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SiFit: inferring tumor trees from single-cell sequencing data under finite-sites models.

Hamim ZafarAnthony TzenNicholas NavinKen ChenLuay K Nakhleh
Published in: Genome biology (2017)
Single-cell sequencing enables the inference of tumor phylogenies that provide insights on intra-tumor heterogeneity and evolutionary trajectories. Recently introduced methods perform this task under the infinite-sites assumption, violations of which, due to chromosomal deletions and loss of heterozygosity, necessitate the development of inference methods that utilize finite-sites models. We propose a statistical inference method for tumor phylogenies from noisy single-cell sequencing data under a finite-sites model. The performance of our method on synthetic and experimental data sets from two colorectal cancer patients to trace evolutionary lineages in primary and metastatic tumors suggests that employing a finite-sites model leads to improved inference of tumor phylogenies.
Keyphrases
  • single cell
  • rna seq
  • high throughput
  • electronic health record
  • small cell lung cancer
  • big data
  • squamous cell carcinoma
  • gene expression
  • genome wide
  • risk assessment
  • copy number
  • deep learning