Acoustic features from speech as markers of depressive and manic symptoms in bipolar disorder: A prospective study.

IF 5.3 2区 医学 Q1 PSYCHIATRY
Katarzyna Kaczmarek-Majer, Monika Dominiak, Anna Z Antosik, Olgierd Hryniewicz, Olga Kamińska, Karol Opara, Jan Owsiński, Weronika Radziszewska, Małgorzata Sochacka, Łukasz Święcicki
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引用次数: 0

Abstract

Introduction: Voice features could be a sensitive marker of affective state in bipolar disorder (BD). Smartphone apps offer an excellent opportunity to collect voice data in the natural setting and become a useful tool in phase prediction in BD.

Aims of the study: We investigate the relations between the symptoms of BD, evaluated by psychiatrists, and patients' voice characteristics. A smartphone app extracted acoustic parameters from the daily phone calls of n = 51 patients. We show how the prosodic, spectral, and voice quality features correlate with clinically assessed affective states and explore their usefulness in predicting the BD phase.

Methods: A smartphone app (BDmon) was developed to collect the voice signal and extract its physical features. BD patients used the application on average for 208 days. Psychiatrists assessed the severity of BD symptoms using the Hamilton depression rating scale -17 and the Young Mania rating scale. We analyze the relations between acoustic features of speech and patients' mental states using linear generalized mixed-effect models.

Results: The prosodic, spectral, and voice quality parameters, are valid markers in assessing the severity of manic and depressive symptoms. The accuracy of the predictive generalized mixed-effect model is 70.9%-71.4%. Significant differences in the effect sizes and directions are observed between female and male subgroups. The greater the severity of mania in males, the louder (β = 1.6) and higher the tone of voice (β = 0.71), more clearly (β = 1.35), and more sharply they speak (β = 0.95), and their conversations are longer (β = 1.64). For females, the observations are either exactly the opposite-the greater the severity of mania, the quieter (β = -0.27) and lower the tone of voice (β = -0.21) and less clearly (β = -0.25) they speak - or no correlations are found (length of speech). On the other hand, the greater the severity of bipolar depression in males, the quieter (β = -1.07) and less clearly they speak (β = -1.00). In females, no distinct correlations between the severity of depressive symptoms and the change in voice parameters are found.

Conclusions: Speech analysis provides physiological markers of affective symptoms in BD and acoustic features extracted from speech are effective in predicting BD phases. This could personalize monitoring and care for BD patients, helping to decide whether a specialist should be consulted.

作为双相情感障碍抑郁症和躁狂症状标记的语音声学特征:前瞻性研究。
简介语音特征可能是双相情感障碍(BD)患者情感状态的敏感标记。智能手机应用程序提供了在自然环境中收集语音数据的绝佳机会,并成为预测躁狂症阶段的有用工具:我们研究了由精神科医生评估的 BD 症状与患者声音特征之间的关系。智能手机应用程序从 51 名患者的日常通话中提取了声音参数。我们展示了拟声、频谱和语音质量特征与临床评估的情感状态之间的相关性,并探讨了它们在预测 BD 阶段中的作用:开发了一款智能手机应用程序(BDmon),用于收集语音信号并提取其物理特征。BD患者平均使用该应用程序208天。精神科医生使用汉密尔顿抑郁评分量表-17 和青年躁狂评分量表评估 BD 症状的严重程度。我们使用线性广义混合效应模型分析了语音声学特征与患者精神状态之间的关系:结果:拟声、频谱和语音质量参数是评估躁狂和抑郁症状严重程度的有效标记。预测性广义混合效应模型的准确率为 70.9%-71.4%。女性和男性亚组之间的效应大小和方向存在显著差异。男性躁狂症的严重程度越高,他们说话的声音越大(β = 1.6)、语调越高(β = 0.71)、越清晰(β = 1.35)、越尖锐(β = 0.95),谈话的时间越长(β = 1.64)。对于女性,观察结果要么正好相反--躁狂症越严重,她们说话的声音越小(β = -0.27),语调越低(β = -0.21),说话越不清楚(β = -0.25)--要么没有相关性(说话时间长)。另一方面,男性双相抑郁的严重程度越高,他们说话的声音越小(β = -1.07 ),说话的清晰度越低(β = -1.00 )。在女性中,抑郁症状的严重程度与语音参数的变化之间没有明显的相关性:结论:语音分析提供了 BD 情感症状的生理标记,从语音中提取的声学特征可有效预测 BD 阶段。这可以对 BD 患者进行个性化监测和护理,帮助决定是否应咨询专科医生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Acta Psychiatrica Scandinavica
Acta Psychiatrica Scandinavica 医学-精神病学
CiteScore
11.20
自引率
3.00%
发文量
135
审稿时长
6-12 weeks
期刊介绍: Acta Psychiatrica Scandinavica acts as an international forum for the dissemination of information advancing the science and practice of psychiatry. In particular we focus on communicating frontline research to clinical psychiatrists and psychiatric researchers. Acta Psychiatrica Scandinavica has traditionally been and remains a journal focusing predominantly on clinical psychiatry, but translational psychiatry is a topic of growing importance to our readers. Therefore, the journal welcomes submission of manuscripts based on both clinical- and more translational (e.g. preclinical and epidemiological) research. When preparing manuscripts based on translational studies for submission to Acta Psychiatrica Scandinavica, the authors should place emphasis on the clinical significance of the research question and the findings. Manuscripts based solely on preclinical research (e.g. animal models) are normally not considered for publication in the Journal.
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