首页> 外文期刊>BMC Ecology >Combining high-throughput imaging flow cytometry and deep learning for efficient species and life-cycle stage identification of phytoplankton
【24h】

Combining high-throughput imaging flow cytometry and deep learning for efficient species and life-cycle stage identification of phytoplankton

机译:高通量成像流式细胞术和深度学习相结合,可对浮游植物进行有效的物种和生命周期阶段识别

获取原文
           

摘要

Phytoplankton species identification and counting is a crucial step of water quality assessment. Especially drinking water reservoirs, bathing and ballast water need to be regularly monitored for harmful species. In times of multiple environmental threats like eutrophication, climate warming and introduction of invasive species more intensive monitoring would be helpful to develop adequate measures. However, traditional methods such as microscopic counting by experts or high throughput flow cytometry based on scattering and fluorescence signals are either too time-consuming or inaccurate for species identification tasks. The combination of high qualitative microscopy with high throughput and latest development in machine learning techniques can overcome this hurdle. In this study, image based cytometry was used to collect ~?47,000 images for brightfield and Chl a fluorescence at 60× magnification for nine common freshwater species of nano- and micro-phytoplankton. A deep neuronal network trained on these images was applied to identify the species and the corresponding life cycle stage during the batch cultivation. The results show the high potential of this approach, where species identity and their respective life cycle stage could be predicted with a high accuracy of 97%. These findings could pave the way for reliable and fast phytoplankton species determination of indicator species as a crucial step in water quality assessment.
机译:浮游植物的种类鉴定和计数是水质评估的关键步骤。尤其是饮用水水库,浴室和压舱水需要定期进行有害物种监测。在诸如富营养化,气候变暖和引入入侵物种的多重环境威胁时期,更深入的监测将有助于制定适当的措施。但是,传统方法(例如由专家进行的显微计数或基于散射和荧光信号的高通量流式细胞术)对于物种识别任务而言既费时又不准确。高定性显微镜与高通量的结合以及机器学习技术的最新发展可以克服这一障碍。在这项研究中,基于图像的细胞术用于收集9万种纳米和微型浮游植物的常见淡水物种的〜47,000张明场图像和60x放大率的Ch1a荧光。在这些图像上训练了一个深层神经元网络,以识别批次培养中的物种和相应的生命周期阶段。结果表明,这种方法具有很高的潜力,其中物种身份及其各自的生命周期阶段可以以97%的高精度进行预测。这些发现可能为确定指标物种的可靠,快速的浮游植物物种铺平道路,这是水质评估中的关键步骤。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号