AI Article Synopsis

  • Smoldering multiple myeloma (SMM) is a type of cancer where certain cells in the bone marrow grow abnormally but don’t cause symptoms yet.
  • Scientists studied how to find genetic changes in these cells using advanced techniques like single-cell RNA sequencing.
  • They analyzed 20,465 cells from five patients, discovering different groups of cells with unique traits, which helps improve our understanding of this disease and how it might develop.

Article Abstract

Smoldering multiple myeloma (SMM) is an asymptomatic plasma cell (PC) neoplasm that may evolve with variable frequency into multiple myeloma (MM). SMM is initiated by chromosomal translocations involving the immunoglobulin heavy-chain locus or by hyperdiploidy and evolves through acquisition of additional genetic lesions. In this scenario, we aimed at establishing a reliable analysis pipeline to infer genomic lesions from transcriptomic analysis, by combining single-cell RNA sequencing (scRNA-seq) with B-cell receptor sequencing and copy number abnormality (CNA) analysis to identify clonal PCs at the genetic level along their specific transcriptional landscape. We profiled 20 465 bone marrow PCs derived from 5 patients with SMM/MM and unbiasedly identified clonal and polyclonal PCs. Hyperdiploidy, t(11;14), and t(6;14) were identified at the scRNA level by analysis of chimeric reads. Subclone functional analysis was improved by combining transcriptome with CNA analysis. As examples, we illustrate the different functional properties of a light-chain escape subclone in SMM and of different B-cell and PC subclones in a patient affected by Wäldenstrom macroglobulinemia and SMM. Overall, our data provide a proof of principle for inference of clinically relevant genotypic data from scRNA-seq, which in turn will refine functional annotation of the clonal architecture of PC dyscrasias.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11331727PMC
http://dx.doi.org/10.1182/bloodadvances.2023012409DOI Listing

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