FreesearchR/inst/translations/translation_sw.csv

23 KiB

1ensw
2HelloHabari
3Get startedTuanze
4File uploadUpakiaji wa faili
5REDCap server exportUhamishaji wa seva ya REDCap
6Local or sample dataTaarifa za ndani au za mfano
7Please be mindfull handling sensitive dataTafadhali kumbuka kushughulikia data nyeti
8The ***FreesearchR*** app only stores data for analyses, but please only use with sensitive data when running locally. [Read more here](https://agdamsbo.github.io/FreesearchR/#run-locally-on-your-own-machine).Programu ya ***FreesearchR*** huhifadhi data kwa uchanganuzi pekee, lakini tafadhali tumia tu na data nyeti unapoendesha ndani ya nchi. [Soma zaidi hapa](https://agdamsbo.github.io/FreesearchR/#run-locally-on-your-own-machine).
9Quick overviewMuhtasari wa haraka
10Select variables for final importChagua vigeu kwa ajili ya uingizaji wa mwisho
11Exclude incomplete variables:Usijumuishe vigeu visivyokamilika:
12Manual selection:Uchaguzi wa mikono:
13Let's begin!Tuanze!
14Analysis validationUthibitishaji wa uchambuzi
15ReportRipoti
16Choose your favourite output file format for further work, and download, when the analyses are done.Chagua umbizo la faili la towe lako kwa kazi zaidi, na upakue, uchanganuzi utakapofanywa.
17www/intro.htmlwww/intro_sw.html
18<p>The <em><strong>FreesearchR</strong></em> app only stores data for analyses, but please only use with sensitive data when running locally. <a href='https://agdamsbo.github.io/FreesearchR/#run-locally-on-your-own-machine'>Read more here</a></p><p>Programu ya <em><strong>FreesearchR</strong></em> huhifadhi data kwa ajili ya uchanganuzi pekee, lakini tafadhali tumia tu na data nyeti unapoendesha ndani ya nchi. <a href='https://agdamsbo.github.io/FreesearchR/#run-locally-on-your-own-machine'>Soma zaidi hapa</a></p>
19Overview and filterMuhtasari na chujio
20Overview and filteringMuhtasari na uchujaji
21Visual overviewMuhtasari wa kuona
22Filter data typesChuja aina za data
23Filter observationsChuja uchunguzi
24Apply filter on observationTumia kichujio unapotazama
25Edit and create dataEdit and create data
26Subset, rename and convert variablesSubset, rename and convert variables
27Below, are several options for simple data manipulation like update variables by renaming, creating new labels (for nicer tables in the report) and changing variable classes (numeric, factor/categorical etc.).Below, are several options for simple data manipulation like update variables by renaming, creating new labels (for nicer tables in the report) and changing variable classes (numeric, factor/categorical etc.).
28Please note that data modifications are applied before any filtering.Please note that data modifications are applied before any filtering.
29Advanced data manipulationAdvanced data manipulation
30Below options allow more advanced varaible manipulations.Below options allow more advanced varaible manipulations.
31Reorder factor levelsReorder factor levels
32Reorder the levels of factor/categorical variables.Reorder the levels of factor/categorical variables.
33New factorNew factor
34Create factor/categorical variable from a continous variable (number/date/time).Create factor/categorical variable from a continous variable (number/date/time).
35New variableNew variable
36Create a new variable based on an R-expression.Create a new variable based on an R-expression.
37Compare modified data to originalCompare modified data to original
38Raw print of the original vs the modified data.Raw print of the original vs the modified data.
39Original data:Data asili:
40Modified data:Data iliyobadilishwa:
41New column name:New column name:
42Group calculation by:Group calculation by:
43Enter an expression to define new column:Enter an expression to define new column:
44Click on a column name to add it to the expression:Click on a column name to add it to the expression:
45Create columnCreate column
46New column name cannot be emptyNew column name cannot be empty
47Create a new columnCreate a new column
48Some operations are not allowedSome operations are not allowed
49Column added!Column added!
