Genome Biology (May 2020)

CICERO: a versatile method for detecting complex and diverse driver fusions using cancer RNA sequencing data

  • Liqing Tian,
  • Yongjin Li,
  • Michael N. Edmonson,
  • Xin Zhou,
  • Scott Newman,
  • Clay McLeod,
  • Andrew Thrasher,
  • Yu Liu,
  • Bo Tang,
  • Michael C. Rusch,
  • John Easton,
  • Jing Ma,
  • Eric Davis,
  • Austyn Trull,
  • J. Robert Michael,
  • Karol Szlachta,
  • Charles Mullighan,
  • Suzanne J. Baker,
  • James R. Downing,
  • David W. Ellison,
  • Jinghui Zhang

DOI
https://doi.org/10.1186/s13059-020-02043-x
Journal volume & issue
Vol. 21, no. 1
pp. 1 – 18

Abstract

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Abstract To discover driver fusions beyond canonical exon-to-exon chimeric transcripts, we develop CICERO, a local assembly-based algorithm that integrates RNA-seq read support with extensive annotation for candidate ranking. CICERO outperforms commonly used methods, achieving a 95% detection rate for 184 independently validated driver fusions including internal tandem duplications and other non-canonical events in 170 pediatric cancer transcriptomes. Re-analysis of TCGA glioblastoma RNA-seq unveils previously unreported kinase fusions (KLHL7-BRAF) and a 13% prevalence of EGFR C-terminal truncation. Accessible via standard or cloud-based implementation, CICERO enhances driver fusion detection for research and precision oncology. The CICERO source code is available at https://github.com/stjude/Cicero .

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