about
Understanding rice adaptation to varying agro-ecosystems: trait interactions and quantitative trait lociIdentification and mapping of stable QTL with main and epistasis effect on rice grain yield under upland drought stress.Action of multiple intra-QTL genes concerted around a co-localized transcription factor underpins a large effect QTL.Meta-analysis of grain yield QTL identified during agricultural drought in grasses showed consensusqDTY₁.₁, a major QTL for rice grain yield under reproductive-stage drought stress with a consistent effect in multiple elite genetic backgrounds.Comparative analysis of root transcriptome profiles of two pairs of drought-tolerant and susceptible rice near-isogenic lines under different drought stress.Breeding high-yielding drought-tolerant rice: genetic variations and conventional and molecular approachesGenetic variation, linkage mapping of QTL and correlation studies for yield, root, and agronomic traits for aerobic adaptationGenetic, physiological, and gene expression analyses reveal that multiple QTL enhance yield of rice mega-variety IR64 under droughtQTLs for tolerance of drought and breeding for tolerance of abiotic and biotic stress: an integrated approach.Variation in primary metabolites in parental and near-isogenic lines of the QTL qDTY 12.1 : altered roots and flag leaves but similar spikelets of rice under droughtTranscriptional profiling of the leaves of near-isogenic rice lines with contrasting drought tolerance at the reproductive stage in response to water deficitMarker assisted pyramiding of drought yield QTLs into a popular Malaysian rice cultivar, MR219.Comprehensive gene expression analysis of the NAC gene family under normal growth conditions, hormone treatment, and drought stress conditions in rice using near-isogenic lines (NILs) generated from crossing Aday Selection (drought tolerant) and IR6Linkages and Interactions Analysis of Major Effect Drought Grain Yield QTLs in Rice.Drought susceptibility of modern rice varieties: an effect of linkage of drought tolerance with undesirable traits.Large, sequence-dependent effects on DNA conformation by minor groove binding compounds.Genomics-based precision breeding approaches to improve drought tolerance in rice.Multiple major QTL lead to stable yield performance of rice cultivars across varying drought intensities.Fine mapping of QTLs for rice grain yield under drought reveals sub-QTLs conferring a response to variable drought severities.Physiological mechanisms contributing to the QTL-combination effects on improved performance of IR64 rice NILs under drought.qDTY12.1: a locus with a consistent effect on grain yield under drought in rice.Comparative transcriptome profiles of the WRKY gene family under control, hormone-treated, and drought conditions in near-isogenic rice lines reveal differential, tissue specific gene activation.Drought yield index to select high yielding rice lines under different drought stress severities.Traits and QTLs for development of dry direct-seeded rainfed rice varieties.Pyramiding of drought yield QTLs into a high quality Malaysian rice cultivar MRQ74 improves yield under reproductive stage drought.From QTL to variety-harnessing the benefits of QTLs for drought, flood and salt tolerance in mega rice varieties of India through a multi-institutional network.Identification and characterization of large-effect quantitative trait loci for grain yield under lowland drought stress in rice using bulk-segregant analysis.Marker-assisted selection strategy to pyramid two or more QTLs for quantitative trait-grain yield under drought.High-yielding, drought-tolerant, stable rice genotypes for the shallow rainfed lowland drought-prone ecosystemComparisons of energy balance and evapotranspiration between flooded and aerobic rice fields in the PhilippinesRice Breeding for High Grain Yield under Drought: A Strategic Solution to a Complex ProblemGrain yield and physiological traits of rice lines with the drought yield QTL qDTY12.1 showed different responses to drought and soil characteristics in upland environmentsTrait Combinations That Improve Rice Yield under Drought: Sahbhagi Dhan and New Drought-Tolerant Varieties in South AsiaHaplotype analysis of key genes governing grain yield and quality traits across 3K RG panel reveals scope for the development of tailor-made rice with enhanced genetic gainsMarker Assisted Breeding to Develop Multiple Stress Tolerant Varieties for Flood and Drought Prone AreasSuperior adaptation of aerobic rice under drought stress in Iran and validation test of linked SSR markers to major QTLs by MLM analysis across two yearsGenotyping-by-sequencing based QTL mapping for rice grain yield under reproductive stage drought stress toleranceGenotype × environment interactions for grain iron and zinc content in riceSuperior haplotypes for haplotype-based breeding for drought tolerance in pigeonpea (Cajanus cajan L.).
P50
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P50
description
hulumtues
@sq
onderzoeker
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researcher
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հետազոտող
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name
Arvind Kumar
@ast
Arvind Kumar
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Arvind Kumar
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Arvind Kumar
@nl
Arvind Kumar
@sl
অরবিন্দ কুমার
@bn
type
label
Arvind Kumar
@ast
Arvind Kumar
@en
Arvind Kumar
@es
Arvind Kumar
@nl
Arvind Kumar
@sl
অরবিন্দ কুমার
@bn
prefLabel
Arvind Kumar
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Arvind Kumar
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Arvind Kumar
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Arvind Kumar
@nl
Arvind Kumar
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অরবিন্দ কুমার
@bn
P1053
N-3181-2017
P106
P1153
56693233500
56848305600
P21
P31
P3829
P496
0000-0002-5488-9410