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The package musclesyneRgies
allows to extract muscle
synergies from electromyographic (EMG) data through linear decomposition
based on unsupervised machine learning. Specifically, here we adopted
the non-negative matrix factorization (NMF) framework, due to the
non-negative nature of EMG biosignals. However, this method can be
applied to any other kind of data sets, from time series to images.
Muscle synergies are orchestrated activations of functionally-similar
muscle groups. The theory stems from original thoughts by the
neurophysiologist Nikolai Bernstein and it suggests that the central
nervous system might take advantage of such a strategy to simplify the
production and control of movement. Instead of commanding each muscle
individually for executing a particular task, the central nervous system
might send common (but individually weighted) commands to several
muscles at the same time. An idea that can be modelled by linear
decomposition algorithms such as NMF, the output of which consists of a
set of time-independent (or weightings, also called motor modules) and a
set of time dependent coefficients (also called motor primitives). If
you use this R package, please cite Santuz,
2022.
4.1.0
)install.packages("musclesyneRgies")
.Done! Now the package is installed on your computer.
The most simplified workflow for synergy extraction could look as follows (please note that the next chunk of code does not refer to real data and is only intended as a mock example to help you write your own scripts).
# The simplest formulation, using the native (R >= `4.1.0`) pipe operator
# Here, the raw data set is already in the correct format and named `RAW_DATA`
<- lapply(RAW_DATA, filtEMG) |>
SYNS_classified lapply(function(x) normEMG(x, cycle_div = c(100, 100))) |>
lapply(synsNMF) |>
classify_kmeans()
Compact, isn’t it? You can of course tweak and tune all the above to fit your scientific needs and more is explained below and in the vignettes. To try the above code with real data, it is possible to download the test data set from Zenodo as follows:
# Download test data set containing EMG from human locomotion
<- "https://zenodo.org/record/6645483/files/RAW_DATA.RData"
url download.file(url, destfile = "RAW_DATA.RData", mode = "wb")
# Load test data set
load("RAW_DATA.RData")
# Subset data to allow for correct classification (TW = treadmill walking, TR = treadmill running)
<- RAW_DATA[grep("_TW_", names(RAW_DATA))] RAW_DATA
The data set must be in a specific format to fit the analysis
framework. However, if you worked with versions <=
0.8.7-alpha
you will find that requirements are now much
less stringent, to the benefit of usability. What you need (see also
?rawdata
) is a list of objects of class EMG
,
each of which is a list with two elements:
cycles
data frame containing cycle timings, with as
many columns as many cycle subdivisions are wantedemg
data frame containing raw EMG data in columns,
first column must be time in the same units as in the cycle
timings.Here is an example of how those two elements should look like:
library(musclesyneRgies)
data("RAW_DATA")
head(RAW_DATA[[1]]$cycles)
## V1 V2
## 1 1.414 2.074
## 2 2.448 3.115
## 3 3.488 4.141
## 4 4.515 5.168
## 5 5.549 6.216
## 6 6.596 7.249
head(RAW_DATA[[1]]$emg)
## time ME MA FL RF VM VL ST
## 1 0.014 0.201416 -6.445313 22.65930 -0.100708 -0.906372 7.351685 -1.309204
## 2 0.015 -2.316284 -0.100708 24.16992 1.812744 -1.913452 -4.531860 2.920532
## 3 0.016 -7.351685 -7.150269 23.46497 0.704956 -5.337524 3.424072 -0.604248
## 4 0.017 -5.538940 -3.222656 27.49329 5.236816 -4.330444 -1.611328 0.503540
## 5 0.018 -10.675049 -5.740356 23.16284 -0.704956 2.014160 1.007080 -2.719116
## 6 0.019 -12.487793 -3.927612 19.94019 2.014160 -5.136108 -0.805664 0.000000
## BF TA PL GM GL SO
## 1 -7.351685 -44.311523 2.316284 8.862305 -8.358765 8.963013
## 2 -2.719116 -24.673462 -0.704956 10.070801 -10.775757 1.611328
## 3 -8.963013 -18.630981 -15.408325 8.358765 -0.704956 -5.035400
## 4 -5.941772 0.906372 -11.883545 5.136108 -4.330444 -10.574341
## 5 -3.826904 -25.680542 1.812744 -5.136108 -1.913452 -8.761597
## 6 -3.524780 -43.807983 6.546021 10.574341 -0.100708 0.302124
As you might have noticed, column names do not matter for the
cycles
data frame, but they do for emg
: this
is convenient for the subsequent analysis, since you don’t want to loose
track of which columns refer to which muscle. Also, the first column
must always contain time information, in the same format as in the
cycles
data frame (preferably in seconds).
