Division of Plant Sciences, University of Missouri, Columbia, MO, 65211, USA.
Plant Methods. 2012 Nov 6;8(1):45. doi: 10.1186/1746-4811-8-45.
Accurate characterization of complex plant phenotypes is critical to assigning biological functions to genes through forward or reverse genetics. It can also be vital in determining the effect of a treatment, genotype, or environmental condition on plant growth or susceptibility to insects or pathogens. Although techniques for characterizing complex phenotypes have been developed, most are not cost effective or are too imprecise or subjective to reliably differentiate subtler differences in complex traits like growth, color change, or disease resistance.
We designed an inexpensive imaging protocol that facilitates automatic quantification of two-dimensional visual phenotypes using computer vision and image processing algorithms applied to standard digital images. The protocol allows for non-destructive imaging of plants in the laboratory and field and can be used in suboptimal imaging conditions due to automated color and scale normalization. We designed the web-based tool PhenoPhyte for processing images adhering to this protocol and demonstrate its ability to measure a variety of two-dimensional traits (such as growth, leaf area, and herbivory) using images from several species (Arabidopsis thaliana and Brassica rapa). We then provide a more complicated example for measuring disease resistance of Zea mays to Southern Leaf Blight.
PhenoPhyte is a new cost-effective web-application for semi-automated quantification of two-dimensional traits from digital imagery using an easy imaging protocol. This tool's usefulness is demonstrated for a variety of traits in multiple species. We show that digital phenotyping can reduce human subjectivity in trait quantification, thereby increasing accuracy and improving precision, which are crucial for differentiating and quantifying subtle phenotypic variation and understanding gene function and/or treatment effects.
准确描述复杂的植物表型对于通过正向或反向遗传学将基因的生物学功能分配至关重要。它对于确定处理、基因型或环境条件对植物生长或对昆虫或病原体的易感性的影响也可能至关重要。尽管已经开发出了用于描述复杂表型的技术,但大多数技术要么成本过高,要么不够精确或主观,无法可靠地区分生长、颜色变化或抗病性等复杂性状中更细微的差异。
我们设计了一种廉价的成像方案,该方案使用计算机视觉和图像处理算法来自动量化二维视觉表型,这些算法应用于标准数字图像。该方案允许在实验室和野外对植物进行非破坏性成像,并且由于自动颜色和比例归一化,可以在不理想的成像条件下使用。我们设计了基于网络的 PhenoPhyte 工具来处理符合该方案的图像,并展示了它使用来自几种物种(拟南芥和油菜)的图像来测量各种二维特征(如生长、叶面积和草食性)的能力。然后,我们提供了一个更复杂的例子,用于测量玉米对南方叶斑病的抗病性。
PhenoPhyte 是一种新的、具有成本效益的网络应用程序,用于使用简单的成像方案从数字图像半自动量化二维特征。该工具在多个物种的多种特征上都具有实用性。我们表明,数字表型可以减少特征量化中的人为主观性,从而提高准确性和精度,这对于区分和量化细微的表型变化以及理解基因功能和/或治疗效果至关重要。