WO2012056342A2 - Method for determining a feature of the circadian rhythm of a subject - Google Patents

Method for determining a feature of the circadian rhythm of a subject Download PDF

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Publication number
WO2012056342A2
WO2012056342A2 PCT/IB2011/054379 IB2011054379W WO2012056342A2 WO 2012056342 A2 WO2012056342 A2 WO 2012056342A2 IB 2011054379 W IB2011054379 W IB 2011054379W WO 2012056342 A2 WO2012056342 A2 WO 2012056342A2
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input signal
signal values
subject
values
gained
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PCT/IB2011/054379
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WO2012056342A3 (en
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Andre Melon Barroso
Bahaa Sarroukh
Lucas Josef Maria Schlangen
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Koninklijke Philips Electronics N.V.
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Priority to RU2013124041/14A priority Critical patent/RU2587926C2/en
Priority to US13/881,406 priority patent/US20130218030A1/en
Priority to CN201180052087.1A priority patent/CN103168306B/en
Priority to JP2013535536A priority patent/JP5865379B2/en
Priority to EP11776889.5A priority patent/EP2633451A2/en
Priority to BR112013009970A priority patent/BR112013009970A2/en
Publication of WO2012056342A2 publication Critical patent/WO2012056342A2/en
Publication of WO2012056342A3 publication Critical patent/WO2012056342A3/en

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    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/48Other medical applications
    • A61B5/4857Indicating the phase of biorhythm
    • GPHYSICS
    • G16INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR SPECIFIC APPLICATION FIELDS
    • G16HHEALTHCARE INFORMATICS, i.e. INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR THE HANDLING OR PROCESSING OF MEDICAL OR HEALTHCARE DATA
    • G16H50/00ICT specially adapted for medical diagnosis, medical simulation or medical data mining; ICT specially adapted for detecting, monitoring or modelling epidemics or pandemics
    • G16H50/50ICT specially adapted for medical diagnosis, medical simulation or medical data mining; ICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for simulation or modelling of medical disorders
    • GPHYSICS
    • G16INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR SPECIFIC APPLICATION FIELDS
    • G16HHEALTHCARE INFORMATICS, i.e. INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR THE HANDLING OR PROCESSING OF MEDICAL OR HEALTHCARE DATA
    • G16H50/00ICT specially adapted for medical diagnosis, medical simulation or medical data mining; ICT specially adapted for detecting, monitoring or modelling epidemics or pandemics
    • G16H50/30ICT specially adapted for medical diagnosis, medical simulation or medical data mining; ICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for calculating health indices; for individual health risk assessment