50Unique values:Unique values:
51Variable to cut:Variable to cut:
52Close intervals on the rightClose intervals on the right
53Include lowest valueInclude lowest value
54Create factor variableCreate factor variable
55Fixed breaks:Fixed breaks:
56Method:Method:
57Convert Numeric to FactorConvert Numeric to Factor
58Unique:Unique:
59Missing:Missing:
60Most Common:Most Common:
61Min:Min:
62Mean:Mean:
63Max:Max:
64Decimal separator:Decimal separator:
65First five rows are shown below:First five rows are shown below:
66Imported dataImported data
67www/intro.mdwww/intro.md
68Choose your dataChoose your data
69Upload a file, get data directly from REDCap or use local or sample data.Upload a file, get data directly from REDCap or use local or sample data.
70Factor variable to reorder:Factor variable to reorder:
71Sort by levelsSort by levels
72Sort by countSort by count
73Create a new variable (otherwise replaces the one selected)Create a new variable (otherwise replaces the one selected)
74Update factor variableUpdate factor variable
75Sort countSort count
76LevelsLevels
77CountCount
78Update levels of a factorUpdate levels of a factor
79Update & select variablesUpdate & select variables
80Date format:Date format:
81Date to use as origin to convert date/datetime:Date to use as origin to convert date/datetime:
82Apply changesApply changes
83No data to display.No data to display.
84Data successfully updated!Data successfully updated!
85You removed {p_out} % of observations.You removed {p_out} % of observations.
86You removed {p_out} % of variables.You removed {p_out} % of variables.
87You can import {file_extensions_text} filesYou can import {file_extensions_text} files
88You can choose between these file types:You can choose between these file types:
89Rows to skip before reading data:Rows to skip before reading data:
90Missing values character(s):Missing values character(s):
91if several use a comma (',') to separate themif several use a comma (',') to separate them
92Encoding:Encoding:
93Upload a file:Upload a file:
94Browse...Browse...
95Select sheet to import:Select sheet to import:
96No file selected.No file selected.
97EvaluateEvaluate
98VisualsVisuals
99RegressionRegression
100DownloadDownload
101{data_text} has {n} observations and {n_var} variables, with {n_complete} ({p_complete} %) complete cases.{data_text} has {n} observations and {n_var} variables, with {n_complete} ({p_complete} %) complete cases.
102PreparePrepare
103At 0, only complete variables are included; at 100, all variables are included.At 0, only complete variables are included; at 100, all variables are included.
104The following variable pairs are highly correlated: {sentence_paste(.x,and_str)}.\nConsider excluding one {more}from the dataset to ensure variables are independent.The following variable pairs are highly correlated: {sentence_paste(.x,and_str)}.\nConsider excluding one {more}from the dataset to ensure variables are independent.
105No variables have a correlation measure above the threshold.No variables have a correlation measure above the threshold.
106andand
107from each pairfrom each pair
108Only non-text variables are available for plotting. Go the "Data" to reclass data to plot.Only non-text variables are available for plotting. Go the "Data" to reclass data to plot.
109PlotPlot
110Adjust settings, then press "Plot".Adjust settings, then press "Plot".
111Plot height (mm)Plot height (mm)
112Plot width (mm)Plot width (mm)
113File formatFile format
114Download plotDownload plot
115Select variableSelect variable
116Response variableResponse variable
117Plot typePlot type
118Please selectPlease select
119Additional variablesAdditional variables
120Secondary variableSecondary variable
121No variableNo variable
122Grouping variableGrouping variable
123No stratificationNo stratification
124Drawing the plot. Hold tight for a moment..Drawing the plot. Hold tight for a moment..
