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抑郁症亚型分类:测试算法与分层模型的识别

Subtyping depression: testing algorithms and identification of a tiered model.

作者信息

Parker G, Wilhelm K, Mitchell P, Roy K, Hadzi-Pavlovic D

机构信息

School of Psychiatry, University of New South Wales, Prince of Wales Hospital, Randwick, Australia.

出版信息

J Nerv Ment Dis. 1999 Oct;187(10):610-7. doi: 10.1097/00005053-199910000-00004.

Abstract

We seek to distinguish psychotic, melancholic, and nonmelancholic depression by clinical features and to test varying algorithm models to determine optimal criteria sets. We report a study of 269 depressed inpatients and outpatients. A latent class analysis (LCA) of 16 clinical features allowed for specificity or overrepresentation of features to be examined across the three classes. Varying algorithm models for distinguishing melancholic and nonmelancholic depression, involving endogeneity symptoms and observer-rated psychomotor disturbance (PMD) were compared. Psychotic depression was readily distinguished by the specific presence of psychotic features, and PMD was most severe in this class. Melancholic depression was most clearly distinguished from the residual nonmelancholic class by the presence of PMD. Although some endogeneity symptoms were overrepresented in the melancholic class, their specificity was unimpressive. An algorithm involving PMD components alone was highly efficient in discriminating LCA classes and, more importantly, superior to DSM-IV decision rules when examined against a range of clinical validators of melancholia. Subtyping appears assisted by a hierarchical model, based on a small set of features. The move from nonmelancholic to melancholic depression appears defined by a tier of observably rated PMD, whereas the move from melancholic to psychotic depression is determined by a tier of psychotic features and contributed to by significantly higher levels of PMD.

摘要

我们试图通过临床特征来区分精神病性抑郁、 melancholic 抑郁和非 melancholic 抑郁,并测试不同的算法模型以确定最佳标准集。我们报告了一项对269名住院和门诊抑郁症患者的研究。对16项临床特征进行潜在类别分析(LCA),以检查三类特征的特异性或过度代表性。比较了区分 melancholic 抑郁和非 melancholic 抑郁的不同算法模型,包括内生性症状和观察者评定的精神运动障碍(PMD)。精神病性抑郁可通过精神病性特征的特定存在轻易区分,且该类别中 PMD 最为严重。Melancholic 抑郁与残余的非 melancholic 类别最明显的区别在于存在 PMD。尽管一些内生性症状在 melancholic 类别中过度存在,但其特异性并不显著。仅涉及 PMD 成分的算法在区分 LCA 类别方面效率很高,更重要的是,在与一系列 melancholia 的临床验证指标进行比较时,优于 DSM-IV 决策规则。基于一小部分特征的层次模型似乎有助于亚型分类。从非 melancholic 抑郁到 melancholic 抑郁的转变似乎由一级可观察到的 PMD 定义,而从 melancholic 抑郁到精神病性抑郁的转变则由一级精神病性特征决定,并由显著更高水平的 PMD 促成。

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