Christian Hall, Joshua Broman-Fulks, Christopher Holden, Shawn Bergman
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引用次数: 0
摘要
恐慌症的治疗成本很高,虽然以证据为基础的恐慌症干预措施很有效,但要获得诊断结果往往会使患者无法接受此类治疗。这是一个问题,因为现代诊断手册所支持的恐慌症分类诊断(即 "你有,或者你没有")与经验支持的恐慌症维度模型相矛盾。分类分析法可以测试结构体的维度或分类潜在结构,在应用于其他焦虑症和恐慌相关过程时,该方法一直显示出维度潜在结构,但分类分析法从未应用于恐慌症。为了弥补文献中的这一空白,我们将三种非冗余的分类计量程序应用于恐慌症的七个理论相关指标,这些指标来自于通过亚马逊 Mechanical Turk 招募的 663 名参与者的恐慌症严重程度量表数据。同时还对模拟对比图和客观拟合指数进行了评估。总体结果为恐慌症的维度模型提供了一致的经验支持,CCFI 的总体平均得分为 0.39。本研究结果对惊恐障碍的测量、评估、诊断和治疗的意义进行了讨论。
Panic disorder is costly, and while evidence-based interventions for panic disorder are effective, obtaining a diagnosis often precludes access to such treatments. This is problematic because the categorical diagnosis of panic disorder (i.e. "you have it, or you don't") supported by modern diagnostic manuals contradicts empirically supported dimensional models of panic disorder. Taxometric analyses, which test the dimensional or categorical latent structure of constructs, have consistently revealed dimensional latent structures when applied to other anxiety disorders and panic-related processes, but taxometric analyses have never been applied to panic disorder. To address this gap in the literature, three nonredundant taxometric procedures were applied to seven theoretically-relevant indicators of panic disorder derived from Panic Disorder Severity Scale data collected from 663 participants recruited via Amazon Mechanical Turk. Simulated comparison plots and objective fit indices were also evaluated. The collective results provided consistent empirical support for a dimensional model of panic disorder, with an overall mean CCFI score of .39. The implications of the present findings for the measurement, assessment, diagnosis, and treatment of panic disorder are discussed.
期刊介绍:
ACS Applied Energy Materials is an interdisciplinary journal publishing original research covering all aspects of materials, engineering, chemistry, physics and biology relevant to energy conversion and storage. The journal is devoted to reports of new and original experimental and theoretical research of an applied nature that integrate knowledge in the areas of materials, engineering, physics, bioscience, and chemistry into important energy applications.