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Epidemiological Approaches to Morbidity Forecasting for Health Impact Assessment of Air Pollution

机译:发病率预测空气污染卫生影响评价的流行病学途径

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Background: Forecasting future baseline morbidity rates is crucial to air pollution benefits assessment and disease burden analysis. Although numerous methods have been developed, no standard epidemiological approaches have been proposed. The purpose of this review is to provide an overview of available methods and examine sensitivity of forecasts to method selected. Methods: A literature search on morbidity forecasting was conducted using PubMed and Google Scholar. Sensitivity analyses were conducted using age-specific hospitalization rate data and population estimates. Results: Morbidity forecasting approaches can be grouped into standard regression models and dynamic microsimulation models. Regression models assume that predictor and dependent variables are uniformly correlated over time. However, this is not always the case. While the aging population is expected to increase morbidity, this may be partially offset by improved medical care and reduced exposures to risk factors like smoking. Dynamic microsimulation models have emerged as a reliable tool to address this evolution. The models simulate individuals' risks and health determinants, and consider alternative "what if" scenarios to accurately project health outcomes. Using a conventional forecasting method based on population age distribution and age-specific all-cause hospitalization rates in Canada, we found that the projected rate increased from 91 per 1,000 population in 2001-02 to 102 per 1,000 in 2015-16. Conversely, the observed rate in 2015-16 decreased to 84 per 1,000, indicating an overestimation of 20%. Results differ for specific causes of hospitalization. Several studies also found that neglecting demographic dynamics and using unadjusted age-expenditure profile could overestimate healthcare expenditure by between 10% and 20%. Conclusion: Demographic dynamics and other factors must be considered to ensure the accuracy of baseline morbidity projections in air pollution health impact assessment.
机译:背景:预测未来基线发病率对于空气污染益处评估和疾病负担分析至关重要。虽然已经开发了许多方法,但没有提出任何标准流行病学方法。本次审查的目的是提供可用方法的概述,并检查所选方法的预测敏感性。方法:使用PubMed和Google Scholar进行了对发病率预测的文献搜索。使用年龄特异性住院率数据和人口估计进行敏感性分析。结果:发病率预测方法可分为标准回归模型和动态微仿模型。回归模型假设预测器和相关变量随时间均匀相关。然而,这并非总是如此。虽然预计老龄化人口会增加发病率,但这可能会因改善的医疗保健和减少风险因素而减少危险因素而部分抵消。动态微杂化模型已成为可靠的工具来解决这一进化。该模型模拟了个人的风险和健康决定因素,并考虑准确地项目健康结果的方案的替代方案。采用基于人口年龄分布和年龄特异性全面住院率的传统预测方法,我们发现预计从2001 - 02年度的每1000年的91人增加到2015 - 15年度的102人。相反,2015 - 15年的观测率下降至每1000的84次,表明高估20%。结果对住院的特定原因不同。一些研究还发现,忽视人口动态和使用不调整的年龄支出型材可以高估了10%至20%的医疗保健支出。结论:必须考虑人口动态和其他因素,以确保空气污染健康影响评估中基线发病率预测的准确性。

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