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Clustering Longitudinal Clinical Marker Trajectories from Electronic Health Data: Applications to Phenotyping and Endotype Discovery

机译:从电子健康数据中聚类纵向临床标记轨迹:应用于表型和内型发现的应用

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Diseases such as autism, cardiovascular disease, and the autoimmune disorders are difficult to treat because of the remarkable degree of variation among affected individuals. Subtyping research seeks to refine the definition of such complex, multi-organ diseases by identifying homogeneous patient subgroups. In this paper, we propose the Probabilistic Subtyping Model (PSM) to identify subgroups based on clustering individual clinical severity markers. This task is challenging due to the presence of nuisance variability—variations in measurements that are not due to disease subtype—which, if not accounted for, generate biased estimates for the group-level trajectories. Measurement sparsity and irregular sampling patterns pose additional challenges in clustering such data. PSM uses a hierarchical model to account for these different sources of variability. Our experiments demonstrate that by accounting for nuisance variability, PSM is able to more accurately model the marker data. We also discuss novel subtypes discovered using PSM and the resulting clinical hypotheses that are now the subject of follow up clinical experiments.
机译:由于受影响的个体之间的显着变异程度,难以治疗疾病,如自闭症,心血管疾病和自身免疫疾病。亚型研究通过识别均质患者亚组来解决这些复杂的多器官疾病的定义。在本文中,我们提出了概率亚型模型(PSM)来鉴定基于聚类个体临床严重性标记的亚组。由于存在令人滋扰的变化 - 由于疾病亚型而导致的测量的变化,这项任务是具有挑战性的 - 如果没有占疾病,那么如果没有占,那么为组级轨迹产生偏置估计。测量稀疏性和不规则采样模式在聚类这些数据中提出了额外的挑战。 PSM使用分层模型来解释这些不同的可变性源。我们的实验表明,通过核对滋扰变化,PSM能够更准确地模拟标记数据。我们还讨论了使用PSM发现的新型亚型和所得临床假设,现在是跟进临床实验的主题。

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