以耳鸣为例,通过多层网络分析发现患者表型

Clara Puga, Uli Niemann, Vishnu Unnikrishnan, Miro Schleicher, W. Schlee, M. Spiliopoulou
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引用次数: 4

摘要

电子健康记录(EHR)通常包括对患者当前健康状况的多个视角(例如,生命体征和通过问卷测量的主观指标)。在这项研究中,我们使用这些观点来建立慢性耳鸣患者的表型,并研究这些表型如何与治疗反应相关。因此,我们将患者建模为网络中的节点,其中这些视角被解释为多层网络的层。为了识别网络中患者的表型,我们实现了一个社区检测算法。这些社区中的一些可以被认为是表型,如果他们代表亚组的患者是相似的,根据调查的观点。此外,我们还分析了分层对患者最终社区结构的影响。然后,我们提出了一种基于群体结构相似度的分层添加方法。最后,我们根据每个社区拟合一个模型来预测治疗结果。在一些社区,这种预测优于基线情景,预测器适用于所有患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovery of Patient Phenotypes through Multi-layer Network Analysis on the Example of Tinnitus
Electronic health records (EHR) often include multiple perspectives on a patient's current state of well-being (e.g. vital signs and subjective indicators measured by questionnaires). In this study, we use these perspectives to build phenotypes of chronic tinnitus patients and investigate how these phenotypes are associated with response to treatment. Therefore, we model patients as nodes in a network, where those perspectives are interpreted as layers of a multi-layer network. To identify phenotypes of patients in the network, we implement a community detection algorithm. Some of these communities can be considered as phenotypes if they represent subgroups of patients that are similar according to the investigated perspectives. Furthermore, we analyze the influence of the layers on the final community structure of patients. We then propose a method to add layers given their community structure similarity. Finally, we fit a model, per community, to predict the treatment outcome. In some communities, this prediction outperformed the baseline scenario where the predictor was fitted to all patients.
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