F1ALA: ultrafast and memory-efficient ancestral lineage annotation applied to the huge SARS-CoV-2 phylogeny

Author:

Ye Yongtao12,Shum Marcus H2,Wu Isaac2,Chau Carlos2,Zhao Ningqi2,Smith David K12,Wu Joseph T12,Lam Tommy T12345ORCID

Affiliation:

1. State Key Laboratory of Emerging Infectious Diseases, School of Public Health, The University of Hong Kong , Hong Kong SAR, P. R. China

2. Laboratory of Data Discovery for Health, 19W Hong Kong Science & Technology Parks , Hong Kong SAR, P. R. China

3. Guangdong-Hongkong Joint Laboratory of Emerging Infectious Diseases, Joint Institute of Virology (Shantou University/The University of Hong Kong) , Shantou, Guangdong 515063, P. R. China

4. EKIH (Gewuzhikang) Pathogen Research Institute , Futian District, Shenzhen City, Guangdong 518045, P. R. China

5. Centre for Immunology & Infection, 17W Hong Kong Science & Technology Parks , Hong Kong SAR, P. R. China

Abstract

Abstract The unprecedentedly large size of the global SARS-CoV-2 phylogeny makes any computation on the tree difficult. Lineage identification (e.g. the PANGO nomenclature for SARS-CoV-2) and assignment are key to track the virus evolution. It requires annotating clade roots of lineages to unlabeled ancestral nodes in a phylogenetic tree. Then the lineage labels of descendant samples under these clade roots can be inferred to be the corresponding lineages. This is the ancestral lineage annotation problem, and matUtils (a package in pUShER) and PastML are commonly used methods. However, their computational tractability is a challenge and their accuracy needs further exploration in huge SARS-CoV-2 phylogenies. We have developed an efficient and accurate method, called “F1ALA”, that utilizes the F1-score to evaluate the confidence with which a specific ancestral node can be annotated as the clade root of a lineage, given the lineage labels of a set of taxa in a rooted tree. Compared to these methods, F1ALA achieved roughly an order of magnitude faster yet with ∼12% of their memory usage when annotating 2277 PANGO lineages in a phylogeny of 5.26 million taxa. F1ALA allows real-time lineage tracking to be performed on a laptop computer. F1ALA outperformed matUtils (pUShER) with statistical significance, and had comparable accuracy to PastML in tests on empirical and simulated data. F1ALA enables a tree refinement by pruning taxa with inconsistent labels to their closest annotation nodes and re-inserting them back to the pruned tree to improve a SARS-CoV-2 phylogeny with both higher log-likelihood and lower parsimony score. Given the ultrafast speed and high accuracy, we anticipated that F1ALA will also be useful for large phylogenies of other viruses. Codes and benchmark datasets are publicly available at https://github.com/id-bioinfo/F1ALA.

Funder

Theme Based Research Scheme

Innovation and Technology Commission’s InnoHK

Health and Medical Research Fund

Publisher

Oxford University Press (OUP)

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