Device and method for detecting ventricular fibrillation
11541246 · 2023-01-03
Assignee
Inventors
Cpc classification
A61N1/3956
HUMAN NECESSITIES
A61B5/7282
HUMAN NECESSITIES
A61N1/3684
HUMAN NECESSITIES
A61B5/686
HUMAN NECESSITIES
A61N1/3621
HUMAN NECESSITIES
A61N1/046
HUMAN NECESSITIES
A61B2562/0219
HUMAN NECESSITIES
International classification
Abstract
The present invention relates to a medical device, in particular to an implantable medical device, comprising at least one implantable or non-implantable hemodynamic sensor configured for detecting hemodynamic cardiac signals, a controller configured for processing and analyzing the detected cardiac hemodynamic signals or signals derived from the detected cardiac hemodynamic signals by applying to said signals a Teager Energy Operator (TEO). The controller further comprises at least one algorithm configured to determine the need for a defibrillation operation by taking into account the at least one output hemodynamic signal. The present invention also provides a method and software for detecting or treating a ventricular fibrillation episode by taking into account cardiac hemodynamic signals.
Claims
1. A medical device comprising: at least one implantable or non-implantable hemodynamic sensor configured to detect hemodynamic cardiac signals; and a controller configured to process and analyze the detected hemodynamic cardiac signals or signals derived from detected hemodynamic cardiac signals by applying to said signals a Teager Energy Operator (TEO) defined by: TEO {x (n)}=ψ(n)=x.sup.2(n−1)−x(n−2).Math.x(n) wherein “x(n)” is a cardiac hemodynamic signal, “ψ(n)” is the output hemodynamic signal and “n” refers to a predetermined sample, said controller further comprising instructions configured to implement at least one algorithm that determines the need for a defibrillation operation by taking into account the at least one output hemodynamic signal.
2. The medical device of claim 1, wherein the at least one hemodynamic sensor is an implantable or non-implantable accelerometer, a microphone, a piezoelectric sensor or a pressure sensor able to detect hemodynamic cardiac signals, in particular heart sounds.
3. The medical device of claim 1, wherein the at least one algorithm of the controller is configured to determine the need for a defibrillation operation if at least one characteristic of the output hemodynamic signals does not exceed a predetermined threshold during a lapse of time that is greater than a duration associated with a ventricular fibrillation episode.
4. The medical device of claim 3, wherein the at least one characteristic of the output hemodynamic signal is the amplitude, the energy, the average value, the median value, or the root mean square value of said signal.
5. The medical device of claim 3, wherein the amplitude of the output hemodynamic signals, the number of times that each of the output hemodynamic signals crosses in either ascending or descending order the predetermined threshold, or the number of peaks of each signal that exceeds the predetermined threshold during the predefined time lapse are taken into account for determining the presence or absence of ventricular fibrillation.
6. The medical device of claim 1, further comprising a defibrillator, in particular an implantable defibrillator, configured to generate an electrical defibrillation signal, and at least one electrode connected to said defibrillator by a lead configured to deliver said electrical defibrillation signal to a patient when the need to initiate a defibrillation operation is determined by the controller of the medical device.
7. The medical device of claim 6, wherein the controller is configured to determine the need for initiating a defibrillation operation by comparing the output hemodynamic signal signals with at least one electrophysiological signal independently detected from the cardiac hemodynamic signals by the at least one electrode.
8. The medical device of claim 6, wherein the controller is configured to determine the need for a defibrillation operation by taking into account only cardiac hemodynamic signals.
9. The medical device of claim 1, wherein the controller is configured to bandpass filter the detected cardiac hemodynamic signals or signals derived from detected cardiac hemodynamic signals in a range of 7.5 to 49 Hz.
10. The medical device of claim 9, wherein the controller is further configured to filter the output signals by applying a windowing function, in particular a Hamming window.
