t 分布随机邻域嵌入(t-SNE)算法,将从 HDP 中学习到的 d 维潜在结构转换成成对相似性矩阵,以可视化患者相似性和队列结构。利用 MIMIC II 数据库中一个大型患者队列的出院摘要,我们评估了所发现的主题结构在经历过低血压发作的重症患者表型中的临床实用性。我们的结果表明,这种方法能够揭示队列中临床上可解释的聚类结构,并有可能为更好地理解疾病表型和预后之间的关联提供有价值的见解。
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Phenotyping Hypotensive Patients in Critical Care Using Hospital Discharge Summaries.

Among critically-ill patients, hypotension represents a failure in compensatory mechanisms and may lead to organ hypoperfusion and failure. In this work, we adopt a data-driven approach for phenotype discovery and visualization of patient similarity and cohort structure in the intensive care unit (ICU). We used Hierarchical Dirichlet Process (HDP) as a nonparametric topic modeling technique to automatically learn a d-dimensional feature representation of patients that captures the latent "topic" structure of diseases, symptoms, medications, and findings documented in hospital discharge summaries. We then used the t-Distributed Stochastic Neighbor Embedding (t-SNE) algorithm to convert the d-dimensional latent structure learned from HDP into a matrix of pairwise similarities for visualizing patient similarity and cohort structure. Using discharge summaries of a large patient cohort from the MIMIC II database, we evaluated the clinical utility of the discovered topic structure in phenotyping critically-ill patients who experienced hypotensive episodes. Our results indicate that the approach is able to reveal clinically interpretable clustering structure within our cohort and may potentially provide valuable insights to better understand the association between disease phenotypes and outcomes.

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