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section-ancient-metagenomic-resources.qmd
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section-ancient-metagenomic-resources.qmd
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---
title: Ancient Metagenomic Resources
---
Following the earlier chapters, you should now be familiar with the basic concepts of the practical aspects of the ancient metagenomic project. However, as with all bioinformaticians, we like to automate as much of our work as possible. In this chapter, we will introduce you to some of the dedicated resources to address this, covering both where and how to find ancient metagenomic data, but also how to speed up the analyses introduced earlier through automated pipelines.
## [Accessing Ancient Metagenome Data](accessing-ancient-metagenomic-data.qmd)
Finding relevant comparative data for your ancient metagenomic analysis is not trivial. While palaeogenomicists are very good at uploading their raw sequencing data to large sequencing data repositories such as the EBI's ENA or NCBI's SRA archives in standardised file formats, these files often have limited metadata. This often makes it difficult for researchers to search for and download relevent published data they wish to use use to augment their own analysis.
AncientMetagenomeDir is a community project from the SPAAM community to make ancient metagenomic data more accessible. We curate a list of standardised metadata of all published ancient metagenomic samples and libraries, hosted on GitHub. In this chapter we will go through how to use the AncientMetagenomeDir repository and associated tools to find and download data for your own analyses. We will also discuss important things to consider when publishing your own data to make it more accessible for other researchers.
## [Ancient Metagenomic Pipelines](ancient-metagenomic-pipelines.qmd)
Analyses in the field of ancient DNA are growing, both in terms of the number of samples processed and in the diversity of our research questions and analytical methods. Computational pipelines are a solution to the challenges of big data, helping researchers to perform analyses efficiently and in a reproducible fashion. Today we will introduce nf-core/eager, one of several pipelines designed specifically for the preprocessing, analysis, and authentication of ancient next-generation sequencing data.
In this chapter we will learn how to practically perform basic analyses with nf-core/eager, starting from raw data and performing preprocessing, alignment, and genotyping of several _Yersinia pestis_-positive samples. We will gain an appreciation of the diversity of analyses that can be performed within nf-core eager, as well as where to find additional information for customizing your own nf-core/eager runs. Finally, we will learn how to use nf-core/eager to evaluate the quality and authenticity of our ancient samples. After this session, you will be ready to strike out into the world of nf-core/eager and build your own analyses from scratch!