Description Usage Arguments Value Author(s) Examples
View source: R/scgps_prediction_summary.R
the training results from training were written to
the object LSOLDA_dat, the summary_devidance summarises 
deviance explained for n bootstrap runs and also returns the best
deviance matrix for plotting, as well as the best matrix with Lasso genes 
and coefficients
| 1 | summary_deviance(object = NULL)
 | 
| object | is a list containing the training results from 
 | 
a list containing three elements, with a vector of percent
maximum deviance explained, a dataframe containg information for the full 
deviance, and a dataframe containing gene names and coefficients of the best
model
Quan Nguyen, 2017-11-25
| 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 | c_selectID<-1
day2 <- day_2_cardio_cell_sample
mixedpop1 <-new_scGPS_object(ExpressionMatrix = day2$dat2_counts, 
    GeneMetadata = day2$dat2geneInfo, CellMetadata = day2$dat2_clusters)
day5 <- day_5_cardio_cell_sample
mixedpop2 <-new_scGPS_object(ExpressionMatrix = day5$dat5_counts, 
    GeneMetadata = day5$dat5geneInfo,
                    CellMetadata = day5$dat5_clusters)
genes <-training_gene_sample
genes <-genes$Merged_unique
LSOLDA_dat <- bootstrap_prediction(nboots = 2,mixedpop1 = mixedpop1, 
    mixedpop2 = mixedpop2, genes=genes, c_selectID, listData =list(),
    cluster_mixedpop1 = colData(mixedpop1)[,1],
    cluster_mixedpop2=colData(mixedpop2)[,1])
summary_deviance(LSOLDA_dat)
 | 
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