Martínez-Sánchez Francisco, Muela-Martínez José Antonio, Cortés-Soto Pedro, García Meilán Juan José, Vera Ferrándiz Juan Antonio, Egea Caparrós Amaro, Pujante Valverde Isabel María
Universidad de Murcia (Spain).
Universidad de Jaén (Spain).
Span J Psychol. 2015 Nov 2;18:E86. doi: 10.1017/sjp.2015.85.
Emotional states, attitudes and intentions are often conveyed by modulations in the tone of voice. Impaired recognition of emotions from a tone of voice (receptive prosody) has been described as characteristic symptoms of schizophrenia. However, the ability to express non-verbal information in speech (expressive prosody) has been understudied. This paper describes a useful technique for quantifying the degree of expressive prosody deficits in schizophrenia, using a semi-automatic method, and evaluates this method's ability to discriminate between patient and control groups. Forty-five medicated patients with a diagnosis of schizophrenia were matched with thirty-five healthy comparison subjects. Production of expressive prosodic speech was analyzed using variation in fundamental frequency (F0) measures on an emotionally neutral reading task. Results revealed that patients with schizophrenia exhibited significantly more pauses (p < .001), were slower (p < .001), and showed less pitch variability in speech (p < .05) and fewer variations in syllable timing (p < .001) than control subjects. These features have been associated with «flat» speech prosody. Signal processing algorithms applied to speech were shown to be capable of discriminating between patients and controls with an accuracy of 93.8%. These speech parameters may have a diagnostic and prognosis value and therefore could be used as a dependent measure in clinical trials.
情绪状态、态度和意图通常通过语调的变化来传达。从语调中识别情绪受损(感受性韵律)已被描述为精神分裂症的特征性症状。然而,言语中表达非语言信息的能力(表达性韵律)尚未得到充分研究。本文描述了一种使用半自动方法量化精神分裂症患者表达性韵律缺陷程度的有用技术,并评估该方法区分患者组和对照组的能力。45名诊断为精神分裂症的服药患者与35名健康对照受试者进行匹配。使用情感中性阅读任务中基频(F0)测量的变化来分析表达性韵律言语的产生。结果显示,与对照受试者相比,精神分裂症患者的停顿明显更多(p <.001),语速更慢(p <.001),言语中的音高变异性更小(p <.05),音节时长变化更少(p <.001)。这些特征与“平淡”的言语韵律有关。应用于言语的信号处理算法能够以93.8%的准确率区分患者和对照。这些言语参数可能具有诊断和预后价值,因此可作为临床试验中的因变量指标。