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Featured researches published by K. K. Chaturvedi.


Bioinformation | 2013

Design and development of portal for biological database in agriculture

Shashi Bhushan Lal; Pankaj Pandey; Punit K Rai; Anil Rai; Anu Sharma; K. K. Chaturvedi

The application of novel and modern techniques in genetic engineering and genomics has resulted in information explosion in genomics. Three major genome databases under International Nucleotide Sequence Database collaboration NCBI, DDBJ and EMBL have been providing a convenient platform for submission of sequences which they share among themselves. Many institutes in India under Indian Council of Agricultural Research have scientists working on biotechnology and bioinformatics research. The various studies conducted by them, generate massive data related to biological information of plants, animals, insects, microbes and fisheries. These scientists are dependent on NCBI, EMBL, DDBJ and other portals for their sequence submissions, analysis and other data mining tasks. Due to various limitations imposed on these sites and the poor connectivity problem prevents them to conduct their studies on these open domain databases. The valued information generated by them needs to be shared by the scientific communities to eliminate the duplication of efforts and expedite their knowledge extended towards new findings. A secured common submission portal system with user-friendly interfaces, integrated help and error checking facilities has been developed in such a way that the database at the backend consists of a union of the items available on the above mentioned databases. Standard database management concepts have been employed for their systematic storage management. Extensive hardware resources in the form of high performance computing facility are being installed for deployment of this portal. Availability http://cabindb.iasri.res.in:8080/sequence_portal/


Database | 2014

The Halophile Protein Database

Naveen Sharma; Mohammad Samir Farooqi; K. K. Chaturvedi; Shashi Bhushan Lal; Monendra Grover; Anil Rai; Pankaj Pandey

Halophilic archaea/bacteria adapt to different salt concentration, namely extreme, moderate and low. These type of adaptations may occur as a result of modification of protein structure and other changes in different cell organelles. Thus proteins may play an important role in the adaptation of halophilic archaea/bacteria to saline conditions. The Halophile protein database (HProtDB) is a systematic attempt to document the biochemical and biophysical properties of proteins from halophilic archaea/bacteria which may be involved in adaptation of these organisms to saline conditions. In this database, various physicochemical properties such as molecular weight, theoretical pI, amino acid composition, atomic composition, estimated half-life, instability index, aliphatic index and grand average of hydropathicity (Gravy) have been listed. These physicochemical properties play an important role in identifying the protein structure, bonding pattern and function of the specific proteins. This database is comprehensive, manually curated, non-redundant catalogue of proteins. The database currently contains 59 897 proteins properties extracted from 21 different strains of halophilic archaea/bacteria. The database can be accessed through link. Database URL: http://webapp.cabgrid.res.in/protein/


Biochemistry & Analytical Biochemistry | 2016

Genome-Wide Relative Analysis of Codon Usage Bias and Codon ContextPattern in the Bacteria Salinibacter Ruber, Chromohalobacter Salexigens andRhizobium Etli

Mohammad Samir Farooqi; Dwijesh Chandra Mishra; Niyati Rai; Dhananjaya P. Singh; Anil Rai; K. K. Chaturvedi; Ratna Prabha; Manjeet Kaur

Codon is the basic unit for biological message transmission during synthesis of proteins in an organism. Codon Usage Bias is preferential usage among synonymous codons, in an organisms. This preferential use of a synonymous codon was found not only among species but also occurs among genes within the same genome of a species. This variation of codon usage patterns are controlled by natural processes such as mutation, drift and pressure. In this study, we have used computational as well as statistical techniques for finding codon usage bias and codon context pattern of Salinibacter ruber (extreme halophilic), Chromohalobacter salexigens (moderate halophilic) and Rhizobium etli (nonhalophilic). In addition to this, compositional variation in translated amino acid frequency, effective number of codons and optimal codons were also studied. A plot of ENc versus GC3s suggests that both mutation bias and translational selection contribute to these differences of codon bias. However, mutation bias is the driving force of the synonymous codon usage patterns in halophilic bacteria (Salinibacter ruber and Chromohalobacter salexigens) and translational selection seems to affect codon usage pattern in non-halophilic bacteria (Rhizobium etli). Correspondence analysis of Relative Synonymous Codon Usage revealed different clusters of genes varying in numbers in the bacteria under study. Moreover, codon context pattern was also seen variable in these bacteria. These results clearly indicate the variation in the codon usage pattern in these bacterial genomes.


Plant Molecular Biology Reporter | 2018

Genome-Wide Analysis in Wild and Cultivated Oryza Species Reveals Abundance of NBS Genes in Progenitors of Cultivated Rice

Hukam C. Rawal; S. V. Amitha Mithra; Kirti Arora; Vishesh Kumar; Neha Goel; Dwijesh Chandra Mishra; K. K. Chaturvedi; Anil Rai; S. Vimala Devi; Tilak Raj Sharma; Amolkumar U. Solanke

NBS-encoding genes play a critical role in the plant defense system. Wild relatives of crop plants are rich reservoirs of plant defense genes. Here, we performed a stringent genome-wide identification of NBS-encoding genes in three cultivated and eight wild Oryza species, representing three different genomes (AA, BB, and FF) from four continents. A total of 2688 NBS-encoding genes were identified from 11 Oryza genomes. All the three progenitor species of cultivated rice, namely O. barthii, O. rufipogon, and O. nivara, were the richest reservoir of NBS-encoding genes (214, 313, and 307 respectively). Interestingly, the two Asian cultivated species showed a contrasting pattern in the number of NBS-encoding genes. While indica subspecies maintained nearly equal number of NBS genes as its progenitor (309 and 313), the japonica subspecies had retained only two third in the course of evolution (213 and 307). Other major sources for NBS-encoding genes could be (i) O. longistaminata since it had the highest proportion of NBS-encoding genes and (ii) O. glumaepatula as it clustered distinctly away from the rest of the AA genome species. The present study thus revealed that NBS-encoding genes can be exploited from the primary gene pool for disease resistance breeding in rice.


