Description Usage Arguments Value Author(s) Examples
View source: R/MainLassoLDATraining.R
Predict a new mixed population after training the model for a subpopulation in the first mixed population. All subpopulations in the new target mixed population will be predicted, where each targeted subpopulation will have a transition score from the orginal subpopulation to the new subpopulation.
1 2 3 |
listData |
a |
cluster_mixedpop2 |
a vector of cluster assignment for mixedpop2 |
mixedpop2 |
a SingleCellExperiment object from the target mixed population of importance, e.g. differentially expressed genes that are most significant |
out_idx |
a number to specify index to write results into the list output. This is needed for running bootstrap. |
standardize |
a logical of whether to standardize the data |
LDA_run |
logical, if the LDA prediction is added to compare to ElasticNet, the LDA model needs to be trained from the training before inputting to this prediction step |
c_selectID |
a number to specify the trained cluster used for prediction |
a list
with prediction results written in to the index
out_idx
Quan Nguyen, 2017-11-25
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 | c_selectID<-1
out_idx<-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
listData <- training(genes,
cluster_mixedpop1 = colData(mixedpop1)[, 1], mixedpop1 = mixedpop1,
mixedpop2 = mixedpop2, c_selectID, listData =list(), out_idx=out_idx)
listData <- predicting(listData =listData, mixedpop2 = mixedpop2,
out_idx=out_idx, cluster_mixedpop2 = colData(mixedpop2)[, 1],
c_selectID = c_selectID)
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