AI Article Synopsis

  • Modern phylogenetic methods facilitate the reconstruction of ancestral molecular sequences, enhancing our understanding of evolutionary history and biological processes like adaptation.
  • The ARPIP algorithm introduces a fast joint likelihood-based approach for inferring ancestral sequences using a specific model for insertions and deletions, allowing for biologically meaningful interpretations of these events.
  • Testing ARPIP against both simulated and real datasets showed it accurately reconstructs ancestral sequences, outperforming established methods and offering potential for further study and varied applications in evolutionary biology.

Article Abstract

Modern phylogenetic methods allow inference of ancestral molecular sequences given an alignment and phylogeny relating present-day sequences. This provides insight into the evolutionary history of molecules, helping to understand gene function and to study biological processes such as adaptation and convergent evolution across a variety of applications. Here, we propose a dynamic programming algorithm for fast joint likelihood-based reconstruction of ancestral sequences under the Poisson Indel Process (PIP). Unlike previous approaches, our method, named ARPIP, enables the reconstruction with insertions and deletions based on an explicit indel model. Consequently, inferred indel events have an explicit biological interpretation. Likelihood computation is achieved in linear time with respect to the number of sequences. Our method consists of two steps, namely finding the most probable indel points and reconstructing ancestral sequences. First, we find the most likely indel points and prune the phylogeny to reflect the insertion and deletion events per site. Second, we infer the ancestral states on the pruned subtree in a manner similar to FastML. We applied ARPIP (Ancestral Reconstruction under PIP) on simulated data sets and on real data from the Betacoronavirus genus. ARPIP reconstructs both the indel events and substitutions with a high degree of accuracy. Our method fares well when compared to established state-of-the-art methods such as FastML and PAML. Moreover, the method can be extended to explore both optimal and suboptimal reconstructions, include rate heterogeneity through time and more. We believe it will expand the range of novel applications of ancestral sequence reconstruction. [Ancestral sequences; dynamic programming; evolutionary stochastic process; indel; joint ancestral sequence reconstruction; maximum likelihood; Poisson Indel Process; phylogeny; SARS-CoV.].

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10275563PMC
http://dx.doi.org/10.1093/sysbio/syac050DOI Listing

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