40 results on '"Salman Sadullah Usmani"'
Search Results
2. Molecular insights on Eltrombopag: potential mitogen stimulants, angiogenesis, and therapeutic radioprotectant through TPO-R activation
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Rajasekaran Subbarayan, Dhasarathdev Srinivasan, Salman Sadullah Usmani, Dinesh Murugan Girija, Shoeb Ikhlas, Nityanand Srivastav, Ranjith Balakrishnan, Rupendra Shrestha, and Ankush Chauhan
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Angiogenesis ,Eltrombopag ,homology modeling ,mesenchymal stem cells ,mitogens ,molecular dynamic simulations ,Diseases of the blood and blood-forming organs ,RC633-647.5 - Abstract
The purpose of this study is to investigate the molecular interactions and potential therapeutic uses of Eltrombopag (EPAG), a small molecule that activates the cMPL receptor. EPAG has been found to be effective in increasing platelet levels and alleviating thrombocytopenia. We utilized computational techniques to predict and confirm the complex formed by the ligand (EPAG) and the Thrombopoietin receptor (TPO-R) cMPL, elucidating the role of RAS, JAK-2, STAT-3, and other essential elements for downstream signaling. Molecular dynamics (MD) simulations were employed to evaluate the stability of the ligand across specific proteins, showing favorable characteristics. For the first time, we examined the presence of TPO-R in human umbilical cord mesenchymal stem cells (hUCMSC) and human gingival mesenchymal stem cells (hGMSC) proliferation. Furthermore, treatment with EPAG demonstrated angiogenesis and vasculature formation of endothelial lineage derived from both MSCs. It also indicated the activation of critical factors such as RUNX-1, GFI-1b, VEGF-A, MYB, GOF-1, and FLI-1. Additional experiments confirmed that EPAG could be an ideal molecule for protecting against UVB radiation damage, as gene expression (JAK-2, ERK-2, MCL-1, NFkB, and STAT-3) and protein CD90/cMPL analysis showed TPO-R activation in both hUCMSC and hGMSC. Overall, EPAG exhibits significant potential in treating radiation damage and mitigating the side effects of radiotherapy, warranting further clinical exploration.
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- 2024
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3. Hypoxia: syndicating triple negative breast cancer against various therapeutic regimens
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Nityanand Srivastava, Salman Sadullah Usmani, Rajasekaran Subbarayan, Rashmi Saini, and Pranav Kumar Pandey
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Hypoxia ,HIF-1 ,TNBC ,immune escape ,DNA damage response ,chemotherapy ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Abstract
Triple-negative breast cancer (TNBC) is one of the deadliest subtypes of breast cancer (BC) for its high aggressiveness, heterogeneity, and hypoxic nature. Based on biological and clinical observations the TNBC related mortality is very high worldwide. Emerging studies have clearly demonstrated that hypoxia regulates the critical metabolic, developmental, and survival pathways in TNBC, which include glycolysis and angiogenesis. Alterations to these pathways accelerate the cancer stem cells (CSCs) enrichment and immune escape, which further lead to tumor invasion, migration, and metastasis. Beside this, hypoxia also manipulates the epigenetic plasticity and DNA damage response (DDR) to syndicate TNBC survival and its progression. Hypoxia fundamentally creates the low oxygen condition responsible for the alteration in Hypoxia-Inducible Factor-1alpha (HIF-1α) signaling within the tumor microenvironment, allowing tumors to survive and making them resistant to various therapies. Therefore, there is an urgent need for society to establish target-based therapies that overcome the resistance and limitations of the current treatment plan for TNBC. In this review article, we have thoroughly discussed the plausible significance of HIF-1α as a target in various therapeutic regimens such as chemotherapy, radiotherapy, immunotherapy, anti-angiogenic therapy, adjuvant therapy photodynamic therapy, adoptive cell therapy, combination therapies, antibody drug conjugates and cancer vaccines. Further, we also reviewed here the intrinsic mechanism and existing issues in targeting HIF-1α while improvising the current therapeutic strategies. This review highlights and discusses the future perspectives and the major alternatives to overcome TNBC resistance by targeting hypoxia-induced signaling.
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- 2023
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4. HumCFS: a database of fragile sites in human chromosomes
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Rajesh Kumar, Gandharva Nagpal, Vinod Kumar, Salman Sadullah Usmani, Piyush Agrawal, and Gajendra P. S. Raghava
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Chromosomal fragile site ,Genomic instability ,Database ,Chemical inducers ,Carcinogenesis ,miRNA ,Biotechnology ,TP248.13-248.65 ,Genetics ,QH426-470 - Abstract
Abstract Background Fragile sites are the chromosomal regions that are susceptible to breakage, and their frequency varies among the human population. Based on the frequency of fragile site induction, they are categorized as common and rare fragile sites. Common fragile sites are sensitive to replication stress and often rearranged in cancer. Rare fragile sites are the archetypal trinucleotide repeats. Fragile sites are known to be involved in chromosomal rearrangements in tumors. Human miRNA genes are also present at fragile sites. A better understanding of genes and miRNAs lying in the fragile site regions and their association with disease progression is required. Result HumCFS is a manually curated database of human chromosomal fragile sites. HumCFS provides useful information on fragile sites such as coordinates on the chromosome, cytoband, their chemical inducers and frequency of fragile site (rare or common), genes and miRNAs lying in fragile sites. Protein coding genes in the fragile sites were identified by mapping the coordinates of fragile sites with human genome Ensembl (GRCh38/hg38). Genes present in fragile sites were further mapped to DisGenNET database, to understand their possible link with human diseases. Human miRNAs from miRBase was also mapped on fragile site coordinates. In brief, HumCFS provides useful information about 125 human chromosomal fragile sites and their association with 4921 human protein-coding genes and 917 human miRNA’s. Conclusion User-friendly web-interface of HumCFS and hyper-linking with other resources will help researchers to search for genes, miRNAs efficiently and to intersect the relationship among them. For easy data retrieval and analysis, we have integrated standard web-based tools, such as JBrowse, BLAST etc. Also, the user can download the data in various file formats such as text files, gff3 files and Bed-format files which can be used on UCSC browser. Database URL: http://webs.iiitd.edu.in/raghava/humcfs/
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- 2019
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5. Potential Challenges for Coronavirus (SARS-CoV-2) Vaccines Under Trial
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Salman Sadullah Usmani and Gajendra P. S. Raghava
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coronavirus ,COVID-19 ,SARS-CoV-2 ,vaccine candidates ,immunoinformatic ,Immunologic diseases. Allergy ,RC581-607 - Published
- 2020
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6. CancerPDF: A repository of cancer-associated peptidome found in human biofluids
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Sherry Bhalla, Ruchi Verma, Harpreet Kaur, Rajesh Kumar, Salman Sadullah Usmani, Suresh Sharma, and Gajendra P. S. Raghava
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Medicine ,Science - Abstract
Abstract CancerPDF (Cancer Peptidome Database of bioFluids) is a comprehensive database of endogenous peptides detected in the human biofluids. The peptidome patterns reflect the synthesis, processing and degradation of proteins in the tissue environment and therefore can act as a gold mine to probe the peptide-based cancer biomarkers. Although an extensive data on cancer peptidome has been generated in the recent years, lack of a comprehensive resource restrains the facility to query the growing community knowledge. We have developed the cancer peptidome resource named CancerPDF, to collect and compile all the endogenous peptides isolated from human biofluids in various cancer profiling studies. CancerPDF has 14,367 entries with 9,692 unique peptide sequences corresponding to 2,230 unique precursor proteins from 56 high-throughput studies for ~27 cancer conditions. We have provided an interactive interface to query the endogenous peptides along with the primary information such as m/z, precursor protein, the type of cancer and its regulation status in cancer. To add-on, many web-based tools have been incorporated, which comprise of search, browse and similarity identification modules. We consider that the CancerPDF will be an invaluable resource to unwind the potential of peptidome-based cancer biomarkers. The CancerPDF is available at the web address http://crdd.osdd.net/raghava/cancerpdf/ .