Definitions

  • the invention relates to a method of determining a feature of the circadian rhythm of a subject.
  • Knowing the circadian phase of an individual helps to optimize the timing of light interventions that allow shifting the circadian rhythm.
  • Such a shifting of circadian rhythms is of use for treating jet-lag, helping shift workers adapt to night shift works schedules and to guide peoples with sleep disorders like delayed sleep phase syndrome or advanced sleep phase syndrome to more normal timing of their sleep-wake patterns.
  • Optimizing the circadian phase of an individual allows adjusting the biorhythm of an individual so that maximum alertness and performance occur at the desired timing.
  • Daily living, job performance, sport performance, etc. can be expected to benefit from this.
  • a major advantage of using cardiac output as a means to estimate the dynamics of the master circadian pacemaker is that it can be reliably measured using relatively unobstrusive sensors.
  • the data these sensors generate can be used to collect signals that contain small endogenous circadian variations. Given the small amplitude of these variations, these are often masked by the influence of competing processes, e. g. the impact of physical or mental stress on heart activity. Many of these masking effects produce disturbances that are easy to filter as they introduce frequency components outside the normal circadian range. However, other masking effects are also circadian in nature and require more elaborate filtering methods.
  • Recent studies suggested that the circadian modulation of the cardiac activity is influenced by prior wakefulness periods. The sleep/wake cycle follows a circadian cycle that affect cardiac activity in a similar frequency range than the master circadian pacemaker.
  • a first input signal is measured that is related to a cardiac function of the subject over a certain time period. Additionally a second input signal is measured that indicates the physiological activity of the subject over a time period overlapping this first time period in which the first input signal is measured.
  • the first input signal and the second input signal are combined to result in a periodic output signal representing the circadian rhythm of the subject. From this output signal, the desired feature of the circadian rhythm is derived.
  • first input signal and the second input signal includes information on effects that mask the information about the endogenous circadian rhythm that is present in the first signal.
  • the combination allows to remove the unwanted features from the first input signal (representing the cardiac function) so that oscillation parameters describing the dynamics of the circadian rhythm can directly be derived from the periodic output signal.
  • the combination of the first input signal and the second input signal can be performed by autoregression, decoloration, independent component analysis or (nonlinear) principle component analysis, leading to an enhanced representation of circadian rhythm by the periodic output signal.
  • This enhanced signal can then be used to derive an estimation of the oscillation parameters, for instance by applying harmonic regression.
  • the first input signal can be any marker of a cardiac function
  • the second signal can be represented by physiological, behavioral or environmental data from the subject that provide an indication of her/his prior period of wakefulness, e. g. wrist actigraphy, sleep locks, questionnaire answers, skin temperature, light exposure, etc. over a period of time that overlaps with the time period over which the cardiac function is measured.
  • the feature of the circadian rhythm to be determined is the acrophase of the periodic output signal.
  • said feature is the amplitude of the periodic output signal.
  • the first input signal and the second input signal are gained by sampling to result in a number of first input signal values and second input signal values, respectively, and a number of output signal values is computed from the sampled first input signal values and a second input values.
  • the first and second input signals are discrete input signal values gained by sampling a cardiac function and monitoring the activity of the subject, respectively. This results in a first set of first input signal values and a second set of second input signal values. From these sets, a set of output signal values can be derived, for example, by solving a system of equations that includes the first and second input signal values as input variables, to get the output signal values as solutions.
  • the periodic output signal is derived from the computed number of output signal values by regression analysis.
  • the number of output signal values is computed from the first input signal values and second input signal values according to an autoregressive moving average model (ARMAX) with the first input signal values and second input signal values as exogenous inputs.
  • ARMAX autoregressive moving average model
  • Autoregressive moving average models are commonly known in signal processing to process autocorrelated time series data.
  • the model consists of two parts, namely an autoregressive part and a moving average part.
  • Its mathematical basis is a linear equation system to set two time series into a relation to each other, here represented by the first input signal values and the second input signal values. Solving this linear equation system results in a series of output signal values representing the circadian rhythm of the subject.
