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Investigating alternative estimators for the prevalence of serious mental illness based on a two-phase sample

机译:根据两阶段样本调查严重精神疾病患病率的替代估计量

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A two-phase process was used by the Substance Abuse and Mental Health Services Administration to estimate the proportion of US adults with serious mental illness (SMI). The first phase was the annual National Survey on Drug Use and Health (NSDUH), while the second phase was a random subsample of adult respondents to the NSDUH. Respondents to the second phase of sampling were clinically evaluated for serious mental illness. A logistic prediction model was fit to this subsample with the SMI status (yes or no) determined by the second-phase instrument treated as the dependent variable and related variables collected on the NSDUH from all adults as the model's explanatory variables. Estimates were then computed for SMI prevalence among all adults and within adult subpopulations by assigning an SMI status to each NSDUH respondent based on comparing his (her) estimated probability of having SMI to a chosen cut point on the distribution of the predicted probabilities. We investigate alternatives to this standard cut point estimator such as the probability estimator. The latter assigns an estimated probability of having SMI to each NSDUH respondent. The estimated prevalence of SMI is the weighted mean of those estimated probabilities. Using data from NSDUH and its subsample, we show that, although the probability estimator has a smaller mean squared error when estimating SMI prevalence among all adults, it has a greater tendency to be biased at the subpopulation level than the standard cut point estimator.
机译:药物滥用和精神健康服务管理局使用了两个阶段的过程来估计患有严重精神疾病(SMI)的美国成年人的比例。第一阶段是年度全国药物使用和健康调查(NSDUH),第二阶段是对NSDUH的成年受访者进行的随机子抽样。对第二阶段抽样的受访者进行了临床严重精神疾病评估。将逻辑预测模型拟合到此子样本,并将第二阶段仪器确定的SMI状态(是或否)作为因变量,并从NSDUH上从所有成年人身上收集的相关变量作为模型的解释变量。然后,通过将每个人的SMI估计概率与预测概率分布上选定的临界点进行比较,为每个NSDUH应答者分配SMI状态,从而计算所有成年人中和成年人群中SMI的估计值。我们研究了此标准切割点估计器的替代方法,例如概率估计器。后者为每个NSDUH应答者分配具有SMI的估计概率。 SMI的估计患病率是这些估计概率的加权平均值。使用来自NSDUH及其子样本的数据,我们显示,尽管在估计所有成年人中SMI患病率时,概率估计器的均方误差较小,但与标准切割点估计器相比,其在亚人群水平上的偏见更大。

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