Walther Franziska, Hofmann Martin, Rakosy Demetra, Plos Carolin, Deilmann Till J, Lenk Annalena, Römermann Christine, Harpole W Stanley, Hornick Thomas, Dunker Susanne
Department Physiological Diversity, Helmholtz Centre for Environmental Research UFZ, Leipzig, Germany.
German Centre for Integrative Biodiversity Research iDiv Halle-Jena-Leipzig, Leipzig, Germany.
Cytometry A. 2025 May;107(5):293-308. doi: 10.1002/cyto.a.24932. Epub 2025 Apr 8.
Artificial intelligence (AI) surpasses human accuracy in identifying ordinary objects, but it is still challenging for AI to be competitive in pollen grain identification. One reason for this gap is the extensive trait variation in pollen grains. In classical textbooks, pollen size relies on only 25-50 pollen grains, mostly for one plant and site. Lack of variation in pollen databases can cause limited application of machine learning approaches to real-world samples. Therefore, our study aims to investigate sources of spatial and temporal pollen trait variation for pollen morphology and fluorescence. For this purpose, 64,001 pollen grains from the four herbaceous and insect-pollinated plant species Achillea millefolium L., Lamium album L., Lathyrus vernus (L.) Bernh., and Lotus corniculatus L. sampled across four years and seven locations across Central Germany were measured using multispectral imaging flow cytometry. Observed trait variations were very species-specific; however, for most species, significant differences in spatial as well as temporal variation were found for at least one pollen trait. We could also show that this variability and the identity of a particular sample influence the accuracy of AI classifications and that multiple measurements of different origins provide the most robust AI-based identifications.
人工智能(AI)在识别普通物体方面超越了人类的准确性,但在花粉粒识别方面,AI仍面临挑战。造成这种差距的一个原因是花粉粒存在广泛的性状变异。在经典教科书中,花粉大小仅依据25至50粒花粉来确定,且大多针对单一植物和地点。花粉数据库缺乏变异会导致机器学习方法在实际样本中的应用受限。因此,我们的研究旨在探究花粉形态和荧光在空间和时间上的性状变异来源。为此,我们使用多光谱成像流式细胞术,对德国中部四个年份和七个地点采集的四种草本虫媒植物——蓍草、白花野芝麻、春巢菜和百脉根——的64,001粒花粉进行了测量。观察到的性状变异具有很强的物种特异性;然而,对于大多数物种而言,至少有一种花粉性状在空间和时间变异上存在显著差异。我们还能够证明,这种变异性以及特定样本的特征会影响AI分类的准确性,并且对不同来源的多次测量能提供最可靠的基于AI的识别结果。