Abstract 828P
Background
Translocation t(11;14) is one of the most common primary translocations in multiple myeloma (MM). In the era of the novel anti-myeloma agents, the exact prognostic role of t(11;14) remains to be determined.
Methods
We analyzed prospectively collected data from 1011 consecutive patients with newly diagnosed MM (NDMM) in a single institution (1997-2023). Approval was obtained by the institutional ethics committee. All patients were tested for t(11;14), +1q21, t(4;14), t(14;16), del(17p), del(13q) at diagnosis using standard FISH in CD138+ selected cells. Positivity was defined as at least 20% of clonal cells harboring t(11;14).
Results
89 out of 1011 patients (8.8%) had the t(11;14). The median age was 68 years and 54% were males. Patients with t(11;14) did not have a statistically significant difference in progression-free survival (PFS) compared with those who did not had t(11;14) [hazard ratio (HR) 1.25, p=0.15]. Interestingly, patients with isolated positivity for t(11;14) did not have a statistically significant difference in PFS compared with those without any abnormalities (HR 1.28, p=0.282). However, patients with t(11;14) and at least another cytogenetic abnormality had inferior PFS (HR 1.38, p=0.001). More specifically, those with t(11;14) and del17p (HR 3.74, 95%CI: 1.53-9.17, p=0.004) and those with t(11;14) and 1q21 amplification/addition (HR 1.67, 95%CI: 1.00-2.78, p=0.05) had dismal outcomes. Similarly, there was no statistically significant difference in overall survival (OS) between patients with and without t(11;14) (HR 1.31, 95%CI: 0.86-2.00, p=0.21). Patients who had at least an additional cytogenetic abnormality had inferior OS (HR 1.68, p<0.001). Patients with isolated t(11;14) did not demonstrate inferior OS compared with those without any abnormalities (HR 0.61, p=0.33). The co-presence of del17p (HR 6.03, p<0.001) or 1q21 amplification/addition (HR 2.51, p=0.006) with t(11;14) had a detrimental impact on OS.
Conclusions
Isolated t(11;14) in patients with NDMM does not seem to be a marker of adverse prognosis, whereas the co-presence of other high-risk cytogenetic abnormalities confers dismal outcomes. For those patients, BCL-2 targeted therapies have to be validated in future studies.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
Has not received any funding.
Disclosure
All authors have declared no conflicts of interest.
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