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Reconstructing clonal tree for phylo-phenotypic characterization of cancer using single-cell transcriptomics.

Seong-Hwan JunHosein ToosiJeff MoldCamilla EngblomXinsong ChenCiara O'FlanaganMichael Hagemann-JensenRickard SandbergSamuel A J R AparicioJohan HartmanAndrew J RothJens Lagergren
Published in: Nature communications (2023)
Functional characterization of the cancer clones can shed light on the evolutionary mechanisms driving cancer's proliferation and relapse mechanisms. Single-cell RNA sequencing data provide grounds for understanding the functional state of cancer as a whole; however, much research remains to identify and reconstruct clonal relationships toward characterizing the changes in functions of individual clones. We present PhylEx that integrates bulk genomics data with co-occurrences of mutations from single-cell RNA sequencing data to reconstruct high-fidelity clonal trees. We evaluate PhylEx on synthetic and well-characterized high-grade serous ovarian cancer cell line datasets. PhylEx outperforms the state-of-the-art methods both when comparing capacity for clonal tree reconstruction and for identifying clones. We analyze high-grade serous ovarian cancer and breast cancer data to show that PhylEx exploits clonal expression profiles beyond what is possible with expression-based clustering methods and clear the way for accurate inference of clonal trees and robust phylo-phenotypic analysis of cancer.
Keyphrases
  • single cell
  • high grade
  • rna seq
  • papillary thyroid
  • squamous cell
  • electronic health record
  • high throughput
  • low grade
  • big data
  • gene expression
  • machine learning
  • dna methylation
  • young adults
  • deep learning
  • free survival