In Silico Prediction of Host-pathogen Protein - Protein Interactions in the Malaria Parasite, Plasmodium Falciparum

In Silico Prediction of Host-pathogen Protein - Protein Interactions in the Malaria Parasite, Plasmodium Falciparum

Author: Christiaan Jacobus Odendaal

Publisher:

Published: 2013

Total Pages:

ISBN-13:

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Malaria claims millions of lives annually. This global killer causes approximately 2.7 million annual deaths worldwide: addressing this problem has become more and more crucial. Due to pathogen evolution no efficient vaccine for treatment of malaria currently exists. As infection has developed as a field of study, it became ever more clear that infections could only be understood within the context of the host-pathogen community. This project aims to predict possible drug targets based on host-pathogen interactions rather than just protein-protein interactions within a single organism. Similar to Lee et al. (2008) pathogen-host interaction predictions are based on orthology, these interactions are then analysed to identify potential drug targets. This could potentially aid researchers in their continuous battle against malaria and the larger scale battle against pathogen evolution. To predict in vitro host-pathogen interactions DISCOVERY uses an ortholog clustering method called ORTHOMCL. ORTHOMCL is very suitable for ortholog clustering of malaria data for two reasons. Firstly, it is capable of distinguishing between recent paralogs and ancient paralogs, which enables the inclusion of recent paralogs together with orthologs. Secondly, ORTHOMCL was initially developed for the use of malaria data. Identification of in vitro interactions is followed by scoring methods to determine the possible in vivo interactions that might occur between the Plasmodium parasite and the human and mosquito hosts. Scoring measures and weights were applied to 5 different factors to calculate a final score. These final scores allow user input to define the preferred stringency when viewing possible interactions with a single protein. These different factors are sequence similarity, PEXEL/VTS motif presence, microarray expression, metabolic map sharing and sub-cellular locations boundaries. DISCOVERY S results and results from two other (Dyer et al. and Lee et al.) in silico prediction methods were compared with Vignali et al's experimental interactions which are based on a yeast two-hybrid approach. Similar to results shown by Doolittle and Gomez these comparisons had poor results. The next step was to compare the in silico results with each other. Dyer et al's and Lee et al's results compared poorly with each other. Although DISCOVERY did not compare well with Dyer et al's results, comparisons with Lee et al. showed more promise. Poor comparisons with Dyer et al. may be due to their unique approach to predict in vitro host-pathogen interactions. This project identified the lack of enough valid and reliable experimental data to evaluate in silico prediction methods as a definite challenge for host-pathogen interaction predictors. Although this is a major problem, DISCOVERY improved on older prediction methods with the use of a more applicable ortholog clustering technique and the use of more assessment methods during in vivo interaction predictions. DISCOVERY also used scoring methods rather than exclusion methods during the identification of in vivo interactions. This allows a user to specify a threshold of sensitivity when viewing interactions. The true potential of host-pathogen interaction predictions would only be realized when the gap between predictions and evaluation data is bridged.


Protein-Protein Interactions in Malaria

Protein-Protein Interactions in Malaria

Author: Kailash Pandey

Publisher:

Published: 2019

Total Pages: 0

ISBN-13:

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Malaria is one of the most deadly diseases infecting humans. Advances in elimination and vector control have reduced the global malaria burden in the past decade; however, the emerging threat of drug resistance and suboptimal vaccine efficacies threaten global eradication efforts. Unlocking novel drug and vaccine targets while simultaneously mitigating spread of resistant strains seems to be the need of the hour. Protein-protein interactions (PPIs), an integral part of host-pathogen cross-talk and parasite survival, have only recently emerged as promising drug targets. Large PPI networks (interactome) are being developed to better our understanding of various parasite biochemical pathways. In this chapter, we throw light on several newly characterized protein-protein interactions between the host (humans) and parasite (plasmodium) in key processes such as hemoglobin degradation, enzyme regulation, protein export, egress, invasion, and drug resistance and further discuss their viability for development as novel chemotherapeutic targets.


