The invention relates to a method and an arrangement to reliably detect and measure in real time the phase of periodic physiological values or bio-signals.
Methods are known according to the state of the art that use a staggered or sequentially-positioned analysis window across the temporal progression of the bio-signal to determine its phase. Methods or descriptive statistics based on Fourier transforms are applied to the signal section within the window. Thus, for example, periodically illuminating light marks of defined intensity and adequately-high frequency (above about 4 Hz) are used in order to monitor the functional capability of the visual system. An electro-encephalogram (EEG) is compiled for the function test, and the response to stimulus is analyzed with regard to the amplitudes and phase. The phase of the response to stimulus is one of the decisive diagnostic parameters in the functional diagnostic.
A disadvantage of the conventional method is that the statistical unreliability of detection, or the inaccuracy of the measurement, is very high. This uncertainty and inaccuracy result from the signal theory as a result of, and in connection with, the length of the analysis window. The theory states that, as the length of the analysis window decreases, the statistical unreliability and thereby the inaccuracy increases, which is adequately known and has been adequately proved in practical signal analysis. The window must be enlarged in order to achieve a statistically improved result. It is known in the realm of physiology that the phase may alter relatively rapidly, and these alterations are also diagnostically relevant. With lengthier analyse windows the statistical unreliability of the measured result does not show the change and valuable information about phase changes is lost.
It is the task of the invention to provide a method and an arrangement with which it is possible to detect and to measure the causal phase response in periodic bio-signals with better reliability and greater speed, and with simultaneous reduction in computing power, than when using conventional methods.
This task is solved by the invention in that periodic bio-signals are determined corresponding to their physical and physiological source, in that a status observer is set up in parallel with the biological system under analysis, and in that a Kalman filter is used to evaluate the output values of the biological system and of the observer, and to determine the phase.
In the method based on the invention, the phase of a periodic bio-signal is determined and used for functional diagnostic purposes. Thus, for example, a lengthened phase with respect to a healthy test subject may be an important clue to functional problems of the biological system being investigated.
In the arrangement based on the invention, a status observer is arranged in parallel with the biological system being investigated that is imitated by a status model that, corresponding to system model, estimates the status value of phase based on a Kalman filter.
Of advantage here are the facts that the estimation of the phase may occur continuously, and that no staggered or sequentially-applied analysis window is required. This makes analysis of the temporal phase alterations possible. In contrast to a relatively complicated theoretical background of this phase estimator, the practical implementation is simple. In comparison to the conventional method, it requires significantly reduced computing power, so that real-time phase estimation is possible.
In the following, the invention will be described in greater detail using the theoretical derivation and an embodiment example. The pertinent Illustrations show:
A biological system that produces a periodic bio-signal or responds to a periodic input signal is shown in
[equation (1)]
[equation (2)]
For further considerations, an additive signal model is assumed that sums a harmonic oscillation and normally-distributed noise:
[equation (3)]
The goal is to construct a system model whose variable x(t) represents the phase φ(t) of the signal y(t) to be investigated. The phase cannot be measured directly since it is the argument of a trigonometric function. A supplemental construction is therefore required. One such construction is a status observer that is positioned in parallel with the system being investigated. The observer estimates the status variable by minimizing an error function that compares the outputs of the real system with those of the observer. In this manner, the status variable may be measured directly after successful error minimization.
[equation (4)]
[equation (5)]
From (4) and (5), we have:
[equation (6)]
It is assumed that the systems possess different initial conditions. From this, we have the observation error:
[equation (7)]
This observation error disappears iteratively with the help of the correction matrix K, resulting in,
[equation (8)]
The dynamics and stability of the estimation may be described using the differential equation of the observer error (9):
[equation (9)]
Simplification and additional intermediary steps lead to:
[equation (10)]
Corresponding to the signal model (3), one must assume that the investigated signal is destroyed by noise. A Kalman filter is introduced to reduce the influence of noise. Taking the noise into account, the system is described by the following status equations:
System status [equation (11)]
System output [equation (12)]
Observer [equation (13)]
whereby
x(t) is the correction matrix that is to achieve the fact that e(t)=x(t)−xM(t)→0,
e(t)=is the observer error,
rs(t) is system noise, and
rp(t) is process noise.
In order to simplify the derivation, it is assumed that the noise components are wide-band Gaussian [Nullmittel1] processes with known co-variances:
1Translator's Note: Cannot find this term; may mean ‘zero-median.’
[equation (14)]
the noise components are independent of one another, so that:
[equation (15)].
For a constant estimation of x(t), the error performance must be minimized using the matrix K(t):
[equation (16)]
Taking into account the stochastic relationships regarding the co-variances, a suitable correction matrix K(t) is derived corresponding to the Kalman filter:
[equation (17)]
The formula for the error covariance covε(t) may be derived from the Kalman filter:
[equation (18)]
Estimation of phase:
The investigated signal is modeled based on (3) from the sum of a harmonic and the noise:
[equation (19)]
The phase results from the differential equation:
[equation (20)]
the system model shown in
[equation (21)]
[equation (22)]
The observer is modeled based on (21) and (22), as
[equation (23)]
The phase to be determined is selected as the working point:
[equation (24)]
and the resulting differential equation for the phase is
[equation (25)].
In accordance with (25), the phase estimator may be modeled, as
In order to estimate the phase y(t), the error covariance must be calculated. From (18) results:
[equation (26)]
Equation (26) produces a simple solution if higher-frequency components are not taken into account in the error covariance. Based on (27),
[equation (27)],
equation 26 may be simplified to:
[equation (28)].
Upon suitable selection of the parameter a in (28), high-frequency components are suppressed as the result of temporary integration, i.e., it possesses the properties of a low-pass [filter]. Taking the low-pass into account, Equation (25) may be simplified:
[equation (29)].
Thus, the observer (shown in
In comparison,
Phase estimation becomes problematic for signals strongly influenced by noise. In general, it is true that the phase is more robust against interference than are the amplitudes, as is also known from the realm of Information Technology. However, in this fringe area, the question of the presence (or detection) of a causal phase must be determined, and only then may the phase be estimated.
Number | Date | Country | Kind |
---|---|---|---|
102 55 593.1 | Nov 2002 | DE | national |
Filing Document | Filing Date | Country | Kind | 371c Date |
---|---|---|---|---|
PCT/EP03/13355 | 11/27/2003 | WO | 1/9/2006 |