11. The medical device of claim 10, wherein the controller is configured to determine the need for a defibrillation operation or for initiating a defibrillation operation according to a predefined static threshold or a dynamic threshold, recalculated periodically and derived from one or more characteristics of the cardiac hemodynamic signals or from their representation by the Teager Energy Operator.
12. A method for treating hemodynamic cardiac signals detected by at least one hemodynamic sensor of a medical device, comprising: processing, by a controller of the medical device, the detected hemodynamic signals or signals derived from the detected hemodynamic cardiac signals which comprises applying a Teager Energy Operator (TEO) defined by: TEO {x (n)}=ψ(n)=x.sup.2(n−1)−x(n−2).Math.x(n) wherein “x(n)” is a detected cardiac hemodynamic signal; “ψ(n)” is the output hemodynamic cardiac signal; and “n” refers to a predetermined sample, determining, by the controller of the medical device, the presence or absence of ventricular fibrillation by taking into account the output hemodynamic signal relative to a predetermined threshold; and providing a therapy responsive to determining the presence of ventricular fibrillation.
13. The method for treating hemodynamic cardiac signals of claim 12, wherein the signal processing step is preceded by a signal preprocessing step, processed by the controller of the medical device, at which the detected hemodynamic signals or signals derived from the detected cardiac hemodynamic signals are bandpass filtered, in particular in a range of 7.5 to 49 Hz.
14. The method for treating cardiac hemodynamic signals of claim 12, wherein the signal processing step is followed by a signal post-processing step, processed by the controller of the medical device, during which the output hemodynamic signals are filtered by application of a windowing function, in particular by applying a Hamming window.
15. The method for treating cardiac hemodynamic signals of claim 12, wherein the at least one hemodynamic sensor is an implantable or non-implantable N-axis accelerometer (N>=1), a microphone, a piezoelectric sensor or a pressure sensor adapted to detect cardiac hemodynamic signals, in particular heart sounds.
16. The method for treating cardiac hemodynamic signals of claim 15, wherein the N cardiac signals detected by the N-axis accelerometer are combined in a new signal along an N+1 axis, the N+1 axis being determined so that the amplitude, the signal-to-noise ratio, the stability, or a relevant physiological parameter of the new signal is maximum along the N+1 axis.
17. The method for treating cardiac hemodynamic signals of claim 12, wherein the predetermined threshold is a predefined static threshold, or a dynamic threshold, recalculated periodically and derived from one or more characteristics of the cardiac hemodynamic signals or their representation by the Energy Operator Teager.
18. The method for treating hemodynamic cardiac signals of claim 12, wherein the amplitude, the number of times each of the output hemodynamic signals crosses in either ascending or descending order the predetermined threshold, or the number of peaks of each signal that exceeds the predetermined threshold for a predefined period of time, is/are taken into account for determining the presence or absence of ventricular fibrillation.
19. The method for treating cardiac hemodynamic signals according to claim 12, wherein the presence or absence of ventricular fibrillation is determined by taking into account only cardiac hemodynamic signals.
20. The method for treating hemodynamic cardiac signals according to claim 12, wherein the presence or absence of ventricular fibrillation is established by comparing the output hemodynamic signal with at least one electrophysiological signal detected by an electrode of the medical device.
21. One or more non-transitory computer-readable storage media having instructions stored thereon for the processing of hemodynamic cardiac signals detected by at least one hemodynamic sensor of a medical device that, upon execution by one or more processors, cause the one or more processors to perform operations comprising: processing detected hemodynamic signals or signals derived from detected cardiac hemodynamic signals by application of a Teager Energy Operator (TEO) defined by: TEO {x (n)}=ψ(n)=x.sup.2(n−1)−x(n−2).Math.x(n) wherein “x(n)” is the detected hemodynamic signal, “ψ(n)” is the output signal, and “n” refers to a predetermined sample; and comparing at least one characteristic of the output signal to a predetermined threshold; and triggering an alert when the at least one characteristic of the output signal does not exceed the predetermined threshold for a predefined period of time.