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- 2017
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7. A Web Resource for Designing Subunit Vaccine Against Major Pathogenic Species of Bacteria
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Gandharva Nagpal, Salman Sadullah Usmani, and Gajendra P. S. Raghava
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reverse vaccinology ,vaccine designing ,immunotherapeutic ,epitopes ,antigen ,virulence factor ,Immunologic diseases. Allergy ,RC581-607 - Abstract
Evolution has led to the expansion of survival strategies in pathogens including bacteria and emergence of drug resistant strains proved to be a major global threat. Vaccination is a promising strategy to protect human population. Reverse vaccinology is a more robust vaccine development approach especially with the availability of large-scale sequencing data and rapidly dropping cost of the techniques for acquiring such data from various organisms. The present study implements an immunoinformatic approach for screening the possible antigenic proteins among various pathogenic bacteria to systemically arrive at epitope-based vaccine candidates against 14 pathogenic bacteria. Thousand four hundred and fifty nine virulence factors and Five hundred and forty six products of essential genes were appraised as target proteins to predict potential epitopes with potential to stimulate different arms of the immune system. To address the self-tolerance, self-epitopes were identified by mapping on 1000 human proteome and were removed. Our analysis revealed that 21proteins from 5 bacterial species were found as virulent as well as essential to their survival, proved to be most suitable vaccine target against these species. In addition to the prediction of MHC-II binders, B cell and T cell epitopes as well as adjuvants individually from proteins of all 14 bacterial species, a stringent criteria lead us to identify 252 unique epitopes, which are predicted to be T-cell epitopes, B-cell epitopes, MHC II binders and Vaccine Adjuvants. In order to provide service to scientific community, we developed a web server VacTarBac for designing of vaccines against above species of bacteria. This platform integrates a number of tools that includes visualization tools to present antigenicity/epitopes density on an antigenic sequence. These tools will help users to identify most promiscuous vaccine candidates in a pathogenic antigen. This server VacTarBac is available from URL (http://webs.iiitd.edu.in/raghava/vactarbac/).
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- 2018
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8. Prediction of Antitubercular Peptides From Sequence Information Using Ensemble Classifier and Hybrid Features
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Salman Sadullah Usmani, Sherry Bhalla, and Gajendra P. S. Raghava
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tuberculosis ,antitubercular peptides ,machine learning ,antimycobacterial therapy ,Mycobacterium ,ensemble classifier ,Therapeutics. Pharmacology ,RM1-950 - Abstract
Tuberculosis is one of the leading cause of death worldwide, particularly due to evolution of drug resistant strains. Antitubercular peptides may provide an alternate approach to combat antibiotic tolerance. Sequence analysis reveals that certain residues (e.g., Lysine, Arginine, Leucine, Tryptophan) are more prevalent in antitubercular peptides. This study describes the models developed for predicting antitubercular peptides by using sequence features of the peptides. We have developed support vector machine based models using different sequence features like amino acid composition, binary profile of terminus residues, dipeptide composition. Our ensemble classifiers that combines models based on amino acid composition and N5C5 binary pattern, achieves highest Acc of 73.20% with 0.80 AUROC on our main dataset. Similarly, the ensemble classifier achieved maximum Acc 75.62% with 0.83 AUROC on secondary dataset. Beside this, hybrid model achieves Acc of 75.87 and 78.54% with 0.83 and 0.86 AUROC on main and secondary dataset, respectively. In order to facilitate scientific community in designing of antitubercular peptides, we implement above models in a user friendly webserver (http://webs.iiitd.edu.in/raghava/antitbpred/).
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- 2018
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9. Prediction of Cell-Penetrating Potential of Modified Peptides Containing Natural and Chemically Modified Residues
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Vinod Kumar, Piyush Agrawal, Rajesh Kumar, Sherry Bhalla, Salman Sadullah Usmani, Grish C. Varshney, and Gajendra P. S. Raghava
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modified cell-penetrating peptides ,machine learning ,Random Forest ,SVM ,in silico method ,chemical descriptors ,Microbiology ,QR1-502 - Abstract
Designing drug delivery vehicles using cell-penetrating peptides is a hot area of research in the field of medicine. In the past, number of in silico methods have been developed for predicting cell-penetrating property of peptides containing natural residues. In this study, first time attempt has been made to predict cell-penetrating property of peptides containing natural and modified residues. The dataset used to develop prediction models, include structure and sequence of 732 chemically modified cell-penetrating peptides and an equal number of non-cell penetrating peptides. We analyzed the structure of both class of peptides and observed that positive charge groups, atoms, and residues are preferred in cell-penetrating peptides. In this study, models were developed to predict cell-penetrating peptides from its tertiary structure using a wide range of descriptors (2D, 3D descriptors, and fingerprints). Random Forest model developed by using PaDEL descriptors (combination of 2D, 3D, and fingerprints) achieved maximum accuracy of 95.10%, MCC of 0.90 and AUROC of 0.99 on the main dataset. The performance of model was also evaluated on validation/independent dataset which achieved AUROC of 0.98. In order to assist the scientific community, we have developed a web server “CellPPDMod” for predicting the cell-penetrating property of modified peptides (http://webs.iiitd.edu.in/raghava/cellppdmod/).
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- 2018
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10. THPdb: Database of FDA-approved peptide and protein therapeutics.
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Salman Sadullah Usmani, Gursimran Bedi, Jesse S Samuel, Sandeep Singh, Sourav Kalra, Pawan Kumar, Anjuman Arora Ahuja, Meenu Sharma, Ankur Gautam, and Gajendra P S Raghava
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Medicine ,Science - Abstract
THPdb (http://crdd.osdd.net/raghava/thpdb/) is a manually curated repository of Food and Drug Administration (FDA) approved therapeutic peptides and proteins. The information in THPdb has been compiled from 985 research publications, 70 patents and other resources like DrugBank. The current version of the database holds a total of 852 entries, providing comprehensive information on 239 US-FDA approved therapeutic peptides and proteins and their 380 drug variants. The information on each peptide and protein includes their sequences, chemical properties, composition, disease area, mode of activity, physical appearance, category or pharmacological class, pharmacodynamics, route of administration, toxicity, target of activity, etc. In addition, we have annotated the structure of most of the protein and peptides. A number of user-friendly tools have been integrated to facilitate easy browsing and data analysis. To assist scientific community, a web interface and mobile App have also been developed.
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- 2017
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11. Pfeature: A Tool for Computing Wide Range of Protein Features and Building Prediction Models.
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Akshara Pande, Sumeet Patiyal, Anjali Lathwal, Chakit Arora, Dilraj Kaur, Anjali Dhall, Gaurav Mishra, Harpreet Kaur, Neelam Sharma, Shipra Jain, Salman Sadullah Usmani, Piyush Agrawal, Rajesh Kumar, Vinod Kumar 0014, and Gajendra P. S. Raghava
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- 2023
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12. Computer-aided prediction and design of IL-6 inducing peptides: IL-6 plays a crucial role in COVID-19.