125#Plotting\n#Plotting\n
126Stacked horizontal barsStacked horizontal bars
127A classical way of visualising the distribution of an ordinal scale like the modified Ranking Scale and known as Grotta barsA classical way of visualising the distribution of an ordinal scale like the modified Ranking Scale and known as Grotta bars
128Violin plotViolin plot
129A modern alternative to the classic boxplot to visualise data distributionA modern alternative to the classic boxplot to visualise data distribution
130Sankey plotSankey plot
131A way of visualising change between groupsA way of visualising change between groups
132Scatter plotScatter plot
133A classic way of showing the association between to variablesA classic way of showing the association between to variables
134Box plotBox plot
135A classic way to plot data distribution by groupsA classic way to plot data distribution by groups
136Euler diagramEuler diagram
137Generate area-proportional Euler diagrams to display set relationshipsGenerate area-proportional Euler diagrams to display set relationships
138DocumentationDocumentation
139Data is only stored for analyses and deleted when the app is closed.Data is only stored for analyses and deleted when the app is closed.
140Consider [running ***FreesearchR*** locally](https://agdamsbo.github.io/FreesearchR/#run-locally-on-your-own-machine) if working with sensitive data.Consider [running ***FreesearchR*** locally](https://agdamsbo.github.io/FreesearchR/#run-locally-on-your-own-machine) if working with sensitive data.
141FeedbackFeedback
142License: AGPLv3License: AGPLv3
143SourceSource
144Data includes {n_pairs} pairs of highly correlated variables.Data includes {n_pairs} pairs of highly correlated variables.
145Create plotCreate plot
146Coefficients plotCoefficients plot
147ChecksChecks
148Below you find a summary table for quick insigths, and on the right you can visualise data classes, browse observations and apply different data filters.Below you find a summary table for quick insigths, and on the right you can visualise data classes, browse observations and apply different data filters.
149Browse observationsBrowse observations
150SettingsSettings
151The following error occured on determining correlations:The following error occured on determining correlations:
152We encountered the following error creating your report:We encountered the following error creating your report:
153No variable chosen for analysisNo variable chosen for analysis
154No missing observationsNo missing observations
155There is a total of {p_miss} % missing observations.There is a total of {p_miss} % missing observations.
156Median:Median:
157Restore original dataRestore original data
158Reset to original imported dataset. Careful! There is no un-doing.Reset to original imported dataset. Careful! There is no un-doing.
159CharacteristicsCharacteristics
160Only factor/categorical variables are available for stratification. Go back to the 'Prepare' tab to reclass a variable if it's not on the list.Only factor/categorical variables are available for stratification. Go back to the 'Prepare' tab to reclass a variable if it's not on the list.
161Compare strata?Compare strata?
162CorrelationsCorrelations
163To avoid evaluating the correlation of the outcome variable, this can be excluded from the plot or select 'none'.To avoid evaluating the correlation of the outcome variable, this can be excluded from the plot or select 'none'.
164Correlation cut-offCorrelation cut-off
165Set the cut-off for considered 'highly correlated'.Set the cut-off for considered 'highly correlated'.
166MissingsMissings
167ClassClass
168ObservationsObservations
169Data classes and missing observationsData classes and missing observations
170Sure you want to reset data? This cannot be undone.Sure you want to reset data? This cannot be undone.
171CancelCancel
172ConfirmConfirm
173The filtered dataThe filtered data
174Create new factorCreate new factor
175This window is aimed at advanced users and require some *R*-experience!This window is aimed at advanced users and require some *R*-experience!
176Create new variablesCreate new variables
177Select data types to includeSelect data types to include
178Uploaded data overviewUploaded data overview
179Here is an overview of how your data is interpreted, and where data is missing. Use this information to consider if data is missing at random or if some observations are missing systematically wich may be caused by an observation bias.Here is an overview of how your data is interpreted, and where data is missing. Use this information to consider if data is missing at random or if some observations are missing systematically wich may be caused by an observation bias.
180Specify covariablesSpecify covariables
181If none are selected, all are included.If none are selected, all are included.
182AnalyseAnalyse
183Working...Working...
184Press 'Analyse' to create the regression model and after changing parameters.Press 'Analyse' to create the regression model and after changing parameters.
