首页> 外文会议>Asia-Pacific Bioinformatics Conference >Medoidshift clustering applied to genomic bulk tumor data
【24h】

Medoidshift clustering applied to genomic bulk tumor data

机译:Medoidssshift聚类适用于基因组散装肿瘤数据

获取原文

摘要

Despite the enormous medical impact of cancers and intensive study of their biology, detailed characterization of tumor growth and development remains elusive. This difficulty occurs in large part because of enormous heterogeneity in the molecular mechanisms of cancer progression, both tumor-to-tumor and cell-to-cell in single tumors. Advances in genomic technologies, especially at the single-cell level, are improving the situation, but these approaches are held back by limitations of the biotechnologies for gathering genomic data from heterogeneous cell populations and the computational methods for making sense of those data. One popular way to gain the advantages of whole-genome methods without the cost of single-cell genomics has been the use ofcomputational deconvolution (unmixing) methods to reconstruct clonal heterogeneity from bulk genomic data. These methods, too, are limited by the difficulty of inferring genomic profiles of rare or subtly varying clonal subpopulationsfrom bulk data, a problem that can be computationally reduced to that of reconstructing the geometry of point clouds of tumor samples in a genome space. Here, we present a new method to improve that reconstruction by better identifying subspaces corresponding to tumors produced from mixtures of distinct combinations of clonal subpopulations. We develop a nonparametric clustering method based on medoidshift clustering for identifying subgroups of tumors expected to correspond to distinct trajectories of evolutionary progression. We show on synthetic and real tumor copy-number data that this new method substantially improves our ability to resolve discrete tumor subgroups, a key step in the process of accurately deconvolving tumor genomic data and inferring clonal heterogeneity from bulk data.
机译:尽管癌症和密集研究对其生物学的影响巨大的医学影响,但肿瘤生长和发展的详细表征仍然是难以捉摸的。由于癌症进展的分子机制,单一肿瘤中的肿瘤到肿瘤和细胞对细胞的分子机制,这种困难发生在很大程度上。基因组技术的进步,特别是在单细胞层面,正在提高这种情况,但这些方法被生物技术从异构细胞群收集基因组数据的局限性和用于理解这些数据的计算方法的局限性。一种流行的方法来获得整个基因组方法的优势,没有单细胞基因组学的成本一直是从批量基因组数据中重建克隆异质性的推出卷积(解密)方法。这些方法也受到难以推断稀有或巧克力变化的克隆族群的难以推断的克隆数据的基因组谱的限制,该问题可以计算到基因组空间中重建肿瘤样本点云的几何形状的问题。在这里,我们提出了一种新方法,以通过更好地识别与来自克隆群组合的不同组合的混合物产生的肿瘤相对应的子空间来改善重建。我们基于MEDOIDSSSHIFT聚类开发了一种非参数聚类方法,用于识别预期对应于进化进展的不同轨迹的肿瘤子组。我们展示了这种新方法的合成和真实肿瘤拷贝数数据,即这种新方法大大提高了我们解析离散肿瘤亚组的能力,是准确解构肿瘤基因组数据和从批量数据推断克隆异质性的过程中的关键步骤。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号