An automated and intelligent microfluidic platform for microalgae detection and monitoring†

IF 5.4 2区 工程技术 Q1 BIOCHEMICAL RESEARCH METHODS
Lab on a Chip Pub Date : 2023-12-04 DOI:10.1039/D3LC00851G
Jiahao Zheng, Tim Cole, Yuxin Zhang, Bayinqiaoge, Dan Yuan and Shi-Yang Tang
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引用次数: 0

Abstract

Microalgae not only play a vital role in the ecosystem but also hold promising commercial applications. Conventional methods of detecting and monitoring microalgae rely on field sampling followed by transportation to the laboratory for manual analysis, which is both time-consuming and laborious. Although machine learning (ML) algorithms have been introduced for microalgae detection in the laboratory, no integrated platform approach has yet emerged to enable real-time, on-site sampling and analysing. To solve this problem, here, we develop an automated and intelligent microfluidic platform (AIMP) that can offer automated system control, intelligent data analysis, and user interaction, providing an economical and portable solution to alleviate the drawbacks of conventional methods for microalgae detection and monitoring. We demonstrate the feasibility of the AIMP by detecting and classifying four microalgal species (Cosmarium, Closterium, Micrasterias, and Haematococcus Pluvialis) that exhibit varying sizes (from a few to hundreds of microns) and morphologies. The trained microalgae species detection network (MSDN, based on YOLOv5 architecture) achieves a high overall mean average precision at 0.5 intersection-over-union (mAP@0.5) of 92.8%. Furthermore, the versatility of the AIMP is demonstrated by long-term monitoring of astaxanthin production from Haematococcus Pluvialis over a period of 30 days. The AIMP achieved 97.5% accuracy in the detection of Haematococcus Pluvialis and 96.3% in further classification based on astaxanthin accumulation. This study opens up a new path towards microalgae detection and monitoring using portable intelligent devices, providing new ideas to accelerate progress in the ecological studies and commercial exploitation of microalgae.

Abstract Image

微藻检测与监测的自动化智能微流控平台
微藻不仅在生态系统中起着至关重要的作用,而且具有广阔的商业应用前景。传统的微藻检测和监测方法依赖于实地取样,然后运送到实验室进行人工分析,这既耗时又费力。虽然机器学习(ML)算法已经被引入到实验室的微藻检测中,但目前还没有集成的平台方法来实现实时、现场采样和分析。为了解决这一问题,我们开发了一种自动化智能微流控平台(AIMP),可以提供自动化系统控制,智能数据分析和用户交互,为减轻传统微藻检测和监测方法的缺点提供了一种经济便携的解决方案。我们通过检测和分类四种微藻(Cosmarium, Closterium, Micrasterias和Haematococcus Pluvialis)来证明AIMP的可行性,这些微藻表现出不同的大小(从几微米到几百微米)和形态。训练后的微藻种类检测网络(MSDN,基于YOLOv5架构)在0.5相交-超并度(mAP@0.5)处获得了92.8%的总体平均精度。此外,在30天的时间里,对雨红球菌虾青素产量的长期监测证明了AIMP的多功能性。AIMP检测雨红球菌的准确率为97.5%,根据虾青素积累进一步分类的准确率为96.3%。本研究为利用便携式智能设备检测和监测微藻开辟了新途径,为加快微藻生态研究和商业化开发提供了新思路。
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来源期刊
Lab on a Chip
Lab on a Chip 工程技术-化学综合
CiteScore
11.10
自引率
8.20%
发文量
434
审稿时长
2.6 months
期刊介绍: Lab on a Chip is the premiere journal that publishes cutting-edge research in the field of miniaturization. By their very nature, microfluidic/nanofluidic/miniaturized systems are at the intersection of disciplines, spanning fundamental research to high-end application, which is reflected by the broad readership of the journal. Lab on a Chip publishes two types of papers on original research: full-length research papers and communications. Papers should demonstrate innovations, which can come from technical advancements or applications addressing pressing needs in globally important areas. The journal also publishes Comments, Reviews, and Perspectives.
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