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Machine-learning-e-redes-neurais-artificiais-no-melhoramento-genetico-do-cafeeiro/
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nfolds <- 5
nrept <- 5
traits <- colnames(pheno)[-1]
set.seed(123)
# Alinhamento de IDs
pheno <- pheno[order(pheno$ID), ]
geno <- geno[order(rownames(geno)), ]
stopifnot(all(rownames(geno) == as.character(pheno$ID)))
geno <- geno - 1
# Generating fold list
fold.list <- vector("list", length = nrept)
for (r in seq_len(nrept)) {
folds <- cvFolds(
n = nrow(pheno),
K = nfolds,
R = r,
type = "random"
)
df <- cbind(folds$which, folds$subsets)
fold.list[[r]] <- split(df[, 2], df[, 1])
}O modelo G-BLUP (Genomic Best Linear Unbiased Prediction) é uma abordagem amplamente utilizada para predição genômica, que considera tanto os efeitos aditivos quanto os efeitos de dominância dos marcadores genéticos. Neste estudo, implementamos três variantes do G-BLUP: Aditivo, Aditivo-Dominante e Aditivo-Dominante-Epistástico.
O modelo é implementado utilizando a função mmes do
pacote sommer, que permite ajustar modelos mistos com
estruturas de parentesco complexas. A validação cruzada é realizada para
avaliar a acurácia preditiva do modelo.
Para o modelo G-BLUP aditivo, utilizamos a matriz de parentesco aditivo (K) calculada a partir dos dados genotípicos. Este modelo assume que os efeitos dos marcadores são puramente aditivos, sem considerar interações de dominância ou epistasia.
cl <- makeCluster(max(1, detectCores() - 1))
registerDoParallel(cl)
combos <- expand.grid(
trait = traits,
rep = seq_len(nrept),
fold = seq_len(nfolds),
stringsAsFactors = FALSE
)
results_cv_GBLUP_a <- foreach(
idx = seq_len(nrow(combos)),
.packages = c("sommer", "dplyr", "tibble"),
.combine = bind_rows
) %dopar% {
# Extração dos parâmetros do grid
tr <- combos$trait[idx]
r <- combos$rep[idx]
f <- combos$fold[idx]
# Seleção dos dados fenotípicos e matrizes de parentesco
ph <- pheno[,c("ID", all_of(tr))]
K1 <- K[ph$ID, ph$ID]
td <- ph
# Definição dos índices de validação cruzada
val_idx <- fold.list[[r]][[f]]
td[val_idx, tr] <- NA
# Ajuste do modelo G-BLUP aditivo
fit <- mmes(
fixed = as.formula(paste(tr, "~ 1")),
random = ~ vsm(ism(ID), Gu = K1),
data = td,
rcov = ~ units
)
# Predição e métricas
pred <- data.frame(yhat = fit$u + fit$b[[1]], ph)
# Cálculo dos GEBVs para treino e validação
pred_T <- pred[!(pred$ID %in% val_idx), "yhat"]
truth_T <- pred[[tr]][!(pred$ID %in% val_idx)]
pred_V <- pred[pred$ID %in% val_idx, "yhat"]
truth_V <- pred[[tr]][pred$ID %in% val_idx]
# Criação do tibble com os resultados
tibble(
Trait = tr,
Rep = r,
Fold = f,
R2_Train = round(cor(pred_T, truth_T), 4),
R2_Valid = round(cor(pred_V, truth_V), 4),
RMSE_Train = round(sqrt(mean((pred_T - truth_T)^2)), 4),
RMSE_Valid = round(sqrt(mean((pred_V - truth_V)^2)), 4),
GEBV_T = list(pred_T),
GEBV_V = list(pred_V)
)
}
stopCluster(cl)
saveRDS(results_cv_GBLUP_a, file = "output/results_cv_GBLUP_a.rds")Para o modelo G-BLUP aditivo-dominante, utilizamos a matriz de parentesco aditivo-dominante (K) que considera tanto os efeitos aditivos quanto os de dominância dos marcadores genéticos. Este modelo é mais complexo e pode capturar interações entre alelos.
