Early warning signals observed in motor activity preceding mood state change in bipolar disorder
Introduction Alterations in motor activity are well‐established symptoms of bipolar disorder, and time series of motor activity can be considered complex dynamical systems. In such systems, early warning signals (EWS) occur in a critical transition period preceding a sudden shift (tipping point) in...
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Published in | Bipolar disorders Vol. 26; no. 5; pp. 468 - 478 |
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Main Authors | , , , , , , , , |
Format | Journal Article |
Language | English |
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01.08.2024
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ISSN | 1398-5647 1399-5618 1399-5618 |
DOI | 10.1111/bdi.13430 |
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Abstract | Introduction
Alterations in motor activity are well‐established symptoms of bipolar disorder, and time series of motor activity can be considered complex dynamical systems. In such systems, early warning signals (EWS) occur in a critical transition period preceding a sudden shift (tipping point) in the system. EWS are statistical observations occurring due to a system's declining ability to maintain homeostasis when approaching a tipping point. The aim was to identify critical transition periods preceding bipolar mood state changes.
Methods
Participants with a validated bipolar diagnosis were included to a one‐year follow‐up study, with repeated assessments of the participants' mood. Motor activity was recorded continuously by a wrist‐worn actigraph. Participants assessed to have relapsed during follow‐up were analyzed. Recognized EWS features were extracted from the motor activity data and analyzed by an unsupervised change point detection algorithm, capable of processing multi‐dimensional data and developed to identify when the statistical property of a time series changes.
Results
Of 49 participants, four depressive and four hypomanic/manic relapses among six individuals occurred, recording actigraphy for 23.8 ± 0.2 h/day, for 39.8 ± 4.6 days. The algorithm detected change points in the time series and identified critical transition periods spanning 13.5 ± 7.2 days. For depressions 11.4 ± 1.8, and hypomania/mania 15.6 ± 10.2 days.
Conclusion
The change point detection algorithm seems capable of recognizing impending mood episodes in continuous flowing data streams. Hence, we present an innovative method for forecasting approaching relapses to improve the clinical management of bipolar disorder. |
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AbstractList | Alterations in motor activity are well-established symptoms of bipolar disorder, and time series of motor activity can be considered complex dynamical systems. In such systems, early warning signals (EWS) occur in a critical transition period preceding a sudden shift (tipping point) in the system. EWS are statistical observations occurring due to a system's declining ability to maintain homeostasis when approaching a tipping point. The aim was to identify critical transition periods preceding bipolar mood state changes.INTRODUCTIONAlterations in motor activity are well-established symptoms of bipolar disorder, and time series of motor activity can be considered complex dynamical systems. In such systems, early warning signals (EWS) occur in a critical transition period preceding a sudden shift (tipping point) in the system. EWS are statistical observations occurring due to a system's declining ability to maintain homeostasis when approaching a tipping point. The aim was to identify critical transition periods preceding bipolar mood state changes.Participants with a validated bipolar diagnosis were included to a one-year follow-up study, with repeated assessments of the participants' mood. Motor activity was recorded continuously by a wrist-worn actigraph. Participants assessed to have relapsed during follow-up were analyzed. Recognized EWS features were extracted from the motor activity data and analyzed by an unsupervised change point detection algorithm, capable of processing multi-dimensional data and developed to identify when the statistical property of a time series changes.METHODSParticipants with a validated bipolar diagnosis were included to a one-year follow-up study, with repeated assessments of the participants' mood. Motor activity was recorded continuously by a wrist-worn actigraph. Participants assessed to have relapsed during follow-up were analyzed. Recognized EWS features were extracted from the motor activity data and analyzed by an unsupervised change point detection algorithm, capable of processing multi-dimensional data and developed to identify when the statistical property of a time series changes.Of 49 participants, four depressive and four hypomanic/manic relapses among six individuals occurred, recording actigraphy for 23.8 ± 0.2 h/day, for 39.8 ± 4.6 days. The algorithm detected change points in the time series and identified critical transition periods spanning 13.5 ± 7.2 days. For