Wang Shengqiang, Xiao Cong, Ishizaka Joji, Qiu Zhongfeng, Sun Deyong, Xu Qian, Zhu Yuanli, Huan Yu, Watanabe Yuji
Opt Express. 2016 Oct 17;24(21):23635-23653. doi: 10.1364/OE.24.023635.
Knowledge of phytoplankton community structures is important to the understanding of various marine biogeochemical processes and ecosystem. Fluorescence excitation spectra (F(λ)) provide great potential for studying phytoplankton communities because their spectral variability depends on changes in the pigment compositions related to distinct phytoplankton groups. Commercial spectrofluorometers have been developed to analyze phytoplankton communities by measuring the field F(λ), but estimations using the default methods are not always accurate because of their strong dependence on norm spectra, which are obtained by culturing pure algae of a given group and are assumed to be constant. In this study, we proposed a novel approach for estimating the chlorophyll a (Chl a) fractions of brown algae, cyanobacteria, green algae and cryptophytes based on a data set collected in the East China Sea (ECS) and the Tsushima Strait (TS), with concurrent measurements of in vivo F(λ) and phytoplankton communities derived from pigments analysis. The new approach blends various statistical features by computing the band ratios and continuum-removed spectra of F(λ) without requiring a priori knowledge of the norm spectra. The model evaluations indicate that our approach yields good estimations of the Chl a fractions, with root-mean-square errors of 0.117, 0.078, 0.072 and 0.060 for brown algae, cyanobacteria, green algae and cryptophytes, respectively. The statistical analysis shows that the models are generally robust to uncertainty in F(λ). We recommend using a site-specific model for more accurate estimations. To develop a site-specific model in the ECS and TS, approximately 26 samples are sufficient for using our approach, but this conclusion needs to be validated in additional regions. Overall, our approach provides a useful technical basis for estimating phytoplankton communities from measurements of F(λ).
了解浮游植物群落结构对于理解各种海洋生物地球化学过程和生态系统至关重要。荧光激发光谱(F(λ))为研究浮游植物群落提供了巨大潜力,因为它们的光谱变异性取决于与不同浮游植物类群相关的色素组成变化。已经开发出商业分光荧光计,通过测量现场F(λ)来分析浮游植物群落,但使用默认方法的估计并不总是准确的,因为它们强烈依赖于标准光谱,标准光谱是通过培养给定类群的纯藻类获得的,并被假定为恒定不变。在本研究中,我们基于在中国东海(ECS)和对马海峡(TS)收集的数据集,提出了一种新方法,用于估计褐藻、蓝细菌、绿藻和隐藻的叶绿素a(Chl a)分数,同时测量体内F(λ)和通过色素分析得出的浮游植物群落。新方法通过计算F(λ)的波段比值和去除连续谱后的光谱来融合各种统计特征,而无需标准光谱的先验知识。模型评估表明,我们的方法对Chl a分数有良好的估计,褐藻、蓝细菌、绿藻和隐藻的均方根误差分别为0.117、0.078、0.072和0.060。统计分析表明,这些模型通常对F(λ)中的不确定性具有鲁棒性。我们建议使用特定地点的模型以获得更准确的估计。要在ECS和TS中开发特定地点的模型,大约26个样本就足以使用我们的方法,但这一结论需要在其他区域进行验证。总体而言,我们的方法为从F(λ)测量中估计浮游植物群落提供了有用的技术基础。