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Laika sēriju mikrobioma daudzveidības analīze×Vienšūnas RNS sekvencēšanas analīze×
NozareBioinformātikaBioinformātika
SaimeProcess / pipelineProcess / pipeline
Izcelsmes gads2010s (formalized with 16S amplicon sequencing era; expanded ~2012–2020)2009 (first scRNA-seq by Tang et al.); widely adopted 2015–2016
AutorsDeveloped iteratively through the microbiome research community; key contributions from Susan Holmes, Rob Knight, and colleaguesAzim Surani, Barbara Treutlein, and the Regev/McCarroll groups (foundational droplet-based methods ~2015)
TipsLongitudinal observational / bioinformatics pipelineHigh-throughput single-cell transcriptomic profiling pipeline
PirmavotsCallahan, B. J., McMurdie, P. J., Rosen, M. J., Han, A. W., Johnson, A. J. A., & Holmes, S. P. (2016). DADA2: High-resolution sample inference from Illumina amplicon data. Nature Methods, 13(7), 581–583. DOI ↗Satija, R., Farrell, J. A., Gennert, D., Schier, A. F., & Regev, A. (2015). Spatial reconstruction of single-cell gene expression data. Nature Biotechnology, 33(5), 495–502. DOI ↗
Citi nosaukumilongitudinal microbiome diversity analysis, temporal microbiome analysis, repeated-measures microbiome diversity, time-course microbiome analysisscRNA-seq, single-cell transcriptomics, scRNAseq analysis, single-cell gene expression profiling
Saistītās55
KopsavilkumsTime-series microbiome diversity analysis tracks how the richness, evenness, and community composition of microbial communities change across multiple time points within the same subjects. By combining standard diversity metrics with longitudinal statistical models, it separates true temporal dynamics from inter-individual variation, identifying when and how perturbations such as diet changes, antibiotic treatment, or disease onset reshape the microbiome.Single-cell RNA sequencing (scRNA-seq) analysis characterises gene expression at the resolution of individual cells, enabling discovery of cell types, states, and transitions that are invisible in bulk transcriptomics. Starting from raw sequencing reads, the workflow produces a cell-by-gene count matrix and proceeds through quality control, normalisation, dimensionality reduction, unsupervised clustering, cell-type annotation, and a range of downstream analyses such as trajectory inference and differential expression between cell populations.
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ScholarGateSalīdzināt metodes: Time-series microbiome diversity analysis · Single-cell RNA-seq analysis. Izgūts 2026-06-19 no https://scholargate.app/lv/compare