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BELT和phenoSEED平台:种子样本的形状和颜色表型分析

The BELT and phenoSEED platforms: shape and colour phenotyping of seed samples.

作者信息

Halcro Keith, McNabb Kaitlin, Lockinger Ashley, Socquet-Juglard Didier, Bett Kirstin E, Noble Scott D

机构信息

1Department of Mechanical Engineering, College of Engineering, University of Saskatchewan, Saskatoon, Saskatchewan Canada.

2Department of Plant Sciences, College of Agriculture and Bioresources, University of Saskatchewan, Saskatoon, Saskatchewan Canada.

出版信息

Plant Methods. 2020 Apr 10;16:49. doi: 10.1186/s13007-020-00591-8. eCollection 2020.

Abstract

BACKGROUND

Quantitative and qualitative assessment of visual and morphological traits of seed is slow and imprecise with potential for bias to be introduced when gathered with handheld tools. Colour, size and shape traits can be acquired from properly calibrated seed images. New automated tools were requested to improve data acquisition efficacy with an emphasis on developing research workflows.

RESULTS

A portable imaging system (BELT) supported by image acquisition and analysis software (phenoSEED) was created for small-seed optical analysis. Lentil ( L.) phenotyping was used as the primary test case. Seeds were loaded into the system and all seeds in a sample were automatically individually imaged to acquire top and side views as they passed through an imaging chamber. A Python analysis script applied a colour calibration and extracted quantifiable traits of seed colour, size and shape. Extraction of lentil seed coat patterning was implemented to further describe the seed coat. The use of this device was forecasted to eliminate operator biases, increase the rate of acquisition of traits, and capture qualitative information about traits that have been historically analyzed by eye.

CONCLUSIONS

Increased precision and higher rates of data acquisition compared to traditional techniques will help to extract larger datasets and explore more research questions. The system presented is available as an open-source project for academic and non-commercial use.

摘要

背景

使用手持工具收集种子时,对种子视觉和形态特征进行定量和定性评估既缓慢又不准确,且可能引入偏差。颜色、大小和形状特征可从经过适当校准的种子图像中获取。需要新的自动化工具来提高数据采集效率,并着重开发研究工作流程。

结果

创建了一个由图像采集和分析软件(phenoSEED)支持的便携式成像系统(BELT),用于小种子的光学分析。以小扁豆(L.)表型分析作为主要测试案例。将种子装入系统,样本中的所有种子在通过成像室时会自动逐个成像,以获取顶部和侧面视图。一个Python分析脚本进行了颜色校准,并提取了种子颜色、大小和形状的可量化特征。实施了小扁豆种皮图案提取以进一步描述种皮。预计使用该设备可消除操作员偏差,提高特征获取率,并捕捉历史上通过肉眼分析的特征的定性信息。

结论

与传统技术相比,更高的精度和更高的数据采集率将有助于提取更大的数据集并探索更多研究问题。所展示的系统作为开源项目可供学术和非商业使用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d4a0/7149850/ed490b205bc8/13007_2020_591_Fig1_HTML.jpg

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