Cancer is a genetic disease, but two patients rarely have identical genotypes. Similarly, patients differ in their clinicopathological parameters, but how genotypic and phenotypic heterogeneity are interconnected is not well understood. Here we build statistical models to disentangle the effect of 12 recurrently mutated genes and 4 cytogenetic alterations on gene expression, diagnostic clinical variables and outcome in 124 patients with myelodysplastic syndromes. Overall, one or more genetic lesions correlate with expression levels of ~20% of all genes, explaining 20-65% of observed expression variability. Differential expression patterns vary between mutations and reflect the underlying biology, such as aberrant polycomb repression for ASXL1 and EZH2 mutations or perturbed gene dosage for copy-number changes. In predicting survival, genomic, transcriptomic and diagnostic clinical variables all have utility, with the largest contribution from the transcriptome. Similar observations are made on the TCGA acute myeloid leukaemia cohort, confirming the general trends reported here.

Combining gene mutation with gene expression data improves outcome prediction in myelodysplastic syndromes

MALCOVATI, LUCA;DELLA PORTA, MATTEO GIOVANNI;CAZZOLA, MARIO;
2015-01-01

Abstract

Cancer is a genetic disease, but two patients rarely have identical genotypes. Similarly, patients differ in their clinicopathological parameters, but how genotypic and phenotypic heterogeneity are interconnected is not well understood. Here we build statistical models to disentangle the effect of 12 recurrently mutated genes and 4 cytogenetic alterations on gene expression, diagnostic clinical variables and outcome in 124 patients with myelodysplastic syndromes. Overall, one or more genetic lesions correlate with expression levels of ~20% of all genes, explaining 20-65% of observed expression variability. Differential expression patterns vary between mutations and reflect the underlying biology, such as aberrant polycomb repression for ASXL1 and EZH2 mutations or perturbed gene dosage for copy-number changes. In predicting survival, genomic, transcriptomic and diagnostic clinical variables all have utility, with the largest contribution from the transcriptome. Similar observations are made on the TCGA acute myeloid leukaemia cohort, confirming the general trends reported here.
2015
Oncogenesis & Cancer Research covers research into all aspects of tumorigenesis in vitro as well as the occurrence and pathogenesis of cancer. Emphasis is placed on molecular regulation of cell growth, oncogene expression/function in normal and transformed cells, mechanisms of anti-cancer drug action, and experimental therapeutics. Excluded from this category are resources dealing with the treatment of cancer in humans. Resources concerned with cell growth and differentiation without specific application to mechanisms of oncogenesis are excluded; this material is covered in the Cell & Developmental Biology category.
The Hematology category covers resources concerned with blood, blood-forming tissues, bone marrow, plasma, and transfusions. Coverage also includes resources on specialties such as hemophilia, leukemia, and lymphoma.
Esperti anonimi
Inglese
Internazionale
ELETTRONICO
6
5901
1
11
11
Myeloid neoplasm, Myelodysplastic syndromes, Gene mutation, Gene expression profiling, Prognosis
http://www.nature.com/articles/ncomms6901
16
info:eu-repo/semantics/article
262
Gerstung, M; Pellagatti, A; Malcovati, Luca; Giagounidis, A; DELLA PORTA, MATTEO GIOVANNI; Jädersten, M; Dolatshad, H; Verma, A; Cross, Nc; Vyas, P; K...espandi
1 Contributo su Rivista::1.1 Articolo in rivista
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11571/1152442
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