## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ## ----setup-------------------------------------------------------------------- library(selection.index) # Load the built-in phenotypic dataset data("seldata") # Inspect the structure of the dataset head(seldata) ## ----define_weights----------------------------------------------------------- # Define economic weights for the 7 traits of interest weights <- c(10, 8, 6, 4, 2, 1, 1) # Calculate genotypic and phenotypic variance-covariance matrices # Traits: columns 3:9, Genotypes: column 2, Replication: column 1 gmat <- gen_varcov(data = seldata[, 3:9], genotypes = seldata[, 2], replication = seldata[, 1]) pmat <- phen_varcov(data = seldata[, 3:9], genotypes = seldata[, 2], replication = seldata[, 1]) ## ----calculate_index---------------------------------------------------------- # Calculate the combinatorial selection index for all 7 traits index_results <- lpsi( ncomb = 7, pmat = pmat, gmat = gmat, wmat = as.matrix(weights), wcol = 1 ) ## ----view_results------------------------------------------------------------- # View the calculated index metrics for our 7-trait combination head(index_results) # Extract the final selection scores to rank the genotypes scores <- predict_selection_score( index_results, data = seldata[, 3:9], genotypes = seldata[, 2] ) # View the top ranked genotypes based on their selection scores head(scores)