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Modelling Needs for Mental Healthcare from Epidemiological Surveys with Validation Using Sociodemographic Census Data

机译:使用社会人口普查数据从流行病学调查对心理保健需求进行建模并进行验证

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Purpose : To develop and validate a prediction model for mental health needs (MHN) and psychiatric needs (PN) using specific social indicators, obtainable from census data, within low-density departments (LDD) and high- density departments (HDD). Methods : In a population-based study of 20,404 participants from 22 departments in France, mental health needs were defined into three categories (no needs, MHN, and PN) using the Composite International Diagnosis Interview Short-Form, Sheehan disability scale, and presence of depressive and alcohol disorders. Within HDD (n=9) and LDD (n=13) departments, two separate logistic regression models, using MHN or PN as an endpoint, were fitted using available sociodemographic data. Model validation was performed using 2007 census data. Overall accuracy was evaluated using average residuals (AR) calculated within density stratum. Results : In LDD and HDD respectively, 26.6% and 28.7% of persons had MHN and 9.8% and 11.3% had PN. In LDD, housing type, age, employment, living alone, housing support, and household size predicted MHN and PN. In HDD, housing type, living alone, household size, living in a marriage/partnership, and duration of dwelling habitation predicted MHN and PN. Predictions were more accurate in HDD, in which the AR was 30% lower for MHN and 40% lower for PN. Predictions were less accurate when using census data, yet they were consistently better in HDD. Conclusions : Sociodemographic indicators from either survey or census data may be useful in predicting MHN and PN in high-density settings. The ideal territorial size still needs to be evaluated when planning psychiatric and mental health resources.
机译:目的:使用可从普查数据中获得的低密度部门(LDD)和高密度部门(HDD)内的特定社会指标,开发和验证针对精神健康需求(MHN)和精神病需求(PN)的预测模型。方法:在来自法国22个部门的20404名参与者的基于人群的研究中,使用综合国际诊断访谈简表,Sheehan残疾量表和在场情况将心理健康需求分为三类(无需求,MHN和PN)。抑郁症和酒精中毒。在HDD(n = 9)和LDD(n = 13)部门中,使用可用的社会人口统计学数据拟合了两个分别使用MHN或PN作为终点的逻辑回归模型。使用2007年人口普查数据进行模型验证。使用在密度层次内计算的平均残差(AR)评估整体精度。结果:在LDD和HDD中,分别有26.6%和28.7%的人患有MHN,分别有9.8%和11.3%的人患有PNN。在LDD中,住房类型,年龄,就业,独居,住房支持和家庭人数预测了MHN和PN。在硬盘驱动器中,预测的MHN和PN是住房类型,单独居住,家庭规模,婚姻/伴侣生活以及居住期限。 HDD的预测更为准确,其中MHN的AR降低30%,PN的AR降低40%。使用人口普查数据时,预测的准确性较差,但在HDD中,预测始终较好。结论:来自调查或人口普查数据的社会人口统计学指标可能有助于预测高密度环境中的MHN和PN。规划精神病和精神卫生资源时,仍然需要评估理想的领土规模。

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