  • the first input signal values and the second input signal values are gained by sampling at a frequency above 1 Hz.
  • the first input signal values or the second input signal values are gained by sampling original signal values at a first frequency, said original signal values being gained by sampling at a second frequency higher than the first frequency.
  • one of the time series, represented by the first input signal values or the second input values is gained by sampling original (raw) signal values that are, in turn, gained by sampling a measurement parameter at a relatively high frequency.
  • the original signal values are raw values gained by sampling a cardiac parameter at a frequency of 512 Hz.
  • These original signal values cannot be computed directly together with a second time series of second input signal values that are gained by sampling at 60 Hz. Therefore the original signal values are sampled at a relatively low frequency of 60 Hz to gain the first input signal values, which can then be combined with a second input signal values, for example, by the ARMAX model mentioned above.
  • the first input signal is the heart beat interval (IBI) of the subject.
  • IBI heart beat interval
  • raw ECG signal values are gained by sampling a raw ECG signal at a second frequency of 12 Hz
  • an IBI signal is derived from the gained ECG signal values
  • IBI signal values representing the first input signal values are gained by sampling the derived IBI signal at a first frequency of 60 Hz.
  • the second input signal is a wrist actigraphy signal of the subject.
  • the second input signal is a signal indicating the light exposure of the subject.
  • physiological signals of a subject 10 are collected.
  • ECG signals are gained by means of a suitable sensor integrated in a wearable ECG device in the form of a strap belt or the like.
  • Raw ECG signal values are gained by sampling at a frequency of 512 Hz (step 12). This sampling is performed over a predetermined time period T to result in a set of raw ECG signal values.
  • additional physiological data are collected from the subject 10 by means of another suitable sensor. These second data indicate the physiological activity of the subject 10 over a time period overlapping the time period T mentioned before for sampling the raw ECG signal. This sampling of an activity related signal is performed at a lower frequency of 60 Hz (step 14).
  • a suitable sensor can be integrated in a wrist band or the like to measure a wrist activity signal of the subject 10.
  • these second physiological data that indicate the activity of the subject 10 can also be other data based on sleep logs, skin temperature, light exposure, etc. It is assumed that these data contain information on a prior wakefulness period of the subject 10. In the following it will be shown that these data can be combined with data related to the cardiac function of the subject 10 to remove masking effects from the cardiac function signals, resulting in a signal function representing the circadian activity of the subject 10.
  • an IBI signal is derived by computing R-R intervals.
  • the resulting IBI signal is further sampled in step 16 at a frequency of 60 Hz.
  • the result of step 16 is a set of first input signal values related to the IBI of the subject 10 in the time interval T.
  • the result of step 14, on the other hand, is a set with the same number of second input signal values indicating the activity of the subject 10 in a time period overlapping the time period T.
  • the first and second input signals are detrended to eliminate zero frequency components.
  • the first input signal values and the second input signal values are mathematically combined with the help of an autoregressive moving average model (ARMAX) in which the first input signal values and the second input signal values represent exogenous inputs.
  • ARMAX autoregressive moving average model
  • This function y n is an enhanced circadian rhythm representation containing an information about the acrophase of the circadian rhythm.
  • y n for any n can be computed for x n , x' n through a linear combination of past values.
  • the first and second output signal values x n and x' n can be combined for obtaining an enhanced circadian rhythm representation y n via the following linear model:
  • the regression of coefficient ⁇ is the desired estimator of the circadian rhythm
  • represents the acrophase, i. e. the time of oscillation peak of the circadian rhythm function that can be derived from the structure of equation (5) above (step 22).
  • the coefficient ⁇ can be used to control the timing of a lighting intervention that allows a shifting of the circadian rhythm of the subject 10 and to help to optimize the timing of the circadian activity. For example, more close to the time at which the core body temperature is minimum (around two hours before spontaneous wake up on a free day), light interventions become more effective and shorter treatment durations can be used.
  • the coefficient ⁇ representing the acrophase of the circadian rhythm function
  • the amplitude of this signal might be another feature that can be used to control a lighting intervention to optimize the circadian phase of the subject 10.
  • another cardiac function than the heartbeat interval (IBI) of the subject 10 can be used as a first input signal, while another second input signal different from a wrist actigraphy signal can be used to represent the activity of the subject 10, as already mentioned above.

