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1.
J Biosci ; 2015 Oct; 40(4): 671-682
Article in English | IMSEAR | ID: sea-181446

ABSTRACT

The PubMed literature database is a valuable source of information for scientific research. It is rich in biomedical literature with more than 24 million citations. Data-mining of voluminous literature is a challenging task. Although several text-mining algorithms have been developed in recent years with focus on data visualization, they have limitations such as speed, are rigid and are not available in the open source. We have developed an R package, pubmed.mineR, wherein we have combined the advantages of existing algorithms, overcome their limitations, and offer user flexibility and link with other packages in Bioconductor and the Comprehensive R Network (CRAN) in order to expand the user capabilities for executing multifaceted approaches. Three case studies are presented, namely, ‘Evolving role of diabetes educators’, ‘Cancer risk assessment’ and ‘Dynamic concepts on disease and comorbidity’ to illustrate the use of pubmed.mineR. The package generally runs fast with small elapsed times in regular workstations even on large corpus sizes and with compute intensive functions. The pubmed.mineR is available at http://cran.rproject. org/web/packages/pubmed.mineR.

2.
Indian J Exp Biol ; 2010 Oct; 48(10): 1020-1036
Article in English | IMSEAR | ID: sea-145060

ABSTRACT

One of the most exciting fields of current research is nanomedicine, but its definition and landscape remains elusive due to its continuous expansion in all directions and thus constantly eroding its boundaries and defying definitions. This lack of conceptual framework and confusing definitions was a hurdle for policy makers to enunciate credible goals and allocate resources for the advancement of the field. In this mini review, we have provided a broad framework of nanomedicine which defines its elusive landscape, and we hope this framework will accommodate its explosive growth in the future. Also, we have highlighted the role and scope of atomic force microscopy techniques in the advancement of nanomedicine. For improving health care of all that eventually would require successful intervention at fundamental biological processes, the importance of understanding the structure-function relationship of biomolecules cannot be over emphasized. In this context, AFM and its variants play a pivotal role in contributing towards the nanomedicine knowledge-base that is required for fruitful developments in nano-diagnostics and nano-therapeutics.

3.
J Biosci ; 2007 Aug; 32(5): 937-45
Article in English | IMSEAR | ID: sea-110634

ABSTRACT

Functional classification of proteins is central to comparative genomics. The need for algorithms tuned to enable integrative interpretation of analytical data is felt globally. The availability of a general,automated software with built-in flexibility will significantly aid this activity. We have prepared ARC (Automated Resource Classifier), which is an open source software meeting the user requirements of flexibility. The default classification scheme based on keyword match is agglomerative and directs entries into any of the 7 basic non-overlapping functional classes: Cell wall, Cell membrane and Transporters (C), Cell division (D), Information (I), Translocation (L), Metabolism (M), Stress(R), Signal and communication (S) and 2 ancillary classes: Others (O) and Hypothetical (H).The keyword library of ARC was built serially by first drawing keywords from Bacillus subtilis and Escherichia coli K12. In subsequent steps,this library was further enriched by collecting terms from archaeal representative Archaeoglobus fulgidus, Gene Ontology, and Gene Symbols. ARC is 94.04% successful on 6,75,663 annotated proteins from 348 prokaryotes. Three examples are provided to illuminate the current perspectives on mycobacterial physiology and costs of proteins in 333 prokaryotes. ARC is available at http://arc.igib.res.in.


Subject(s)
Algorithms , Archaeal Proteins/classification , Archaeoglobus fulgidus/chemistry , Bacillus subtilis/chemistry , Bacterial Proteins/classification , Computational Biology , Escherichia coli K12/chemistry , Escherichia coli Proteins/classification , Mycobacterium bovis/chemistry , Mycobacterium leprae/chemistry , Mycobacterium tuberculosis/chemistry , Protein Array Analysis
4.
J Biosci ; 2002 Feb; 27(1 Suppl 1): 15-25
Article in English | IMSEAR | ID: sea-110630

ABSTRACT

We have analysed the genomes of representatives of three kingdoms of life, namely, archaea, eubacteria and eukaryota using data mining tools based on compositional analyses of the protein sequences. The representatives chosen in this analysis were Methanococcus jannaschii, Haemophilus influenzae and Saccharomyces cerevisiae. We have identified the common and different features between the three genomes in the protein evolution patterns. M. jannaschii has been seen to have a greater number of proteins with more charged amino acids whereas S. cerevisiae has been observed to have a greater number of hydrophilic proteins. Despite the differences in intrinsic compositional characteristics between the proteins from the different genomes we have also identified certain common characteristics. We have carried out exploratory Principal Component Analysis of the multivariate data on the proteins of each organism in an effort to classify the proteins into clusters. Interestingly, we found that most of the proteins in each organism cluster closely together, but there are a few 'outliers'. We focus on the outliers for the functional investigations, which may aid in revealing any unique features of the biology of the respective organisms


Subject(s)
Archaeal Proteins/genetics , Bacterial Proteins/genetics , Computational Biology , Genome, Archaeal , Genome, Bacterial , Genome, Fungal , Genomics , Haemophilus influenzae/genetics , Humans , Methanococcus/genetics , Saccharomyces cerevisiae/genetics , Saccharomyces cerevisiae Proteins/genetics , Sequence Analysis, DNA/methods
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