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Dive into the research topics where S. Sujatha Mohan is active.

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Featured researches published by S. Sujatha Mohan.


Nucleic Acids Research | 2006

Human Protein Reference Database—2009 update

T. S. Keshava Prasad; Renu Goel; Kumaran Kandasamy; Shivakumar Keerthikumar; Sameer Kumar; Suresh Mathivanan; Deepthi Telikicherla; Rajesh Raju; Beema Shafreen; Abhilash Venugopal; Lavanya Balakrishnan; Arivusudar Marimuthu; Sutopa Banerjee; Devi S. Somanathan; Aimy Sebastian; Sandhya Rani; Somak Ray; C. J. Harrys Kishore; Sashi Kanth; Mukhtar Ahmed; Manoj Kumar Kashyap; Riaz Mohmood; Y. L. Ramachandra; V. Krishna; B. Abdul Rahiman; S. Sujatha Mohan; Prathibha Ranganathan; Subhashri Ramabadran; Raghothama Chaerkady; Akhilesh Pandey

Human Protein Reference Database (HPRD—http://www.hprd.org/), initially described in 2003, is a database of curated proteomic information pertaining to human proteins. We have recently added a number of new features in HPRD. These include PhosphoMotif Finder, which allows users to find the presence of over 320 experimentally verified phosphorylation motifs in proteins of interest. Another new feature is a protein distributed annotation system—Human Proteinpedia (http://www.humanproteinpedia.org/)—through which laboratories can submit their data, which is mapped onto protein entries in HPRD. Over 75 laboratories involved in proteomics research have already participated in this effort by submitting data for over 15 000 human proteins. The submitted data includes mass spectrometry and protein microarray-derived data, among other data types. Finally, HPRD is also linked to a compendium of human signaling pathways developed by our group, NetPath (http://www.netpath.org/), which currently contains annotations for several cancer and immune signaling pathways. Since the last update, more than 5500 new protein sequences have been added, making HPRD a comprehensive resource for studying the human proteome.


Nucleic Acids Research | 2004

Human protein reference database as a discovery resource for proteomics

Suraj Peri; J. Daniel Navarro; Troels Z. Kristiansen; Ramars Amanchy; Vineeth Surendranath; Babylakshmi Muthusamy; Tejal K. Gandhi; K.N. Chandrika; Nandan Deshpande; Shubha Suresh; B.P. Rashmi; K. Shanker; N. Padma; Vidya Niranjan; H. C. Harsha; Naveen Talreja; B. M. Vrushabendra; M A Ramya; A.J. Yatish; Mary Joy; H.N. Shivashankar; M.P. Kavitha; Minal Menezes; Dipanwita Roy Choudhury; Neelanjana Ghosh; R. Saravana; Sreenath Chandran; S. Sujatha Mohan; Chandra Kiran Jonnalagadda; C K Prasad

The rapid pace at which genomic and proteomic data is being generated necessitates the development of tools and resources for managing data that allow integration of information from disparate sources. The Human Protein Reference Database (http://www.hprd.org) is a web-based resource based on open source technologies for protein information about several aspects of human proteins including protein-protein interactions, post-translational modifications, enzyme-substrate relationships and disease associations. This information was derived manually by a critical reading of the published literature by expert biologists and through bioinformatics analyses of the protein sequence. This database will assist in biomedical discoveries by serving as a resource of genomic and proteomic information and providing an integrated view of sequence, structure, function and protein networks in health and disease.


Nature Genetics | 2006

Analysis of the human protein interactome and comparison with yeast, worm and fly interaction datasets.

Tejal K. Gandhi; Jun Zhong; Suresh Mathivanan; L. Karthick; K.N. Chandrika; S. Sujatha Mohan; Salil Sharma; Stefan Pinkert; Shilpa Nagaraju; Balamurugan Periaswamy; Goparani Mishra; Kannabiran Nandakumar; Beiyi Shen; Nandan Deshpande; Rashmi Nayak; Malabika Sarker; Jef D. Boeke; Giovanni Parmigiani; Jörg Schultz; Joel S. Bader; Akhilesh Pandey

We present the first analysis of the human proteome with regard to interactions between proteins. We also compare the human interactome with the available interaction datasets from yeast (Saccharomyces cerevisiae), worm (Caenorhabditis elegans) and fly (Drosophila melanogaster). Of >70,000 binary interactions, only 42 were common to human, worm and fly, and only 16 were common to all four datasets. An additional 36 interactions were common to fly and worm but were not observed in humans, although a coimmunoprecipitation assay showed that 9 of the interactions do occur in humans. A re-examination of the connectivity of essential genes in yeast and humans indicated that the available data do not support the presumption that the number of interaction partners can accurately predict whether a gene is essential. Finally, we found that proteins encoded by genes mutated in inherited genetic disorders are likely to interact with proteins known to cause similar disorders, suggesting the existence of disease subnetworks. The human interaction map constructed from our analysis should facilitate an integrative systems biology approach to elucidating the cellular networks that contribute to health and disease states.


