The present invention relates to a method of analysis of medical signals, and in particular to a method of decomposition of signals used in pulse oximetry. Specifically the invention relates to an improved method of denoising such signals and in the extraction of clinically useful information from such signals including the monitoring and analysis of patient respiration.
Oximetry is an optical method for measuring oxygenated haemoglobin in blood. Oximetry is based on the ability of different forms of haemoglobin to absorb light of different wavelengths oxygenated haemoglobin (HbO2) absorbs light in the red spectrum and deoxygenated or reduced haemoglobin (RHb) absorbs light in the near-infrared spectrum. When red and infrared light is passed through a blood vessel the transmission of each wavelength is inversely proportional to the concentration of HbO2 and RHb in the blood.
Pulse oximeters can differentiate the alternating light input from arterial pulsing from the constant level contribution of the veins and other non-pulsatile elements. Only the alternating light input is selected for analysis. Pulse oximetry has been shown to be a highly accurate technique.
The contemporary pulse oximeter unit normally provides three outputs:
The normal pulse oximeter waveform—the photoplethysmogram (PPG)—bears a strong resemblance to an arterial pressure waveform complete with dichrotic notch. A schematic of a typical pulse oximeter trace from a finger probe is shown in
The invention provides a method of measuring physiological parameters, as defined in claim 1, and also provides a method of processing a pulse oximetry signal, as defined in claim 2.
From another aspect, the invention provides a physiological measurement system as defined in claim 22.
Preferred features and advantages of the invention will be apparent from the other claims and from the following description.
The invention in its preferred forms provides a method for the decomposition of pulse oximetry signals using wavelet transforms which allows for underlying characteristics which are of clinical use to be displayed and measured. The method utilises wavelet transforms to decompose the signal in wavelet space. The wavelet decomposition of one or more or a combination of signals can then be used to:
Embodiments of the invention will now be described, by way of example only, with reference to the drawings:
a): Arterial Pulse and Pulse Oximetry Signal, as discussed above.
b) Arterial Pulse and Pulse Oximetry Signal, as discussed above.
a): Wavelet analysis of a 2 second segment of pulse oximetry signal taken from the ear 10 minutes into the recording. Top: the pulse oximetry trace. Bottom: the scalogram. Standard Morlet wavelet with ω0=5.5
b): Wavelet analysis of a 2 second segment of pulse oximetry signal taken from the ear 10 minutes into the recording. The Phase plot. Standard Morlet wavelet with ω0=5.5
c): Wavelet analysis of a 2 second segment of pulse oximetry signal taken from the ear 10 minutes into the recording. Top: the modulus maxima plot. Bottom: the ridge plot. Standard Morlet wavelet with ω0=5.5
d): Wavelet analysis of a 2 second segment of pulse oximetry signal taken from the ear 10 minutes into the recording. Top: the pulse oximetry trace. Bottom: the scalogram. Complete Morlet wavelet with ω0=3
e): Wavelet analysis of a 2 second segment of pulse oximetry signal taken from the ear 10 minutes into the recording. The Phase plot. Complete Morlet wavelet with ω0=3
f): Wavelet analysis of a 2 second segment of pulse oximetry signal taken from the ear 10 minutes into the recording. Top: the modulus maxima plot. Bottom: the ridge plot. Complete Morlet wavelet with ω0=3
a): Wavelet analysis of a 2 second segment of pulse oximetry signal taken from the finger 10 minutes into the recording. Top: the pulse oximetry trace. Bottom: the scalogram. Standard Morlet wavelet with ω0=5.5
b): Wavelet analysis of a 2 second segment of pulse oximetry signal taken from the finger 10 minutes into the recording. The Phase plot. Standard Morlet wavelet with ω0=5.5
c): Wavelet analysis of a 2 second segment of pulse oximetry signal taken from the finger 10 minutes into the recording. Top: the modulus maxima plot. Bottom: the ridge plot. Standard Morlet wavelet with ω0=5.5
d): Wavelet analysis of a 2 second segment of pulse oximetry signal taken from the finger 10 minutes into the recording. Top: the pulse oximetry trace. Bottom: the scalogram. Complete Morlet wavelet with ω0=3
e): Wavelet analysis of a 2 second segment of pulse oximetry signal taken from the finger 10 minutes into the recording. The Phase plot. Complete Morlet wavelet with ω0=3
f): Wavelet analysis of a 2 second segment of pulse oximetry signal taken from the finger 10 minutes into the recording. Top: the modulus maxima plot. Bottom: the ridge plot. Complete Morlet wavelet with ω0=3
a): Wavelet Denoising and Detrending. Morlet Wavelet ω0=5.5. Original Signal.