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Abstract

The invention relates to method for determining a feature of the circadian rhythm of the subject, comprising measuring a first input signal indicating a cardiac function ofthe subject, measuring at least one second input signal indicating the activity of the subject, combining the first input signal and the second input signal to a periodic output signalrepresenting the circadian rhythm of the subject, and determining at least one feature ofthis periodic output signal.

Description

Method for determining a feature of the circadian rhythm of a subject
FIELD OF THE INVENTION
The invention relates to a method of determining a feature of the circadian rhythm of a subject. BACKGROUND OF THE INVENTION
The presence of day-night variations in cardiovascular and metabolic function is well known. However, only recently it has been shown that cardiovascular and metabolic processes are not only affected by the behavioral sleep/wake cycle, but is partly under direct control of a master circadian pacemaker. This relation between the master circadian pacemaker and cardiac output suggests that the latter can be used to reliably derive oscillation parameters of the former such as amplitude and acrophase, i. e., the time of the oscillation peak. These parameters have important applications in improving human sleep and physical or mental performance.
Knowing the circadian phase of an individual helps to optimize the timing of light interventions that allow shifting the circadian rhythm. Such a shifting of circadian rhythms is of use for treating jet-lag, helping shift workers adapt to night shift works schedules and to guide peoples with sleep disorders like delayed sleep phase syndrome or advanced sleep phase syndrome to more normal timing of their sleep-wake patterns.
Optimizing the circadian phase of an individual allows adjusting the biorhythm of an individual so that maximum alertness and performance occur at the desired timing. Daily living, job performance, sport performance, etc. can be expected to benefit from this.
A major advantage of using cardiac output as a means to estimate the dynamics of the master circadian pacemaker is that it can be reliably measured using relatively unobstrusive sensors. The data these sensors generate can be used to collect signals that contain small endogenous circadian variations. Given the small amplitude of these variations, these are often masked by the influence of competing processes, e. g. the impact of physical or mental stress on heart activity. Many of these masking effects produce disturbances that are easy to filter as they introduce frequency components outside the normal circadian range. However, other masking effects are also circadian in nature and require more elaborate filtering methods. Recent studies suggested that the circadian modulation of the cardiac activity is influenced by prior wakefulness periods. The sleep/wake cycle follows a circadian cycle that affect cardiac activity in a similar frequency range than the master circadian pacemaker.
SUMMARY OF THE INVENTION
It is therefore an object of the present invention to provide a method for determining a feature of the circadian rhythm of a subject that allows an estimation of the master pacemaker oscillation parameters by analyzing the cardiac function of a subject, removing the masking effects of the endogenous circadian rhythm present in the cardiac function.
This object is achieved by a method comprising the features of claim 1.
According to this method, a first input signal is measured that is related to a cardiac function of the subject over a certain time period. Additionally a second input signal is measured that indicates the physiological activity of the subject over a time period overlapping this first time period in which the first input signal is measured.
The first input signal and the second input signal are combined to result in a periodic output signal representing the circadian rhythm of the subject. From this output signal, the desired feature of the circadian rhythm is derived.
The idea behind the combination of a first input signal and the second input signal is that the latter includes information on effects that mask the information about the endogenous circadian rhythm that is present in the first signal. The combination allows to remove the unwanted features from the first input signal (representing the cardiac function) so that oscillation parameters describing the dynamics of the circadian rhythm can directly be derived from the periodic output signal.
The combination of the first input signal and the second input signal can be performed by autoregression, decoloration, independent component analysis or (nonlinear) principle component analysis, leading to an enhanced representation of circadian rhythm by the periodic output signal. This enhanced signal can then be used to derive an estimation of the oscillation parameters, for instance by applying harmonic regression.
While the first input signal can be any marker of a cardiac function, the second signal can be represented by physiological, behavioral or environmental data from the subject that provide an indication of her/his prior period of wakefulness, e. g. wrist actigraphy, sleep locks, questionnaire answers, skin temperature, light exposure, etc. over a period of time that overlaps with the time period over which the cardiac function is measured.
Preferably the feature of the circadian rhythm to be determined is the acrophase of the periodic output signal.
According to another preferred embodiment of the method according to the present invention, said feature is the amplitude of the periodic output signal.
In another preferred embodiment, the first input signal and the second input signal are gained by sampling to result in a number of first input signal values and second input signal values, respectively, and a number of output signal values is computed from the sampled first input signal values and a second input values.
In this embodiment the first and second input signals are discrete input signal values gained by sampling a cardiac function and monitoring the activity of the subject, respectively. This results in a first set of first input signal values and a second set of second input signal values. From these sets, a set of output signal values can be derived, for example, by solving a system of equations that includes the first and second input signal values as input variables, to get the output signal values as solutions.
Preferably the periodic output signal is derived from the computed number of output signal values by regression analysis.
According to another preferred embodiment of the present invention, the number of output signal values is computed from the first input signal values and second input signal values according to an autoregressive moving average model (ARMAX) with the first input signal values and second input signal values as exogenous inputs.
Autoregressive moving average models are commonly known in signal processing to process autocorrelated time series data. The model consists of two parts, namely an autoregressive part and a moving average part. Its mathematical basis is a linear equation system to set two time series into a relation to each other, here represented by the first input signal values and the second input signal values. Solving this linear equation system results in a series of output signal values representing the circadian rhythm of the subject.
Preferably the first input signal values and the second input signal values are gained by sampling at a frequency above 1 Hz.
