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

Author:

Sharplin Kirsty1,Proudman William1ORCID,Chhetri Rakchha123,Tran Elizabeth Ngoc Hoa23,Choong Jamie1,Kutyna Monika123,Selby Philip13,Sapio Aidan1,Friel Oisin14,Khanna Shreyas3,Singhal Deepak13,Damin Michelle1,Ross David1356ORCID,Yeung David1235,Thomas Daniel1235,Kok Chung H.235ORCID,Hiwase Devendra1235

Affiliation:

1. Royal Adelaide Hospital, Central Adelaide Local Health Network, Adelaide, SA 5000, Australia

2. Precision Medicine Theme, South Australian Health and Medical Research Institute (SAHMRI), Adelaide, SA 5000, Australia

3. Adelaide Medical School, The University of Adelaide, Adelaide, SA 5000, Australia

4. Beaumont Hospital, D09 V2N0 Dublin, Ireland

5. Centre for Cancer Biology, University of South Australia and SA Pathology, Adelaide, SA 5000, Australia

6. Genetic and Molecular Pathology, SA Pathology, Adelaide, SA 5000, Australia

Abstract

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 < 0.0001). This model also identified those who required significantly more hospitalizations and transfusion support. Notably, it accurately predicted survival outcomes, outperforming the existing prognostic scoring system. By integrating somatic mutations, we further refined the model and identified three distinct risk groups with significant differences in survival (5.6 vs. 10.5 vs. 43.5 months, 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.

Funder

National Health and Medical Research Council/Medical Research Future Fund Investigator

CSL Centenary Fellowship

Publisher

MDPI AG

Subject

Cancer Research,Oncology

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