Integration of transcriptional and mutational data simplifies the stratification of peripheral T-cell lymphoma.
Francesco MauraLuca AgnelliDaniel LeongamornlertNiccolò BolliWing C ChanAnna DoderoCristiana CarnitiTayla B HeavicanAlessio PellegrinelliGiancarlo PruneriAdam ButlerShriram G BhosleAnnalisa ChiappellaAlice Di RoccoPier Luigi Luigi ZinzaniFrancesco ZajaRoberto PivaGiorgio InghiramiWenyi WangTeresa PalomeroJaveed IqbalAntonino NeriPeter J CampbellPaolo CorradiniPublished in: American journal of hematology (2019)
The histological diagnosis of peripheral T-cell lymphoma (PTCL) can represent a challenge, particularly in the case of closely related entities such as angioimmunoblastic T-lymphoma (AITL), PTCL-not otherwise specified (PTCL-NOS), and ALK-negative anaplastic large-cell lymphoma (ALCL). Although gene expression profiling and next generations sequencing have been proven to define specific features recurrently associated with distinct entities, genomic-based stratifications have not yet led to definitive diagnostic criteria and/or entered into the routine clinical practice. Herein, to improve the current molecular classification between AITL and PTCL-NOS, we analyzed the transcriptional profiles from 503 PTCLs stratified according to their molecular configuration and integrated them with genomic data of recurrently mutated genes (RHOA G17V , TET2, IDH2 R172 , and DNMT3A) in 53 cases (39 AITLs and 14 PTCL-NOSs) included in the series. Our analysis unraveled that the mutational status of RHOA G17V , TET2, and DNMT3A poorly correlated, individually, with peculiar transcriptional fingerprints. Conversely, in IDH2 R172 samples a strong transcriptional signature was identified that could act as a surrogate for mutational status. The integrated analysis of clinical, mutational, and molecular data led to a simplified 19-gene signature that retains high accuracy in differentiating the main nodal PTCL entities. The expression levels of those genes were confirmed in an independent cohort profiled by RNA-sequencing.
Keyphrases
- genome wide identification
- genome wide
- transcription factor
- dna methylation
- copy number
- clinical practice
- single cell
- gene expression
- electronic health record
- big data
- diffuse large b cell lymphoma
- heat shock
- poor prognosis
- low grade
- machine learning
- nitric oxide synthase
- deep learning
- wild type
- cell therapy
- genome wide analysis
- computed tomography
- stem cells
- single molecule
- magnetic resonance
- squamous cell carcinoma
- oxidative stress
- long non coding rna
- advanced non small cell lung cancer
- radiation therapy
- bone marrow
- high grade
- binding protein
- light emitting