MicroRNA | 2017

Prediction of miRNA and Identification of their Relationship Network Related to Late Blight Disease of Potato

Mohammad Samir Farooqi; Animesh Kumar; Dwijesh Chandra Mishra; Sanjeev Kumar; Anil Rai; K. K. Chaturvedi; Suman Lal; Anu Sharma

BACKGROUND Late blight is a serious disease in potato caused by Phytophthora infestans. To date only few miRNA have been discovered which are related to late blight disease of potato during host pathogen interaction. Recent studies showed that miRNA, an important gene expression regulator, plays a very important role in host-pathogen interaction by silencing genes either by destructing or blocking of translation of mRNA. METHOD Homology search was performed between non-redundant mature miRNA sequences from miRBase database and Solanum tuberosum EST sequences from NCBI database. Screening of the potential miRNA was done after secondary structure prediction. The target related to late blight disease of respective miRNA was functionally annotated. To identify the relationship between the predicted and mature miRNAs, multiple sequence alignment and evolutionary relationships were established. RESULTS AND CONCLUSION 34 Candidate miRNA related to late blight disease of potato were identified which were associated to five target genes. These miRNAs were linked with Avr3a, INF1, INF2b genes which are elicitin like protein and triggers a hypersensitive response to host cell. Mapping of target sequences showed similarity with Solanum lycopersicum NRC1 gene of chr.1, which are reported as a casual protein required for Pto-mediated cell death and resistance in N. benthamiana. NRC1 are considered as a RX-CC_like domain-containing protein which shows similarity with coiledcoil domain of the potato virus X resistance protein (RX) in Solanum tuberosum. RX recognizes pathogen effector proteins and triggers a response that may be as severe as localized cell death thereby providing resistance against potato virus X.


international conference on bioinformatics | 2016

Genome analysis of Rhizobium species using codon usage bias tools

Niyati Rai; Dwijesh Chandra Mishra; Sanjeev Kumar; Anil Rai; K. K. Chaturvedi; Shashi Bhushan Lal; Anil Kumar; Mohammad Samir Farooqi; P. G. Majumdar; Sunil Archak

Bacteria from genus Rhizobium have ability to fix atmospheric nitrogen in symbiosis with leguminous plants resulting in formation of root nodules. They act as an alternate source of nitrogenous fertilizers. The study of codon usage patterns of Rhizobium species is gaining increasing attention over the times. In the present study three strains of Rhizobium namely Sinorhizobium meliloti 1021, Bradyrhizobium japonicum USDA110 and Rhizobium tropici CIAT899 whose complete genome sequence are available were retrieved from NCBI for the analysis of codon usage. The overall codon usage analysis showed that codons ending with G and C are preferred more in the rhizobium genome than codon ending with A and T. ENc plot revealed that compositional constraints along with translational selection are the major cause of codon usage bias. Correspondence analysis (COA) showed that the variation in codon usage is accounted mainly by the first two axes. From the Pearson correlation analysis significant correlation was identified among the first axis of COA and Codon adaptation index (CAI) and other factors of codon usage bias. 17 optimal codons were identified that were shared among these three strains.


Computers and Electronics in Agriculture | 2008

Original papers: Design and development of data mart for animal resources

Anil Rai; Vipin Dubey; K. K. Chaturvedi; P.K. Malhotra


Journal of Plant Biochemistry and Biotechnology | 2016

Identification, characterization, validation and cross-species amplification of genic-SSRs in Indian Mustard (Brassica juncea)

B Singh; Dwijesh Chandra Mishra; Sushma Yadav; Supriya Ambawat; Era Vaidya; Kishor U Tribhuvan; Arun Kumar; Sujith Kumar; Sanjeev Kumar; K. K. Chaturvedi; Reema Rani; Prashant Yadav; Anil Rai; P.K. Rai; Vijay V. Singh; Dhiraj Singh


Algorithms for Molecular Biology | 2016

An efficient algorithm for protein structure comparison using elastic shape analysis

Sanjay Srivastava; Shashi Bhushan Lal; Dwijesh Chandra Mishra; U. B. Angadi; K. K. Chaturvedi; Shesh N. Rai; Anil Rai


Archive | 2017

State-of-the-Art Information Retrieval Tools for Biological Resources

Shashi Bhushan Lal; Anu Sharma; K. K. Chaturvedi; Mohammad Samir Farooqi; Sanjeev Kumar; Dwijesh Chandra Mishra; Mohit Jha

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Anil Rai

Indian Agricultural Statistics Research Institute

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Dwijesh Chandra Mishra

Indian Agricultural Statistics Research Institute

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Mohammad Samir Farooqi

Indian Agricultural Statistics Research Institute

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Shashi Bhushan Lal

Indian Agricultural Statistics Research Institute

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Sanjeev Kumar

Indian Agricultural Statistics Research Institute

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Anu Sharma

Indian Agricultural Statistics Research Institute

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Dhananjaya P. Singh

Indian Council of Agricultural Research

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Naveen Sharma

Indian Agricultural Statistics Research Institute

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Niyati Rai

Indian Agricultural Statistics Research Institute

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Pankaj Pandey

Indian Agricultural Statistics Research Institute

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