Genome Biology | 2010

NetPath: a public resource of curated signal transduction pathways.

Kumaran Kandasamy; S. Sujatha Mohan; Rajesh Raju; Shivakumar Keerthikumar; Ghantasala S. Sameer Kumar; Abhilash Venugopal; Deepthi Telikicherla; Daniel J. Navarro; Suresh Mathivanan; Christian Pecquet; Sashi Kanth Gollapudi; Sudhir Gopal Tattikota; Shyam Mohan; Hariprasad Padhukasahasram; Yashwanth Subbannayya; Renu Goel; Harrys K.C. Jacob; Jun Zhong; Raja Sekhar; Vishalakshi Nanjappa; Lavanya Balakrishnan; Roopashree Subbaiah; Yl Ramachandra; B. Abdul Rahiman; T. S. Keshava Prasad; Jian Xin Lin; Jon C. D. Houtman; Stephen Desiderio; Jean-Christophe Renauld; Stefan N. Constantinescu

We have developed NetPath as a resource of curated human signaling pathways. As an initial step, NetPath provides detailed maps of a number of immune signaling pathways, which include approximately 1,600 reactions annotated from the literature and more than 2,800 instances of transcriptionally regulated genes - all linked to over 5,500 published articles. We anticipate NetPath to become a consolidated resource for human signaling pathways that should enable systems biology approaches.


Clinical Proteomics | 2014

Differential proteomic analysis of synovial fluid from rheumatoid arthritis and osteoarthritis patients

Lavanya Balakrishnan; Mitali Bhattacharjee; Sartaj Ahmad; Raja Sekhar Nirujogi; Santosh Renuse; Yashwanth Subbannayya; Arivusudar Marimuthu; S. Srikanth; Rajesh Raju; Mukesh Dhillon; Navjyot Kaur; Ramesh Jois; Vivek Vasudev; Yl Ramachandra; Nandini A. Sahasrabuddhe; T. S. Keshava Prasad; S. Sujatha Mohan; Harsha Gowda; Subramanian Shankar; Akhilesh Pandey

BackgroundRheumatoid arthritis and osteoarthritis are two common musculoskeletal disorders that affect the joints. Despite high prevalence rates, etiological factors involved in these disorders remain largely unknown. Dissecting the molecular aspects of these disorders will significantly contribute to improving their diagnosis and clinical management. In order to identify proteins that are differentially expressed between these two conditions, a quantitative proteomic profiling of synovial fluid obtained from rheumatoid arthritis and osteoarthritis patients was carried out by using iTRAQ labeling followed by high resolution mass spectrometry analysis.ResultsWe have identified 575 proteins out of which 135 proteins were found to be differentially expressed by ≥3-fold in the synovial fluid of rheumatoid arthritis and osteoarthritis patients. Proteins not previously reported to be associated with rheumatoid arthritis including, coronin-1A (CORO1A), fibrinogen like-2 (FGL2), and macrophage capping protein (CAPG) were found to be upregulated in rheumatoid arthritis. Proteins such as CD5 molecule-like protein (CD5L), soluble scavenger receptor cysteine-rich domain-containing protein (SSC5D), and TTK protein kinase (TTK) were found to be upregulated in the synovial fluid of osteoarthritis patients. We confirmed the upregulation of CAPG in rheumatoid arthritis synovial fluid by multiple reaction monitoring assay as well as by Western blot. Pathway analysis of differentially expressed proteins revealed a significant enrichment of genes involved in glycolytic pathway in rheumatoid arthritis.ConclusionsWe report here the largest identification of proteins from the synovial fluid of rheumatoid arthritis and osteoarthritis patients using a quantitative proteomics approach. The novel proteins identified from our study needs to be explored further for their role in the disease pathogenesis of rheumatoid arthritis and osteoarthritis.Sartaj Ahmad and Raja Sekhar Nirujogi contributed equally to this article.


