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首页> 外文期刊>Drug and alcohol dependence >Psychometric modeling of cannabis initiation and use and the symptoms of cannabis abuse, dependence and withdrawal in a sample of male and female twins.
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Psychometric modeling of cannabis initiation and use and the symptoms of cannabis abuse, dependence and withdrawal in a sample of male and female twins.

机译:男性和女性双胞胎样本中大麻起始和使用以及大麻滥用,依赖和戒断症状的心理计量学建模。

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BACKGROUND: Despite an emerging consensus that the DSM-IV diagnostic criteria for cannabis abuse and dependence are best represented by a single underlying liability, it remains unknown if latent class or hybrid models can better explain the data. METHOD: Using structured interviews, 7316 adult male and female twins provided complete data on DSM-IV symptoms of cannabis abuse and dependence. Our aim was to derive a parsimonious, best-fitting cannabis use disorder (CUD) phenotype based on DSM-III-R/IV criteria by comparing an array of psychometric models (latent factor analysis, latent class analysis and factor mixture modeling) using full information maximum likelihood ordinal data methods in Mx. RESULTS: We found little evidence to support population heterogeneity since neither latent class nor hybrid factor mixture models provided a consistently good fit to the data. When conditioned on initiation and cannabis use, the endorsement patterns of the abuse, dependence and withdrawal criteria were best explained by two latent factors for males and females. The first was a general CUD factor for which genetic effects explained 53-54% of the variance. A less interpretable second factor included a mix of cross-loading dependence and withdrawal symptoms. CONCLUSIONS: This is the first study to compare competing measurement models to derive an empirically determined CUD phenotype. Commensurate with proposed changes to substance use disorders in the DSM-V, our results support an emerging consensus that a single CUD latent factor can more optimally assess the risk or liability underpinning correlated measures of use, abuse, dependence and withdrawal criterion.
机译:背景:尽管已经达成共识,即DSM-IV的大麻滥用和依赖性诊断标准可以最好地由单一的潜在责任来表示,但是隐性分类或混合模型能否更好地解释数据仍然是未知的。方法:通过结构化访谈,共有7316名成年男性和女性双胞胎提供了有关滥用和依赖大麻的DSM-IV症状的完整数据。我们的目标是通过比较一系列心理测量模型(潜在因素分析,潜在类别分析和因素混合物建模),基于DSM-III-R / IV标准,得出一种简约,最适合的大麻使用障碍(CUD)表型Mx中的信息最大似然序数数据方法。结果:由于潜在类别和混合因子混合模型都不能始终如一地拟合数据,因此我们几乎没有证据支持群体异质性。当以启动和使用大麻为条件时,对男性,女性的两个潜在因素最好地解释了滥用,依赖和戒断标准的认可方式。首先是一般的CUD因子,其遗传效应解释了53-54%的变异。难以解释的第二个因素包括交叉负荷依赖和戒断症状的混合。结论:这是第一项比较竞争性测量模型以得出经验确定的CUD表型的研究。与DSM-V中物质使用障碍的拟议变化相符,我们的结果支持了一个新出现的共识,即单个CUD潜在因素可以更优化地评估风险或责任,这些风险或责任是使用,滥用,依赖和退出标准的相关度量标准。

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