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The RAG Model: a new paradigm for genetic risk stratification in multiple myeloma

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posted on 2023-06-08, 20:01 authored by Steven M Prideaux, Emma Conway O'Brien, Timothy ChevassutTimothy Chevassut
Molecular studies have shown that multiple myeloma is a highly genetically heterogonous disease which may manifest itself as any number of diverse subtypes each with variable clinicopathological features and outcomes. Given this genetic heterogeneity, a universal approach to treatment of myeloma is unlikely to be successful for all patients and instead we should strive for the goal of personalised therapy using rationally informed targeted strategies. Current DNA sequencing technologies allow for whole genome and exome analysis of patient myeloma samples that yield vast amounts of genetic data and provide a mutational overview of the disease. However, the clinical utility of this information currently lags far behind the sequencing technology which is increasingly being incorporated into clinical practice. This paper attempts to address this shortcoming by proposing a novel genetically based “traffic-light” risk stratification system for myeloma, termed the RAG (Red, Amber, Green) model, which represents a simplified concept of how complex genetic data may be compressed into an aggregate risk score. The model aims to incorporate all known clinically important trisomies, translocations, and mutations in myeloma and utilise these to produce a score between 1.0 and 3.0 that can be incorporated into diagnostic, prognostic, and treatment algorithms for the patient.

History

Publication status

  • Published

File Version

  • Published version

Journal

Bone Marrow Research

ISSN

2090-2999

Publisher

Hindawi Publishing Corporation

Volume

2014

Article number

a526568

Department affiliated with

  • Clinical and Experimental Medicine Publications

Research groups affiliated with

  • Haematology Research Group Publications

Full text available

  • Yes

Peer reviewed?

  • Yes

Legacy Posted Date

2015-02-16

First Open Access (FOA) Date

2015-02-16

First Compliant Deposit (FCD) Date

2015-02-16

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