Secalim UMR1014, INRA, Oniris, Nantes, France.
UCD School of Biosystems and Food Engineering, Dublin, Ireland.
Risk Anal. 2017 Dec;37(12):2360-2388. doi: 10.1111/risa.12792. Epub 2017 Apr 12.
A probabilistic and interdisciplinary risk-benefit assessment (RBA) model integrating microbiological, nutritional, and chemical components was developed for infant milk, with the objective of predicting the health impact of different scenarios of consumption. Infant feeding is a particular concern of interest in RBA as breast milk and powder infant formula have both been associated with risks and benefits related to chemicals, bacteria, and nutrients, hence the model considers these three facets. Cronobacter sakazakii, dioxin-like polychlorinated biphenyls (dl-PCB), and docosahexaenoic acid (DHA) were three risk/benefit factors selected as key issues in microbiology, chemistry, and nutrition, respectively. The present model was probabilistic with variability and uncertainty separated using a second-order Monte Carlo simulation process. In this study, advantages and limitations of undertaking probabilistic and interdisciplinary RBA are discussed. In particular, the probabilistic technique was found to be powerful in dealing with missing data and to translate assumptions into quantitative inputs while taking uncertainty into account. In addition, separation of variability and uncertainty strengthened the interpretation of the model outputs by enabling better consideration and distinction of natural heterogeneity from lack of knowledge. Interdisciplinary RBA is necessary to give more structured conclusions and avoid contradictory messages to policymakers and also to consumers, leading to more decisive food recommendations. This assessment provides a conceptual development of the RBA methodology and is a robust basis on which to build upon.
我们开发了一种概率性和跨学科的风险-效益评估 (RBA) 模型,该模型整合了微生物学、营养学和化学成分,用于婴儿配方奶,旨在预测不同消费情景的健康影响。婴儿喂养是 RBA 特别关注的问题,因为母乳和婴儿配方奶粉都与与化学物质、细菌和营养物质相关的风险和益处有关,因此该模型考虑了这三个方面。阪崎克罗诺杆菌、二恶英类多氯联苯 (dl-PCB) 和二十二碳六烯酸 (DHA) 分别被选为微生物学、化学和营养学方面的三个关键风险/效益因素。本模型是概率性的,使用二阶蒙特卡罗模拟过程分离了变异性和不确定性。在本研究中,讨论了进行概率性和跨学科 RBA 的优缺点。特别是,概率技术在处理缺失数据方面非常强大,并且可以将假设转化为定量输入,同时考虑不确定性。此外,通过更好地考虑和区分自然异质性和知识缺乏,变异性和不确定性的分离加强了对模型输出的解释。跨学科的 RBA 对于向政策制定者和消费者提供更有条理的结论和避免相互矛盾的信息是必要的,从而可以做出更果断的食品推荐。本评估提供了 RBA 方法的概念性发展,并且是建立在此基础上的稳健基础。