一种新的分子预后网络模型。

Ying-Wooi Wan, Swetha Bose, James Denvir, Nancy Lan Guo
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引用次数: 5

摘要

基于网络的全基因组关联研究(NWAS)利用基因和功能途径之间的分子相互作用来鉴定生物标志物。本研究提出了一种新的基于网络的方法来识别预后基因特征以预测癌症复发。该方法包括以下步骤:1)构建不同疾病状态(转移性和非转移性)的全基因组共表达网络。预测逻辑是根据形式逻辑规则来归纳每对基因表达谱之间有效的隐含关系。2)从全基因组共表达网络中识别与特定疾病状态相关的差异组分。3)从疾病特异性差异成分剖析与主要疾病信号标志紧密相连的网络模块。4)从通路连接的网络模块中识别与临床结果相关的最重要基因/探针。使用这种方法,确定了早期肺癌患者准确分层的14个基因预后特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Novel Network Model for Molecular Prognosis.

A Novel Network Model for Molecular Prognosis.

A Novel Network Model for Molecular Prognosis.

A Novel Network Model for Molecular Prognosis.

Network-based genome-wide association studies (NWAS) utilize the molecular interactions between genes and functional pathways in biomarker identification. This study presents a novel network-based methodology for identifying prognostic gene signatures to predict cancer recurrence. The methodology contains the following steps: 1) Constructing genome-wide coexpression networks for different disease states (metastatic vs. non-metastatic). Prediction logic is used to induct valid implication relations between each pair of gene expression profiles in terms of formal logic rules. 2) Identifying differential components associated with specific disease states from the genome-wide coexpression networks. 3) Dissecting network modules that are tightly connected with major disease signal hallmarks from the disease specific differential components. 4) Identifying most significant genes/probes associated with clinical outcome from the pathway connected network modules. Using this methodology, a 14-gene prognostic signature was identified for accurate patient stratification in early stage lung cancer.

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