cl <- makeCluster(max(1, detectCores() - 1))
registerDoParallel(cl)
combos_ad <- expand.grid(
trait = traits,
rep = seq_len(nrept),
fold = seq_len(nfolds),
stringsAsFactors = FALSE
)
results_cv_GBLUP_ad <- foreach(
idx = seq_len(nrow(combos_ad)),
.packages = c("sommer", "dplyr", "tibble"),
.combine = bind_rows
) %dopar% {
idx=1
# Extração dos parâmetros do grid
tr <- combos_ad$trait[idx]
r <- combos_ad$rep[idx]
f <- combos_ad$fold[idx]
# Seleção dos dados fenotípicos e matrizes de parentesco
ph <- pheno[,c("ID", all_of(tr))]
K1 <- K[ph$ID, ph$ID]
D1 <- D[ph$ID, ph$ID]
# Criação dos IDs para os efeitos aditivo e dominante
td <- ph
td$IDD <- td$ID
# Definição dos índices de validação cruzada
val_idx <- fold.list[[r]][[f]]
td[val_idx, tr] <- NA
# Ajuste do modelo G-BLUP aditivo-dominante
fit <- mmes(
fixed = as.formula(paste(tr, "~ 1")),
random = ~ vsm(ism(ID), Gu = K1) + vsm(ism(IDD), Gu = D1),
data = td,
rcov = ~ units
)
# Extração dos preditos e verdadeiros valores
pred_a <- fit$uList$`vsm(ism(ID), Gu = K1`
pred_d <- fit$uList$`vsm(ism(IDD), Gu = D1`
# Soma dos preditos aditivos e dominantes
pred <- pred_a + pred_d + fit$b[[1]]
truth <- ph[[tr]]
# Predição e métricas
pred <- data.frame(pred, ph)
# Cálculo dos GEBVs para treino e validação
pred_T <- pred[-val_idx, "mu"]
truth_T <- pred[[tr]][-val_idx]
pred_V <- pred[val_idx, "mu"]
truth_V <- pred[[tr]][val_idx]
# Criação do tibble com os resultados
tibble(
Trait = tr,
Rep = r,
Fold = f,
R2_Train = round(cor(pred_T, truth_T), 4),
R2_Valid = round(cor(pred_V, truth_V), 4),
RMSE_Train = round(sqrt(mean((pred_T - truth_T)^2)), 4),
RMSE_Valid = round(sqrt(mean((pred_V - truth_V)^2)), 4),
GEBV_T = list(pred_T),
GEBV_V = list(pred_V)
)
}
stopCluster(cl)
saveRDS(results_cv_GBLUP_ad, file = "output/results_cv_GBLUP_ad.rds")Para o modelo G-BLUP aditivo-dominante-epistástico, utilizamos a matriz de parentesco que inclui efeitos epistáticos. Este modelo é o mais complexo e pode capturar interações entre múltiplos marcadores.
cl <- makeCluster(max(1, detectCores() - 1))
registerDoParallel(cl)
combos_ade <- expand.grid(
trait = traits,
rep = seq_len(nrept),
fold = seq_len(nfolds),
stringsAsFactors = FALSE
)
results_cv_GBLUP_ade <- foreach(
idx = seq_len(nrow(combos_ade)),
.packages = c("sommer", "dplyr", "tibble"),
.combine = bind_rows
) %dopar% {
# Extração dos parâmetros do grid
tr <- combos_ade$trait[idx]
r <- combos_ade$rep[idx]
f <- combos_ade$fold[idx]
# Seleção dos dados fenotípicos e matrizes de parentesco
ph <- pheno[,c("ID", all_of(tr))]
K1 <- K[ph$ID, ph$ID]
D1 <- D[ph$ID, ph$ID]
E1 <- E[ph$ID, ph$ID]
# Criação dos IDs para os efeitos aditivo, dominante e epistático
td <- ph
td$IDD <- td$ID
td$IDE <- td$ID
# Definição dos índices de validação cruzada
val_idx <- fold.list[[r]][[f]]
td[val_idx, tr] <- NA
# Ajuste do modelo G-BLUP aditivo-dominante-epistástico
fit <- mmes(
fixed = as.formula(paste(tr, "~ 1")),
random = ~ vsm(ism(ID), Gu = K1) + vsm(ism(IDD), Gu = D1) + vsm(ism(IDE), Gu = E1),
data = td,
rcov = ~ units
)
# Extração dos preditos e verdadeiros valores
pred_a <- fit$uList$`vsm(ism(ID), Gu = K1`
pred_d <- fit$uList$`vsm(ism(IDD), Gu = D1`
pred_e <- fit$uList$`vsm(ism(IDE), Gu = E1`
# Soma dos preditos aditivos e dominantes
pred <- pred_a + pred_d + pred_e + fit$b[[1]]
truth <- ph[[tr]]
# Predição e métricas
pred <- data.frame(pred, ph)
# Cálculo dos GEBVs para treino e validação
pred_T <- pred[-val_idx, "mu"]
truth_T <- pred[[tr]][-val_idx]
pred_V <- pred[val_idx, "mu"]
truth_V <- pred[[tr]][val_idx]
# Criação do tibble com os resultados
tibble(
Trait = tr,
Rep = r,
Fold = f,
R2_Train = round(cor(pred_T, truth_T), 4),
R2_Valid = round(cor(pred_V, truth_V), 4),