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Anjali Dhall, Sumeet Patiyal, Neelam Sharma, Salman Sadullah Usmani, and Gajendra P. S. Raghava
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- 2021
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13. Novel in silico tools for designing peptide-based subunit vaccines and immunotherapeutics.
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Sandeep Kumar Dhanda, Salman Sadullah Usmani, Piyush Agrawal, Gandharva Nagpal, Ankur Gautam, and Gajendra P. S. Raghava
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- 2017
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14. SATPdb: a database of structurally annotated therapeutic peptides.
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Sandeep Singh, Kumardeep Chaudhary, Sandeep Kumar Dhanda, Sherry Bhalla, Salman Sadullah Usmani, Ankur Gautam, Abhishek Tuknait, Piyush Agrawal, Deepika Mathur, and Gajendra P. S. Raghava
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- 2016
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15. CPPsite 2.0: a repository of experimentally validated cell-penetrating peptides.
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Piyush Agrawal, Sherry Bhalla, Salman Sadullah Usmani, Sandeep Singh, Kumardeep Chaudhary, Gajendra P. S. Raghava, and Ankur Gautam
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- 2016
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16. A Web-Based Method for the Identification of IL6-Based Immunotoxicity in Vaccine Candidates
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Anjali Dhall, Sumeet Patiyal, Neelam Sharma, Salman Sadullah Usmani, and Gajendra P. S. Raghava
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- 2023
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17. Pfeature: A Tool for Computing Wide Range of Protein Features and Building Prediction Models
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Akshara Pande, Sumeet Patiyal, Anjali Lathwal, Chakit Arora, Dilraj Kaur, Anjali Dhall, Gaurav Mishra, Harpreet Kaur, Neelam Sharma, Shipra Jain, Salman Sadullah Usmani, Piyush Agrawal, Rajesh Kumar, Vinod Kumar, and Gajendra P.S. Raghava
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Computational Mathematics ,Computational Theory and Mathematics ,Modeling and Simulation ,Genetics ,Molecular Biology - Published
- 2022
18. ImmunoSPdb: an archive of immunosuppressive peptides.
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Salman Sadullah Usmani, Piyush Agrawal, Manika Sehgal, Pradeep Kumar Patel, and Gajendra P. S. Raghava
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- 2019
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19. PRRDB 2.0: a comprehensive database of pattern-recognition receptors and their ligands.
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Dilraj Kaur, Sumeet Patiyal, Neelam Sharma, Salman Sadullah Usmani, and Gajendra P. S. Raghava
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- 2019
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20. AntiTbPdb: a knowledgebase of anti-tubercular peptides.
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Salman Sadullah Usmani, Rajesh Kumar, Vinod Kumar 0014, Sandeep Singh, and Gajendra P. S. Raghava
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- 2018
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21. Prediction of antibiotic resistant strains of bacteria from their beta-lactamases protein
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Sumeet Patiyal, Neelam Sharma, Salman Sadullah Usmani, Anjali Dhall, Lubna Maryam, and Gajendra P. S. Raghava
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chemistry.chemical_classification ,Lysis ,biology ,medicine.drug_class ,Antibiotics ,Ceftazidime ,Computational biology ,biology.organism_classification ,Amino acid ,Antibiotic resistance ,chemistry ,medicine ,Beta (finance) ,Peptide sequence ,Bacteria ,medicine.drug - Abstract
Number of beta-lactamase variants have ability to deactivate ceftazidime antibiotic, which is the most commonly used antibiotic for treating infection by Gram-negative bacteria. In this study an attempt has been made to develop a method that can predict ceftazidime resistant strains of bacteria from amino acid sequence of beta-lactamases. We obtained beta-lactamases proteins from the β-lactamase database, corresponding to 87 ceftazidime-sensitive and 112 ceftazidime-resistant bacterial strains. All models developed in this study were trained, tested, and evaluated on a dataset of 199 beta-lactamases proteins. We generate 9149 features for beta-lactamases using Pfeature and select relevant features using different algorithms in scikit-learn package. A wide range of machine learning techniques (like KNN, DT, RF, GNB, LR, SVC, XGB) has been used to develop prediction models. Our random forest-based model achieved maximum performance with AUROC of 0.80 on training dataset and 0.79 on the validation dataset. The study also revealed that ceftazidime-resistant beta-lactamases have amino acids with non-polar side chains in abundance. In contrast, ceftazidime-sensitive beta-lactamases have amino acids with polar side chains and charged entities in abundance. Finally, we developed a webserver “ABCRpred”, for the scientific community working in the era of antibiotic resistance to predict the antibiotic resistance/susceptibility of beta-lactamase protein sequences. The server is freely available at (http://webs.iiitd.edu.in/raghava/abcrpred/).Key PointsCeftazidime is commonly used to treat infection caused by Gram-negative bacteria.Beta-lactamase is responsible for lysing ceftazidime, make it resistant to bacteria.Comparison of resistant and sensitive variants of beta-lactamase.Classification of sensitive and resistant strain of bacteria based on beta-lactamase.Prediction models have been developed using different machine learning techniques.
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- 2021
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22. Computer-aided prediction and design of IL-6 inducing peptides: IL-6 plays a crucial role in COVID-19
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Neelam Sharma, Salman Sadullah Usmani, Gajendra P. S. Raghava, Anjali Dhall, and Sumeet Patiyal
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Interleukin 6 (IL-6) ,AcademicSubjects/SCI01060 ,Coronavirus disease 2019 (COVID-19) ,Computer science ,Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) ,Datasets as Topic ,Computational biology ,Epitope ,Machine Learning ,03 medical and health sciences ,0302 clinical medicine ,Immune system ,Humans ,Computer Simulation ,Databases, Protein ,Interleukin 6 ,Molecular Biology ,030304 developmental biology ,0303 health sciences ,biology ,Interleukin-6 ,SARS-CoV-2 ,COVID-19 ,Random forest ,computer-aided prediction ,pro-inflammatory cytokine ,030220 oncology & carcinogenesis ,biology.protein ,Computer-aided ,Problem Solving Protocol ,Immune reaction ,Peptides ,Information Systems - Abstract
Interleukin 6 (IL-6) is a pro-inflammatory cytokine that stimulates acute phase responses, hematopoiesis and specific immune reactions. Recently, it was found that the IL-6 plays a vital role in the progression of COVID-19, which is responsible for the high mortality rate. In order to facilitate the scientific community to fight against COVID-19, we have developed a method for predicting IL-6 inducing peptides/epitopes. The models were trained and tested on experimentally validated 365 IL-6 inducing and 2991 non-inducing peptides extracted from the immune epitope database. Initially, 9149 features of each peptide were computed using Pfeature, which were reduced to 186 features using the SVC-L1 technique. These features were ranked based on their classification ability, and the top 10 features were used for developing prediction models. A wide range of machine learning techniques has been deployed to develop models. Random Forest-based model achieves a maximum AUROC of 0.84 and 0.83 on training and independent validation dataset, respectively. We have also identified IL-6 inducing peptides in different proteins of SARS-CoV-2, using our best models to design vaccine against COVID-19. A web server named as IL-6Pred and a standalone package has been developed for predicting, designing and screening of IL-6 inducing peptides (https://webs.iiitd.edu.in/raghava/il6pred/).
