1. Field of the Invention
The present invention relates to a method and apparatus for quantitative assessment of neuromotor disorders collecting data from sensors and analyzing the data collected from the sensors to determine if a patient suffers any neuromotor disorders.
2. Description of Related Art
Recently, health care costs have increased at a rapid rate with much of the costs tied to the care and diagnosis of patients. The diagnosis of a patient can be costly since it may be hard for a human physician to quantitatively gauge what is wrong with a patient. Without a correct diagnosis, the physician may not administer the correct care for a patient. In addition, early stages of a disease or disability may not be readily apparent to a physician. These problems can be especially apparent with respect to neuromotor disorders since the type and severity of the neuromotor disorder may be concealed and/or hard to quantify.
The present invention seeks to solve problems described above by providing a method and apparatus for quantitative assessment of neuromotor disorders.
In one embodiment, the present invention is a system for assessing neuromotor disorders in a human body a plurality of pressure sensors to the body to measuring by attaching pressure exerted, a med node connected to the plurality of pressure sensors for generating data corresponding to the pressure sensors, and an analysis unit connected to the med node for analyzing the data generated by the med node to determine the existence of a neuromotor disorder in the body.
The exact nature of this invention, as well as the objects and advantages thereof, will become readily apparent from consideration of the following specification in conjunction with the accompanying drawings in which like reference numerals designate like parts throughout the figures thereof and wherein:
Handgrip device 2 (
Med node 6 is connected to the pressure sensors 4, to gather information from the Sensors 4 and generate data corresponding to the pressure sensed by the plurality of pressure sensors. It is preferred that med node 6 be connected directly to handgrip device 2, as shown in
Med node 6 is software programmable to suit various applications and sensors. On-chip memory blocks are used within med node 6 for data storage. Med node 6 generates data in response to the pressure sensors 4 on the handgrip device 2.
Analysis unit 10 which may be a handheld device is connected to med node 6 for analyzing the data generated by med node 6 for the purpose of determining the existence of a neuromotor disorder. As a handheld unit, analysis unit 10 may be a pocket PC, a mobile phone, a smart phone, or an iPod®, or similar functioning mobile device. When analysis unit 10 is a handheld device, it is connected to the med node 6 by wireless communication link 8. Wireless communication link 8 may be a radio wave link, Bluetooth® link, a cellular communication link, for example or any similar functioning communication link. Although a wireless communication link 8 is illustrated in
Analysis unit 10 collects the data from med node 6 and classifies the collected data. Analysis unit 10 also coordinates and controls the overall functionality of the system including handgrip 2, pressure sensors 4, and med node 6. Analysis unit 10 may also performs resource management to accommodate several objectives such as optimizing the power or enhancing the fault-tolerance. Analysis unit 10 is capable of communicating with other electronic devices such as a PC or the Internet. Analysis unit 10 may also be adapted to interact with patients.
In step S-14, pressure sensors 4 on handgrip 2 are calibrated. After gripping the handgrip 2, the user exerts the maximum pressure he can by squeezing the hand grip. The maximum voluntary contraction of the user's hand at step S-16 as seen in
At step S-18, the user or diagnostician chooses a test set that the user should be capable of performing as seen in
At step S-22, the user observes a pattern of a target force on analysis unit 10. The user then applies pressure to pressure sensors 4 on handgrip 2 following the pattern of the target force, in step S-24. Using the results of the applied pressure, analysis unit 10 analyzes the user's motor control ability, in step S-26.
Analysis unit 10 determines if the data and analysis should be transmitted to an external server in step S-28. If the data and/or analysis should be transmitted, analysis unit 10 transmits the relevant information over a communication link, such as the Internet for example, in step S-30. However, if data and/or analysis transfer is inappropriate, analysis unit 10 determines if the user wants to perform a new test in step S-32. The user will be allowed to choose a new test at step S-18.
If the user does not want to perform a new test, but would rather to repeat the same test, steps S-22 through S-28 can be repeated. If the user does not want to repeat the test, then step S-18 is repeated until the user wants to terminate. The user can terminate at step S-20. The process ends at step S-34.
To analyze the patient's motor control ability, analysis unit 10 may perform frequency matching, time-domain cross-correlation, variance measure, and/or force sharing with respect to the relevant data collected by the analysis unit 10. This analysis can not only measure the ability of fingers to track a pre-established face pattern, but also the ability to determine how the individual fingers coordinate amongst themselves.
Frequency matching is accomplished by using a Discrete Fourier Transform (DFT). More specifically, the DFT can be used to calculate the power spectrum of the monitored signal, and determine the frequency at peak power (FPP).
