A clinically applicable gene expression-based score predicts resistance to induction treatment in acute myeloid leukemia.
Christian MoserVindi JurinovicSabine Sagebiel-KohlerBianka KsienzykAarif M N BatchaAnnika DufourStephanie SchneiderMaja Rothenberg-ThurleyCristina M SauerlandDennis GörlichWolfgang E BerdelUtz KrugUlrich MansmannWolfgang HiddemannJan BraessKarsten SpiekermannPhilipp A GreifSebastian VosbergKlaus H MetzelerJörg KumbrinkTobias HeroldPublished in: Blood advances (2021)
Prediction of resistant disease at initial diagnosis of acute myeloid leukemia (AML) can be achieved with high accuracy using cytogenetic data and 29 gene expression markers (Predictive Score 29 Medical Research Council; PS29MRC). Our aim was to establish PS29MRC as a clinically usable assay by using the widely implemented NanoString platform and further validate the classifier in a more recently treated patient cohort. Analyses were performed on 351 patients with newly diagnosed AML intensively treated within the German AML Cooperative Group registry. As a continuous variable, PS29MRC performed best in predicting induction failure in comparison with previously published risk models. The classifier was strongly associated with overall survival. We were able to establish a previously defined cutoff that allows classifier dichotomization (PS29MRCdic). PS29MRCdic significantly identified induction failure with 59% sensitivity, 77% specificity, and 72% overall accuracy (odds ratio, 4.81; P = 4.15 × 10-10). PS29MRCdic was able to improve the European Leukemia Network 2017 (ELN-2017) risk classification within every category. The median overall survival with high PS29MRCdic was 1.8 years compared with 4.3 years for low-risk patients. In multivariate analysis including ELN-2017 and clinical and genetic markers, only age and PS29MRCdic were independent predictors of refractory disease. In patients aged ≥60 years, only PS29MRCdic remained as a significant variable. In summary, we confirmed PS29MRC as a valuable classifier to identify high-risk patients with AML. Risk classification can still be refined beyond ELN-2017, and predictive classifiers might facilitate clinical trials focusing on these high-risk patients with AML.
Keyphrases
- acute myeloid leukemia
- newly diagnosed
- gene expression
- allogeneic hematopoietic stem cell transplantation
- clinical trial
- end stage renal disease
- ejection fraction
- machine learning
- deep learning
- dna methylation
- high throughput
- healthcare
- peritoneal dialysis
- systematic review
- patient reported outcomes
- electronic health record
- artificial intelligence
- data analysis
- phase ii