According to another preferred embodiment, the first input signal values or the second input signal values are gained by sampling original signal values at a first frequency, said original signal values being gained by sampling at a second frequency higher than the first frequency.
In practice this means that one of the time series, represented by the first input signal values or the second input values, is gained by sampling original (raw) signal values that are, in turn, gained by sampling a measurement parameter at a relatively high frequency. Just to give one example, the original signal values are raw values gained by sampling a cardiac parameter at a frequency of 512 Hz. These original signal values cannot be computed directly together with a second time series of second input signal values that are gained by sampling at 60 Hz. Therefore the original signal values are sampled at a relatively low frequency of 60 Hz to gain the first input signal values, which can then be combined with a second input signal values, for example, by the ARMAX model mentioned above.
Preferably the first input signal is the heart beat interval (IBI) of the subject. According to another preferred embodiment, raw ECG signal values are gained by sampling a raw ECG signal at a second frequency of 12 Hz, an IBI signal is derived from the gained ECG signal values, and IBI signal values representing the first input signal values are gained by sampling the derived IBI signal at a first frequency of 60 Hz.
In another preferred embodiment of the present invention, the second input signal is a wrist actigraphy signal of the subject.
According to still another preferred embodiment, the second input signal is a signal indicating the light exposure of the subject.
BRIEF DESCRIPTION OF THE DRAWINGS
These and other aspects of the invention will be apparent from and elucidated with reference to the embodiments described hereinafter.
In the drawings, the only figure is a schematic flow diagram to illustrate one embodiment of the method for determining a feature of the circadian rhythm of a subject according to the present invention.
DETAILED DESCRIPTION OF EMBODIMENTS
In the method shown in the flow diagram of the figure, physiological signals of a subject 10 are collected. ECG signals are gained by means of a suitable sensor integrated in a wearable ECG device in the form of a strap belt or the like. Raw ECG signal values are gained by sampling at a frequency of 512 Hz (step 12). This sampling is performed over a predetermined time period T to result in a set of raw ECG signal values. Secondly, additional physiological data are collected from the subject 10 by means of another suitable sensor. These second data indicate the physiological activity of the subject 10 over a time period overlapping the time period T mentioned before for sampling the raw ECG signal. This sampling of an activity related signal is performed at a lower frequency of 60 Hz (step 14). A suitable sensor can be integrated in a wrist band or the like to measure a wrist activity signal of the subject 10. It is noted that these second physiological data that indicate the activity of the subject 10 can also be other data based on sleep logs, skin temperature, light exposure, etc. It is assumed that these data contain information on a prior wakefulness period of the subject 10. In the following it will be shown that these data can be combined with data related to the cardiac function of the subject 10 to remove masking effects from the cardiac function signals, resulting in a signal function representing the circadian activity of the subject 10.
From the raw ECG signals, an IBI signal is derived by computing R-R intervals. The resulting IBI signal is further sampled in step 16 at a frequency of 60 Hz. The result of step 16 is a set of first input signal values related to the IBI of the subject 10 in the time interval T. The result of step 14, on the other hand, is a set with the same number of second input signal values indicating the activity of the subject 10 in a time period overlapping the time period T. The first and second input signals are detrended to eliminate zero frequency components.
In the following step 18, the first input signal values and the second input signal values are mathematically combined with the help of an autoregressive moving average model (ARMAX) in which the first input signal values and the second input signal values represent exogenous inputs. Let xnbe the second input signal values and x'n the first input signal values, it is possible within the ARMAX model to calculate a series of yn output signal values representing a linear function of xnand x'n. This function ynis an enhanced circadian rhythm representation containing an information about the acrophase of the circadian rhythm. yn for any n can be computed for xn, x'n through a linear combination of past values.
Described in more detail, the first and second output signal values xn and x'n can be combined for obtaining an enhanced circadian rhythm representation yn via the following linear model:
A(q)yn = B(qi + C(q)wi (1) when n is an non-negative integer, q is a backward shift operator, i. e. qyn= yn- i , wn is a Gaussian white noise process with mean 0 and standard deviation σ and A (q), B (q) and C (q) are polynomials defined as follows:
A (q) = 1 + axq + a2q2 + ... + arqr (2)
Figure imgf000008_0001
bnq + b22q2 + ...+ b2siqs C(q) ^ + clq + c2q2 + ... + cuqu (4)
In these expressions, the values r, [si S2]T, u ¾, by, c; and σ are given constants of the model. The enhanced rhythm representation yn is then subject to a cosinor regression (step 20) of the form: μ + a cos(2nnAt + Φ) (5)
The regression of coefficient φ is the desired estimator of the circadian rhythm, φ represents the acrophase, i. e. the time of oscillation peak of the circadian rhythm function that can be derived from the structure of equation (5) above (step 22). Once the coefficient φ is derived, it can be used to control the timing of a lighting intervention that allows a shifting of the circadian rhythm of the subject 10 and to help to optimize the timing of the circadian activity. For example, more close to the time at which the core body temperature is minimum (around two hours before spontaneous wake up on a free day), light interventions become more effective and shorter treatment durations can be used.
It is noted that the coefficient φ, representing the acrophase of the circadian rhythm function, is only one example of a feature of the circadian rhythm represented by the periodic output signal xn. For example, the amplitude of this signal might be another feature that can be used to control a lighting intervention to optimize the circadian phase of the subject 10. Generally another cardiac function than the heartbeat interval (IBI) of the subject 10 can be used as a first input signal, while another second input signal different from a wrist actigraphy signal can be used to represent the activity of the subject 10, as already mentioned above.
While the invention has been illustrated and described in detail in the drawings and foregoing description, such illustration and description are to be considered illustrative or exemplary and not restrictive; the invention is not limited to the disclosed embodiments. Other variations to the disclosed embodiments can be understood and effected by those skilled in the art in practicing the claimed invention, from a study of the drawings, the disclosure, and the appended claims. In the claims, the word "comprising" does not exclude other elements or steps, and the indefinite article "a" or "an" does not exclude a plurality. The mere fact that certain measures are recited in mutually different dependent claims does not indicate that a combination of these measures cannot be used to advantage. Any reference signs in the claims should not be construed as limiting the scope.