22. The one or more non-transitory computer-readable media of claim 21, wherein the operations further comprise preprocessing the detected cardiac hemodynamic signals or signals derived from the cardiac hemodynamic signals detected by bandpass filtration in a range of 7.5 to 49 Hz.
23. The one or more non-transitory computer-readable media of claim 21, wherein the operations further comprise post processing the output signal by applying a Hamming window function.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
(1) The invention and its advantages will be explained in more detail in the following embodiments and relying in particular on the following accompanying figures, wherein:
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DETAILED DESCRIPTION
(12) The invention will now be described in more detail by using advantageous embodiments in an exemplary manner and with reference to the drawings. The described embodiments are simply possible configurations and it should be kept in mind that the individual characteristics as described above may be provided independently of each other or may be omitted altogether when implementing the present invention.
(13) According to the present invention, the hemodynamic signals are recorded by at least one cardiac hemodynamic sensor, such as an accelerometer which can be integrated inside a defibrillator housing, in particular an implantable automatic defibrillator or in a lead connected to the defibrillator according to various embodiments (see
(14)
(15) The medical device 10 comprises a controller (not shown) having an algorithm configured to detect ventricular fibrillation by taking into account the cardiac hemodynamic signals detected by the accelerometer 11. According to the present invention, the electrophysiological signals detected by the electrodes or the intracardiac stimulation lead 13 are not used by said algorithm of the controller. Indeed, the controller of the medical device 10 is able to detect a ventricular fibrillation episode by taking only the hemodynamic signals into account.
(16) In addition, according to the first embodiment of the invention, the controller of the medical device 10 also comprises an algorithm configured to trigger a defibrillation operation by taking into account the hemodynamic signals. Thus, the device 10 is also configured to treat ventricular fibrillation, following the detection of a ventricular fibrillation episode, by a defibrillation signal delivered by the defibrillator 10, in particular by the intracardiac stimulation lead 13 of the defibrillator 10.
(17)
(18) The medical device 20 comprises a controller (not shown) having an algorithm configured to detect ventricular fibrillation by taking into account the cardiac hemodynamic signals detected by the accelerometer 23. According to the present invention, the electrophysiological signals detected by the electrode(s) of the lead 22 are not used by said controller algorithm. Indeed, the controller of the medical device 20 is able to detect a ventricular fibrillation episode by taking only the hemodynamic signals into account.
(19) In addition, according to the second embodiment of the invention, the controller of the medical device 20 also comprises an algorithm configured to trigger a defibrillation operation by taking into account the hemodynamic signals. Thus, the device 20 is also configured to treat ventricular fibrillation, following the detection of a ventricular fibrillation episode, by a defibrillation signal delivered by the defibrillator 20.
(20) Similarly,
(21) The medical device 30 comprises a controller (not shown) having an algorithm configured to detect ventricular fibrillation by taking into account the cardiac hemodynamic signals detected by the accelerometer 33. According to the third embodiment of the present invention, the electrophysiological signals detected by the electrode(s) of the stimulation lead 32 are not used by said algorithm of the controller. Indeed, the controller of the medical device 30 is able to detect a ventricular fibrillation episode by taking only the hemodynamic signals into account.
(22) According to an alternative embodiment, the electrophysiological signals that are independently detected with the hemodynamic cardiac signals are taken into account by the controller so as to compare the two types (electrophysiological and hemodynamic) of signals with each other in order to improve the reliability of the detection of a ventricular fibrillation episode.
(23) In addition, according to the third embodiment of the invention, the controller of the medical device 30 also comprises an algorithm configured for triggering a defibrillation operation by taking into account the hemodynamic signals. So, the device 30 is also configured to treat a ventricular fibrillation following the detection of an episode of ventricular fibrillation, by a defibrillation signal delivered by the defibrillator 30, in particular of the stimulation lead 32.
