Tenho um gráfico gerado por um pacote que gostaria de replicá-lo e fazer algumas alterações nas cores, mas não estou conseguindo entender o código por trás do gráfico.
Gráfico:
Código usado pelo pacote:
function (data = download_merged_data(cached = TRUE, silent = TRUE),
type = "deaths", min_cases = ifelse(per_capita, ifelse(type ==
"deaths", 5, 50), ifelse(type == "deaths", 500, 5000)),
cumulative = FALSE, change_ave = 7, per_capita = FALSE, population_cutoff = 0,
diverging_color_scale = FALSE, countries = NULL, sort_countries = NULL,
data_date_str = format(lubridate::as_date(data$timestamp[1]),
"%B %d, %Y"))
{
if (!type %in% c("confirmed", "deaths", "recovered", "active"))
stop("Wrong 'type': Only 'confirmed', 'deaths', 'recovered' and 'active' are supported")
if (!is.logical(cumulative))
stop("'cumulative' needs to be a logical value")
change_ave <- as.integer(change_ave)
if (change_ave < 0)
stop("'change_ave' needs to be a positive integer")
if (population_cutoff > 0 || per_capita)
message(paste("Population data required. Observations for the following jurisdictions",
"will be dropped as the World Bank is not providing population data for",
"them: ", paste(unique(data$iso3c[is.na(data$population)]),
collapse = ", ")))
if (population_cutoff > 0) {
data <- data %>% dplyr::filter(.data$population > 1e+06 *
population_cutoff)
}
data <- data %>% dplyr::mutate(active = .data$confirmed -
.data$recovered - .data$deaths, orig_type = !!rlang::sym(type))
if (!cumulative)
data <- data %>% dplyr::group_by(.data$iso3c) %>% dplyr::mutate(delta = !!rlang::sym(type) -
dplyr::lag(!!rlang::sym(type)), change = zoo::rollmean(.data$delta,
change_ave, na.pad = TRUE, align = "right")) %>%
dplyr::ungroup()
data <- df <- data %>% dplyr::group_by(.data$iso3c) %>% dplyr::filter(!is.na(!!rlang::sym(type)))
if (!cumulative)
df <- df %>% dplyr::mutate(`:=`(!!type, .data$change))
if (per_capita)
df <- df %>% dplyr::filter(!is.na(.data$population)) %>%
dplyr::mutate(`:=`(!!type, 1e+05 * (!!rlang::sym(type))/.data$population),
orig_type = 1e+05 * .data$orig_type/.data$population)
df <- df %>% dplyr::filter(max(.data$orig_type, na.rm = TRUE) >=
min_cases) %>% dplyr::filter(!is.na(!!rlang::sym(type))) %>%
dplyr::ungroup() %>% dplyr::select(.data$iso3c, .data$country,
.data$date, .data$orig_type, !!rlang::sym(type))
if (!diverging_color_scale) {
df[df[, type] <= 0, type] <- min(df[df[, type] > 0, type])
}
if (!is.null(countries) && (length(countries) > 1 || countries !=
"") && !any(countries %in% df$iso3c))
warning(paste("Non-NULL 'countries' value but no countries matched in data",
"(Did you specify correct ISO3c codes or do values for 'min_cases'",
"lead to the exclusion of your selected countries' data?)"))
if (!is.null(countries) && (length(countries) > 1 || countries !=
"")) {
df <- df %>% dplyr::filter(.data$iso3c %in% countries)
}
if (!is.null(sort_countries)) {
if (!sort_countries %in% c("start", "magnitude", "countries"))
stop("'sort_countries' needs to be either 'start', 'magnitude' or 'countries'")
if (sort_countries == "start") {
sortdf <- df %>% dplyr::group_by(.data$iso3c) %>%
dplyr::filter(.data$orig_type > min_cases) %>%
dplyr::summarise(min_date = min(.data$date)) %>%
dplyr::arrange(.data$min_date)
df$iso3c <- factor(df$iso3c, levels = sortdf$iso3c)
}
if (sort_countries == "magnitude") {
sortdf <- df %>% dplyr::group_by(.data$iso3c) %>%
dplyr::summarise(max_vals = max(.data$orig_type)) %>%
dplyr::arrange(-.data$max_vals)
df$iso3c <- factor(df$iso3c, levels = sortdf$iso3c)
}
if (sort_countries == "countries") {
if (!(!is.null(countries) && (length(countries) >
1 || countries != ""))) {
stop("'sort_countries' == 'countries' but 'countries' is not set")
}
df$iso3c <- factor(df$iso3c, levels = countries)
}
}
caption_str <- paste("Case data: Johns Hopkins University Center for Systems Science",
"and Engineering (JHU CSSE).")
if (per_capita || population_cutoff > 0) {
caption_str <- paste(caption_str, "Population data: Worldbank.")