The DFT, X, of a signal x can be expressed by the equation:
The power as a function of frequency can be calculated as:
P=X2
For the timed series, the FFP from each of the force sensors, is determined. The difference between a reference FPP and the finger FPP is calculated as shown in
The ability of individual fingers, and the entire hand, to effectively track a reference signal in time can be calculated using the cross-correlation function. The cross-correlation is a measure of similarity between two signals, and can also be used to determine the relative time lag between the two signals. The cross-correlation can be calculated as:
Where x and y are time series of length N, and m ranges from −N to N (or a specified shorter interval). The time lag (m) corresponding to the peak of the cross-correlation function can be used as an indicator of the time lag between the two signals, even if the signals are complex as shown in
In addition to measuring the ability of fingers to track a reference face pattern, cross-correlation can also be used to measure the ability of the individual fingers to coordinate amongst themselves. To measure the amount of coordination between fingers using cross-correlation, the force time series from individual fingers are used as inputs (x and y) to the cross-correlation function. Peak cross-correlations and time lags at peak correlations can be measured for comparisons between fingers.
To calculate the error between the reference (target) force (R) and the force generated by an individual finger or the entire hand (F), the “variance accounted for” (VAF) can be calculated using the following equation:
The VAF can express the tracking error of a given finger, or the hand, normalized to the variance of a reference signal. It is contemplated that normal healthy people are able to track the target free patterns well. This could lead to VAF values close to 100% for normal people. On the other hand, impairments on a test patient leads to a decrease in performance in tracking targets. This in turn leads to a decrease in the VAF. Healthy people could have a VAF close to 100% while impaired people will have a VAF<100% (i.e. 20%, 50%, etc.)
The force sharing ability (FS) of the fingers can be calculated using the following equation:
Where VarFi(t) can be the variance in force (across cycles or trials) of the target force for an individual finger i at cycle timepoint t. VarFtot(t) can be the variance (across cycles or trials) in the summed force produced by all the fingers at cycle timepoint t.
If FS is positive, then negative co-variation among finger forces can indicate extensive force sharing among the fingers. If FS is smaller or negative, then force sharing among the fingers can be reduced. Healthy people are expected to have high, positive values of FS (i.e. 0.9-1), FS will decrease with disease or injury.
Preliminary experiments conducted on unimpaired subjects (N=2) showed that healthy subjects were able to finely modulate finger forces to achieve a desired average force as shown in
Test 1: The guide or the target travels on a sinusoidal waveform between 0 and 100% of the patient's maximum strength. The period of the sine wave could be 6 seconds.
Test 2: This test can be used to evaluate the fatigability in a patient. The target moves between 20% and 40% of the maximum voluntary contraction (MVC) with a period of 200 ms. The patient is expected to follow the indicator by rapidly squeezing the handgrip device.
Test 3: This test can be used to evaluate the patient's ability to finely modulate force production. The guide moves between 15% and 30% of the MVC on a sinusoidal wave with a period of 6 seconds.
Test 4: This test can be used to test the high strength fine grain motor control. This test can be similar to test 3 except that the guide moves between 45% and 65% of the MVC.
The variance in errors between average force and target forces were 6.4 f 1.0%, 0.9±5%, 38 f 0.3% and 0.3 f 0.3% of the guide variance for Task 1, 2, 3 and 4, respectively for the healthy subjects over 6 trials. Subjects precisely matched the guide frequency (frequency differences <0.005 Hz for all trials). Cross-correlating the guide signal with the average force signal revealed that average forces from subjects lagged the guide forces by 80 f 100 ms and 300±0 ms for tasks 2 and 3. For tasks 1 and 4, the time mean time lags of −50 ms and −21 ms fell well within the variance 170 and 470 ms, respectively.
Whereas subjects were able to precisely track the guide signals, they did not accomplish this by generating comparable forces with each finger as shown in
Obviously many modifications and variations of the present invention are possible in light of the above teachings. It is therefore to be understood that within the scope of the appended claims the invention may be practiced otherwise than as specifically described.
This application claims the benefit of U.S. Provisional Patent Application No. 60/906,083 filed on Mar. 9, 2007, entitled “METHOD FOR QUANTITATIVE ASSESSMENT OF NEUROMOTOR DISORDERS” which is expressly incorporated herein in its entirety.
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/US2008/056271 | 3/7/2008 | WO | 00 | 8/26/2009 |
Publishing Document | Publishing Date | Country | Kind |
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WO2008/112567 | 9/18/2008 | WO | A |
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Number | Date | Country | |
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20100113979 A1 | May 2010 | US |
Number | Date | Country | |
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60906083 | Mar 2007 | US |