lucid | R Documentation |
Fit a lucid model for integrated analysis on exposure, outcome and multi-omics data
lucid( G, Z, Y, CoG = NULL, CoY = NULL, family = "normal", K = 2, Rho_G = 0, Rho_Z_Mu = 0, Rho_Z_Cov = 0, verbose_tune = FALSE, ... )
G |
Exposures, a numeric vector, matrix, or data frame. Categorical variable should be transformed into dummy variables. If a matrix or data frame, rows represent observations and columns correspond to variables. |
Z |
Omics data, a numeric matrix or data frame. Rows correspond to observations and columns correspond to variables. |
Y |
Outcome, a numeric vector. Categorical variable is not allowed. Binary outcome should be coded as 0 and 1. |
CoG |
Optional, covariates to be adjusted for estimating the latent cluster. A numeric vector, matrix or data frame. Categorical variable should be transformed into dummy variables. |
CoY |
Optional, covariates to be adjusted for estimating the association between latent cluster and the outcome. A numeric vector, matrix or data frame. Categorical variable should be transformed into dummy variables. |
family |
Distribution of outcome. For continuous outcome, use "normal"; for binary outcome, use "binary". Default is "normal". |
K |
Number of latent clusters (should be greater or equal than 2). Either an integer or a vector of integer. If K is a vector, model selection on K is performed. |
Rho_G |
A scalar or a vector. This parameter is the LASSO penalty to regularize
exposures. If it is a vector, |
Rho_Z_Mu |
A scalar or a vector. This parameter is the LASSO penalty to
regularize cluster-specific means for omics data (Z). If it is a vector,
|
Rho_Z_Cov |
A scalar or a vector. This parameter is the graphical LASSO
penalty to estimate sparse cluster-specific variance-covariance matrices for omics
data (Z). If it is a vector, |
verbose_tune |
A flag to print details of tuning process. |
... |
Other parameters passed to |
An optimal lucid model
## Not run: G <- sim_data$G Z <- sim_data$Z Y_normal <- sim_data$Y_normal Y_binary <- sim_data$Y_binary cov <- sim_data$Covariate # fit lucid model fit1 <- lucid(G = G, Z = Z, Y = Y_normal, family = "normal") fit2 <- lucid(G = G, Z = Z, Y = Y_binary, family = "binary", useY = FALSE) # including covariates fit3 <- lucid(G = G, Z = Z, Y = Y_binary, family = "binary", CoG = cov) fit4 <- lucid(G = G, Z = Z, Y = Y_binary, family = "binary", CoY = cov) # tune K fit5 <- lucid(G = G, Z = Z, Y = Y_binary, family = "binary", K = 2:5) # variable selection fit6 <- lucid(G = G, Z = Z, Y = Y_binary, family = "binary", Rho_G = seq(0.01, 0.1, by = 0.01)) fit7 <- lucid(G = G, Z = Z, Y = Y_binary, family = "binary", Rho_Z_Mu = seq(10, 100, by = 10), Rho_Z_Cov = 0.5, init_par = "random", verbose_tune = TRUE) ## End(Not run)
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