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Modelling the influence of environmental parameters over marine planktonic microbial communities using artificial neural networks

机译:使用人工神经网络对海洋浮游微生物群群的环境参数影响建模

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摘要

Guanabara Bay is a tropical estuarine ecosystem that receives massive anthropogenic impacts from the metropolitan region of Rio de Janeiro. This ecosystem suffers from an ongoing eutrophication process that has been shown to promote the emergence of potentially pathogenic bacteria, giving rise to public health concerns. Although previous studies have investigated how environmental parameters influence the microbial community of Guanabara Bay, they often have been limited to small spatial and temporal gradients and have not been integrated into predictive mathematical models. Our objective was to fill this knowledge gap by building models that could predict how temperature, salinity, phosphorus, nitrogen and transparency work together to regulate the abundance of bacteria, chlorophyll and Vibrio (a potential human pathogen) in Guanabara Bay. To that end, we built artificial neural networks to model the associations between these variables. These networks were carefully validated to ensure that they could provide accurate predictions without biases or overfitting. The estimated models displayed high predictive capacity (Pearson correlation coefficients = 0.67 and root mean square error = 0.55). Our findings showed that temperature and salinity were often the most important factors regulating the abundance of bacteria, chlorophyll and Vibrio (absolute importance = 5) and that each of these has a unique level of dependence on nitrogen and phosphorus for their growth. These models allowed us to estimate the Guanabara Bay microbiome's response to changes in environmental conditions, which allowed us to propose strategies for the management and remediation of Guanabara Bay. (C) 2019 Elsevier B.V. All rights reserved.
机译:Guanabara Bay是一种热带河口生态系统,受到Rio de Janeiro大都会地区的大规模人为影响。这种生态系统遭受了持续的富营养化过程,已被证明促进潜在致病细菌的出现,从而产生公共卫生问题。尽管以前的研究已经调查了环境参数如何影响瓜纳巴拉湾的微生物群落,但它们通常仅限于小空间和时间梯度,并且尚未集成到预测数学模型中。我们的目标是通过建立可以预测温度,盐度,磷,氮气和透明度的模型来填补这种知识差距,以调节瓜纳巴拉湾的细菌,叶绿素和脉冲(潜在人病原体)的丰富。为此,我们建立了人工神经网络以模拟这些变量之间的关联。仔细验证这些网络以确保他们可以提供无偏见或过度装备的准确预测。估计模型显示出高预测容量(Pearson相关系数> = 0.67,均方根误差<= 0.55)。我们的研究结果表明,温度和盐度往往是调节细菌,叶绿素和弧菌(绝对重要性> = 5)的最重要因素,并且每个这些都具有对其生长的氮和磷的独特依赖性。这些模型使我们估计了瓜纳巴拉湾微生物组对环境条件变化的反应,这使我们能够提出瓜纳巴拉湾的管理和补救策略。 (c)2019 Elsevier B.v.保留所有权利。

著录项

  • 来源
    《The Science of the Total Environment》 |2019年第10期|205-214|共10页
  • 作者单位

    Univ Fed Rio de Janeiro UFRJ Inst Biol Rio De Janeiro Brazil|Radboud Univ Nijmegen Med Ctr Radboud Inst Mol Life Sci CMBI Nijmegen Netherlands|Univ Utrecht Theoreth Biol & Bioinforrnat Utrecht Netherlands;

    Univ Fed Rio de Janeiro UFRJ Inst Biol Rio De Janeiro Brazil;

    Univ Fed Rio de Janeiro UFRJ Inst Biol Rio De Janeiro Brazil;

    Univ Fed Rio de Janeiro UFRJ Inst Biol Rio De Janeiro Brazil;

    Univ Fed Rio de Janeiro UFRJ Inst Biol Rio De Janeiro Brazil|Radboud Univ Nijmegen Med Ctr Radboud Inst Mol Life Sci CMBI Nijmegen Netherlands|Univ Utrecht Theoreth Biol & Bioinforrnat Utrecht Netherlands;

    Univ Fed Rio de Janeiro UFRJ Inst Biol Rio De Janeiro Brazil|Univ Fed Rio de Janeiro UFRJ COPPE SAGE Rio De Janeiro Brazil|CCS IB INOMAR Lab Microbiol Av Carlos Filho S-N CCS BLOCO A Anexo A3 Sl 102 BR-21941599 Rio De Janeiro RJ Brazil;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Tropical; Estuary; Eutrophication; Pollution; Machine learning; Artificial neural networks; Tune-series;

    机译:热带;河口;富营养化;污染;机器学习;人工神经网络;曲调系列;

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