Leveraging DAGs to improve context-sensitive and abundance-aware tree estimation.

IF 4.7 2区 生物学 Q1 BIOLOGY Philosophical Transactions of the Royal Society B: Biological Sciences Pub Date : 2025-02-13 Epub Date: 2025-02-20 DOI:10.1098/rstb.2023.0315
Will Dumm, Duncan Ralph, William DeWitt, Ashni Vora, Tatsuya Araki, Gabriel D Victora, Frederick A Matsen Iv
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Abstract

The phylogenetic inference package GCtree uses abundance of sampled sequences to improve the performance of parsimony-based inference, using a branching process model. Our previous work showed that GCtree performs competitively on B-cell receptor data, compared with other similar tools. In this article, we describe recent enhancements to GCtree, including an efficient tree storage data structure that discovers additional diversity of parsimonious trees with negligible additional computational cost. We also describe a suite of new objective functions that can be used to rank these trees, including a Poisson context likelihood function that models sequence evolution in a context-sensitive way. We validate these additions to GCtree with simulated B-cell receptor data, and benchmark performance against other phylogenetic inference tools.This article is part of the theme issue '"A mathematical theory of evolution": phylogenetic models dating back 100 years'.

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利用dag改进上下文敏感和丰度感知的树估计。
系统发育推理包GCtree使用分支过程模型,利用大量的采样序列来提高基于简约性推理的性能。我们之前的工作表明,与其他类似工具相比,GCtree在b细胞受体数据上具有竞争力。在本文中,我们描述了最近对GCtree的增强,包括一种高效的树存储数据结构,它可以发现简约树的额外多样性,而额外的计算成本可以忽略不计。我们还描述了一套新的目标函数,可用于对这些树进行排序,包括以上下文敏感的方式建模序列进化的泊松上下文似然函数。我们用模拟的b细胞受体数据验证了这些添加到GCtree中的内容,并对其他系统发育推断工具进行了基准性能测试。这篇文章是主题“进化的数学理论”的一部分:追溯到100年前的系统发育模型。
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CiteScore
11.80
自引率
1.60%
发文量
365
审稿时长
3 months
期刊介绍: The journal publishes topics across the life sciences. As long as the core subject lies within the biological sciences, some issues may also include content crossing into other areas such as the physical sciences, social sciences, biophysics, policy, economics etc. Issues generally sit within four broad areas (although many issues sit across these areas): Organismal, environmental and evolutionary biology Neuroscience and cognition Cellular, molecular and developmental biology Health and disease.
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