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Pathway-based biomarker identification with crosstalk analysis for robust prognosis prediction in hepatocellular carcinoma

机译:基于串扰分析的基于路径的生物标志物鉴定可在肝细胞癌中进行可靠的预后预测

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Background Although many prognostic single-gene (SG) lists have been identified in cancer research, application of these features is hampered due to poor robustness and performance on independent datasets. Pathway-based approaches have thus emerged which embed biological knowledge to yield reproducible features. Methods Pathifier estimates pathways deregulation score (PDS) to represent the extent of pathway deregulation based on expression data, and most of its applications treat pathways as independent without addressing the effect of gene overlap between pathway pairs which we refer to as crosstalk . Here, we propose a novel procedure based on Pathifier methodology, which for the first time has been utilized with crosstalk accommodated to identify disease-specific features to predict prognosis in patients with hepatocellular carcinoma (HCC). Findings With the cohort (N?=?355) of HCC patients from The Cancer Genome Atlas (TCGA), cross validation (CV) revealed that PDSs identified were more robust and accurate than the SG features by deep learning (DL)-based approach. When validated on external HCC datasets, these features outperformed the SGs consistently. Interpretation On average, we provide 10.2% improvement of prediction accuracy. Importantly, governing genes in these features provide valuable insight into the cancer hallmarks of HCC. We develop an R package PATHcrosstalk (available from GitHub https://github.com/fabotao/PATHcrosstalk ) with which users can discover pathways of interest with crosstalk effect considered.
机译:背景技术尽管在癌症研究中已经确定了许多预后性单基因(SG)列表,但是由于独立数据集的鲁棒性和性能不佳,这些功能的应用受到了阻碍。因此,出现了基于途径的方法,该方法将生物学知识嵌入其中以产生可再现的特征。方法Pathifier基于表达数据估算通路失调分数(PDS)来表示通路失衡的程度,其大多数应用将通路视为独立通路,而没有解决通路对之间的基因重叠效应(我们称之为串扰)。在这里,我们提出了一种基于Pathifier方法的新方法,该方法首次被用于串扰,以鉴定疾病特异性特征来预测肝细胞癌(HCC)患者的预后。研究结果与癌症基因组图谱(TCGA)的HCC患者队列(N?=?355)进行交叉验证(CV)表明,通过基于深度学习(DL)的方法,所鉴定的PDS比SG功能更健壮和准确。在外部HCC数据集上进行验证时,这些功能始终优于SG。解释平均而言,我们将预测准确性提高了10.2%。重要的是,控制这些特征中的基因为了解HCC的癌症特征提供了宝贵的见识。我们开发了一个R包PATHcrosstalk(可从GitHub https://github.com/fabotao/PATHcrosstalk获得),用户可以使用它找到考虑了串扰效应的感兴趣的路径。

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