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Using Bayesian Networks to Predict Risk to Estuary Water Quality and Patterns of Benthic Environmental DNA in Queensland

机译:使用贝叶斯网络预测昆士兰州围网环境DNA的河口水质和模式的风险

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Predictive modeling can inform natural resource management by representing stressor-response pathways in a logical way and quantifying the effects on selected endpoints. This study demonstrates a risk assessment model using the Bayesian network relative risk model (BN-RRM) approach to predict water quality and, for the first time, eukaryote environmental DNA (eDNA) data as a measure of benthic community structure. Environmental DNA sampling is a technique for biodiversity measurements that involves extracting DNA from environmental samples, amplicon sequencing a targeted gene, in this case the 18s rDNA gene (which targets eukaryotes), and matching the sequences to organisms. Using a network of probability distributions, the BN-RRM model predicts risk to water quality objectives and the relative richness of benthic taxa groups in the Noosa, Pine, and Logan estuaries in Southeast Queensland (SEQ), Australia. The model predicts Dissloved Oxygen more accurately than the chlorophyll a water quality endpoint and photosynthesizing benthos more accurately than heterotrophs. Results of BN-RRM modeling given current inputs indicate that the water quality and benthic assemblages of the Noosa are relatively homogenous across all sub risk regions, and that the Noosa has a 73%-92% probability of achieving water quality objectives, indicating a low relative risk. Conversely, the Middle Logan, Middle Pine, and Lower Pine regions are much less likely to meet objectives (15%-55% probability), indicating a relatively higher risk to water quality in those regions. The benthic community richness patterns associated with risk in the Noosa are high Diatom relative richness and low Green Algae relative richness. The only benthic pattern consistently associated with the relatively higher risk to water quality is high richness of fungi species. The BN-RRM model provides a basis for future predictions and adaptive management at the direction of resource managers. Integr Environ Assess Manag 2019;15:93-111. (c) 2018 SETAC
机译:预测建模可以通过以逻辑方式代表压力源 - 响应途径来通知自然资源管理,并量化对所选端点对所选终点的影响。本研究展示了使用贝叶斯网络相对风险模型(BN-RRM)方法来预测水质的风险评估模型,并且首次是真核环境DNA(EDNA)数据作为底栖群落结构的衡量标准。环境DNA采样是一种用于生物多样性测量的技术,涉及从环境样品中提取DNA,在这种情况下,在这种情况下,将靶向基因(靶向真核生物),并将序列与生物体匹配。使用概率分布网络,BN-RRM模型预测了澳大利亚东南部(SEQ)的Noosa,Pine和Logan河口中底栖分类群的水质目标和底栖分类群的相对丰富性。该模型预测比叶绿素水质终点更精确地将含氧更加精确地精确地比异养精确地精确地精确。给定电流输入的BN-RRM建模的结果表明,Noosa的水质和底栖组装在所有副风险区域上相对均匀,并且Noosa具有实现水质目标的73%-92%的概率,表明低于相对风险。相反,中间洛坎,中松和下松地区的可能性不太可能满足目标(15%-55%),表明在这些地区的水质风险相对较高。与Noosa风险相关的Benthic群落丰富模式是高硅藻相对丰富和低绿藻相对丰富性。唯一与水质风险相对较高的僵化模式是高丰富的真菌物种。 BN-RRM模型为未来的资源经理方向提供了未来预测和自适应管理的基础。 2019年综合环境评估管理管理管理管数; 15:93-111。 (c)2018 Setac

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