RMSE_Train = round(sqrt(mean((pred_T - truth_T)^2)), 4),
RMSE_Valid = round(sqrt(mean((pred_V - truth_V)^2)), 4),
GEBV_T = list(pred_T),
GEBV_V = list(pred_V)
)
}
stopCluster(cl)
saveRDS(results_cv_GBLUP_ade, file = "output/results_cv_GBLUP_ade.rds")cl <- makeCluster(max(1, detectCores() - 1))
registerDoParallel(cl)
combos_mars <- expand.grid(
trait = traits,
rep = seq_len(nrept),
fold = seq_len(nfolds),
stringsAsFactors = FALSE
)
results_cv_MARS_1 <- foreach(
idx = seq_len(nrow(combos_mars)),
.packages = c("earth", "dplyr", "tibble"),
.combine = bind_rows
) %dopar% {
tr <- combos_mars$trait[idx]
r <- combos_mars$rep[idx]
f <- combos_mars$fold[idx]
valid_idx <- fold.list[[r]][[f]]
train_idx <- setdiff(seq_len(nrow(pheno)), valid_idx)
yT <- pheno[train_idx, tr]
xT <- geno[train_idx, ]
yV <- pheno[valid_idx, tr]
xV <- geno[valid_idx, ]
fit <- earth(x = xT, y = yT, degree = 1)
pred_T <- predict(fit, xT)
pred_V <- predict(fit, xV)
# Extrair importância das variáveis
imp <- evimp(fit, trim = FALSE)
# Seleciona colunas relevantes e converte para data.frame
imp_df <- as.data.frame(imp[, c("rss", "nsubsets")]) # rss: Overall importance
# Adiciona informações de repetição e fold, mantendo nomes dos marcadores
imp_df$marker <- rownames(imp_df)
imp_df$Rep <- r
imp_df$Fold <- f
# Ajusta nomes das colunas e remove sufixo indesejado dos marcadores
imp_df <- imp_df %>%
select(Overall = rss, marker, Rep, Fold) %>%
mutate(marker = stringr::str_replace_all(marker, "-unused", ""))
gc()
tibble(
Trait = tr,
Degree = 1,
Rep = r,
Fold = f,
R2_Train = round(cor(pred_T, yT), 4),
R2_Valid = round(cor(pred_V, yV), 4),
RMSE_Train = round(sqrt(mean((pred_T - yT)^2)), 4),
RMSE_Valid = round(sqrt(mean((pred_V - yV)^2)), 4),
GEBV_T = list(pred_T),
GEBV_V = list(pred_V),
imp = list(imp_df)
)
}
stopCluster(cl)
saveRDS(results_cv_MARS_1, file = "output/results_cv_MARS_1.rds")cl <- makeCluster(max(1, detectCores() - 1))
registerDoParallel(cl)
combos_mars <- expand.grid(
trait = traits,
rep = seq_len(nrept),
fold = seq_len(nfolds),
stringsAsFactors = FALSE
)
results_cv_MARS_2 <- foreach(
idx = seq_len(nrow(combos_mars)),
.packages = c("earth", "dplyr", "tibble"),
.combine = bind_rows
) %dopar% {
tr <- combos_mars$trait[idx]
r <- combos_mars$rep[idx]
f <- combos_mars$fold[idx]
valid_idx <- fold.list[[r]][[f]]
train_idx <- setdiff(seq_len(nrow(pheno)), valid_idx)
yT <- pheno[train_idx, tr]
xT <- geno[train_idx, ]
yV <- pheno[valid_idx, tr]
xV <- geno[valid_idx, ]
fit <- earth(x = xT, y = yT, degree = 2)
pred_T <- predict(fit, xT)
pred_V <- predict(fit, xV)
# Extrair importância das variáveis
imp <- evimp(fit, trim = FALSE)
# Seleciona colunas relevantes e converte para data.frame
imp_df <- as.data.frame(imp[, c("rss", "nsubsets")]) # rss: Overall importance
# Adiciona informações de repetição e fold, mantendo nomes dos marcadores
imp_df$marker <- rownames(imp_df)
imp_df$Rep <- r
imp_df$Fold <- f
# Ajusta nomes das colunas e remove sufixo indesejado dos marcadores
imp_df <- imp_df %>%
select(Overall = rss, marker, Rep, Fold) %>%
mutate(marker = stringr::str_replace_all(marker, "-unused", ""))
gc()
tibble(
Trait = tr,
Degree = 2,
Rep = r,
Fold = f,
R2_Train = round(cor(pred_T, yT), 4),
R2_Valid = round(cor(pred_V, yV), 4),
RMSE_Train = round(sqrt(mean((pred_T - yT)^2)), 4),
RMSE_Valid = round(sqrt(mean((pred_V - yV)^2)), 4),
GEBV_T = list(pred_T),
GEBV_V = list(pred_V),
imp = list(imp_df)
)
}
stopCluster(cl)
saveRDS(results_cv_MARS_2, file = "output/results_cv_MARS_2.rds")cl <- makeCluster(max(1, detectCores() - 1))
registerDoParallel(cl)
combos_mars <- expand.grid(
trait = traits,
rep = seq_len(nrept),
fold = seq_len(nfolds),
stringsAsFactors = FALSE
)
results_cv_MARS_3 <- foreach(
