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首页> 外文期刊>BMC Bioinformatics >Integration of gene expression and DNA-methylation profiles improves molecular subtype classification in acute myeloid leukemia
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Integration of gene expression and DNA-methylation profiles improves molecular subtype classification in acute myeloid leukemia

机译:基因表达和DNA-甲基化型材的整合提高了急性髓鞘白血病中的分子亚型分类

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Background Acute Myeloid Leukemia (AML) is characterized by various cytogenetic and molecular abnormalities. Detection of these abnormalities is important in the risk-classification of patients but requires laborious experimentation. Various studies showed that gene expression profiles (GEP), and the gene signatures derived from GEP, can be used for the prediction of subtypes in AML. Similarly, successful prediction was also achieved by exploiting DNA-methylation profiles (DMP). There are, however, no studies that compared classification accuracy and performance between GEP and DMP, neither are there studies that integrated both types of data to determine whether predictive power can be improved. Approach Here, we used 344 well-characterized AML samples for which both gene expression and DNA-methylation profiles are available. We created three different classification strategies including early, late and no integration of these datasets and used them to predict AML subtypes using a logistic regression model with Lasso regularization. Results We illustrate that both gene expression and DNA-methylation profiles contain distinct patterns that contribute to discriminating AML subtypes and that an integration strategy can exploit these patterns to achieve synergy between both data types. We show that concatenation of features from both data sets, i.e. early integration, improves the predictive power compared to classifiers trained on GEP or DMP alone. A more sophisticated strategy, i.e. the late integration strategy, employs a two-layer classifier which outperforms the early integration strategy. Conclusion We demonstrate that prediction of known cytogenetic and molecular abnormalities in AML can be further improved by integrating GEP and DMP profiles.
机译:背景技术急性髓性白血病(AML)的特征在于各种细胞遗传学和分子异常。这些异常的检测对于患者的风险分类而言是重要的,但需要艰苦的实验。各种研究表明,基因表达谱(GEP)和衍生自GEP的基因特征可用于预测AML中的亚型。类似地,通过利用DNA-甲基化曲线(DMP)也实现了成功的预测。然而,没有研究比较了GEP和DMP之间的分类准确性和性能,也没有关于集成两种类型的数据来确定是否可以提高预测功率。在此处方法,我们使用了344种良好的表征AML样本,其均可获得基因表达和DNA-甲基化型材。我们创建了三种不同的分类策略,包括早期,迟到,没有这些数据集的集成,并使用它们使用带套索正则化的Logistic回归模型来预测AML子类型。结果表明,两种基因表达和DNA - 甲基化型材含有有助于区分AML亚型的不同模式,并且集成策略可以利用这些模式来实现两个数据类型之间的协同作用。我们表明,与单独在GEP或DMP上训练的分类器相比,提高了数据集的特征的串联,即早期集成,提高了预测功率。即更复杂的策略,即延迟整合策略,采用了两层分类器,优于早期集成策略。结论我们证明通过整合GEP和DMP型材可以进一步提高AML中已知细胞遗传学和分子异常的预测。

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