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This vignette provides a deep dive into the design of the
teal.slice
package. It is intended for advanced developers.
If you want to merely use teal.slice
, the Filter panel
for developers vignette should satisfy all your needs.
The teal.slice
package is composed of multiple classes,
whose primary purpose is to provide a shiny
module for
managing and displaying filters. The top class in the structure is
FilteredData
. Other modules in the app can interact with
FilteredData
to make filter calls and obtain filtered
data.
The FilteredData
object contains one or more
FilteredDataset
objects. While FilteredData
manages the entire filter panel, each FilteredDataset
is
responsible for filtering a single data set.
FilteredDataset
contains one or more
FilterStates
objects, each corresponding to one data
structure like a data.frame
, a
SummarizedExperiment
, or a
MultiAssayExperiment
. FilterStates
holds a
collection of FilterState
objects, each representing a
single filter condition applied on one variable.
FilterStates
can also hold FilterStateExpr
objects. This is a variation of FilterStates
that focuses
on the filter expression regardless of the underlying data. The
expression can refer to one or several variables.
FilteredData
, FilteredDataset
,
FilterStates
, and
FilterState
/FilterStateExpr
are all
R6
classes and objects of those classes form a hierarchy
but there is no inheritance between them.
Each FilterState
/FilterStateExpr
object
contains one teal_slice
object. teal_slice
stores all information necessary to define a filter. It is not an
R6
class, it does not have any innate methods or behaviors
and does not produce any shiny
modules. Its sole purpose is
to store filter information.
As part of the teal
workflow, FilteredData
,
FilteredDataset
, and FilterStates
are created
instantly when the data is loaded and remain unchanged. One
FilteredData
object is initialized on a list of objects
(e.g. data.frame
, MAE
). A
FilteredDataset
is initialized for each data set. One or
more FilterStates
are initialized, depending on the type of
data set.
On the other hand, a FilterState
is initialized each
time a new filter is added. The values of the FilterState
can be changed, and it can also be removed and added again.
The key mechanism in the new filter panel is in
FilterStates
class. One can think of
FilterStates
as equivalent to a single, possibly compound,
subset call made on one data structure. While FilterState
represents a logical predicate on one vector, e.g
SEX == "F"
, FilterStates
will compose all
predicates of its member FilterState
objects into a call to
a subsetting function,
e.g. data <- subset(data, SEX == "F" & RACE == "CAUCASIAN")
.
In the case of a data.frame
, a single
dplyr::filter
call is sufficient to subset the whole data
set. A MultiAssayExperiment
on the other hand contains
patient data in the @colData
slot and multiple experiments
in the @ExperimentList
slot, and all of these objects have
to be filtered by separate subsetting calls. Therefore, subclasses of
FilterStates
exist to handle different kinds of data
structures and they use different subsetting functions.
This section provides a detailed description of all classes that make up the filter panel structure.
FilteredData
FilteredData
is an object responsible for managing the
filter panel. It sits on top of the class structure and handles the
shiny
modules of the subclasses.
FilteredData
provides several API methods that can be
used to access reproducible subsetting calls and the resulting filtered
data. It also allows external modules to manage filter states through
functions such as get_filter_state
,
set_filter_state
, remove_filter_state
, and
clear_filter_state
.
FilteredDataset
FilteredDataset
is a class that keeps unfiltered data
and returns filtered data based on the filter call derived from the
contained FilterStates
. FilteredDataset
class
objects are initialized by FilteredData
, one for each data
set. FilteredDataset
contains a single data object and
one-to-many FilterStates
depending on the type of that
object. FilteredDataset
stores data set attributes, joins
keys to other data sets, and also combines and executes the subsetting
calls taken from FilterStates
.
The following FilteredDataset
child classes are
currently implemented:
DataframeFilteredDataset
for
data.frame
.MAEFilteredDataset
for
MultiAssayExperiment
.DefaultFilteredDataset
for all remaining (unsupported)
classes - this subclass is different to the others in that it provides
no filtering, its only purpose is to hold and return an object
for which filtering is not supported.FilterStates
When the app starts, FilteredDataset
initializes one or
more FilterStates
objects, one for each component of the
underlying data set. Every FilterStates
object is
responsible for making one subset call. For example, a
MAEFilteredDataset
will create one
FilterStates
for its colData
and one
FilterStates
for each of its experiments. Every
FilterStates
will return a separate subsetting call, which
will be used to subset the entire MultiAssayExperiment
.
