A four-gene LincRNA expression signature predicts risk in multiple cohorts of acute myeloid leukemia patients.
D BeckJ A I ThomsC PaluTobias HeroldA ShahJake OlivierL BoelenY HuangD ChaconA BrownM BabicChristopher N HahnM PeruginiX ZhouB J HuntlyA SchwarzerJ-H KlusmannW E BerdelB WörmannT BüchnerW HiddemannS K BohlanderL B ToH S ScottI D LewisR J D'AndreaJ W H WongJ E PimandaPublished in: Leukemia (2017)
Prognostic gene expression signatures have been proposed as clinical tools to clarify therapeutic options in acute myeloid leukemia (AML). However, these signatures rely on measuring large numbers of genes and often perform poorly when applied to independent cohorts or those with older patients. Long intergenic non-coding RNAs (lincRNAs) are emerging as important regulators of cell identity and oncogenesis, but knowledge of their utility as prognostic markers in AML is limited. Here we analyze transcriptomic data from multiple cohorts of clinically annotated AML patients and report that (i) microarrays designed for coding gene expression can be repurposed to yield robust lincRNA expression data, (ii) some lincRNA genes are located in close proximity to hematopoietic coding genes and show strong expression correlations in AML, (iii) lincRNA gene expression patterns distinguish cytogenetic and molecular subtypes of AML, (iv) lincRNA signatures composed of three or four genes are independent predictors of clinical outcome and further dichotomize survival in European Leukemia Net (ELN) risk groups and (v) an analytical tool based on logistic regression analysis of quantitative PCR measurement of four lincRNA genes (LINC4) can be used to determine risk in AML.
Keyphrases
- acute myeloid leukemia
- genome wide
- gene expression
- dna methylation
- allogeneic hematopoietic stem cell transplantation
- end stage renal disease
- poor prognosis
- genome wide identification
- chronic kidney disease
- ejection fraction
- newly diagnosed
- prognostic factors
- healthcare
- copy number
- genome wide analysis
- single cell
- transcription factor
- electronic health record
- cell proliferation
- machine learning
- patient reported outcomes
- mass spectrometry
- single molecule
- deep learning