Rodent Malaria

Rodent Malaria

Author: R. Killick-Kendrick

Publisher: Elsevier

Published: 2012-12-02

Total Pages: 435

ISBN-13: 0323150578

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Rodent Malaria reviews significant findings concerning malaria parasites of rodents, including their taxonomy, zoogeography, and evolution, along with life cycles and morphology; genetics and biochemistry; and concomitant infections. This volume is organized into eight chapters and begins by sketching out the history of the discovery of rodent as well as aspects of parasitology, immunology, and chemotherapy. These concepts are investigated two decades following Ignace Vincke's major discovery and Meir Yoeli's successful establishment of the method of cyclical transmission of the parasite. The following chapters focus on the taxonomy and systematics of the subgenus Vinckeia, with reference to the concepts of species and subspecies of animals and the degree to which they apply to malaria parasites, in particular to those of rodents. The discussion then shifts to how the rodent malaria parasites provide a unique insight into the subcellular organization of Plasmodium species, the use of rodent malaria as an experimental model to study immunological responses, and infectious agents that interact with malaria parasites. The book concludes with a chapter on malaria chemotherapy, with emphasis on the value of rodent malaria in antimalarial drug screening and the use of antimalarial drugs as biological probes. This book will be of interest to protozoologists and physicians as well as those from other disciplines including biochemistry, immunology, pharmacology, cell biology, and genetics.


Scientific Frontiers in Developmental Toxicology and Risk Assessment

Scientific Frontiers in Developmental Toxicology and Risk Assessment

Author: National Research Council

Publisher: National Academies Press

Published: 2000-12-21

Total Pages: 348

ISBN-13: 0309070864

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Scientific Frontiers in Developmental Toxicology and Risk Assessment reviews advances made during the last 10-15 years in fields such as developmental biology, molecular biology, and genetics. It describes a novel approach for how these advances might be used in combination with existing methodologies to further the understanding of mechanisms of developmental toxicity, to improve the assessment of chemicals for their ability to cause developmental toxicity, and to improve risk assessment for developmental defects. For example, based on the recent advances, even the smallest, simplest laboratory animals such as the fruit fly, roundworm, and zebrafish might be able to serve as developmental toxicological models for human biological systems. Use of such organisms might allow for rapid and inexpensive testing of large numbers of chemicals for their potential to cause developmental toxicity; presently, there are little or no developmental toxicity data available for the majority of natural and manufactured chemicals in use. This new approach to developmental toxicology and risk assessment will require simultaneous research on several fronts by experts from multiple scientific disciplines, including developmental toxicologists, developmental biologists, geneticists, epidemiologists, and biostatisticians.


Biological Data Mining in Protein Interaction Networks

Biological Data Mining in Protein Interaction Networks

Author: Li, Xiao-Li

Publisher: IGI Global

Published: 2009-05-31

Total Pages: 450

ISBN-13: 1605663999

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"The goal of this book is to disseminate research results and best practices from cross-disciplinary researchers and practitioners interested in, and working on bioinformatics, data mining, and proteomics"--Provided by publisher.