b): Wavelet Denoising and Detrending. Morlet Wavelet ω0=5.5. Scalogram
c): Wavelet Denoising and Detrending. Morlet Wavelet ω0=5.5. Phase Plot
d): Wavelet Denoising and Detrending. Morlet Wavelet ω0=5.5. Cropped Scalogram
e): Wavelet Denoising and Detrending. Morlet Wavelet ω0=5.5. The original trace (top); the reconstructed trace (middle); the denoised and detrended trace (bottom).
a): Wavelet Denoising and Detrending. Morlet Wavelet ω0=2. Original Signal.
b): Wavelet Denoising and Detrending. Morlet Wavelet ω0=2. Phase Plot
c): Wavelet Denoising and Detrending. Morlet Wavelet ω0=2. Original and reconstructed signals
d): Wavelet Denoising and Detrending. Morlet Wavelet ω0=2. Blow up of
e): Wavelet Denoising and Detrending. Morlet Wavelet ω0=2. Three different high frequency cut-off thresholds—increasing from top to bottom.
a): Scalogram showing the breathing ridge
b): A Collapsed Scalogram showing the breathing and heart rates.
a): The Analysis of a Plethysmogram Breathing Experiment Sub-Study:Pulse oximeter trace.
b): The Analysis of a Plethysmogram Breathing Experiment Sub-Study: The Modulus of the trace in
c): The Analysis of a Plethysmogram Breathing Experiment Sub-Study: the phase associated with the breathing ridges in
a): Phase following of respiration
b): Showing the steps of constant phase minima across scales.
a): Frequency Modulation of the dominant cardiac frequency bands
b): Amplitude Modulation of the dominant cardiac frequency bands
c): Individual Breathing features resolved using a low oscillation wavelet (One such feature indicated by arrow.)
a): Graphical illustration of Bayesian Classification of ‘ill’ and ‘healthy’ data sets.
b): Graphical illustration of Bayesian Classification of ‘ill’ and ‘healthy’ data sets
Wavelet transforms allow a signal to be decomposed such that both the frequency characteristics and the location of particular features in a time series may be highlighted simultaneously. This overcomes the basic shortcoming of Fourier analysis, where the spectrum only contains globally averaged information thus leading to location specific features in the signal being lost. The complete analysis of a signal requires the deduction of both the frequency make up and temporal location of the signal components. The limitation of Fourier (spectral-only) methods can be partly overcome by introducing a sliding time window which localises the analysis in time. This local or Short Time Fourier Transform (STFT) provides a degree of temporal resolution by highlighting changes in spectral response with respect to time. However, this method is always a compromise between temporal and frequency resolution (higher frequency resolution means lower temporal resolution, and vice versa) due to the fixed window width associated with it. The nature of the wavelet transform is such that it is well suited to the analysis of signals in which a more precise time resolution is required for higher frequencies than for lower ones. By employing a variable width window, it effectively zooms in on the temporal signal when analysing higher frequencies, providing higher resolution where necessary.
The wavelet transform of a continuous real-valued time signal, x(t), with respect to the wavelet function, ψ, is defined as
where t is time, a is the dilation parameter, b is the location parameter, ψ*((t−b)/a) is the complex conjugate of the analysing wavelet used in the convolution and x(t) is the signal under investigation which, in this application, is the PPG signal obtained from the pulse oximeter. The wavelet transform can therefore be thought of as the cross-correlation of the analysed signal with a wavelet function that has been translated by a value b and dilated by a factor a.
