Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Boris R. Jankovic is active.

Publication


Featured researches published by Boris R. Jankovic.


Cell Communication and Signaling | 2013

Structural and functional characteristics of cGMP-dependent methionine oxidation in Arabidopsis thaliana proteins

Claudius Marondedze; Ilona Turek; Brian Jonathan Parrott; Ludivine Thomas; Boris R. Jankovic; Kathryn S. Lilley; Christoph A. Gehring

BackgroundIncreasing structural and biochemical evidence suggests that post-translational methionine oxidation of proteins is not just a result of cellular damage but may provide the cell with information on the cellular oxidative status. In addition, oxidation of methionine residues in key regulatory proteins, such as calmodulin, does influence cellular homeostasis. Previous findings also indicate that oxidation of methionine residues in signaling molecules may have a role in stress responses since these specific structural modifications can in turn change biological activities of proteins.FindingsHere we use tandem mass spectrometry-based proteomics to show that treatment of Arabidopsis thaliana cells with a non-oxidative signaling molecule, the cell-permeant second messenger analogue, 8-bromo-3,5-cyclic guanosine monophosphate (8-Br-cGMP), results in a time-dependent increase in the content of oxidised methionine residues. Interestingly, the group of proteins affected by cGMP-dependent methionine oxidation is functionally enriched for stress response proteins. Furthermore, we also noted distinct signatures in the frequency of amino acids flanking oxidised and un-oxidised methionine residues on both the C- and N-terminus.ConclusionsGiven both a structural and functional bias in methionine oxidation events in response to a signaling molecule, we propose that these are indicative of a specific role of such post-translational modifications in the direct or indirect regulation of cellular responses. The mechanisms that determine the specificity of the modifications remain to be elucidated.


PLOS ONE | 2014

Core Microbial Functional Activities in Ocean Environments Revealed by Global Metagenomic Profiling Analyses

Ari J. S. Ferreira; Rania Siam; João C. Setubal; Ahmed A. Moustafa; Ahmed Sayed; Felipe S. Chambergo; Adam Dawe; Hazem Sharaf; Amged Ouf; Intikhab Alam; Alyaa M. Abdel-Haleem; Heikki Lehvaslaiho; Eman Ramadan; André Antunes; Ulrich Stingl; John A. C. Archer; Boris R. Jankovic; Mitchell L. Sogin; Vladimir B. Bajic

Metagenomics-based functional profiling analysis is an effective means of gaining deeper insight into the composition of marine microbial populations and developing a better understanding of the interplay between the functional genome content of microbial communities and abiotic factors. Here we present a comprehensive analysis of 24 datasets covering surface and depth-related environments at 11 sites around the worlds oceans. The complete datasets comprises approximately 12 million sequences, totaling 5,358 Mb. Based on profiling patterns of Clusters of Orthologous Groups (COGs) of proteins, a core set of reference photic and aphotic depth-related COGs, and a collection of COGs that are associated with extreme oxygen limitation were defined. Their inferred functions were utilized as indicators to characterize the distribution of light- and oxygen-related biological activities in marine environments. The results reveal that, while light level in the water column is a major determinant of phenotypic adaptation in marine microorganisms, oxygen concentration in the aphotic zone has a significant impact only in extremely hypoxic waters. Phylogenetic profiling of the reference photic/aphotic gene sets revealed a greater variety of source organisms in the aphotic zone, although the majority of individual photic and aphotic depth-related COGs are assigned to the same taxa across the different sites. This increase in phylogenetic and functional diversity of the core aphotic related COGs most probably reflects selection for the utilization of a broad range of alternate energy sources in the absence of light.


Bioinformatics | 2012

Dragon PolyA Spotter: predictor of poly(A) motifs within human genomic DNA sequences.

