Neurostimulator devices using a machine learning method implementing a gaussian process optimization

US9931508B2 · US · B2

Patent metadata
FieldValue
Publication numberUS-9931508-B2
Application numberUS-201615199580-A
CountryUS
Kind codeB2
Filing dateJun 30, 2016
Priority dateMar 24, 2011
Publication dateApr 3, 2018
Grant dateApr 3, 2018

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Abstract

Official abstract text for this publication.

Neurostimulator devices are described comprising: a stimulation assembly connectable to a plurality of electrodes, wherein the plurality of electrodes are configured to stimulate a spinal cord; one or more sensors; and at least one processor configured to modify at least one complex stimulation pattern deliverable by the plurality of electrodes by integrating data from the one or more sensors and performing a machine learning method implementing a Gaussian Process Optimization on the at least one complex stimulation pattern. Methods of use are also described.

First claim

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We claim: 1. A neurostimulator device comprising: a stimulation assembly connectable to a plurality of electrodes, wherein the plurality of electrodes are configured to stimulate a spinal cord using an applied complex stimulation pattern; one or more sensors configured to measure a response related to stimulation of the spinal cord; and at least one processor configured to modify the applied complex stimulation pattern deliverable by the plurality of electrodes to create a modified complex stimulation pattern for subsequent stimulation of the spinal cord by integrating data from the one or more sensors and performing a machine learning method implementing a Gaussian Process Optimization (“GPO”) relation that describes a predicted mean and a variance of a motor performance function for a plurality of candidate complex stimulation patterns, including the applied complex stimulation pattern, based on at least on one of (i) previous data from the one or more sensors, and (ii) data derived in a previous stimulation study, wherein the GPO relation includes an upper confidence bound rule for applying a weight to modify the applied complex stimulation pattern based on a number of times data is received from the one or more sensors regarding stimulation of the spinal cord, and wherein the upper confidence bound rule modifies the applied complex stimulation pattern through convergence of the GPO relation toward an optimal candidate complex stimulation pattern. 2. The neurostimulator device of claim 1 , wherein at least one of the applied complex stimulation pattern or the modified complex stimulation pattern comprises a first stimulation pattern followed by a second stimulation pattern. 3. The neurostimulator device of claim 1 , wherein the at least one processor is configured to receive and record electrical signals from the plurality of electrodes. 4. The neurostimulator device of claim 1 , wherein the at least one processor is configured to receive electrical signals from the plurality of electrodes, and modify the applied complex stimulation pattern based at least in part on the electrical signals received from the plurality of electrodes. 5. The neurostimulator device of claim 1 , wherein the one or more sensors include an electromyography sensor, an evoked potential sensor, a joint angle sensor, a flex sensor, an accelerometer, a gyroscope sensor, a flow sensor, a pressure sensor, a load sensor, a temperature sensor, or a combination thereof. 6. The neurostimulator device of claim 1 configured to aid a patient having a neurologically derived paralysis in a portion of the patient's body affected by a lesion to the spinal cord, wherein the spinal cord includes at least one selected spinal circuit that has a first stimulation threshold representing a minimum amount of stimulation required to activate the at least one selected spinal circuit, and a second stimulation threshold representing an amount of stimulation above which the at least one selected spinal circuit is fully activated, wherein when at least one of the applied complex stimulation pattern or the modified complex stimulation pattern is applied to a portion of the spinal cord of the patient, the at least one complex stimulation pattern is below the second stimulation threshold such that the at least one selected spinal circuit is at least partially activatable by the addition of at least one of (a) neurological signals originating from the portion of the patient's body having the paralysis, and (b) supraspinal signals. 7. The neurostimulator device of claim 1 configured to stimulate the spinal cord and improve or restore voluntary movement, an autonomic function, motor function, metabolic function, or a combination thereof. 