Contemporary literature suggests two methods of wavelet analysis using either discrete or continuous transforms. The discrete wavelet transform necessitates the use of orthonormal wavelets, and dilation levels are set in the form of integer powers of two. This provides a rapid method of signal decomposition, and guarantees energy conservation and exact signal reconstruction. However, the discrete transform is limited by loss of both time and frequency resolution due to the dyadic nature of the transform. Conversely, the continuous wavelet transform does provide high resolution. Thus, proper use of wavelet analysis demands identification of the correct wavelet and transform type for the given application. The inherent redundancy in the continuous wavelet method, although computationally more intensive, increases clarity in the transform space and allows for greater temporal resolution at high dilations. For this reason we prefer to employ a continuous wavelet transform in our method. Note that in practice a discretised approximation to the continuous wavelet transform integral may be employed based on the FFT algorithm where the wavelet convolution in (1) is performed as a product in Fourier space (via the convolution theorem) hence speeding up the computation.
Any wavelet function may be used in the analysis. In the examples given here we employ complex Morlet wavelets. We define the complete Morlet wavelet as
where ωo is the central frequency of the mother wavelet, t is time, i is the complex number (−1)1/2. The second term in the brackets is known as the correction term, as it corrects for the non-zero mean of the complex sinusoid of the first term. In practice it becomes negligible for values of ωo>5. Most investigators concentrate on wavelet transforms with ω0 in the range 5˜6, where it can be performed without the correction term since it becomes very small. In this case, the Morlet wavelet becomes
This truncated Morlet wavelet is invariably used in the literature and often referred to as simply the Morlet wavelet. Here we use the name, ‘standard Morlet wavelet’, for this simplified form of equation 3 and ‘complete Morlet wavelet’, for the complete form given by equation 2.
Modulus maxima and ridges correspond to loci of local maxima and minima in the wavelet transform. These are useful in detecting singularities and following instantaneous frequencies. A vast amount of information is contained within the continuous wavelet transform T(a,b). This can be condensed considerably by considering only local maxima and minima of the transform. Two definitions of these maxima are commonly used in wavelet analysis practice, these are:
1—Wavelet ridges, defined as
which are used for the determination of instantaneous frequencies and amplitudes of signal components. Notice that this definition of a ridge uses the rescaled scalogram |T(a,b)|2/a as it leads to a simpler analytical solution relating the ridge to the instantaneous frequency when a standard Morlet wavelet is employed as the analysing wavelet.
2—Wavelet modulus maxima, defined as
are used for locating and characterising singularities in the signal. (Note that equations 4 and 5 also include inflection points with zero gradient. These can be easily removed when implementing the modulus maxima method in practice.)
In the present invention described here we use modulus maxima and ridges as defined above, however, any reasonable definition of the loci of the maxima and minima of the transform may be incorporated within the method.
The left hand column (
The scalograms in
The phase plots are given below the scalograms in
The lower plots in
Elements of the Signal in Wavelet Space
Wavelet Detrending and Denoising and the Elucidation of Breathing Artefact
a shows a 35 second segment of pulse oximeter waveform. There is obvious drift in the signal. The corresponding scalogram and phase plots are given in
More on the Elucidation of Breathing Artefact
Four, wavelet-based, methodologies may be employed for the monitoring of respiration and the extraction of the breathing rate from a standard pulse oximeter trace or photoplethysmograph (PPG) trace. These methodologies may be used independently, for example within an algorithm, or collectively using a polling mechanism. They are given as:
1. High Amplitude Banding.
When the breathing artefact is particularly pronounced, the breathing rate can be identified as a strong band or ridge of high transform values in the low (<1 Hz) frequency range. The arrow in
In another embodiment, the breathing ridge may be followed in wavelet space using standard ridge-following techniques. This allows sudden or short term changes in breathing rate to be identified and quantified in real time. Evidence for the applicability of this methodology is found in
2. Phase Methods.
As shown above, the phase of the wavelet coefficients can be used to identify the timing of each breath. However, cross-scale correlation of phase values, particularly for scalograms of low oscillation wavelets, can also be used as an indicator for low frequency, low amplitude, breathing features within the PPG trace.
