## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ## ----------------------------------------------------------------------------- library(inferMM) one_curve <- subset(sdl_demo, enzyme == "1111") fit <- fit_mm( x = one_curve$s_uM, y = one_curve$v_uM_per_min, variance = "sqrt" ) summary(fit) fit_auto <- fit_mm( x = one_curve$s_uM, y = one_curve$v_uM_per_min, variance = "auto", power_selection = "quasi_aic" ) summary(fit_auto) ## ----------------------------------------------------------------------------- coef(fit) confint(fit) set.seed(1) confint(fit, method = "bootstrap", B = 99) head(predict(fit, newdata = seq(0, 80, length.out = 6), interval = "prediction")) ## ----eval = FALSE------------------------------------------------------------- # report_mm(fit, interval_type = "confidence") # set.seed(1) # report_mm(fit, method = "bootstrap", B = 99, # interval_type = "confidence") ## ----------------------------------------------------------------------------- screen <- screen_mm( x = one_curve$s_uM, y = one_curve$v_uM_per_min, power_values = c(0.4, 0.6), include_auto = TRUE, quiet = TRUE ) screen$table[, c("model", "selected_model", "quasi_aic", "quasi_bic", "rmse")] ## ----------------------------------------------------------------------------- grouped <- group_mm( data = sdl_demo, s = "s_uM", v = "v_uM_per_min", groups = "enzyme", variance_models = c("constant", "log", "sqrt", "cuberoot"), power_values = c(0.4, 0.6), include_auto = TRUE, quiet = TRUE ) head(grouped$comparison$best_by_group[, c("group_label", "model", "selected_model", "quasi_aic", "quasi_bic", "rmse")]) ## ----eval = FALSE------------------------------------------------------------- # plot(grouped, interval_type = "confidence") ## ----------------------------------------------------------------------------- cluster_fit <- cluster_mm( data = subset(alves_demo, enzyme == "BG"), s = "substrate_conc", v = "activity", cluster = "core", variance = "sqrt" ) summary(cluster_fit) confint(cluster_fit) head(predict(cluster_fit, newdata = seq(0, 700, length.out = 6), interval = "confidence")) ## ----------------------------------------------------------------------------- set.seed(100) sim_dat <- simulate_mm_data(variance_shape = "hill", error = "skewed") head(sim_dat)