idx = seq_len(nrow(combos_mars)),
.packages = c("earth", "dplyr", "tibble"),
.combine = bind_rows
) %dopar% {
tr <- combos_mars$trait[idx]
r <- combos_mars$rep[idx]
f <- combos_mars$fold[idx]
valid_idx <- fold.list[[r]][[f]]
train_idx <- setdiff(seq_len(nrow(pheno)), valid_idx)
yT <- pheno[train_idx, tr]
xT <- geno[train_idx, ]
yV <- pheno[valid_idx, tr]
xV <- geno[valid_idx, ]
fit <- earth(x = xT, y = yT, degree = 3)
pred_T <- predict(fit, xT)
pred_V <- predict(fit, xV)
# Extrair importância das variáveis
imp <- evimp(fit, trim = FALSE)
# Seleciona colunas relevantes e converte para data.frame
imp_df <- as.data.frame(imp[, c("rss", "nsubsets")]) # rss: Overall importance
# Adiciona informações de repetição e fold, mantendo nomes dos marcadores
imp_df$marker <- rownames(imp_df)
imp_df$Rep <- r
imp_df$Fold <- f
# Ajusta nomes das colunas e remove sufixo indesejado dos marcadores
imp_df <- imp_df %>%
select(Overall = rss, marker, Rep, Fold) %>%
mutate(marker = stringr::str_replace_all(marker, "-unused", ""))
gc()
tibble(
Trait = tr,
Degree = 3,
Rep = r,
Fold = f,
R2_Train = round(cor(pred_T, yT), 4),
R2_Valid = round(cor(pred_V, yV), 4),
RMSE_Train = round(sqrt(mean((pred_T - yT)^2)), 4),
RMSE_Valid = round(sqrt(mean((pred_V - yV)^2)), 4),
GEBV_T = list(pred_T),
GEBV_V = list(pred_V),
imp = list(imp_df)
)
}
stopCluster(cl)
saveRDS(results_cv_MARS_3, file = "output/results_cv_MARS_3.rds")cl <- makeCluster(max(1, detectCores() - 1))
registerDoParallel(cl)
combos_dt <- expand.grid(
trait = traits,
rep = seq_len(nrept),
fold = seq_len(nfolds),
stringsAsFactors = FALSE
)
results_cv_DT <- foreach(
idx = seq_len(nrow(combos_dt)),
.packages = c("rpart", "dplyr", "tibble", "caret"),
.combine = bind_rows
) %dopar% {
tr <- combos_dt$trait[idx]
r <- combos_dt$rep[idx]
f <- combos_dt$fold[idx]
valid_idx <- fold.list[[r]][[f]]
train_idx <- setdiff(seq_len(nrow(pheno)), valid_idx)
yT <- pheno[[tr]][train_idx] # vetor
xT <- data.frame(geno[train_idx, ])
yV <- pheno[[tr]][valid_idx]
xV <- data.frame(geno[valid_idx, ])
fit <- rpart(yT ~ ., data = xT)
pred_T <- predict(fit, xT)
pred_V <- predict(fit, xV)
imp_df <- data.frame(varImp(fit, scale = TRUE, value = "rss"))
# Adiciona informações de repetição e fold, mantendo nomes dos marcadores
imp_df$marker <- rownames(imp_df)
imp_df$Rep <- r
imp_df$Fold <- f
gc()
tibble(
Trait = tr,
Rep = r,
Fold = f,
R2_Train = round(cor(pred_T, yT), 3),
R2_Valid = round(cor(pred_V, yV), 3),
RMSE_Train = round(sqrt(mean((pred_T - yT)^2)), 3),
RMSE_Valid = round(sqrt(mean((pred_V - yV)^2)), 3),
GEBV_T = list(pred_T),
GEBV_V = list(pred_V),
imp = list(imp_df)
)
}
stopCluster(cl)
saveRDS(results_cv_DT, file = "output/results_cv_DT.rds")cl <- makeCluster(max(1, detectCores() - 1))
registerDoParallel(cl)
combos_bag <- expand.grid(
trait = traits,
rep = seq_len(nrept),
fold = seq_len(nfolds),
stringsAsFactors = FALSE
)
results_cv_Bag <- foreach(
idx = seq_len(nrow(combos_bag)),
.packages = c("randomForest", "dplyr", "tibble", "caret"),
.combine = bind_rows
) %dopar% {
tr <- combos_bag$trait[idx]
r <- combos_bag$rep[idx]
f <- combos_bag$fold[idx]
valid_idx <- fold.list[[r]][[f]]
train_idx <- setdiff(seq_len(nrow(pheno)), valid_idx)
yT <- pheno[[tr]][train_idx] # vetor
xT <- geno[train_idx, ]
yV <- pheno[[tr]][valid_idx]
xV <- geno[valid_idx, ]
fit <- randomForest(x = xT, y = yT, mtry = ncol(xT))
pred_T <- predict(fit, xT)
pred_V <- predict(fit, xV)
imp_df <- data.frame(varImp(fit, scale = TRUE, value = "rss"))
# Adiciona informações de repetição e fold, mantendo nomes dos marcadores
imp_df$marker <- rownames(imp_df)
imp_df$Rep <- r
imp_df$Fold <- f
gc()
tibble(
Trait = tr,
Rep = r,
Fold = f,
R2_Train = round(cor(pred_T, yT), 3),
