Durairaj Renu
Strand Life Sciences
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Publication
Featured researches published by Durairaj Renu.
PLOS ONE | 2012
Sandipan Ray; Durairaj Renu; Rajneesh Srivastava; Kishore Gollapalli; Santosh Taur; Tulip Jhaveri; Snigdha Dhali; Srinivasarao Chennareddy; Ankit Potla; Jyoti Bajpai Dikshit; Rapole Srikanth; Nithya Gogtay; Urmila M Thatte; Swati Patankar; Sanjeeva Srivastava
This study was conducted to analyze alterations in the human serum proteome as a consequence of infection by malaria parasites Plasmodium falciparum and P. vivax to obtain mechanistic insights about disease pathogenesis, host immune response, and identification of potential protein markers. Serum samples from patients diagnosed with falciparum malaria (FM) (n = 20), vivax malaria (VM) (n = 17) and healthy controls (HC) (n = 20) were investigated using multiple proteomic techniques and results were validated by employing immunoassay-based approaches. Specificity of the identified malaria related serum markers was evaluated by means of analysis of leptospirosis as a febrile control (FC). Compared to HC, 30 and 31 differentially expressed and statistically significant (p<0.05) serum proteins were identified in FM and VM respectively, and almost half (46.2%) of these proteins were commonly modulated due to both of the plasmodial infections. 13 proteins were found to be differentially expressed in FM compared to VM. Functional pathway analysis involving the identified proteins revealed the modulation of different vital physiological pathways, including acute phase response signaling, chemokine and cytokine signaling, complement cascades and blood coagulation in malaria. A panel of identified proteins consists of six candidates; serum amyloid A, hemopexin, apolipoprotein E, haptoglobin, retinol-binding protein and apolipoprotein A-I was used to build statistical sample class prediction models. By employing PLS-DA and other classification methods the clinical phenotypic classes (FM, VM, FC and HC) were predicted with over 95% prediction accuracy. Individual performance of three classifier proteins; haptoglobin, apolipoprotein A-I and retinol-binding protein in diagnosis of malaria was analyzed using receiver operating characteristic (ROC) curves. The discrimination of FM, VM, FC and HC groups on the basis of differentially expressed serum proteins demonstrates the potential of this analytical approach for the detection of malaria as well as other human diseases.
Proteomics | 2012
Kishore Gollapalli; Sandipan Ray; Rajneesh Srivastava; Durairaj Renu; Prateek Singh; Snigdha Dhali; Jyoti Bajpai Dikshit; Rapole Srikanth; Aliasgar Moiyadi; Sanjeeva Srivastava
Glioblastoma multiforme (GBM) or grade IV astrocytoma is the most common and lethal adult malignant brain tumor. The present study was conducted to investigate the alterations in the serum proteome in GBM patients compared to healthy controls. Comparative proteomic analysis was performed employing classical 2DE and 2D‐DIGE combined with MALDI TOF/TOF MS and results were further validated through Western blotting and immunoturbidimetric assay. Comparison of the serum proteome of GBM and healthy subjects revealed 55 differentially expressed and statistically significant (p <0.05) protein spots. Among the identified proteins, haptoglobin, plasminogen precursor, apolipoprotein A‐1 and M, and transthyretin are very significant due to their functional consequences in glioma tumor growth and migration, and could further be studied as glioma biomarkers and grade‐specific protein signatures. Analysis of the lipoprotein pattern indicated elevated serum levels of cholesterol, triacylglycerol, and low‐density lipoproteins in GBM patients. Functional pathway analysis was performed using multiple software including ingenuity pathway analysis (IPA), protein analysis through evolutionary relationships (PANTHER), database for annotation, visualization and integrated discovery (DAVID), and GeneSpring to investigate the biological context of the identified proteins, which revealed the association of candidate proteins in a few essential physiological pathways such as intrinsic prothrombin activation pathway, plasminogen activating cascade, coagulation system, glioma invasiveness signaling, and PI3K signaling in B lymphocytes. A subset of the differentially expressed proteins was applied to build statistical sample class prediction models for discrimination of GBM patients and healthy controls employing partial least squares discriminant analysis (PLS‐DA) and other machine learning methods such as support vector machine (SVM), Decision Tree and Naïve Bayes, and excellent discrimination between GBM and control groups was accomplished.
