Is this specific person more active in the morning or in the afternoon? Are children more active during their work hours or their leisure time? Questions like these can be answered with GGIR but you first have to specify a few parameters.
The main input argument to be specified is qwindow
,
which can be used the following ways:
In the following sections I will discuss both scenarios.
To perform clock hour segmentation, you will need to provide function
GGIR with argument qwindow
and assign it a numeric vector
with the hours for the segmentation. If the start and end of the day,
are not explicitly provided in the vector GGIR will add them. Please
find below some example values for qwindow
. The number of
values used by qwindow
is unlimited, but be aware that some
of the analyses are such as MX-metrics are impossible for very small
windows and will produce empty results.
qwindow value | Resulting segment(s) to be analysed |
---|---|
c(0,24) | midnight to following midnight (24 hours), the full day is the only segment. |
c(8,24) | midnight-8:00 (8 hour segment), 8:00-midnight (16 hour segment), and midnight-midnight (24 hour segment). |
c(6,11, 13, 17) | midnight-6:00 (6 hour segment), 6:00-11:00 (5 hour segment), 11:00-13:00 (2 hour segment), 13:00-17:00 (4 hour segment), 17:00-midnight (7 hour segment), and midnight-midnight (24 hour segment). |
c(0:24) | 25 segments: 24 segments of 1 hour corresponding to each hour of the day, and midnight-midnight (24 hour segment). |
Day Saving Time (DST) is taken into account when identifying the start of the day, but not when identifying the day segments. In other words, a 23 hour days is processed as the 24 hours after the first midnight. This to ensure that segment length is identical across days of the week, which is needed to ease comparison of outcome variables across days.
To perform activity-log based segmentation, you will need to provide
function GGIR
with argument qwindow
and assign
it the full path to your activity log in .csv format
,
e.g. qwindow="C:/myactivitylog.csv"
.
The activity log is expected to be a .csv-file with the following structure:
ID | date | work | travelhome | home | date | work | travelhome | home |
---|---|---|---|---|---|---|---|---|
1234 | 04-11-20 | 7:45:00 | 17:00:00 | 17:30 | 05-11-20 | 17:30 | ||
4567 | 24-11-20 | 7:45:00 | 17:00:00 | 17:30 | 25-11-20 | 7:45:00 | 17:00:00 | 17:30 |
Rows: First row represents the column headers after which each row represents one accelerometer recording.
ID-column: The first column is expected to hold the
recording ID, which needs to match with the ID GGIR extracts from the
accelerometer file. If unsure how to format the ID values, apply GGIR to
a sample of your accelerometer files using the default argument
settings. The ID column in the generated part 2 .csv reports will show
how the participant ID is extracted by GGIR. If no ID is extracted, see
documentation for argument idloc
, which helps you to
specify the location of the participant in the file name or file header.
If ID extraction fails the accelerometer files cannot be matched with
the corresponding activity log entries.
Date-column: The ID column is followed by a date
column for the first log day. To ensure GGIR recognises this date
correctly, specify argument qwindow_dateformat
. The default
format is "\%d-\%m-\%Y"
as in 23-2-2021 to indicate the
23rd of February 2021. If your date is formatted as 2-23-21 then
specify"\%m-\%d-\%y"
. The column name of the date column
needs to include the character combination “date” or “Date” or
“DATE”.
Start-times: The date column is followed by one or multiple columns with start times for the activity types in that day format in hours:minutes:seconds. Do not provide dates in these cells. The header of the column will be used as label for each activity type. Insert a new date column before continuing with activity types for next day. Leave missing values empty.
Notes: - If an activity log was collected for some individuals then those will be processed with qwindow value c(0,24). - Dates with no activity log data can be skipped, no need to have a column with the date followed by a column with the next date. - The end time of one activity is assumed to be the start time of the next activity. We currently do not facilitate overlapping time segments.
For more information about how to use the GGIR function call see explanation in the main GGIR vignette.
library("GGIR")
GGIR(datadir = "/your/data/directory",
outputdir = "/your/output/directory",
mode = 1:2, # <= run GGIR parts 1 and 2
do.report = 2, # <= generate csv-report for GGIR part 2
qwindow = c(0, 6, 12, 18, 24))
library("GGIR")
GGIR(datadir = "/your/data/directory",
outputdir = "/your/output/directory",
mode = 1:2, # <= run GGIR parts 1 and 2
do.report = 2, # <= generate csv-report for GGIR part 2
qwindow = "/path/to/your/activity/log.csv")
After running this code GGIR creates an output folder in the output
directory as specified with argument outputdir. In the subfolder
results
you will then find three files:
part2_summary.csv
the recording level summary, with 1
row per recording and in recording level aggregates of day segments in
columns.part2_daysummary.csv
the day level summary, with 1 row
per day and day segment specific outcomes in columns.part2_daysummary_longformat.csv
the day level summary
in long format, such that each row represents one segment from one day
in one recording.In both part2_summary.csv
and
part2_daysummary.csv
the column names tell you the day
segment they correspond to. For example, column names ending with
_18-24hr
refer to the time segment 18:00-24:00. In
part2_daysummary_longformat.csv
the time segment is
clarified via columns qwindow_timestamps and qwindow_name.
The analyses that GGIR per segment of the day, include:
Acceleration distribution: Derived if argument
ilevels
is specified. You will find these under the
variable names such as [0,36)_ENMO_mg
which means time
spent between 0 and 36 mg defined by acceleration metric ENMO.
Number of valid hours of data: You will recognise
these as N_valid_hours_in_window
which tells yoyu the
number of valid hours per time window, and N_valid_hours
which is the number of valid hours per day.
LXMX analysis: LXMX analysis, which stands for least
and most active X hours of the segment. You will recognise these
variable names like L5hr_ENMO_mg
which is the start time of
the least active five hours defined by metric ENMO, and
L5_ENMO_mg
which is the average acceleration for those
hours.
Intensity gradient analysis: You will find these as
variables that start with ig_gradient_
See description
of GGIR part 2 output in the main GGIR vignette for further details.
Time spent in Moderate or Vigorous Physical Activity
(MVPA): You will find these as variables such as
MVPA_E5S_T201_ENMO
or
MVPA_E5S_B1M80%_T201_ENMO
. See description
of GGIR part 2 output in the main GGIR vignette for further details.