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- 2020
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23. Potential Challenges for Coronavirus (SARS-CoV-2) Vaccines Under Trial
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Gajendra P. S. Raghava and Salman Sadullah Usmani
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lcsh:Immunologic diseases. Allergy ,Opinion ,2019-20 coronavirus outbreak ,COVID-19 Vaccines ,Coronavirus disease 2019 (COVID-19) ,Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) ,Pneumonia, Viral ,Immunology ,coronavirus ,medicine.disease_cause ,vaccine candidates ,Betacoronavirus ,Animals ,Humans ,Medicine ,Immunology and Allergy ,Pandemics ,Coronavirus ,Clinical Trials as Topic ,immunoinformatic ,SARS-CoV-2 ,business.industry ,Viral Vaccine ,COVID-19 ,Viral Vaccines ,Virology ,Severe acute respiratory syndrome coronavirus ,Coronavirus Infections ,lcsh:RC581-607 ,business - Published
- 2020
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24. Computational resources in the management of antibiotic resistance: Speeding up drug discovery
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Lubna Maryam, Salman Sadullah Usmani, and Gajendra P. S. Raghava
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0301 basic medicine ,Pharmacology ,Databases, Factual ,medicine.drug_class ,Drug discovery ,Antibiotics ,Computational Biology ,Computational biology ,Biology ,biology.organism_classification ,Genome ,Bacterial strain ,Anti-Bacterial Agents ,03 medical and health sciences ,030104 developmental biology ,0302 clinical medicine ,Antibiotic resistance ,030220 oncology & carcinogenesis ,Drug Discovery ,Drug Resistance, Bacterial ,medicine ,Animals ,Humans ,Gene ,Bacteria - Abstract
This article reviews more than 50 computational resources developed in past two decades for forecasting of antibiotic resistance (AR)-associated mutations, genes and genomes. More than 30 databases have been developed for AR-associated information, but only a fraction of them are updated regularly. A large number of methods have been developed to find AR genes, mutations and genomes, with most of them based on similarity-search tools such as BLAST and HMMER. In addition, methods have been developed to predict the inhibition potential of antibiotics against a bacterial strain from the whole-genome data of bacteria. This review also discuss computational resources that can be used to manage the treatment of AR-associated diseases.
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- 2020
25. CancerPDF: A repository of cancer-associated peptidome found in human biofluids
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Rajesh Kumar, Sherry Bhalla, Ruchi Verma, Suresh Kumar Sharma, Salman Sadullah Usmani, Harpreet Kaur, and Gajendra P. S. Raghava
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0301 basic medicine ,Internet ,Multidisciplinary ,Proteome ,Science ,Biology ,Bioinformatics ,Article ,Body Fluids ,Search Engine ,03 medical and health sciences ,030104 developmental biology ,Neoplasms ,Extensive data ,Humans ,Medicine ,Cancer biomarkers ,Amino Acid Sequence ,Databases, Protein ,Peptides - Abstract
CancerPDF (Cancer Peptidome Database of bioFluids) is a comprehensive database of endogenous peptides detected in the human biofluids. The peptidome patterns reflect the synthesis, processing and degradation of proteins in the tissue environment and therefore can act as a gold mine to probe the peptide-based cancer biomarkers. Although an extensive data on cancer peptidome has been generated in the recent years, lack of a comprehensive resource restrains the facility to query the growing community knowledge. We have developed the cancer peptidome resource named CancerPDF, to collect and compile all the endogenous peptides isolated from human biofluids in various cancer profiling studies. CancerPDF has 14,367 entries with 9,692 unique peptide sequences corresponding to 2,230 unique precursor proteins from 56 high-throughput studies for ~27 cancer conditions. We have provided an interactive interface to query the endogenous peptides along with the primary information such as m/z, precursor protein, the type of cancer and its regulation status in cancer. To add-on, many web-based tools have been incorporated, which comprise of search, browse and similarity identification modules. We consider that the CancerPDF will be an invaluable resource to unwind the potential of peptidome-based cancer biomarkers. The CancerPDF is available at the web address http://crdd.osdd.net/raghava/cancerpdf/.
- Published
- 2017
26. GPSRdocker: A Docker-based Resource for Genomics, Proteomics and Systems biology
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Rajesh Kumar, Akshara Pande, Sumeet Patiyal, Sherry Bhalla, Dilraj Kaur, Salman Sadullah Usmani, Neelam Sharma, Piyush Agrawal, Shipra Jain, Gajendra P. S. Raghava, Anjali Dhall, Vinod Kumar, and Harpreet Kaur
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business.industry ,Computer science ,Cloud computing ,Python (programming language) ,computer.software_genre ,Software ,Scripting language ,Container (abstract data type) ,The Internet ,Perl ,Web service ,business ,Software engineering ,computer ,computer.programming_language - Abstract
BackgroundIn past number of web-based resources has been developed in the field of Bioinformatics. These resources are heavily used by scientific community to provide solution for challenges faced by experimental researchers particularly in the field of biomedical sciences. There are number of challenges in utilizing full potential of these services that includes internet speed, limits on computing power, and security of data. In order to enhance utilities of these web-based assets, we developed a docker-based container that integrates large number resources available in literature.ResultsThis paper describes GPSRdocker a docker-based container developed for providing wide-range of computational tools in the field of bioinformatics particularly in genomics, proteomics and system biology. Majority of tools integrated in GPSRdocker are based on web services developed at Raghava’s group in last two decades. Broadly, these tools can be categorized in three categories; i) general scripts, ii) supporting software and iii) major standalone software. In order to facilitate students or developers working in the field of bioinformatics, we developed general scripts in Perl and Python. These general-purpose scripts serve as building block for any bioinformatics tools like computing features/descriptors of a protein. Supporting software packages includes SCIKIT, WEKA, SVMlight, and PSI-BLAST; these software packages allow one to develop/implement bioinformatics software. Major Standalone software is core of this container which allows predicting function/class of biomolecules. These tools can be classified broadly in following categories; protein annotation, epitope-based vaccines, prediction of interaction and drug discovery.ConclusionA docker-based container has been developed which can be easily run on any operating system as well as it can be directly ported on cloud. Scripts can be run to build pipelines for addressing problems at system level like prediction of vaccine candidate for a pathogen. GPSRdocker including manual is available free for academic use from https://webs.iiitd.edu.in/gpsrdocker.
