Dupuy Lionel X, Wright Gladys, Thompson Jacqueline A, Taylor Anna, Dekeyser Sebastien, White Christopher P, Thomas William T B, Nightingale Mark, Hammond John P, Graham Neil S, Thomas Catherine L, Broadley Martin R, White Philip J
Ecological Sciences, The James Hutton Institute, Invergowrie, Dundee, DD2 5DA UK.
Cell and Molecular Sciences, The James Hutton Institute, Invergowrie, Dundee, DD2 5DA UK.
Plant Methods. 2017 Jul 13;13:57. doi: 10.1186/s13007-017-0207-1. eCollection 2017.
There are numerous systems and techniques to measure the growth of plant roots. However, phenotyping large numbers of plant roots for breeding and genetic analyses remains challenging. One major difficulty is to achieve high throughput and resolution at a reasonable cost per plant sample. Here we describe a cost-effective root phenotyping pipeline, on which we perform time and accuracy benchmarking to identify bottlenecks in such pipelines and strategies for their acceleration.
Our root phenotyping pipeline was assembled with custom software and low cost material and equipment. Results show that sample preparation and handling of samples during screening are the most time consuming task in root phenotyping. Algorithms can be used to speed up the extraction of root traits from image data, but when applied to large numbers of images, there is a trade-off between time of processing the data and errors contained in the database.
Scaling-up root phenotyping to large numbers of genotypes will require not only automation of sample preparation and sample handling, but also efficient algorithms for error detection for more reliable replacement of manual interventions.
有许多系统和技术可用于测量植物根系的生长。然而,对大量植物根系进行表型分析以用于育种和遗传分析仍然具有挑战性。一个主要困难是要以合理的单株样本成本实现高通量和高分辨率。在此,我们描述了一种具有成本效益的根系表型分析流程,并对其进行时间和准确性基准测试,以识别此类流程中的瓶颈及其加速策略。
我们的根系表型分析流程由定制软件以及低成本的材料和设备组成。结果表明,样本制备以及筛选过程中对样本的处理是根系表型分析中最耗时的任务。算法可用于加速从图像数据中提取根系特征,但应用于大量图像时,在数据处理时间和数据库中包含的误差之间存在权衡。
将根系表型分析扩大到大量基因型不仅需要样本制备和样本处理的自动化,还需要用于错误检测的高效算法,以便更可靠地替代人工干预。