Efficient probabilistic inference and Bayesian non-parametrics with applications in phylogenetics and cancer genomics
高效的概率推理和贝叶斯非参数学在系统发育学和癌症基因组学中的应用
基本信息
- 批准号:RGPIN-2016-04270
- 负责人:
- 金额:$ 3.35万
- 依托单位:
- 依托单位国家:加拿大
- 项目类别:Discovery Grants Program - Individual
- 财政年份:2018
- 资助国家:加拿大
- 起止时间:2018-01-01 至 2019-12-31
- 项目状态:已结题
- 来源:
- 关键词:
项目摘要
The fields of computational and statistical phylogenetics are concerned with the modelling and inference of evolutionary relationships. These fields have grown rapidly in recent years due to important advances in sequencing technologies. Many challenges, however, remain. One such example arises in the area of cancer phylogenetics, and relates to the characterization of evolutionary dynamics within cancer tumours. More specifically, the challenge arises from the need to characterize the evolution of individual cancer cells, where researchers are presented with mixtures of multiple sub-populations of cancer cells that have acquired different sets of mutations.******At present, the core challenges in phylogenetics are computational and statistical in nature. This is not only true in the cancer phylogenetics example just referred to, but also in many other cases where phylogenetic models are based on complex datatypes such as sequence alignments or gene trees. A unifying feature of the computational and statistical challenges presently facing phylogenetics are that they require complex and nuanced approaches that incorporate the building of models and the task of performing inference over combinatorial structures.******My research aims to address this important challenge in phylogenetics. More specifically, my research aims to create efficient methods for statistical inference over combinatorial structures, with a focus on models that arise in phylogenetic analysis. My research proposal emphasizes models from the field of cancer phylogenetics, but also considers applications to other phylogenetic contexts, such as joint tree and alignment inference. Many of the methods developed from this research proposal will also be applicable to data analysis situations encountered in several other branches of machine learning (such as natural language processing, computer vision, and computational biology).******My research proposal is composed of three inter-related goals:******1. To develop practical Bayesian Non-Parametrics (BNP): BNP provides an effective framework to approach latent variables over combinatorial spaces, however, significant limitations remain with BNP, in particular, computational scalability, and a steep learning curve for users. I will develop methods that address these issues.******2. To develop scalable inference methods for intractable evolutionary models: Traditional phylogenetic models typically assume that given a hypothesized tree, the likelihood of the data can be computed in polynomial time. I will develop scalable phylogenetic methods that relax this assumption.******3. Probabilistic inference over partially observed stochastic differential equations (SDEs): My goal is to develop new methodologies that make it easier for practitioners to develop models declaratively while keeping computational costs low.**
