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      MEMO: Mass Spectrometry-Based Sample Vectorization to Explore Chemodiverse Datasets

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          Abstract

          In natural products research, chemodiverse extracts coming from multiple organisms are explored for novel bioactive molecules, sometimes over extended periods. Samples are usually analyzed by liquid chromatography coupled with fragmentation mass spectrometry to acquire informative mass spectral ensembles. Such data is then exploited to establish relationships among analytes or samples (e.g., via molecular networking) and annotate metabolites. However, the comparison of samples profiled in different batches is challenging with current metabolomics methods since the experimental variation—changes in chromatographical or mass spectrometric conditions - hinders the direct comparison of the profiled samples. Here we introduce MEMO— MS2 Bas Ed Sa Mple Vect Orization—a method allowing to cluster large amounts of chemodiverse samples based on their LC-MS/MS profiles in a retention time agnostic manner. This method is particularly suited for heterogeneous and chemodiverse sample sets. MEMO demonstrated similar clustering performance as state-of-the-art metrics considering fragmentation spectra. More importantly, such performance was achieved without the requirement of a prior feature alignment step and in a significantly shorter computational time. MEMO thus allows the comparison of vast ensembles of samples, even when analyzed over long periods of time, and on different chromatographic or mass spectrometry platforms. This new addition to the computational metabolomics toolbox should drastically expand the scope of large-scale comparative analysis.

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          Most cited references42

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          SciPy 1.0: fundamental algorithms for scientific computing in Python

          SciPy is an open-source scientific computing library for the Python programming language. Since its initial release in 2001, SciPy has become a de facto standard for leveraging scientific algorithms in Python, with over 600 unique code contributors, thousands of dependent packages, over 100,000 dependent repositories and millions of downloads per year. In this work, we provide an overview of the capabilities and development practices of SciPy 1.0 and highlight some recent technical developments.
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            QIIME allows analysis of high-throughput community sequencing data.

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              UniFrac: a new phylogenetic method for comparing microbial communities.

              We introduce here a new method for computing differences between microbial communities based on phylogenetic information. This method, UniFrac, measures the phylogenetic distance between sets of taxa in a phylogenetic tree as the fraction of the branch length of the tree that leads to descendants from either one environment or the other, but not both. UniFrac can be used to determine whether communities are significantly different, to compare many communities simultaneously using clustering and ordination techniques, and to measure the relative contributions of different factors, such as chemistry and geography, to similarities between samples. We demonstrate the utility of UniFrac by applying it to published 16S rRNA gene libraries from cultured isolates and environmental clones of bacteria in marine sediment, water, and ice. Our results reveal that (i) cultured isolates from ice, water, and sediment resemble each other and environmental clone sequences from sea ice, but not environmental clone sequences from sediment and water; (ii) the geographical location does not correlate strongly with bacterial community differences in ice and sediment from the Arctic and Antarctic; and (iii) bacterial communities differ between terrestrially impacted seawater (whether polar or temperate) and warm oligotrophic seawater, whereas those in individual seawater samples are not more similar to each other than to those in sediment or ice samples. These results illustrate that UniFrac provides a new way of characterizing microbial communities, using the wealth of environmental rRNA sequences, and allows quantitative insight into the factors that underlie the distribution of lineages among environments.
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                Author and article information

                Contributors
                Journal
                Front Bioinform
                Front Bioinform
                Front. Bioinform.
                Frontiers in Bioinformatics
                Frontiers Media S.A.
                2673-7647
                13 April 2022
                2022
                : 2
                : 842964
                Affiliations
                [1] 1 Institute of Pharmaceutical Sciences of Western Switzerland , University of Geneva , Geneva, Switzerland
                [2] 2 School of Pharmaceutical Sciences , University of Geneva , Geneva, Switzerland
                [3] 3 Center for Digitalization and Digitality , HSD—Düsseldorf University of Applied Sciences , Düsseldorf, Germany
                [4] 4 Department of Medical and Parasitology and Infection Biology , Swiss Tropical and Public Health Institute , University of Basel , Basel, Switzerland
                [5] 5 Faculty of Science , University of Basel , Basel, Switzerland
                [6] 6 Department of Biology , University of Fribourg , Fribourg, Switzerland
                Author notes

                Edited by: Tao Zeng, Guangzhou labratory, China

                Reviewed by: Surendhar Reddy Chepyala, St. Jude Children’s Research Hospital, United States

                Sergio Martinez Cuesta, AstraZeneca, United Kingdom

                *Correspondence: Pierre-Marie Allard, pierre-marie.allard@ 123456unifr.ch

                This article was submitted to Integrative Bioinformatics, a section of the journal Frontiers in Bioinformatics

                Article
                842964
                10.3389/fbinf.2022.842964
                9580960
                36304329
                95317e29-b74e-492a-b74e-5503d51b73d4
                Copyright © 2022 Gaudry, Huber, Nothias, Cretton, Kaiser, Wolfender and Allard.

                This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

                History
                : 24 December 2021
                : 16 February 2022
                Categories
                Bioinformatics
                Original Research

                computational metabolomics,mass spectrometry,vectorization,natural products,drug discovery

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