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Published in: Experimental Hematology & Oncology 1/2017

Open Access 01-12-2017 | Case report

Molecular classification of tissue from a transformed non-Hogkin’s lymphoma case with unexpected long-time remission

Authors: Julie Støve Bødker, Marianne Tang Severinsen, Tarec Christoffer El-Galaly, Rasmus Froberg Brøndum, Maria Bach Laursen, Steffen Falgreen, Mette Nyegaard, Alexander Schmitz, Lasse Hjort Jakobsen, Anna Amanda Schönherz, Hanne Due, Linn Reinholdt, Martin Bøgsted, Karen Dybkær, Hans Erik Johnsen

Published in: Experimental Hematology & Oncology | Issue 1/2017

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Abstract

Background

The concept of precision medicine in cancer includes individual molecular studies to predict clinical outcomes. In the present N = 1 case we retrospectively have analysed lymphoma tissue by exome sequencing and global gene expression in a patient with unexpected long-term remission following relaps. The goals were to phenotype the diagnostic and relapsed lymphoma tissue and evaluate its pattern. Furthermore, to identify mutations available for targeted therapy and expression of genes to predict specific drug effects by resistance gene signatures (REGS) for R-CHOP as described at http://​www.​hemaclass.​org. We expected that such a study could generate therapeutic information and a frame for future individual evaluation of molecular resistance detected at clinical relapse.

Case presentation

The patient was diagnosed with a transformed high-grade non-Hodgkin lymphoma stage III and treated with conventional R-CHOP [rituximab (R), cyclophosphamide (C), doxorubicin (H), vincristine (O) and prednisone (P)]. Unfortunately, she suffered from severe toxicity but recovered during the following 6 months’ remission until biopsy-verified relapse. The patient refused second-line combination chemotherapy, but accepted 3 months’ palliation with R and chlorambucil. Unexpectedly, she obtained continuous complete remission and is at present >9 years after primary diagnosis. Molecular studies and data evaluation by principal component analysis, mutation screening and copy number variations of the primary and relapsed tumor, identified a pattern of branched lymphoma evolution, most likely diverging from an in situ follicular lymphoma. Accordingly, the primary diagnosed transformed lymphoma was classified as a diffuse large B cell lymphoma (DLBCL) of the GCB/centrocytic subtype by “cell of origin BAGS” assignment and R sensitive and C, H, O and P resistant by “drug specific REGS” assignment. The relapsed DLBCL was classified as NC/memory subtype and R, C, H sensitive but O and P resistant.

Conclusions

Thorough analysis of the tumor DNA and RNA documented a branched evolution of the two clinical diagnosed tFL, most likely transformed from an unknown in situ lymphoma. Classification of the malignant tissue for drug-specific resistance did not explain the unexpected long-term remission and potential cure. However, it is tempting to consider the anti-CD20 immunotherapy as the curative intervention in the two independent tumors of this case.
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Metadata
Title
Molecular classification of tissue from a transformed non-Hogkin’s lymphoma case with unexpected long-time remission
Authors
Julie Støve Bødker
Marianne Tang Severinsen
Tarec Christoffer El-Galaly
Rasmus Froberg Brøndum
Maria Bach Laursen
Steffen Falgreen
Mette Nyegaard
Alexander Schmitz
Lasse Hjort Jakobsen
Anna Amanda Schönherz
Hanne Due
Linn Reinholdt
Martin Bøgsted
Karen Dybkær
Hans Erik Johnsen
Publication date
01-12-2017
Publisher
BioMed Central
Published in
Experimental Hematology & Oncology / Issue 1/2017
Electronic ISSN: 2162-3619
DOI
https://doi.org/10.1186/s40164-016-0063-0

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