“…With the widespread adoption of next-generation sequencing (NGS) technologies, it becomes feasible to comprehensively explore the genomic and transcriptomic profiles, which may largely promote the precise classification and prognostic evaluation of AML patients (5)(6)(7). To date, numerous genome-and transcriptome-based AML prognostic models have been developed, including the 17-gene stemness score (LSC17) defined by stem cell subsets (8), the 16gene AML fitness (AFG16) from large-scale CRISPR-Cas9 screening (9), and the GENE4 generated by capturing intratumor heterogeneity of AML (10), indicating that the gene transcriptional data could capture the heterogeneity of AML patients and largely refine the traditional risk assignment system. In this context, integrating multiomics data offers insights to identify novel molecular markers with prognostic and therapeutic value in AML, enabling more precise therapy and refined stratification, which represents a major area of future research.…”