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Featured researches published by nan Alamgir.


PLOS Genetics | 2011

Genetic Interaction Maps in Escherichia coli Reveal Functional Crosstalk among Cell Envelope Biogenesis Pathways

Mohan Babu; J. Javier Díaz-Mejía; James Vlasblom; Alla Gagarinova; Sadhna Phanse; Chris Graham; Fouad Yousif; Huiming Ding; Xuejian Xiong; Anaies Nazarians-Armavil; Alamgir; Mehrab Ali; Oxana Pogoutse; Asaf Peer; Roland Arnold; Magali Michaut; John Parkinson; Ashkan Golshani; Chris Whitfield; Gabriel Moreno-Hagelsieb; Jack Greenblatt; Andrew Emili

As the interface between a microbe and its environment, the bacterial cell envelope has broad biological and clinical significance. While numerous biosynthesis genes and pathways have been identified and studied in isolation, how these intersect functionally to ensure envelope integrity during adaptive responses to environmental challenge remains unclear. To this end, we performed high-density synthetic genetic screens to generate quantitative functional association maps encompassing virtually the entire cell envelope biosynthetic machinery of Escherichia coli under both auxotrophic (rich medium) and prototrophic (minimal medium) culture conditions. The differential patterns of genetic interactions detected among >235,000 digenic mutant combinations tested reveal unexpected condition-specific functional crosstalk and genetic backup mechanisms that ensure stress-resistant envelope assembly and maintenance. These networks also provide insights into the global systems connectivity and dynamic functional reorganization of a universal bacterial structure that is both broadly conserved among eubacteria (including pathogens) and an important target.


Advances in Biochemical Engineering \/ Biotechnology | 2008

Computational Methods For Predicting Protein–Protein Interactions

Sylvain Pitre; Alamgir; James R. Green; Michel Dumontier; Frank K. H. A. Dehne; Ashkan Golshani

Protein-protein interactions (PPIs) play a critical role in many cellular functions. A number of experimental techniques have been applied to discover PPIs; however, these techniques are expensive in terms of time, money, and expertise. There are also large discrepancies between the PPI data collected by the same or different techniques in the same organism. We therefore turn to computational techniques for the prediction of PPIs. Computational techniques have been applied to the collection, indexing, validation, analysis, and extrapolation of PPI data. This chapter will focus on computational prediction of PPI, reviewing a number of techniques including PIPE, developed in our own laboratory. For comparison, the conventional large-scale approaches to predict PPIs are also briefly discussed. The chapter concludes with a discussion of the limitations of both experimental and computational methods of determining PPIs.


BMC Chemical Biology | 2010

Chemical-genetic profile analysis of five inhibitory compounds in yeast.

Alamgir; Veronika Erukova; Matthew Jessulat; Ali Azizi; Ashkan Golshani

Background Chemical-genetic profiling of inhibitory compounds can lead to identification of their modes of action. These profiles can help elucidate the complex interactions between small bioactive compounds and the cell machinery, and explain putative gene function(s). Results Colony size reduction was used to investigate the chemical-genetic profile of cycloheximide, 3-amino-1,2,4-triazole, paromomycin, streptomycin and neomycin in the yeast Saccharomyces cerevisiae. These compounds target the process of protein biosynthesis. More than 70,000 strains were analyzed from the array of gene deletion mutant yeast strains. As expected, the overall profiles of the tested compounds were similar, with deletions for genes involved in protein biosynthesis being the major category followed by metabolism. This implies that novel genes involved in protein biosynthesis could be identified from these profiles. Further investigations were carried out to assess the activity of three profiled genes in the process of protein biosynthesis using relative fitness of double mutants and other genetic assays. Conclusion Chemical-genetic profiles provide insight into the molecular mechanism(s) of the examined compounds by elucidating their potential primary and secondary cellular target sites. Our follow-up investigations into the activity of three profiled genes in the process of protein biosynthesis provided further evidence concerning the usefulness of chemical-genetic analyses for annotating gene functions. We termed these genes TAE2, TAE3 and TAE4 for translation associated elements 2-4.


BMC Genomics | 2008

Chemical-genetic profile analysis in yeast suggests that a previously uncharacterized open reading frame, YBR261C, affects protein synthesis

Alamgir; Veronika Eroukova; Matthew Jessulat; Jianhua Xu; Ashkan Golshani

BackgroundFunctional genomics has received considerable attention in the post-genomic era, as it aims to identify function(s) for different genes. One way to study gene function is to investigate the alterations in the responses of deletion mutants to different stimuli. Here we investigate the genetic profile of yeast non-essential gene deletion array (yGDA, ~4700 strains) for increased sensitivity to paromomycin, which targets the process of protein synthesis.ResultsAs expected, our analysis indicated that the majority of deletion strains (134) with increased sensitivity to paromomycin, are involved in protein biosynthesis. The remaining strains can be divided into smaller functional categories: metabolism (45), cellular component biogenesis and organization (28), DNA maintenance (21), transport (20), others (38) and unknown (39). These may represent minor cellular target sites (side-effects) for paromomycin. They may also represent novel links to protein synthesis. One of these strains carries a deletion for a previously uncharacterized ORF, YBR261C, that we term TAE1 for Translation Associated Element 1. Our focused follow-up experiments indicated that deletion of TAE1 alters the ribosomal profile of the mutant cells. Also, gene deletion strain for TAE1 has defects in both translation efficiency and fidelity. Miniaturized synthetic genetic array analysis further indicates that TAE1 genetically interacts with 16 ribosomal protein genes. Phenotypic suppression analysis using TAE1 overexpression also links TAE1 to protein synthesis.ConclusionWe show that a previously uncharacterized ORF, YBR261C, affects the process of protein synthesis and reaffirm that large-scale genetic profile analysis can be a useful tool to study novel gene function(s).


