优化大豆种质幼苗耐低氮能力的评价方法

IF 3.5 3区 生物学 Q1 PLANT SCIENCES
He Guoxin, Li Sujuan, Wang Jian, Li Yanjun, Tao Xiaoyuan, Ye Zihong, Chen Guang, Xu Shengchun
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引用次数: 0

摘要

氮是大豆(Glycine max L.)生长发育的重要宏量营养元素。提高氮素利用效率和开发耐低氮品种是缓解施肥过量和实现生产效益最大化的重要方法。精确鉴定耐低氮种质是将种质优势转化为育种优势的重要桥梁。在本研究中,我们基于极端梯度提升(XGBoost)算法优化了大豆幼苗耐低氮性的精确评价方法。在正常氮水平(7.5 mM)和低氮水平(0.75 mM)的水培条件下,对 300 株大豆种质进行了低氮耐受性评估。对生物量、叶绿素荧光等 14 个与低氮耐受性相关的生理性状进行了测定。对基于 XGBoost 的评价方法与传统的模糊成员函数综合评价方法的准确性和适用性进行了比较。结果表明,与传统方法相比,基于 XGBoost 的方法确保了精确度,并减少了确定的生理指标数量。此外,这种方法还减少了精确鉴定所需的性状数量,从而缩短了时间,提高了经济效益。因此,大豆耐低氮种质的筛选效率得到了提高,为大豆育种计划提供了宝贵的启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Optimization of evaluation method for low nitrogen tolerance in soybean germplasm seedlings

Optimization of evaluation method for low nitrogen tolerance in soybean germplasm seedlings

Nitrogen is a critical macro-nutrient for growth and development of soybeans (Glycine max L.). Improving nitrogen use efficiency and developing low nitrogen tolerance varieties are important approaches to mitigate excessive fertilization and maximize production benefits. Precise identification of low nitrogen tolerance germplasms serves as a crucial bridge for converting germplasm advantages into breeding advantages. In this study, we optimized a precise evaluation method for low-nitrogen tolerance in soybean seedlings based on Extreme Gradient Boosting (XGBoost) algorithm. Three hundred soybean germplasms were assessed for low-nitrogen tolerance under hydroponic conditions with normal (7.5 mM) and low (0.75 mM) nitrogen levels. Fourteen physiological traits related to low nitrogen tolerance, such as biomass, chlorophyll fluorescence, were measured. The XGBoost-based evaluation method was compared to a traditional fuzzy membership function comprehensive evaluation method for accuracy and applicability. Results showed that the XGBoost-based method ensured precision and reduced the number of determined physiological indicators compared to traditional methods. Furthermore, this approach reduces the number of traits required for precise identification, which reduces time and improves economic benefits. Consequently, the screening efficiency of soybean low nitrogen tolerance germplasms is improved, offering valuable insights for soybean breeding programs.

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来源期刊
Plant Growth Regulation
Plant Growth Regulation 生物-植物科学
CiteScore
6.90
自引率
9.50%
发文量
139
审稿时长
4.5 months
期刊介绍: Plant Growth Regulation is an international journal publishing original articles on all aspects of plant growth and development. We welcome manuscripts reporting question-based research using hormonal, physiological, environmental, genetical, biophysical, developmental or molecular approaches to the study of plant growth regulation. Emphasis is placed on papers presenting the results of original research. Occasional reviews on important topics will also be welcome. All contributions must be in English.
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