A transcriptomic based deconvolution framework for assessing differentiation stages and drug responses of AML.
E Onur KarakaslarJeppe F SeverensElena Sánchez-LópezPeter A van VeelenMihaela ZleiJacques J M van DongenAnnemarie M OtteConstantijn J M HalkesPeter van BalenHendrik VeelkenMarcel J T ReindersMarieke GriffioenErik Ben van den AkkerPublished in: NPJ precision oncology (2024)
The diagnostic spectrum for AML patients is increasingly based on genetic abnormalities due to their prognostic and predictive value. However, information on the AML blast phenotype regarding their maturational arrest has started to regain importance due to its predictive power for drug responses. Here, we deconvolute 1350 bulk RNA-seq samples from five independent AML cohorts on a single-cell healthy BM reference and demonstrate that the morphological differentiation stages (FAB) could be faithfully reconstituted using estimated cell compositions (ECCs). Moreover, we show that the ECCs reliably predict ex-vivo drug resistances as demonstrated for Venetoclax, a BCL-2 inhibitor, resistance specifically in AML with CD14+ monocyte phenotype. We validate these predictions using LUMC proteomics data by showing that BCL-2 protein abundance is split into two distinct clusters for NPM1-mutated AML at the extremes of CD14+ monocyte percentages, which could be crucial for the Venetoclax dosing patients. Our results suggest that Venetoclax resistance predictions can also be extended to AML without recurrent genetic abnormalities and possibly to MDS-related and secondary AML. Lastly, we show that CD14+ monocytic dominated Ven/Aza treated patients have significantly lower overall survival. Collectively, we propose a framework for allowing a joint mutation and maturation stage modeling that could be used as a blueprint for testing sensitivity for new agents across the various subtypes of AML.
Keyphrases
- acute myeloid leukemia
- single cell
- rna seq
- end stage renal disease
- newly diagnosed
- ejection fraction
- chronic kidney disease
- allogeneic hematopoietic stem cell transplantation
- prognostic factors
- peritoneal dialysis
- dna methylation
- machine learning
- emergency department
- stem cells
- patient reported outcomes
- high throughput
- dendritic cells
- genome wide
- endothelial cells
- microbial community
- artificial intelligence
- deep learning
- protein protein
- nk cells
- big data
- drug induced
- bariatric surgery
- obese patients
- amino acid