In
In the example of
As one can clearly see in this figure, the steps of constant phase count correlate extremely well with the wavelet spectrum peak positions of
Note that the use of cross-correlation across scale can also be used to isolate individual features within the trace. See, for example,
3. Frequency Modulation.
In some cases the amplitudes of the breathing related features within the PPG are such that they cannot easily be isolated as independent features within the transform space (e.g. they are of small amplitude, close to the dominant cardiac signal, etc). However, their effects on the dominant cardiac features can be observed. This is shown in
4. Amplitude Modulation.
In some cases the amplitudes of the breathing related features within the PPG are such that they cannot easily be isolated as independent features within the transform space (e.g. they are of small amplitude, close to the dominant cardiac signal, etc). However, their effects on the dominant cardiac features can be observed. This is shown in
The amplitude dominant band corresponding to the cardiac features in wavelet space oscillates with a frequency identified as that of the breathing rate. Occasionally, when breaths are well separated individual breath features can be identified instead of a continuous, or modulated, band. This is particularly apparent when a low oscillation wavelet function is employed, as in
Wavelet Feature Analysis
A scheme is described for the analysis of features derived from statistical measures of the wavelet transformed signal at a given frequency level or by following a time-frequency feature in wavelet space—where the transform can be represented as the actual transform values, the modulus of transform values, the squared transform values (the scalogram) or some other simple transformation of the wavelet transform values. In the preferred embodiment these features derived from the wavelet transform at a selected frequency level may include the power, mean, skew, kurtosis and entropy. In addition, these may be found for the peak frequency for each individual scalogram rather than a constant predefined frequency level, where peak frequency is defined as the frequency level containing the most power when integrated across the scalogram to produce a wavelet power spectrum.
The algorithm allows the analysis of segments of the pulse oximetry signals. The algorithm also allows the visual inspection of the feature scatter in parameter space. The feature scatter is then used as input to a classification method e.g. a Bayesian classifier or neural network.
In order to determine from a data set which illness severity the patient belongs to a Bayesian or other classification method may be employed.
Note that the two data sets have been smoothed prior to the classification. The classifier may be trained using an iterative procedure and a risk matrix to enhance the sensitivity (say to 95% or above) at the expense of sensitivity. For example, for 96% sensitivity, a specificity of only 43% is attained for the entropy data set produce (lowest plot of
Combinations of feature vectors can produce enhanced specificity-sensitivity values but with the requirement of increased computational effort.
The use of features derived from wavelet transform are useful as clinical markers of current state of the patient health as shown in the example. The same classification method may also be used as a predictor of the future state of the patient's health by correlating future outcomes with wavelet feature data.
The classification method may also be extended to include other clinical parameters including triage category, capillary refill time, white cell count, age, etc.
The classification method may also be extended to further partition the data according to patient ‘illness severity’, where the system is initially trained on illness severities determined using suitable criteria by a clinician.
Usefulness in the Measurement of Compliance etc.
The wavelet-based denoising and feature extraction described herein will allow for a more accurate analysis of the photoplethysmographic waveform when used in the measurement and monitoring of physiological parameters. An example of this is in the determination of arterial compliance using the shape of, and reference points within, the plethysmographic signal. Modulus maxima following can be used to determine the location and nature of pertinent characteristic points in the PPG, e.g. the beginning and end of the initial upslope of the PPG trace, maxima, minima, etc. This is shown schematically in
In
Implementation
A pulse oximeter 10 of known type has a probe 12 for obtaining readings from the finger, ear lobe or other suitable part of a patient. The pulse oximeter outputs a raw PPG signal to a computer 14 which carries out the wavelet transforms and associated analysis as discussed above. The computer 14 can output both the raw PPG signal and the results of processing the PPG signal to a VDU 16 and/or provide an output in the form of data at 18. The data output 18 may be in the form of a link to a remote location, a data carrier such as a disc or tape, or any other suitable format.
The mathematics of wavelet transforms are well described in the literature and known to those of ordinary skill in the art, and are not further described herein.
The immediately convenient manner of implementing the present invention is by connecting a computer to an existing pulse oximeter, as shown in
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/GB02/02843 | 6/21/2002 | WO | 00 | 12/16/2003 |
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WO03/000125 | 1/3/2003 | WO | A |
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