}
caption_str <- paste(caption_str, sprintf("Data obtained on %s.",
data_date_str))
if (min_cases > 0) {
caption_str <- paste(caption_str, "The sample is limited to countries with",
sprintf(ifelse(round(min_cases) == min_cases, "more than %d %s.",
"more than %.2f %s."), min_cases, dplyr::case_when(type ==
"deaths" ~ "deaths", type == "confirmed" ~ "confirmed cases",
type == "recovered" ~ "recovered cases", type ==
"active" ~ "active cases")))
}
if (population_cutoff > 0) {
caption_str <- paste(caption_str, "The sample is limited to countries with",
sprintf("a population exceeding %.0f million.", population_cutoff))
}
caption_str <- paste(strwrap(paste(caption_str, "Code: https://github.com/joachim-gassen/tidycovid19."),
width = 100), collapse = "\n")
type_str <- dplyr::case_when(type == "deaths" ~ "deaths\n",
type == "confirmed" ~ "confirmed cases\n", type == "recovered" ~
"recovered cases\n", type == "active" ~ "active cases\n")
if (!cumulative)
color_str <- paste("Daily change in", type_str)
else {
substr(type_str, 1, 1) <- toupper(substr(type_str, 1,
1))
color_str <- type_str
}
if (per_capita) {
color_str <- paste(color_str, "per 100,000 inhabitants")
}
if (!cumulative && change_ave > 1)
color_str <- paste(color_str, sprintf("(averaged over %d days)",
change_ave))
title_str <- "Covid19 Stripes:"
title_str <- paste(title_str, dplyr::case_when(type == "deaths" ~
"Reported deaths", type == "confirmed" ~ "Confirmed cases",
type == "recovered" ~ "Recovered cases", type == "active" ~
"Active cases"))
if (!cumulative)
title_str <- paste(title_str, "(new cases per day)")
else title_str <- paste(title_str, "(cumulative)")
p <- ggplot2::ggplot(df, ggplot2::aes(x = .data$date, color = !!rlang::sym(type))) +
ggplot2::geom_segment(ggplot2::aes(xend = .data$date),
size = 2, y = 0, yend = 1)
if (diverging_color_scale) {
p <- p + ggplot2::scale_color_gradient2(name = color_str,
low = grDevices::rgb(0.23, 0.299, 0.754), mid = grDevices::rgb(0.865,
0.865, 0.865), high = grDevices::rgb(0.706, 0.016,
0.15), trans = "pseudo_log", breaks = c(0))
}
else {
p <- p + ggplot2::scale_color_continuous(name = color_str,
type = "viridis", trans = "log10")
}
p <- p + ggplot2::facet_grid(rows = ggplot2::vars(iso3c)) +
ggplot2::theme_minimal() + ggplot2::guides(color = ggplot2::guide_colourbar(title.vjust = 0.8,
barheight = 0.5, barwidth = 10)) + ggplot2::theme(plot.title.position = "plot",
plot.caption.position = "plot", plot.caption = ggplot2::element_text(hjust = 0),
axis.title.x = ggplot2::element_text(hjust = 1), legend.position = "bottom",
strip.text.y.right = ggplot2::element_text(angle = 0),
panel.spacing = ggplot2::unit(0, "lines")) + ggplot2::labs(x = NULL,
title = title_str, caption = caption_str)
iso3c <- NULL
p
}
Pacote e função que gera o gráfico que estou utilizando:
remotes::install_github("joachim-gassen/tidycovid19")
library(tidycovid19)
updates <- download_merged_data(cached = TRUE)
updates %>%
filter(date >= "2020-02-10") %>%
plot_covid19_stripes(
type = "confirmed",
cumulative = FALSE,
change_ave = 7,
per_capita = FALSE,
min_cases = 15000,
sort_countries = "start") +
labs(x = "", y = "", title = "", caption = "") +
ggthemes::scale_fill_economist() +
guides(color = guide_colourbar(barwidth = 20)) +
geom_segment(aes(xend = date), size = 5, y = 0, yend = 1)
scale_fill_economist
porque ascale
écolor
, além disso os valores são contínuos enquanto as cores que você quer usar são discretas.p <- updates...
no seu código e aí tentar fazer algo com os dados usandop$data
. Ou mudar na função original o tipo de gráfico.