abundances |
Extract taxa abundances |
abundances, |
Extract taxa abundances |
abundances-method |
Extract taxa abundances |
aggregate_taxa |
Aggregate Taxa |
assign-marker_table |
Assign marker_table to 'object' |
assign-otu_table |
Assign a new OTU table |
caporaso |
16S rRNA data from "Moving pictures of the human microbiome" |
cid_ying |
16S rRNA data of 94 patients from CID 2012 |
compare_DA |
Comparing the results of differential analysis methods by Empirical power and False Discovery Rate |
confounder |
Confounder analysis |
data-caporaso |
16S rRNA data from "Moving pictures of the human microbiome" |
data-cid_ying |
16S rRNA data of 94 patients from CID 2012 |
data-ecam |
Data from Early Childhood Antibiotics and the Microbiome (ECAM) study |
data-enterotypes_arumugam |
Enterotypes data of 39 samples |
data-kostic_crc |
Data from a study on colorectal cancer (kostic 2012) |
data-oxygen |
Oxygen availability 16S dataset, of which taxa table has been summarized for python lefse input |
data-pediatric_ibd |
IBD stool samples |
data-spontaneous_colitis |
This is a sample data from lefse python script, a 16S dataset for studying the characteristics of the fecal microbiota in a mouse model of spontaneous colitis. |
ecam |
Data from Early Childhood Antibiotics and the Microbiome (ECAM) study |
ef-barplot,ef-dotplot |
bar and dot plot of effect size of microbiomeMarker data |
enterotypes_arumugam |
Enterotypes data of 39 samples |
extract_posthoc_res |
Extract results from a posthoc test |
import_dada2 |
Import function to read the the output of dada2 as phyloseq object |
import_picrust2 |
Import function to read the output of picrust2 as phyloseq object |
import_qiime2 |
Import function to read the the output of dada2 as phyloseq object |
kostic_crc |
Data from a study on colorectal cancer (kostic 2012) |
marker_table |
Build or access the marker_table |
marker_table-class |
The S4 class for storing microbiome marker information |
marker_table-method |
Build or access the marker_table |
marker_table<- |
Assign marker_table to 'object' |
microbiomeMarker |
Build microbiomeMarker-class objects |
microbiomeMarker-class |
The main class for microbiomeMarker data |
nmarker |
Get the number of microbiome markers |
nmarker-method |
Get the number of microbiome markers |
normalize |
Normalize the microbial abundance data |
normalize-method |
Normalize the microbial abundance data |
norm_clr |
Normalize the microbial abundance data |
norm_cpm |
Normalize the microbial abundance data |
norm_css |
Normalize the microbial abundance data |
norm_rarefy |
Normalize the microbial abundance data |
norm_rle |
Normalize the microbial abundance data |
norm_tmm |
Normalize the microbial abundance data |
norm_tss |
Normalize the microbial abundance data |
otu_table-method |
Extract taxa abundances |
otu_table2metagenomeSeq |
Convert phyloseq data to MetagenomeSeq 'MRexperiment' object |
otu_table<--method |
Assign a new OTU table |
oxygen |
Oxygen availability 16S dataset, of which taxa table has been summarized for python lefse input |
pediatric_ibd |
IBD stool samples |
phyloseq2DESeq2 |
Convert 'phyloseq-class' object to 'DESeqDataSet-class' object |
phyloseq2edgeR |
Convert phyloseq data to edgeR 'DGEList' object |
phyloseq2metagenomeSeq |
Convert phyloseq data to MetagenomeSeq 'MRexperiment' object |
plot.compareDA |
Plotting DA comparing result |
plot_abundance |
plot the abundances of markers |
plot_cladogram |
plot cladogram of micobiomeMaker results |
plot_ef_bar |
bar and dot plot of effect size of microbiomeMarker data |
plot_ef_dot |
bar and dot plot of effect size of microbiomeMarker data |
plot_heatmap |
Heatmap of microbiome marker |
plot_postHocTest |
'postHocTest' plot |
plot_sl_roc |
ROC curve of microbiome marker from supervised learning methods |
postHocTest |
Build postHocTest object |
postHocTest-class |
The postHocTest Class, represents the result of post-hoc test result among multiple groups |
postHocTest-method |
The postHocTest Class, represents the result of post-hoc test result among multiple groups |
run_aldex |
Perform differential analysis using ALDEx2 |
run_ancom |
Perform differential analysis using ANCOM |
run_ancombc |
Differential analysis of compositions of microbiomes with bias correction (ANCOM-BC). |
run_deseq2 |
Perform DESeq differential analysis |
run_edger |
Perform differential analysis using edgeR |
run_lefse |
Liner discriminant analysis (LDA) effect size (LEFSe) analysis |
run_limma_voom |
Differential analysis using limma-voom |
run_marker |
Find makers (differentially expressed metagenomic features) |
run_metagenomeseq |
metagenomeSeq differential analysis |
run_posthoc_test |
Post hoc pairwise comparisons for multiple groups test. |
run_simple_stat |
Simple statistical analysis of metagenomic profiles |
run_sl |
Identify biomarkers using supervised leaning (SL) methods |
run_test_multiple_groups |
Statistical test for multiple groups |
run_test_two_groups |
Statistical test between two groups |
show, |
The postHocTest Class, represents the result of post-hoc test result among multiple groups |
show-method |
The main class for microbiomeMarker data |
show-method |
The postHocTest Class, represents the result of post-hoc test result among multiple groups |
spontaneous_colitis |
This is a sample data from lefse python script, a 16S dataset for studying the characteristics of the fecal microbiota in a mouse model of spontaneous colitis. |
subset_marker |
Subset microbiome markers |
summarize_taxa |
Summarize taxa into a taxonomic level within each sample |
summary.compareDA |
Summary differential analysis methods comparison results |
transform_abundances |
Transform the taxa abundances in 'otu_table' sample by sample |
[ |
Extract 'marker_table' object |
[-method |
Extract 'marker_table' object |