185Show p-valueShow p-value
186Model checksModel checks
187Please confirm data reset!Please confirm data reset!
188Import data from REDCapImport data from REDCap
189REDCap serverREDCap server
190Web addressWeb address
191Format should be either 'https://redcap.your.institution/' or 'https://your.institution/redcap/'Format should be either 'https://redcap.your.institution/' or 'https://your.institution/redcap/'
192API tokenAPI token
193The token is a string of 32 numbers and letters.The token is a string of 32 numbers and letters.
194ConnectConnect
195Data import parametersData import parameters
196Select fields/variables to import and click the funnel to apply optional filtersSelect fields/variables to import and click the funnel to apply optional filters
197ImportImport
198Click to see data dictionaryClick to see data dictionary
199Connected to server!Connected to server!
200The {data_rv$info$project_title} project is loaded.The {data_rv$info$project_title} project is loaded.
201Data dictionaryData dictionary
202Preview:Preview:
203Imported data setImported data set
204Select fields/variables to import:Select fields/variables to import:
205Specify the data formatSpecify the data format
206Fill missing values?Fill missing values?
207Requested data was retrieved!Requested data was retrieved!
208Data retrieved, but it looks like only the ID was retrieved from the server. Please check with your REDCap administrator that you have required permissions for data access.Data retrieved, but it looks like only the ID was retrieved from the server. Please check with your REDCap administrator that you have required permissions for data access.
209Data retrieved, but it looks like not all requested fields were retrieved from the server. Please check with your REDCap administrator that you have required permissions for data access.Data retrieved, but it looks like not all requested fields were retrieved from the server. Please check with your REDCap administrator that you have required permissions for data access.
210Click to see the imported dataClick to see the imported data
211Regression tableRegression table
212Import a dataset from an environmentImport a dataset from an environment
213Select a dataset:Select a dataset:
214List of datasets...List of datasets...
215No data selected!No data selected!
216No dataset here...No dataset here...
217Use a dataset from your environment or from the environment of a package.Use a dataset from your environment or from the environment of a package.
218Not a data.frameNot a data.frame
219Select sourceSelect source
220Select a data source:Select a data source:
221YesYes
222NoNo
223Coefficient plotCoefficient plot
224Select outcome variableSelect outcome variable
225Choose regression analysisChoose regression analysis
226Covariables to format as categoricalCovariables to format as categorical
227Select variable to stratify baselineSelect variable to stratify baseline
228Select models to plotSelect models to plot
229Creating regression models failed with the following error:Creating regression models failed with the following error:
230Creating a regression table failed with the following error:Creating a regression table failed with the following error:
231Saving the plot. Hold on for a moment..Saving the plot. Hold on for a moment..
232Running model assumptions checks failed with the following error:Running model assumptions checks failed with the following error:
233Select checks to plotSelect checks to plot
234Multivariable regression model checksMultivariable regression model checks
235Grouped by {get_label(data,ter)}Grouped by {get_label(data,ter)}
236Option to perform statistical comparisons between strata in baseline table.Option to perform statistical comparisons between strata in baseline table.
237Press 'Evaluate' to create the comparison table.Press 'Evaluate' to create the comparison table.
238The data includes {n_col} variables. Please limit to 100.The data includes {n_col} variables. Please limit to 100.
239Data importData import
240Data import formattingData import formatting
241Data modificationsData modifications
242Variables filterVariables filter
243Data filterData filter
244Data characteristics tableData characteristics table
245The dataset without text variablesThe dataset without text variables
246Creating the table. Hold on for a moment..Creating the table. Hold on for a moment..
247Select variable to stratify analysisSelect variable to stratify analysis
248Generating the report. Hold on for a moment..Generating the report. Hold on for a moment..
