Targeted Muscle Reinnervation
Thought Control
- 96 electrodes in a cylindrical grid in the socket, approx. 25 mm apart
- measurements of signal intensity and location taken on healthy limb and applied to amputated limb
- so the same way he would control a biological leg, he can control a bionic leg
- gait styles (ambulation modes) each have different joint stiffness and power:
- level ground
- up/down ramp (10 degree slope)
- up/down stairs w/ reciprocal gait (leg over leg)
Mechanical Stresses
Weight, Response, and other issues
- multiple motors for articulated knee and ankle makes the leg heavy
- less muscle to control leg + heavy leg = problems
- 4.7 kg is weight now
- notice the leg is very stripped down
- all excess material has been removed
- leg reacts/ can react faster than an actual human limb
- misinterpretation of signals
- difficulty getting signals: all electrodes must remain in constant, close contact with stump without becoming painful or moving very much
- leg is noisy, and most amputees don't want huge amounts of attention on their missing limb
- expense
- peak torque at the ankle joint of approximately 1.6 Nm/kg in a very small amount of time (±0.2 s for a walking rate of 1 step/s)
- average 0.35 J/kg of mechanical energy per step
- generated power at push-off has peak of approximately 3.5 to 4.5 W/kg
- Considering a 75 kg subject
- max torque output approximately 120 Nm
- power output between 250 and 350 W
- these are average values
- Vawter's data is protected by patient privacy
- joints can be stiff (no elasticity), compliant (elasticity used to store energy), pneumatic (uses opposing nonlinear forces), and/or electric (a type of compliant with multiple motors)
- physics and calculus far above my level are involved in figuring out how to make this work
- used for upper limb amputations to control bionics
- reattaches nerves that would go to the missing limb back to remaining muscle
- similar procedure used in lower limb amputations to prevent nueroma formation (this is what Vawter received)
- allows electronic signals used by nerves to be detected on the outside of the skin
- picked up by sensors in the socket of the leg
- interpreted by computers in the leg based on previous data
- allows for immediate response to thought, so the fake leg reacts like a real one
Programming and Processing Data
- pattern recognition based on other patients without TMR
- during first gait tests, transitions between gaits were controlled remotely by researchers
- mechanical sensors now partially control transition
- every attempted motion has a distinct electrical signal
- 90% accuracy with just ankle and knee flexion/extension
- 92% accuracy also including leg rotation
- average accuracy in non-TMR amputees: 91.0% and 86.8% respectively
- about 40% reduction in error rate
- ambulation error rate for only mechanical sensors: 12.9%
- with EMG from reinnervated muscles: 1.8%
- No buttons or hip movements to control transitions
- many mistakes are not noticeable or not critical errors, such as mistaking an uphill ramp for stairs
- each gait has different stiffness and torque
- large errors common when transitioning to stair climbing drastically reduced with EMG data
- control also possible during non-weight-bearing activity
Zac Vawter
- lost leg above the knee in motorcycle accident in 2009
- first user of bionic leg
- received surgery during amputation including nerve transfers to prevent neuroma formation