Neurodegenerative diseases plague a large number of individuals world wide. For example, an estimated 3-4 million people in the US have Parkinson's disease (PD), which is a chronic progressive neurodegenerative disease that occurs when dopaminergic neurons in the substantia nigra pars compacta of the midbrain degenerate, causing resting tremor, rigidity, and bradykinesia. Currently, there is no cure or definitive means to stop the progression of many neurodegenerative diseases and PD is just one example. However, medications and surgery can relieve many of the symptoms. Such treatments for PD have been developed based on an improved understanding of basal ganglia (BG) anatomy and physiology.
It has been long appreciated that PD follows the degeneration of dopaminergic neurons in the substantia nigra pars compacta. This triggers a cascade of functional changes in the BG that leads to abnormal activity in its output nuclei, the substantia nigra reticulata and globus pallidus internus. Therefore, the goal of traditional treatment is to enhance concentrations of dopamine, or to modify the activity of the output nuclei by creating lesions in target areas, or more recently by using deep brain stimulation (DBS).
DBS is a surgical procedure in which a stimulating probe is implanted in a targeted area, typically the subthalamic nucleus (STN), which is connected to an insulated wire that is passed under the skin of the head, neck, and shoulder and terminated at a neurostimulator, which typically sits inferior to the clavicle. At major surgical centers the surgery has become routine. Patient's motor symptoms generally decrease with treatment and they can regain quality of life and reduce their medications, which have serious side effects.
While traditional DBS is a valuable tool for treating neurological disorders, the stimulation signal must be optimized post-operatively.
It would therefore be desirable to have DBS system that would reduce the resources needed for calibration and operation and provide more immediate and effective treatment to the patient. Such a system would improve patient care, reduce medical costs, increase the number of patients that a neurologist may treat simultaneously, and improve the performance characteristics, for example, battery life, of the device.
The present invention overcomes the aforementioned drawbacks by providing a system and method for performing deep brain stimulation that is capable of dynamic and continuous self-calibration. The system for performing deep brain stimulation includes an implantable electrode configured to measure a physiological parameter of a subject and deliver an electrical stimulation signal to a target area in the subject. The DBS system also includes a neurostimulator having a memory device having stored thereon a healthy model characterizing healthy neuronal activity in the target area and a pathological model characterizing pathological neuronal activity in the target area. The neurostimulator also includes a controller in communication with the implantable electrode and the memory device and configured to analyze the measured physiological parameter using the healthy model and the pathological model to identify a corrective electrical stimulation signal that, when delivered by the implantable electrode to the target area, reduces pathological neuronal events in the target area.
The method for performing deep brain stimulation includes the steps of measuring a physiological parameter from a target area of a subject using an electrode implanted in the subject and analyzing the measured physiological parameter using a healthy model characterizing healthy neuronal activity in the target area and a pathological model characterizing pathological neuronal activity in the target area to identify a corrective electrical stimulation signal that, when delivered to the target area, reduces pathological neural events in the target area. The method further includes the step of administering the corrective electrical stimulation signal to the target area using the implanted electrode.
Various other features of the present invention will be made apparent from the following detailed description and the drawings.
Referring to
In operation, the DBS system 10 acquires neuronal activity, or spike train, data with the electrode probe 12. This neuronal activity data is carried via lead 14 to the neurostimulator 16 where it is processed by the controller 20. The controller 20 analyzes the data and identifies a corrective stimulation signal that will prevent anticipated pathological neural events. The selected stimulation signal is then generated by the pulse generator 18 and delivered via the lead 14 to the electrode probe 12, which administers the stimulation signal to the target area. Depending on the predicted neural activity, the stimulation signal may inhibit neurons, excite neurons, or do nothing.
