To identify molecularly defined subgroups in multiple myeloma, gene expression profiling was performed on purified CD138 ؉ plasma cells of 320 newly diagnosed myeloma patients included in the DutchBelgian/German HOVON-65/GMMG-HD4 trial. Hierarchical clustering identified 10 subgroups; 6 corresponded to clusters described in the University of Arkansas for Medical Science (UAMS) classification, CD-1 (n ؍ 13, 4.1%), CD-2 (n ؍ 34, 1.6%), MF (n ؍ 32, 1.0%), MS (n ؍ 33, 1.3%), proliferation-associated genes (n ؍ 15, 4.7%), and hyperdiploid (n ؍ 77, 24.1%). Moreover, the UAMS low percentage of bone disease cluster was identified as a subcluster of the MF cluster (n ؍ 15, 4.7%). One subgroup (n ؍ 39, 12.2%) showed a myeloid signature. Three novel subgroups were defined, including a subgroup of 37 patients (11.6%) characterized by high expression of genes involved in the nuclear factor kappa lightchain-enhancer of activated B cells pathway, which include TNFAIP3 and CD40. Another subgroup of 22 patients (6.9%) was characterized by distinct overexpression of cancer testis antigens without overexpression of proliferation genes. The third novel cluster of 9 patients (2.8%) showed upregulation of protein tyrosine phosphatases PRL-3 and PTPRZ1 as well as SOCS3. To conclude, in addition to 7 clusters described in the UAMS classification, we identified 3 novel subsets of multiple myeloma that may represent unique diagnostic entities.
There is a strong need to better predict the survival of patients with newly diagnosed multiple myeloma (MM). As gene expression profiles (GEPs) reflect the biology of MM in individual patients, we built a prognostic signature based on GEPs. GEPs obtained from newly diagnosed MM patients included in the HOVON65/GMMG-HD4 trial (n ¼ 290) were used as training data. Using this set, a prognostic signature of 92 genes (EMC-92-gene signature) was generated by supervised principal component analysis combined with simulated annealing. Performance of the EMC-92-gene signature was confirmed in independent validation sets of newly diagnosed (total therapy (TT)2, n ¼ 351; TT3, n ¼ 142; MRC-IX, n ¼ 247) and relapsed patients (APEX, n ¼ 264). In all the sets, patients defined as high-risk by the EMC-92-gene signature show a clearly reduced overall survival (OS) with a hazard ratio (HR) of 3.40 (95% confidence interval (CI): 2.19-5.29) for the TT2 study, 5.23 (95% CI: 2.46-11.13) for the TT3 study, 2.38 (95% CI: 1.65-3.43) for the MRC-IX study and 3.01 (95% CI: 2.06-4.39) for the APEX study (Po0.0001 in all studies). In multivariate analyses this signature was proven to be independent of the currently used prognostic factors. The EMC-92-gene signature is better or comparable to previously published signatures. This signature contributes to risk assessment in clinical trials and could provide a tool for treatment choices in high-risk MM patients.
ETV6 (ets translocation variant gene 6) TEL (translocation ets leukemia), encoding a transcriptional repressor, is involved in various translocations associated with human malignancies. Strikingly, the nonrearranged ETV6 allele is often deleted or inactivated in cells harboring these translocations. Although ETV6 translocations are infrequent in acute myeloid leukemia (AML), mutations or deregulated expression of ETV6 may contribute to leukemogenesis. To investigate the involvement of ETV6 in AML, we analysed 300 newly diagnosed patients for mutations in the coding region of the gene. Furthermore, we studied protein expression in 77 patients using two ETV6-specific antibodies. Five somatic heterozygous mutations were detected, which affected either the homodimerization-or the DNA-binding domain of ETV6. The proteins translated from the cDNAs of these mutants were unable to repress transcription and showed dominant-negative effects. In addition, we demonstrate that one-third of AML patients have deficient ETV6 protein expression, which is not related to ETV6 mRNA expression levels. In conclusion, we demonstrate that ETV6 abnormalities are not restricted to translocations and occur more frequently in AML than previously thought. Additional comprehensive studies are required to define the clinical consequence of ETV6 loss of function in AML.
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