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AutoML identification of microRNA biomarkers in high-risk pediatric acute lymphoblastic leukemia.

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Non-coding RNA research 📖 저널 OA 100% 2023: 1/1 OA 2024: 1/1 OA 2025: 9/9 OA 2026: 11/11 OA 2023~2026 2025 Vol.15() p. 120-131
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Kyriakidis I, Papadovasilakis Z, Papoutsoglou G, Pelagiadis I, Papadaki HA, Pontikoglou C, Stiakaki E

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Despite significant advancements in overall survival rates for childhood acute lymphoblastic leukemia (ALL), relapse continues to pose a major challenge.

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APA Kyriakidis I, Papadovasilakis Z, et al. (2025). AutoML identification of microRNA biomarkers in high-risk pediatric acute lymphoblastic leukemia.. Non-coding RNA research, 15, 120-131. https://doi.org/10.1016/j.ncrna.2025.08.003
MLA Kyriakidis I, et al.. "AutoML identification of microRNA biomarkers in high-risk pediatric acute lymphoblastic leukemia.." Non-coding RNA research, vol. 15, 2025, pp. 120-131.
PMID 40933721 ↗

Abstract

Despite significant advancements in overall survival rates for childhood acute lymphoblastic leukemia (ALL), relapse continues to pose a major challenge. MicroRNAs have proven valuable for improving diagnosis, treatment, and survival outcomes, establishing themselves as key biomarkers. Using RNA-seq data from 123 ALL patients and employing predictive modeling via automated machine learning (AutoML) alongside causal-inspired biomarker discovery, we identified highly predictive microRNA signatures linked to high-risk strata and clinical features in unfavorable cases. We further identified predictive signatures for each genetic subtype of childhood ALL, highlighting shared miRNAs throughout the study. A thorough literature review of the relationships between miRNA differential expression and key high-risk features in childhood ALL [immunophenotype, elevated white blood cell counts at diagnosis, central nervous system involvement, measurable residual disease (MRD), and chemoresistance] confirmed the signatures generated in this study. Our results revealed a highly predictive signature distinguishing B- and T-ALL, associated with apoptosis, confirming the reported difference between the two immunophenotypes. Additionally, miR-223 emerged as crucial for high-risk stratification and chemoresistant MRD-positive cases. These findings demonstrate the potential of AutoML tools to reveal novel biological insights in pediatric ALL, driving future advancements.

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