Expert Opinion on Drug Discovery | 2011

Recent advances in protein-protein interaction prediction: experimental and computational methods.

Matthew Jessulat; Sylvain Pitre; Yuan Gui; Mohsen Hooshyar; Katayoun Omidi; Bahram Samanfar; Le Hoa Tan; Alamgir; James R. Green; Frank K. H. A. Dehne; Ashkan Golshani

Introduction: Proteins within the cell act as part of complex networks, which allow pathways and processes to function. Therefore, understanding how proteins interact is a significant area of current research. Areas covered: This review aims to present an overview of key experimental techniques (yeast two-hybrid, tandem affinity purification and protein microarrays) used to discover protein–protein interactions (PPIs), as well as to briefly discuss certain computational methods for predicting protein interactions based on gene localization, phylogenetic information, 3D structural modeling or primary protein sequence data. Due to the large-scale applicability of primary sequence-based methods, the authors have chosen to focus on this strategy for our review. There is an emphasis on a recent algorithm called Protein Interaction Prediction Engine (PIPE) that can predict global PPIs. The readers will discover recent advances both in the practical determination of protein interaction and the strategies that are available to attempt to anticipate interactions without the time and costs of experimental work. Expert opinion: Global PPI maps can help understand the biology of complex diseases and facilitate the identification of novel drug target sites. This study describes different techniques used for PPI prediction that we believe will significantly impact the development of the field in a new future. We expect to see a growing number of similar techniques capable of large-scale PPI predictions.


Methods of Molecular Biology | 2009

In vivo investigation of protein-protein interactions for helicases using tandem affinity purification.

Matthew Jessulat; Terry Buist; Alamgir; Mohsen Hooshyar; Jianhua Xu; Hiroyuki Aoki; M. Clelia Ganoza; Gareth Butland; Ashkan Golshani

A key component in determining the functional role of any protein is the elucidation of its binding partners using protein-protein interaction (PPI) data. Here we examine the use of tandem affinity purification (TAP) tagging to study RNA/DNA helicase PPIs in Escherichia coli. The tag, which consists of a calmodulin-binding region, a TEV protease recognition sequence, and an IgG-binding domain, is introduced into E. coli using a lambdared recombination system. This method prevents the overproduction of the target protein, which could generate false interactions. The interacting proteins are then affinity purified using double affinity purification steps and are separated by SDS-PAGE followed by mass spectrometry identification. Each protein identified would represent a physical interaction in the cell. These interactions may potentially be mediated by an RNA/DNA template, for which the helicase would likely be needed to disrupt the secondary structures.


Archives of Biochemistry and Biophysics | 2008

Interacting proteins Rtt109 and Vps75 affect the efficiency of non-homologous end-joining in Saccharomyces cerevisiae.

Matthew Jessulat; Alamgir; Hamid Salsali; Jack Greenblatt; Jianhua Xu; Ashkan Golshani


BMC Bioinformatics | 2014

Efficient prediction of human protein-protein interactions at a global scale.

Andrew Schoenrock; Bahram Samanfar; Sylvain Pitre; Mohsen Hooshyar; Ke Jin; Charles A. Phillips; Hui Wang; Sadhna Phanse; Katayoun Omidi; Yuan Gui; Alamgir; Alex Wong; Fredrik Barrenäs; Mohan Babu; Mikael Benson; Michael A. Langston; James R. Green; Frank K. H. A. Dehne; Ashkan Golshani


Molecular BioSystems | 2013

Large-scale investigation of oxygen response mutants in Saccharomyces cerevisiae.

Bahram Samanfar; Katayoun Omidi; Mohsen Hooshyar; Ben Laliberte; Alamgir; Andrew J. Seal; Eman Ahmed-Muhsin; Duber Frey Viteri; Kamaleldin Said; Firoozeh Chalabian; Ardeshir Golshani; Gabriel A. Wainer; Daniel Burnside; Kristina Shostak; Magdalena Bugno; William G. Willmore; Myron L. Smith; Ashkan Golshani


Molecular BioSystems | 2014

A global investigation of gene deletion strains that affect premature stop codon bypass in yeast, Saccharomyces cerevisiae

Bahram Samanfar; Le Hoa Tan; Kristina Shostak; Firoozeh Chalabian; Zongbin Wu; Alamgir; Noor Sunba; Daniel Burnside; Katayoun Omidi; Mohsen Hooshyar; Imelda Galván Márquez; Matthew Jessulat; Myron L. Smith; Mohan Babu; Ali Azizi; Ashkan Golshani

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