depressions 11.4 ± 1.8, and hypomania/mania 15.6 ± 10.2 days.RESULTSOf 49 participants, four depressive and four hypomanic/manic relapses among six individuals occurred, recording actigraphy for 23.8 ± 0.2 h/day, for 39.8 ± 4.6 days. The algorithm detected change points in the time series and identified critical transition periods spanning 13.5 ± 7.2 days. For depressions 11.4 ± 1.8, and hypomania/mania 15.6 ± 10.2 days.The change point detection algorithm seems capable of recognizing impending mood episodes in continuous flowing data streams. Hence, we present an innovative method for forecasting approaching relapses to improve the clinical management of bipolar disorder.CONCLUSIONThe change point detection algorithm seems capable of recognizing impending mood episodes in continuous flowing data streams. Hence, we present an innovative method for forecasting approaching relapses to improve the clinical management of bipolar disorder. Intro Alterations in motor activity are well-established symptoms of bipolar disorder, and time series of motor activity can be considered complex dynamical systems. In such systems, early warning signals (EWS) occur in a critical transition period preceding a sudden shift (tipping point) in the system. EWS are statistical observations occurring due to a system's declining ability to maintain homeostasis when approaching a tipping point. The aim was to identify critical transition periods preceding bipolar mood state changes. Methods Participants with a validated bipolar diagnosis were included to a one-year follow-up study, with repeated assessments of the participants’ mood. Motor activity was recorded continuously by a wrist-worn actigraph. Participants assessed to have relapsed during follow-up were analyzed. Recognized EWS features were extracted from the motor activity data and analyzed by an unsupervised change point detection algorithm, capable of processing multi-dimensional data and developed to identify when the statistical property of a time series changes. Results Of 49 participants, four depressive and four hypomanic/manic relapses among six individuals occurred, recording actigraphy for 23.8 ± 0.2 hours/day, for 39.8 ± 4.6 days. The algorithm detected change points in the time series and identified critical transition periods spanning 13.5 ± 7.2 days. For depressions 11.4 ± 1.8, and hypomania/mania 15.6 ± 10.2 days. Conclusion The change point detection algorithm seems capable of recognizing impending mood episodes in continuous flowing data streams. Hence, we present an innovative method for forecasting approaching relapses to improve the clinical management of bipolar disorder. Alterations in motor activity are well-established symptoms of bipolar disorder, and time series of motor activity can be considered complex dynamical systems. In such systems, early warning signals (EWS) occur in a critical transition period preceding a sudden shift (tipping point) in the system. EWS are statistical observations occurring due to a system's declining ability to maintain homeostasis when approaching a tipping point. The aim was to identify critical transition periods preceding bipolar mood state changes. Participants with a validated bipolar diagnosis were included to a one-year follow-up study, with repeated assessments of the participants' mood. Motor activity was recorded continuously by a wrist-worn actigraph. Participants assessed to have relapsed during follow-up were analyzed. Recognized EWS features were extracted from the motor activity data and analyzed by an unsupervised change point detection algorithm, capable of processing multi-dimensional data and developed to identify when the statistical property of a time series changes. Of 49 participants, four depressive and four hypomanic/manic relapses among six individuals occurred, recording actigraphy for 23.8 ± 0.2 h/day, for 39.8 ± 4.6 days. The algorithm detected change points in the time series and identified critical transition periods spanning 13.5 ± 7.2 days. For depressions 11.4 ± 1.8, and hypomania/mania 15.6 ± 10.2 days. The change point detection algorithm seems capable of recognizing impending mood episodes in continuous flowing data streams. Hence, we present an innovative method for forecasting approaching relapses to improve the clinical management of bipolar disorder. IntroductionAlterations in motor activity are well‐established symptoms of bipolar disorder, and time series of motor activity can be considered complex dynamical systems. In such systems, early warning signals (EWS) occur in a critical transition period preceding a sudden shift (tipping point) in the system. EWS are statistical observations occurring due to a system's declining ability to maintain homeostasis when approaching a tipping point. The aim was to identify critical transition periods preceding bipolar mood state changes.MethodsParticipants with a validated bipolar diagnosis were included to a one‐year follow‐up study, with repeated assessments of the participants' mood. Motor activity was recorded continuously by a wrist‐worn actigraph. Participants assessed to have relapsed