cloneRate: fast estimation of single-cell clonal dynamics using coalescent theory.

IF 4.4 3区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Bioinformatics Pub Date : 2023-09-02 DOI:10.1093/bioinformatics/btad561
Brian Johnson, Yubo Shuai, Jason Schweinsberg, Kit Curtius
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Abstract

Motivation: While evolutionary approaches to medicine show promise, measuring evolution itself is difficult due to experimental constraints and the dynamic nature of body systems. In cancer evolution, continuous observation of clonal architecture is impossible, and longitudinal samples from multiple timepoints are rare. Increasingly available DNA sequencing datasets at single-cell resolution enable the reconstruction of past evolution using mutational history, allowing for a better understanding of dynamics prior to detectable disease. There is an unmet need for an accurate, fast, and easy-to-use method to quantify clone growth dynamics from these datasets.

Results: We derived methods based on coalescent theory for estimating the net growth rate of clones using either reconstructed phylogenies or the number of shared mutations. We applied and validated our analytical methods for estimating the net growth rate of clones, eliminating the need for complex simulations used in previous methods. When applied to hematopoietic data, we show that our estimates may have broad applications to improve mechanistic understanding and prognostic ability. Compared to clones with a single or unknown driver mutation, clones with multiple drivers have significantly increased growth rates (median 0.94 versus 0.25 per year; P = 1.6×10-6). Further, stratifying patients with a myeloproliferative neoplasm (MPN) by the growth rate of their fittest clone shows that higher growth rates are associated with shorter time to MPN diagnosis (median 13.9 versus 26.4 months; P = 0.0026).

Availability and implementation: We developed a publicly available R package, cloneRate, to implement our methods (Package website: https://bdj34.github.io/cloneRate/). Source code: https://github.com/bdj34/cloneRate/.

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cloneRate:使用联合理论快速估计单细胞克隆动力学。
动机:虽然进化医学方法显示出前景,但由于实验限制和身体系统的动态性质,测量进化本身很困难。在癌症进化中,克隆结构的连续观察是不可能的,并且来自多个时间点的纵向样本是罕见的。越来越多的单细胞分辨率的DNA测序数据集能够利用突变历史重建过去的进化,从而更好地了解可检测疾病之前的动力学。对一种准确、快速、易于使用的方法来量化这些数据集的克隆生长动态的需求尚未得到满足。结果:我们推导了基于联合理论的方法,使用重建的系统发育或共享突变的数量来估计克隆的净生长率。我们应用并验证了我们的分析方法来估计克隆的净增长率,消除了以前方法中使用的复杂模拟的需要。当应用于造血数据时,我们表明我们的估计可能具有广泛的应用,以提高对机制的理解和预后能力。与具有单一或未知驱动因素突变的克隆相比,具有多个驱动因素的克隆的生长率显著提高(中位数为0.94,而每年为0.25;P = 1.6×10-6)。此外,根据最适克隆的生长率对骨髓增生性肿瘤(MPN)患者进行分层显示,较高的生长率与较短的诊断时间有关(中位数13.9对26.4 月;P = 0.0026)。可用性和实现:我们开发了一个公开可用的R包cloneRate来实现我们的方法(包网站:https://bdj34.github.io/cloneRate/)。源代码:https://github.com/bdj34/cloneRate/.
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来源期刊
Bioinformatics
Bioinformatics 生物-生化研究方法
CiteScore
11.20
自引率
5.20%
发文量
753
审稿时长
2.1 months
期刊介绍: The leading journal in its field, Bioinformatics publishes the highest quality scientific papers and review articles of interest to academic and industrial researchers. Its main focus is on new developments in genome bioinformatics and computational biology. Two distinct sections within the journal - Discovery Notes and Application Notes- focus on shorter papers; the former reporting biologically interesting discoveries using computational methods, the latter exploring the applications used for experiments.
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