If you feel like this is too convoluted or you prefer to work directly with ASCII files such as tab-separated txt or comma-separated csv, you can proceed as follows:
rawdata
which will ask you where your
files are and will build the R list in the correct format for you.Here is an example of how to use the function rawdata
,
no data is needed since the code uses the package’s built-in data set to
create ASCII files that will then be re-imported through the
function:
# Load the package
library(musclesyneRgies)
# Load built-in data set
data("RAW_DATA")
# Get current working directory
<- getwd()
data_path <- paste0(data_path, .Platform$file.sep)
data_path
# Create two conveniently-named subfolders if they don't already exist
# (if they exist, please make sure they're empty!)
dir.create("cycles", showWarnings = FALSE)
dir.create("emg", showWarnings = FALSE)
# Export ASCII data from built-in data set to the new subfolders
write.table(RAW_DATA[[1]]$cycles,
file = paste0(data_path, "cycles", .Platform$file.sep, names(RAW_DATA)[1], ".txt"),
sep = "\t", row.names = FALSE
)write.table(RAW_DATA[[1]]$emg,
file = paste0(data_path, "emg", .Platform$file.sep, names(RAW_DATA)[1], ".txt"),
sep = "\t", row.names = FALSE
)
# Run the function to parse ASCII files into objects of class `EMG`
<- rawdata(
raw_data_from_files path_cycles = paste0(data_path, "/cycles/"),
path_emg = paste0(data_path, "/emg/"),
header_cycles = FALSE
)
# Check data in the new folders if needed before running the following (will delete!)
# Delete folders
unlink("cycles", recursive = TRUE)
unlink("emg", recursive = TRUE)
All the code in this section will work as in the example if you copy and paste it in R or RStudio.
# Load the package
library(musclesyneRgies)
# Load the built-in example data set
data("RAW_DATA")
# Say you recorded more cycles than those you want to consider for the analysis
# You can subset the raw data (here we keep only 3 cycles, starting from the first)
<- lapply(
RAW_DATA_subset
RAW_DATA,function(x) {
subsetEMG(x,
cy_max = 3,
cy_start = 1
)
}
)
# Raw EMG can be plotted with the following (the first three seconds are plot by default)
# Now also in dark mode if you fancy it
<- plot_rawEMG(RAW_DATA[[1]],
pp trial = names(RAW_DATA)[1],
row_number = 4,
col_number = 4,
dark_mode = TRUE,
line_col = "tomato3"
)
# The raw EMG data set then needs to be filtered
# If you don't want to subset the data set, just filter it as it is
# Here we filter the whole data set with the default parameters for locomotion:
# - Demean EMG
# - High-pass IIR Butterworth 4th order filter (cut-off frequency 50 Hz)
# - Full-wave rectification (default)
# - Low-pass IIR Butterworth 4th order filter (cut-off frequency 20 Hz)
# - Minimum subtraction
# - Amplitude normalisation
<- lapply(RAW_DATA, function(x) filtEMG(x))
filtered_EMG
# If you decide to change filtering parameters, just give them as arguments:
<- lapply(
another_filtered_EMG
RAW_DATA,function(x) {
filtEMG(x,
demean = FALSE,
rectif = "halfwave",
HPf = 30,
HPo = 2,
LPf = 10,
LPo = 2,
min_sub = FALSE,
ampl_norm = FALSE
)
}
)
# Now the filtered EMG needs some time normalisation so that cycles will be comparable
# Here we time-normalise the filtered EMG, including only three cycles and trimming first
# and last to remove unwanted filtering effects
# Each cycle is divided into two parts, each normalised to a length of 100 points
<- lapply(
norm_EMG
filtered_EMG,function(x) {
normEMG(x,
trim = TRUE,
cy_max = 3,
cycle_div = c(100, 100)
)
}
)