Referring now to
y(t)=fPD(t,Xt,Yt,u(t)) Eqn. 1;
and
yH(t)=fPD(t,Xt,By,YtH) Eqn. 2;
At process block 56, the collected healthy and PD neural activity data are fit to models to provide a basis for estimating of y(t) and yH(t). This can be achieved using a point process paradigm that overcomes difficulties in characterizing neural activity dynamics, particularly those associated with noise and the dependence of neural activity on both intrinsic and extrinsic factors. A point process is a binary stochastic process defined in continuous time, for example, the number of neuronal spikes in a given time interval, and is characterized entirely by a conditional intensity function (CIF). A CIF for a point process model relating the spiking propensity of target brain area neurons to factors associated with environmental conditions, behavioral stimuli, and the neurons' spiking history can be defined as follows:
where N(t) is the number of spikes in a time interval [0,t] for tε(0,T] and t1 to tn denotes the time of measured neuronal spikes such that 0<t1<t2< . . . <tn≦T. Multivariate point process models may also be employed in accordance with the present invention, for example, λ(t|Ht, u(t)) and N(t) may be vector-valued when modeling several neurons. Accordingly, Eqn. 3 defines the probability of a spike in each neuron in any small time interval (t,t+Δ) as follows:
Pr(spike in(t,t+Δ)|Ht)≈λ(t|Ht)Δ Eqn. 4.
Thus, when Δ is small, Eqn. 4 is approximately equal to the spiking propensity at time t. While the model can be fitted to measured neuronal activity data using any appropriate parametric or nonparametric modeling class, it is contemplated that the present invention employs a generalized linear model (GLM) framework. In a GLM, the log of the CIF is a linear function of model parameters. A GLM is advantageous because it separates the contributions of extrinsic and intrinsic factors to the probability that the neuron will spike at a given time t. A GLM also provides an efficient computational scheme for estimating model parameter and a likelihood framework for conducting statistical inferences based on the estimated model. For example, a GLM framework for fitting collect neuronal activity data to the above CIF employ the following relations:
At process block 60, the goodness-of-fit of the point process model can optionally be tested. This can be achieved by generating a Kolmogorov-Smirov (KS) plot that compares the empirical cumulative distribution function of time-scaled spike times to the cumulative distribution function of a unit rate exponential. Improved goodness-of-fit is indicated if the KS plot lies on the 45 degree line. Further, a 95 percent confidence bounds can be computed for the degree of agreement using the distribution of the KS statistic. To test the independence of rescaled times, the spike times can be transformed into Gaussian rescaled times with zero means and unit variances. Since lack of correlation is equivalent to independence for Gaussian random variables, the autocorrelation function (ACF) of the Gaussian rescaled times can be plotted and the number of points of the ACF lying outside the 95% confidence intervals can be counted.
At process block 62, the point process models can be related back to the functions yH(t) and y(t). Using time units of msecs and assuming Δ=1, this can be by noting that at any time t, fPD and fH are random variables that take on the values 0 or 1 according to the following probabilities:
Prob[fPD(t,Ht,u(t))=1]≈λPD(t|Ht,u(t)) Eqn. 6;
and
Prob[fH(t,Ht,u(t))=1)]≈λH(t|Ht) Eqn. 7.
Initial point process models characterizing healthy and PD STN neuronal activity in the absence of DBS stimulation, that is, λPD(t|Ht) and λH(t|Ht), can be generated from neuronal activity recordings from PD subjects and healthy primates by assuming u(t)=0. The primates are used as surrogates for healthy humans and the studies are performed under identical conditions, for example, as the PD subjects and primates perform the same task. Studies using such models can quantify prevalent abnormalities in PD activity not present in healthy activity. In particular, the neural activity of PD subjects exhibits 10-30 Hz oscillations, bursting, and persistent directional tuning, all of which may directly related to the well-known PD motor symptoms of resting tremor, bradykinesia, and rigidity. However, for the control algorithm used in the DBS system 10 of
The model λPD(t|Ht,u(t)) can be predicted from λPD(t|Ht) by making the following assumptions: First, the DBS signal u(t) is a sequence of the values 0, 1, −1, that is, the DBS signal is an aperiodic train of positive and negative pulses, where a value of 1 indicates a pulse with positive height and a value of −1 indicates a pulse with negative height. Specifically, the DBS signal is a time sequence of independent distributed random variable with the following probability distributions:
Pr(u(t)=1)=p(t) Eqn. 8;
Pr(u(t)=0)=q(t) Eqn. 9;
and
Pr(u(t)=−1)=1−(q(t)+p(t)) Eqn. 10.
