一种快速表征棉花单个纤维性状的简化显微镜技术。

IF 2.3 Q3 BIOCHEMICAL RESEARCH METHODS
Quinn LaFave, Shalini P Etukuri, Chaney L Courtney, Neha Kothari, Trevor W Rife, Christopher A Saski
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引用次数: 0

摘要

表型技术的最新进展大大提高了减轻II型错误的能力,II型错误通常与表型数据集的高方差有关。特别是,自动化技术的实施,如大容量仪器(HVI)和先进纤维信息系统(AFIS),显著提高了棉花中各种纤维质量测量的再现性和标准化。然而,马克隆值并不是衡量成熟度或成色的直接指标,这有一定的局限性。AFIS仅提供纤维直径的计算形式,而不是直接测量,证明了基于视觉的参考方法的必要性。通过横截面分析和电子显微镜直接测量单根纤维是一种广泛接受的标准,但耗时且需要使用危险化学品和专用设备。在这项研究中,我们提出了一种简化的纤维组织学和图像采集技术,该技术既快速又可重复。我们还介绍了一种自动图像分析程序,该程序利用机器学习来区分好纤维和坏纤维,并随后收集关键的表型测量值。这些方法有可能提高棉花纤维表型的效率,从而更精确地揭示关键性状的遗传结构,如纤维直径、形状、次生细胞壁/管腔面积等,最终导致纤维质量的更大遗传增益和棉花的改良。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Simplified Microscopy Technique to Rapidly Characterize Individual Fiber Traits in Cotton.

A Simplified Microscopy Technique to Rapidly Characterize Individual Fiber Traits in Cotton.

A Simplified Microscopy Technique to Rapidly Characterize Individual Fiber Traits in Cotton.

A Simplified Microscopy Technique to Rapidly Characterize Individual Fiber Traits in Cotton.

Recent advances in phenotyping techniques have substantially improved the ability to mitigate type-II errors typically associated with high variance in phenotyping data sets. In particular, the implementation of automated techniques such as the High-Volume Instrument (HVI) and the Advanced Fiber Information System (AFIS) have significantly enhanced the reproducibility and standardization of various fiber quality measurements in cotton. However, micronaire is not a direct measure of either maturity or fineness, lending to limitations. AFIS only provides a calculated form of fiber diameter, not a direct measure, justifying the need for a visual-based reference method. Obtaining direct measurements of individual fibers through cross-sectional analysis and electron microscopy is a widely accepted standard but is time-consuming and requires the use of hazardous chemicals and specialized equipment. In this study, we present a simplified fiber histology and image acquisition technique that is both rapid and reproducible. We also introduce an automated image analysis program that utilizes machine learning to differentiate good fibers from bad and to subsequently collect critical phenotypic measurements. These methods have the potential to improve the efficiency of cotton fiber phenotyping, allowing for greater precision in unravelling the genetic architecture of critical traits such as fiber diameter, shape, areas of the secondary cell wall/lumen, and others, ultimately leading to larger genetic gains in fiber quality and improvements in cotton.

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来源期刊
Methods and Protocols
Methods and Protocols Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (miscellaneous)
CiteScore
3.60
自引率
0.00%
发文量
85
审稿时长
8 weeks
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