R2_Valid = round(cor(pred_V, yV), 3),
RMSE_Train = round(sqrt(mean((pred_T - yT)^2)), 3),
RMSE_Valid = round(sqrt(mean((pred_V - yV)^2)), 3),
GEBV_T = list(pred_T),
GEBV_V = list(pred_V),
imp = list(imp_df)
)
}
stopCluster(cl)
saveRDS(results_cv_Bag, file = "output/results_cv_Bag.rds")cl <- makeCluster(max(1, detectCores() - 1))
registerDoParallel(cl)
combos_rf <- expand.grid(
trait = traits,
rep = seq_len(nrept),
fold = seq_len(nfolds),
stringsAsFactors = FALSE
)
results_cv_RF <- foreach(
idx = seq_len(nrow(combos_rf)),
.packages = c("randomForest", "dplyr", "tibble", "caret"),
.combine = bind_rows
) %dopar% {
tr <- combos_rf$trait[idx]
r <- combos_rf$rep[idx]
f <- combos_rf$fold[idx]
valid_idx <- fold.list[[r]][[f]]
train_idx <- setdiff(seq_len(nrow(pheno)), valid_idx)
yT <- pheno[[tr]][train_idx] # vetor
xT <- geno[train_idx, ]
yV <- pheno[[tr]][valid_idx]
xV <- geno[valid_idx, ]
fit <- randomForest(xT, yT, mtry = floor(ncol(xT) / 3), ntree = 500)
pred_T <- predict(fit, xT)
pred_V <- predict(fit, xV)
imp_df <- data.frame(varImp(fit, scale = TRUE, value = "rss"))
# Adiciona informações de repetição e fold, mantendo nomes dos marcadores
imp_df$marker <- rownames(imp_df)
imp_df$Rep <- r
imp_df$Fold <- f
gc()
tibble(
Trait = tr,
Rep = r,
Fold = f,
R2_Train = round(cor(pred_T, yT), 3),
R2_Valid = round(cor(pred_V, yV), 3),
RMSE_Train = round(sqrt(mean((pred_T - yT)^2)), 3),
RMSE_Valid = round(sqrt(mean((pred_V - yV)^2)), 3),
GEBV_T = list(pred_T),
GEBV_V = list(pred_V),
imp = list(imp_df)
)
}
stopCluster(cl)
saveRDS(results_cv_RF, file = "output/results_cv_RF.rds")cl <- makeCluster(max(1, detectCores() - 1))
registerDoParallel(cl)
combos_gbm <- expand.grid(
trait = traits,
rep = seq_len(nrept),
fold = seq_len(nfolds),
stringsAsFactors = FALSE
)
results_cv_GBM <- foreach(
idx = seq_len(nrow(combos_gbm)),
.packages = c("gbm", "dplyr", "tibble", "caret"),
.combine = bind_rows
) %dopar% {
tr <- combos_gbm$trait[idx]
r <- combos_gbm$rep[idx]
f <- combos_gbm$fold[idx]
valid_idx <- fold.list[[r]][[f]]
train_idx <- setdiff(seq_len(nrow(pheno)), valid_idx)
yT <- pheno[[tr]][train_idx] # vetor
xT <- geno[train_idx, ]
yV <- pheno[[tr]][valid_idx]
xV <- geno[valid_idx, ]
fit <- gbm(
yT ~ .,
data = data.frame(yT, xT),
distribution = "gaussian",
n.trees = 500,
interaction.depth = 2
)
pred_T <- predict(fit, data.frame(xT), n.trees = 500)
pred_V <- predict(fit, data.frame(xV), n.trees = 500)
imp_df <- data.frame(varImp(fit, scale = TRUE, value = "rss" , numTrees = 500))
# Adiciona informações de repetição e fold, mantendo nomes dos marcadores
imp_df$marker <- rownames(imp_df)
imp_df$Rep <- r
imp_df$Fold <- f
gc()
tibble(
Trait = tr,
Rep = r,
Fold = f,
R2_Train = round(cor(pred_T, yT), 3),
R2_Valid = round(cor(pred_V, yV), 3),
RMSE_Train = round(sqrt(mean((pred_T - yT)^2)), 3),
RMSE_Valid = round(sqrt(mean((pred_V - yV)^2)), 3),
GEBV_T = list(pred_T),
GEBV_V = list(pred_V),
imp = list(imp_df)
)
}
stopCluster(cl)
saveRDS(results_cv_GBM, file = "output/results_cv_GBM.rds")cl <- makeCluster(max(1, detectCores() - 1))
registerDoParallel(cl)
combos_nn <- expand.grid(
trait = traits,
rep = seq_len(nrept),
fold = seq_len(nfolds),
h1 = c(1, 2, 4, 8, 16, 32),
h2 = c(0, 1, 2, 4, 8, 16, 32),
stringsAsFactors = FALSE
)
results_cv_NN <- foreach(
idx = seq_len(nrow(combos_nn)),
.packages = c("ANN2", "neuralnet", "dplyr", "tibble"),
.combine = bind_rows
) %dopar% {
tr <- combos_nn$trait[idx]
r <- combos_nn$rep[idx]
f <- combos_nn$fold[idx]
h1 <- combos_nn$h1[idx]
h2 <- combos_nn$h2[idx]
hidden.layers <- case_when(h2 != 0 ~ c(h1, h2),
TRUE ~ h1)
valid_idx <- fold.list[[r]][[f]]
train_idx <- setdiff(seq_len(nrow(pheno)), valid_idx)
yT <- pheno[[tr]][train_idx] # vetor
