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Inferring cancer subnetwork markers using density-constrained biclustering.

机译:使用密度受限的双聚类分析法推断癌症子网络标记。

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MOTIVATION: Recent genomic studies have confirmed that cancer is of utmost phenotypical complexity, varying greatly in terms of subtypes and evolutionary stages. When classifying cancer tissue samples, subnetwork marker approaches have proven to be superior over single gene marker approaches, most importantly in cross-platform evaluation schemes. However, prior subnetwork-based approaches do not explicitly address the great phenotypical complexity of cancer. RESULTS: We explicitly address this and employ density-constrained biclustering to compute subnetwork markers, which reflect pathways being dysregulated in many, but not necessarily all samples under consideration. In breast cancer we achieve substantial improvements over all cross-platform applicable approaches when predicting TP53 mutation status in a well-established non-cross-platform setting. In colon cancer, we raise prediction accuracy in the most difficult instances from 87% to 93% for cancer versus non-cancer and from 83% to (astonishing) 92%, for with versus without liver metastasis, in well-established cross-platform evaluation schemes. AVAILABILITY: Software is available on request.
机译:动机:最近的基因组研究证实,癌症具有最大的表型复杂性,在亚型和进化阶段方面差异很大。在对癌组织样本进行分类时,已证明子网标记方法优于单基因标记方法,最重要的是在跨平台评估方案中。但是,现有的基于子网的方法并未明确解决癌症的巨大表型复杂性。结果:我们明确地解决了这一问题,并采用了密度受限的双聚类算法来计算子网标记,这些标记反映了许多(但不一定是所有)正在考虑的样本中失调的途径。在乳腺癌中,当在完善的非跨平台环境中预测TP53突变状态时,我们在所有跨平台适用方法上均取得了显着改善。在结肠癌中,在公认的跨平台中,无论有无肝转移,在最困难的情况下,对于有肝转移与无肝转移,我们将癌症相对于非癌的预测准确性从87%提高到93%,并将预测准确性从83%提高到(惊人的)92%评估方案。可用性:可应要求提供软件。

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