Journal of Molecular Psychiatry | 2015
Alexander Karabatsiakis; Gilava Hamuni; Sarah Wilker; Stephan Kolassa; Durairaj Renu; Suzanne Kadereit; Maggie Schauer; Thomas Hennessy; Iris-Tatjana Kolassa
BackgroundTraumatic stress does not only increase the risk for posttraumatic stress disorder (PTSD), but is also associated with adverse secondary physical health outcomes. Despite increasing efforts, we only begin to understand the underlying biomolecular processes. The hypothesis-free assessment of a wide range of metabolites (termed metabolite profiling) might contribute to the discovery of biological pathways underlying PTSD.MethodsHere, we present the results of the first metabolite profiling study in PTSD, which investigated peripheral blood serum samples of 20 PTSD patients and 18 controls. We performed liquid chromatography (LC) coupled to Quadrupole/Time-Of-Flight (QTOF) mass spectrometry. Two complementary statistical approaches were used to identify metabolites associated with PTSD status including univariate analyses and Partial Least Squares Discriminant Analysis (PLS-DA).ResultsThirteen metabolites displayed significant changes in PTSD, including four glycerophospholipids, and one metabolite involved in endocannabinoid signaling. A biomarker panel of 19 metabolites classifies PTSD with 85% accuracy, while classification accuracy from the glycerophospholipid with the highest differentiating ability already reached 82%.ConclusionsThis study illustrates the feasibility and utility of metabolite profiling for PTSD and suggests lipid-derived and endocannabinoid signaling as potential biological pathways involved in trauma-associated pathophysiology.
Scientific Reports | 2016
Sayantan Ray; Sandip K. Patel; Apoorva Venkatesh; Amruta Bhave; Kumar; Singh; Gangadhar Chatterjee; Shah Vg; Samridhi Sharma; Durairaj Renu; Nafis N; Prajakta Gandhe; Nithya Gogtay; Urmila M Thatte; Sehgal K; Verma S; Karak A; Khanra D; Arunansu Talukdar; Sanjay K. Kochar; Kochar Dk; Rojh D; Varma Sg; Mayuri N. Gandhi; Rapole Srikanth; Swati Patankar; Sanjeeva Srivastava
In Plasmodium vivax malaria, mechanisms that trigger transition from uncomplicated to fatal severe infections are obscure. In this multi-disciplinary study we have performed a comprehensive analysis of clinicopathological parameters and serum proteome profiles of vivax malaria patients with different severity levels of infection to investigate pathogenesis of severe malaria and identify surrogate markers of severity. Clinicopathological analysis and proteomics profiling has provided evidences for the modulation of diverse physiological pathways including oxidative stress, cytoskeletal regulation, lipid metabolism and complement cascades in severe malaria. Strikingly, unlike severe falciparum malaria the blood coagulation cascade was not found to be affected adversely in acute P. vivax infection. To the best of our knowledge, this is the first comprehensive proteomics study, which identified some possible cues for severe P. vivax infection. Our results suggest that Superoxide dismutase, Vitronectin, Titin, Apolipoprotein E, Serum amyloid A, and Haptoglobin are potential predictive markers for malaria severity.
Journal of Proteome Research | 2013
Ravindra Varma Polisetty; Poonam Gautam; Manoj Kumar Gupta; Rakesh K. Sharma; Megha S Uppin; Sundaram Challa; Praveen Ankathi; Aniruddh Kumar Purohit; Durairaj Renu; H. C. Harsha; Akhilesh Pandey; Ravi Sirdeshmukh
Anaplastic astrocytoma is a high grade malignant glioma (WHO grade III) of the central nervous system which arises from a low grade II tumor and invariably progresses into lethal glioblastoma (WHO grade IV). We have studied differentially expressed proteins from the microsomal fraction of the clinical specimens of these tumors, using iTRAQ and high-resolution mass spectrometry followed by immunohistochemistry for representative proteins on tissue sections. A total of 2642 proteins were identified, 266 of them with minimum 2 peptide signatures and 2-fold change in expression. The major groups of proteins revealed to be differentially expressed were associated with key cellular processes such as post transcriptional processing, protein translation, and acute phase response signaling. A distinct inclusion among these important proteins is 10 heterogeneous nuclear ribonucleoproteins (hnRNPs) and their interacting partners which have regulatory functions in the cell. hnRNP-mediated post transcriptional events are known to play a major role in mRNA processing, stability, and distribution. Their altered levels have also been observed by us in lower (diffused astrocytoma) and higher (glioblastoma) grades of gliomas, and membrane localization of hnRNPs has also been documented in the literature. hnRNPs may thus be major factors underlying global gene expression changes observed in glial tumors while their differential presence in the microsomal fraction suggests yet additional and unknown roles in tumorigenesis.
