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The Cohesion-Based Communities of Symptoms of the Largest Component of the DSM-IV Network

机译:DSM-IV网络最大组件的症状基于凝聚力的社区

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摘要

Modern methods for network analytics provide an opportunity to revisit preconceived notions in the classification of diseases as "clusters of symptoms". Curated collections which were subsequently modified, like the Diagnostic and Statistical Manuals of Mental Disorders "DSM-IV" and the most recent addition, DSM-5 allow us to introspect, using the solution provided by modern algorithms, if there exists a consensus between the clusters obtained via a data-driven approach, with the current classifications. In the case of mental disorders, the availability of a follow-up consensus collection (e.g. in this case the DSM-5), potentially allows investigating if the classification of disorders has moved closer (or away) to what a data-driven analytic approach would have unveiled by objectively inferring it from the data of DSM-IV. In this contribution, we present a new type of mathematical approach based on a global cohesion score which we introduce for the first time for the identification of communities of symptoms. Different from other approaches, this combinatorial optimization method is based on the identification of "triangles" in the network; these triads are the building block of feedback loops that can exist between groups of symptoms. We used a memetic algorithm to obtain a collection of highly connected-cohesive sets of symptoms and we compare the resulting community structure with the classification of disorders present in the DSM-IV. Network analysis; psychopathology; community detection; memetic algorithms; psychometrics
机译:网络分析的现代方法提供了一个机会,可以重新审视将疾病分类为“症状群”的先入之见。经过整理的馆藏,如《精神障碍诊断和统计手册》“ DSM-IV”以及最新的修订版,DSM-5使我们可以使用现代算法提供的解决方案进行自省(如果存在共识)在通过数据驱动的方法获得的集群之间进行分类。就精神障碍而言,后续共识集合(例如在这种情况下为DSM-5)的可用性可能允许调查障碍的分类是否已接近(或远离)数据驱动的分析方法可以通过客观地从DSM-IV的数据中推断出来来揭示。在这项贡献中,我们提出了一种基于全球凝聚力评分的新型数学方法,这是我们首次引入以识别症状社区的方法。与其他方法不同,这种组合优化方法是基于网络中“三角形”的标识。这些三合会是症状组之间可能存在的反馈循环的基础。我们使用一种模因算法来获得症状的高度关联的内聚集合,并且我们将所得的社区结构与DSM-IV中存在的疾病分类进行了比较。网络分析;心理病理学社区检测;模因算法;心理测验

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  • 来源
    《Journal of interconnection networks》 |2019年第1期|1940002.1-1940002.20|共20页
  • 作者单位

    School of Electrical Engineering and Computing, The University of Newcastle University Drive, Callaghan, NSW 2308, Australia;

    School of Electrical Engineering and Computing, The University of Newcastle University Drive, Callaghan, NSW 2308, Australia;

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  • 入库时间 2022-08-18 04:21:23

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