Prediction model for drug response of acute myeloid leukemia patients.
Quang Thinh TracYudi PawitanTian MouTom ErkersPäivi ÖstlingAnna BohlinAlbin ÖsterroosMattias VesterlundRozbeh JafariIoannis SiavelisHelena BäckvallSanteri KiviluotoLukas M OrreMattias RantalainenJanne LehtiöSören LehmannOlli KallioniemiTrung Nghia VuPublished in: NPJ precision oncology (2023)
Despite some encouraging successes, predicting the therapy response of acute myeloid leukemia (AML) patients remains highly challenging due to tumor heterogeneity. Here we aim to develop and validate MDREAM, a robust ensemble-based prediction model for drug response in AML based on an integration of omics data, including mutations and gene expression, and large-scale drug testing. Briefly, MDREAM is first trained in the BeatAML cohort (n = 278), and then validated in the BeatAML (n = 183) and two external cohorts, including a Swedish AML cohort (n = 45) and a relapsed/refractory acute leukemia cohort (n = 12). The final prediction is based on 122 ensemble models, each corresponding to a drug. A confidence score metric is used to convey the uncertainty of predictions; among predictions with a confidence score >0.75, the validated proportion of good responders is 77%. The Spearman correlations between the predicted and the observed drug response are 0.68 (95% CI: [0.64, 0.68]) in the BeatAML validation set, -0.49 (95% CI: [-0.53, -0.44]) in the Swedish cohort and 0.59 (95% CI: [0.51, 0.67]) in the relapsed/refractory cohort. A web-based implementation of MDREAM is publicly available at https://www.meb.ki.se/shiny/truvu/MDREAM/ .
Keyphrases
- acute myeloid leukemia
- end stage renal disease
- gene expression
- allogeneic hematopoietic stem cell transplantation
- ejection fraction
- newly diagnosed
- chronic kidney disease
- healthcare
- single cell
- prognostic factors
- dna methylation
- primary care
- squamous cell carcinoma
- adverse drug
- emergency department
- drug induced
- radiation therapy
- bone marrow
- multiple myeloma
- electronic health record
- mesenchymal stem cells
- convolutional neural network
- neoadjuvant chemotherapy
- quality improvement
- neural network
- rectal cancer
- replacement therapy