{"title":"高光谱分类揭示的海洋光合污染生物膜组成异质性的景观格局","authors":"Jennifer Longyear, P. Stoodley","doi":"10.5194/biofilms9-66","DOIUrl":null,"url":null,"abstract":"<p><span>Marine fouling biofilms typically have diverse community assemblages in which microalgae are strongly represented.  The visible light absorption properties of microalgal photosynthetic pigments typically drive the overall visible light reflectance spectra of these biofilms.  In some cases diagnostic spectral features can be used to infer algal taxonomy, while in mixed communities the overlapping pigment signatures of the constituent species often blur together.  In this study, we apply methods common in remote sensing approaches to spectral data to extract information from subtle variations in the reflectance spectra of mixed composition marine biofilms.  We demonstrate that marine biofilm community composition, as evidenced by their reflectance spectra, is both spatially heterogenous and spatially structured. </span></p>\n<p><span> </span></p>\n<p><span>Visible-NIR hyperspectral images (3.3nm x 200 bands) of biofilms grown on 7.5cm x 7.5cm panels (n=9), immersed in a coastal marina at ~1m depth for 13 months, were captured with a benchtop line-scan imager.   The hyperspectral data were smoothed and transformed to consolidate the major aspects of spectral variability.  A novel active learning spectral classification method incorporating iterative spectral library building by k-means clustering and spectral angle mapping, followed by hierarchical clustering by spectral similarity, discovered more than 70 distinct spectral classes present in the biofilms.  Accordingly, the hyperspectral images of the fouling biofilms were converted to spatially explicit spectral class maps, where each class was assumed representative of a distinct community compositional mix.  Hyperspectral indexing calibrated to chl <em>a</em> surface area density was used to map biomass for the same images.  </span></p>\n<p><span> </span></p>\n<p><span>Cross-tabulating the spectral class and biomass data, it was apparent that for these biofilms, different biomass density levels were consistently associated with specific community compositions (spectral classes.)  Only a small number of the possible classes were represented in the densest areas of biofilm, suggesting that these species composition mixes have a competitive advantage.  In contrast, the full diversity of class types was present in the low biomass areas.  </span></p>\n<p><span> </span></p>\n<p><span>Our hyperspectral approach does not convey exact species composition, as would pooled metagenomic sampling or in-depth microscopy.  However it does allow for the examination of spatially explicit changes in biofilm composition at relatively large scales (the landscape), and so may be a useful tool in hypothesis generation, long term monitoring, and other environmental biofilm applications. </span></p>","PeriodicalId":87392,"journal":{"name":"Biofilms","volume":" ","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2020-07-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Landscape-level patterns in photosynthetic marine fouling biofilm compositional heterogeneity as revealed by hyperspectral classification\",\"authors\":\"Jennifer Longyear, P. 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引用次数: 0
摘要
海洋污染生物膜通常具有不同的群落组合,其中微藻具有强烈的代表性 ;微藻光合色素的可见光吸收特性通常驱动这些生物膜的整体可见光反射光谱 ;在某些情况下,诊断光谱特征可以用来推断藻类分类学,而在混合群落中,组成物种的重叠色素特征往往模糊在一起 ;在这项研究中,我们将遥感方法中常见的方法应用于光谱数据,以从混合成分海洋生物膜反射光谱的细微变化中提取信息 ;我们证明了海洋生物膜群落的组成,正如它们的反射光谱所证明的那样,既有空间不均匀性,也有空间结构 ;用台式线扫描成像仪拍摄了生长在7.5cm x 7.5cm面板(n=9)上的生物膜的可见近红外高光谱图像(3.3nm x 200条带),这些生物膜在约1m深度的沿海码头中浸泡了13个月 ;对高光谱数据进行了平滑和转换,以巩固光谱可变性的主要方面 ;一种新的主动学习光谱分类方法结合了通过k均值聚类和光谱角度映射建立迭代光谱库,然后通过光谱相似性进行分层聚类,在生物膜中发现了70多个不同的光谱类别 ;因此,污染生物膜的高光谱图像被转换为空间显式的光谱类别图,其中每个类别被假设代表不同的群落组成组合 ;校准为chla表面积密度的高光谱索引用于绘制相同图像的生物量图 ;将光谱类别和生物量数据进行交叉制表,很明显,对于这些生物膜,不同的生物量密度水平与特定的群落组成(光谱类别)一致相关;只有少数可能的类别出现在生物膜最密集的区域,这表明这些物种组成的混合物具有竞争优势 ;相比之下,低生物量地区的阶级类型完全多样 ;我们的高光谱方法无法传达确切的物种组成,就像汇总宏基因组采样或深入显微镜一样 ;然而,它确实允许在相对大的尺度(景观)上检查生物膜组成的空间显式变化,因此可能是假设生成、长期监测和其他环境生物膜应用中的有用工具。
Landscape-level patterns in photosynthetic marine fouling biofilm compositional heterogeneity as revealed by hyperspectral classification
Marine fouling biofilms typically have diverse community assemblages in which microalgae are strongly represented. The visible light absorption properties of microalgal photosynthetic pigments typically drive the overall visible light reflectance spectra of these biofilms. In some cases diagnostic spectral features can be used to infer algal taxonomy, while in mixed communities the overlapping pigment signatures of the constituent species often blur together. In this study, we apply methods common in remote sensing approaches to spectral data to extract information from subtle variations in the reflectance spectra of mixed composition marine biofilms. We demonstrate that marine biofilm community composition, as evidenced by their reflectance spectra, is both spatially heterogenous and spatially structured.
Visible-NIR hyperspectral images (3.3nm x 200 bands) of biofilms grown on 7.5cm x 7.5cm panels (n=9), immersed in a coastal marina at ~1m depth for 13 months, were captured with a benchtop line-scan imager. The hyperspectral data were smoothed and transformed to consolidate the major aspects of spectral variability. A novel active learning spectral classification method incorporating iterative spectral library building by k-means clustering and spectral angle mapping, followed by hierarchical clustering by spectral similarity, discovered more than 70 distinct spectral classes present in the biofilms. Accordingly, the hyperspectral images of the fouling biofilms were converted to spatially explicit spectral class maps, where each class was assumed representative of a distinct community compositional mix. Hyperspectral indexing calibrated to chl a surface area density was used to map biomass for the same images.
Cross-tabulating the spectral class and biomass data, it was apparent that for these biofilms, different biomass density levels were consistently associated with specific community compositions (spectral classes.) Only a small number of the possible classes were represented in the densest areas of biofilm, suggesting that these species composition mixes have a competitive advantage. In contrast, the full diversity of class types was present in the low biomass areas.
Our hyperspectral approach does not convey exact species composition, as would pooled metagenomic sampling or in-depth microscopy. However it does allow for the examination of spatially explicit changes in biofilm composition at relatively large scales (the landscape), and so may be a useful tool in hypothesis generation, long term monitoring, and other environmental biofilm applications.