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Integrative Pathway Analysis Using Graph-Based Learning with Applications to TCGA Colon and Ovarian Data

机译:基于图的学​​习的综合路径分析及其在TCGA结肠和卵巢数据中的应用

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Recent method development has included multi-dimensional genomic data algorithms because such methods have more accurately predicted clinical phenotypes related to disease. This study is the first to conduct an integrative genomic pathway-based analysis with a graph-based learning algorithm. The methodology of this analysis, graph-based semi-supervised learning, detects pathways that improve prediction of a dichotomous variable, which in this study is cancer stage. This analysis integrates genome-level gene expression, methylation, and single nucleotide polymorphism (SNP) data in serous cystadenocarcinoma (OV) and colon adenocarcinoma (COAD). The top 10 ranked predictive pathways in COAD and OV were biologically relevant to their respective cancer stages and significantly enhanced prediction accuracy and area under the ROC curve (AUC) when compared to single data-type analyses. This method is an effective way to simultaneously predict binary clinical phenotypes and discover their biological mechanisms.
机译:最近的方法开发已包括多维基因组数据算法,因为此类方法已更准确地预测了与疾病相关的临床表型。这项研究是首次使用基于图的学​​习算法进行基于基因组途径的综合分析。这种分析的方法是基于图的半监督学习,它检测改善二分变量预测的途径,在该研究中,二分变量是癌症阶段。这项分析整合了浆液性膀胱腺癌(OV)和结肠腺癌(COAD)中基因组水平的基因表达,甲基化和单核苷酸多态性(SNP)数据。与单一数据类型分析相比,COAD和OV中排名前10位的预测途径与它们各自的癌症分期在生物学上相关,并且显着提高了预测准确性和ROC曲线下的面积(AUC)。该方法是同时预测二元临床表型并发现其生物学机制的有效方法。

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