Department of Botany, Government General Degree College, Mohanpur 721436, India.
Department of Botany, Multanimal Modi College, Modinagar, Ghaziabad 201204, India.
Genes (Basel). 2023 Jul 21;14(7):1484. doi: 10.3390/genes14071484.
Rapidly rising population and climate changes are two critical issues that require immediate action to achieve sustainable development goals. The rising population is posing increased demand for food, thereby pushing for an acceleration in agricultural production. Furthermore, increased anthropogenic activities have resulted in environmental pollution such as water pollution and soil degradation as well as alterations in the composition and concentration of environmental gases. These changes are affecting not only biodiversity loss but also affecting the physio-biochemical processes of crop plants, resulting in a stress-induced decline in crop yield. To overcome such problems and ensure the supply of food material, consistent efforts are being made to develop strategies and techniques to increase crop yield and to enhance tolerance toward climate-induced stress. Plant breeding evolved after domestication and initially remained dependent on phenotype-based selection for crop improvement. But it has grown through cytological and biochemical methods, and the newer contemporary methods are based on DNA-marker-based strategies that help in the selection of agronomically useful traits. These are now supported by high-end molecular biology tools like PCR, high-throughput genotyping and phenotyping, data from crop morpho-physiology, statistical tools, bioinformatics, and machine learning. After establishing its worth in animal breeding, genomic selection (GS), an improved variant of marker-assisted selection (MAS), has made its way into crop-breeding programs as a powerful selection tool. To develop novel breeding programs as well as innovative marker-based models for genetic evaluation, GS makes use of molecular genetic markers. GS can amend complex traits like yield as well as shorten the breeding period, making it advantageous over pedigree breeding and marker-assisted selection (MAS). It reduces the time and resources that are required for plant breeding while allowing for an increased genetic gain of complex attributes. It has been taken to new heights by integrating innovative and advanced technologies such as speed breeding, machine learning, and environmental/weather data to further harness the GS potential, an approach known as integrated genomic selection (IGS). This review highlights the IGS strategies, procedures, integrated approaches, and associated emerging issues, with a special emphasis on cereal crops. In this domain, efforts have been taken to highlight the potential of this cutting-edge innovation to develop climate-smart crops that can endure abiotic stresses with the motive of keeping production and quality at par with the global food demand.
人口的快速增长和气候变化是两个需要立即采取行动以实现可持续发展目标的关键问题。人口的增长对粮食的需求不断增加,从而加速了农业生产。此外,人类活动的增加导致了环境污染,如水污染和土壤退化,以及环境气体的组成和浓度的变化。这些变化不仅影响生物多样性的丧失,还影响作物植物的生理生化过程,导致作物产量因胁迫而下降。为了克服这些问题并确保食物材料的供应,人们一直在努力制定战略和技术来提高作物产量并增强对气候引起的胁迫的耐受性。植物育种是在驯化之后发展起来的,最初仍然依赖于基于表型的选择来进行作物改良。但它已经通过细胞学和生物化学方法发展起来,而较新的当代方法则基于基于 DNA 标记的策略,这些策略有助于选择具有农业用途的性状。现在,这些方法得到了高端分子生物学工具的支持,如 PCR、高通量基因型和表型分析、作物形态生理学数据、统计工具、生物信息学和机器学习。基因组选择 (GS) 在动物育种中确立了其价值之后,作为一种强大的选择工具,已经进入了作物育种计划。为了开发新的育种计划和创新的基于标记的遗传评估模型,GS 利用分子遗传标记。GS 可以改进产量等复杂性状,并缩短育种周期,使其优于系谱育种和标记辅助选择 (MAS)。它减少了植物育种所需的时间和资源,同时增加了复杂属性的遗传增益。通过整合创新和先进技术,如快速育种、机器学习和环境/天气数据,进一步利用 GS 的潜力,这一方法被称为综合基因组选择 (IGS),使它达到了新的高度。本文重点介绍了 IGS 策略、程序、综合方法和相关的新兴问题,特别强调了谷类作物。在这一领域,人们已经努力挖掘这一前沿创新的潜力,开发能够耐受非生物胁迫的气候智能型作物,以保持生产和质量与全球粮食需求保持一致。