基于噪声实验的超声树重建

Eshwar Ram Arunachaleswaran, Anindya De, Sampath Kannan
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引用次数: 0

摘要

在计算生物学中,重建进化树或系统发生问题是一个非常有趣的问题。这个问题的一个流行模型假设我们得到一棵未知二叉树的叶子(当前物种)的集合,以及叶子三元组(A,b,c)的“实验”结果,它返回具有最深最小共同祖先的那对。如果假设这棵树是超尺度的(即所有的根-叶路径都有相同的长度),则可以等效地看到实验返回的是最近的一对叶子。在这个模型中,有效的算法以树重建而闻名。实际上,由于这些“实验”所依据的数据本身是由随机进化过程产生的,因此这些实验是有噪声的。在所有合理的进化模型中,如果通向树叶的三联枝在共同的祖先处彼此分离,而这些祖先在树中彼此非常接近,那么实验的结果应该接近于均匀随机。受此启发,我们考虑一个模型,其中任何三元组上的噪声仅依赖于三个成对的距离(称为基于距离的噪声)。我们的研究结果如下:假设未知树中每条边的长度至少是根-叶路径长度的$\tilde{O}(\frac{1}{\sqrt n})$分数。然后,我们给出了一种有效的算法来重建广泛的基于距离的噪声模型的树的拓扑结构。进一步,我们证明了如果边渐近变短,那么拓扑重建在信息理论上是不可能的。2. 此外,对于特定的基于距离的噪声模型(我们称之为均匀噪声模型),我们表明边缘权重也可以在边缘长度的相同定量下界下近似重建。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconstructing Ultrametric Trees from Noisy Experiments
The problem of reconstructing evolutionary trees or phylogenies is of great interest in computational biology. A popular model for this problem assumes that we are given the set of leaves (current species) of an unknown binary tree and the results of `experiments' on triples of leaves (a,b,c), which return the pair with the deepest least common ancestor. If the tree is assumed to be an ultrametric (i.e., all root-leaf paths have the same length), the experiment can be equivalently seen to return the closest pair of leaves. In this model, efficient algorithms are known for tree reconstruction. In reality, since the data on which these `experiments' are run is itself generated by the stochastic process of evolution, these experiments are noisy. In all reasonable models of evolution, if the branches leading to the leaves in a triple separate from each other at common ancestors that are very close to each other in the tree, the result of the experiment should be close to uniformly random. Motivated by this, we consider a model where the noise on any triple is just dependent on the three pairwise distances (referred to as distance based noise). Our results are the following: 1. Suppose the length of every edge in the unknown tree is at least $\tilde{O}(\frac{1}{\sqrt n})$ fraction of the length of a root-leaf path. Then, we give an efficient algorithm to reconstruct the topology of the tree for a broad family of distance-based noise models. Further, we show that if the edges are asymptotically shorter, then topology reconstruction is information-theoretically impossible. 2. Further, for a specific distance-based noise model--which we refer to as the homogeneous noise model--we show that the edge weights can also be approximately reconstructed under the same quantitative lower bound on the edge lengths.
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