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(25) Thus, according to the various embodiments of the invention, the hemodynamic signals are detected by at least one hemodynamic sensor, such as an accelerometer 11, 23, 33, 40 which is either implanted inside the heart 11, either subcutaneously 23, 33 or attached to the epidermis of the chest of a patient 40.
(26) In another embodiment, the hemodynamic sensor may be a microphone, a piezoelectric sensor, a pressure sensor, or the like.
(27) In addition, according to a variant of the invention, the recording of hemodynamic signals can be made from a combination of several hemodynamic sensors of the same type (for example several accelerometers) or of different categories (for example an implanted sensor and a skin sensor) that would be positioned at various points in a patient's body.
(28) According to the embodiment of the invention, each of the hemodynamic sensors may be used, or not, in combination with a defibrillator, in particular an implantable defibrillator.
(29) Whatever the embodiment of the invention, the present invention takes into account the energy required to the generation of a cardiac hemodynamic signal, such than that recorded by an accelerometer, in order to transform the signal into an alternative representation significantly facilitating the detection of ventricular fibrillation. This representation of energy is provided by the application of TEO (for “Teager Energy Operator”) on the cardiac hemodynamic signal.
(30) The Teager Energy operator (TEO in the following) is defined by the equation: TEO {x (n)}=ψ(n)=x.sup.2(n−1)−x(n−2).Math.x(n) wherein “x(n)” is the input signal (in this case, the cardiac hemodynamic signal) and “ψ(n)” is the output signal of the operator. “n” refers a particular sample.
(31) The TEO operator (for “Teager Energy Operator”) is a mathematical operator that can be integrated into the software or hardware of an implantable cardiac device, such as an implantable automatic defibrillator, using hemodynamic sensors, such as accelerometers, to record cardiac hemodynamic signals. The sensors can be intracardiac, subcutaneous or external (i.e. with sensors attached to the patient's skin).
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(33) The transformation of a signal by the TEO operator produces a real-time estimate of the necessary energy it took to generate the input signal. This energy is a function of the amplitude and frequency of the original signal. In particular, the energy corresponds to the weighted product of the amplitude and the frequency of the original signal. During normal sinus rhythm, the TEO output of a signal from a cardiac hemodynamic accelerometer as depicted in
(34) Between the heart sounds S1, S2, the TEO output signal is flat as illustrated by the Graphs B and C in
(35) Indeed, during a ventricular fibrillation, the synchronized and coordinated contraction of the ventricles is replaced by a disorganized or anarchic tremor. Cardiac mechanical performance is severely impaired and the ventricles do not contract with the same energy as during normal operation. This is reflected in the TEO output signal of a cardiac hemodynamic signal with a prolonged flat plateau shape close to zero and represented by the double arrow P in
(36) As illustrated by Graph A of
(37) After filtering, additional pre-processing can be performed on the signals recorded by the cardiac hemodynamic sensor. For example, the signals can be analyzed independently and sorted by valuable order. Such a classification could take into account amplitude, frequency, signal-to-noise ratio, stability or signal sensitivity in response to a hemodynamic change. A selection of signals can also be considered. The best signal according to the ranking criteria can be selected for a subsequent processing.
(38) Alternatively, the signals may be combined in some way to produce a different, more specific signal for the detection of ventricular fibrillation.
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(40) After filtering and preprocessing, the hemodynamic signal serves as an input signal to the TEO. Before being capable of detecting a ventricular tachyarrhythmia such as ventricular fibrillation according to several embodiments of the algorithm, the TEO output signal is smoothed with, for example, a Hamming window, as shown in Graph C of
(41) After filtering, preprocessing and smoothing, the smoothed TEO output signals serve as input to algorithms that take into account the frequency and/or amplitude of the TEO output signals in order to detect the presence of a ventricular tachyarrhythmia such as ventricular fibrillation. Several embodiments of these algorithms are described in the following.