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- 2019
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27. Computing wide range of protein/peptide features from their sequence and structure
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Rajesh Kumar, Akshara Pande, Chakit Arora, Gajendra P. S. Raghava, Piyush Agrawal, Neelam Sharma, Anjali Dhall, Gaurav Mishra, Salman Sadullah Usmani, Anjali Lathwal, Kumar, Sumeet Patiyal, Shipra Jain, Harpreet Kaur, and Dilraj Kaur
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chemistry.chemical_classification ,Dipeptide ,Computer science ,A protein ,Peptide ,Complete protein ,Computational biology ,Tripeptide ,Ligand (biochemistry) ,Amino acid ,chemistry.chemical_compound ,chemistry ,Posttranslational modification ,DNA - Abstract
MotivationIn last three decades, a wide range of protein descriptors/features have been discovered to annotate a protein with high precision. A wide range of features have been integrated in numerous software packages (e.g., PROFEAT, PyBioMed, iFeature, protr, Rcpi, propy) to predict function of a protein. These features are not suitable to predict function of a protein at residue level such as prediction of ligand binding residues, DNA interacting residues, post translational modification etc.ResultsIn order to facilitate scientific community, we have developed a software package that computes more than 50,000 features, important for predicting function of a protein and its residues. It has five major modules for computing; composition-based features, binary profiles, evolutionary information, structure-based features and patterns. The composition-based module allows user to compute; i) simple compositions like amino acid, dipeptide, tripeptide; ii) Properties based compositions; iii) Repeats and distribution of amino acids; iv) Shannon entropy to measure the low complexity regions; iv) Miscellaneous compositions like pseudo amino acid, autocorrelation, conjoint triad, quasi-sequence order. Binary profile of amino acid sequences provides complete information including order of residues or type of residues; specifically, suitable to predict function of a protein at residue level. Pfeature allows one to compute evolutionary information-based features in form of PSSM profile generated using PSIBLAST. Structure based module allows computing structure-based features, specifically suitable to annotate chemically modified peptides/proteins. Pfeature also allows generating overlapping patterns and feature from whole protein or its parts (e.g., N-terminal, C-terminal). In summary, Pfeature comprises of almost all features used till now, for predicting function of a protein/peptide including its residues.AvailabilityIt is available in form of a web server, named as Pfeature (https://webs.iiitd.edu.in/raghava/pfeature/), as well as python library and standalone package (https://github.com/raghavagps/Pfeature) suitable for Windows, Ubuntu, Fedora, MacOS and Centos based operating system.
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- 2019
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28. ImmunoSPdb: an archive of immunosuppressive peptides
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Gajendra P. S. Raghava, Salman Sadullah Usmani, Manika Sehgal, Pradeep Kumar Patel, and Piyush Agrawal
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Models, Molecular ,chemistry.chemical_classification ,0303 health sciences ,medicine.medical_treatment ,030302 biochemistry & molecular biology ,Peptide ,Immunosuppression ,Computational biology ,General Biochemistry, Genetics and Molecular Biology ,Protein tertiary structure ,Amino acid ,03 medical and health sciences ,Database Tool ,Immune system ,chemistry ,Mechanism of action ,medicine ,Research article ,medicine.symptom ,Databases, Protein ,Peptides ,General Agricultural and Biological Sciences ,030304 developmental biology ,Information Systems - Abstract
Immunosuppression proved as a captivating therapy in several autoimmune disorders, asthma as well as in organ transplantation. Immunosuppressive peptides are specific for reducing efficacy of immune system with wide range of therapeutic implementations. `ImmunoSPdb’ is a comprehensive, manually curated database of around 500 experimentally verified immunosuppressive peptides compiled from 79 research article and 32 patents. The current version comprises of 553 entries providing extensive information including peptide name, sequence, chirality, chemical modification, origin, nature of peptide, its target as well as mechanism of action, amino acid frequency and composition, etc. Data analysis revealed that most of the immunosuppressive peptides are linear (91%), are shorter in length i.e. up to 20 amino acids (62%) and have L form of amino acids (81%). About 30% peptide are either chemically modified or have end terminal modification. Most of the peptides either are derived from proteins (41%) or naturally (27%) exist. Blockage of potassium ion channel (24%) is one a major target for immunosuppressive peptides. In addition, we have annotated tertiary structure by using PEPstrMOD and I-TASSER. Many user-friendly, web-based tools have been integrated to facilitate searching, browsing and analyzing the data. We have developed a user-friendly responsive website to assist a wide range of users.
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- 2019
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29. PRRDB 2.0: a comprehensive database of pattern-recognition receptors and their ligands
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Salman Sadullah Usmani, Sumeet Patiyal, Gajendra P. S. Raghava, Neelam Sharma, and Dilraj Kaur
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Computer science ,Nearest neighbor search ,Data management ,Ligands ,computer.software_genre ,General Biochemistry, Genetics and Molecular Biology ,03 medical and health sciences ,0302 clinical medicine ,Animals ,Humans ,Databases, Protein ,Data Management ,030304 developmental biology ,0303 health sciences ,Database ,business.industry ,Pattern recognition receptor ,computer.file_format ,Protein Data Bank ,Database Update ,Receptors, Pattern Recognition ,Pattern recognition (psychology) ,General Agricultural and Biological Sciences ,business ,computer ,Algorithms ,Software ,030217 neurology & neurosurgery ,PubChem ,Information Systems - Abstract
PRRDB 2.0 is an updated version of PRRDB that maintains comprehensive information about pattern-recognition receptors (PRRs) and their ligands. The current version of the database has ~2700 entries, which are nearly five times of the previous version. It contains extensive information about 467 unique PRRs and 827 pathogens-associated molecular patterns (PAMPs), manually extracted from ~600 research articles. It possesses information about PRRs and PAMPs that has been extracted manually from research articles and public databases. Each entry provides comprehensive details about PRRs and PAMPs that includes their name, sequence, origin, source, type, etc. We have provided internal and external links to various databases/resources (like Swiss-Prot, PubChem) to obtain further information about PRRs and their ligands. This database also provides links to ~4500 experimentally determined structures in the protein data bank of various PRRs and their complexes. In addition, 110 PRRs with unknown structures have also been predicted, which are important in order to understand the structure–function relationship between receptors and their ligands. Numerous web-based tools have been integrated into PRRDB 2.0 to facilitate users to perform different tasks like (i) extensive searching of the database; (ii) browsing or categorization of data based on receptors, ligands, source, etc. and (iii) similarity search using BLAST and Smith–Waterman algorithm.
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- 2019
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30. Community Assessment of the Predictability of Cancer Protein and Phosphoprotein Levels from Genomics and Transcriptomics
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Mi Yang, Francesca Petralia, Zhi Li, Hongyang Li, Weiping Ma, Xiaoyu Song, Sunkyu Kim, Heewon Lee, Han Yu, Bora Lee, Seohui Bae, Eunji Heo, Jan Kaczmarczyk, Piotr Stępniak, Michał Warchoł, Thomas Yu, Anna P. Calinawan, Paul C. Boutros, Samuel H. Payne, Boris Reva, Emily Boja, Henry Rodriguez, Gustavo Stolovitzky, Yuanfang Guan, Jaewoo Kang, Pei Wang, David Fenyö, Julio Saez-Rodriguez, Tunde Aderinwale, Ebrahim Afyounian, Piyush Agrawal, Mehreen Ali, Alicia Amadoz, Francisco Azuaje, John Bachman, Sherry Bhalla, José Carbonell-Caballero, Priyanka Chakraborty, Kumardeep Chaudhary, Yonghwa Choi, Yoonjung Choi, Cankut Çubuk, Sandeep Kumar Dhanda, Joaquín Dopazo, Laura L. Elo, Ábel Fóthi, Olivier Gevaert, Kirsi Granberg, Russell Greiner, Marta R. Hidalgo, Vivek Jayaswal, Hwisang Jeon, Minji Jeon, Sunil V. Kalmady, Yasuhiro Kambara, Keunsoo Kang, Tony Kaoma, Harpreet Kaur, Hilal Kazan, Devishi Kesar, Juha Kesseli, Daehan Kim, Keonwoo Kim, Sang-Yoon Kim, Sajal Kumar, Yunpeng Liu, Roland Luethy, Swapnil Mahajan, Mehrad Mahmoudian, Arnaud Muller, Petr V. Nazarov, Hien Nguyen, Matti Nykter, Shujiro Okuda, Sungsoo Park, Gajendra Pal Singh Raghava, Jagath C. Rajapakse, Tommi Rantapero, Hobin Ryu, Francisco Salavert, Sohrab Saraei, Ruby Sharma, Ari Siitonen, Artem Sokolov, Kartik Subramanian, Veronika Suni, Tomi Suomi, Léon-Charles Tranchevent, Salman Sadullah Usmani, Tommi Välikangas, Roberto Vega, and Hua Zhong
- Subjects
Male ,Proteomics ,Histology ,Genomics ,Computational biology ,Biology ,Pathology and Forensic Medicine ,Machine Learning ,Transcriptome ,03 medical and health sciences ,0302 clinical medicine ,Neoplasms ,medicine ,Humans ,Gene ,030304 developmental biology ,0303 health sciences ,Proteins ,Cancer ,Cell Biology ,Phosphoproteins ,Proteogenomics ,medicine.disease ,Phosphoprotein ,Crowdsourcing ,Phosphorylation ,Female ,030217 neurology & neurosurgery - Abstract
Cancer is driven by genomic alterations, but the processes causing this disease are largely performed by proteins. However, proteins are harder and more expensive to measure than genes and transcripts. To catalyze developments of methods to infer protein levels from other omics measurements, we leveraged crowdsourcing via the NCI-CPTAC DREAM proteogenomic challenge. We asked for methods to predict protein and phosphorylation levels from genomic and transcriptomic data in cancer patients. The best performance was achieved by an ensemble of models, including as predictors transcript level of the corresponding genes, interaction between genes, conservation across tumor types, and phosphosite proximity for phosphorylation prediction. Proteins from metabolic pathways and complexes were the best and worst predicted, respectively. The performance of even the best-performing model was modest, suggesting that many proteins are strongly regulated through translational control and degradation. Our results set a reference for the limitations of computational inference in proteogenomics. A record of this paper's transparent peer review process is included in the Supplemental Information.
