Integrative inference of subclonal tumour evolution from single-cell and bulk sequencing data.
Salem MalikicKatharina JahnJack KuipersS Cenk SahinalpNiko BeerenwinkelPublished in: Nature communications (2019)
Understanding the clonal architecture and evolutionary history of a tumour poses one of the key challenges to overcome treatment failure due to resistant cell populations. Previously, studies on subclonal tumour evolution have been primarily based on bulk sequencing and in some recent cases on single-cell sequencing data. Either data type alone has shortcomings with regard to this task, but methods integrating both data types have been lacking. Here, we present B-SCITE, the first computational approach that infers tumour phylogenies from combined single-cell and bulk sequencing data. Using a comprehensive set of simulated data, we show that B-SCITE systematically outperforms existing methods with respect to tree reconstruction accuracy and subclone identification. B-SCITE provides high-fidelity reconstructions even with a modest number of single cells and in cases where bulk allele frequencies are affected by copy number changes. On real tumour data, B-SCITE generated mutation histories show high concordance with expert generated trees.
Keyphrases
- single cell
- rna seq
- electronic health record
- big data
- copy number
- high throughput
- mitochondrial dna
- magnetic resonance imaging
- genome wide
- gene expression
- artificial intelligence
- computed tomography
- dna methylation
- cell death
- mesenchymal stem cells
- smoking cessation
- oxidative stress
- signaling pathway
- cell cycle arrest
- replacement therapy