Manal Kalkatawi; Farania Rangkuti; Michael Schramm; Boris R. Jankovic; Allan Anthony Kamau; Rajesh Chowdhary; John A. C. Archer; Vladimir B. Bajic

Motivation: Recognition of poly(A) signals in mRNA is relatively straightforward due to the presence of easily recognizable polyadenylic acid tail. However, the task of identifying poly(A) motifs in the primary genomic DNA sequence that correspond to poly(A) signals in mRNA is a far more challenging problem. Recognition of poly(A) signals is important for better gene annotation and understanding of the gene regulation mechanisms. In this work, we present one such poly(A) motif prediction method based on properties of human genomic DNA sequence surrounding a poly(A) motif. These properties include thermodynamic, physico-chemical and statistical characteristics. For predictions, we developed Artificial Neural Network and Random Forest models. These models are trained to recognize 12 most common poly(A) motifs in human DNA. Our predictors are available as a free web-based tool accessible at http://cbrc.kaust.edu.sa/dps. Compared with other reported predictors, our models achieve higher sensitivity and specificity and furthermore provide a consistent level of accuracy for 12 poly(A) motif variants. Contact: [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.


Scientific Reports | 2015

Insights into the Transcriptional Architecture of Behavioral Plasticity in the Honey Bee Apis mellifera

Abdullah M. Khamis; Adam R. Hamilton; Yulia A. Medvedeva; Tanvir Alam; Intikhab Alam; Magbubah Essack; Boris Umylny; Boris R. Jankovic; Nicholas L. Naeger; Makoto Suzuki; Matthias Harbers; Gene E. Robinson; Vladimir B. Bajic

Honey bee colonies exhibit an age-related division of labor, with worker bees performing discrete sets of behaviors throughout their lifespan. These behavioral states are associated with distinct brain transcriptomic states, yet little is known about the regulatory mechanisms governing them. We used CAGEscan (a variant of the Cap Analysis of Gene Expression technique) for the first time to characterize the promoter regions of differentially expressed brain genes during two behavioral states (brood care (aka “nursing”) and foraging) and identified transcription factors (TFs) that may govern their expression. More than half of the differentially expressed TFs were associated with motifs enriched in the promoter regions of differentially expressed genes (DEGs), suggesting they are regulators of behavioral state. Strikingly, five TFs (nf-kb, egr, pax6, hairy, and clockwork orange) were predicted to co-regulate nearly half of the genes that were upregulated in foragers. Finally, differences in alternative TSS usage between nurses and foragers were detected upstream of 646 genes, whose functional analysis revealed enrichment for Gene Ontology terms associated with neural function and plasticity. This demonstrates for the first time that alternative TSSs are associated with stable differences in behavior, suggesting they may play a role in organizing behavioral state.


Bioinformatics | 2013

Poly(A) motif prediction using spectral latent features from human DNA sequences

Bo Xie; Boris R. Jankovic; Vladimir B. Bajic; Le Song; Xin Gao

Motivation: Polyadenylation is the addition of a poly(A) tail to an RNA molecule. Identifying DNA sequence motifs that signal the addition of poly(A) tails is essential to improved genome annotation and better understanding of the regulatory mechanisms and stability of mRNA. Existing poly(A) motif predictors demonstrate that information extracted from the surrounding nucleotide sequences of candidate poly(A) motifs can differentiate true motifs from the false ones to a great extent. A variety of sophisticated features has been explored, including sequential, structural, statistical, thermodynamic and evolutionary properties. However, most of these methods involve extensive manual feature engineering, which can be time-consuming and can require in-depth domain knowledge. Results: We propose a novel machine-learning method for poly(A) motif prediction by marrying generative learning (hidden Markov models) and discriminative learning (support vector machines). Generative learning provides a rich palette on which the uncertainty and diversity of sequence information can be handled, while discriminative learning allows the performance of the classification task to be directly optimized. Here, we used hidden Markov models for fitting the DNA sequence dynamics, and developed an efficient spectral algorithm for extracting latent variable information from these models. These spectral latent features were then fed into support vector machines to fine-tune the classification performance. We evaluated our proposed method on a comprehensive human poly(A) dataset that consists of 14 740 samples from 12 of the most abundant variants of human poly(A) motifs. Compared with one of the previous state-of-the-art methods in the literature (the random forest model with expert-crafted features), our method reduces the average error rate, false-negative rate and false-positive rate by 26, 15 and 35%, respectively. Meanwhile, our method makes ∼30% fewer error predictions relative to the other string kernels. Furthermore, our method can be used to visualize the importance of oligomers and positions in predicting poly(A) motifs, from which we can observe a number of characteristics in the surrounding regions of true and false motifs that have not been reported before. Availability: http://sfb.kaust.edu.sa/Pages/Software.aspx Contact: [email protected] or [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.