xT <- geno[train_idx, ]
yV <- pheno[[tr]][valid_idx]
xV <- geno[valid_idx, ]
# Construção e Treinamento da Rede Neural
NN <- neuralnetwork(
X = xT,
y = yT,
hidden.layers = hidden.layers,
regression = TRUE,
activ.functions = "relu",
n.epochs = 500,
loss.type = "squared",
val.prop = 0
)
pred_T <- predict(NN, xT)$predictions
pred_V <- predict(NN, xV)$predictions
tibble(
Trait = tr,
Rep = r,
Fold = f,
Hidden_Layers_1 = h1,
Hidden_Layers_2 = h2,
R2_Train = round(cor(pred_T, yT), 3),
R2_Valid = round(cor(pred_V, yV), 3),
RMSE_Train = round(sqrt(mean((pred_T - yT)^2)), 3),
RMSE_Valid = round(sqrt(mean((pred_V - yV)^2)), 3),
GEBV_T = list(pred_T),
GEBV_V = list(pred_V)
)
}
stopCluster(cl)
saveRDS(results_cv_NN, file = "output/results_cv_NN.rds")# Carregar resultados
results_cv_GBLUP_a <- readRDS("output/results_cv_GBLUP_a.rds")
results_cv_GBLUP_ad <- readRDS("output/results_cv_GBLUP_ad.rds")
results_cv_GBLUP_ade <- readRDS("output/results_cv_GBLUP_ade.rds")
results_cv_MARS_1 <- readRDS("output/results_cv_MARS_1.rds")
results_cv_MARS_2 <- readRDS("output/results_cv_MARS_2.rds")
results_cv_MARS_3 <- readRDS("output/results_cv_MARS_3.rds")
results_cv_DT <- readRDS("output/results_cv_DT.rds")
results_cv_Bag <- readRDS("output/results_cv_Bag.rds")
results_cv_RF <- readRDS("output/results_cv_RF.rds")
results_cv_GBM <- readRDS("output/results_cv_GBM.rds")
results_cv_NN <- readRDS("output/results_cv_NN.rds")
# Agrupa por Trait e configuração de neurônios
resumo_nn <- results_cv_NN %>%
group_by(Trait, Hidden_Layers_1, Hidden_Layers_2) %>%
summarise(
R2_Valid_Mean = mean(R2_Valid, na.rm = TRUE),
R2_Train_Mean = mean(R2_Train, na.rm = TRUE),
RMSE_Valid_Mean = mean(RMSE_Valid, na.rm = TRUE),
RMSE_Train_Mean = mean(RMSE_Train, na.rm = TRUE),
R2_Valid_SD = sd(R2_Valid, na.rm = TRUE),
R2_Train_SD = sd(R2_Train, na.rm = TRUE),
RMSE_Valid_SD = sd(RMSE_Valid, na.rm = TRUE),
RMSE_Train_SD = sd(RMSE_Train, na.rm = TRUE),
.groups = "drop"
)
# Exibe os melhores por característica com base no maior R²_Valid
melhores_config_por_trait <- resumo_nn %>%
group_by(Trait) %>%
slice_max(order_by = R2_Valid_Mean, n = 1) %>%
arrange(Trait)
print(melhores_config_por_trait)# A tibble: 6 × 11
# Groups: Trait [6]
Trait Hidden_Layers_1 Hidden_Layers_2 R2_Valid_Mean R2_Train_Mean
<chr> <dbl> <dbl> <dbl> <dbl>
1 V1 32 32 0.438 1
2 V2 32 32 0.537 1
3 V3 32 2 0.457 0.951
4 V4 32 0 0.444 1
5 V5 1 2 0.322 0.801
6 V6 16 2 0.306 0.933
# ℹ 6 more variables: RMSE_Valid_Mean <dbl>, RMSE_Train_Mean <dbl>,
# R2_Valid_SD <dbl>, R2_Train_SD <dbl>, RMSE_Valid_SD <dbl>,
# RMSE_Train_SD <dbl>
# Adicionar coluna Method e combinar todos
combined_results <- bind_rows(
results_cv_GBLUP_a %>% mutate(Method = "GBLUP_a"),
results_cv_GBLUP_ad %>% mutate(Method = "GBLUP_ad"),
results_cv_GBLUP_ade %>% mutate(Method = "GBLUP_ade"),
results_cv_MARS_1 %>% mutate(Method = "MARS_1"),
results_cv_MARS_2 %>% mutate(Method = "MARS_2"),
results_cv_MARS_3 %>% mutate(Method = "MARS_3"),
results_cv_DT %>% mutate(Method = "DT"),
results_cv_Bag %>% mutate(Method = "BAG"),
results_cv_RF %>% mutate(Method = "RF"),
results_cv_GBM %>% mutate(Method = "GBM")
)
# Resumir por Method e Trait
table_final <- combined_results %>%
group_by(Method, Trait) %>%
summarise(
R2_Valid_Mean = mean(R2_Valid, na.rm = TRUE),
R2_Valid_SD = sd(R2_Valid, na.rm = TRUE),
RMSE_Valid_Mean = mean(RMSE_Valid, na.rm = TRUE),
RMSE_Valid_SD = sd(RMSE_Valid, na.rm = TRUE)
) %>%
ungroup() %>%
bind_rows(
melhores_config_por_trait %>%
mutate(Method = "NN") %>%
dplyr::select(Method, Trait, R2_Valid_Mean, R2_Valid_SD, RMSE_Valid_Mean, RMSE_Valid_SD)
)`summarise()` has grouped output by 'Method'. You can override using the
`.groups` argument.
