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Source, sink and preservation of organic matter from a machine learning approach of polar lipid tracers in sediments and soils from the Yellow River and Bohai Sea, eastern China

机译:从中国东部沉积物和渤海沉积物和土壤中极性脂质示踪机的机器学习方法来源,下沉和保存有机物。

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摘要

Transport and transformation of organic matter (OM) from the river to the marginal sea is a significant part of the global carbon cycle. Biomarkers are of indispensable advantage in precisely identifying the origin of OM that is crucial to understand the organic carbon cycle. Application of more biomarker molecules with mutually confirmable information commonly implies stricter constraint of the source but also brings challenges to the data analysis and interpretation due to a large amount of molecular information. Here we used random forest (RF) classification models to analyze 123 polar lipid biomarkers of six categories, including fatty alcohols, fatty acids, alkan-2-ones, steroids, triterpenoids, and 1-O-monoalkylglycerol ethers (MAGEs) from the sediments and soils in the Yellow River and the Bohai Sea of eastern China. The environmental specificity of biomarkers was assessed based on the effective distinguishment of samples from different habitats by RF models. The sources of polar lipid biomarkers were constrained according to their environmental specificity, and four genetic classifications, i.e., bacteria, algae and zooplankton, terrestrial higher plants, and anthropogenic input were identified. The spatial distribution of OM sources provides a reasonable scheme of the sink for biospheric OM in this typical "land-river-ocean" system. A type of MAGEs as the most important variables for the RF models was effectively used to be a potential bottom-water oxygen proxy to assess the preservation of OM, and ca. 37% of marine in-situ fresh OM was estimated to decompose under varying redox conditions in the surface sediments of Bohai Sea.
机译:从河流到边缘海的有机物(OM)的运输和转化是全球碳循环的重要组成部分。生物标志物在精确地识别对于了解有机碳循环至关重要的OM的起源,是不可或缺的优势。使用互能可确认信息的更多生物标志物分子通常意味着源的严格约束,但由于大量的分子信息,对数据分析和解释产生挑战。在这里,我们使用了随机森林(RF)分类模型来分析六种类别的123个极性脂质生物标志物,包括脂肪醇,脂肪酸,Alkan-2-糖,类固醇,三萜类化合物和来自沉积物的1- o-单烷基甘油醚(法师)和中国东部的黄河和渤海的土壤。基于RF模型的有效区别不同栖息地的样品的有效区别来评估生物标志物的环境特异性。根据其环境特异性约束,极性脂质生物标志物的来源,并确定了四种遗传分类,即细菌,藻类和浮游植物,陆地高等植物和人为输入。 OM源的空间分布在这个典型的“陆河海洋”系统中提供了一种用于生物椎间族的水槽的合理方案。作为RF模型的最重要变量的类型是有效地用于评估OM和CA的潜在底水氧代理。估计渤海地表沉积物的不同氧化还原条件下估计37%的海洋原位新鲜OM。

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  • 来源
    《Oceanographic Literature Review》 |2021年第9期|1925-1925|共1页
  • 作者

    K. Tao; Y. Xu; Y. Wang;

  • 作者单位

    Organic Geochemistry Unit Key Laboratory of Geoscience Big Data and Deep Resource of Zhejiang Province School of Earth Sciences Zhejiang University Hangzhou 310027 China;

    Organic Geochemistry Unit Key Laboratory of Geoscience Big Data and Deep Resource of Zhejiang Province School of Earth Sciences Zhejiang University Hangzhou 310027 China;

    Organic Geochemistry Unit Key Laboratory of Geoscience Big Data and Deep Resource of Zhejiang Province School of Earth Sciences Zhejiang University Hangzhou 310027 China;

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