npj Precision Oncology (Mar 2023)

Prediction model for drug response of acute myeloid leukemia patients

  • Quang Thinh Trac,
  • Yudi Pawitan,
  • Tian Mou,
  • Tom Erkers,
  • Päivi Östling,
  • Anna Bohlin,
  • Albin Österroos,
  • Mattias Vesterlund,
  • Rozbeh Jafari,
  • Ioannis Siavelis,
  • Helena Bäckvall,
  • Santeri Kiviluoto,
  • Lukas M. Orre,
  • Mattias Rantalainen,
  • Janne Lehtiö,
  • Sören Lehmann,
  • Olli Kallioniemi,
  • Trung Nghia Vu

DOI
https://doi.org/10.1038/s41698-023-00374-z
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 10

Abstract

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Abstract 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/ .