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- 2020
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31. Prediction of Antitubercular Peptides From Sequence Information Using Ensemble Classifier and Hybrid Features
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Sherry Bhalla, Gajendra P. S. Raghava, and Salman Sadullah Usmani
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0301 basic medicine ,Pharmacology ,Computer science ,Sequence analysis ,antimycobacterial therapy ,lcsh:RM1-950 ,Computational biology ,Binary pattern ,ensemble classifier ,Mycobacterium ,drug discovery ,Support vector machine ,03 medical and health sciences ,Dipeptide composition ,lcsh:Therapeutics. Pharmacology ,030104 developmental biology ,machine learning ,Amino acid composition ,tuberculosis ,antitubercular peptides ,Pharmacology (medical) ,Hybrid model ,Classifier (UML) ,Original Research - Abstract
Tuberculosis is one of the leading cause of death worldwide, particularly due to evolution of drug resistant strains. Antitubercular peptides may provide an alternate approach to combat antibiotic tolerance. Sequence analysis reveals that certain residues (e.g., Lysine, Arginine, Leucine, Tryptophan) are more prevalent in antitubercular peptides. This study describes the models developed for predicting antitubercular peptides by using sequence features of the peptides. We have developed support vector machine based models using different sequence features like amino acid composition, binary profile of terminus residues, dipeptide composition. Our ensemble classifiers that combines models based on amino acid composition and N5C5 binary pattern, achieves highest Acc of 73.20% with 0.80 AUROC on our main dataset. Similarly, the ensemble classifier achieved maximum Acc 75.62% with 0.83 AUROC on secondary dataset. Beside this, hybrid model achieves Acc of 75.87 and 78.54% with 0.83 and 0.86 AUROC on main and secondary dataset, respectively. In order to facilitate scientific community in designing of antitubercular peptides, we implement above models in a user friendly webserver (http://webs.iiitd.edu.in/raghava/antitbpred/).
- Published
- 2018
32. In Silico Tools and Databases for Designing Peptide-Based Vaccine and Drugs
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Vinod Kumar, Rajesh Kumar, Salman Sadullah Usmani, Gajendra P. S. Raghava, and Sherry Bhalla
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0301 basic medicine ,Drug ,Database ,Computer science ,medicine.medical_treatment ,In silico ,media_common.quotation_subject ,Immunotherapy ,Acquired immune system ,computer.software_genre ,Epitope ,Vaccination ,03 medical and health sciences ,030104 developmental biology ,Small peptide ,medicine ,computer ,media_common - Abstract
The prolonged conventional approaches of drug screening and vaccine designing prerequisite patience, vigorous effort, outrageous cost as well as additional manpower. Screening and experimentally validating thousands of molecules for a specific therapeutic property never proved to be an easy task. Similarly, traditional way of vaccination includes administration of either whole or attenuated pathogen, which raises toxicity and safety issues. Emergence of sequencing and recombinant DNA technology led to the epitope-based advanced vaccination concept, i.e., small peptides (epitope) can stimulate specific immune response. Advent of bioinformatics proved to be an adjunct in vaccine and drug designing. Genomic study of pathogens aid to identify and analyze the protective epitope. A number of in silico tools have been developed to design immunotherapy as well as peptide-based drugs in the last two decades. These tools proved to be a catalyst in drug and vaccine designing. This review solicits therapeutic peptide databases as well as in silico tools developed for designing peptide-based vaccine and drugs.
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- 2018
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33. CPPsite 2.0: a repository of experimentally validated cell-penetrating peptides
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Salman Sadullah Usmani, Ankur Gautam, Piyush Agrawal, Sherry Bhalla, Sandeep Singh, Kumardeep Chaudhary, and Gajendra P. S. Raghava
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0301 basic medicine ,Drug Carriers ,Protein Conformation ,Cell-Penetrating Peptides ,Computational biology ,Biology ,Bioinformatics ,Protein tertiary structure ,Structure-Activity Relationship ,03 medical and health sciences ,030104 developmental biology ,Genetics ,Database Issue ,Data content ,Databases, Protein - Abstract
CPPsite 2.0 (http://crdd.osdd.net/raghava/cppsite/) is an updated version of manually curated database (CPPsite) of cell-penetrating peptides (CPPs). The current version holds around 1850 peptide entries, which is nearly two times than the entries in the previous version. The updated data were curated from research papers and patents published in last three years. It was observed that most of the CPPs discovered/ tested, in last three years, have diverse chemical modifications (e.g. non-natural residues, linkers, lipid moieties, etc.). We have compiled this information on chemical modifications systematically in the updated version of the database. In order to understand the structure-function relationship of these peptides, we predicted tertiary structure of CPPs, possessing both modified and natural residues, using state-of-the-art techniques. CPPsite 2.0 also maintains information about model systems (in vitro/in vivo) used for CPP evaluation and different type of cargoes (e.g. nucleic acid, protein, nanoparticles, etc.) delivered by these peptides. In order to assist a wide range of users, we developed a user-friendly responsive website, with various tools, suitable for smartphone, tablet and desktop users. In conclusion, CPPsite 2.0 provides significant improvements over the previous version in terms of data content.
