Department of Computer and Data Sciences, Case Western Reserve University, Cleveland, OH, USA.
Department of Applied and Professional Studies, Texas Tech University, Lubbock, TX, USA.
Sci Rep. 2021 Mar 24;11(1):6736. doi: 10.1038/s41598-021-85947-3.
Intimate partner violence (IPV) is a complex problem with multiple layers of heterogeneity. We took a data-driven approach to characterize this heterogeneity. We integrated data from different studies, representing 640 individuals from various backgrounds. We used hierarchical clustering to systematically group cases in terms of their similarities according to violence variables. Results suggested that the cases can be clustered into 12 hierarchically organized subgroups, with verbal abuse and negotiation being the main discriminatory factors at higher levels. The presence of physical assault, injury, and sexual coercion was discriminative at lower levels of the hierarchy. Subgroups also exhibited significant differences in terms of relationship dynamics and individual factors. This study represents an attempt toward using integrative data analysis to understand the etiology of violence. These results can be useful in informing treatment efforts. The integrative data analysis framework we develop can also be applied to various other problems.
亲密伴侣暴力(IPV)是一个具有多层次异质性的复杂问题。我们采取了数据驱动的方法来描述这种异质性。我们整合了来自不同研究的数据,这些数据代表了来自不同背景的 640 个人。我们使用层次聚类根据暴力变量系统地对病例进行相似性分组。结果表明,根据暴力变量,病例可以聚类为 12 个层次组织的亚组,言语虐待和协商是较高层次的主要区分因素。身体攻击、伤害和性胁迫的存在在层次结构的较低级别具有区分性。亚组在关系动态和个体因素方面也表现出显著差异。这项研究代表了使用综合数据分析来理解暴力病因的尝试。这些结果可用于为治疗工作提供信息。我们开发的综合数据分析框架也可应用于各种其他问题。