Dalla Lana School of Public Health, University of Toronto, Toronto, Ontario, Canada.
Dalla Lana School of Public Health, University of Toronto, Toronto, Ontario, Canada
J Epidemiol Community Health. 2024 Apr 10;78(5):335-340. doi: 10.1136/jech-2023-221080.
Predicting chronic disease incidence at a population level can help inform overall future chronic disease burden and opportunities for prevention. This study aimed to estimate the future burden of chronic disease in Ontario, Canada, using a population-level risk prediction algorithm and model interventions for equity-deserving groups who experience barriers to services and resources due to disadvantages and discrimination.
The validated Chronic Disease Population Risk Tool (CDPoRT) estimates the 10-year risk and incidence of major chronic diseases. CDPoRT was applied to data from the 2017/2018 Canadian Community Health Survey to predict baseline 10-year chronic disease estimates to 2027/2028 in the adult population of Ontario, Canada, and among equity-deserving groups. CDPoRT was used to model prevention scenarios of 2% and 5% risk reductions over 10 years targeting high-risk equity-deserving groups.
Baseline chronic disease risk was highest among those with less than secondary school education (37.5%), severe food insecurity (19.5%), low income (21.2%) and extreme workplace stress (15.0%). CDPoRT predicted 1.42 million new chronic disease cases in Ontario from 2017/2018 to 2027/2028. Reducing chronic disease risk by 5% prevented 1500 cases among those with less than secondary school education, prevented 14 900 cases among those with low household income and prevented 2800 cases among food-insecure populations. Large reductions of 57 100 cases were found by applying a 5% risk reduction in individuals with quite a bit workplace stress.
Considerable reduction in chronic disease cases was predicted across equity-defined scenarios, suggesting the need for prevention strategies that consider upstream determinants affecting chronic disease risk.
预测人群层面的慢性病发病率有助于了解未来整体慢性病负担和预防机会。本研究旨在使用人群水平风险预测算法和针对因劣势和歧视而面临服务和资源障碍的公平权益群体的干预措施,来估计加拿大安大略省未来的慢性病负担。
经过验证的慢性病人群风险预测工具(CDPoRT)估计主要慢性病的 10 年风险和发病率。将 CDPoRT 应用于 2017/2018 年加拿大社区健康调查的数据,以预测加拿大安大略省成年人口和公平权益群体的基线 10 年慢性病估计值至 2027/2028 年。使用 CDPoRT 为高风险公平权益群体制定了为期 10 年、每年降低 2%和 5%风险的预防方案。
基线慢性病风险最高的是受教育程度低于中学(37.5%)、严重食物不安全(19.5%)、低收入(21.2%)和极端工作场所压力(15.0%)的人群。CDPoRT 预测 2017/2018 年至 2027/2028 年安大略省将新增 142 万例慢性病病例。降低 5%的慢性病风险可预防中学以下学历人群中 1500 例病例、预防低收入家庭中 14900 例病例和预防食物不安全人群中 2800 例病例。通过对工作场所压力较大的人群实施 5%的风险降低,发现了大量的 57100 例病例减少。
在基于公平定义的情景下预测出慢性病病例有较大幅度的减少,这表明需要制定预防策略,考虑影响慢性病风险的上游决定因素。