Center for Biosystems and Biotech Data Science, Ghent University Global Campus, Incheon, South Korea.
IDLab, Department of Electronics and Information Systems, Ghent University, Ghent, Belgium.
PLoS One. 2022 Jun 15;17(6):e0269449. doi: 10.1371/journal.pone.0269449. eCollection 2022.
Environmental monitoring of microplastics (MP) contamination has become an area of great research interest, given potential hazards associated with human ingestion of MP. In this context, determination of MP concentration is essential. However, cheap, rapid, and accurate quantification of MP remains a challenge to this date. This study proposes a deep learning-based image segmentation method that properly distinguishes fluorescent MP from other elements in a given microscopy image. A total of nine different deep learning models, six of which are based on U-Net, were investigated. These models were trained using at least 20,000 patches sampled from 99 fluorescence microscopy images of MP and their corresponding binary masks. MP-Net, which is derived from U-Net, was found to be the best performing model, exhibiting the highest mean F1-score (0.736) and mean IoU value (0.617). Test-time augmentation (using brightness, contrast, and HSV) was applied to MP-Net for robust learning. However, compared to the results obtained without augmentation, no clear improvement in predictive performance could be observed. Recovery assessment for both spiked and real images showed that, compared to already existing tools for MP quantification, the MP quantities predicted by MP-Net are those closest to the ground truth. This observation suggests that MP-Net allows creating masks that more accurately reflect the quantitative presence of fluorescent MP in microscopy images. Finally, MAP (Microplastics Annotation Package) is introduced, an integrated software environment for automated MP quantification, offering support for MP-Net, already existing MP analysis tools like MP-VAT, manual annotation, and model fine-tuning.
环境监测微塑料 (MP) 污染已成为一个极具研究兴趣的领域,因为人类摄入 MP 可能带来潜在危害。在这种情况下,MP 浓度的测定至关重要。然而,迄今为止,廉价、快速且准确地量化 MP 仍然是一个挑战。本研究提出了一种基于深度学习的图像分割方法,可正确区分荧光 MP 和给定显微镜图像中的其他元素。总共研究了九种不同的深度学习模型,其中六种基于 U-Net。这些模型使用至少 20000 个从 99 张荧光显微镜图像及其对应的二值掩模中采样的补丁进行训练。从 U-Net 衍生而来的 MP-Net 被发现是性能最佳的模型,表现出最高的平均 F1 分数(0.736)和平均 IoU 值(0.617)。MP-Net 应用了测试时增强(使用亮度、对比度和 HSV)进行稳健学习。然而,与未经增强时的结果相比,预测性能没有明显改善。对加标和真实图像的恢复评估表明,与现有的 MP 定量工具相比,MP-Net 预测的 MP 量更接近真实值。这一观察结果表明,MP-Net 可以创建更准确地反映显微镜图像中荧光 MP 定量存在的掩模。最后,引入了 MAP(微塑料注释包),这是一个用于自动 MP 定量的集成软件环境,支持 MP-Net、现有的 MP 分析工具(如 MP-VAT)、手动注释和模型微调。