突变
生物
表型
遗传学
髓系白血病
癌症的体细胞进化
净现值1
髓样
白血病
基因
癌症研究
染色体
核型
作者
Ravindra Majeti,Matthew Schwede,Katharina Jahn,Jack Kuipers,Linde A. Miles,Robert L. Bowman,Troy M. Robinson,Ken Furudate,Hidetaka Uryu,Tomoyuki Tanaka,Yuya Sasaki,Asiri Ediriwickrema,Brooks A. Benard,Andrew J. Gentles,Ross L. Levine,Niko Beerenwinkel,Koichi Takahashi
出处
期刊:Research Square - Research Square
日期:2023-11-06
被引量:1
标识
DOI:10.21203/rs.3.rs-3516536/v1
摘要
Abstract Acute myeloid leukemia (AML) has a poor prognosis and a heterogeneous mutation landscape. Although common mutations are well-studied, little research has characterized how the sequence of mutations relates to clinical features. Using published, single-cell DNA sequencing data from three institutions, we compared clonal evolution patterns in AML to patient characteristics, disease phenotype, and outcomes. Mutation trees, which represent the order of select mutations, were created for 207 patients from targeted panel sequencing data using 1 639 162 cells, 823 mutations, and 275 samples. In 224 distinct orderings of mutated genes, mutations related to DNA methylation typically preceded those related to cell signaling, but signaling-first cases did occur, and had higher peripheral cell counts, increased signaling mutation homozygosity, and younger patient age. Serial sample analysis suggested that NPM1 and DNA methylation mutations provide an advantage to signaling mutations in AML. Interestingly, WT1 mutation evolution shared features with signaling mutations, such as WT1-early being proliferative and occurring in younger individuals, trends that remained in multivariable regression. Some mutation orderings had a worse prognosis, but this was mediated by unfavorable mutations, not mutation order. These findings add a dimension to the mutation landscape of AML, identifying uncommon patterns of leukemogenesis and shedding light on heterogenous phenotypes.
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