Pune, India. Dec 16-20, 2019
After this workshop the students will have a deeper understanding of the statistical aspects in modeling taxonomic variation in microbial communities. Commonalities between various learning methods are demonstrated by using latent variable models as a unifying framework. In addition to learning new modeling techniques, the students gain an overall understanding of the underlying statistical concepts.
Targeted to researchers and PhD students actively involved in microbiome research (max. 30).
Install the following software before the course:
Rmarkdown:
R programming:
RStudio:
Microbiome research:
Welcome to join the course Slack channel!
See also: - Why exact ASVs? : PDF from Ben Callahan at ASM
Aspects of beta diversity: feature selection, dissimilarity, ordinations
See more advanced modulated version of DPCoA by Julia Fukuyama: - agPCA package,
Latent Dirichlet allocation, uncertainty quantification PDF
Testing in presence of dependent data (longitudinal and spatial), bootLong
.
Standard dynamical models and the element of time in microbial ecology PDF
Further reading:
intermediary data needed, you can download directly at links:
MBB_Sim.rds MSE_Sim.rds
MSE_Sim_lC12.rds
MSE_Sim_lC13.rds
MSE_Sim_lC14.rds
Testing in presence of dependent longitudinal data: bootLong
Regime switching and dynamical models arXiv Kris Sankaran, 2017
Treelapse and seeing the tree and the time series
Article: Sankaran and Holmes, 2017
treelapse Tutorial
Multiway data and multiomics data integration Slides
Statistical rethinking and Bayes pdf
Q & A session