Title: Dynamic Modeling of Spinal Electromyography sEMG during Various Conditions
1Dynamic Modeling of Spinal Electromyography
(sEMG) during Various Conditions
- P. Lohsoonthorn and E. A. Jonckheere
- Dept. of Electrical EngineeringSystems
- University of Southern California
- Los Angeles, CA 90089-2563
-
- R. Boone
- PRP Enterprises
- Auckland, New Zealand
2This research,which involves human subjects,was
approved by the Institutional Review Board
(IRB)of the University of Southern California
3Alf BreigsAdverse Mechanical Tension in the
Central Nervous System
- The dura mater of the spinal cord is mechanically
attached to the bony structures at vertebra C2-C3
(Gray Anatomy). - The dentate ligament connects the pia mater to
the dura. - At the sacral level, the pia matter ends caudally
in the filum terminale which is attached to the
periosteum of the coccyx. - With these mechanical attachments of the spinal
cord to the vertebra, vertebral misalignment, or
postural problems, can create pathological
tensions in the cord, impairing nerve activity.
4The dentate ligament is an extension of the pia
mater that attaches to the dura mater
5The spinal cord hangs on the dentate ligament,
itself attached to the dura mater, so as to avoid
excessive load on the brain stem and the pons
Pia mater
Dentate ligament
6Spinal Cord and Nearby Bony Structures
7The meninges attachments create excitatory
feedback that can make the motor reflex loop
unstable
Lamina IX ?,? motor neurons Facilitation/inhibitio
n
Motor fibers
Anterior or ventral
White mater
Gray mater
Inter neuron
Proprioceptive fibers
Sensory neurons
Posterior or dorsal
8The meninges attachments create excitatory
feedback that can make the motor reflex loop
unstable
9Typical sEMG signal y(k) recorded during this
event shows transitioning between burst and
quiet, background signal
4,000 points/sec sampling rate
10Simple excitatory (E) and inhibitory (I) neurons
models can reproduce transition between rhythms,
(e.g., ?-?, spindling-delta)
The thalamus is also known to sustain bursty,
spiky behavior
N. Kopell, We got rhythms Dynamical Systems of
the Nervous System, Notices of the American
Mathematical Society, Volume 47, Number 1,
January 2000.
11The Three Qualitative Levels to be Confirmed by
sEMG Analysis
- Level 1 early onset of motion, restricted to
minimal oscillation localized around cervical
dural attachment area (segmental, monosynaptic?) - Level 2 motion becomes more refined and involves
both the occiput-cervical and sacral-coccyx
vertebral dural regions, resulting in a
spatio-temporal phenomenon (intersegmental). - Level 3 a third oscillatorthe chest-thoracic
oscillatorbecomes entrained (supraspinal).
12General Signal Characteristics
- The overall signal is non-stationary, as
manifested by autocorrelation and partial
correlation functions decaying too slowly. - Surprisingly, the burst part appears more
stationary than the background part. - The Dickey-Fuller unit root test reveals that a
one-fold incrementation is enough to make the
signal stationary. - The overall signal seems to be switching among
several ARIMA models - One burst model and one background model
- Here, we switch among 12 ARIMA models, most of
them being bursty.
13ARIMA(p,d,q) Modeling
14Derivation of 12 Baseline ARIMA Models
12 segments of 16 sec. each
Each segment is divided into 13 subsegments of
1.5 sec. each
15Each subsegment is subdivided into 10 intervals.
In each interval, the correlation ak and partial
correlation bk functions are computed.Each
interval defines a pointThen the
subsegment the most representative of the segment
is picked by clustering analysis.
16Clustering of Third Segment
17Once the correct subsegment is identified
- The autocorrelation and partial correlation of
the subsegment is computed. - The Smallest CANonical (SCAN) correlation and
Extended Sample AutoCorrelation Function (ESACF)
methods indicate that - The Dickey-Fuller test indicates presence of unit
root. - We construct the incremented signal
- The unit root test fails on the incremental
signal hence -
- The chosen subsegment is given a model of the
form
18Autocorrelation of Model 1
19Autocorrelation of Model 6
20Autocorrelation of Model 12
21Partial Correlation of Model 1
22Partial Correlation of Model 6
23Partial Correlation of Model 12
24Autocorrelation of 3rd Segment
25Partial Correlation of 3rd Segment
26Switching Criterion
To decide which of the 12 models best matches a
set of 25 data point of the experimental sEMG
signal, we use the following criterion
27Specificity of Model Relative to Level (1,2,3)
and Position (prone, supine)
28Transition from Level 2 (Model 3) to Level 3
(Model 4)
29sEMG Signal Variance versus Time
30sEMG Signal Variance versus Level of Care
31Normalized Prediction Error versus Time
32Normalized Prediction Error versus Level of Care
33Conclusions
- The dural attachments create additional paths
destabilizing the motor reflex loop. - The resulting rocking motion of the spine,
passing through Levels 1, 2, 3, has some
physical therapy benefits. - The dynamic properties of the sEMG signal
recorded on the paraspinal muscles provides
confirmation of the Level at higher level the
signal is more predictable. - The real challenges are
- the utilization of the dynamic properties of the
sEMG signal to map the neural pathways involved - the understanding the nature of the dural
attachment feedback.