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智能手机数据作为双相情感障碍疾病活动的电子生物标志物。

Smartphone data as an electronic biomarker of illness activity in bipolar disorder.

作者信息

Faurholt-Jepsen Maria, Vinberg Maj, Frost Mads, Christensen Ellen Margrethe, Bardram Jakob E, Kessing Lars Vedel

机构信息

The Copenhagen Clinic for Affective Disorder, Rigshospitalet, Psychiatric Center Copenhagen, Copenhagen, Denmark.

The Pervasive Interaction Laboratory (PIT Lab), IT University of Copenhagen, Copenhagen, Denmark.

出版信息

Bipolar Disord. 2015 Nov;17(7):715-28. doi: 10.1111/bdi.12332. Epub 2015 Sep 23.

Abstract

OBJECTIVES

Objective methods are lacking for continuous monitoring of illness activity in bipolar disorder. Smartphones offer unique opportunities for continuous monitoring and automatic collection of real-time data. The objectives of the paper were to test the hypotheses that (i) daily electronic self-monitored data and (ii) automatically generated objective data collected using smartphones correlate with clinical ratings of depressive and manic symptoms in patients with bipolar disorder.

METHODS

Software for smartphones (the MONARCA I system) that collects automatically generated objective data and self-monitored data on illness activity in patients with bipolar disorder was developed by the authors. A total of 61 patients aged 18-60 years and with a diagnosis of bipolar disorder according to ICD-10 used the MONARCA I system for six months. Depressive and manic symptoms were assessed monthly using the Hamilton Depression Rating Scale 17-item (HDRS-17) and the Young Mania Rating Scale (YMRS), respectively. Data are representative of over 400 clinical ratings. Analyses were computed using linear mixed-effect regression models allowing for both between individual variation and within individual variation over time.

RESULTS

Analyses showed significant positive correlations between the duration of incoming and outgoing calls/day and scores on the HDRS-17, and significant positive correlations between the number and duration of incoming calls/day and scores on the YMRS; the number of and duration of outgoing calls/day and scores on the YMRS; and the number of outgoing text messages/day and scores on the YMRS. Analyses showed significant negative correlations between self-monitored data (i.e., mood and activity) and scores on the HDRS-17, and significant positive correlations between self-monitored data (i.e., mood and activity) and scores on the YMRS. Finally, the automatically generated objective data were able to discriminate between affective states.

CONCLUSIONS

Automatically generated objective data and self-monitored data collected using smartphones correlate with clinically rated depressive and manic symptoms and differ between affective states in patients with bipolar disorder. Smartphone apps represent an easy and objective way to monitor illness activity with real-time data in bipolar disorder and may serve as an electronic biomarker of illness activity.

摘要

目的

目前缺乏用于持续监测双相情感障碍疾病活动的客观方法。智能手机为持续监测和自动收集实时数据提供了独特的机会。本文的目的是检验以下假设:(i)每日电子自我监测数据;(ii)使用智能手机收集的自动生成的客观数据与双相情感障碍患者抑郁和躁狂症状的临床评分相关。

方法

作者开发了一款适用于智能手机的软件(MONARCA I系统),用于收集双相情感障碍患者疾病活动的自动生成的客观数据和自我监测数据。共有61名年龄在18至60岁之间、根据ICD - 10诊断为双相情感障碍的患者使用MONARCA I系统六个月。分别每月使用17项汉密尔顿抑郁量表(HDRS - 17)和杨氏躁狂量表(YMRS)评估抑郁和躁狂症状。数据代表了400多次临床评分。使用线性混合效应回归模型进行分析,该模型允许个体间差异和个体随时间的差异。

结果

分析显示,每天来电和去电时长与HDRS - 17评分之间存在显著正相关;每天来电次数和时长与YMRS评分之间存在显著正相关;每天去电次数和时长与YMRS评分之间存在显著正相关;每天短信发送次数与YMRS评分之间存在显著正相关。分析还显示,自我监测数据(即情绪和活动)与HDRS - 17评分之间存在显著负相关,而自我监测数据(即情绪和活动)与YMRS评分之间存在显著正相关。最后,自动生成的客观数据能够区分情感状态。

结论

使用智能手机收集的自动生成的客观数据和自我监测数据与双相情感障碍患者临床评定的抑郁和躁狂症状相关,且在情感状态之间存在差异。智能手机应用程序是一种简单且客观的方式,可通过实时数据监测双相情感障碍的疾病活动,并可作为疾病活动的电子生物标志物。

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