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Quantifying demographic and socioeconomic transitions for computational epidemiology: an open-source modeling approach applied to India

机译:量化计算流行病学的人口和社会经济转变:一种应用于印度的开源建模方法

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Background Demographic and socioeconomic changes such as increasing urbanization, migration, and female education shape population health in many low- and middle-income countries. These changes are rarely reflected in computational epidemiological models, which are commonly used to understand population health trends and evaluate policy interventions. Our goal was to create a “backbone” simulation modeling approach to allow computational epidemiologists to explicitly reflect changing demographic and socioeconomic conditions in population health models. Methods We developed, evaluated, and “open-sourced” a generalized approach to incorporate longitudinal, commonly available demographic and socioeconomic data into epidemiological simulations, illustrating the feasibility and utility of our approach with data from India. We constructed a series of nested microsimulations of increasing complexity, calibrating each model to longitudinal sociodemographic and vital registration data. We then selected the model that was most consistent with the data (i.e., greater accuracy) while containing the fewest parameters (i.e., greater parsimony). We validated the selected model against additional data sources not used for calibration. Results We found that standard computational epidemiology models that do not incorporate demographic and socioeconomic trends quickly diverged from past mortality and population size estimates, while our approach remained consistent with observed data over decadal time courses. Our approach additionally enabled the examination of complex relations between demographic, socioeconomic and health parameters, such as the relationship between changes in educational attainment or urbanization and changes in fertility, mortality, and migration rates. Conclusions Incorporating demographic and socioeconomic trends in computational epidemiology is feasible through the “open source” approach, and could critically alter population health projections and model-based evaluations of health policy interventions in unintuitive ways.
机译:背景信息人口和社会经济变化,例如日益严重的城市化,移民和女性教育,影响了许多中低收入国家的人口健康。这些变化很少反映在计算机流行病学模型中,该模型通常用于了解人口健康趋势和评估政策干预措施。我们的目标是创建一种“主干”模拟建模方法,以使计算流行病学家能够在人口健康模型中明确反映不断变化的人口统计和社会经济状况。方法我们开发,评估并“开源”了一种通用方法,将纵向的,常用的人口统计数据和社会经济数据纳入流行病学模拟中,从而说明了该方法与印度数据的可行性和实用性。我们构建了一系列嵌套的微仿真,模拟的复杂性不断提高,将每个模型校准为纵向社会人口统计学和生命登记数据。然后,我们选择与数据最一致(即更高的准确性),同时包含最少参数(即更高的简约性)的模型。我们针对未用于校准的其他数据源验证了所选模型。结果我们发现,没有纳入人口统计学和社会经济趋势的标准计算流行病学模型迅速不同于过去的死亡率和人口规模估计,而我们的方法仍与十年时间过程中观察到的数据保持一致。我们的方法还能够检查人口,社会经济和健康参数之间的复杂关系,例如教育程度或城市化程度的变化与生育率,死亡率和移民率变化之间的关系。结论通过“开源”方法将人口统计学和社会经济趋势纳入计算流行病学是可行的,并且可能以不直观的方式严重改变人口健康预测和基于模型的卫生政策干预评估。

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