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BioDog, biomarker detection for improving identification power of breast cancer histologic grade in methylomics

机译:生物景观,生物标志物检测,用于提高乳腺癌组织学等学率的鉴定力

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Aim: Breast cancer histologic grade (HG) is a well-established prognostic factor. This study aimed to select methylomic biomarkers to predict breast cancer HGs. Materials & methods: The proposed algorithm BioDog firstly used correlation bias reduction strategy to eliminate redundant features. Then incremental feature selection was applied to find the features with a high HG prediction accuracy. The sequential backward feature elimination strategy was employed to further refine the biomarkers. A comparison with existing algorithms were conducted. The HG-specific somatic mutations were investigated. Results & conclusions: BioDog achieved accuracy 0.9973 using 92 methylomic biomarkers for predicting breast cancer HGs. Many of these biomarkers were within the genes and lncRNAs associated with the HG development in breast cancer or other cancer types.
机译:目的:乳腺癌组织学等学级(Hg)是一种良好的预后因素。 本研究旨在选择甲基MIOMarkers预测乳腺癌HGS。 材料与方法:所提出的算法BioDoG首先使用相关偏差缩减策略来消除冗余功能。 然后应用增量特征选择来查找具有高HG预测精度的特征。 使用顺序向后特征消除策略来进一步优化生物标志物。 进行与现有算法的比较。 研究了HG特异性体细胞突变。 结果与结论:使用92甲基MIOMarkers预测乳腺癌HGS的精度为0.9973的BioDog实现。 许多这些生物标志物都在基因和LNCRNA内与乳腺癌或其他癌症类型的HG发育相关。

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