计算和统计系统发育学领域涉及进化关系的建模和推断。近年来,由于测序技术的重要进步,这些领域发展迅速。然而,许多挑战依然存在。一个这样的例子出现在癌症系统发生学领域,涉及癌症肿瘤内进化动力学的特征。更具体地说,这一挑战源于描述单个癌细胞进化的需要,在这种情况下,研究人员面临的是获得不同组突变的多个癌细胞亚群的混合。*目前,系统发育学的核心挑战本质上是计算和统计。这不仅在刚才提到的癌症系统发育学例子中是正确的,而且在许多其他情况下也是如此,其中系统发育模型基于复杂的数据类型,例如序列比对或基因树。目前系统发育学面临的计算和统计挑战的一个统一特征是,它们需要复杂和微妙的方法,包括建立模型和对组合结构执行推理的任务。*我的研究旨在解决系统发育学中的这一重要挑战。更具体地说,我的研究旨在为组合结构创造有效的统计推断方法,重点放在系统发育分析中出现的模型上。我的研究方案强调癌症系统发生学领域的模型,但也考虑应用于其他系统发生学背景,如联合树和比对推理。根据这一研究方案开发的许多方法也将适用于机器学习的其他几个分支(如自然语言处理、计算机视觉和计算生物学)中遇到的数据分析情况。*我的研究方案由三个相互关联的目标组成:*1.开发实用的贝叶斯非参数(BNP):BNP提供了一个有效的框架来逼近组合空间上的潜在变量,但BNP仍然存在显著的限制,特别是计算可伸缩性,以及用户学习曲线的陡峭。我将开发解决这些问题的方法。*2.为棘手的进化模型开发可扩展的推理方法:传统的系统发育模型通常假设给定一棵假想的树,数据的可能性可以在多项式时间内计算出来。我将开发可扩展的进化方法来放松这一假设。*3.部分观测随机微分方程(SDE)的概率推理:我的目标是开发新的方法,使实践者更容易以声明的方式开发模型,同时保持较低的计算成本。**
项目成果
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BouchardCôté, Alexandre其他文献
BouchardCôté, Alexandre的其他文献
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{{ truncateString('BouchardCôté, Alexandre', 18)}}的其他基金
Scalable approximation of complex probability distributions
复杂概率分布的可扩展近似
- 批准号:
RGPIN-2022-04420 - 财政年份:2022
- 资助金额:
$ 3.35万 - 项目类别:
Discovery Grants Program - Individual
Efficient probabilistic inference and Bayesian non-parametrics with applications in phylogenetics and cancer genomics
高效概率推理和贝叶斯非参数学在系统发育学和癌症基因组学中的应用
- 批准号:
RGPIN-2016-04270 - 财政年份:2021
- 资助金额:
$ 3.35万 - 项目类别:
Discovery Grants Program - Individual
Efficient probabilistic inference and Bayesian non-parametrics with applications in phylogenetics and cancer genomics
高效概率推理和贝叶斯非参数学在系统发育学和癌症基因组学中的应用
- 批准号:
RGPIN-2016-04270 - 财政年份:2020
- 资助金额:
$ 3.35万 - 项目类别:
Discovery Grants Program - Individual
Efficient probabilistic inference and Bayesian non-parametrics with applications in phylogenetics and cancer genomics
高效概率推理和贝叶斯非参数学在系统发育学和癌症基因组学中的应用
- 批准号:
RGPIN-2016-04270 - 财政年份:2019
- 资助金额:
$ 3.35万 - 项目类别:
Discovery Grants Program - Individual
Efficient probabilistic inference and Bayesian non-parametrics with applications in phylogenetics and cancer genomics
高效的概率推理和贝叶斯非参数学在系统发育学和癌症基因组学中的应用
- 批准号:
RGPIN-2016-04270 - 财政年份:2017
- 资助金额:
$ 3.35万 - 项目类别:
Discovery Grants Program - Individual
Efficient probabilistic inference and Bayesian non-parametrics with applications in phylogenetics and cancer genomics
高效的概率推理和贝叶斯非参数学在系统发育学和癌症基因组学中的应用
- 批准号:
RGPIN-2016-04270 - 财政年份:2016
- 资助金额:
$ 3.35万 - 项目类别:
Discovery Grants Program - Individual
Next generation phylogenetic modelling using machine learning
使用机器学习的下一代系统发育建模
- 批准号:
402442-2011 - 财政年份:2015
- 资助金额:
$ 3.35万 - 项目类别:
Discovery Grants Program - Individual
Next generation phylogenetic modelling using machine learning
使用机器学习的下一代系统发育建模
- 批准号:
402442-2011 - 财政年份:2014
- 资助金额:
$ 3.35万 - 项目类别:
Discovery Grants Program - Individual
Next generation phylogenetic modelling using machine learning
使用机器学习的下一代系统发育建模
- 批准号:
402442-2011 - 财政年份:2013
- 资助金额:
$ 3.35万 - 项目类别:
Discovery Grants Program - Individual
Next generation phylogenetic modelling using machine learning
使用机器学习的下一代系统发育建模
- 批准号:
402442-2011 - 财政年份:2012
- 资助金额:
$ 3.35万 - 项目类别:
Discovery Grants Program - Individual
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