# Exibir tabela consolidada
table_final %>%
arrange(Trait, Method) %>%
mutate_if(is.numeric, round, 4) %>%
kable(booktabs = TRUE, caption = "Resultados Consolidados por Método e Traço") %>%
kable_styling(full_width = FALSE)| Method | Trait | R2_Valid_Mean | R2_Valid_SD | RMSE_Valid_Mean | RMSE_Valid_SD |
|---|---|---|---|---|---|
| BAG | V1 | 0.7437 | 0.0354 | 1.5453 | 0.0972 |
| DT | V1 | 0.6573 | 0.0435 | 1.7373 | 0.0938 |
| GBLUP_a | V1 | 0.6401 | 0.0337 | 1.7784 | 0.0752 |
| GBLUP_ad | V1 | 0.6327 | 0.0000 | 1.8537 | 0.0000 |
| GBLUP_ade | V1 | 0.6118 | 0.0289 | 1.8123 | 0.0798 |
| GBM | V1 | 0.7209 | 0.0230 | 1.5889 | 0.0641 |
| MARS_1 | V1 | 0.6571 | 0.0290 | 1.7327 | 0.0746 |
| MARS_2 | V1 | 0.7653 | 0.0202 | 1.4861 | 0.0642 |
| MARS_3 | V1 | 0.6712 | 0.0314 | 1.8404 | 0.1095 |
| NN | V1 | 0.4380 | 0.0441 | 2.2661 | 0.1023 |
| RF | V1 | 0.7444 | 0.0346 | 1.5447 | 0.0953 |
| BAG | V2 | 0.6656 | 0.0345 | 0.8482 | 0.0464 |
| DT | V2 | 0.3090 | 0.0465 | 1.0910 | 0.0494 |
| GBLUP_a | V2 | 0.7164 | 0.0445 | 0.7513 | 0.0485 |
| GBLUP_ade | V2 | 0.6716 | 0.0269 | 0.7966 | 0.0376 |
| GBM | V2 | 0.6910 | 0.0268 | 0.7790 | 0.0431 |
| MARS_1 | V2 | 0.4746 | 0.0456 | 0.9599 | 0.0464 |
| MARS_2 | V2 | 0.5368 | 0.0529 | 0.9383 | 0.0573 |
| MARS_3 | V2 | 0.4912 | 0.0550 | 1.0852 | 0.0867 |
| NN | V2 | 0.5372 | 0.0422 | 0.9836 | 0.0422 |
| RF | V2 | 0.6672 | 0.0329 | 0.8480 | 0.0485 |
| BAG | V3 | 0.5750 | 0.0504 | 0.7896 | 0.0382 |
| DT | V3 | 0.2526 | 0.0653 | 0.9650 | 0.0344 |
| GBLUP_a | V3 | 0.6668 | 0.0284 | 0.6989 | 0.0269 |
| GBLUP_ade | V3 | 0.5966 | 0.0484 | 0.7508 | 0.0314 |
| GBM | V3 | 0.5481 | 0.0527 | 0.7924 | 0.0294 |
| MARS_1 | V3 | 0.4095 | 0.0595 | 0.8683 | 0.0348 |
| MARS_2 | V3 | 0.4151 | 0.0640 | 0.8962 | 0.0443 |
| MARS_3 | V3 | 0.3782 | 0.0599 | 1.0304 | 0.0640 |
| NN | V3 | 0.4574 | 0.0614 | 0.9127 | 0.0534 |
| RF | V3 | 0.5789 | 0.0525 | 0.7879 | 0.0376 |
| BAG | V4 | 0.5753 | 0.0445 | 0.7185 | 0.0253 |
| DT | V4 | 0.2824 | 0.0650 | 0.8685 | 0.0376 |
| GBLUP_a | V4 | 0.6588 | 0.0439 | 0.6422 | 0.0291 |
| GBLUP_ade | V4 | 0.5962 | 0.0318 | 0.6854 | 0.0238 |
| GBM | V4 | 0.5524 | 0.0307 | 0.7214 | 0.0237 |
| MARS_1 | V4 | 0.4330 | 0.0422 | 0.7812 | 0.0265 |
| MARS_2 | V4 | 0.4319 | 0.0592 | 0.8072 | 0.0326 |
| MARS_3 | V4 | 0.3684 | 0.0523 | 0.9553 | 0.0462 |
| NN | V4 | 0.4437 | 0.0462 | 0.8460 | 0.0346 |
| RF | V4 | 0.5789 | 0.0398 | 0.7178 | 0.0259 |
| BAG | V5 | 0.4299 | 0.0400 | 0.7695 | 0.0352 |
| DT | V5 | 0.1408 | 0.0586 | 0.9162 | 0.0427 |
| GBLUP_a | V5 | 0.5617 | 0.0335 | 0.7021 | 0.0312 |
| GBLUP_ade | V5 | 0.4657 | 0.0358 | 0.7491 | 0.0356 |
| GBM | V5 | 0.3892 | 0.0548 | 0.8036 | 0.0419 |
| MARS_1 | V5 | 0.3223 | 0.0426 | 0.8182 | 0.0360 |
| MARS_2 | V5 | 0.2701 | 0.0714 | 0.8772 | 0.0564 |
| MARS_3 | V5 | 0.2433 | 0.0738 | 1.0260 | 0.0702 |
| NN | V5 | 0.3215 | 0.0676 | 0.8936 | 0.0624 |
| RF | V5 | 0.4356 | 0.0367 | 0.7677 | 0.0346 |
| BAG | V6 | 0.4604 | 0.0395 | 0.6582 | 0.0206 |
