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Comparative Genomics

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Comparative Genomics
Springer US

Table of Contents

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    Book Overview
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    Chapter 1 The Theory of Gene Family Histories.
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    Chapter 2 Protein-Coding Gene Families in Prokaryote Genome Comparisons.
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    Chapter 3 Family-Free Genome Comparison.
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    Chapter 4 Methods for Pangenomic Core Detection.
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    Chapter 5 Step-by-Step Bacterial Genome Comparison.
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    Chapter 6 How to Obtain and Compare Metagenome-Assembled Genomes.
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    Chapter 7 Comparative Genome Annotation.
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    Chapter 8 Annotation and Comparative Genomics of Prokaryotic Transposable Elements.
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    Chapter 9 Genome Rearrangement Analysis : Cut and Join Genome Rearrangements and Gene Cluster Preserving Approaches.
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    Chapter 10 AGO, a Framework for the Reconstruction of Ancestral Syntenies and Gene Orders.
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    Chapter 11 A Guide to Phylogenomic Inference.
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    Chapter 12 Comparative RNA Genomics.
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    Chapter 13 Bioinformatic Approaches for Comparative Analysis of Viruses.
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    Chapter 14 Comparative Analyses of Bacteriophage Genomes.
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    Chapter 15 Comparative Genomics of Sex, Chromosomes, and Sex Chromosomes in Caenorhabditis elegans and Other Nematodes.
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    Chapter 16 Comparative Evolutionary Genomics in Insects.
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    Chapter 17 Comparative Methods for Demystifying Spatial Transcriptomics.
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    Chapter 18 Comparative Genomic Analysis of Bacterial Data in BV-BRC: An Example Exploring Antimicrobial Resistance.
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    Chapter 19 VEuPathDB Resources: A Platform for Free Online Data Exploration, Integration, and Analysis.
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    Chapter 20 A Practical Approach to Using the Genomic Standards Consortium MIxS Reporting Standard for Comparative Genomics and Metagenomics.
Attention for Chapter 17: Comparative Methods for Demystifying Spatial Transcriptomics.
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Chapter title
Comparative Methods for Demystifying Spatial Transcriptomics.
Chapter number 17
Book title
Comparative Genomics
Published by
Humana, New York, NY, January 2024
DOI 10.1007/978-1-0716-3838-5_17
Pubmed ID
Book ISBNs
978-1-07-163837-8, 978-1-07-163838-5
Authors

Michael Sammeth, Susann Mudra, Sina Bialdiga, Beate Hartmannsberger, Sofia Kramer, Heike Rittner

Abstract

Spatial Transcriptomics (ST), coined as the term for parallel RNA-Seq on cell populations ordered spatially on a histological tissue section, has recently become increasingly popular, especially in experiments where microfluidics-based single-cell sequencing fails, such as assays on neurons. ST platforms, like the 10x Visium technology investigated herein, therefore produce in a single experiment simultaneously thousands of RNA readouts, captured by an array of micrometer scale spots under the histological section. Therefore, a central challenge of analyzing ST experiments consists of analyzing the gene expression morphology of all spots to delineate clusters of similar cell mixtures, which are then compared to each other to identify up- or down-regulated marker genes. Moreover, another level of complexity in ST experiments, compared to traditional RNA-Seq, is imposed by staining the tissue section with protein markers of cells or cell components to identify spots providing relevant information afterward. The corresponding microscopy images need to be analyzed in addition to the RNA-Seq read mappings on the reference genome and transcriptome sequences. Focusing on the software suite provided by the Visium platform manufacturer, we break down the ST analysis pipeline into its four essential steps-the image analysis, the read alignment, the gene quantification, and the spot clustering-and compare results obtained when using reads from different subsets of spots and/or when employing alternative genome or transcriptome references. Our comparative analyses demonstrate the impact of spot selection and the choice of genome/transcriptome references on the analysis results when employing the manufacturer's pipeline.

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