论文标题
Graphkke:图形内核Koopman嵌入人类微生物组分析
GraphKKE: Graph Kernel Koopman Embedding for Human Microbiome Analysis
论文作者
论文摘要
发现越来越多的疾病与微生物组构成(例如肥胖,糖尿病或某些癌症类型)的障碍密切相关。得益于现代的高通量Omics技术,可以直接分析人类微生物组及其对健康状况的影响。长时间监测微生物群落,并探索其成员之间的关联。这些关系可以通过时间不断发展的图来描述。为了理解微生物群落成员对诸如抗生素暴露或疾病以及一般动力学特性等不同扰动范围的反应,必须分析人类微生物群落的随时间不断发展的图。由于微生物和亚稳态动力学之间的数十个复杂的相互作用,这变得尤其具有挑战性。解决此问题的关键是表示时间不断发展的图作为保存原始动力学的固定长度向量。我们提出了一种基于转移操作员和图内核的光谱分析的时间不断变化图的嵌入的方法。我们证明我们的方法可以在创建的合成数据和现实世界数据上捕获随时间变化图的临时变化。我们的实验证明了该方法的功效。此外,我们表明我们的方法可以应用于人类微生物组数据以研究动态过程。
More and more diseases have been found to be strongly correlated with disturbances in the microbiome constitution, e.g., obesity, diabetes, or some cancer types. Thanks to modern high-throughput omics technologies, it becomes possible to directly analyze human microbiome and its influence on the health status. Microbial communities are monitored over long periods of time and the associations between their members are explored. These relationships can be described by a time-evolving graph. In order to understand responses of the microbial community members to a distinct range of perturbations such as antibiotics exposure or diseases and general dynamical properties, the time-evolving graph of the human microbial communities has to be analyzed. This becomes especially challenging due to dozens of complex interactions among microbes and metastable dynamics. The key to solving this problem is the representation of the time-evolving graphs as fixed-length feature vectors preserving the original dynamics. We propose a method for learning the embedding of the time-evolving graph that is based on the spectral analysis of transfer operators and graph kernels. We demonstrate that our method can capture temporary changes in the time-evolving graph on both created synthetic data and real-world data. Our experiments demonstrate the efficacy of the method. Furthermore, we show that our method can be applied to human microbiome data to study dynamic processes.