The present invention relates to methods and systems for monitoring and managing muscle activity and soft tissue loading. More particularly, the invention relates to methods and systems for monitoring muscle activity and soft tissue loading during exercise with a view to reducing the risk of injury.
Soft tissue injuries to muscles and ligaments are among the most common sports injuries. Typically such injuries are sustained from repeated action such as long-distance jogging which may be termed as chronic overuse, as opposed to acute injuries, which occur in an instant, such as a sprained ankle or a ruptured cruciate ligament.
Exercise applies stresses to the body to which the body adapts by thickening and strengthening the tissues involved. This results in muscles becoming stronger, firmer and sometimes larger, tendons and ligaments getting stronger and an increase in bone density. However, if exercise is applied in such a way that adaptation to the stresses imparted by exercise cannot occur, then excessive overload can cause microscopic injuries, leading to inflammation. More serious acute injuries can result in the patient to take extended leave from their training program. Accordingly, soft tissue injuries are particularly inconvenient in the case of professional sportspersons, such as for example, AFL (Australia Football League) players.
Many soft tissue injuries could be prevented, particularly where training that takes place in a controlled environment such as the gym where the movement, load and duration of loading applied to the body are readily controlled. Soft tissue injuries occur when the load on the tissue is greater than the “tolerance” or load the tissue can bear.
While even proper movement may result in excessive soft tissue loading, that is in the case of a chronic overuse injury for example, typically excessive tissue loading occurs due to poor movement patterns; poor training load management, i.e. fatigue; and/or poor technique. Accordingly, it would be highly desirable to provide a method and system for monitoring muscle and ligament activity during a training session, to better understand and avoid the risk of soft tissue injury.
According to an aspect of the present invention, there is provided a method for monitoring and managing muscle activity and soft tissue loading, the method including the following steps: (a) providing to a subject a plurality of sensors for measuring muscle activity and soft tissue loading levels; (b) directing the subject to undertake a program of exercise; (c) measuring muscle activity and soft tissue loading during the program of exercise; (d) comparing the measured muscle activity and soft tissue loading levels against calibrated muscle activity and soft tissue loading levels for the subject; and (e) alerting the subject if the comparison of measured muscle activity and soft tissue loading levels against calibrated muscle activity and soft tissue loading levels indicates that a desirable level of muscle activity and/or soft tissue loading is being exceeded.
In an embodiment, the step of providing to a subject a plurality of sensors for measuring muscle activity and soft tissue loading levels includes providing at least two sensors configured to measure muscle activity and at least one sensor configured to measure a joint angle of a joint proximal to a muscle whose activity is to be measured by the at least two sensors. The soft tissue loading levels may be determined as a function of the flexion angle of the proximal joint.
The angle (θACL) of an anterior cruciate ligament (ACL) of a lower limb to the tibial plateau may be expressed as a function of the knee flexion angle θKF, θACL=f (θKF) and anterior cruciate ligament forces (FACL) may be determined from an angle of the anterior cruciate ligament such that FACL=Fx-net/COS θACL, wherein F x-net is a horizontal net force determined as a sum of horizontal force components of a patellar ligament, hamstrings, and external force, applied by a ground surface to the lower limb.
The angle (θACL) of a posterior cruciate ligament (PCL) of a lower limb to the tibial plateau may be expressed as a function of the knee flexion angle θKF, θPCL=f (θKF) and posterior cruciate ligament forces (FPCL) may be determined from an angle of the posterior cruciate ligament such that FPCL=(−1) Fx-net/COS θPCL, wherein F x-net is a horizontal net force determined as a sum of horizontal force components of a patellar ligament, hamstrings, and external force, applied by a ground surface to the lower limb.
In another embodiment, a simultaneous contraction of agonist and antagonist muscles may be determined from a differential of muscle forces such that CC=FQ−FH wherein, FQ=quadriceps force and FH=hamstrings force as determined from sensed voltage signals.