8. The neurostimulator device of claim 1 , wherein at least one of the response or the motor performance function is based on at least one of voluntary movement of muscles involved in standing, voluntary movement of muscles involved in stepping, voluntary movement of muscles involved in reaching, voluntary movement of muscles involved in grasping, voluntarily changing positions of one or both legs, voluntarily changing positions of one or both arms, voiding the subject's bladder, sexual function, voiding the subject's bowel, postural activity, locomotor activity, cardiovascular function, respiratory function, digestive function, autonomic function, motor function, vasomotor function, cognitive function, body temperature, metabolic processes, or a combination thereof. 9. The device neurostimulator of claim 1 , wherein the plurality of electrodes include more than four groups of electrodes. 10. The device neurostimulator of claim 9 , wherein at least one of the applied complex stimulation pattern or the modified complex stimulation pattern comprises different electrical stimulation for each of the groups of electrodes. 11. The device neurostimulator of claim 1 , wherein at least one electrode of the plurality of electrodes is configured to deliver a stimulus 1 microsecond apart. 12. The device neurostimulator of claim 1 , further comprising a system including a plurality of muscle electrodes. 13. The device neurostimulator of claim 1 , wherein one electrode of the plurality of electrodes is located at neural tissue and another electrode of the plurality of electrodes is located at an end organ. 14. A method of improving neurologically derived paralysis, the method comprising: applying a first complex stimulation pattern to a spinal cord of a patient using a neurostimulator device that includes a stimulation assembly connectable to a plurality of electrodes for stimulating the spinal cord; measuring with one or more sensors a response related to stimulation of the spinal cord; and modifying, via a processor, the first complex stimulation pattern to create a second complex stimulation pattern for subsequent stimulation of the spinal cord by integrating data from the one or more sensors and performing a machine learning method implementing a Gaussian Process Optimization (“GPO”) relation that describes a predicted mean and a variance of a motor performance function for a plurality of candidate complex stimulation patterns, including the first complex stimulation pattern, based on at least on one of (i) previous data from the one or more sensors, and (ii) data derived in a previous stimulation study, wherein the GPO relation includes an upper confidence bound rule for applying a weight to modify the first complex stimulation pattern based on a number of times data is received from the one or more sensors regarding stimulation of the spinal cord, and wherein the upper confidence bound rule modifies the first complex stimulation pattern through convergence of the GPO relation toward an optimal candidate complex stimulation pattern. 15. The method of claim 14 , wherein stimulation of the spinal cord and improves or restores at least one of voluntary movement of muscles involved in standing, voluntary movement of muscles involved in stepping, voluntary movement of muscles involved in reaching, voluntary movement of muscles involved in grasping, voluntarily changing positions of one or both legs, voluntarily changing positions of one or both arms, voiding the subject's bladder, sexual function, voiding the subject's bowel, postural activity, locomotor activity, cardiovascular function, respiratory function, digestive function, autonomic function, motor function, vasomotor function, cognitive function, body temperature, metabolic processes, or a combination thereof. 16. The method of claim 14 , wherein the one or more sensors include an

Assignees

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Classifications

  • Details of circuitry or electric components · CPC title

  • Paddle shaped electrodes, e.g. for laminotomy · CPC title

  • of motor muscles, e.g. for walking assistance · CPC title

  • Sexual dysfunction (stimulating genital organs A61N1/36007) · CPC title

  • Human Necessities · mapped topic

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What does patent US9931508B2 cover?
Neurostimulator devices are described comprising: a stimulation assembly connectable to a plurality of electrodes, wherein the plurality of electrodes are configured to stimulate a spinal cord; one or more sensors; and at least one processor configured to modify at least one complex stimulation pattern deliverable by the plurality of electrodes by integrating data from the one or more sensors a…
Who is the assignee on this patent?
California Inst Of Techn, Univ Louisville Res Found Inc, Univ California, and 1 more
What technology area does this patent fall under?
Primary CPC classification A61B5/407. Mapped technology areas include Human Necessities.
When was this patent published?
Publication date Tue Apr 03 2018 00:00:00 GMT+0000 (Coordinated Universal Time) (B2). Legal status and post-grant events are not shown on this page.
What related patents are in patentsdb?
We list 4 related publications on this page (citations in our corpus or others sharing the same primary CPC).