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Using Cluster Ensembles to Identify Psychiatric Patient Subgroups

机译:使用群集集成识别精神病患者亚组

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Identification of patient subgroups is an important process for supporting clinical care in many medical specialties. In psychiatry, patient stratification is mainly done using a psychiatric diagnosis following the Diagnostic and Statistical Manual of Mental Disorders (DSM). Diagnostic categories in the DSM are however heterogeneous, and many symptoms cut across several diagnoses, leading to criticism of this approach. Data-driven approaches using clustering algorithms have recently been proposed, but have suffered from subjectivity in choosing a number of clusters and a clustering algorithm. We therefore propose to apply cluster ensemble techniques to the problem of identifying subgroups of psychiatric patients, which have previously been shown to overcome drawbacks of individual clustering algorithms. We first introduce a process guide for modelling and evaluating cluster ensembles in the form of a Meta Algorithmic Model. Then, we apply cluster ensembles to a novel cross-diagnostic dataset from the Psychiatry Department of the University Medical Center Utrecht in the Netherlands. We finally describe the clusters that are identified, and their relations to several clinically relevant variables.
机译:在许多医学专业中,识别患者亚组是支持临床护理的重要过程。在精神病学中,患者分层主要是根据《精神疾病诊断和统计手册》(DSM)进行的精神病学诊断进行的。然而,DSM中的诊断类别是异类的,许多症状跨越了多个诊断,从而导致对该方法的批评。最近提出了使用聚类算法的数据驱动方法,但是在选择多个聚类和聚类算法时存在主观性。因此,我们建议将聚类集成技术应用于识别精神病患者亚组的问题,该问题先前已被证明克服了个体聚类算法的缺点。我们首先介绍一种以元算法模型的形式对集群集成进行建模和评估的过程指南。然后,我们将集群合奏应用于荷兰乌得勒支大学医学中心精神病学系的新型交叉诊断数据集。我们最后描述了已识别的簇及其与几个临床相关变量的关系。

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