Please use this identifier to cite or link to this item: https://dora.health.qld.gov.au/qldresearchjspui/handle/1/5060
Title: Whole genome, transcriptome and methylome profiling enhances actionable target discovery in high-risk pediatric cancer
Authors: Abascal, Federico
Bolanos, Noemi A.
Baber, Jonathan
Priestley, Peter
Dolman, M. Emmy M.
Fleuren, Emmy D. G.
Gauthier, Marie-Emilie
Mould, Emily V. A.
Gayevskiy, Velimir
Gifford, Andrew J.
Grebert-Wade, Dylan
Strong, Patrick A.
Manouvrier, Elodie
Warby, Meera
Thomas, David M.
Kirk, Judy
Tucker, Katherine
O'Brien, Tracey
Alvaro, Frank
McCowage, Geoffry B.
Dalla-Pozza, Luciano
Gottardo, Nicholas G.
Tapp, Heather
Wood, Paul
Khaw, Seong-Lin
Hansford, Jordan R.
Moore, Andrew 
Norris, Murray D.
Trahair, Toby N.
Lock, Richard B.
Tyrrell, Vanessa
Haber, Michelle
Marshall, Glenn M.
Ziegler, David S.
Ekert, Paul G.
Cowley, Mark J.
Wong, Marie
Mayoh, Chelsea
Lau, Loretta M. S.
Khuong-Quang, Dong-Anh
Pinese, Mark
Kumar, Amit
Barahona, Paulette
Wilkie, Emilie E.
Sullivan, Patricia
Bowen-James, Rachel
Syed, Mustafa
Martincorena, Iñigo
Sherstyuk, Alexandra
Issue Date: 2020
Source: 26, (11), 2020, p. 1742-1753
Pages: 1742-1753
Journal: Nature medicine
Abstract: The Zero Childhood Cancer Program is a precision medicine program to benefit children with poor-outcome, rare, relapsed or refractory cancer. Using tumor and germline whole genome sequencing (WGS) and RNA sequencing (RNAseq) across 252 tumors from high-risk pediatric patients with cancer, we identified 968 reportable molecular aberrations (39.9% in WGS and RNAseq, 35.1% in WGS only and 25.0% in RNAseq only). Of these patients, 93.7% had at least one germline or somatic aberration, 71.4% had therapeutic targets and 5.2% had a change in diagnosis. WGS identified pathogenic cancer-predisposing variants in 16.2% of patients. In 76 central nervous system tumors, methylome analysis confirmed diagnosis in 71.1% of patients and contributed to a change of diagnosis in two patients (2.6%). To date, 43 patients have received a recommended therapy, 38 of whom could be evaluated, with 31% showing objective evidence of clinical benefit. 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DOI: 10.1038/s41591-020-1072-4
Resources: https://search.ebscohost.com/login.aspx?direct=true&AuthType=ip,athens&db=mdc&AN=33020650&site=ehost-live
Keywords: Whole Genome Sequencing;Child, Preschool;DNA Methylation/genetics;Female;Humans;Infant;Male;Mutation/genetics;Neoplasms/classification;Neoplasms/pathology;Pediatrics;Precision Medicine;Risk Factors;Whole Exome Sequencing;Transcriptome/*genetics;Adolescent;Child;Epigenome/*geneticsNeoplasm Proteins/*genetics;Neoplasms/*genetics
Type: Article
Appears in Sites:Children's Health Queensland Publications

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