Proteogenomics refines the molecular classification of chronic lymphocytic leukemia.
Sophie A HerbstMattias VesterlundAlexander J HelmboldtRozbeh JafariIoannis SiavelisMatthias StahlEva C SchitterNora LiebersBerit J BrinkmannFelix CzernilofskyTobias RoiderPeter-Martin BruchMurat IskarAdam KittaiYing HuangJunYan LuSarah RichterGeorgios MermelekasHusen Muhammad UmerMareike KnollCarolin KolbAngela LenzeXiaofang CaoCecilia ÖsterholmLinus WahnschaffeCarmen HerlingSebastian ScheinostMatthias GanzingerLarry MansouriKatharina KriegsmannMark KriegsmannSimon AndersMarc ZapatkaGiovanni Del PoetaAntonella ZucchettoRiccardo BombenValter GatteiPeter DregerJennifer A WoyachMarco HerlingCarsten Muller-TidowRichard RosenquistStephan StilgenbauerThorsten ZenzWolfgang HuberEugen TauschJanne LehtiöSascha DietrichPublished in: Nature communications (2022)
Cancer heterogeneity at the proteome level may explain differences in therapy response and prognosis beyond the currently established genomic and transcriptomic-based diagnostics. The relevance of proteomics for disease classifications remains to be established in clinically heterogeneous cancer entities such as chronic lymphocytic leukemia (CLL). Here, we characterize the proteome and transcriptome alongside genetic and ex-vivo drug response profiling in a clinically annotated CLL discovery cohort (n = 68). Unsupervised clustering of the proteome data reveals six subgroups. Five of these proteomic groups are associated with genetic features, while one group is only detectable at the proteome level. This new group is characterized by accelerated disease progression, high spliceosomal protein abundances associated with aberrant splicing, and low B cell receptor signaling protein abundances (ASB-CLL). Classifiers developed to identify ASB-CLL based on its characteristic proteome or splicing signature in two independent cohorts (n = 165, n = 169) confirm that ASB-CLL comprises about 20% of CLL patients. The inferior overall survival in ASB-CLL is also independent of both TP53- and IGHV mutation status. Our multi-omics analysis refines the classification of CLL and highlights the potential of proteomics to improve cancer patient stratification beyond genetic and transcriptomic profiling.
Keyphrases
- chronic lymphocytic leukemia
- single cell
- papillary thyroid
- rna seq
- machine learning
- genome wide
- squamous cell
- deep learning
- copy number
- end stage renal disease
- mass spectrometry
- high throughput
- chronic kidney disease
- stem cells
- small molecule
- protein protein
- emergency department
- newly diagnosed
- squamous cell carcinoma
- case report
- amino acid
- childhood cancer
- artificial intelligence
- electronic health record
- dna methylation
- drug induced