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On 9–12 December 2017, the 59th American Society of Hematology (ASH) Annual Meeting took place in Atlanta, GA. On Saturday 9th December, an oral abstract session was held entitled: Session 651. Myeloma: Biology and Pathophysiology, excluding Therapy: Mechanisms of Resistance and Prognosis. This session was moderated by Helena Jernberg-Wiklund, of the Rudbeck Laboratory, Uppsala, Sweden, and Dirk Hose, of the Heidelberg University Hospital, Heidelberg, Germany. The first three talks of this session are summarized in the article below, which is based on data presented at the live session and therefore may supersede information in the pre-published ASH Abstracts.
The session was initiated by Fadi Towfic from Celgene Corporation, Summit, NJ. The data presented in this abstract was collected from multiple collaborative groups and recruited a community of computational biologists, statisticians and experts in Multiple Myeloma (MM) to develop and test models in order to create a highly accurate risk stratification model to identify high-risk MM patients. A prize was nominated to the best performing research teams, comparing their performance against state of the art classifiers based on somatic mutations, gene expression and patient characteristics. Three community challenges were set up to optimize potential for future diagnostics; 190 teams participated in the challenge. The aim was to create the best predictor for this subset of high-risk MM patients, using:
The initial step of this study was the acquisition and integration of rich model of datasets; this included at least 500 samples for training and 300 samples for validation. Different platforms and assays were used, which included RNA seq and microarrays for the gene expression profiling. The next step was to ensure that the collection of data was cohesive and involved bringing top MM experts together with Dialogue for Reverse Engineering Assessment and Methods (DREAM) to enable modelers to develop high-risk classifiers. Following this, the models were assessed and the validation data were secured. This study incentivized and engaged top modelers by granting consortium authorship and monetary rewards. All participants were assessed on their capability to identify high-risk MM patients using different metrics (integrated AUC (iAUC) and BAC).
The speaker also mentioned that they are currently uncovering the biology of the clinical population identified by each of the models.
The next talk was given by Nicola Lehners from Heidelberg University Hospital, Heidelberg, Germany, who stated that, until now, the mutational landscape of Refractory Relapsed Multiple Myeloma (RRMM) has remained undefined and that patients refractory to proteasome inhibitors (PIs) and immunomodulatory agents (IMiDs) still have inferior outcomes. With the aim of determining the genetic landscape of RRMM, Lehners and colleagues initiated a program including Whole Genome sequencing (WGS) and transcriptome sequencing of RMM patients. The speaker reported data on 38 RRMM tumor/germline pairs with a median coverage of 70.5x for WGS, including nine patients with consecutive tumor samples. All patients (pts) had received a median of five prior lines of therapy (range 2–13), all had relapsed after PIs and IMiDs, and 90% had received an autologous transplant. They were refractory to carfilzomib (72%), pomalidomide (79%), or were quadruple refractory (48%). FISH cytogenetics revealed high-risk features in 62% of patients with del(17p) present in 48%, gain(1q21) (> 3 copies) in 28%, and t(4;14) in 14%.
To conclude, the presentation was summarized in the statements below:
The third talk was given by Michael Chapman from the University of Cambridge, Cambridge, UK. He presented the results from the phase II PADIMAC trial. One of the current dilemmas in MM is the lack of therapy selection rationale in treating transplant ineligible elderly MM patients (>65 yrs). Additionally, bortezomib-lenalidomide-dexamethasone (VRD) is an expensive drug combination that is not suitable for all, therefore there is a need for better drug selection strategies. This talk summarizes the findings from the PADIMAC trial, in which a seven-gene signature was identified, and used to rationally select bortezomib- or lenalidomide- based therapy.
Dr. Chapman concluded that the seven-gene signature had the ability to distinguish between bortezomib- and lenalidomide-sensitive patients, and therefore displays considerable therapeutic potential in transplant ineligible, elderly patients. He also commented that the signature is adaptable for qPCR and manageable as it only consists of seven genes. Finally, Dr. Chapman mentioned that this seven-gene signature approach will be extended to other drugs.
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