School of Pharmacy and Life Sciences, Robert Gordon University, Garthdee Road, Aberdeen AB10 7GJ, UK.
School of Computing, Robert Gordon University, Garthdee Road, Aberdeen AB10 7GJ, UK.
Sci Total Environ. 2021 Aug 25;784:146956. doi: 10.1016/j.scitotenv.2021.146956. Epub 2021 Apr 7.
The presence of harmful algal bloom in many reservoirs around the world, alongside the lack of sanitation law/ordinance regarding cyanotoxin monitoring (particularly in developing countries), create a scenario in which the local population could potentially chronically consume cyanotoxin-contaminated waters. Therefore, it is crucial to develop low cost tools to detect possible systems failures and consequent toxin release inferred by morphological changes of cyanobacteria in the raw water. This paper aimed to look for the best combination of convolutional neural network (CNN), optimizer and image segmentation technique to differentiate P. agardhii trichomes before and after chemical stress caused by the addition of hydrogen peroxide. This method takes a step towards accurate monitoring of cyanobacteria in the field without the need for a mobile lab. After testing three different network architectures (AlexNet, 3ConvLayer and 2ConvLayer), four different optimizers (Adam, Adagrad, RMSProp and SDG) and five different image segmentations methods (Canny Edge Detection, Morphological Filter, HP filter, GrabCut and Watershed), the combination 2ConvLayer with Adam optimizer and GrabCut segmentation, provided the highest median accuracy (93.33%) for identifying HO-induced morphological changes in P. agardhii. Our results emphasize the fact that the trichome classification problem can be adequately tackled with a limited number of learned features due to the lack of complexity in micrographs from before and after chemical stress. To the authors' knowledge, this is the first time that CNNs were applied to detect morphological changes in cyanobacteria caused by chemical stress. Thus, it is a significant step forward in developing low cost tools based on image recognition, to shield water consumers, especially in the poorest regions, against cyanotoxin-contaminated water.
世界上许多水库中都存在有害藻类水华,加上缺乏有关蓝藻毒素监测的卫生法规(尤其是在发展中国家),这使得当地居民可能会长期摄入受蓝藻毒素污染的水。因此,开发低成本的工具来检测可能的系统故障以及蓝藻在原水中形态变化所推断的毒素释放至关重要。本文旨在寻找最佳的卷积神经网络(CNN)、优化器和图像分割技术组合,以区分添加过氧化氢前后聚球藻的触须的形态变化。该方法朝着在无需移动实验室的情况下准确监测野外蓝藻迈出了一步。在测试了三种不同的网络架构(AlexNet、3ConvLayer 和 2ConvLayer)、四种不同的优化器(Adam、Adagrad、RMSProp 和 SDG)和五种不同的图像分割方法(Canny 边缘检测、形态学滤波、HP 滤波、GrabCut 和分水岭)之后,2ConvLayer 与 Adam 优化器和 GrabCut 分割的组合,为识别 HO 诱导的 P. agardhii 形态变化提供了最高的中位数准确性(93.33%)。我们的结果强调了这样一个事实,即由于在化学胁迫前后的显微照片缺乏复杂性,触须分类问题可以通过有限数量的学习特征来充分解决。据作者所知,这是首次将 CNN 应用于检测化学胁迫引起的蓝藻形态变化。因此,这是朝着基于图像识别开发低成本工具迈出的重要一步,以保护水消费者,特别是最贫困地区的水消费者免受含蓝藻毒素的水的侵害。