Fast and flexible Bayesian phylogenetics via modern machine learning

通过现代机器学习快速灵活的贝叶斯系统发育学

基本信息

  • 批准号:
    10593362
  • 负责人:
  • 金额:
    $ 47.61万
  • 依托单位:
  • 依托单位国家:
    美国
  • 项目类别:
  • 财政年份:
    2021
  • 资助国家:
    美国
  • 起止时间:
    2021-07-01 至 2026-06-30
  • 项目状态:
    未结题

项目摘要

Project Abstract/Summary The SARS-CoV-2 pandemic underlines both our susceptibility to and the toll of a global pathogen outbreak. Phylogenetic analysis of viral genomes provides key insight into disease pathophysiology, spread and po- tential control. However, if these methods are to be used in a viral control strategy they must reliably account for uncertainty and be able to perform inference on 1,000s of genomes in actionable time. Scaling Bayesian phylogenet- ics to meet this need is a grand challenge that is unlikely to be met by optimizing existing algorithms. We will meet this challenge with a radically new approach: Bayesian variational inference for phylogenet- ics (VIP) using flexible distributions on phylogenetic trees that are fit using gradient-based methods analogous to how one efficiently trains massive neural networks. By taking a variational approach we will also be able to integrate phylogenetic analysis into very powerful open-source modeling frameworks such as TensorFlow and PyTorch. This will open up new classes of models, such as neural network models, to integrate data such as sampling location and migration patterns with phylogenetic inference. These flexible models will inform strategies for viral control. In Aim 1 we will develop the theory necessary for scalable and reliable VIP, including subtree marginal- ization, local gradient updates needed for online algorithms, convergence diagnostics, and parameter support estimates. We will implement these algorithms in our C++ foundation library for VIP. In Aim 2 we will develop a flexible TensorFlow-based modeling platform for phylogenetics, enabling a whole new realm of phylogenetic models based on neural networks to learn phylodynamic heterogeneity with minimal program- ming effort. We will provide efficient gradients to this implementation via our C++ library. In Aim 3 we will use the fact that VIP posteriors are durable and extensible descriptions of the full data posterior to enable dynamic online computation of variational posteriors, including divide-and-conquer Bayesian phylogenetics. This work will enable a cloud-based viral phylogenetics solution to rapidly update our current estimate of the posterior distribution when new data arrive or the model is modified. 1
项目摘要/总结

项目成果

期刊论文数量(0)
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会议论文数量(0)
专利数量(0)

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Frederick Albert Matsen其他文献

Frederick Albert Matsen的其他文献

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{{ truncateString('Frederick Albert Matsen', 18)}}的其他基金

Fast and flexible Bayesian phylogenetics via modern machine learning
通过现代机器学习快速灵活的贝叶斯系统发育学
  • 批准号:
    10654594
  • 财政年份:
    2021
  • 资助金额:
    $ 47.61万
  • 项目类别:
Fast and flexible Bayesian phylogenetics via modern machine learning
通过现代机器学习快速灵活的贝叶斯系统发育学
  • 批准号:
    10266670
  • 财政年份:
    2021
  • 资助金额:
    $ 47.61万
  • 项目类别:
Fast and flexible Bayesian phylogenetics via modern machine learning
通过现代机器学习快速灵活的贝叶斯系统发育学
  • 批准号:
    10434141
  • 财政年份:
    2021
  • 资助金额:
    $ 47.61万
  • 项目类别:
Blending deep learning with probabilistic mechanistic models to predict and understand the evolution and function of adaptive immune receptors
将深度学习与概率机制模型相结合,以预测和理解适应性免疫受体的进化和功能
  • 批准号:
    10415985
  • 财政年份:
    2019
  • 资助金额:
    $ 47.61万
  • 项目类别:
Blending deep learning with probabilistic mechanistic models to predict and understand the evolution and function of adaptive immune receptors
将深度学习与概率机制模型相结合,以预测和理解适应性免疫受体的进化和功能
  • 批准号:
    10593356
  • 财政年份:
    2019
  • 资助金额:
    $ 47.61万
  • 项目类别:
Blending deep learning with probabilistic mechanistic models to predict and understand the evolution and function of adaptive immune receptors
将深度学习与概率机制模型相结合,以预测和理解适应性免疫受体的进化和功能
  • 批准号:
    10159730
  • 财政年份:
    2019
  • 资助金额:
    $ 47.61万
  • 项目类别:
Leveraging deep sequencing data to understand antibody maturation
利用深度测序数据了解抗体成熟度
  • 批准号:
    9119033
  • 财政年份:
    2014
  • 资助金额:
    $ 47.61万
  • 项目类别:
Leveraging deep sequencing data to understand antibody maturation
利用深度测序数据了解抗体成熟度
  • 批准号:
    9318527
  • 财政年份:
    2014
  • 资助金额:
    $ 47.61万
  • 项目类别:
Leveraing deep sequencing data to understand antibody maturation
利用深度测序数据了解抗体成熟度
  • 批准号:
    8825760
  • 财政年份:
    2014
  • 资助金额:
    $ 47.61万
  • 项目类别:

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Fast and flexible Bayesian phylogenetics via modern machine learning
通过现代机器学习快速灵活的贝叶斯系统发育学
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  • 财政年份:
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Fast and flexible Bayesian phylogenetics via modern machine learning
通过现代机器学习快速灵活的贝叶斯系统发育学
  • 批准号:
    10266670
  • 财政年份:
    2021
  • 资助金额:
    $ 47.61万
  • 项目类别:
Fast and flexible Bayesian phylogenetics via modern machine learning
通过现代机器学习快速灵活的贝叶斯系统发育学
  • 批准号:
    10434141
  • 财政年份:
    2021
  • 资助金额:
    $ 47.61万
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  • 批准号:
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利用多级生存数据和多种治疗进行因果推理的灵活贝叶斯方法
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  • 财政年份:
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    $ 47.61万
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CAREER: Flexible and Efficient Exploration of the Bayesian Framework for High Dimensional Modeling
职业:高维建模贝叶斯框架的灵活高效探索
  • 批准号:
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用于估计吸入暴露的灵活贝叶斯分层模型
  • 批准号:
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  • 财政年份:
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用于估计吸入暴露的灵活贝叶斯分层模型
  • 批准号:
    10060746
  • 财政年份:
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一类灵活的贝叶斯时空模型,用于疾病风险的聚类检测、趋势估计和预测
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