In this paper, a comparative analysis of walking patterns during different cognitive states is conducted, followed by the classification of our database into Fallers and Non-fallers; by Fallers we describe subjects with repeated falling history. Vertical Ground Reaction Forces (VGRF) acquired from underneath the heel and toes of both feet are processed and analyzed for that endeavor. The subjects underwent three levels of tasks: 1) Single task: Walking at self-selected-speed (MS), 2) Dual task: Walking while performing a verbal fluency task (MF) and 3) Complex Dual task: Walking while counting backwards (MD).The ultimate objective of our research is fall prediction among the elderly by characterizing the variation of time-domain feature of Gait signals. For that, walking VGRF is analyzed and tested for the existence of indicators of the effect of dual task on subject falling susceptibility, whether parametric or pattern-wise analysis. As a result to our work, dual task in Fallers VGRF signals were recognized at 74% while at those non-fallers were recognized at 85%. Most importantly, subjects with history of fall have shown more potential to change the way they walk while performing mathematical cognitive task.
As a person ages, all physiological functions tend to decline in several aspects leading to serious physical and mental failures. Accidental falls at old age is one of the main concerns that have received remarkable attention, nowadays. Elderly fall has been studied thoroughly in an attempt to predict its occurrence and eventually prevent it or fix its causes [
Recent research stated several risk factors for elderly accidental fall such as: environmental hazards, sensorimotor deficits and impaired balance. In fact, recent studies evaluate the effect of cognition on walking patterns or Gait [
Going back to the principle of dual task paradigm, which is based on a neuropsychology procedure, we remark that it is currently being used to study the interference between motor tasks (e.g. walking) and cognitive processing (e.g. verbal fluency tasks). In other words, the walking mechanism that seems automatic and cognition-free at a young age becomes a complex motor task as a person ages [
Different research papers focus on features such as stride-to-stride variability and gait stability in order to make such fall prediction. However, more focus should be oriented towards the effect of performing dual tasks on gait variability.
That being clarified, our study focuses on walking VGRF signal analysis to distinguish the effect of dual task behavior on both faller and non-faller gait characteristics, which will help orthotists, prosthetists, clinicians and experts in gait mechanics in developing their rehabilitation programs for patients who suffer from gait performance deficiency.
In collaboration between the Laboratory of Signal Analysis and Industrial Processes (LASPI) in Roanne and the University Hospital Center (CHU) of Saint-Étienne, experiments were carried out between years 2009 and 2011 with more than 600 elderly participants who aged between 85 and 93. VGRF signals were acquired at a sampling frequency of 128 Hz using two independent sensors placed underneath the heel and metatarsus/toes of each foot, through an artificial innersole (SMTECH FOOT-SWITCH) placed in the shoe (
The recorded signals are 4 signals from both the right and left foot. The impact and active peaks of each signal are being separated by first differencing. Then a set of features from both time and frequency domain are extracted to form input to a classifier. A comparison in the results is then conducted between elderly fallers and non-fallers.
In order to classify VGRF in different modes of walking conditions, it seems beneficial to focus on how such walking conditions will impact the VGRF time series. That’s why there is a need for certain features that well describe and characterize the signal and those mainly based on statistical tools. For instance, by having the histogram as shown
not appear easily by only captivating the first moments (like mean and variance) of the signal. The total of all sensors’ signal is considered her for the purpose of capturing VGRF at all instants where the body is in contact with the ground.
As the three walking patterns shares most of low order statistical information, one would also realize the same conclusion that would also appear when it comes for dealing with higher order moments. The signals look almost the same. Consequently, looking again on the time series signal itself would be an asset if related to the physical situations that a person could encounter while walking. For illustration, usual walking mainly record a little bit faster in speed than the two other types of walking condition. Moreover, while performing a certain cognitive task, people intend to have more concentrated power during feet switching as in the case from left foot toe-off to the right foot heel strike. This is to avoid slipping. Then it becomes more difficult to differentiate walking (MF) from (MD). As those two tasks can be classified to under the act of remebering, one could realise that this is highly related to level of knoweledge a person have and also to the level of his/her intellegence. It is typically easier to remember numbers than to remember the names like name of animals that start with letter “w”. therefore the rate of oscillation is expected to be higher on MD walking condition than on MF. In the contrary more effort is needed in MD and therefore more power cost is required while walking to overcome falling.
