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Multi-study reanalysis of 2,213 acute myeloid leukemia patients reveals age- and sex-dependent gene expression signatures

机译:2,213名急性髓性白血病患者的多研究再分析显示出年龄和性依赖性基因表达特征

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In 2019 it is estimated that more than 21,000 new acute myeloid leukemia (AML) patients will be diagnosed in the United States, and nearly 11,000 are expected to die from the disease. AML is primarily diagnosed among the elderly (median 68 years old at diagnosis). Prognoses have significantly improved for younger patients, but as much as 70% of patients over 60 years old will die within a year of diagnosis. In this study, we conducted a reanalysis?of 2,213 acute myeloid leukemia patients compared to 548 healthy individuals, using curated publicly available microarray gene expression data. We carried out an analysis of normalized batch corrected data, using a linear model that included considerations for disease, age, sex, and tissue. We identified 974 differentially expressed probe sets and 4 significant pathways associated with AML. Additionally, we identified 375 age- and 70 sex-related probe set expression signatures relevant to AML. Finally, we trained a k nearest neighbors model to classify AML and healthy subjects with 90.9% accuracy. Our findings provide a new reanalysis of public datasets, that enabled the identification of new gene sets relevant to AML that can potentially be used in future experiments and possible stratified disease diagnostics.
机译:在2019年估计超过21,000新的急性髓系白血病(AML)患者将被诊断在美国,和近11000预计从疾病死亡。 AML主要诊断老年人(平均68岁,诊断)之间。预后年轻患者有显著改善,但患者在60岁以上高达70%,将在诊断一年内死亡。在这项研究中,我们进行了再分析?的2213名急性髓细胞白血病患者相比,548健康人,策划利用公开可用的微阵列基因表达数据。我们进行了规范化的批生产修正后的数据进行分析,使用,包括疾病,年龄,性别和组织方面的考虑线性模型。我们确定了974个差异表达探针组与AML相关的4种显著途径。此外,我们确定了375名年龄和性别70相关的探针组表达签名相关的AML。最后,我们培养了K最近邻居模型进行分类AML与90.9%的准确度健康受试者。我们的研究结果提供公共数据集的新的再分析,这使的,可在潜在未来的实验和可能的分层疾病的诊断中使用相关的反洗钱新的基因组的鉴定。

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