| Literature DB >> 36046090 |
Sara Ovejero1,2, Jerome Moreaux1,2,3,4.
Abstract
Multiple myeloma (MM), the second most common hematologic cancer, is caused by accumulation of aberrant plasma cells in the bone marrow. Its molecular causes are not fully understood and its great heterogeneity among patients complicates therapeutic decision-making. In the past decades, development of new therapies and drugs have significantly improved survival of MM patients. However, resistance to drugs and relapse remain the most common causes of mortality and are the major challenges to overcome. The advent of high throughput omics technologies capable of analyzing big amount of clinical and biological data has changed the way to diagnose and treat MM. Integration of omics data (gene mutations, gene expression, epigenetic information, and protein and metabolite levels) with clinical histories of thousands of patients allows to build scores to stratify the risk at diagnosis and predict the response to treatment, helping clinicians to make better educated decisions for each particular case. There is no doubt that the future of MM treatment relies on personalized therapies based on predictive models built from omics studies. This review summarizes the current treatments and the use of omics technologies in MM, and their importance in the implementation of personalized medicine.Entities:
Keywords: Multiple myeloma; biomarkers; drugs; omics data; personalized medicine; predictive models
Year: 2021 PMID: 36046090 PMCID: PMC9400753 DOI: 10.37349/etat.2021.00034
Source DB: PubMed Journal: Explor Target Antitumor Ther ISSN: 2692-3114
Agents approved for MM treatment
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| Melphalan | Alkylating agents | DNA | DNA damage |
Misregulation/mutation of DDR pathways [ Increased antioxidant defenses [ Import/export alteration [ miRNA misregulation [ |
| Bortezomib | PI | PSMB5 (26S proteasome) | Cytotoxicity by accumulation of aberrant proteins |
BM microenvironment Upregulation of aggresomal protein degradation pathways Increased autophagy Proteasome subunit mutations Cell cycle misregulation [ |
| Thalidomide | IMiDs | CRBN | Immune activation | Low CRBN expression or mutation of its downstream targets [ |
| Dexamethasone | Corticosteroids | GC receptors | Gene expression regulation |
Excess of IL-6 Defects on GC receptors |
| Doxorubicin | Anthracyclines | DNA-Topo II | Impairment of DNA replication and transcription |
DNA-Topo II mutations or misregulation [ Efflux pumps overexpression [ |
| Panobinostat | Histone deacetylase inhibitors | Histones | G1/S arrest | Increased CXCR4, mTOR pathway activation, p21 up-regulation [ |
| Daratumumab (DARA) | Monoclonal Abs | CD38 | ADCC, ADCP, CDC, immunomodulatory effects |
Downregulation of the target Deregulation of ADCC, ADCP, CDC Stromal cell production of anti-apoptotic proteins PD1 and PD-L1 [ |
| Selinexor | Nuclear export inhibitors | XPO1 | Nuclear export blockade | ( |
ADCC: antibody-dependent cell-mediated cytotoxicity; ADCP: antibody-dependent cellular phagocytosis; CDC: complement-dependent cytotoxicity
Datasets from MM patients used in genomics studies presented in this review
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| HOVON-65/GMMG-HD4 | Affymetrix HG U133 plus 2.0 platform | 320 | GSE19784 |
| UAMS-TT2 | Affymetrix HG U133 plus 2.0 platform | 340 | GSE24080 |
| MRC-IX | Affymetrix HG U133 plus 2.0 platform | 258 | GSE15695 |
| APEX/SUMMIT/CREST | Affymetrix U133 A/B platform | 669 | GSE9782 |
| IFM-G | Affymetrix HG U133 plus 2.0 platform | 182 | GSE7039 |
| Mayo Clinic cohort | Affymetrix U133A platform | 162 | GSE6477 |
| CoMMpass | WES: Illumina TruSeq Exome Enrichment | 1,150 | dbGaP phs000748.v7.p4 |
| HM | Affymetrix HG U133 plus 2.0 platform | 206 | Array Express public database (E-MTAB-372) |
| GIMEMAMMY-3006 | 118 | GSE68871 |
GEO: Gene Expression Omnibus; HOVON65/GMMG-HD4: Dutch-Belgium Hemato-Oncology Group and German-speaking Myeloma Multicenter Group; UAMS-TT2/UAMS-TT3: University of Arkansas for Medical Sciences-Total Therapy 2/3; MRC-IX: Medical Research Council-IX; APEX: Assessment of Proteasome Inhibition for Extending Remissions; IFM-G: Intergroupe Francophone du Myelome; CoMMpass: the Relating Clinical Outcomes in MM to Personal Assessment of Genetic Profile Study; HM: Heidelberg-Montpellier; UTRs: untranslated regions
