DEEI-FCT Universidade do Algarve, 8005-139 Faro, Portugal.
BMC Plant Biol. 2013 Aug 29;13:122. doi: 10.1186/1471-2229-13-122.
In crops, inflorescence complexity and the shape and size of the seed are among the most important characters that influence yield. For example, rice panicles vary considerably in the number and order of branches, elongation of the axis, and the shape and size of the seed. Manual low-throughput phenotyping methods are time consuming, and the results are unreliable. However, high-throughput image analysis of the qualitative and quantitative traits of rice panicles is essential for understanding the diversity of the panicle as well as for breeding programs.
This paper presents P-TRAP software (Panicle TRAit Phenotyping), a free open source application for high-throughput measurements of panicle architecture and seed-related traits. The software is written in Java and can be used with different platforms (the user-friendly Graphical User Interface (GUI) uses Netbeans Platform 7.3). The application offers three main tools: a tool for the analysis of panicle structure, a spikelet/grain counting tool, and a tool for the analysis of seed shape. The three tools can be used independently or simultaneously for analysis of the same image. Results are then reported in the Extensible Markup Language (XML) and Comma Separated Values (CSV) file formats. Images of rice panicles were used to evaluate the efficiency and robustness of the software. Compared to data obtained by manual processing, P-TRAP produced reliable results in a much shorter time. In addition, manual processing is not repeatable because dry panicles are vulnerable to damage. The software is very useful, practical and collects much more data than human operators.
P-TRAP is a new open source software that automatically recognizes the structure of a panicle and the seeds on the panicle in numeric images. The software processes and quantifies several traits related to panicle structure, detects and counts the grains, and measures their shape parameters. In short, P-TRAP offers both efficient results and a user-friendly environment for experiments. The experimental results showed very good accuracy compared to field operator, expert verification and well-known academic methods.
在作物中,花序复杂性以及种子的形状和大小是影响产量的最重要特征之一。例如,水稻穗在分支的数量和顺序、轴的伸长、种子的形状和大小等方面差异很大。手动进行低通量表型分析既耗时又不可靠。但是,对水稻穗的定性和定量性状进行高通量图像分析对于理解穗的多样性以及对于育种计划而言是必不可少的。
本文提出了 P-TRAP 软件(穗型 TRAit 表型分析),这是一种用于高通量测量穗结构和与种子相关特征的免费开源应用程序。该软件使用 Java 编写,可以在不同平台上使用(用户友好的图形用户界面 (GUI) 使用 Netbeans Platform 7.3)。该应用程序提供了三个主要工具:用于分析穗结构的工具、小穗/谷粒计数工具和用于分析种子形状的工具。这三个工具可以独立或同时用于分析同一幅图像。结果以可扩展标记语言 (XML) 和逗号分隔值 (CSV) 文件格式报告。使用水稻穗图像评估了该软件的效率和稳健性。与手动处理相比,P-TRAP 可以在更短的时间内产生可靠的结果。此外,手动处理不可重复,因为干燥的穗容易损坏。该软件非常有用且实用,收集的数据比人工操作员多得多。
P-TRAP 是一种新的开源软件,可自动识别数字图像中的穗结构和穗上的种子。该软件处理和量化与穗结构相关的几个特征,检测和计数谷粒,并测量其形状参数。简而言之,P-TRAP 为实验提供了高效的结果和用户友好的环境。与田间操作人员、专家验证和知名学术方法相比,实验结果的准确性非常高。