Genome Biology (Nov 2024)

CaClust: linking genotype to transcriptional heterogeneity of follicular lymphoma using BCR and exomic variants

  • Kazimierz Oksza-Orzechowski,
  • Edwin Quinten,
  • Shadi Shafighi,
  • Szymon M. Kiełbasa,
  • Hugo W. van Kessel,
  • Ruben A. L. de Groen,
  • Joost S. P. Vermaat,
  • Julieta H. Sepúlveda Yáñez,
  • Marcelo A. Navarrete,
  • Hendrik Veelken,
  • Cornelis A. M. van Bergen,
  • Ewa Szczurek

DOI
https://doi.org/10.1186/s13059-024-03417-1
Journal volume & issue
Vol. 25, no. 1
pp. 1 – 31

Abstract

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Abstract Tumours exhibit high genotypic and transcriptional heterogeneity. Both affect cancer progression and treatment, but have been predominantly studied separately in follicular lymphoma. To comprehensively investigate the evolution and genotype-to-phenotype maps in follicular lymphoma, we introduce CaClust, a probabilistic graphical model integrating deep whole exome, single-cell RNA and B-cell receptor sequencing data to infer clone genotypes, cell-to-clone mapping, and single-cell genotyping. CaClust outperforms a state-of-the-art model on simulated and patient data. In-depth analyses of single cells from four samples showcase effects of driver mutations, follicular lymphoma evolution, possible therapeutic targets, and single-cell genotyping that agrees with an independent targeted resequencing experiment.

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