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(43) At step 101, a sample n of hemodynamic signals recorded by a hemodynamic sensor is received. The hemodynamic sensor may be an accelerometer, a microphone, a piezoelectric sensor, a pressure sensor or the like. In addition, according to a variant of the invention, the recording of hemodynamic signals can be made from a combination of several hemodynamic sensors of the same type (for example several accelerometers) or of different categories (for example an implanted sensor and a skin sensor) that would be positioned at various points in a patient's body.
(44) In step 102, the hemodynamic signals are bandpass filtered in the 10-50 Hz frequency range to eliminate low frequency respiratory contributions and high frequency acoustic cardiac wave contributions.
(45) In step 103, the signals are preprocessed to make them more relevant for the detection of ventricular fibrillation. Such preprocessing has been described with reference to
(46) Filtered and preprocessed cardiac hemodynamic signals are then used as input signals in the TEO operator. At a step 104, the hemodynamic signals are transformed by application of the TEO operator that provides a real time estimate of the energy needed to produce these signals. This energy is a function of the amplitude and frequency of the original signal. In particular, the energy corresponds to the weighted product of the amplitude and the frequency of the original signal.
(47) In a step 105, the TEO output signals are smoothed, for example, by applying a Hamming window.
(48) In step 106, the smoothed TEO output signals are compared with a threshold value 107. This threshold value 107 can be a static value (i.e. a single constant value calculated and defined a priori) or a dynamic value (i.e. it is regularly recalculated using various values of the original or processed signal). According to the embodiment wherein several cardiac hemodynamic signals are recorded by different hemodynamic sensors, for example by a first implanted sensor and by a second skin sensor, the threshold value can be calculated by crossing and verifying the hemodynamic signals of the first and second hemodynamic sensors. In another embodiment wherein the cardiac hemodynamic signals are recorded by an N-axis hemodynamic sensor (see the example shown in
(49) If the TEO output signal is greater than the threshold value 107, no action is taken in step 108 and the next sample of smoothed TEO output signals is ready to be taken into account. If, however, the TEO output signal is less than the threshold value 107, the elapsed time “At” between the current sample and the last sample which has been greater than the threshold 107 is calculated at a step 109.
(50) If the elapsed time “At” is less than a specific time limit that is characteristic of a ventricular fibrillation (“limit duration VF” in
(51) If, however, the elapsed time “At” is greater than or equal to the “limit duration VF”, a ventricular fibrillation is detected and an alert is triggered in step 111. As for the threshold, the specific value of the “VF limit duration” may also be a static value (i.e. a single, unchanged and defined a priori value) or a dynamic value (i.e. it is regularly recalculated according to the original signal or to the output signal).
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(53) In a method similar to algorithm 100, a sample n of hemodynamic signals recorded by a hemodynamic sensor is received in step 201. The hemodynamic sensor may be an accelerometer, a microphone, a piezoelectric sensor, a pressure sensor, or the like. In addition, according to a variant of the invention, the recording of hemodynamic signals can be made from a combination of several hemodynamic sensors of the same type (for example several accelerometers) or of different categories (for example an implanted sensor and a skin sensor) that would be positioned at various points in a patient's body.
(54) Then, at step 202, the hemodynamic signals are bandpass filtered in the 10-50 Hz frequency range to eliminate low frequency respiratory contributions and high frequency acoustic cardiac wave contributions.
(55) In step 203, the signals are preprocessed to make them more relevant for the detection of ventricular fibrillation. Such preprocessing has been described with reference to
(56) According to the second embodiment, in a step 205, the TEO output signals are filtered by applying a sliding window filter whose “window” length can be a static value (i.e. a single value unchanged calculated and defined a priori) or a dynamic value (i.e. it is regularly recalculated using the original or output signal).
(57) The “window” is slided (i.e. moved to the next or previous sample without “jumping” more than one sample at a time, as is the case with “jumping windows”), on the last sample of TEO output signals that are smoothed at a step 206 using, for example, a Hamming window.