In a preferred for of the present invention, the step of comparing the measured muscle activity and soft tissue loading levels against calibrated muscle activity and soft tissue loading levels occurs in real-time. Furthermore, the step of alerting the subject if the comparison of measured muscle activity and soft tissue loading levels against calibrated muscle activity and soft tissue loading levels indicates that a desirable level of muscle activity and/or soft tissue loading is being exceeded preferably occurs in real-time.
In a particular embodiment, determination of the calibrated muscle activity and soft tissue ligament loading levels includes directing the subject to perform a series of movements and measuring the muscle activity and soft tissue loading levels of the subject for each movement to build a baseline profile for the subject against which muscle activity and soft tissue loading levels measured during a program of exercise will be compared.
The step of calibrating the muscle activity and soft tissue loading levels for the subject may involve measuring a maximum voluntary contraction of a quadricep and a hamstring respectively corresponding to at least three different knee flexion angles.
The step of alerting the subject if the comparison of measured muscle activity and soft tissue loading levels against calibrated muscle activity and soft tissue loading levels indicates that a desirable level of muscle activity and/or soft tissue loading levels is being exceeded may include providing an auditory, visual or tactile alert to the subject.
In one particular embodiment, the step of providing to a subject a plurality of sensors for measuring muscle activity and soft tissue loading levels involves providing a garment incorporating the sensors to the subject.
According to another aspect of the present invention, there is provided a system for monitoring and managing muscle activity and soft tissue loading, the system including: (a) a plurality of sensors for measuring electric signals indicative of muscle activity and soft tissue loading levels; (b) a processor configured to receive the electric signals and covert them to muscle activity and soft tissue loading values, the processor further configured to compare the muscle activity and soft tissue loading values against calibrated muscle activity and soft tissue loading levels for a subject; and (c) an alert module to alert the subject if the comparison of measured muscle activity and/or soft tissue loading levels against calibrated muscle activity and soft tissue loading levels indicates that a desirable level of muscle activity and/or soft tissue loading is being exceeded.
The plurality of sensors for measuring electric signals indicative of muscle activity and soft tissue loading levels may include at least three sensors.
The at least three sensors are may be positioned on the subject at the following locations: (a) a first position which will contact an anterior, medial or posterior skin surface of a body segment of the subject; (b) a second position which will contact a remaining contact an anterior, medial or posterior skin surface of the body segment; and (c) a third position which will contact an anterior, posterior, medial or lateral skin surface of a joint proximal to the body segment. The sensors in the first and second positions may be configured to measure muscle activity of the body segment. Furthermore, the sensor in the third position may be configured to measure the angle of the joint proximal to the body segment.
The plurality of sensors may include a combination of pressure sensors and electrogoniometric sensors.
In an embodiment, the plurality of sensors for measuring electric signals indicative of muscle activity and soft tissue loading levels are incorporated into a garment to be donned by the subject. The garment may be a compression garment.
According to yet another aspect of the present invention, there is provided a training aid for monitoring and managing muscle activity and soft tissue loading, the training aid including: (a) a garment incorporating a plurality of sensors for measuring electric signals indicative of muscle activity and soft tissue loading levels; (b) processor configured to receive the electric signals and covert them to muscle activity and soft tissue loading values, the processor further configured to compare the muscle activity and soft tissue loading values against calibrated muscle activity and soft tissue loading levels for a subject; and (c) an alert module to alert the subject if the comparison of measured muscle activity and/or soft tissue loading levels against calibrated muscle activity and soft tissue loading levels indicates that a desirable level of muscle activity and/or soft tissue loading is being exceeded.
The processor and alert module may be provided in a portable telecommunications device.
The garment incorporating a plurality of sensors may be a compression garment.
The invention will now be described in further detail by reference to the accompanying drawings. It is to be understood that the particularity of the drawings does not supersede the generality of the preceding description of the invention.
Referring firstly to
At step 110, a subject, typically an athlete, whether professional or amateur, is provided with a plurality of sensors to be positioned on one or more body segments as will be later described in more detail. It is to be understood that a body segment may be any part of the body comprising muscle tissue, particularly the limbs and torso. Once the sensors positioned on a body segment, the subject is directed to undertake his or her training program, which may involve a series of exercises, a 5 km jog, or the like, at step 120. While the subject performs the relevant activity, the sensors are activated to measure muscle activity and soft tissue loading at step 130.
