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High Dimensional Unsupervised Approaches for Dealing with Heterogeneity of Cell Populations and Proliferation of Algorithmic Tools

机译:处理细胞群体异质性和算法工具扩散的高维无监督方法

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Revealing the clonal composition of a single tumor is essential for identifying cell subpopulations with metastatic potential in primary tumors or with resistance to therapies in metastatic tumors. Bulk sequencing technologies provide only an overview of the aggregate of numerous cells. We propose an evolutionary framework for deconvolving data from a bulk genome-wide experiment to infer the composition, abundance and evolutionary paths of the underlying cell subpopulations of a tumor. With advances in high throughput single cell techniques, we can in principle resolve these issues. However, these techniques introduce new challenges such as analyzing datasets of millions of cells, batch effects, missing values etc. We provide several algorithmic solutions for some of these challenges. Finally, a key challenge in bioinformatics is how to rank and combine the possibly conflicting predictions of several algorithms, of unknown reliability. We provide new mathematical insights of striking conceptual simplicity that explain mutual relationships between independent classifiers/algorithms. These insights enable the design of efficient, robust and reliable methods to rank the classifiers performances and construct improved predictions in the absence of ground truth.
机译:揭示单个肿瘤的克隆组成对于鉴定在原发性肿瘤中具有转移潜力或对转移性肿瘤具有治疗抗性的细胞亚群至关重要。批量测序技术仅提供众多细胞聚集的概述。我们提出了一个进化框架,用于对来自整个全基因组实验的数据进行反卷积,以推断肿瘤的基础细胞亚群的组成,丰度和进化途径。随着高通量单细胞技术的进步,我们原则上可以解决这些问题。但是,这些技术带来了新的挑战,例如分析数百万个细胞的数据集,批处理效应,缺失值等。我们为其中一些挑战提供了几种算法解决方案。最后,生物信息学中的一个关键挑战是如何对几种算法的可靠性未知的排名进行排序和组合。我们提供了惊人的概念简单性的新数学见解,它们解释了独立分类器/算法之间的相互关系。这些见解使我们能够设计出有效,鲁棒和可靠的方法来对分类器的性能进行排名,并在没有基本事实的情况下构建改进的预测。

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