during follow‐up were analyzed. Recognized EWS features were extracted from the motor activity data and analyzed by an unsupervised change point detection algorithm, capable of processing multi‐dimensional data and developed to identify when the statistical property of a time series changes.ResultsOf 49 participants, four depressive and four hypomanic/manic relapses among six individuals occurred, recording actigraphy for 23.8 ± 0.2 h/day, for 39.8 ± 4.6 days. The algorithm detected change points in the time series and identified critical transition periods spanning 13.5 ± 7.2 days. For depressions 11.4 ± 1.8, and hypomania/mania 15.6 ± 10.2 days.ConclusionThe change point detection algorithm seems capable of recognizing impending mood episodes in continuous flowing data streams. Hence, we present an innovative method for forecasting approaching relapses to improve the clinical management of bipolar disorder. Introduction Alterations in motor activity are well‐established symptoms of bipolar disorder, and time series of motor activity can be considered complex dynamical systems. In such systems, early warning signals (EWS) occur in a critical transition period preceding a sudden shift (tipping point) in the system. EWS are statistical observations occurring due to a system's declining ability to maintain homeostasis when approaching a tipping point. The aim was to identify critical transition periods preceding bipolar mood state changes. Methods Participants with a validated bipolar diagnosis were included to a one‐year follow‐up study, with repeated assessments of the participants' mood. Motor activity was recorded continuously by a wrist‐worn actigraph. Participants assessed to have relapsed during follow‐up were analyzed. Recognized EWS features were extracted from the motor activity data and analyzed by an unsupervised change point detection algorithm, capable of processing multi‐dimensional data and developed to identify when the statistical property of a time series changes. Results Of 49 participants, four depressive and four hypomanic/manic relapses among six individuals occurred, recording actigraphy for 23.8 ± 0.2 h/day, for 39.8 ± 4.6 days. The algorithm detected change points in the time series and identified critical transition periods spanning 13.5 ± 7.2 days. For depressions 11.4 ± 1.8, and hypomania/mania 15.6 ± 10.2 days. Conclusion The change point detection algorithm seems capable of recognizing impending mood episodes in continuous flowing data streams. Hence, we present an innovative method for forecasting approaching relapses to improve the clinical management of bipolar disorder. |
Author | Oedegaard, Ketil Joachim Stautland, Andrea Torresen, Jim Stabell, Lena Antonsen Fasmer, Ole Bernt Jakobsen, Petter Riegler, Michael Alexander Côté‐Allard, Ulysse Nordgreen, Tine |
Author_xml | – sequence: 1 givenname: Petter orcidid: 0000-0002-7671-2456 surname: Jakobsen fullname: Jakobsen, Petter email: petter.jakobsen@helse‐bergen.no organization: University of Bergen – sequence: 2 givenname: Ulysse surname: Côté‐Allard fullname: Côté‐Allard, Ulysse organization: University of Oslo – sequence: 3 givenname: Michael Alexander surname: Riegler fullname: Riegler, Michael Alexander organization: SimulaMet – sequence: 4 givenname: Lena Antonsen orcidid: 0000-0002-7648-6807 surname: Stabell fullname: Stabell, Lena Antonsen organization: University of Bergen – sequence: 5 givenname: Andrea orcidid: 0000-0002-6595-3692 surname: Stautland fullname: Stautland, Andrea organization: University of Bergen – sequence: 6 givenname: Tine surname: Nordgreen fullname: Nordgreen, Tine organization: University of Bergen – sequence: 7 givenname: Jim surname: Torresen fullname: Torresen, Jim organization: University of Oslo – sequence: 8 givenname: Ole Bernt surname: Fasmer fullname: Fasmer, Ole Bernt organization: University of Bergen – sequence: 9 givenname: Ketil Joachim surname: Oedegaard fullname: Oedegaard, Ketil Joachim organization: University of Bergen |
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Alterations in motor activity are well‐established symptoms of bipolar disorder, and time series of motor activity can be considered complex... Alterations in motor activity are well-established symptoms of bipolar disorder, and time series of motor activity can be considered complex dynamical systems.... IntroductionAlterations in motor activity are well‐established symptoms of bipolar disorder, and time series of motor activity can be considered complex... Intro Alterations in motor activity are well-established symptoms of bipolar disorder, and time series of motor activity can be considered complex dynamical... |
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SubjectTerms | Affective disorders Algorithms Bipolar disorder Homeostasis Mood mood disorders Motor activity nonlinear dynamics recurrence Statistical analysis Statistics systems analysis Time series unsupervised machine learning |
Title | Early warning signals observed in motor activity preceding mood state change in bipolar disorder |
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