249We encountered the following error showing missingness:We encountered the following error showing missingness:
250We encountered the following error browsing your data:We encountered the following error browsing your data:
251Choose a name for the column to be created or modified, then enter an expression before clicking on the button below to create the variable, or cancel to exit without saving anything.Choose a name for the column to be created or modified, then enter an expression before clicking on the button below to create the variable, or cancel to exit without saving anything.
252OtherOther
253Hour of the dayHour of the day
254BreaksBreaks
255By day of the weekBy day of the week
256By weekdayBy weekday
257By week number and yearBy week number and year
258By week numberBy week number
259By month and yearBy month and year
260By month onlyBy month only
261By quarter of the yearBy quarter of the year
262By yearBy year
263Keep only most commonKeep only most common
264NumberNumber
265Combine below percentageCombine below percentage
266PercentagePercentage
267By specified numbersBy specified numbers
268By quantiles (groups of equal size)By quantiles (groups of equal size)
269Please fill in web address and API token, then press 'Connect'.Please fill in web address and API token, then press 'Connect'.
270There are more advanced options to modify factor/categorical variables as well as create new factor from an existing variable or new variables with R code. At the bottom you can restore the original data.There are more advanced options to modify factor/categorical variables as well as create new factor from an existing variable or new variables with R code. At the bottom you can restore the original data.
271Text or character to split string byText or character to split string by
272Split the variableSplit the variable
273Variable to split:Variable to split:
274Direction:Direction:
275Split string to multiple columns. Keep number of rows.Split string to multiple columns. Keep number of rows.
276Split string to multiple observations (rows) in the same column. Also ads id and instance columnsSplit string to multiple observations (rows) in the same column. Also ads id and instance columns
277Split character stringSplit character string
278Split textSplit text
279Split a character string by a common delimiterSplit a character string by a common delimiter
280Select delimiterSelect delimiter
281Browse data previewBrowse data preview
282Original dataOriginal data
283Preview of resultPreview of result
284No character variables with accepted delimiters detected.No character variables with accepted delimiters detected.
285Split a text column by a recognised delimiter.Split a text column by a recognised delimiter.
286Apply splitApply split
287Stacked relative barplotStacked relative barplot
288Create relative stacked barplots to show the distribution of categorical levelsCreate relative stacked barplots to show the distribution of categorical levels
289Side-by-side barplotSide-by-side barplot
290Create side-by-side barplot to show the distribution of categorical levelsCreate side-by-side barplot to show the distribution of categorical levels
291Select table themeSelect table theme
292Level of detailLevel of detail
293MinimalMinimal
294ExtensiveExtensive
295LettersLetters
296WordsWords
297Shorten to first lettersShorten to first letters
298Shorten to first wordsShorten to first words
299Select missings analysis to applySelect missings analysis to apply
300VariablesVariables
301By outcomeBy outcome
302Missings across variables by the variable **'{input$missings_var}'**Missings across variables by the variable **'{input$missings_var}'**
303Missing vs non-missing observations in the variable **'{input$missings_var}'**Missing vs non-missing observations in the variable **'{input$missings_var}'**
304Evaluate missingness by either comparing missing values across variables (optionally grouped by af categorical or dichotomous variable) or compare variables grouped by the missing status (missing or not) of an outcome variable. If there is a significant difference i the missingness, this may cause a bias in you data and should be considered carefully interpreting the data and analyses as data may not be missing at random.Evaluate missingness by either comparing missing values across variables (optionally grouped by af categorical or dichotomous variable) or compare variables grouped by the missing status (missing or not) of an outcome variable. If there is a significant difference i the missingness, this may cause a bias in you data and should be considered carefully interpreting the data and analyses as data may not be missing at random.
305Calculating. Hold tight for a moment..Calculating. Hold tight for a moment..
306There is a significant difference in data missingness in {n_nonmcar} {ifelse(n_nnonmcar==1,'variable','variables')} grouped by the selected outcome/grouping variable {outcome}.There is a significant difference in data missingness in {n_nonmcar} {ifelse(n_nnonmcar==1,'variable','variables')} grouped by the selected outcome/grouping variable {outcome}.