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纳米硅和纳米硒对盐胁迫条件下水稻根系特征、生长、离子选择性、产量及产量构成因素的影响

Influence of Nano Silicon and Nano Selenium on Root Characters, Growth, Ion Selectivity, Yield, and Yield Components of Rice ( L.) under Salinity Conditions.

作者信息

Badawy Shimaa A, Zayed Bassiouni A, Bassiouni Sherif M A, Mahdi Ayman H A, Majrashi Ali, Ali Esmat F, Seleiman Mahmoud F

机构信息

Agronomy Department, Faculty of Agriculture, Kafrelshiekh University, Kafrelsheikh 33516, Egypt.

Rice Research and Training Center RRTC, Agriculture Research Center, Field Crops Research Institute, Sakha 33717, Egypt.

出版信息

Plants (Basel). 2021 Aug 11;10(8):1657. doi: 10.3390/plants10081657.

Abstract

Rice production under salinity stress is a critical challenge facing many countries, particularly those in arid and semi-arid regions. This challenge could be handled by applying novel approaches to overcome yield limiting factors and improve resource use efficiency. The usage of nanoparticles (NPs) could be a beneficial approach to managing the growing problem of soil salinity. The aim of our study was to investigate the advantageous effects of soaking and foliar application of silicon (Si) and selenium (Se), (NPs-Si at 12.5 mg L and NPs-Se at 6.25 mg L) on root characteristics, moropho-physiological traits, and yields of two rice varieties (i.e., Giza 177 as a salt sensitive and Giza 178 as a salt tolerant) grown in saline soil compared to untreated plants (control treatment). Results showed that soaking NPs-Se resulted in the highest value of root thickness for Giza 178 (0.90 mm, 0.95 mm) and root volume (153.30 cm, 154.30 cm), while Giza 177 recorded 0.83 mm, 0.81 mm for root thickness and 143.30 cm, 141.30 cm for root volume in the 2018 and 2019 seasons, respectively. Soaking NPs-Se, NPs-Si and foliar application of NPs-Se at BT resulted in the highest relative water content and dry matter, while foliar application of NPs-Si at BT gave the highest leaf area index of rice plants compared to the other treatments. Giza 178 (i.e., salt tolerant variety) significantly surpassed Giza 177 (i.e., salt sensitive variety) in the main yield components such as panicle number and filled grains/ panicle, while Giza 177 significantly exceeded Giza 178 in the panicle weight, 1000-grain weight, and unfilled grains number/ panicle. Soaking NPs-Se and foliar application of NPs-Si at BT resulted in the highest grain yield of 5.41 and 5.34 t ha during 2018 and 5.00 and 4.91 t ha during 2019, respectively. The salt sensitive variety (Giza 177) had the highest Na leaf content and Na/K ratio as well as the lowest K+ leaf content during both seasons. Applying nano nutrients such as NPs-Si and NPs-Se improved the yield components of the salt sensitive variety (Giza 177) by enhancing its ion selectivity. Both NPs-Si and NPs-Se had almost the same mode of action to mitigate the harmful salinity and enhance plant growth, and subsequently improved the grain yield. In summary, the application of NPs-Si and NPs-Se is recommended as a result of their positive influence on rice growth and yield as well as minimizing the negative effects of salt stress.

摘要

盐胁迫下的水稻生产是许多国家面临的一项严峻挑战,尤其是那些位于干旱和半干旱地区的国家。可以通过采用新方法来克服产量限制因素并提高资源利用效率,从而应对这一挑战。使用纳米颗粒(NPs)可能是解决日益严重的土壤盐渍化问题的有益方法。我们研究的目的是调查硅(Si)和硒(Se)(12.5毫克/升的纳米硅和6.25毫克/升的纳米硒)浸种和叶面喷施对两种水稻品种(即盐敏感型的吉萨177和耐盐型的吉萨178)在盐渍土壤中生长的根系特征、形态生理特性和产量的有利影响,并与未处理植株(对照处理)进行比较。结果表明,浸种纳米硒使吉萨178在2018年和2019年生长季的根粗值最高(分别为0.90毫米、0.95毫米)和根体积最大(分别为153.30立方厘米、154.30立方厘米),而吉萨177在这两个生长季的根粗分别为0.83毫米、0.81毫米,根体积分别为143.30立方厘米、141.30立方厘米。浸种纳米硒、纳米硅以及在孕穗期叶面喷施纳米硒使相对含水量和干物质含量最高,而在孕穗期叶面喷施纳米硅使水稻植株的叶面积指数相比其他处理最高。吉萨178(即耐盐品种)在穗数和每穗实粒数等主要产量构成因素上显著超过吉萨177(即盐敏感品种),而吉萨177在穗重、千粒重和每穗空粒数上显著超过吉萨178。浸种纳米硒和在孕穗期叶面喷施纳米硅在2018年分别使谷物产量最高达到5.41吨/公顷和5.34吨/公顷,在2019年分别为5.00吨/公顷和4.91吨/公顷。在两个生长季中,盐敏感品种(吉萨177)的叶片钠含量、钠/钾比最高,而钾离子叶片含量最低。施用纳米营养元素如纳米硅和纳米硒通过增强其离子选择性提高了盐敏感品种(吉萨177)的产量构成因素。纳米硅和纳米硒在减轻有害盐渍化和促进植物生长方面的作用方式几乎相同,进而提高了谷物产量。总之,由于纳米硅和纳米硒对水稻生长和产量有积极影响,并能将盐胁迫的负面影响降至最低,因此建议使用它们。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ade3/8401992/c712b65fe9cd/plants-10-01657-g001.jpg

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