Centro de Biotecnología y Genómica de Plantas, Universidad Politécnica de Madrid - Instituto Nacional de Investigación y Tecnología Agraria y Alimentaria (INIA/CSIC), Madrid, Spain.
Centro de Biotecnología y Genómica de Plantas, Universidad Politécnica de Madrid - Instituto Nacional de Investigación y Tecnología Agraria y Alimentaria (INIA/CSIC), Madrid, Spain.
Plant Sci. 2022 Oct;323:111391. doi: 10.1016/j.plantsci.2022.111391. Epub 2022 Jul 19.
Trichomes are unicellular or multicellular hair-like appendages developed on the aerial plant epidermis of most plant species that act as a protective barrier against natural hazards. For this reason, evaluating the density of trichomes is a valuable approach for elucidating plant defence responses to a continuous challenging environment. However, previous methods for trichome counting, although reliable, require the use of specialised equipment, software or previous manipulation steps of the plant tissue, which poses a complicated hurdle for many laboratories. Here, we propose a new fast, accessible and user-friendly method to quantify trichomes that overcomes all these drawbacks and makes trichome quantification a reachable option for the scientific community. Particularly, this new method is based on the use of machine learning as a reliable tool for quantifying trichomes, following an Ilastik-Fiji tandem approach directly performed on 2D images. Our method shows high reliability and efficacy on trichome quantification in Arabidopsis thaliana by comparing manual and automated results in Arabidopsis accessions with diverse trichome densities. Due to the plasticity that machine learning provides, this method also showed adaptability to other plant species, demonstrating the ability of the method to spread its scope to a greater scientific community.
表皮毛是大多数植物物种气生表皮上发育的单细胞或多细胞毛状附属物,作为抵御自然灾害的保护屏障。出于这个原因,评估表皮毛的密度是阐明植物对持续挑战环境的防御反应的一种有价值的方法。然而,以前的表皮毛计数方法虽然可靠,但需要使用专门的设备、软件或对植物组织进行先前的操作步骤,这对许多实验室来说是一个复杂的障碍。在这里,我们提出了一种新的快速、易于使用的表皮毛定量方法,克服了所有这些缺点,使表皮毛定量成为科学界的一个可行选择。特别是,这种新方法基于使用机器学习作为一种可靠的工具来定量表皮毛,采用 Ilastik-Fiji 串联方法,直接对 2D 图像进行操作。我们的方法通过比较具有不同表皮毛密度的拟南芥品系中的手动和自动结果,在拟南芥表皮毛定量方面显示出高度的可靠性和有效性。由于机器学习提供的灵活性,该方法还表现出对其他植物物种的适应性,证明了该方法将其范围扩展到更大的科学界的能力。