| DT | V6 | 0.2557 | 0.0619 | 0.7519 | 0.0285 |
| GBLUP_a | V6 | 0.5565 | 0.0382 | 0.6125 | 0.0232 |
| GBLUP_ade | V6 | 0.4741 | 0.0354 | 0.6484 | 0.0192 |
| GBM | V6 | 0.4062 | 0.0334 | 0.6927 | 0.0205 |
| MARS_1 | V6 | 0.3615 | 0.0443 | 0.6994 | 0.0230 |
| MARS_2 | V6 | 0.3334 | 0.0544 | 0.7352 | 0.0266 |
| MARS_3 | V6 | 0.2519 | 0.0697 | 0.8841 | 0.0508 |
| NN | V6 | 0.3064 | 0.0698 | 0.8151 | 0.0481 |
| RF | V6 | 0.4640 | 0.0355 | 0.6572 | 0.0191 |
# Salvar tabela consolidada
writexl::write_xlsx(table_final, "output/simulated_results_consolidated.xlsx")
R version 4.4.1 (2024-06-14 ucrt)
Platform: x86_64-w64-mingw32/x64
Running under: Windows 11 x64 (build 26100)
Matrix products: default
locale:
[1] LC_COLLATE=Portuguese_Brazil.utf8 LC_CTYPE=Portuguese_Brazil.utf8
[3] LC_MONETARY=Portuguese_Brazil.utf8 LC_NUMERIC=C
[5] LC_TIME=Portuguese_Brazil.utf8
time zone: America/Sao_Paulo
tzcode source: internal
attached base packages:
[1] parallel stats graphics grDevices utils datasets methods
[8] base
other attached packages:
[1] caret_7.0-1 lubridate_1.9.4 forcats_1.0.0
[4] stringr_1.5.1 dplyr_1.1.4 purrr_1.1.0
[7] readr_2.1.5 tidyr_1.3.1 tibble_3.3.0
[10] ggplot2_3.5.2 tidyverse_2.0.0 ANN2_2.3.4
[13] neuralnet_1.44.2 gbm_2.2.2 randomForest_4.7-1.2
[16] rpart_4.1.23 earth_5.3.4 plotmo_3.6.4
[19] plotrix_3.8-4 Formula_1.2-5 sommer_4.4.2
[22] crayon_1.5.3 MASS_7.3-60.2 Matrix_1.7-0
[25] doParallel_1.0.17 iterators_1.0.14 foreach_1.5.2
[28] kableExtra_1.4.0 cvTools_0.3.3 robustbase_0.99-4-1
[31] lattice_0.22-7
loaded via a namespace (and not attached):
[1] pROC_1.18.5 writexl_1.5.4 rlang_1.1.6
[4] magrittr_2.0.3 git2r_0.36.2 compiler_4.4.1
[7] systemfonts_1.2.3 vctrs_0.6.5 reshape2_1.4.4
[10] pkgconfig_2.0.3 fastmap_1.2.0 utf8_1.2.6
[13] promises_1.3.3 rmarkdown_2.29 prodlim_2025.04.28
[16] tzdb_0.5.0 xfun_0.52 cachem_1.1.0
[19] jsonlite_2.0.0 recipes_1.3.1 later_1.4.2
[22] R6_2.6.1 bslib_0.9.0 stringi_1.8.7
[25] RColorBrewer_1.1-3 parallelly_1.45.0 jquerylib_0.1.4
[28] Rcpp_1.1.0 knitr_1.50 future.apply_1.20.0
[31] httpuv_1.6.16 splines_4.4.1 nnet_7.3-19
[34] timechange_0.3.0 tidyselect_1.2.1 rstudioapi_0.17.1
[37] yaml_2.3.10 timeDate_4041.110 codetools_0.2-20
[40] listenv_0.9.1 plyr_1.8.9 withr_3.0.2
[43] evaluate_1.0.4 future_1.58.0 survival_3.6-4
[46] xml2_1.3.8 pillar_1.11.0 whisker_0.4.1
[49] stats4_4.4.1 generics_0.1.4 rprojroot_2.0.4
[52] hms_1.1.3 scales_1.4.0 globals_0.18.0
[55] class_7.3-22 glue_1.8.0 tools_4.4.1
[58] data.table_1.17.8 ModelMetrics_1.2.2.2 gower_1.0.2
[61] fs_1.6.6 grid_4.4.1 ipred_0.9-15
[64] nlme_3.1-168 cli_3.6.5 textshaping_1.0.1
[67] workflowr_1.7.1 viridisLite_0.4.2 svglite_2.2.1
[70] lava_1.8.1 gtable_0.3.6 DEoptimR_1.1-3-1
[73] sass_0.4.10 digest_0.6.37 farver_2.1.2
[76] htmltools_0.5.8.1 lifecycle_1.0.4 hardhat_1.4.1
Weverton Gomes da Costa, Pós-Doutorando, Departamento de Estatística - Universidade Federal de Viçosa, wevertonufv@gmail.com↩︎