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Evaluating psychiatric hospital admission decisions for children in foster care: an optimal classification tree analysis.

机译:评估寄养儿童的精神病院入院决策:最佳分类树分析。

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摘要

This study explored clinical and nonclinical predictors of inpatient hospital admission decisions across a sample of children in foster care over 4 years (N = 13,245). Forty-eight percent of participants were female and the mean age was 13.4 (SD = 3.5 years). Optimal data analysis (Yarnold & Soltysik, 2005) was used to construct a nonlinear classification tree model for predicting admission decisions. As expected, clinical variables such as suicidality, psychoticism, and dangerousness predicted psychiatric admissions; however, several variables that are not direct indications of acute psychiatric distress, such as the presence of family problems and the location of the hospital screening, impacted decision making in a subsample of cases. Further analyses indicated that the model developed in Year 1 reliably and consistently predicted admission decisions (with 64%-68% overall accuracy) across the next 3 years. Policy, research, and clinical implications are discussed.
机译:本研究探讨了4岁以下儿童样本的住院医院入学决策的临床和非临床预测因子(n = 13,245)。 48%的参与者是女性,平均年龄为13.4(SD = 3.5岁)。 最佳数据分析(Yarnold&Soltysik,2005)用于构建用于预测入院决策的非线性分类树模型。 正如预期的那样,自杀,精神病和危险性等临床变量预测精神录取; 然而,几种不是直接指导急性精神痛苦的迹象,例如家庭问题的存在和医院筛选的位置,受到案件的附带的决策。 进一步分析表明,在未来3年内,1年内开发的模型可靠,始终如一地预测入学决策(具有64%-68%的总体准确性)。 讨论了政策,研究和临床意义。

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