The following FilteredStates
child classes are currently
implemented:
DFFilterStates
for data.frame
; uses
dplyr::filter
to filter on columns.MAEFilterStates
forMultiAssayExperiment
;
uses MultiAssayExperiment::subsetByColData
to filter on
columns of the DataFrame
in the @colData
slot.SEFilterStates
for SummarizedExperiment
;
uses the subset
method for
SummarizedExperiment
to filter on columns of
DataFrames
in the @colData
and
@rowData
slots.MatrixFilterStates
for matrix
; uses the
[
operator to filter on columns.FilterStates
serves two shiny
-related
purposes:
ui/srv_add
allows adding a FilterState
for a selected variable. The variables included in the module are the
filterable column names of the provided data set. Selecting a variable
adds a FilterState
to the reactiveVal
stored
in the private$state_list
private field. The subtype of the
created FilterState
is automatically determined based on
the class of the selected column.
ui/srv_active
displays cards of the currently
existing FilterState
objects. Every
FilterState
object serves a remove button and
FilterStates
reacts to clicking that button by removing the
respective FilterState
from private$state_list
and destroying its observers. ui/srv_active
also contains a
remove button that removes all FilterState
objects within
this FilterStates
.
FilterState
This class controls a single filter card and returns a condition call
that depends on the selection state. A FilterState
is
initialized each time FilterStates
adds a new filter.
Different classes of data require different handling of choices so
several FilterState
subclasses exist and each of them
presents a different user interface and generates a different subsetting
call. A FilterState
is created as follows:
FilterStates
creates teal_slice
with
dataname
based on the parent data set and
varname
based on the selected variableteal_slice
is wrapped in teal_slices
and passed to FilterStates$set_filter_state
FilterStates$set_filter_state_impl
is calledFilterStates$set_filter_state_impl
calls
init_filter_state
, passing the appropriate variable as
x
init_filter_states
is a generic function that
dispatches x
, teal_slice
, and other arguments
to the respective child class constructor:LogicalFilterState
for logical
variables.
Presents a checkbox group. Call example: !variable
.RangeFilterState
for numeric
variables.
Presents an interactive plot as well as two numeric inputs. Selection is
always two values that represent inclusive interval limits. Call
example:
variable >= selection[1] & variable <= selection[2]
DateFilterState
for Date
variables.
Presents two date inputs. Selection is two values that determine
inclusive interval limits. Call example:
variable >= selection[1] & variable <= selection[2]
.DatetimeFilterState
for POSIXct
and
POSIXlt
variables. Similar to
DateFilterState
.ChoicesFilterState
for character
and
factor
values. Additionally, all classes will be passed to
ChoicesFilterState
if their number of unique values is
lower than that in
getOption("teal.threshold_slider_vs_checkboxgroup")
.
Presents either a checkbox group or a drop-down menu. Depending on
settings, allows either only one or any number of values to be selected.
Call examples: variable == selection
,
variable %in% selection
.EmptyFilterState
for variables that contain only
missing values. Does not return calls.All child classes handle missing values, and
RangedFilterState
also handles infinite values.
The FilterState
constructor also takes the
extract_type
argument, which determines how the call is
constructed extract_type
can be unspecified,
"matrix"
or "list"
and its value corresponds
to the type of the variable prefix in the returned condition call. If
extract_type
is "list"
, the variable in the
condition call is <dataname>$<varname>
, while
for "matrix"
it would be
<dataname>[, "<varname>"]
.
FilterStateExpr
Similarly to FilterState
, FilterStateExpr
controls a single filter card and returns logical expression. However,
while FilterState
generates the call based on the selection
state, in FilterStateExpr
the call must be specified
manually and it must be a valid R expression.
teal_slice
teal_slice
is a simple object for storing filter
information. It can be thought of as a quantum of information. A
teal_slice
object is passed directly to
FilterState$initialize
and is stored inside of the
FilterState
to keep the current state of the filter.
Technically, all values used to generate a call are in
teal_slice
. FilterState
can be described as a
wrapper around teal_slice
that provides additional methods
to handle filter state. It also contains the actual data (a single
column).
While teal_slice
is not an R6
object and
does not encode any behaviors, it is implemented around a
reactiveValues
object to allow shared state in advanced
teal
applications.
See ?teal_slice
for a detailed explanation.
The diagram above presents the filter panel classes and their
responsibilities when composing filter calls. Code is generated by
nested execution of get_call
methods.
FilteredData$get_call
calls
FilteredDataset$get_call
, which calls
FilterStates$get_call
which in turn calls
FilterState$get_call
.
FilterState$get_call()
returns a single subsetting
expression (logical predicate).