Claims

CLAIMS:
1. A method for determining a feature of the circadian rhythm of a subject (10), comprising the following steps:
measuring a first input signal x'n indicating a cardiac function of the subject (10) over a time period T;
- measuring at least one second input signal xn indicating the activity of the subject (10) over a time period overlapping the time period T;
combining the first input signal x'n and the second input signal xn to a periodic output signal y„ representing the circadian rhythm of the subject, and
determining at least one feature of this periodic output signal yn.
2. The method according to claim 1,
wherein said feature is the acrophase of the periodic output signal yn.
3. The method according to claim 1 or 2,
wherein said feature is the amplitude of the periodic output signal yn.
4. The method according to claim 1 to 3,
wherein the first input signal and the second input signal are gained by sampling to result in a number of first input signal values x'n and second input signal values xn, respectively,
and a number of output signal values yn is computed from the sampled first input signal values x'n and second input signal values xn,.
5. The method according to claim 4,
wherein the periodic output signal is derived from the computed number of output signal values yn by regression analysis.
6. The method according to claim 4 or 5,
wherein the number of output signal values yn is computed from the first input signal values x'n and second input signal values xn according to an autoregressive moving average model (ARMAX) with the first input signal values x'n and second input signal values xn as exogenous inputs.
7. The method according to one of claims 4 to 6,
wherein the first input signal values x'n and the second input signal values xn are gained by sampling at a frequency above 1 Hz.
8. The method according to one of claims 4 to 7,
wherein the first input signal values x'n or the second input signal values xn are gained by sampling original signal values at a first frequency,
said original signal values being gained by sampling at a second frequency higher than the first frequency.
9. The method according to one of the preceding claims,
wherein the first input signal is the heart beat interval (IBI) of the subject (10).
10. The method according to claim 9 in connection with claim 8,
wherein raw ECG signal values are gained by sampling a raw ECG signal at a second frequency of 512 Hz,
an IBI signal is derived from the gained ECG signal values,
and IBI signal values representing the first input signal values are gained by sampling the derived IBI signal at a first frequency of 60 Hz.
11. The method according to one of the preceding claims,
wherein the second input signal is a wrist actigraphy signal of the subject (10).
12. The method according to one of claims 1 to 10,
wherein the second input signal is a signal indicating the light exposure of the subject (10).
PCT/IB2011/054379 2010-10-27 2011-10-05 Method for determining a feature of the circadian rhythm of a subject WO2012056342A2 (en)

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RU2013124041/14A RU2587926C2 (en) 2010-10-27 2011-10-05 Method of determining characteristics of circadian rhythm of subject
US13/881,406 US20130218030A1 (en) 2010-10-27 2011-10-05 Method for determining a feature of the circadian rhythm of a subject
CN201180052087.1A CN103168306B (en) 2010-10-27 2011-10-05 Method for determining a feature of the circadian rhythm of a subject
JP2013535536A JP5865379B2 (en) 2010-10-27 2011-10-05 Method for determining the characteristics of a subject's circadian rhythm
EP11776889.5A EP2633451A2 (en) 2010-10-27 2011-10-05 Method for determining a feature of the circadian rhythm of a subject
BR112013009970A BR112013009970A2 (en) 2010-10-27 2011-10-05 method for determining a characteristic of a patient's circadian rhythm.

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Cited By (8)

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US8768440B1 (en) 2013-03-15 2014-07-01 Apn Health, Llc Multi-channel cardiac measurements
US8812091B1 (en) 2013-03-15 2014-08-19 Apn Health, Llc Multi-channel cardiac measurements
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