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- 2015
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34. Inhibitory effect of copper nanoparticles on rosin modified surfactant induced aggregation of lysozyme
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Mohamed H. Mahmoud, Salman Sadullah Usmani, Mohd Ishtikhar, Gamal Badr, Rizwan Hasan Khan, and Nuzhat Gull
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Circular dichroism ,Inorganic chemistry ,Rosin ,Metal Nanoparticles ,Protein aggregation ,Biochemistry ,Protein Aggregates ,Surface-Active Agents ,chemistry.chemical_compound ,Pulmonary surfactant ,Structural Biology ,medicine ,Animals ,Molecular Biology ,Chemistry ,Circular Dichroism ,Congo Red ,General Medicine ,Congo red ,Sulfonate ,Microscopy, Electron, Scanning ,Muramidase ,Micro-encapsulation ,Lysozyme ,Copper ,Resins, Plant ,medicine.drug ,Nuclear chemistry - Abstract
Protein aggregation is associated with many serious diseases including Parkinson's and Alzheimer's. Protein aggregation is a primary problem related with the health of industrial workers who work with the surfactants, metal ions, and cosolvents. We have synthesized rosin-based surfactants, i.e., quaternary amines of rosin diethylaminoethyl esters (QRMAE), which is an ester of rosin acid with polyethylene glycol monomethyl ether. Here, we report the thermal aggregation of lysozyme induced by QRMAE at 65 °C and pH 7.4 for a given time period in which amorphous aggregates are formed and confirm that copper-nanoparticles have the ability to inhibit QRMAE-induced aggregation compared with zinc and silver-nanoparticles. Aggregation experiments was evaluated using several spectroscopic methods and dye binding assay, such as turbidity, Rayleigh light scattering, 1-anilino-8-naphthalene sulfonate (ANS), Thioflavin T (Th T), congo red (CR) and circular dichroism (CD), that was further supported by scanning electron microscopy (SEM) and SEM with EDX. The therapeutic use of nanoparticles and the fact that rosin possesses excellent film-forming properties, and that its derivatives have pharmaceuticals application such as micro encapsulation, coating and film forming, it's matrix materials are used for sustained and controlled release tablets, renders importance and application to the present study.
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- 2015
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35. HumCFS: A database of fragile sites in human chromosomes
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Rajesh Kumar, Gajendra P. S. Raghava, Salman Sadullah Usmani, Gandharva Nagpal, Vinod Kumar, and Piyush Agrawal
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Genomic instability ,0106 biological sciences ,Genome instability ,lcsh:QH426-470 ,Carcinogenesis ,lcsh:Biotechnology ,Population ,Genome browser ,Chemical inducers ,Biology ,computer.software_genre ,01 natural sciences ,Genome ,MiRBase ,Database ,03 medical and health sciences ,lcsh:TP248.13-248.65 ,Databases, Genetic ,Genetics ,Chromosomes, Human ,Humans ,Ensembl ,Genetic Predisposition to Disease ,education ,Gene ,miRNA ,030304 developmental biology ,0303 health sciences ,education.field_of_study ,Genome, Human ,Chromosome Fragile Sites ,Chromosomal fragile site ,Nucleic acid sequence ,Replication stress ,Chromosome ,DNA elements ,lcsh:Genetics ,Human genome ,DNA microarray ,computer ,010606 plant biology & botany ,Biotechnology - Abstract
Background Fragile sites are the chromosomal regions that are susceptible to breakage, and their frequency varies among the human population. Based on the frequency of fragile site induction, they are categorized as common and rare fragile sites. Common fragile sites are sensitive to replication stress and often rearranged in cancer. Rare fragile sites are the archetypal trinucleotide repeats. Fragile sites are known to be involved in chromosomal rearrangements in tumors. Human miRNA genes are also present at fragile sites. A better understanding of genes and miRNAs lying in the fragile site regions and their association with disease progression is required. Result HumCFS is a manually curated database of human chromosomal fragile sites. HumCFS provides useful information on fragile sites such as coordinates on the chromosome, cytoband, their chemical inducers and frequency of fragile site (rare or common), genes and miRNAs lying in fragile sites. Protein coding genes in the fragile sites were identified by mapping the coordinates of fragile sites with human genome Ensembl (GRCh38/hg38). Genes present in fragile sites were further mapped to DisGenNET database, to understand their possible link with human diseases. Human miRNAs from miRBase was also mapped on fragile site coordinates. In brief, HumCFS provides useful information about 125 human chromosomal fragile sites and their association with 4921 human protein-coding genes and 917 human miRNA’s. Conclusion User-friendly web-interface of HumCFS and hyper-linking with other resources will help researchers to search for genes, miRNAs efficiently and to intersect the relationship among them. For easy data retrieval and analysis, we have integrated standard web-based tools, such as JBrowse, BLAST etc. Also, the user can download the data in various file formats such as text files, gff3 files and Bed-format files which can be used on UCSC browser. Database URL: http://webs.iiitd.edu.in/raghava/humcfs/ Electronic supplementary material The online version of this article (10.1186/s12864-018-5330-5) contains supplementary material, which is available to authorized users.
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- 2017
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36. AntiTbPdb: a knowledgebase of anti-tubercular peptides
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Salman Sadullah Usmani, Rajesh Kumar, Gajendra P. S. Raghava, Sandeep Singh, and Vinod Kumar
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0301 basic medicine ,Computer science ,030106 microbiology ,Antitubercular Agents ,Peptide ,Computational biology ,General Biochemistry, Genetics and Molecular Biology ,03 medical and health sciences ,Humans ,Tuberculosis ,Anti tubercular ,Databases, Protein ,chemistry.chemical_classification ,Internet ,Peptide mapping ,Mycobacterium tuberculosis ,Mobile Applications ,Protein tertiary structure ,Premature death ,030104 developmental biology ,Database Tool ,chemistry ,Sequence similarity search ,General Agricultural and Biological Sciences ,Information Systems ,Antimicrobial Cationic Peptides - Abstract
Tuberculosis is a global menace, caused by Mycobacterium tuberculosis, responsible for millions of premature deaths every year. In the era of drug-resistant tuberculosis, peptide-based therapeutics may provide alternate to small molecule based drugs. In order to create knowledgebase, AntiTbPdb (http://webs.iiitd.edu.in/raghava/antitbpdb/), experimentally validated anti-tubercular and anti-mycobacterial peptides were compiled from literature. We curate 10 652 research articles and 35 patents to extract anti-tubercular peptides and annotate these peptides manually. This knowledgebase has 1010 entries, each entry provides extensive information about an anti-tubercular peptide such as sequence, chemical modification, chirality, nature and source of origin. The tertiary structure of these anti-tubercular peptides containing natural as well as chemically modified residues was predicted using PEPstrMOD and I-TASSER. In addition to structural information, database maintains other properties of peptides like physiochemical properties. Numerous web-based tools have been integrated for data retrieval, browsing, sequence similarity search and peptide mapping. In order to assist wide range of user, we developed a responsive website suitable for smartphone, tablet and desktop. Database URL: http://webs.iiitd.edu.in/raghava/antitbpdb/
- Published
- 2017
37. Computer-aided designing of immunosuppressive peptides based on IL-10 inducing potential
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Sandeep Kumar Dhanda, Gandharva Nagpal, Salman Sadullah Usmani, Meenu Sharma, Harpreet Kaur, Gajendra P. S. Raghava, and Sandeep Singh
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0301 basic medicine ,Web browser ,Support Vector Machine ,Multidisciplinary ,Computer science ,Computational biology ,Web Browser ,Mobile Applications ,Article ,Epitope ,Interleukin-10 ,03 medical and health sciences ,Interleukin 10 ,030104 developmental biology ,0302 clinical medicine ,Immune system ,Computer-Aided Design ,Humans ,Computer Simulation ,Peptides ,Immunosuppressive Agents ,030215 immunology - Abstract
In the past, numerous methods have been developed to predict MHC class II binders or T-helper epitopes for designing the epitope-based vaccines against pathogens. In contrast, limited attempts have been made to develop methods for predicting T-helper epitopes/peptides that can induce a specific type of cytokine. This paper describes a method, developed for predicting interleukin-10 (IL-10) inducing peptides, a cytokine responsible for suppressing the immune system. All models were trained and tested on experimentally validated 394 IL-10 inducing and 848 non-inducing peptides. It was observed that certain types of residues and motifs are more frequent in IL-10 inducing peptides than in non-inducing peptides. Based on this analysis, we developed composition-based models using various machine-learning techniques. Random Forest-based model achieved the maximum Matthews’s Correlation Coefficient (MCC) value of 0.59 with an accuracy of 81.24% developed using dipeptide composition. In order to facilitate the community, we developed a web server “IL-10pred”, standalone packages and a mobile app for designing IL-10 inducing peptides (http://crdd.osdd.net/raghava/IL-10pred/).
