The Northern Region Persistent Organic Pollution (NRPOP) Control Laboratory, Faculty of Engineering and Applied Science, Memorial University, St. John's, NL A1B 3X5, Canada.
The Northern Region Persistent Organic Pollution (NRPOP) Control Laboratory, Faculty of Engineering and Applied Science, Memorial University, St. John's, NL A1B 3X5, Canada.
Bioresour Technol. 2022 Feb;345:126468. doi: 10.1016/j.biortech.2021.126468. Epub 2021 Dec 2.
Chemical dispersants have been widely applied to tackle oil spills, but their effects on oil biodegradation in global aquatic systems with different salinities are not well understood. Here, both experiments and advanced machine learning-aided causal inference analysis were applied to evaluate related processes. A halotolerant oil-degrading and biosurfactant-producing species was selected and characterized within the salinity of 0-70 g/L NaCl. Notably, dispersant addition can relieve the biodegradation barriers caused by high salinities. To navigate the causal relationships behind the experimental data, a structural causal model to quantitatively estimate the strength of causal links among salinity, dispersant addition, cell abundance, biosurfactant productivity and oil biodegradation was built. The estimated causal effects were integrated into a weighted directed acyclic graph, which showed that overall positive effects of dispersant addition on oil biodegradation was mainly through the enrichment of cell abundance. These findings can benefit decision-making prior dispersant application under different saline environments.
化学分散剂已被广泛应用于处理溢油事故,但它们对不同盐度全球水生系统中石油生物降解的影响还不太清楚。在这里,我们应用了实验和先进的机器学习辅助因果推理分析来评估相关过程。在 0-70 g/L NaCl 的盐度范围内,我们选择并表征了一种耐盐油降解和生物表面活性剂产生的物种。值得注意的是,添加分散剂可以缓解高盐度引起的生物降解障碍。为了探索实验数据背后的因果关系,我们构建了一个结构因果模型,以定量估计盐度、分散剂添加、细胞丰度、生物表面活性剂生产力和石油生物降解之间因果关系的强度。估计的因果效应被整合到一个加权有向无环图中,结果表明,分散剂添加对石油生物降解的总体积极影响主要是通过细胞丰度的富集来实现的。这些发现可以为在不同盐度环境下应用分散剂之前的决策提供参考。