Computational Systems Biology of Pathogen-Host Interactions

Computational Systems Biology of Pathogen-Host Interactions

Author: Saliha Durmuş

Publisher: Frontiers Media SA

Published: 2016-05-30

Total Pages: 200

ISBN-13: 2889198219

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A thorough understanding of pathogenic microorganisms and their interactions with host organisms is crucial to prevent infectious threats due to the fact that Pathogen-Host Interactions (PHIs) have critical roles in initiating and sustaining infections. Therefore, the analysis of infection mechanisms through PHIs is indispensable to identify diagnostic biomarkers and next-generation drug targets and then to develop strategic novel solutions against drug-resistance and for personalized therapy. Traditional approaches are limited in capturing mechanisms of infection since they investigate hosts or pathogens individually. On the other hand, the systems biology approach focuses on the whole PHI system, and is more promising in capturing infection mechanisms. Here, we bring together studies on the below listed sections to present the current picture of the research on Computational Systems Biology of Pathogen-Host Interactions: - Computational Inference of PHI Networks using Omics Data - Computational Prediction of PHIs - Text Mining of PHI Data from the Literature - Mathematical Modeling and Bioinformatic Analysis of PHIs Computational Inference of PHI Networks using Omics Data Gene regulatory, metabolic and protein-protein networks of PHI systems are crucial for a thorough understanding of infection mechanisms. Great advances in molecular biology and biotechnology have allowed the production of related omics data experimentally. Many computational methods are emerging to infer molecular interaction networks of PHI systems from the corresponding omics data. Computational Prediction of PHIs Due to the lack of experimentally-found PHI data, many computational methods have been developed for the prediction of pathogen-host protein-protein interactions. Despite being emerging, currently available experimental PHI data are far from complete for a systems view of infection mechanisms through PHIs. Therefore, computational methods are the main tools to predict new PHIs. To this end, the development of new computational methods is of great interest. Text Mining of PHI Data from Literature Despite the recent development of many PHI-specific databases, most data relevant to PHIs are still buried in the biomedical literature, which demands for the use of text mining techniques to unravel PHIs hidden in the literature. Only some rare efforts have been performed to achieve this aim. Therefore, the development of novel text mining methods specific for PHI data retrieval is of key importance for efficient use of the available literature. Mathematical Modeling and Bioinformatic Analysis of PHIs After the reconstruction of PHI networks experimentally and/or computationally, their mathematical modeling and detailed computational analysis is required using bioinformatics tools to get insights on infection mechanisms. Bioinformatics methods are increasingly applied to analyze the increasing amount of experimentally-found and computationally-predicted PHI data.


Lewin's Essential GENES

Lewin's Essential GENES

Author: Benjamin Lewin

Publisher: Jones & Bartlett Publishers

Published: 2011-04-18

Total Pages: 832

ISBN-13: 1449655831

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The Second Edition of Lewin's Essential GENES continues to provide students with the latest findings in the field of molecular biology and molecular genetics. An exceptional new pedagogy enhances student learning and helps readers understand and retain key material like never before. New Concept and Reasoning Checks at the end of each chapter section, End of Chapter Questions and Further Readings for each chapter, and several categories of special topics boxes within each chapter expand and reinforce important concepts. The reorganization of topics in this edition allows students to focus more sharply on the key material at hand and improves the natural flow of course material. New end-of-chapter questions reviews major points in the chapter and allow students to test themselves on important course material. Important Notice: The digital edition of this book is missing some of the images or content found in the physical edition.


Handbook of Statistical Systems Biology

Handbook of Statistical Systems Biology

Author: Michael Stumpf

Publisher: John Wiley & Sons

Published: 2011-09-09

Total Pages: 624

ISBN-13: 1119952042

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Systems Biology is now entering a mature phase in which the key issues are characterising uncertainty and stochastic effects in mathematical models of biological systems. The area is moving towards a full statistical analysis and probabilistic reasoning over the inferences that can be made from mathematical models. This handbook presents a comprehensive guide to the discipline for practitioners and educators, in providing a full and detailed treatment of these important and emerging subjects. Leading experts in systems biology and statistics have come together to provide insight in to the major ideas in the field, and in particular methods of specifying and fitting models, and estimating the unknown parameters. This book: Provides a comprehensive account of inference techniques in systems biology. Introduces classical and Bayesian statistical methods for complex systems. Explores networks and graphical modeling as well as a wide range of statistical models for dynamical systems. Discusses various applications for statistical systems biology, such as gene regulation and signal transduction. Features statistical data analysis on numerous technologies, including metabolic and transcriptomic technologies. Presents an in-depth presentation of reverse engineering approaches. Provides colour illustrations to explain key concepts. This handbook will be a key resource for researchers practising systems biology, and those requiring a comprehensive overview of this important field.