Frontiers in Genetics | 2012

Mutations and Binding Sites of Human Transcription Factors

Frederick Kinyua Kamanu; Yulia A. Medvedeva; Ulf Schaefer; Boris R. Jankovic; John A. C. Archer; Vladimir B. Bajic

Mutations in any genome may lead to phenotype characteristics that determine ability of an individual to cope with adaptation to environmental challenges. In studies of human biology, among the most interesting ones are phenotype characteristics that determine responses to drug treatments, response to infections, or predisposition to specific inherited diseases. Most of the research in this field has been focused on the studies of mutation effects on the final gene products, peptides, and their alterations. Considerably less attention was given to the mutations that may affect regulatory mechanism(s) of gene expression, although these may also affect the phenotype characteristics. In this study we make a pilot analysis of mutations observed in the regulatory regions of 24,667 human RefSeq genes. Our study reveals that out of eight studied mutation types, “insertions” are the only one that in a statistically significant manner alters predicted transcription factor binding sites (TFBSs). We also find that 25 families of TFBSs have been altered by mutations in a statistically significant manner in the promoter regions we considered. Moreover, we find that the related transcription factors are, for example, prominent in processes related to intracellular signaling; cell fate; morphogenesis of organs and epithelium; development of urogenital system, epithelium, and tube; neuron fate commitment. Our study highlights the significance of studying mutations within the genes regulatory regions and opens way for further detailed investigations on this topic, particularly on the downstream affected pathways.


Bioinformatics | 2013

Dragon TIS Spotter

Arturo Magana-Mora; Haitham Ashoor; Boris R. Jankovic; Allan Anthony Kamau; Karim Awara; Rajesh Chowdhary; John A. C. Archer; Vladimir B. Bajic

Summary: In higher eukaryotes, the identification of translation initiation sites (TISs) has been focused on finding these signals in cDNA or mRNA sequences. Using Arabidopsis thaliana (A.t.) information, we developed a prediction tool for signals within genomic sequences of plants that correspond to TISs. Our tool requires only genome sequence, not expressed sequences. Its sensitivity/specificity is for A.t. (90.75%/92.2%), for Vitis vinifera (66.8%/94.4%) and for Populus trichocarpa (81.6%/94.4%), which suggests that our tool can be used in annotation of different plant genomes. We provide a list of features used in our model. Further study of these features may improve our understanding of mechanisms of the translation initiation. Availability and implementation: Our tool is implemented as an artificial neural network. It is available as a web-based tool and, together with the source code, the list of features, and data used for model development, is accessible at http://cbrc.kaust.edu.sa/dts. Contact: [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.


PLOS ONE | 2011

Simplified method to predict mutual interactions of human transcription factors based on their primary structure

Sebastian Schmeier; Boris R. Jankovic; Vladimir B. Bajic

Background Physical interactions between transcription factors (TFs) are necessary for forming regulatory protein complexes and thus play a crucial role in gene regulation. Currently, knowledge about the mechanisms of these TF interactions is incomplete and the number of known TF interactions is limited. Computational prediction of such interactions can help identify potential new TF interactions as well as contribute to better understanding the complex machinery involved in gene regulation. Methodology We propose here such a method for the prediction of TF interactions. The method uses only the primary sequence information of the interacting TFs, resulting in a much greater simplicity of the prediction algorithm. Through an advanced feature selection process, we determined a subset of 97 model features that constitute the optimized model in the subset we considered. The model, based on quadratic discriminant analysis, achieves a prediction accuracy of 85.39% on a blind set of interactions. This result is achieved despite the selection for the negative data set of only those TF from the same type of proteins, i.e. TFs that function in the same cellular compartment (nucleus) and in the same type of molecular process (transcription initiation). Such selection poses significant challenges for developing models with high specificity, but at the same time better reflects real-world problems. Conclusions The performance of our predictor compares well to those of much more complex approaches for predicting TF and general protein-protein interactions, particularly when taking the reduced complexity of model utilisation into account.


