| Literature DB >> 28038447 |
Alexey Zatula1, Aida Dikic1, Celine Mulder1,2, Animesh Sharma1,3, Cathrine B Vågbø1,3, Mirta M L Sousa1, Anders Waage1,4, Geir Slupphaug1,3.
Abstract
Plasma cell leukemia is a rare and aggressive plasma cell neoplasm that may either originate de novo (primary PCL) or by leukemic transformation of multiple myeloma (MM) to secondary PCL (sPCL). The prognosis of sPCL is very poor, and currently no standard treatment is available due to lack of prospective clinical studies. In an attempt to elucidate factors contributing to transformation, we have performed super-SILAC quantitative proteome profiling of malignant plasma cells collected from the same patient at both the MM and sPCL stages of the disease. 795 proteins were found to be differentially expressed in the MM and sPCL samples. Gene ontology analysis indicated a metabolic shift towards aerobic glycolysis in sPCL as well as marked down-regulation of enzymes involved in glycan synthesis, potentially mediating altered glycosylation of surface receptors. There was no significant change in overall genomic 5-methylcytosine or 5-hydroxymethylcytosine at the two stages, indicating that epigenetic dysregulation was not a major driver of transformation to sPCL. The present study constitutes the first attempt to provide a comprehensive map of the altered protein expression profile accompanying transformation of MM to sPCL in a single patient, identifying several candidate proteins that can be targeted by currently available small molecule drugs. Our dataset furthermore constitutes a reference dataset for further proteomic analysis of sPCL transformation.Entities:
Keywords: multiple myeloma; quantitative proteomics; secondary plasma cell leukemia; super-SILAC
Mesh:
Substances:
Year: 2017 PMID: 28038447 PMCID: PMC5386695 DOI: 10.18632/oncotarget.14294
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1Schematic illustration of the super-SILAC workflow
The table shows the cell lines included in the super-SILAC library, their sources as well as major genetic characteristics. Below is shown the timeline of the patient treatments and the collection of bone marrow (BM) and peripheral blood (PB) samples. CVD; cyclophosphamide, bortezomib, dexamethasone, VMP; bortezomib/melphalan/prednisone, CVP; cyclophosphamide, bortezomib, prednisone, VGPR; very good partial remission, PR; partial remission, TR; treatment resistant.
Figure 2Heat map of Pearson showing reproducibility between replicates as well as similarity between certain cell lines
Numbers succeeding each cell line indicate biological and technical replicates. The color bar represent the corresponding correlation coefficients.
Figure 3Super-SILAC quantitative profiling and pathway analysis of differentially expressed proteins
A. Histogram of log2 super-SILAC ratios between proteins in the sPCL and MM samples. Negative values represent proteins with increased expression in MM, whereas positive values represent proteins with increased expression in sPCL. B. Volcano plot of the entire set of proteins quantified during super-SILAC analysis. Each point represents the difference in expression (Log2 t-test difference) between the sPCL and the MM samples plotted against the level of statistical significance. Blue dots represent proteins whose expression is significantly (t-test, p < 0.05) different in the two samples and with an absolute log2 t-test difference >0.58. C. Top 10 canonical pathways [log10 (p-values)] significantly changed in sPCL compared to MM, according to IPA.
Figure 4Overview of differentially expressed proteins in the glycolytic and oxidative metabolic pathways
The observed up-regulation of factors in glycolytic glucose metabolism and down-regulation of factors in the mitochondrial oxidative metabolism conforms to an increased Warburg type metabolism in the sPCL cells.
List of ten most up- and down-regulated proteins in sPCL versus MM based on the super-SILAC data
| Gene | Protein | Fold change | P-value |
|---|---|---|---|
| SAA4 | Serum amyloid A-4 protein | 21.20 | 8.13E-05 |
| Cd3APOD | Apolipoprotein D | 9.75 | 0.00060 |
| GBP2 | Interferon-induced guanylate-binding protein 2 | 5.92 | 0.00030 |
| S100A4 | Protein S100-A4 | 5.52 | 0.00006 |
| MKI67 | Antigen KI-67 | 4.41 | 0.00152 |
| TAGLN2 | Transgelin-2 | 4.41 | 4.55E-07 |
| ANXA3 | Annexin A3 | 4.35 | 0.00055 |
| DEK | Protein DEK | 3.96 | 0.00016 |
| TBCEL | Tubulin-specific chaperone cofactor E-like protein | 3.70 | 0.03610 |
| FLNA | Filamin-A | 3.62 | 3.25E-07 |
| IER3IP1 | Immediate early response 3-interacting protein 1 | 0.161 | 0.03874 |
| SERPINB6 | Serpin B6 | 0.148 | 0.00036 |
| FCER2 | Low affinity immunoglobulin epsilon Fc receptor | 0.136 | 0.00028 |
| PLD4 | Phospholipase D4 | 0.113 | 0.00096 |
| RBP1 | Retinol-binding protein 1 | 0.097 | 0.01287 |
| CKB | Creatine kinase B-type | 0.079 | 3.13E-05 |
| SYPL1 | Synaptophysin-like protein 1 | 0.077 | 0.00187 |
| H1F0 | Histone H1.0 | 0.061 | 0.00510 |
| CRP | C-reactive protein | 0.060 | 0.00047 |
| MARCKS | Myristoylated alanine-rich C-kinase substrate | 0.045 | 3.93E-05 |