2023
DOI: 10.1101/2023.05.17.541249
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Computational modeling of methylation impact of AML drivers reveals new pathways and refines AML risk-stratification

Abstract: Decades before its clinical onset, epigenetic changes start to accumulate in the progenitor cells of Acute Myelogenous Leukemia (AML). Delineating these changes can improve risk-stratification for patients and shed insights into AML etiology, dynamics and mechanisms. Towards this goal, we extracted epigenetic signatures through two parallel machine learning approaches: a supervised regression model using frequently mutated genes as labels and an unsupervised topic modeling approach to factorize covarying epige… Show more

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