Computational Methods and Data Analysis for Metabolomics

Computational Methods and Data Analysis for Metabolomics

Author: Shuzhao Li

Publisher: Humana

Published: 2020-01-18

Total Pages: 0

ISBN-13: 9781071602386

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This book provides a comprehensive guide to scientists, engineers, and students that employ metabolomics in their work, with an emphasis on the understanding and interpretation of the data. Chapters guide readers through common tools for data processing, using database resources, major techniques in data analysis, and integration with other data types and specific scientific domains. Written in the highly successful Methods in Molecular Biology series format, chapters include introductions to their respective topics, practical guidance of methods and techniques, useful web supplements, and connect the steps from experimental metabolomics to scientific discoveries. Authoritative and cutting-edge, Computational Methods and Data Analysis for Metabolomics to ensure successful results in the further study of this vital field.


Computational Methods for Identification and Characterization of Metabolites

Computational Methods for Identification and Characterization of Metabolites

Author: Gabriel Reder

Publisher:

Published: 2021

Total Pages:

ISBN-13:

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Metabolites are the small organic molecules that serve as the precursors to, actors in, and products of cellular metabolism. They create a unique dynamic fingerprint of a living system's chemical state, yet the metabolite composition of almost any biological sample cannot be completely determined using current methods. Liquid chromatography - mass spectrometers are workhorse instruments for analyzing metabolites and can detect analytes at ultra low concentrations. As such, untargeted metabolomics studies in which the global metabolite fingerprint of a system is measured generate incredibly rich datasets with signals coming from potentially thousands of metabolites. However, only a small fraction of the metabolite signals in an untargeted metabolomics dataset can be identified and mapped to a chemical structure. The work here describes the development of computational analysis tools for metabolite identification and characterization in untargeted metabolomics data to increase the amount of biochemical insight generated from a given study. First, a pipeline for mapping raw data to chemical features of interest is created, and this pipeline is used in the creation of a map of the human colon metabolome. Next, a supervised topic modeling approach is explored for the structural characterization of individual unknown molecules measured via tandem mass spectrometry. Finally, an approach for integrating mass spectrometry metabolite data from heterogeneous experimental sources and protocols is investigated. Together, these approaches represent advances towards more comprehensive and insightful analysis of metabolomics data using computational methods.


Computational Methods for Analyzing Metabolomics Data Using Metabolic Networks

Computational Methods for Analyzing Metabolomics Data Using Metabolic Networks

Author: Weiruo Zhang

Publisher:

Published: 2015

Total Pages:

ISBN-13:

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Metabolism provides energy for cells and organisms to grow, function and respond to their environment, so studying metabolism is fundamental to understanding how cells work. Ultimately, the ability to analyze and predict the effects of perturbations to metabolism will have profound impacts on applications ranging from bioengineering of microbes and plants to treating human disease. That understanding will come through the emerging field of metabolomics. The technology for acquiring high-throughput metabolomics data is advancing rapidly, as are efforts to curate comprehensive metabolic reaction networks. The goal of this work is to gain insight into metabolism by analyzing metabolomic data in the context of a metabolic network. In this study, first, we have developed a new metabolic network analysis method for genetic discovery. We have identified a new problem, which is to use steady state metabolomics data to find the underlying genetic cause of a phenotype. The solution is a qualitative analysis method which does not require quantitative reaction parameters and is robust even when the metabolomic data and network are incomplete. It could be used to predict genes that are responsible for metabolite concentration differences and identify drug targets. We validate the method on Saccharomyces Cerevisiae using single gene deletion mutants and drugs that were believed to target specific steps in metabolic pathways. Cells have evolved to maintain their metabolic homeostasis through various kinds of regulation. However, in current curated metabolic networks, the information about regulation is often missing. In second part of the study, we have developed a new computational method to predict regulatory targets in metabolic pathways using only steady state metabolite abundances. This method could be used to discover missing regulatory information in current curated metabolic networks. We demonstrate that the method can predict useful regulatory targets in Saccharomyces Cerevisiae ergosterol pathway. Third, large-scale in vivo measurements of the metabolome could potentially be used to estimate kinetic parameters for many metabolic reactions. However, in vivo measurements have special properties that are not taken into account in existing methods for estimating kinetic parameters. In vivo measurements of metabolite concentrations and reaction rates have relative errors. Also, reactions in metabolic networks often have multiple substrates and products and are sometimes reversible enzymatic reactions. Therefore, new method is needed to estimate kinetic parameters taking into account both factors. A new method, InVEst (In Vivo Estimation), is described for estimating reaction kinetic parameters, which addresses the specific challenges of in vivo data. InVEst uses maximum likelihood estimation based on a model where all measurements have relative errors. It can be applied to a family of reversible reactions with multiple substrates and products with single displacement mechanism. It also estimates the standard errors of parameter estimations using the bootstrap. Finally, we have developed a mass spectrometry data analysis tool for targeted analysis based on a database-driven algorithm. With this tool, compound identification is an automatic process which could help reduce the extensive manual processing required in current mass spectrometry data analysis.


Metabolomics

Metabolomics

Author: Ute Roessner

Publisher: IntechOpen

Published: 2012-02-10

Total Pages: 376

ISBN-13: 9789535100461

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Metabolomics is a rapidly emerging field in life sciences, which aims to identify and quantify metabolites in a biological system. Analytical chemistry is combined with sophisticated informatics and statistics tools to determine and understand metabolic changes upon genetic or environmental perturbations. Together with other 'omics analyses, such as genomics and proteomics, metabolomics plays an important role in functional genomics and systems biology studies in any biological science. This book will provide the reader with summaries of the state-of-the-art of technologies and methodologies, especially in the data analysis and interpretation approaches, as well as give insights into exciting applications of metabolomics in human health studies, safety assessments, and plant and microbial research.