Plot frequency of self-chosen topic scores in abstracts.
plot_score_topic(
df,
keywords,
case = FALSE,
name.topic = "TOPIC",
bins = NULL,
colour = "steelblue3",
col.abstract = Abstract,
col.pmid = PMID,
title = NULL
)
Data frame containing abstracts.
Character vector. Vector containing keywords. How much weight
a keyword in keywords
carries is determined by how often it is present in
keywords
, e.g. if a keyword is mentioned twice in keywords
and it is mentioned only once in
an abstract, it adds 2 points to the score.
Boolean. If case = TRUE
, terms contained in keywords
are case
sensitive. If case = FALSE
, terms contained in keywords
are case insensitive.
String. Name of the topic.
Integer. Specifies how many bins are used to plot
the distribution. If bins = NULL
, bins are calculated over the whole
range of scores, with one bin per score.
String. Colour of histogram.
Symbol. Column containing abstracts.
Symbol. Column containing PubMed-IDs.
String. Plot title.
Histogram displaying the distribution of self-chosen topic scores in abstracts.
Plots a frequency distribution of self-chosen topic scores in abstracts of a
data frame. The topic score is influenced by the choice of
terms in keywords
. Plotting the distribution can help in choosing the right
threshold to decide which abstracts correspond to the self-chosen
topic.
calculate_score_topic()
, assign_topic()
Other score functions:
assign_topic()
,
calculate_score_animals()
,
calculate_score_biomarker()
,
calculate_score_patients()
,
calculate_score_topic()
,
plot_score_animals()
,
plot_score_biomarker()
,
plot_score_patients()