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Scientists find new possibility of improving rice productivity

The scientists conducted their study by sequencing the genomes of four Indian genotypes (LGR, PB 1121, Sonasal & Bindli) that show contrasting phenotype in seed size/weight

ByIFP Bureau

Updated 27 May 2020, 10:36 am

(Representational Image-Facebook)
(Representational Image-Facebook)

Rice in Southeast Asia, where it is consumed more than in the other parts of the world, accounts for more than 75 per cent of the calorie intake. And, India has the largest area under rice crop cultivation as almost all states grow rice. However, the country suffers from the problem of low productivity and the problem is likely to worsen in the wake of COVID-19 outbreak. However, scientists in India have found a new possibility to increase rice produce in the country.

In order to meet the demand of the growing population of India and the world, production of rice needs to increase significantly. Traits like number of grains per plant and weight of the grain mainly determine the yield in rice. Thus, one of the main aims of the researchers and breeders has been to develop superior rice varieties with heavier grains, which can give higher yield and better nutrition.

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In a new study, researchers from the Department of Biotechnology’s National Institute of Plant Genome Research (DBT-NIPGR), ICAR-Indian Agricultural Research Institute (ICAR-IARI), ICAR-National Rice Research Institute (ICAR-NRRI), Cuttack and University of Delhi South Campus (UDSC), have identified a region in the genome of rice, which seems to have the potential for improving productivity, the Science and Technology Ministry stated in a release.

The scientists conducted their study by sequencing the genomes of four Indian genotypes (LGR, PB 1121, Sonasal & Bindli) that show contrasting phenotype in seed size/weight. After analyzing their genomic variations, they found that the Indian rice germplasms had much more genomic diversity than that estimated so far.

They then studied the DNA from 3,000 rice accessions from across the world along with the four Indian genotypes sequenced in the study. They identified one long (~6 Mb) genomic region, which had an unusually suppressed nucleotide diversity region across the centromere of chromosome 5. They named it as `low diversity region’ or LDR in short.

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An in-depth multidimensional analysis of this region revealed that it had played an important role during domestication of rice varieties as it was present in most of the cultivated rice genotypes and absent in wild varieties. Most of the modern cultivated rice varieties belong to japonica and indica genotypes. They had this region prominently. In contrast, it was less prominent in the aus group rice varieties, which are closer to the wild type. Further studies revealed that the LDR region contained one QTL (Quantitative Trait Locus) region that was significantly associated with grain size/weight trait.

The new study assumes importance as in addition to genome-wide exploration, it has highlighted an important and a long domestication-related genomic region, which was found to be evolutionarily crafted to carry multiple agronomic traits associations. “We believe that in future efforts, this LDR region could be utilized for improving rice production by targeting various traits including the seed size QTL identified here”, team leader, Jitendra Kumar Thakur of DBT-NIPGR said.

The study team included Swarup K. Parida, Angad Kumar, Anurag Daware, Arvind Kumar, Vinay Kumar and Subhasish Mondal of DBT-NIPGR, Akhilesh K. Tyagi of University of Delhi South Campus, Gopala Krishnan S and Ashok. K. Singh of ICAR-IARI, and Bhaskar Chandra Patra of ICAR-NRRI. They have submitted a report on their work to The Plant Journal. It has accepted it for publication, the ministry stated in a PIB release.

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scientistsnew discoveryfoodstudyrice

IFP Bureau

IFP Bureau

IMPHAL, Manipur

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