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首页> 外文期刊>Journal of psychiatric research >Differentiation of women with premenstrual dysphoric disorder, recurrent brief depression, and healthy controls by daily mood rating dynamics.
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Differentiation of women with premenstrual dysphoric disorder, recurrent brief depression, and healthy controls by daily mood rating dynamics.

机译:通过每日情绪等级动态,区分经前烦躁不安,反复发作的短暂抑郁和健康对照的女性。

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摘要

Enhanced statistical characterization of mood-rating data holds the potential to more precisely classify and sub-classify recurrent mood disorders like premenstrual dysphoric disorder (PMDD) and recurrent brief depressive disorder (RBD). We applied several complementary statistical methods to differentiate mood rating dynamics among women with PMDD, RBD, and normal controls (NC). We compared three subgroups of women: NC (n=8); PMDD (n=15); and RBD (n=9) on the basis of daily self-ratings of sadness, study lengths between 50 and 120 days. We analyzed mean levels; overall variability, SD; sequential irregularity, approximate entropy (ApEn); and a quantification of the extent of brief and staccato dynamics, denoted 'Spikiness'. For each of SD, irregularity (ApEn), and Spikiness, we showed highly significant subgroup differences, ANOVA0.001 for each statistic; additionally, many paired subgroup comparisons showed highly significant differences. In contrast, mean levels were indistinct among the subgroups. For SD, normal controls had much smaller levels than the other subgroups, with RBD intermediate. ApEn showed PMDD to be significantly more regular than the other subgroups. Spikiness showed NC and RBD data sets to be much more staccato than their PMDD counterparts, and appears to suitably characterize the defining feature of RBD dynamics. Compound criteria based on these statistical measures discriminated diagnostic subgroups with high sensitivity and specificity. Taken together, the statistical suite provides well-defined specifications of each subgroup. This can facilitate accurate diagnosis, and augment the prediction and evaluation of response to treatment. The statistical methodologies have broad and direct applicability to behavioral studies for many psychiatric disorders, and indeed to similar analyses of associated biological signals across multiple axes.
机译:情绪评分数据的增强统计特征可以更准确地分类和再分类复发性情绪障碍,例如经前烦躁不安(PMDD)和复发性短暂性抑郁症(RBD)。我们应用了几种补充统计方法来区分PMDD,RBD和正常对照(NC)妇女的情绪等级动态。我们比较了女性的三个亚组:NC(n = 8); PMDD(n = 15);和RBD(n = 9),基于每天的悲伤自我评估,研究时间在50到120天之间。我们分析了平均水平;总变异性,SD;顺序不规则,近似熵(ApEn);并量化了短暂和断断续续的动态程度,称为“尖峰”。对于SD,不规则性(ApEn)和尖锐度中的每一个,我们都显示出非常显着的亚组差异,每个统计量的ANOVA0.001;此外,许多成对的亚组比较显示出非常显着的差异。相反,各亚组之间的平均水平并不清楚。对于SD,正常对照组的水平比其他亚组小得多,RBD为中间水平。 ApEn显示PMDD的规律性明显高于其他亚组。令人发指的是,NC和RBD数据集比其PMDD数据集更具断断续续性,并且似乎可以适当地表征RBD动力学的定义特征。基于这些统计量的复合标准可区分具有高度敏感性和特异性的诊断亚组。综合起来,统计套件为每个子组提供了定义明确的规范。这可以促进准确的诊断,并增强对治疗反应的预测和评估。统计方法学对许多精神疾病的行为研究具有广泛而直接的适用性,甚至在跨多个轴的相关生物信号的类似分析中也具有广泛而直接的适用性。

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