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首页> 外文期刊>Briefings in bioinformatics >HiFreSP: A novel high-frequency sub-pathway mining approach to identify robust prognostic gene signatures
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HiFreSP: A novel high-frequency sub-pathway mining approach to identify robust prognostic gene signatures

机译:HIFRESP:一种新型的高频分途挖掘方法,用于鉴定稳健的预后基因特征

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摘要

With the increasing awareness of heterogeneity in cancers, better prediction of cancer prognosis is much needed for more personalized treatment. Recently, extensive efforts have been made to explore the variations in gene expression for better prognosis. However, the prognostic gene signatures predicted by most existing methods have little robustness among different datasets of the same cancer. To improve the robustness of the gene signatures, we propose a novel high-frequency sub-pathways mining approach (HiFreSP), integrating a randomization strategy with gene interaction pathways.We identified a six-gene signature (CCND1, CSF3R, E2F2, JUP, RARA and TCF7) in esophageal squamous cell carcinoma (ESCC) by HiFreSP. This signature displayed a strong ability to predict the clinical outcome of ESCC patients in two independent datasets (log-rank test, P=0.0045 and 0.0087). To further show the predictive performance of HiFreSP, we applied it to two other cancers: pancreatic adenocarcinoma and breast cancer. The identified signatures show high predictive power in all testing datasets of the two cancers. Furthermore, compared with the two popular prognosis signature predicting methods, the least absolute shrinkage and selection operator penalized Cox proportional hazards model and the random survival forest, HiFreSP showed better predictive accuracy and generalization across all testing datasets of the above three cancers. Lastly, we applied HiFreSP to 8137 patients involving 20 cancer types in the TCGA database and found high-frequency prognosis-associated pathways in many cancers. Taken together, HiFreSP shows higher prognostic capability and greater robustness, and the identified signatures provide clinical guidance for cancer prognosis. HiFreSP is freely available via GitHub: https://github.com/chunquanlipathway/HiFreSP.
机译:随着对癌症的异质性的提高意识,对于更个性化的治疗,更需要更好地预测癌症预后。最近,已经进行了广泛的努力来探讨基因表达的变化以便更好的预后。然而,大多数现有方法预测的预后基因特征在同一癌症的不同数据集之间具有很小的鲁棒性。为了提高基因签名的稳健性,我们提出了一种新的高频子路径挖掘方法(HIFRESP),与基因相互作用途径集成随机化策略。我们鉴定了六基因签名(CCND1,CSF3R,E2F2,JUP, RARA和TCF7)在食管鳞状细胞癌(ESCC)通过HIFRESP。这种签名显示出强烈的能力,可以预测两个独立数据集中ESCC患者的临床结果(对数级测试,P = 0.0045和0.0087)。为了进一步展示HIFRESP的预测性能,我们将其应用于其他另外两种癌症:胰腺癌和乳腺癌。所识别的签名显示了两个癌症的所有测试数据集中的高预测力。此外,与两种普遍的预后签名预测方法相比,绝对收缩和选择操作员受到惩罚的Cox比例危害模型和随机生存森林,HIFRESP在上述三种癌症的所有测试数据集中显示了更好的预测准确性和泛化。最后,我们将HifremS应用于8137名涉及TCGA数据库中的20种癌症类型的患者,并发现许多癌症中的高频预后相关途径。占据了HIFRESP显示出更高的预后能力和更高的稳健性,并且所识别的签名为癌症预后提供了临床指导。通过github自由提供HIFRESP:https://github.com/chunquanlipathway/hifresp。

著录项

  • 来源
    《Briefings in bioinformatics》 |2020年第4期|共14页
  • 作者单位

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    the Key Laboratory of Molecular Biology for High Cancer Incidence Coastal Chaoshan Area Shantou University Medical College. His research area is bioinformatics.;

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    the Institute of Oncologic Pathology Shantou University Medical College.;

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    the Key Laboratory of Molecular Biology for High Cancer Incidence Coastal Chaoshan Area Shantou University Medical College.;

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    Departments of Oncology Surgery Shantou Central Hospital Affiliated Shantou Hospital of Sun Yat-Sen University.;

    the Institute of Oncologic Pathology Shantou University Medical College.;

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    the Key Laboratory of Molecular Biology for High Cancer Incidence Coastal Chaoshan Area Shantou University Medical College.;

    the School of Medical Informatics Daqing. Campus Harbin Medical University Daqing China.;

    the School of Medical Informatics Daqing Campus Harbin Medical University Daqing China.;

    the Key Laboratory of Molecular Biology for High Cancer Incidence Coastal Chaoshan Area Shantou University Medical College.;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 遗传学;
  • 关键词

    pathway; cancer prognosis; bootstrap training sets; RNA-Seq;

    机译:途径;癌症预后;Bootstrap训练集;RNA-SEQ;

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