Litcius/Paper detail

SIEVE: joint inference of single-nucleotide variants and cell phylogeny from single-cell DNA sequencing data

Senbai Kang, Nico Borgsmüller, Monica Valecha, Jack Kuipers, João M. Alves, Sonia Prado‐Lòpez, Débora Chantada, Niko Beerenwinkel, David Posada, Ewa Szczurek

2022Genome biology20 citationsDOIOpen Access PDF

Abstract

We present SIEVE, a statistical method for the joint inference of somatic variants and cell phylogeny under the finite-sites assumption from single-cell DNA sequencing. SIEVE leverages raw read counts for all nucleotides and corrects the acquisition bias of branch lengths. In our simulations, SIEVE outperforms other methods in phylogenetic reconstruction and variant calling accuracy, especially in the inference of homozygous variants. Applying SIEVE to three datasets, one for triple-negative breast (TNBC), and two for colorectal cancer (CRC), we find that double mutant genotypes are rare in CRC but unexpectedly frequent in the TNBC samples.

Topics & Concepts

BiologySieve (category theory)PhylogeneticsDNA sequencingPhylogenetic treeComputational biologyInferenceGeneticsDNAEvolutionary biologyGeneArtificial intelligenceComputer scienceMathematicsCombinatoricsCancer Genomics and DiagnosticsSingle-cell and spatial transcriptomicsGenetic factors in colorectal cancer