At step 140, the muscle activity and soft tissue loading levels measured during the exercise are compared against previously calibrated muscle activity and soft tissue loading levels. The calibrated muscle activity and soft tissue loading levels are unique to the particular subject and effectively embody a baseline profile, deemed to be a safe or desirable activity and loading level, against which future activity and loading levels will be evaluated.
If the comparison of the measured muscle activity and soft tissue loading levels against the calibrated levels indicates that the measured values are exceeding the calibrated levels, either in terms of the muscle activity or the soft tissue loading, then an alert will generate to notify the subject at step 150.
One particular advantage of the method for monitoring muscle activity and soft tissue loading is that the comparison of the measured muscle activity and soft tissue loading levels against calibrated muscle activity and soft tissue loading levels can occur in real-time. Likewise, if the comparison indicates that one of or both of the measured muscle activity and soft tissue loading levels exceed the calibrated levels, then an alert can be generated in real-time to notify the subject. This enables the subject to receive virtually instantaneous feedback as they perform the movement or exercise causing the muscle activity or soft tissue loading levels to exceed desirable levels. Accordingly, the subject will rapidly learn that a particular exercises or movement which generates an alert during training should be modified, for example, by reducing intensity or repetition, or by an improvement in form, or alternatively avoided altogether to reduce the risk of injury.
The alert provided at step 150 may be an auditory, visual or tactile alert such as a vibration.
To provide useful data, the plurality of sensors should include at least two sensors of a type to measure muscle activity levels, such as pressure or force sensors configured to measure electrical signals based on the increase in muscle volume during contraction. That is, the sensors increase their resistance or capacitance with increasing compression or tension in the muscle proximal to their position. The sensors may be pressure/force sensors that are integrated into a strap or textile (e.g. conductive materials or structures, such as conductive fabrics) which change their resistance or capacitance with increasing compression, or stretch sensors similarly integrated into a strap or textile (e.g. conductive materials or structures such as conductive fabrics incorporating strain gauges) which change their resistance or capacitance with increasing tension.
Whilst electromyography or EMG sensors may be suitable in some applications of the method, such as in a highly controlled laboratory or clinical environment, they are not the preferred sensor type for everyday training applications in the field due to their inherent requirement for relatively accurate placement on the midline of the muscle whose activity level is to be measured, in order to obtain valid and repeatable results.
One example of a suitable sensor is described in Australian Patent Application No. 2013902584 the contents of which are incorporated herein by reference. The sensor may comprise a sensor array provided in a material having resistant, capacitive or piezoelectric properties which react to various surface pressures.
At least one additional sensor of an alternative type is employed to measure the angle of a joint which is proximal to the muscle whose activity level is to be measured by sensors described above. One example of a suitable sensor type for measuring joint angles is an electrogoniometry or EGM sensor.
To provide a baseline profile for a particular subject, the first time that the sensors are applied to a particular subject, an additional calibration step is required to provide the calibrated muscle activity and soft tissue loading levels to which the activity and loading levels measured during training and exercise will be compared. Determining the calibrated muscle activity and soft tissue ligament loading levels involves directing the subject to perform a series of movements and measuring the muscle activity and soft tissue loading levels of the subject for each of those movements.
For example, the method for monitoring and managing muscle activity and soft tissue loading will now be described in more detail by reference to an example, wherein the sensors are positioned on the thigh, i.e. the quadriceps and hamstrings, and the knee joint respectively. For example, measured voltage signals from sensors:
It is to be understood that the method and system of the present invention are equally applicable to other body segments including the upper arm, i.e. the biceps and triceps together with the elbow joint, or indeed the lower limbs.
In this case, in order to calibrate the system, a maximum voluntary contraction or activity of the quadriceps and hamstrings is measured, at five different knee flexion angles. This provides the calibrated muscle activity levels for a variety of knee flexion angles.
In the same example, in order to calibrate cruciate ligament loading, a maximal voluntary contraction of the quadriceps is measured at maximal knee extension, when standing on the contralateral leg, and a maximal voluntary contraction of the hamstrings when sitting on a stool. These measurements represent the shank unloaded and aligned perpendicularly to ground.