International Journal of Molecular Sciences | 2014

Exploring the Arabidopsis Proteome: Influence of Protein Solubilization Buffers on Proteome Coverage

Claudius Marondedze; Aloysius Wong; Arnoud J. Groen; Natalia Serrano; Boris R. Jankovic; Kathryn S. Lilley; Christoph A. Gehring; Ludivine Thomas

The study of proteomes provides new insights into stimulus-specific responses of protein synthesis and turnover, and the role of post-translational modifications at the systems level. Due to the diverse chemical nature of proteins and shortcomings in the analytical techniques used in their study, only a partial display of the proteome is achieved in any study, and this holds particularly true for plant proteomes. Here we show that different solubilization and separation methods have profound effects on the resulting proteome. In particular, we observed that the type of detergents employed in the solubilization buffer preferentially enriches proteins in different functional categories. These include proteins with a role in signaling, transport, response to temperature stimuli and metabolism. This data may offer a functional bias on comparative analysis studies. In order to obtain a broader coverage, we propose a two-step solubilization protocol with first a detergent-free buffer and then a second step utilizing a combination of two detergents to solubilize proteins.


Bioinformatics | 2013

Dragon PolyA Spotter

Manal Kalkatawi; Farania Rangkuti; Michael Schramm; Boris R. Jankovic; Allan Anthony Kamau; Rajesh Chowdhary; John A. C. Archer; Vladimir B. Bajic

Motivation: Recognition of poly(A) signals in mRNA is relatively straightforward due to the presence of easily recognizable polyadenylic acid tail. However, the task of identifying poly(A) motifs in the primary genomic DNA sequence that correspond to poly(A) signals in mRNA is a far more challenging problem. Recognition of poly(A) signals is important for better gene annotation and understanding of the gene regulation mechanisms. In this work, we present one such poly(A) motif prediction method based on properties of human genomic DNA sequence surrounding a poly(A) motif. These properties include thermodynamic, physico-chemical and statistical characteristics. For predictions, we developed Artificial Neural Network and Random Forest models. These models are trained to recognize 12 most common poly(A) motifs in human DNA. Our predictors are available as a free web-based tool accessible at http://cbrc.kaust.edu.sa/dps. Compared with other reported predictors, our models achieve higher sensitivity and specificity and furthermore provide a consistent level of accuracy for 12 poly(A) motif variants. Contact: [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.

Collaboration


Dive into the Boris R. Jankovic's collaboration.

Top Co-Authors

Avatar

Vladimir B. Bajic

King Abdullah University of Science and Technology

View shared research outputs
Top Co-Authors

Avatar

John A. C. Archer

King Abdullah University of Science and Technology

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Xin Gao

King Abdullah University of Science and Technology

View shared research outputs
Top Co-Authors

Avatar

Magbubah Essack

King Abdullah University of Science and Technology

View shared research outputs
Top Co-Authors

Avatar

Allan Anthony Kamau

King Abdullah University of Science and Technology

View shared research outputs
Top Co-Authors

Avatar

Haitham Ashoor

King Abdullah University of Science and Technology

View shared research outputs
Top Co-Authors

Avatar

Manal Kalkatawi

King Abdullah University of Science and Technology

View shared research outputs
Top Co-Authors

Avatar

Michael Schramm

King Abdullah University of Science and Technology

View shared research outputs
Top Co-Authors

Avatar

Olaa Amin Motwalli

King Abdullah University of Science and Technology

View shared research outputs
Researchain Logo
Decentralizing Knowledge