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利用基于实验室的高光谱图像和机器学习区分形成水华的蓝藻:在环境范围内验证有毒物种。

Discriminating bloom-forming cyanobacteria using lab-based hyperspectral imagery and machine learning: Validation with toxic species under environmental ranges.

机构信息

Departamento de Biología, Universidad Autónoma de Madrid, 28049 Madrid, Spain.

Departamento de Biología, Universidad Autónoma de Madrid, 28049 Madrid, Spain.

出版信息

Sci Total Environ. 2024 Jul 1;932:172741. doi: 10.1016/j.scitotenv.2024.172741. Epub 2024 Apr 26.

DOI:10.1016/j.scitotenv.2024.172741
PMID:38679105
Abstract

Cyanobacteria are major contributors to algal blooms in inland waters, threatening ecosystem function and water uses, especially when toxin-producing strains dominate. Here, we examine 140 hyperspectral (HS) images of five representatives of the widespread, potentially toxin-producing and bloom-forming genera Microcystis, Planktothrix, Aphanizomenon, Chrysosporum and Dolichospermum, to determine the potential of utilizing visible and near-infrared (VIS/NIR) reflectance for their discrimination. Cultures were grown under various light and nutrient conditions to induce a wide range of pigment and spectral variability, mimicking variations potentially found in natural environments. Importantly, we assumed a simplified scenario where all spectral variability was derived from cyanobacteria. Throughout the cyanobacterial life cycle, multiple HS images were acquired along with extractions of chlorophyll a and phycocyanin. Images were calibrated and average spectra from the region of interest were extracted using k-means algorithm. The spectral data were pre-processed with seven methods for subsequent integration into Random Forest models, whose performances were evaluated with different metrics on the training, validation and testing sets. Successful classification rates close to 90 % were achieved using either the first or second derivative along with spectral smoothing, identifying important wavelengths in both the VIS and NIR. Microcystis and Chrysosporum were the genera achieving the highest accuracy (>95 %), followed by Planktothrix (79 %), and finally Dolichospermum and Aphanizomenon (>50 %). The potential of HS imagery to discriminate among toxic cyanobacteria is discussed in the context of advanced monitoring, aiming to enhance remote sensing capabilities and risk predictions for water bodies affected by cyanobacterial harmful algal blooms.

摘要

蓝藻是内陆水域藻华的主要贡献者,威胁着生态系统功能和水的用途,尤其是当产毒菌株占主导地位时。在这里,我们研究了五个广泛存在的、具有潜在产毒和形成水华能力的微囊藻属、束丝藻属、鱼腥藻属、金藻属和螺旋鱼腥藻属代表种的 140 张高光谱 (HS) 图像,以确定利用可见和近红外 (VIS/NIR) 反射率进行区分的潜力。在各种光照和营养条件下培养这些藻,以诱导广泛的色素和光谱变异性,模拟自然环境中可能存在的变化。重要的是,我们假设了一个简化的情景,即所有的光谱变化都来自蓝藻。在蓝藻的整个生命周期中,随着叶绿素 a 和藻蓝蛋白的提取,采集了多个 HS 图像。对图像进行校准,并使用 k-均值算法提取感兴趣区域的平均光谱。使用七种方法对光谱数据进行预处理,然后将其集成到随机森林模型中,使用不同的指标在训练集、验证集和测试集上评估其性能。使用一阶或二阶导数加上光谱平滑处理,成功地达到了接近 90%的分类率,确定了 VIS 和 NIR 中重要的波长。微囊藻属和金藻属的分类精度最高 (>95%),其次是束丝藻属 (79%),最后是螺旋鱼腥藻属和鱼腥藻属 (>50%)。高光谱图像在鉴别有毒蓝藻方面的潜力在先进监测的背景下进行了讨论,旨在增强对受蓝藻有害藻华影响的水体的遥感能力和风险预测。

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