(58) At a step 207, the smoothed TEO output signals are compared to a threshold value 208 within the “window”. This threshold value 208 can be a static value (i.e. a single unchanged value calculated and defined a priori) or a dynamic value (i.e. it is regularly recalculated using the output signal TEO smooth). In step 207, the number of times X that the threshold 208 has been crossed in either increasing or decreasing order or the number of peaks X exceeding the threshold 208 within the “window” is calculated.
(59) If the number X is greater than a specific limit number (“Limit VF” in
(60) If the number X is less than the specific limit number “limit VF”, a ventricular fibrillation is detected and an alert is triggered in step 210. As for threshold 208, the specific value of the number “limit VF” can also be a static value (i.e. a single, unchanged and defined a priori value) or a dynamic value (i.e. that it is regularly recalculated according to the original signal or the output signal).
(61) According to the embodiment wherein several cardiac hemodynamic signals are recorded by different hemodynamic sensors, for example by a first implanted sensor and by a second skin sensor, the threshold value can be calculated by crossing and verifying the hemodynamic signals of the first and second hemodynamic sensors.
(62) According to another embodiment wherein the cardiac hemodynamic signals are recorded by an N-axis hemodynamic sensor (see the example shown in
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(64) In a similar method to the algorithm 200, a sample n of hemodynamic signals recorded by a hemodynamic sensor is received at a step 301. The hemodynamic sensor may be an accelerometer, a microphone, a piezoelectric sensor, a pressure sensor, or the like. In addition, according to a variant of the invention, the recording of hemodynamic signals can be made from a combination of several hemodynamic sensors of the same type (for example several accelerometers) or of different categories (for example an implanted sensor and a skin sensor) that would be positioned at various points in a patient's body.
(65) Then, in step 302, the hemodynamic signals are bandpass filtered in the 10-50 Hz frequency range to eliminate low frequency respiratory contributions and high frequency acoustic cardiac wave contributions.
(66) In step 303, the signals are preprocessed to make them more relevant for the detection of ventricular fibrillation. Such preprocessing has been described with reference to
(67) According to the third embodiment, in step 304, after band pass filtering and preprocessing, the last samples of the cardiac hemodynamic signal of the “window” are stored in the memory. This window is of the “jumping window” type and the length of the “window” can be a static value (i.e. a single unchanged value, calculated and defined a priori) or a dynamic value (i.e. it is regularly recalculated using the original or output signal).
(68) At a step 305, the hemodynamic signals are transformed by application of the TEO operator. In step 305, the TEO output signals are calculated in the current “window”.
(69) At a step 306, the TEO output signals are smoothed in the current “window” using for example, a Hamming window.
(70) At a step 307, the smoothed TEO output signals are compared to a threshold value 308 within the “window”. This threshold value 308 can be a static value (i.e. a single unchanged value, calculated and defined a priori) or a dynamic value (i.e. it is regularly recalculated using the smoothed TEO output signal).
(71) According to the embodiment wherein several cardiac hemodynamic signals are recorded by different hemodynamic sensors, for example by a first implanted sensor and by a second skin sensor, the threshold value can be calculated by crossing and verifying the hemodynamic signals of the first and second hemodynamic sensors.
(72) According to another embodiment wherein the cardiac hemodynamic signals are recorded by an N-axis hemodynamic sensor (see the example represented by
(73) In step 307, the number of times X that the threshold 308 has been crossed in either increasing or decreasing order, or the number of peaks X exceeding the threshold 308 within the “window” is calculated.
(74) If the number X is greater than a specific limit number (“limit VF” in
(75) If the number X is less than the specific limit number “limit VF”, a ventricular fibrillation is detected and an alert is triggered in step 310. As for threshold 308, the specific value of the “limit VF” number can also be a static value (i.e. a single value, unchanged and defined a priori) or a dynamic value (i.e. it is regularly recalculated according to the original signal or the output signal).
(76) The algorithm 300 allows a computation cost lower than that of the algorithms 100 and 200 because it calculates only the TEO output signal within the window for all “sample jumps” rather than continuously.
