Naturalis Biodiversity Center, Leiden, The Netherlands.
Leiden Institute of Advanced Computer Science (LIACS), Leiden, The Netherlands.
Sci Rep. 2021 May 31;11(1):11357. doi: 10.1038/s41598-021-90433-x.
Monitoring of airborne pollen concentrations provides an important source of information for the globally increasing number of hay fever patients. Airborne pollen is traditionally counted under the microscope, but with the latest developments in image recognition methods, automating this process has become feasible. A challenge that persists, however, is that many pollen grains cannot be distinguished beyond the genus or family level using a microscope. Here, we assess the use of Convolutional Neural Networks (CNNs) to increase taxonomic accuracy for airborne pollen. As a case study we use the nettle family (Urticaceae), which contains two main genera (Urtica and Parietaria) common in European landscapes which pollen cannot be separated by trained specialists. While pollen from Urtica species has very low allergenic relevance, pollen from several species of Parietaria is severely allergenic. We collect pollen from both fresh as well as from herbarium specimens and use these without the often used acetolysis step to train the CNN model. The models show that unacetolyzed Urticaceae pollen grains can be distinguished with > 98% accuracy. We then apply our model on before unseen Urticaceae pollen collected from aerobiological samples and show that the genera can be confidently distinguished, despite the more challenging input images that are often overlain by debris. Our method can also be applied to other pollen families in the future and will thus help to make allergenic pollen monitoring more specific.
监测空气中花粉浓度为越来越多的花粉症患者提供了重要的信息来源。空气中的花粉传统上是在显微镜下计数的,但随着图像识别方法的最新发展,自动化这个过程变得可行了。然而,仍然存在一个挑战,即使用显微镜,许多花粉粒无法超出属或科的水平进行区分。在这里,我们评估了卷积神经网络 (CNN) 在提高空气中花粉分类准确性方面的应用。作为一个案例研究,我们使用荨麻科(Urticaceae),它包含两个在欧洲景观中常见的主要属(荨麻属和墙草属),花粉不能被受过训练的专家分开。虽然荨麻属物种的花粉过敏相关性很低,但几种墙草属的花粉严重致敏。我们收集新鲜和标本的花粉,并在不使用常用的乙酰解步骤的情况下,用这些花粉来训练 CNN 模型。这些模型表明,未乙酰解的荨麻科花粉粒可以以>98%的准确率进行区分。然后,我们将模型应用于从未见过的从空气生物学样本中收集的荨麻科花粉,并表明尽管输入图像更具挑战性,经常被碎屑覆盖,但仍可以自信地区分属。我们的方法将来也可以应用于其他花粉科,从而有助于使致敏花粉监测更加具体。