Genome Biology (Mar 2019)

clonealign: statistical integration of independent single-cell RNA and DNA sequencing data from human cancers

  • Kieran R. Campbell,
  • Adi Steif,
  • Emma Laks,
  • Hans Zahn,
  • Daniel Lai,
  • Andrew McPherson,
  • Hossein Farahani,
  • Farhia Kabeer,
  • Ciara O’Flanagan,
  • Justina Biele,
  • Jazmine Brimhall,
  • Beixi Wang,
  • Pascale Walters,
  • IMAXT Consortium,
  • Alexandre Bouchard-Côté,
  • Samuel Aparicio,
  • Sohrab P. Shah

DOI
https://doi.org/10.1186/s13059-019-1645-z
Journal volume & issue
Vol. 20, no. 1
pp. 1 – 12

Abstract

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Abstract Measuring gene expression of tumor clones at single-cell resolution links functional consequences to somatic alterations. Without scalable methods to simultaneously assay DNA and RNA from the same single cell, parallel single-cell DNA and RNA measurements from independent cell populations must be mapped for genome-transcriptome association. We present clonealign, which assigns gene expression states to cancer clones using single-cell RNA and DNA sequencing independently sampled from a heterogeneous population. We apply clonealign to triple-negative breast cancer patient-derived xenografts and high-grade serous ovarian cancer cell lines and discover clone-specific dysregulated biological pathways not visible using either sequencing method alone.