To obtain a representative calibration with the shank loaded and aligned perpendicularly to ground, the back is supported by a wall, and a maximum voluntary contraction of the quadriceps in the loaded leg is measured at slight knee flexion, pushing the foot forward when loading the heel. A maximum voluntary contraction of quadriceps of the loaded leg is measured again at slight knee flexion, pushing the foot forward when loading the toes.
The measured electrical or voltage signals are processed to convert them to estimated force and angle data post calibration:
Referring now to
The muscle activity levels and soft tissue loading levels are transmitted to a processor 240 by suitable communication means. The communication means may be tethered or employ wireless protocols and transmitting means between the senor and the processor. Whilst it is to be understood that the system may be implemented in various ways, the processor 240 or processors may be provided in a standard computing system. Referring now to
The secondary memory 330 may include a removable storage unit 345 having a computer usable storage medium having stored therein computer software in a form of a series of instructions to cause the processor 305 to carry out the desired functionality described with reference to the method of the invention. In alternative embodiments, the secondary memory 330 may include other similar means for allowing computer programs or instructions to be loaded into the computer system 300.
Referring back to
The at least three sensors are positioned on the subject on a body segment at the following locations. At least one sensor is located at the anterior, medial, lateral or posterior skin surface of the body segment of interest. At least one sensor is located at one of the three remaining skin surfaces of the same body segment. And a least one sensor is positioned at the anterior, posterior, medial or lateral skin surface of a joint proximal to the body segment. The sensors positioned on the skin surface of the body segment on the anterior, medial, lateral or posterior surface are configured to measure muscle activity muscle activity, e.g. of antagonistic muscles of the body segment. The sensor positioned proximal to the joint is configured to measure the angle of the joint proximal to the body segment.
For example, continuing with the example of measuring the muscle activity of the thigh and the flexion angle of the proximal knee, at least one sensor may be positioned at the anterior skin surface of thigh; another sensor at the posterior skin surface of thigh; and at least one sensor may be positioned at the anterior, posterior, medial, or lateral skin surface of knee. The sensors positioned at the thigh serve to measure and continuously record muscle activity; while the sensor(s) at the knee serve to measure and record the knee flexion angle.
The processor 240 processes the electrical or voltage signals measured by the sensors 210, 220, 230 in accordance with a series of instructions embodied in software. Now follows a worked example of determining the risk of injury in relation to carious soft tissue structure associated with the thigh/knee body segment example.
In order to determine the risk of cruciate ligament injury, the angle (θACL) of anterior cruciate ligament (ACL) to the tibial plateau (positive), is expressed as a function of the knee flexion angle θKF, θACL=f (θKF), preferably defined by a polynomial fit function. That is:
θACL=60.08490163−0.1105096342*θKF−0.002207774578*pow(θKF,2)+1.189632152E−005*pow(θKF,3)
The angle (θPCL) of the posterior cruciate ligament (PCL) to the tibial plateau (positive), is expressed as a function of the knee flexion angle θKF, θPCL=f (θKF), preferably defined by a polynomial fit function. That is:
θPCL=52.07004722−0.1323032773*θKF+0.004194712106*pow(θKF,2)−1.675160363E−005*pow(θKF,3)
The angle (θPL) of the patellar ligament with a perpendicular to tibial plateau (positive in extension, negative in flexion), is expressed as a function of the knee flexion angle θKF, θPL=f (θKF), preferably defined by a polynomial fit function. That is:
θPL=24.11218877−0.09491067242*θKF−0.004083736642*pow(θKF,2)+2.161222257E−005*pow(θKF,3)