Secondly, when the DBS signal u(t) is applied, it adds to the neuronal spike train of each STN neuron it impacts. If the spike train of a single neuron can be denoted as y(t) with a CIF λPD(t|Ht), then this addition obeys the following rules:
Lastly, the new spiking activity z(t)=y(t)+u(t) is a binary sequence of 0's and 1's and is point process with the following CIF:
Referring now to
The environment and behavioral stimuli can be estimated from neuronal data acquired by the electrode 12 by maximizing the following a posteriori probability:
Pr(stimuli|neuronal spiking activity up to time t) Eqn. 12;
Referring to
Thus, the solution to the least-squares problem:
The distance function can alternatively be dependent on the actual behavior of the PD subject in which the DBS system 10 of
distance{λPD(t|Ht,u(t)), λH(t|Ht)}=E{[V(t)PD−V(t)H]2} Eqn. 17;
Referring again to
Because the present invention administers a stimulation signal to the subject based on observed and predicted physiological parameters of a PD subject rather than a stimulation pattern set by a physician, it can be considered as a “self-calibrating” device. Accordingly, the present can test subject response to a broad set of stimulation signal waveforms and, based on their observed effect, develop waveforms that provide improved patient response and device performance. For example, the present invention could automatically develop a stimulation signal for a particular subject using stimulation signal frequencies lower that those used by traditional DBS devices. This is advantageous, since a lower frequency stimulation signals offers reduced power consumption, thereby prolonging device battery life, and reduced patient side effects by substantially limiting the leakage of stimulation signal to brain areas surrounding the target area. Repeatedly adjusting the stimulation signal to this degree would be prohibitively time-consuming if done using tradition, that is, manual, calibration techniques.
The present invention has been described in terms of the various aspects and features, and it should be appreciated that many equivalents, alternatives, variations, and modifications, aside from those expressly stated, are possible and within the scope of the invention. Therefore, the invention should not be limited to a particular described embodiment.
This application is based on, claims the benefit of, and incorporates herein by reference in their entirety, PCT International Application PCT/US2009/062072 filed on Oct. 26, 2009 and U.S. Provisional Patent Application Ser. No. 61/108,060 filed on Oct. 24, 2008, and entitled “SYSTEM AND METHOD FOR DYNAMICALLY CONFIGURABLE DEEP BRAIN STIMULATION.”
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/US2009/062072 | 10/26/2009 | WO | 00 | 9/19/2011 |
Publishing Document | Publishing Date | Country | Kind |
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WO2010/048613 | 4/29/2010 | WO | A |
Number | Name | Date | Kind |
---|---|---|---|
20070067003 | Sanchez et al. | Mar 2007 | A1 |
20070073355 | Dilorenzo | Mar 2007 | A1 |
20070100389 | Jaax et al. | May 2007 | A1 |
20070150025 | DiLorenzo et al. | Jun 2007 | A1 |
20070191704 | DeCharms | Aug 2007 | A1 |
20070203540 | Goetz et al. | Aug 2007 | A1 |
20100023089 | DiLorenzo | Jan 2010 | A1 |
Entry |
---|
Bear et al. “Neuroscience: Exploring the Brain”, 2006, Lippincott Williams & Wilkins, 3rd edition, p. 78. |
Truccolo et al. “A Point Process Framework for Relating Neural Spiking Activity to Spiking History, Neural Ensemble, and Extrinsic Covariate Effects.” J Neurophysiol 93:1074-1089, 2005. First published Sep. 8, 2004. |
International Search Report and Written Opinion under date of May 12, 2010 in connection with PCT/US2009/062072. |
Number | Date | Country | |
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20120016436 A1 | Jan 2012 | US |
Number | Date | Country | |
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61108060 | Oct 2008 | US |