Scientific Reports | 2016
Ravindra Varma Polisetty; Poonam Gautam; Manoj Kumar Gupta; Rakesh Kumar Sharma; Harsha Gowda; Durairaj Renu; Bhadravathi Marigowda Shivakumar; Akhila Lakshmikantha; Kiran Mariswamappa; Praveen Ankathi; Aniruddh Kumar Purohit; Megha S Uppin; Challa Sundaram; Ravi Sirdeshmukh
Diffuse astrocytoma (DA; WHO grade II) is a low-grade, primary brain neoplasm with high potential of recurrence as higher grade malignant form. We have analyzed differentially expressed membrane proteins from these tumors, using high-resolution mass spectrometry. A total of 2803 proteins were identified, 340 of them differentially expressed with minimum of 2 fold change and based on ≥2 unique peptides. Bioinformatics analysis of this dataset also revealed important molecular networks and pathways relevant to tumorigenesis, mTOR signaling pathway being a major pathway identified. Comparison of 340 differentially expressed proteins with the transcript data from Grade II diffuse astrocytomas reported earlier, revealed about 190 of the proteins correlate in their trends in expression. Considering progressive and recurrent nature of these tumors, we have mapped the differentially expressed proteins for their secretory potential, integrated the resulting list with similar list of proteins from anaplastic astrocytoma (WHO Grade III) tumors and provide a panel of proteins along with their proteotypic peptides, as a resource that would be useful for investigation as circulatory plasma markers for post-treatment surveillance of DA patients.
Brain Behavior and Immunity | 2017
Alexander Karabatsiakis; Sarah Wilker; Gilava Hamuni; Stephan Kolassa; Durairaj Renu; Suzanne Kadereit; Maggie Schauer; Thomas Hennessy; I.T. Kolassa
Posttraumatic stress disorder (PTSD) is associated with an increased risk for adverse physical health outcomes. However, the underlying bio-molecular processes and associated pathways remain poorly elucidated. Using time-of-flight mass spectrometry (TOF-MS), the untargeted and holistic investigation of the metabolome – the total of hydrophilic and amphiphilic metabolites - holds the potential to provide novel insights into PTSD pathophysiology. To address metabolome changes associated with PTSD, serum from 20 individuals with a PTSD diagnosis and 18 healthy controls was analyzed with TOF-MS. Symptom severity of PTSD was assessed using the Clinician-administered PTSD scale (CAPS). Univariate and multivariate approaches, namely Partial Least Square Discriminant Analysis, were applied for statistical analyses. The group comparison revealed 13 metabolites significantly altered in PTSD, including four glycerophospholipids and one metabolite involved in endocannabinoid signaling. Out of the 13, eleven metabolites showed a correlation between the serum level and the CAPS score. In the multivariate approach, a metabolite profile of 19 biomolecules predicted PTSD with an accuracy of 85%. Here, we initially illustrate the potential of metabolite fingerprinting to identify novel pathophysiological underpinnings of PTSD. It further provides the possibility to highlight associated pathways, such as lipid-derived and endocannabinoid signaling. More research will help to gain not only a deeper understanding of the molecular mechanisms and associated pathways in PTSD, but also of the biological processes stimulated by (psycho) therapeutical treatment.
Psychoneuroendocrinology | 2016
Alexandra Maria Koenig; Alexander Karabatsiakis; Sarah Wilker; Gilava Hamuni; Stephan Kolassa; Durairaj Renu; Suzanne Kadereit; Maggie Schauer; Thomas Hennessy; Iris-Tatjana Kolassa
Neuro-oncology | 2015
Durairaj Renu; Pritha Aggarwal; Sunil Cherukuri; Pramila Tata; Vadiraja B. Bhat; Carolina B. Livi; Michael Rosenberg; Mona M. Al-Gizawiy; Wade M. Mueller; Jennifer Connelly; Kathleen M. Schmainda; Shama P. Mirza
Current Pharmacogenomics and Personalized Medicine | 2013
Aditi Kapoor; Vinayak Pachapur; Rekha Jain; Prateek Singh; Durairaj Renu; Jyoti Bajpai Dikshit; Sanjeeva Srivastava