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(78) Unlike the previous algorithms 100, 200, 300, the algorithm 400 takes into account the number of peaks exceeding the threshold in a “sliding window” or a “jumping window”, as well as their amplitudes.
(79) At a step 401, a sample n of hemodynamic signals recorded by a hemodynamic sensor is received. The hemodynamic sensor may be an accelerometer, a microphone, a piezoelectric sensor, a pressure sensor or the like. In addition, according to a variant of the invention, the recording of hemodynamic signals can be made from a combination of several hemodynamic sensors of the same type (for example several accelerometers) or of different categories (for example an implanted sensor and a skin sensor) that would be positioned at various points in a patient's body.
(80) Then, at step 402, the hemodynamic signals are bandpass filtered in the 10-50 Hz frequency range to eliminate low frequency respiratory contributions and high frequency acoustic wave contributions.
(81) In step 403, the signals are preprocessed to make them more relevant for the detection of ventricular fibrillation. Such preprocessing has been described with reference to
(82) At a step 404, the hemodynamic signals are transformed by application of the TEO operator.
(83) According to the fourth embodiment, the output signals TEO are considered in a “sliding” window in step 405. The value of the length of the window can be a static value (i.e. a constant value, calculated and defined a priori) or a dynamic value (i.e. it is regularly recalculated using the original or processed signal).
(84) In step 406, the TEO output signals are smoothed in said window using, for example, a Hamming window.
(85) In step 407, the peaks of the smoothed TEO output signals exceeding a TEO threshold value 408 in the window and their amplitudes are determined. This threshold value 408 can be a static value (i.e. a single unchanged value calculated and defined a priori) or a dynamic value (i.e. it is regularly recalculated using the output signal TEO smooth).
(86) According to the embodiment wherein several cardiac hemodynamic signals are recorded by different hemodynamic sensors, for example by a first implanted sensor and a second skin sensor, the threshold value can be calculated by crossing and verifying the hemodynamic signals of the first and second hemodynamic sensors.
(87) According to another embodiment wherein the cardiac hemodynamic signals are recorded by an N-axis hemodynamic sensor (see the example shown in
(88) Peaks with particularly large amplitudes are suspected to be external and parasitic noises and could then mislead signal processing. Therefore, in step 409, all peaks whose amplitude exceeds a specific value (“noise limit” in
(89) In step 410, the amplitudes of the remaining peaks are summed to give only one value called “window energy”.
(90) If the value of “window energy” is greater than a specific value called “limit energy VF”, in step 411 no action is taken and the receipt of the next n+1 signal sample is expected.
(91) If the value of “window energy” is less than said specific value “limit energy VF”, a ventricular fibrillation is detected and an alarm is triggered at step 412. As for threshold 408, the specific value of the “limit energy VF” number can also be a static value (i.e. a single value, unchanged and defined a priori) or a dynamic value (i.e. it is regularly recalculated according to the original or to the output signal). This threshold “limit energy VF” can be interpreted as the minimum energy required to ensure a sufficient systemic infusion (i.e. blood circulation in the brain and body).
(92) The different embodiments of the device and method 100, 200, 300, 400 according to the present invention may further be configured to trigger a defibrillation operation following the detection of ventricular fibrillation, following the steps of “VF detection alert” 111, 210, 310, 412, in particular by a manual or automatic defibrillator. In addition, the method and device of the present invention may be configured to verify that the defibrillation operation has been effective, i.e. whether or not the mechanical activity of the heart has been reestablished after defibrillation operation. To do this, after a predetermined lapse of time allowing the recovery of the normal heart rate following the defibrillation operation, a hemodynamic cardiac signal is detected by a hemodynamic sensor and is processed in particular by the application of the TEO operator, as described with respect to
(93) The described embodiments are merely possible configurations and it should be kept in mind that the individual features of the different embodiments may be combined with each other or provided independently of one another.
(94) In addition, each of the algorithms 100, 200, 300, 400 may comprise additional steps before, between, or after the steps that have been described with reference to