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SINGLE CELL MULTI-OMIC ANALYSIS AND IMMUNE CELL TYPE PROFILING OF MULTIPLE MYELOMA WITH T(4;14).
Author(s): ,
Sanjay de Mel
Affiliations:
Haematology, Oncology,National University Cancer Institute, National University Health System,singapore,Singapore
,
Jonathan Scolnick
Affiliations:
Physiology,national university of singapore,Singapore,Singapore
,
Xiaojing Huo
Affiliations:
Proteona Pte Ltd,Singapore,Singapore
,
Cinnie Soekojo
Affiliations:
Haematology, Oncology,National University Cancer Institute, National University Health System,singapore,Singapore
,
Fangfang Song
Affiliations:
Haematology, Oncology,National University Cancer Institute, National University Health System,singapore,Singapore
,
Melissa Ooi
Affiliations:
Haematology, Oncology,National University Cancer Institute, National University Health System,singapore,Singapore
Wee Joo Chng
Affiliations:
Medicine, Yong Loo Lin School Of Medicine,national university of singapore,singapore,Singapore
EHA Library. de Mel S. 06/09/21; 325719; EP961
Sanjay de Mel
Sanjay de Mel
Contributions
Abstract
Presentation during EHA2021: All e-poster presentations will be made available as of Friday, June 11, 2021 (09:00 CEST) and will be accessible for on-demand viewing until August 15, 2021 on the Virtual Congress platform.

Abstract: EP961

Type: E-Poster Presentation

Session title: Myeloma and other monoclonal gammopathies - Biology & Translational Research

Background
Multiple Myeloma (MM) is an incurable plasma cell (PC) malignancy and high risk (HR) MM remains an unmet clinical need. Translocation 4;14 occurs in 15% of MM and is associated with an adverse prognosis. A deeper understanding of the biology and immune micro-environment of t(4;14) MM is necessary for the development of effective targeted therapies. 

Aims
Here we utilized Proteona’s ESCAPE™ single cell multi-omics platform to study a cohort of patients with t(4;14) MM with the goal of better understanding the biology underlying this high risk patient cohort.  

Methods
Diagnostic bone marrow (BM) samples from 14 patients with t(4;14) MM were analysed using the ESCAPE™ platform from Proteona which simultaneously measures gene and cell surface protein expression in single cells.   Cryopreserved BM samples were stained with 65 DNA barcoded antibodies and subsequently sorted on CD138 expression.  The CD138 positive and negative fractions were recombined at a known ratio for analysis using the 10x Genomics 3’ RNAseq kit.  Resulting data were analyzed with Seurat and MapCell. 

Results
The patients had a median age of 63 years. All received novel agent based induction. Median progression free and overall survival (PFS and OS) were 22 and 34 months respectively. MMSET was overexpressed in all PCs while FGFR3 expression could be categorized into zero cells expressing FGFR3, low expression (<10% of cells expressing FGFR3) or high expression (>80% of cells expressing FGFR3).  We also found heterogeneity in the expression of cancer testis antigens (CTA) such as FA133A and CTAG2 between PC clusters across samples.

 


Variation in the immune microenvironment of the BM was seen across all patient samples with no correlation between cell types and PFS or OS.  However, an analysis of BM samples at diagnosis and relapse in one patient showed a shift in the ratio of T cells to CD14 monocytes with a ratio of 5.7 at diagnosis compared to 0.6 at relapse. Further analysis of  PCs in this patient found 8 PC populations, each containing variable numbers of cells from both the diagnostic and relapse samples. This suggests that all populations present at relapse were also present at diagnosis, although at variable proportions.  Increased expression of RCAN3 (associated with cereblon depletion) was detected at relapse.

Conclusion
We present the first application of single cell multi-omics immune profiling in high risk MM. The heterogeneity in expression of CTA has implications for the application of immunotherapies, while the upregulation of RCAN3 may explain failure of immunomodulatory therapy. Our small sample size may explain the lack of correlation between gene or protein expression with clinical outcomes. We propose that t(4;14) MM is a genomically and immunologically heterogeneous disease. Single cell analysis of larger cohorts is required to build on our findings. 

Keyword(s): Gene expression, Myeloma

Presentation during EHA2021: All e-poster presentations will be made available as of Friday, June 11, 2021 (09:00 CEST) and will be accessible for on-demand viewing until August 15, 2021 on the Virtual Congress platform.

Abstract: EP961

Type: E-Poster Presentation

Session title: Myeloma and other monoclonal gammopathies - Biology & Translational Research

Background
Multiple Myeloma (MM) is an incurable plasma cell (PC) malignancy and high risk (HR) MM remains an unmet clinical need. Translocation 4;14 occurs in 15% of MM and is associated with an adverse prognosis. A deeper understanding of the biology and immune micro-environment of t(4;14) MM is necessary for the development of effective targeted therapies. 

Aims
Here we utilized Proteona’s ESCAPE™ single cell multi-omics platform to study a cohort of patients with t(4;14) MM with the goal of better understanding the biology underlying this high risk patient cohort.  

Methods
Diagnostic bone marrow (BM) samples from 14 patients with t(4;14) MM were analysed using the ESCAPE™ platform from Proteona which simultaneously measures gene and cell surface protein expression in single cells.   Cryopreserved BM samples were stained with 65 DNA barcoded antibodies and subsequently sorted on CD138 expression.  The CD138 positive and negative fractions were recombined at a known ratio for analysis using the 10x Genomics 3’ RNAseq kit.  Resulting data were analyzed with Seurat and MapCell. 

Results
The patients had a median age of 63 years. All received novel agent based induction. Median progression free and overall survival (PFS and OS) were 22 and 34 months respectively. MMSET was overexpressed in all PCs while FGFR3 expression could be categorized into zero cells expressing FGFR3, low expression (<10% of cells expressing FGFR3) or high expression (>80% of cells expressing FGFR3).  We also found heterogeneity in the expression of cancer testis antigens (CTA) such as FA133A and CTAG2 between PC clusters across samples.

 


Variation in the immune microenvironment of the BM was seen across all patient samples with no correlation between cell types and PFS or OS.  However, an analysis of BM samples at diagnosis and relapse in one patient showed a shift in the ratio of T cells to CD14 monocytes with a ratio of 5.7 at diagnosis compared to 0.6 at relapse. Further analysis of  PCs in this patient found 8 PC populations, each containing variable numbers of cells from both the diagnostic and relapse samples. This suggests that all populations present at relapse were also present at diagnosis, although at variable proportions.  Increased expression of RCAN3 (associated with cereblon depletion) was detected at relapse.

Conclusion
We present the first application of single cell multi-omics immune profiling in high risk MM. The heterogeneity in expression of CTA has implications for the application of immunotherapies, while the upregulation of RCAN3 may explain failure of immunomodulatory therapy. Our small sample size may explain the lack of correlation between gene or protein expression with clinical outcomes. We propose that t(4;14) MM is a genomically and immunologically heterogeneous disease. Single cell analysis of larger cohorts is required to build on our findings. 

Keyword(s): Gene expression, Myeloma

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