Department of Public Health, Erasmus MC, University Medical Center Rotterdam, The Netherlands.
Warwick Infectious Disease Epidemiology Research, School of Life Sciences, Gibbet Hill Campus, The University of Warwick, Coventry CV4 7AL, UK.
Epidemics. 2017 Mar;18:92-100. doi: 10.1016/j.epidem.2017.01.005.
Brazil has the second highest annual number of new leprosy cases. The aim of this study is to formally compare predictions of future new case detection rate (NCDR) trends and the annual probability of NCDR falling below 10/100,000 of four different modelling approaches in four states of Brazil: Rio Grande do Norte, Amazonas, Ceará, Tocantins.
A linear mixed model, a back-calculation approach, a deterministic compartmental model and an individual-based model were used. All models were fitted to leprosy data obtained from the Brazilian national database (SINAN). First, models were fitted to the data up to 2011, and predictions were made for NCDR for 2012-2014. Second, data up to 2014 were considered and forecasts of NCDR were generated for each year from 2015 to 2040. The resulting distributions of NCDR and the probability of NCDR being below 10/100,000 of the population for each year were then compared between approaches.
Each model performed well in model fitting and the short-term forecasting of future NCDR. Long-term forecasting of NCDR and the probability of NCDR falling below 10/100,000 differed between models. All agree that the trend of NCDR will continue to decrease in all states until 2040. Reaching a NCDR of less than 10/100,000 by 2020 was only likely in Rio Grande do Norte. Prediction until 2040 showed that the target was also achieved in Amazonas, while in Ceará and Tocantins the NCDR most likely remain (far) above 10/100,000.
All models agree that, while incidence is likely to decline, achieving a NCDR below 10/100,000 by 2020 is unlikely in some states. Long-term prediction showed a downward trend with more variation between models, but highlights the need for further control measures to reduce the incidence of new infections if leprosy is to be eliminated.
巴西每年新增麻风病例数居世界第二。本研究旨在对巴西四个州(北里奥格兰德州、亚马孙州、塞阿拉州和托坎廷斯州)的四种不同建模方法预测未来新病例检出率(NCDR)趋势和 NCDR 每年低于 10/10 万的概率进行正式比较。
采用线性混合模型、反推法、确定性房室模型和个体基础模型。所有模型均根据巴西国家数据库(SINAN)中的麻风病数据进行拟合。首先,将模型拟合至 2011 年的数据,并对 2012-2014 年的 NCDR 进行预测。其次,考虑到 2014 年的数据,并对 2015 年至 2040 年的 NCDR 进行了预测。然后,比较了不同方法对 NCDR 分布和 NCDR 每年低于人口 10/10 万的概率的预测结果。
每个模型在模型拟合和未来 NCDR 的短期预测方面都表现良好。NCDR 的长期预测和 NCDR 低于 10/10 万的概率在模型之间存在差异。所有模型都认为,到 2040 年,所有州的 NCDR 趋势将继续下降。到 2020 年,NCDR 低于 10/10 万的目标仅在北里奥格兰德州有可能实现。对 2040 年的预测表明,亚马孙州也实现了这一目标,而在塞阿拉州和托坎廷斯州,NCDR 很可能(仍)高于 10/10 万。
所有模型都认为,尽管发病率可能下降,但到 2020 年,某些州不太可能实现 NCDR 低于 10/10 万的目标。长期预测显示出下降趋势,不同模型之间的差异更大,但强调需要采取进一步的控制措施来减少新感染的发生,以实现消除麻风病的目标。