Faurholt-Jepsen M, Busk J, Frost M, Vinberg M, Christensen E M, Winther O, Bardram J E, Kessing L V
Psychiatric Center Copenhagen, Rigshospitalet, Copenhagen, Denmark.
DTU Compute, Technical University of Denmark (DTU), Lyngby, Denmark.
Transl Psychiatry. 2016 Jul 19;6(7):e856. doi: 10.1038/tp.2016.123.
Changes in speech have been suggested as sensitive and valid measures of depression and mania in bipolar disorder. The present study aimed at investigating (1) voice features collected during phone calls as objective markers of affective states in bipolar disorder and (2) if combining voice features with automatically generated objective smartphone data on behavioral activities (for example, number of text messages and phone calls per day) and electronic self-monitored data (mood) on illness activity would increase the accuracy as a marker of affective states. Using smartphones, voice features, automatically generated objective smartphone data on behavioral activities and electronic self-monitored data were collected from 28 outpatients with bipolar disorder in naturalistic settings on a daily basis during a period of 12 weeks. Depressive and manic symptoms were assessed using the Hamilton Depression Rating Scale 17-item and the Young Mania Rating Scale, respectively, by a researcher blinded to smartphone data. Data were analyzed using random forest algorithms. Affective states were classified using voice features extracted during everyday life phone calls. Voice features were found to be more accurate, sensitive and specific in the classification of manic or mixed states with an area under the curve (AUC)=0.89 compared with an AUC=0.78 for the classification of depressive states. Combining voice features with automatically generated objective smartphone data on behavioral activities and electronic self-monitored data increased the accuracy, sensitivity and specificity of classification of affective states slightly. Voice features collected in naturalistic settings using smartphones may be used as objective state markers in patients with bipolar disorder.
言语变化已被认为是双相情感障碍中抑郁和躁狂的敏感且有效的指标。本研究旨在调查:(1)电话通话期间收集的语音特征作为双相情感障碍情感状态的客观标志物;(2)将语音特征与自动生成的关于行为活动的客观智能手机数据(例如,每天的短信和电话数量)以及关于疾病活动的电子自我监测数据(情绪)相结合,是否会提高作为情感状态标志物的准确性。在12周的时间里,研究人员每天在自然环境中使用智能手机从28名双相情感障碍门诊患者那里收集语音特征、自动生成的关于行为活动的客观智能手机数据以及电子自我监测数据。由对智能手机数据不知情的研究人员分别使用汉密尔顿抑郁评定量表17项和杨氏躁狂评定量表评估抑郁和躁狂症状。使用随机森林算法对数据进行分析。利用日常生活电话通话期间提取的语音特征对情感状态进行分类。结果发现,与抑郁状态分类的曲线下面积(AUC)=0.78相比,语音特征在躁狂或混合状态分类中更准确、敏感和特异,AUC = 0.89。将语音特征与自动生成的关于行为活动的客观智能手机数据以及电子自我监测数据相结合,可略微提高情感状态分类的准确性、敏感性和特异性。在自然环境中使用智能手机收集的语音特征可作为双相情感障碍患者的客观状态标志物。