The average angle (θH) of the hamstrings with a perpendicular to tibial plateau (negative), is expressed as a function of the knee flexion angle θKF, θH=f (θKF), preferably defined by a polynomial fit function. That is:
θH=−7.619022309−0.4260600571*θKF−0.00674086388*pow(θKF,2)+2.448438208E−005*pow(θKF,3)
The mechanical advantage MAP of patella is expressed as a function of the knee flexion angle θKF, MAP=f (θKF), preferably defined by a polynomial fit function. That is:
MAP=1.399941871−0.005709688462*θKF+1.04781429E−005*pow(θKF,2)−3.819389092E−006*pow(θKF,X,3)+5.308234954E−008*pow(θKF,4)−1.797478623E−010*pow(θKF,5)
The moment arm (LPL) of patellar ligament (positive), is the shortest distance between the instant centre of the knee and the patellar ligament. The moment arm of patellar ligament is expressed as a function of the knee flexion angle θKF, LPL=f (θKF), preferably defined by a polynomial fit function. That is:
L
PL=[5.0003127−0.01223030863*θKF−8.70457433E−005*pow(θKF,2)+7.487734353E−007*pow(θKF,3)]/100
The average moment arm LH of hamstring tendons (negative), is the shortest average distance between the instant centre of the knee and the patellar ligament. The average moment arm LH of hamstring is expressed as a function of the knee flexion angle θKF, LH=f (θKF), preferably defined by a polynomial fit function. That is:
L
H=[−3.008116131−0.04707811706*θKF+0.0003098140972*pow(θKF,2)+1.867118879E−007*pow(θKF,3)]/100
The force FPL of the patellar ligament is calculated from dividing the quadriceps force FQ by the mechanical advantage MAP of the patella. That is:
F
PL
=F
Q*MAP
The moments generated by the patellar ligament and by the hamstrings are calculated from the product of muscle forces and their moment arms, i.e. the moment about the knee instant centre produced by the quadriceps (via the patellar ligament)=MPL.
M
PL=positive
M
PL
=F
PL
L
PL
Moment about the knee instant centre produced by the hamstrings=MH
M
H=negative (from negative LH)
M
H
=F
H
L
H
The overall knee moment MK is calculated from the sum of the muscle moments. That is:
M
K
=M
PL
+M
H (extending if positive, flexing if negative)
The external force, applied by the ground to the limb, is calculated by dividing the overall knee moment by the moment arm of the external force.
F
Ex=horizontal external force
F
Ex
=M
K/[BH(0.285+0.039)]
The horizontal components of the patellar ligament and hamstrings forces, parallel to the tibial plateau, FPLx and FHx, are calculated from their angles, θPL and θH.
F
PLx
=F
PL sin θFL (positive via θPL)
F
Hx
=F
H sin θH (negative via θH)
The horizontal net force of the shank is calculated from the sum of the horizontal force components of patellar ligament, hamstrings, and external force, considering that e.g. forces in anterior direction are positive and in posterior direction negative. Forces in anterior direction are balanced by the ACL, and forces in posterior direction are balanced by the PCL.
F
x-net
=F
PLx
+F
Hx
+F
Ex (positive if forward to be compensated by ACL, negative if backward to be compensated by PCL)
The cruciate ligament forces, FACL and FPCL, are calculated from the cruciate ligament angles, θACL and θPCL.
F
ACL=force of ACL (output as positive value)
F
ACL
=F
x-net/cos θACL
F
ACL=force of PCL (output as positive value)
F
PCL=(−1)Fx-net/cos θPCL
As cruciate ligaments cannot be under tension at the same time, equations for decision making are required:
If Fx-net>0 (positive) then FACL>0 and FPCL=0
If Fx-net<0 (negative) then FPCL>0 and FACL=0
Thus:
F
ACL
=H(Fx-net)(Fx-net/cos θACL)
F
PCL=[H(Fx-net)−1](Fx-net/cos θPCL)
The ACL loading data (FACL) is converted to an auditory, visual or tactile output signal to facilitate ACL overloading avoidance training with biofeedback to the subject. An auditory signal may be volume-coded or/and pitch-coded (the higher FACL, the louder or higher the tone). A visual signal may be brightness (gray-scale) or/and colour-coded (rainbow colours). Alternatively, the signal can be tactile, that is by way of a device producing vibrations.
A threshold can be included such that the subject wearing the sensors is alerted only of dangerous load above a pre-set threshold. Additional sensors recording knee rotation can enhance the biofeedback training, as the ACL is subjected to further tension on internal rotation of the shank. The biofeedback training applies to the PCL as well.
