Wang Liya, Uilecan Ioan Vlad, Assadi Amir H, Kozmik Christine A, Spalding Edgar P
Department of Botany, University of Wisconsin, Madison, Wisconsin 53706, USA.
Plant Physiol. 2009 Apr;149(4):1632-7. doi: 10.1104/pp.108.134072. Epub 2009 Feb 11.
Analysis of time series of images can quantify plant growth and development, including the effects of genetic mutations (phenotypes) that give information about gene function. Here is demonstrated a software application named HYPOTrace that automatically extracts growth and shape information from electronic gray-scale images of Arabidopsis (Arabidopsis thaliana) seedlings. Key to the method is the iterative application of adaptive local principal components analysis to extract a set of ordered midline points (medial axis) from images of the seedling hypocotyl. Pixel intensity is weighted to avoid the medial axis being diverted by the cotyledons in areas where the two come in contact. An intensity feature useful for terminating the midline at the hypocotyl apex was isolated in each image by subtracting the baseline with a robust local regression algorithm. Applying the algorithm to time series of images of Arabidopsis seedlings responding to light resulted in automatic quantification of hypocotyl growth rate, apical hook opening, and phototropic bending with high spatiotemporal resolution. These functions are demonstrated here on wild-type, cryptochrome1, and phototropin1 seedlings for the purpose of showing that HYPOTrace generated expected results and to show how much richer the machine-vision description is compared to methods more typical in plant biology. HYPOTrace is expected to benefit seedling development research, particularly in the photomorphogenesis field, by replacing many tedious, error-prone manual measurements with a precise, largely automated computational tool.
对图像时间序列进行分析能够量化植物的生长和发育情况,其中包括基因突变(表型)的影响,这些影响能够提供有关基因功能的信息。本文展示了一款名为HYPOTrace的软件应用程序,它能够自动从拟南芥幼苗的电子灰度图像中提取生长和形状信息。该方法的关键在于迭代应用自适应局部主成分分析,以便从幼苗下胚轴的图像中提取一组有序的中线点(中轴线)。对像素强度进行加权处理,以避免中轴线在子叶与下胚轴接触的区域被子叶干扰。通过使用稳健的局部回归算法减去基线,在每张图像中分离出一个有助于在下胚轴顶端终止中线的强度特征。将该算法应用于拟南芥幼苗对光响应的图像时间序列,能够以高时空分辨率自动量化下胚轴生长速率、顶端弯钩张开以及向光弯曲情况。本文在野生型、隐花色素1和向光素1幼苗上展示了这些功能,目的是表明HYPOTrace产生了预期结果,并展示与植物生物学中更典型的方法相比,机器视觉描述有多么丰富。预计HYPOTrace将通过用精确的、基本自动化的计算工具取代许多繁琐、易出错的手动测量,从而造福于幼苗发育研究,特别是在光形态建成领域。