Reprint

Omics Approaches for Crop Improvement

Edited by
July 2024
208 pages
  • ISBN978-3-7258-1494-7 (Hardback)
  • ISBN978-3-7258-1493-0 (PDF)
https://doi.org/10.3390/books978-3-7258-1493-0 (registering)

Print copies available soon

This book is a reprint of the Special Issue Omics Approaches for Crop Improvement that was published in

Biology & Life Sciences
Chemistry & Materials Science
Environmental & Earth Sciences
Summary

The growing human population and climate change are imposing unprecedented challenges on the global food supply. Crop improvement demands enhancing agronomical essential traits such as yield, resistance, and nutritional value by pivoting direct and indirect genetically assisted approaches to cope with these pressures. The development of last-generation high-throughput screening technologies, known as omics, promises to speed up plant trait improvement. Large-scale techniques such as genomics, transcriptomics, proteomics, metabolomics, and phenomics have already retrieved large volumes of data, as never before, which merged through bioinformatics and machine learning approaches; they are helping us to understand the mechanisms behind crop features. Omics datasets are not only generated from the tissues of a single genotype but also permeate macro-scale interactions to deepen our knowledge of crop behavior across the microbial and environmental continua. However, despite these massive technological and computational developments, cohesive efforts to combine contrasting omics studies within common pathways and cellular networks of crop systems are in their infancy. Therefore, this reprint envisions offering updated views on multidimensional large-scale omics-based approaches by compiling studies that explore the uses of the omics paradigm and their integration through trans-disciplinary bioinformatics as tools to improve the qualitative and quantitative traits in crop species.

Format
  • Hardback
License and Copyright
© 2024 by the authors; CC BY-NC-ND license
Keywords
background selection; foreground selection; gene pyramiding; marker-assisted breeding; submergence tolerance; yield component QTL; bioinformatics; comparative genomics; molecular markers; next-generation sequencing; omics; papaya; gibberellic acid-stimulated Arabidopsis (GASA); gene expression; phylogenetics; Phytophthora megakarya; abiotic stresses; biotic stresses; Theobroma cacao; malvaceae; magnesium transporter; comparative analysis; Malvaceae; Theobroma; Gossypium; Corchorus; expression analysis; gene structure; phylogenetic analysis; polygenic adaptation; abiotic stress tolerance; congruity backcrosses; germplasm characterization; plant genetic resources; multi-local analysis; AMMI model; ecophysiology; biofortification; Caribbean coast of northern South America; Botrytis fabae; faba bean; resistance; proteomic analysis; photosystem II repair cycle; composite mix; genetic structure; multi-line variety; single nucleotide polymorphism markers; varietal purity; irrigation; root-softening; antioxidant; ebb-and-flow; tandem mass tag; HPLC-MS; transcriptomics; co-expression network; modular analysis; drought stress; hub gene; Abp57; rice improvement; bioinformatics; peanut; phenomics; high-throughput phenotyping; ground penetrating radar; tomato spotted wilt virus; leaf spot; pod weight; n/a