Prognostic scores for MM based on mutational status and/or GEP
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| Proliferation index | 11 genes: | UAMS-TT2 | [ |
| UAMS70/UAMS17 | 70/17 genes | UAMS | [ |
| UAMS80 | 80 genes | UAMS-TT2 | [ |
| GSS | Good-risk: allele-specific CAN genomic markers | IFM/DFCI2009 study | [ |
| HM19 | 19 genes (15 risk and 4 protective) | HM | [ |
| CTA (cancer testis antigen) | 87 genes | HOVON65/GMMG-HD4 | [ |
| CI | Centrin, pericentrin, γ-tubulin | UAMS-TT2 | [ |
| IFM15 | 15 genes (cell cycle genes) | IFM-G | [ |
| MRCIX6 (aka HZCDC) |
| Medical Research Council-IX (MRC-IX) | [ |
| GPI50 PI | 50 genes | HM1 (E-MTAB-316) | [ |
| EMC-92 (SKY92) | 92 genes | HOVON-65/GMMG-HD4 | [ |
| HM-metascore | Algorithmic integration of International Stating System (ISS), cytogenetics, gene-expression, event-free survival (EFS), overall survival (OS), proliferation index, target gene expression of aurora kinase A, | HM (E-MTAB-372) | [ |
| 8-gene signature | GSE16791 | [ | |
| Spike band score | 53 (35 bad prognosis and 18 good prognosis) | HM (E-MTAB-362) | [ |
| HMCL7/HMCL6 | 7 bad prognostic genes: | HMCLs (E-TABM-937 and E-TABM-1088) | [ |
| CINGECS | 160 genes | GSE26849 | [ |
CAT: cancer testis antigen
Drug response-scores based on GEP
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| 8-gene signature (dexamethasone/ thalidomide) | GSE16791 | [ | |
| DM (DNMTi) | 47 genes | E-MTAB-372 | [ |
| M3P (PIs and IMiDs) | 47 genes in del17p | German MM study group (DSMM) | [ |
| DRP (drug response prediction, melphalan and bortezomib) | GSE2658 (TT2/TT3a) GSE19784 (HOVON) | [ | |
| IMiD-14 | 14 poor prognosis genes: | GSE24080 GSE57317 | [ |
| HA (HDACi) | 37 genes | E-MTAB-372 GSE2658 | [ |
| DNMTi/HDACi | 25/62 genes | E-MTAB-3178 | [ |
| VTD response (Bortezomib-Thalidomide-Dexamethasone) | 5 genes: | GSE55145 GSE9872 | [ |
| DR (DNA repair, DNA damage agents) | 17 bad prognostic | GSE24080 | [ |
| EZ (EZH2 inhibitor) | 15 genes | E-TABM-93 | [ |
Figure 1.Predictive scores in MM. Samples from patients (blood, urine, BM aspirates) and HMCLs are commonly studied by classical diagnosis techniques. Karyotyping and fluorescence in situ hybridization allow the detection of CNA and translocations, respectively; electrophoresis detects Ig chains in serum and urine from patients; clinical history collects data about lines of treatment, relapse, progression free survival, overall survival, MRD, and co-morbidities, that are crucial when analyzing cohorts of patients. Primary cells from patients and HMCLs can be used to assess the efficacy of in vitro drug treatments and drug combinations in order to find new therapeutic approaches. The integration of data from these routine techniques with omics obtained data, specially from genomics and transcriptomics studies, allows to build scores (Tables 3 and 4) capable to stratify the risk or predict drug response, that are instrumental for personalized treatment. Combination of several scores will refined diagnosis and improve the monitoring of the evolution of the disease. Finally, since drug resistance is the main reason of relapse, personalized medicine based on omics-developed scores will allow to choose the best drug for each patient, increasing the probability of survival while reducing treatment-associated toxicity, which also translates in better quality of life. It includes a karyotyping cartoon (Karyotyping) taken from an open source: https://smart.servier.com/smart_image/karyotype/
Figure 2.Omics approaches for the development of personalized treatments in MM. Cells and biological molecules are obtained from blood, urine and BM samples from heterogeneous populations of MM patients. HMCLs that reflect MM heterogeneity derived from patientsprovide a tool to study drug responses in vitro and are a source of biological molecules for subsequent studies. Analyses of patient and HMCLs samples by omics approaches lead to the identification of biomarkers that allowrisk stratification and predict response to drugs