VGRF captured by each sensor is made up of three main important parts. The first part is mainly the active peak and is related directly to weight of subject. The second part represents the passive peak and this is representing the moments of push off and propulsion of the gait signal. The first two parts forms the periodic part of the signal that forces it be non-stationary. The third part is related to higher oscillations and corresponds to random variable part of the signal in addition to noise. That’s why modeling requires the investigation of the third part which will be investigated on a further study. The three parts can be separated by fist differencing and second differencing respectively as shown in
Butterworth High pass filter is designed based on a 128 Hz Sampling frequency with the stop band frequency and pass band frequency of 5.2 Hz and 5.9 Hz respectively. The stop band attenuation is tuned to 60 dB and pass band ripple is set to 1 db. Knowing that, the band is set to pass band to match it exactly. The Butterworth is chosen to give a wider transition band and more stable time domain as shown in
considering frequencies above 5 Hz give more intuition on fluctuations and fast dynamic changes in the signal.
To isolate the different components of the signal variations then the high pass digital filtering is used. The filter is then applied over the raw signals. Thus two main components will be the outcomes of such filtering. The first one is due to body weight and usually tends to affect the first harmonics and second part is the fluctuations within the signal due to different walking tasks conditions. For instance a comparison between the power spectral densities using Welch’s method is shown in
Derived features from original signals must be not redundant and instructive that will eventually end in reducing the dimension of data for interpretation. As the number of variables involved in gait signal features are huge and expected to be correlated at a higher level of complexity, this study will focuses only on a small set of features stemmed from the above analysis. The featured used are summarized below:
- Mean: adding all values and dividing by how many:
x ¯ = 1 m ∑ i = 1 m x i (1)
- Root mean square: is the quadratic mean denoted as square root for the square of the mean:
X R M S = 1 N ∑ n = 1 N | X n | 2 (2)
- Autocorrelation: defined as correlation of the signal with a delayed version of a copy of the same signal indicating the level of similarity.
Σ = 1 m ∑ i = 1 m ( x i − x ¯ ) ( x − x ¯ ) T (3)
The autocorrelation of signals extracted from the four sensors is computed then the height of main peak in addition to the height and position of second peak are derived then
R x x = ∑ σ 2
where σ is the sample variance of time series
σ = 1 N ∑ i = 1 N ( x i − x ¯ ) 2 (4)
- The first 6 peaks in the Pwelch Spectral are spotted to extract their height and position as shown in
P x x ( f ) = 1 f ∑ m = − ∞ ∞ R x x ( m ) e − 2 j π m f / f s (5)
The purpose of this study is not to test the power of which classification technique to use rather than to see how the algorithm behaves between fallers and non-faller at different walking conditions. This is supported by neural network in particular multi-layer perceptron (MLP) for signal classification and below is how our data used:
o 70% training
o 15% validation
o 15% testing
Neural Network (
the system examined some trouble in classifying the MS and MF and pretty work in classifying all MD tasks as MD tasks. Most importantly the prediction is decreased to 37.5% in case of MF task. Apparently, different cognitive tasks have different effects on the way we walk which is highly correlated to whether having a previous experience of falling or not. In addition, verbal performance affects human gait tremendously when examining a history of fall. In addition, the classification of mathematical cognitive task is relatively better in fallers than non-fallers.
In summary, this analysis provides a comparative study between fallers and non-fallers based on built algorithm associated with GRF sensory measurements. We were able to spot differences between different tasks based on the signal’s content. A classification algorithm is then generated to predict to which of three tasks such signal belongs. The results show that counting downwards while walking is better employed in classification purposes between different tasks in both subjects with a history of falling which is more than those non-fallers subjects. However such an important result is deteriorated when subjects are asked to perform verbal fluency dual task. Thus, such feature extracted must be adapted to different subject’s situations whether walking with or without a dual task. However, with such a limited and elementary feature we were able to achieve good results with a reduced computational time complexity. In a further study, more features will be examined and which are constrained at the same range of computational time typically for real time operational and standalone systems. The results then will be generalized over different datasets to classify subjects with or without falling history that enhances the prediction of falling in elderly.
The authors are grateful to the valuable support provided by CHU of Saint- Etienne.
Alkhatib, R., Diab, M.O., Corbier, C. and El Badaoui, M. (2018) Task-Specific Gait Analysis: Faller versus Non-Faller Comparative Study. Jour- nal of Computer and Communications, 6, 81-91. https://doi.org/10.4236/jcc.2018.61009