Systematic discovery of gene fusions in pediatric cancer by integrating RNA-seq and WGS

Publication date

2023-12

Authors

van Belzen, Ianthe A.E.M.
Cai, Casey
van Tuil, Marc
Badloe, Shashi
Strengman, Eric
Janse, Alex
Verwiel, Eugène T.P.
van der Leest, Douwe F.M.
Kester, Lennart A
Molenaar, Jan J.

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Advisors

Supervisors

Document Type

Article

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cc_by

Abstract

Background: Gene fusions are important cancer drivers in pediatric cancer and their accurate detection is essential for diagnosis and treatment. Clinical decision-making requires high confidence and precision of detection. Recent developments show RNA sequencing (RNA-seq) is promising for genome-wide detection of fusion products but hindered by many false positives that require extensive manual curation and impede discovery of pathogenic fusions. Methods: We developed Fusion-sq to overcome existing disadvantages of detecting gene fusions. Fusion-sq integrates and “fuses” evidence from RNA-seq and whole genome sequencing (WGS) using intron–exon gene structure to identify tumor-specific protein coding gene fusions. Fusion-sq was then applied to the data generated from a pediatric pan-cancer cohort of 128 patients by WGS and RNA sequencing. Results: In a pediatric pan-cancer cohort of 128 patients, we identified 155 high confidence tumor-specific gene fusions and their underlying structural variants (SVs). This includes all clinically relevant fusions known to be present in this cohort (30 patients). Fusion-sq distinguishes healthy-occurring from tumor-specific fusions and resolves fusions in amplified regions and copy number unstable genomes. A high gene fusion burden is associated with copy number instability. We identified 27 potentially pathogenic fusions involving oncogenes or tumor-suppressor genes characterized by underlying SVs, in some cases leading to expression changes indicative of activating or disruptive effects. Conclusions: Our results indicate how clinically relevant and potentially pathogenic gene fusions can be identified and their functional effects investigated by combining WGS and RNA-seq. Integrating RNA fusion predictions with underlying SVs advances fusion detection beyond extensive manual filtering. Taken together, we developed a method for identifying candidate gene fusions that is suitable for precision oncology applications. Our method provides multi-omics evidence for assessing the pathogenicity of tumor-specific gene fusions for future clinical decision making.

Keywords

Chimeric transcripts, Gene fusions, Pediatric cancer, RNA sequencing, Structural variants, Whole genome sequencing, Oncology, Genetics, Cancer Research

Citation

van Belzen, I A E M, Cai, C, van Tuil, M, Badloe, S, Strengman, E, Janse, A, Verwiel, E T P, van der Leest, D F M, Kester, L, Molenaar, J J, Meijerink, J, Drost, J, Peng, W C, Kerstens, H H D, Tops, B B J, Holstege, F C P, Kemmeren, P & Hehir-Kwa, J Y 2023, 'Systematic discovery of gene fusions in pediatric cancer by integrating RNA-seq and WGS', BMC Cancer, vol. 23, no. 1, 618. https://doi.org/10.1186/s12885-023-11054-3