Revisiting the Briggs Ancient DNA Damage Model: A Fast Maximum Likelihood Method to Estimate Post-Mortem Damage

Lei Zhao, Rasmus Amund Henriksen, Abigail Ramsøe, Rasmus Nielsen, Thorfinn Sand Korneliussen

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

One essential initial step in the analysis of ancient DNA is to authenticate that the DNA sequencing reads are actually from ancient DNA. This is done by assessing if the reads exhibit typical characteristics of post-mortem damage (PMD), including cytosine deamination and nicks. We present a novel statistical method implemented in a fast multithreaded programme, ngsBriggs that enables rapid quantification of PMD by estimation of the Briggs ancient damage model parameters (Briggs parameters). Using a multinomial model with maximum likelihood fit, ngsBriggs accurately estimates the parameters of the Briggs model, quantifying the PMD signal from single and double-stranded DNA regions. We extend the original Briggs model to capture PMD signals for contemporary sequencing platforms and show that ngsBriggs accurately estimates the Briggs parameters across a variety of contamination levels. Classification of reads into ancient or modern reads, for the purpose of decontamination, is significantly more accurate using ngsBriggs than using other methods available. Furthermore, ngsBriggs is substantially faster than other state-of-the-art methods. ngsBriggs offers a practical and accurate method for researchers seeking to authenticate ancient DNA and improve the quality of their data.

Original languageEnglish
Article numbere14029
JournalMolecular Ecology Resources
Volume25
Issue number1
DOIs
StatePublished - Jan 2025

Keywords

  • DNA deamination
  • ancient DNA
  • high-throughput data
  • maximum likelihood estimation
  • posterior ancient probability
  • statistical inference

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