Wang Jianli, Orpana Heather, Carrington André, Kephart George, Vasiliadis Helen-Maria, Leikin Benjamin
Department of Community Health and Epidemiology, Faculty of Medicine, Dalhousie University, 5790 University Avenue, Halifax, NS, B3H 1V7, Canada, 1 9024943860.
Department of Psychiatry, Faculty of Medicine, Dalhousie University, Halifax, NS, Canada.
JMIR Public Health Surveill. 2025 Feb 19;11:e66056. doi: 10.2196/66056.
Research has shown that perceptions of a mental health need are closely associated with service demands and are an important dimension in needs assessment. Perceived and unmet mental health needs are important factors in the decision-making process regarding mental health services planning and resources allocation. However, few prediction tools are available to be used by policy and decision makers to forecast perceived and unmet mental health needs at the population level.
We aim to develop prediction models to forecast perceived and unmet mental health needs at the provincial and health regional levels in Canada.
Data from 2018, 2019, and 2020 Canadian Community Health Survey and Canadian Urban Environment were used (n=65,000 each year). Perceived and unmet mental health needs were measured by the Perceived Needs for Care Questionnaire. Using the 2018 dataset, we developed the prediction models through the application of regression synthetic estimation for the Atlantic, Central, and Western regions. The models were validated in the 2019 and 2020 datasets at the provincial level and in 10 randomly selected health regions by comparing the observed and predicted proportions of the outcomes.
In 2018, a total of 17.82% of the participants reported perceived mental health need and 3.81% reported unmet mental health need. The proportions were similar in 2019 (18.04% and 3.91%) and in 2020 (18.1% and 3.92%). Sex, age, self-reported mental health, physician diagnosed mood and anxiety disorders, self-reported life stress and life satisfaction were the predictors in the 3 regional models. The individual based models had good discriminative power with C statistics over 0.83 and good calibration. Applying the synthetic models in 2019 and 2020 data, the models had the best performance in Ontario, Quebec, and British Columbia; the absolute differences between observed and predicted proportions were less than 1%. The absolute differences between the predicted and observed proportion of perceived mental health needs in Newfoundland and Labrador (-4.16% in 2020) and Prince Edward Island (4.58% in 2019) were larger than those in other provinces. When applying the models in the 10 selected health regions, the models calibrated well in the health regions in Ontario and in Quebec; the absolute differences in perceived mental health needs ranged from 0.23% to 2.34%.
Predicting perceived and unmet mental health at the population level is feasible. There are common factors that contribute to perceived and unmet mental health needs across regions, at different magnitudes, due to different population characteristics. Therefore, predicting perceived and unmet mental health needs should be region specific. The performance of the models at the provincial and health regional levels may be affected by population size.
研究表明,对心理健康需求的认知与服务需求密切相关,并且是需求评估的一个重要维度。感知到的和未满足的心理健康需求是心理健康服务规划和资源分配决策过程中的重要因素。然而,可供政策制定者和决策者用于预测人群层面感知到的和未满足的心理健康需求的预测工具很少。
我们旨在开发预测模型,以预测加拿大省级和卫生区域层面感知到的和未满足的心理健康需求。
使用了2018年、2019年和2020年加拿大社区健康调查及加拿大城市环境的数据(每年n = 65,000)。感知到的和未满足的心理健康需求通过护理需求感知问卷进行测量。利用2018年数据集,我们通过对大西洋地区、中部地区和西部地区应用回归综合估计法开发了预测模型。通过比较观察到的和预测的结果比例,在2019年和2020年的省级数据集以及10个随机选择的卫生区域对模型进行了验证。
2018年,共有17.82%的参与者报告有感知到的心理健康需求,3.81%报告有未满足的心理健康需求。2019年(18.04%和3.91%)和2020年(18.1%和3.92%)的比例相似。性别、年龄、自我报告的心理健康状况、医生诊断的情绪和焦虑障碍、自我报告的生活压力和生活满意度是这3个区域模型中的预测因素。基于个体的模型具有良好的区分能力,C统计量超过0.83且校准良好。将综合模型应用于2019年和2020年的数据时,模型在安大略省、魁北克省和不列颠哥伦比亚省表现最佳;观察到的和预测的比例之间的绝对差异小于1%。纽芬兰和拉布拉多省(2020年为-4.16%)和爱德华王子岛省(2019年为4.58%)感知到的心理健康需求预测比例与观察比例之间的绝对差异大于其他省份。在10个选定的卫生区域应用模型时,模型在安大略省和魁北克省的卫生区域校准良好;感知到的心理健康需求的绝对差异范围为0.23%至2.34%。
在人群层面预测感知到的和未满足的心理健康需求是可行的。由于不同的人口特征,存在一些共同因素在不同程度上导致了各地区感知到的和未满足的心理健康需求。因此,预测感知到的和未满足的心理健康需求应因地区而异。模型在省级和卫生区域层面的表现可能会受到人口规模的影响。