secDrug: a pipeline to discover novel drug combinations to kill drug-resistant multiple myeloma cells using a greedy set cover algorithm and single-cell multi-omics.
Harish KumarSuman MazumderSayak ChakravartiNeeraj SharmaUjjal Kumar MukherjeeShaji K KumarLinda B BaughnBrian G Van NessAmit Kumar MitraPublished in: Blood cancer journal (2022)
Multiple myeloma, the second-most common hematopoietic malignancy in the United States, still remains an incurable disease with dose-limiting toxicities and resistance to primary drugs like proteasome inhibitors (PIs) and Immunomodulatory drugs (IMiDs).We have created a computational pipeline that uses pharmacogenomics data-driven optimization-regularization/greedy algorithm to predict novel drugs ("secDrugs") against drug-resistant myeloma. Next, we used single-cell RNA sequencing (scRNAseq) as a screening tool to predict top combination candidates based on the enrichment of target genes. For in vitro validation of secDrugs, we used a panel of human myeloma cell lines representing drug-sensitive, innate/refractory, and acquired/relapsed PI- and IMiD resistance. Next, we performed single-cell proteomics (CyTOF or Cytometry time of flight) in patient-derived bone marrow cells (ex vivo), genome-wide transcriptome analysis (bulk RNA sequencing), and functional assays like CRISPR-based gene editing to explore molecular pathways underlying secDrug efficacy and drug synergy. Finally, we developed a universally applicable R-software package for predicting novel secondary therapies in chemotherapy-resistant cancers that outputs a list of the top drug combination candidates with rank and confidence scores.Thus, using 17AAG (HSP90 inhibitor) + FK866 (NAMPT inhibitor) as proof of principle secDrugs, we established a novel pipeline to introduce several new therapeutic options for the management of PI and IMiD-resistant myeloma.
Keyphrases
- single cell
- drug resistant
- multiple myeloma
- rna seq
- genome wide
- high throughput
- multidrug resistant
- acinetobacter baumannii
- bone marrow
- induced apoptosis
- drug induced
- adverse drug
- machine learning
- immune response
- dna methylation
- cell cycle arrest
- endothelial cells
- deep learning
- mass spectrometry
- squamous cell carcinoma
- newly diagnosed
- crispr cas
- acute lymphoblastic leukemia
- mesenchymal stem cells
- signaling pathway
- cell death
- acute myeloid leukemia
- pseudomonas aeruginosa
- emergency department
- heat shock protein
- young adults
- heat shock
- gene expression
- genome editing
- clinical decision support
- clinical evaluation
- pluripotent stem cells