Cancers (Aug 2023)

A Personalized Risk Model for Azacitidine Outcome in Myelodysplastic Syndrome and Other Myeloid Neoplasms Identified by Machine Learning Model Utilizing Real-World Data

  • Kirsty Sharplin,
  • William Proudman,
  • Rakchha Chhetri,
  • Elizabeth Ngoc Hoa Tran,
  • Jamie Choong,
  • Monika Kutyna,
  • Philip Selby,
  • Aidan Sapio,
  • Oisin Friel,
  • Shreyas Khanna,
  • Deepak Singhal,
  • Michelle Damin,
  • David Ross,
  • David Yeung,
  • Daniel Thomas,
  • Chung H. Kok,
  • Devendra Hiwase

DOI
https://doi.org/10.3390/cancers15164019
Journal volume & issue
Vol. 15, no. 16
p. 4019

Abstract

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Azacitidine is an approved therapy for higher-risk myelodysplastic syndrome (MDS). However, only 30–40% patients respond to azacitidine, and the responses may take up to six cycles to become evident. Delayed responses and the myelosuppressive effects of azacitidine make it challenging to predict which patients will benefit. This is further compounded by a lack of uniform prognostic tools to identify patients at risk of early treatment failure. Hence, we performed a retrospective analysis of 273 consecutive azacytidine-treated patients. The median overall survival was 16.25 months with only 9% alive at 5 years. By using pre-treatment variables incorporated into a random forest machine learning model, we successfully identified those patients unlikely to benefit from azacytidine upfront (7.99 vs. 22.8 months, p p < 0.0001). These real-world findings emphasize the urgent need for personalized prediction tools tailored to hypomethylating agents, reducing unnecessary complications and resource utilization in MDS treatment.

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