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- 2017
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38. ZikaVR: An Integrated Zika Virus Resource for Genomics, Proteomics, Phylogenetic and Therapeutic Analysis
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Md. Shoaib Khan, Gandharva Nagpal, Akanksha Rajput, Shivangi Sharma, Abid Qureshi, Salman Sadullah Usmani, Isha Monga, Sandeep Kumar Dhanda, Amit Kumar Gupta, Sandeep Singh, Karambir Kaur, Showkat Ahmad Dar, Aman Bhardwaj, Manoj Kumar, Manika Sehgal, Gazaldeep Kaur, Gajendra P. S. Raghava, and Anamika Thakur
- Subjects
0301 basic medicine ,Proteomics ,Glycosylation ,Context (language use) ,Genomics ,Genome, Viral ,Biology ,Genome ,Article ,Zika virus ,03 medical and health sciences ,Viral Proteins ,Phylogenetics ,Global health ,Animals ,Humans ,Codon ,Phylogeny ,Genetics ,Multidisciplinary ,Zika Virus Infection ,Molecular Sequence Annotation ,Zika Virus ,biology.organism_classification ,030104 developmental biology ,Molecular Diagnostic Techniques ,Proteome ,RNA, Viral ,Software - Abstract
Current Zika virus (ZIKV) outbreaks that spread in several areas of Africa, Southeast Asia, and in pacific islands is declared as a global health emergency by World Health Organization (WHO). It causes Zika fever and illness ranging from severe autoimmune to neurological complications in humans. To facilitate research on this virus, we have developed an integrative multi-omics platform; ZikaVR (http://bioinfo.imtech.res.in/manojk/zikavr/), dedicated to the ZIKV genomic, proteomic and therapeutic knowledge. It comprises of whole genome sequences, their respective functional information regarding proteins, genes, and structural content. Additionally, it also delivers sophisticated analysis such as whole-genome alignments, conservation and variation, CpG islands, codon context, usage bias and phylogenetic inferences at whole genome and proteome level with user-friendly visual environment. Further, glycosylation sites and molecular diagnostic primers were also analyzed. Most importantly, we also proposed potential therapeutically imperative constituents namely vaccine epitopes, siRNAs, miRNAs, sgRNAs and repurposing drug candidates.
- Published
- 2016
39. Novelin silicotools for designing peptide-based subunit vaccines and immunotherapeutics
- Author
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Salman Sadullah Usmani, Ankur Gautam, Gandharva Nagpal, Piyush Agrawal, Sandeep Kumar Dhanda, and Gajendra P. S. Raghava
- Subjects
0301 basic medicine ,medicine.medical_treatment ,In silico ,Epitopes, T-Lymphocyte ,Computational biology ,Biology ,Bioinformatics ,Major histocompatibility complex ,Epitope ,03 medical and health sciences ,0302 clinical medicine ,Immune system ,Antigen ,medicine ,Humans ,Molecular Biology ,Computational Biology ,Immunotherapy ,Acquired immune system ,030104 developmental biology ,030220 oncology & carcinogenesis ,Vaccines, Subunit ,Humoral immunity ,biology.protein ,Epitopes, B-Lymphocyte ,Peptides ,Information Systems - Abstract
The conventional approach for designing vaccine against a particular disease involves stimulation of the immune system using the whole pathogen responsible for the disease. In the post-genomic era, a major challenge is to identify antigenic regions or epitopes that can stimulate different arms of the immune system. In the past two decades, numerous methods and databases have been developed for designing vaccine or immunotherapy against various pathogen-causing diseases. This review describes various computational resources important for designing subunit vaccines or epitope-based immunotherapy. First, different immunological databases are described that maintain epitopes, antigens and vaccine targets. This is followed by in silico tools used for predicting linear and conformational B-cell epitopes required for activating humoral immunity. Finally, information on T-cell epitope prediction methods is provided that includes indirect methods like prediction of Major Histocompatibility Complex and transporter-associated protein binders. Different studies for validating the predicted epitopes are also examined critically. This review enlists novel in silico resources and tools available for predicting humoral and cell-mediated immune potential. These predicted epitopes could be used for designing epitope-based vaccines or immunotherapy as they may activate the adaptive immunity. Authors emphasized the need to develop tools for the prediction of adjuvants to activate innate and adaptive immune system simultaneously. In addition, attention has also been given to novel prediction methods to predict general therapeutic properties of peptides like half-life, cytotoxicity and immune toxicity.
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- 2016
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40. SATPdb: a database of structurally annotated therapeutic peptides
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Kumardeep Chaudhary, Sherry Bhalla, Sandeep Kumar Dhanda, Ankur Gautam, Gajendra P. S. Raghava, Deepika Mathur, Piyush Agrawal, Abhishek Tuknait, Salman Sadullah Usmani, and Sandeep Singh
- Subjects
0301 basic medicine ,chemistry.chemical_classification ,Database ,Databases, Pharmaceutical ,Antineoplastic Agents ,Molecular Sequence Annotation ,Peptide ,computer.file_format ,Biology ,Protein Data Bank ,computer.software_genre ,03 medical and health sciences ,030104 developmental biology ,chemistry ,Prediction methods ,Drug delivery ,Genetics ,Database Issue ,Sequence similarity search ,Peptides ,computer ,Antihypertensive Agents ,Function (biology) - Abstract
SATPdb (http://crdd.osdd.net/raghava/satpdb/) is a database of structurally annotated therapeutic peptides, curated from 22 public domain peptide databases/datasets including 9 of our own. The current version holds 19192 unique experimentally validated therapeutic peptide sequences having length between 2 and 50 amino acids. It covers peptides having natural, non-natural and modified residues. These peptides were systematically grouped into 10 categories based on their major function or therapeutic property like 1099 anticancer, 10585 antimicrobial, 1642 drug delivery and 1698 antihypertensive peptides. We assigned or annotated structure of these therapeutic peptides using structural databases (Protein Data Bank) and state-of-the-art structure prediction methods like I-TASSER, HHsearch and PEPstrMOD. In addition, SATPdb facilitates users in performing various tasks that include: (i) structure and sequence similarity search, (ii) peptide browsing based on their function and properties, (iii) identification of moonlighting peptides and (iv) searching of peptides having desired structure and therapeutic activities. We hope this database will be useful for researchers working in the field of peptide-based therapeutics.
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