Department Lake Research, UFZ - Helmholtz Centre for Environmental Research, Brückstraße 3a, D-39114 Magdeburg, Germany.
Department River Ecology, UFZ - Helmholtz Centre for Environmental Research, Brückstraße 3a, D-39114 Magdeburg, Germany.
Environ Sci Technol. 2020 Nov 3;54(21):13556-13565. doi: 10.1021/acs.est.0c02383. Epub 2020 Oct 16.
Dissolved organic matter plays an important role in aquatic ecosystems and poses a major problem for drinking water production. However, our understanding of DOM reactivity in natural systems is hampered by its complex molecular composition. Here, we used Fourier-transform ion cyclotron resonance mass spectrometry (FT-ICR-MS) and data from two independent studies to disentangle DOM reactivity based on photochemical and microbial-induced transformations. Robust correlations of FT-ICR-MS peak intensities with chlorophyll and solar irradiation were used to define 9 reactivity classes for 1277 common molecular formulas. Germany's largest drinking water reservoir was sampled for 1 year, and DOM processing in stratified surface waters could be attributed to photochemical transformations during summer months. Microbial DOM alterations could be distinguished based on correlation coefficients with chlorophyll and often shared molecular features (elemental ratios and mass) with photoreactive compounds. In particular, many photoproducts and some microbial products were identified as potential precursors of disinfection byproducts. Molecular DOM features were used to further predict molecular reactivity for the remaining compounds in the data set based on a random forest model. Our method offers an expandable classification approach to integrate the reactivity of DOM from specific environments and link it to molecular properties and chemistry.
溶解有机质在水生生态系统中起着重要作用,同时也是饮用水生产的主要问题。然而,由于其复杂的分子组成,我们对天然系统中 DOM 反应性的理解受到了阻碍。在这里,我们使用傅里叶变换离子回旋共振质谱(FT-ICR-MS)和来自两项独立研究的数据,根据光化学和微生物诱导转化来分解 DOM 的反应性。FT-ICR-MS 峰强度与叶绿素和太阳辐射之间的稳健相关性用于定义 1277 个常见分子公式的 9 种反应性类别。对德国最大的饮用水水库进行了为期一年的采样,分层地表水的 DOM 处理可归因于夏季的光化学转化。基于与叶绿素的相关系数,可以区分微生物 DOM 的变化,并且通常与光反应性化合物具有共同的分子特征(元素比和质量)。特别是,许多光产物和一些微生物产物被鉴定为消毒副产物的潜在前体。分子 DOM 特征可用于根据随机森林模型进一步预测数据集内其余化合物的分子反应性。我们的方法提供了一种可扩展的分类方法,可整合特定环境中 DOM 的反应性,并将其与分子特性和化学性质联系起来。