Division of Psychiatry, Haukeland University Hospital, Bergen, Norway.
Department of Clinical Medicine, University of Bergen, Bergen, Norway.
Bipolar Disord. 2024 Aug;26(5):468-478. doi: 10.1111/bdi.13430. Epub 2024 Apr 19.
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.
运动活动的改变是双相情感障碍的典型症状,运动活动的时间序列可以被视为复杂的动力系统。在这样的系统中,早期预警信号(EWS)出现在系统突然转变( tipping point )之前的关键过渡时期。EWS 是由于系统在接近 tipping point 时维持内稳态的能力下降而产生的统计观测。目的是确定双相情感状态变化之前的关键过渡时期。
纳入经过验证的双相诊断的参与者进行为期一年的随访研究,反复评估参与者的情绪。通过佩戴在手腕上的活动记录仪连续记录运动活动。分析随访期间复发的参与者。从运动活动数据中提取出公认的 EWS 特征,并由一个无监督的变化点检测算法进行分析,该算法能够处理多维数据,并开发用于识别时间序列的统计属性何时发生变化。
在 49 名参与者中,有 6 名参与者中有 4 例抑郁和 4 例轻躁狂/躁狂发作,记录活动记录仪的时间为 23.8±0.2 小时/天,持续 39.8±4.6 天。该算法检测到时间序列中的变化点,并确定了跨越 13.5±7.2 天的关键过渡时期。对于抑郁症为 11.4±1.8 天,轻躁狂/躁狂为 15.6±10.2 天。
变化点检测算法似乎能够识别连续流动数据流中即将发生的情绪发作。因此,我们提出了一种创新的方法来预测即将到来的复发,以改善双相情感障碍的临床管理。