Wacker Tomke S, Smith Abraham G, Jensen Signe M, Pflüger Theresa, Hertz Viktor G, Rosenqvist Eva, Liu Fulai, Dresbøll Dorte B
Department of Plant and Environmental Sciences, University of Copenhagen, Copenhagen, Denmark.
Department of Computer Science, University of Copenhagen, Copenhagen, Denmark.
Plant Methods. 2025 Jul 9;21(1):95. doi: 10.1186/s13007-025-01416-2.
Stomatal morphology plays a critical role in regulating plant gas exchange influencing water use efficiency and ecological adaptability. While traditional methods for analyzing stomatal traits rely on labor-intensive manual measurements, machine learning (ML) tools offer a promising alternative. In this study, we evaluate the suitability of a U-Net-based interactive ML software with corrective annotation for stomatal morphology phenotyping. The approach enables non-ML experts to efficiently segment stomatal structures across diverse datasets, including images from different plant species, magnifications, and imprint methods. We trained a single model based on images from five datasets and tested its performance on unseen data, achieving high accuracy for stomatal density (R = 0.98) and size (R = 0.90). Thresholding approaches applied to the U-Net segmentations further improved accuracy, particularly for density measurements. Despite significant variability between datasets, our findings demonstrate the feasibility of training a single segmentation model to analyze diverse stomatal data sets. Validation approaches showed that a semi-automatic approach involving correcting segmentations was five times faster than manual annotation while maintaining comparable accuracy. Our results also illustrate that ML metrics, such as the F1 score, correlate with accuracy in the statistical analysis of trait measurements with improvements diminishing after 2:30 h model training. The final model achieved high precision, allowing the detection of highly significant biological differences in stomatal morphology within plant, between genotypes and across growing environments. This study highlights interactive ML with corrective annotation as a robust and accessible tool for accelerating phenotyping in plant sciences, reducing technical barriers and promoting high-throughput analysis.
气孔形态在调节植物气体交换、影响水分利用效率和生态适应性方面起着关键作用。虽然传统的气孔性状分析方法依赖于劳动强度大的人工测量,但机器学习(ML)工具提供了一种很有前景的替代方法。在本研究中,我们评估了一种基于U-Net的带有校正注释的交互式ML软件用于气孔形态表型分析的适用性。该方法使非ML专家能够有效地分割来自不同数据集的气孔结构,包括来自不同植物物种、放大倍数和印记方法的图像。我们基于五个数据集的图像训练了一个单一模型,并在未见数据上测试其性能,在气孔密度(R = 0.98)和大小(R = 0.90)方面取得了高精度。应用于U-Net分割的阈值方法进一步提高了准确性,特别是对于密度测量。尽管数据集之间存在显著差异,但我们的研究结果证明了训练一个单一分割模型来分析不同气孔数据集的可行性。验证方法表明,一种涉及校正分割的半自动方法比人工注释快五倍,同时保持相当的准确性。我们的结果还表明,ML指标,如F1分数,在性状测量的统计分析中与准确性相关,在模型训练2:30小时后改进逐渐减少。最终模型实现了高精度,能够检测植物内部、基因型之间和不同生长环境下气孔形态的高度显著生物学差异。本研究强调了带有校正注释的交互式ML作为一种强大且易于使用的工具,可以加速植物科学中的表型分析,减少技术障碍并促进高通量分析。