Muscle activity is plotted as:
Cumulative muscle activity is plotted as sum of activity data per muscle group over time. Comparison of synergistic muscle groups of right and left thigh for example (or any other body segment) for assessment of balance and unilateral overload.
P
Q
=M
PLωKF
P
H
=M
HωKF
Muscle power is calculated from the product of muscle moment and time derivative of the knee flexion angle. Concentric contraction against eccentric contraction; the contraction ratio of a muscle indicates whether a muscle is subjected more to eccentric or concentric contraction.
P
K
=P
Q
+P
H
The overall muscle energy is calculated from integrating the power across the knee with time.
Overall muscle energy E
E=∫P dt
Co-contraction refers to activating antagonistic muscle groups at the same time. Co-contraction increases the risk of joint injury due to joint overload as well as of muscle injuries if one of the muscle groups is further activated via the gamma-loop (i.e. via an overloaded ligament). If the ACL is overloaded (due to increased positive [forward-directed] Fx-net), then the hamstrings are activated via the gamma-loop and relieve the ACL of overload.
The magnitude of co-contraction CC is assessed by calculating the differential of the muscle forces:
CC=FQ−FH (positive if FQ dominates over FH; negative if FH dominates over FQ)
Positive and negative CC are summed up individually over time and displayed e.g. as a bar chart.
The amount of co-contraction is calculated from the differential of muscle forces.
Co-contraction data (CC) are converted to an auditory, visual or tactile output signal, to facilitate co-contraction avoidance training be providing biofeedback. For example, for an auditory signal, the dominating muscle groups can be pitch coded:
Referring now to
In
Referring now to
Referring now to
The sensors for measuring electric signals indicative of muscle activity and soft tissue loading levels can be strapped on to the body segment or applied using a suitable adhesive, or alternately incorporated into a garment to be donned by the subject. The garment may be athletic performance apparel such as a compression garment.
Such proposed intelligent compression garments are likely to stimulate and encourage physical activity by adding another aspect of interest to a program of physical exercise. Accordingly, the training aid proposed by the present invention is suitable to combat increasingly sedentary lifestyles which are commonly implicated in rising levels of obesity and the development of disorders such as cardiovascular disease, metabolic syndrome and type-II diabetes.
The integration of sensors in a compression garment means that an article of clothing becomes an indispensable training aid, providing real-time recognition of muscular activity. This information is processed and communicated back to the subject, effectively in real-time as auditory and/or visual signals to minimise injuries, reduce recovery time, and maximise training potential.
The method for monitoring and managing muscle activity and soft tissue loading of the present invention may be implemented using hardware, software or a combination thereof and may be implemented in one or more computer systems or processing systems capable of carrying out the above described functionality.
Although in the above described embodiments the invention is implemented primarily using computer software, in other embodiments the invention may be implemented primarily in hardware using, for example, hardware components such as an application specific integrated circuit (ASICs). Implementation of a hardware state machine so as to perform the functions described herein will be apparent to persons skilled in the relevant art. In other embodiments, the invention may be implemented using a combination of both hardware and software.
While the invention has been described in conjunction with a limited number of embodiments, it will be appreciated by those skilled in the art that many alternative, modifications and variations in light of the foregoing description are possible. Accordingly, the present invention is intended to embrace all such alternative, modifications and variations as may fall within the spirit and scope of the invention as disclosed.
Number | Date | Country | Kind |
---|---|---|---|
2014904381 | Oct 2014 | AU | national |
This application is a Continuation of U.S. patent application Ser. No. 15/522,544, filed 27 Apr. 2017, which is a National Stage Application of PCT/AU2015/000652, filed 30 Oct. 2015, which claims benefit of Serial No. 2014904381, filed 31 Oct. 2014 in Australia, and which applications are incorporated herein by reference. To the extent appropriate, a claim of priority is made to each of the above disclosed applications.
Number | Date | Country | |
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Parent | 15522544 | Apr 2017 | US |
Child | 16807876 | US |