Clinical Proteomics | 2014

Proteomic analysis of human osteoarthritis synovial fluid

Lavanya Balakrishnan; Raja Sekhar Nirujogi; Sartaj Ahmad; Mitali Bhattacharjee; Srikanth S. Manda; Santosh Renuse; Dhanashree S. Kelkar; Yashwanth Subbannayya; Rajesh Raju; Renu Goel; Joji Kurian Thomas; Navjyot Kaur; Mukesh Dhillon; Shantal Gupta Tankala; Ramesh Jois; Vivek Vasdev; Yl Ramachandra; Nandini A. Sahasrabuddhe; T. S. Keshava Prasad; S. Sujatha Mohan; Harsha Gowda; Subramanian Shankar; Akhilesh Pandey

BackgroundOsteoarthritis is a chronic musculoskeletal disorder characterized mainly by progressive degradation of the hyaline cartilage. Patients with osteoarthritis often postpone seeking medical help, which results in the diagnosis being made at an advanced stage of cartilage destruction. Sustained efforts are needed to identify specific markers that might help in early diagnosis, monitoring disease progression and in improving therapeutic outcomes. We employed a multipronged proteomic approach, which included multiple fractionation strategies followed by high resolution mass spectrometry analysis to explore the proteome of synovial fluid obtained from osteoarthritis patients. In addition to the total proteome, we also enriched glycoproteins from synovial fluid using lectin affinity chromatography.ResultsWe identified 677 proteins from synovial fluid of patients with osteoarthritis of which 545 proteins have not been previously reported. These novel proteins included ADAM-like decysin 1 (ADAMDEC1), alanyl (membrane) aminopeptidase (ANPEP), CD84, fibulin 1 (FBLN1), matrix remodelling associated 5 (MXRA5), secreted phosphoprotein 2 (SPP2) and spondin 2 (SPON2). We identified 300 proteins using lectin affinity chromatography, including the glycoproteins afamin (AFM), attractin (ATRN), fibrillin 1 (FBN1), transferrin (TF), tissue inhibitor of metalloproteinase 1 (TIMP1) and vasorin (VSN). Gene ontology analysis confirmed that a majority of the identified proteins were extracellular and are mostly involved in cell communication and signaling. We also confirmed the expression of ANPEP, dickkopf WNT signaling pathway inhibitor 3 (DKK3) and osteoglycin (OGN) by multiple reaction monitoring (MRM) analysis of osteoarthritis synovial fluid samples.ConclusionsWe present an in-depth analysis of the synovial fluid proteome from patients with osteoarthritis. We believe that the catalog of proteins generated in this study will further enhance our knowledge regarding the pathophysiology of osteoarthritis and should assist in identifying better biomarkers for early diagnosis.


Bioinformatics | 2009

PathBuilder—open source software for annotating and developing pathway resources

Kumaran Kandasamy; Shivakumar Keerthikumar; Rajesh Raju; T. S. Keshava Prasad; Y. L. Ramachandra; S. Sujatha Mohan; Akhilesh Pandey

SUMMARY We have developed PathBuilder, an open-source web application to annotate biological information pertaining to signaling pathways and to create web-based pathway resources. PathBuilder enables annotation of molecular events including protein-protein interactions, enzyme-substrate relationships and protein translocation events either manually or through automated importing of data from other databases. Salient features of PathBuilder include automatic validation of data formats, built-in modules for visualization of pathways, automated import of data from other pathway resources, export of data in several standard data exchange formats and an application programming interface for retrieving existing pathway datasets. AVAILABILITY PathBuilder is freely available for download at http://pathbuilder.sourceforge.net/ under the terms of GNU lesser general public license (LGPL: http://www.gnu.org/copyleft/lesser.html). The software is platform independent and has been tested on Windows and Linux platforms. CONTACT [email protected] SUPPLEMENTARY INFORMATION Supplementary data are available at Bioinformatics online.


Nucleic Acids Research | 2009

RAPID: Resource of Asian Primary Immunodeficiency Diseases

Shivakumar Keerthikumar; Rajesh Raju; Kumaran Kandasamy; Atsushi Hijikata; Subhashri Ramabadran; Lavanya Balakrishnan; Mukhtar Ahmed; Sandhya Rani; Lakshmi Dhevi N. Selvan; Devi S. Somanathan; Somak Ray; Mitali Bhattacharjee; Sashikanth Gollapudi; Yl Ramachandra; Sahely Bhadra; Chiranjib Bhattacharyya; Kohsuke Imai; Shigeaki Nonoyama; Hirokazu Kanegane; Toshio Miyawaki; Akhilesh Pandey; Osamu Ohara; S. Sujatha Mohan