# If this cycle division does not work for you, it can be changed
# But please remember to have the same amount of columns in the cycle times as the number
# of phases you want your cycles to be divided into
# Here we divide each cycle with a ratio of 60%-40% and keep only two cycles (first and last
# are still trimmed, so to have two cycles you must start with at least four available)
<- lapply(
another_norm_EMG
filtered_EMG,function(x) {
normEMG(x,
trim = TRUE,
cy_max = 2,
cycle_div = c(120, 80)
)
}
)
# The filtered and time-normalised EMG can be plotted with the following
<- plot_meanEMG(
pp 1]],
norm_EMG[[trial = names(norm_EMG)[1],
row_number = 4,
col_number = 4,
dark_mode = TRUE,
line_size = 0.8,
line_col = "tomato3"
)
# At this stage, synergies can be extracted
# This is the core function to extract synergies via NMF
<- lapply(norm_EMG, synsNMF)
SYNS
# The extracted synergies can be plotted with the following
<- plot_syn_trials(
pp 1]],
SYNS[[max_syns = max(unlist(lapply(SYNS, function(x) x$syns))),
trial = names(SYNS)[1],
dark_mode = TRUE,
line_size = 0.8,
line_col = "tomato1",
sd_col = "tomato4"
)
# Now synergies don't have a functional order and need classification
# Let's load the built-in data set to have some more trial to classify
# (clustering cannot be done on only one trial and having just a few,
# say less than 10, won't help)
data("SYNS")
# Classify with k-means and produce a plot that shows how the clustering went with:
# - Full width at half maximum on the x-axis
# - Centre of activity on the y-axis
# (both referred to the motor primitives of the classified muscle synergies)
<- classify_kmeans(SYNS) SYNS_classified
# Classified synergies can be finally plotted with
<- plot_classified_syns(
pp
SYNS_classified,dark_mode = TRUE,
line_col = "tomato1",
sd_col = "tomato4",
condition = "TW"
# "TW" = Treadmill Walking, change with your own )
# A 2D UMAP plot of the classified synergies can be obtained with
<- plot_classified_syns_UMAP(
pp
SYNS_classified,condition = "TW"
)
# From now on, it's all about the analysis
# For example, one can measure the full width at half maximum (FWHM)
# of the motor primitives or their centre of activity (CoA)
# Load a typical motor primitive of 30 cycles (from locomotion)
data("primitive")
# Reduce primitive to the first cycle
<- primitive$signal[1:which(primitive$time == max(primitive$time))[1]]
prim_sub
# Calculate FWHM of the first cycle
<- FWHM(prim_sub)
prim_sub_FWHM # Calculate CoA of the first cycle
<- CoA(prim_sub)
prim_sub_CoA
# Half maximum (for the plots)
<- min(prim_sub) + (max(prim_sub) - min(prim_sub)) / 2
hm <- prim_sub
hm_plot which(hm_plot > hm)] <- hm
hm_plot[which(hm_plot < hm)] <- NA
hm_plot[
# Plots
plot(prim_sub, ty = "l", xlab = "Time", ylab = "Amplitude")
lines(hm_plot, lwd = 3, col = 2) # FWHM (horizontal, in red)
::abline(v = prim_sub_CoA, lwd = 3, col = 4) # CoA (vertical, in blue) graphics
# Or perhaps one might want to investigate the nonlinear behaviour of a long primitive
<- primitive$signal
prim
# Calculate the local complexity or Higuchi's fractal dimension (HFD)
<- HFD(prim)$Higuchi
nonlin_HFD # Calculate the global complexity or Hurst exponent (H)
<- Hurst(prim, min_win = max(primitive$time))$Hurst
nonlin_H
message("Higuchi's fractal dimension: ", round(nonlin_HFD, 3))
## Higuchi's fractal dimension: 1.047
message("Hurst exponent: ", round(nonlin_H, 3))
## Hurst exponent: 0.338
musclesyneRgies
Thank you for taking the time to read this. Please refer to the CONTRIBUTING section for a guide on how to contribute to this package.
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.