FilterStates$get_call()
returns a single complete
subsetting call by extracting expressions from all
FilterState
objects and combining them with the
&
operator.
FilteredDataset$get_call()
returns a list of calls
extracted from all FilterStates
objects.
FilteredData$get_call(<dataname>)
returns a list
of calls extracted from the specified FilteredDataset
.
Calling datasets$get_call(<dataname>)
in
teal
modules executes a chain of calls in all filter panel
classes. Consider the following scenario:
FilteredData
contains three data sets:
ADSL
, ADTTE
, MAE
, each stored in
its own FiteredDataset
object
ADSL
is a data.frame
so it can be
filtered with a single dplyr::filter
call. This data set is
stored in DataframeFilteredDataset
, which holds a single
FilterStates
object.
FilterStates
constructs a dplyr::filter
call based on the FilterState
objects present in its
private$state_list
.
When FilterStates$set_filter_state
adds a new
teal_slice
, a FilterState
is created and added
to private$state_list
in FilterStates
.
FilterStates
gathers logical expressions from all of its
FilterState
objects and composes them into a
dplyr::filter(ADSL, ...)
call.
Two new filters have been added: SEX
and
AGE
. This causes initialization of appropriate
FilterState
subclasses: ChoiceFilterState
and
RangeFilterState
. Each FilterState
produces a
subsetting expression: SEX == "F"
and
AGE >= 20 & AGE <= 60
. The expressions are
combined with &
and passed to
dplyr::filter
, producing
ADSL <- dplyr::filter(ADSL, SEX == "F" & AGE >= 20 & AGE <= 60)
.
DataframeFilteredDataset
puts this call in a list and
returns it to FilteredData
.
ADTTE
is also a data.frame
so the
FilteredDataset
that stores it works much the same as the
one for ADSL
. The one difference is that the
dplyr::filter
call for ADTTE
is followed by a
dplyr::inner_join
call to merge the filtering result with
the parent data set (ADSL
) so that key columns remain
consistent. Note that this is only done when join_keys
is
specified - otherwise ADTTE
would be treated as a separate
data set and filtered independently.
The MAE
data set is a
MultiAssayExperiment
, which contains multiple sub-objects
which can be filtered on. One of them is ADSL
-like patient
data, stored as a DataFrame
in MAE@colData
,
and others are experiments, typically SummarizedExperiment
objects, stored in MAE@ExperimentList
, which can be
extracted using MAE[["experiment name"]]
. Therefore,
MAEFilteredDataset
has multiple FilterStates
objects: one for subject data and one for each experiment.
A MAEFilterStates
object is initialized for subject
data and for this object
MultiAssayExperiment::subsetByColData
function is applied.
MultiAssayExperiment::subsetByColData
has two arguments:
x
(data) and y
(conditions). Since all filter
expressions are passed to one argument, MAEFilterStates
only has one state_list
, just like
DFFilterStates
. Adding new filters triggers the same
actions as described in (4).
A SummarizedExperiment
is more complicated as
observations can be filtered based on its rowData
and
colData
slots, both contain DataFrame
s.
Subsetting is done by a dedicated S4 subset
method, which
takes two key arguments: subset
takes logical expressions
that will be applied to rowData
, and select
takes logical expressions that will be applied to colData
.
teal_slice
objects that specify filters in a
SummarizedExperiment
must contain an arg
element, either "subset"
or "select"
, to
reflect which slot of the experiment they refer to. The
SEFilterStates
gathers logical expressions of its member
FilterState
objects, groups them by the arg
element, and builds a call so subset
with two combined
logical expressions passed to the subset
and
select
arguments.
The FilteredData
object uses the
filter_panel_ui
and filter_panel_srv
methods
to put up a filter panel that can be used in any application. In
teal
applications it will be placed on the right-hand side.
The filter panel module does not return anything. Data, subsetting
calls, and filter states are accessible by specific public methods:
get_data
, get_call
, and
get_filter_state
, respectively. Typically, the filter panel
consists of three modules:
ui/srv_overview
displays observation counts filtered vs
unfiltered dataui/srv_active
displays active filter cards, which are
created by FilterState
objectsui/srv_add
allows for adding filtersFilteredData
does not handle data sets directly because
they may be of different types, rather, it calls respective methods in
lower-level classes.
When a new filter is added using the “Add Filter Variable” module in
FilterStates
, a new FilterState
object is
initialized and added to private$state_list
.
FilterStates$srv_active
observes
private$state_list
(which is a reactiveVal
)
and when the state of the list changes (a filter is added or removed),
it calls FilterState$server
and uses renderUI
to display FilterState$ui
.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.