Availability of a freely accessible, dynamic and integrated database for primary immunodeficiency diseases (PID) is important both for researchers as well as clinicians. To build a PID informational platform and also as a part of action to initiate a network of PID research in Asia, we have constructed a web-based compendium of molecular alterations in PID, named Resource of Asian Primary Immunodeficiency Diseases (RAPID), which is available as a worldwide web resource at http://rapid.rcai.riken.jp/. It hosts information on sequence variations and expression at the mRNA and protein levels of all genes reported to be involved in PID patients. The main objective of this database is to provide detailed information pertaining to genes and proteins involved in primary immunodeficiency diseases along with other relevant information about protein–protein interactions, mouse studies and microarray gene-expression profiles in various organs and cells of the immune system. RAPID also hosts a tool, mutation viewer, to predict deleterious and novel mutations and also to obtain mutation-based 3D structures for PID genes. Thus, information contained in this database should help physicians and other biomedical investigators to further investigate the role of these molecules in PID.


Database | 2011

A comprehensive manually curated reaction map of RANKL/RANK-signaling pathway.

Rajesh Raju; Lavanya Balakrishnan; Vishalakshi Nanjappa; Mitali Bhattacharjee; Derese Getnet; Babylakshmi Muthusamy; Joji Kurian Thomas; Jyoti Sharma; B. Abdul Rahiman; H. C. Harsha; Subramanian Shankar; T. S. Keshava Prasad; S. Sujatha Mohan; Gary D. Bader; Mohan R. Wani; Akhilesh Pandey

Receptor activator of nuclear factor-kappa B ligand (RANKL) is a member of tumor necrosis factor (TNF) superfamily that plays a key role in the regulation of differentiation, activation and survival of osteoclasts and also in tumor cell migration and bone metastasis. Osteoclast activation induced by RANKL regulates hematopoietic stem cell mobilization as part of homeostasis and host defense mechanisms thereby linking regulation of hematopoiesis with bone remodeling. Binding of RANKL to its receptor, Receptor activator of nuclear factor-kappa B (RANK) activates molecules such as NF-kappa B, mitogen activated protein kinase (MAPK), nuclear factor of activated T cells (NFAT) and phosphatidyl 3-kinase (PI3K). Although the molecular and cellular roles of these molecules have been reported previously, a systematic cataloging of the molecular events induced by RANKL/RANK interaction has not been attempted. Here, we present a comprehensive reaction map of the RANKL/RANK-signaling pathway based on an extensive manual curation of the published literature. We hope that the curated RANKL/RANK-signaling pathway model would enable new biomedical discoveries, which can provide novel insights into disease processes and development of novel therapeutic interventions. Database URL: http://www.netpath.org/pathways?path_id=NetPath_21


Nucleic Acids Research | 2011

The RIKEN integrated database of mammals

Hiroshi Masuya; Yuko Makita; Norio Kobayashi; Koro Nishikata; Yuko Yoshida; Yoshiki Mochizuki; Koji Doi; Terue Takatsuki; Kazunori Waki; Nobuhiko Tanaka; Manabu Ishii; Akihiro Matsushima; Satoshi Takahashi; Atsushi Hijikata; Kouji Kozaki; Teiichi Furuichi; Hideya Kawaji; Shigeharu Wakana; Yukio Nakamura; Atsushi Yoshiki; Takehide Murata; Kaoru Fukami-Kobayashi; S. Sujatha Mohan; Osamu Ohara; Yoshihide Hayashizaki; Riichiro Mizoguchi; Yuichi Obata; Tetsuro Toyoda

The RIKEN integrated database of mammals (http://scinets.org/db/mammal) is the official undertaking to integrate its mammalian databases produced from multiple large-scale programs that have been promoted by the institute. The database integrates not only RIKEN’s original databases, such as FANTOM, the ENU mutagenesis program, the RIKEN Cerebellar Development Transcriptome Database and the Bioresource Database, but also imported data from public databases, such as Ensembl, MGI and biomedical ontologies. Our integrated database has been implemented on the infrastructure of publication medium for databases, termed SciNetS/SciNeS, or the Scientists’ Networking System, where the data and metadata are structured as a semantic web and are downloadable in various standardized formats. The top-level ontology-based implementation of mammal-related data directly integrates the representative knowledge and individual data records in existing databases to ensure advanced cross-database searches and reduced unevenness of the data management operations. Through the development of this database, we propose a novel methodology for the development of standardized comprehensive management of heterogeneous data sets in multiple databases to improve the sustainability, accessibility, utility and publicity of the data of biomedical information.

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Akhilesh Pandey

Johns Hopkins University School of Medicine

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H. C. Harsha

Johns Hopkins University School of Medicine

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