Department of Psychosis Studies, Institute of Psychiatry, Psychology & Neuroscience, King's College London, London, UK.
Institute of Psychiatry, Psychology and Neuroscience, Department of Biostatistics & Health Informatics, King's College London, London, UK.
Transl Psychiatry. 2024 Mar 21;14(1):156. doi: 10.1038/s41398-024-02851-w.
Automatically extracted measures of speech constitute a promising marker of psychosis as disorganized speech is associated with psychotic symptoms and predictive of psychosis-onset. The potential of speech markers is, however, hampered by (i) lengthy assessments in laboratory settings and (ii) manual transcriptions. We investigated whether a short, scalable data collection (online) and processing (automated transcription) procedure would provide data of sufficient quality to extract previously validated speech measures. To evaluate the fit of our approach for purpose, we assessed speech in relation to psychotic-like experiences in the general population. Participants completed an 8-minute-long speech task online. Sample 1 included measures of psychometric schizotypy and delusional ideation (N = 446). Sample 2 included a low and high psychometric schizotypy group (N = 144). Recordings were transcribed both automatically and manually, and connectivity, semantic, and syntactic speech measures were extracted for both types of transcripts. 73%/86% participants in sample 1/2 completed the experiment. Nineteen out of 25 speech measures were strongly (r > 0.7) and significantly correlated between automated and manual transcripts in both samples. Amongst the 14 connectivity measures, 11 showed a significant relationship with delusional ideation. For the semantic and syntactic measures, On Topic score and the Frequency of personal pronouns were negatively correlated with both schizotypy and delusional ideation. Combined with demographic information, the speech markers could explain 11-14% of the variation of delusional ideation and schizotypy in Sample 1 and could discriminate between high-low schizotypy with high accuracy (0.72-0.70, AUC = 0.78-0.79) in Sample 2. The moderate to high retention rate, strong correlation of speech measures across manual and automated transcripts and sensitivity to psychotic-like experiences provides initial evidence that online collected speech in combination with automatic transcription is a feasible approach to increase accessibility and scalability of speech-based assessment of psychosis.
自动提取的语音测量结果是精神分裂症的一个很有前途的标志物,因为不连贯的语音与精神病症状有关,并且可以预测精神病的发作。然而,语音标志物的潜力受到以下因素的阻碍:(i)在实验室环境中进行冗长的评估,(ii)手动转录。我们研究了短时间、可扩展的数据采集(在线)和处理(自动转录)程序是否会提供足够高质量的数据来提取以前验证过的语音测量结果。为了评估我们方法的适用性,我们评估了与一般人群中的精神病样体验相关的语音。参与者在线完成了一个 8 分钟长的演讲任务。样本 1 包括心理分裂症和妄想观念的测量(N=446)。样本 2 包括低和高心理分裂症组(N=144)。记录同时进行自动和手动转录,并为两种类型的转录提取连通性、语义和句法语音测量结果。样本 1/2 中分别有 73%/86%的参与者完成了实验。在两个样本中,25 个语音测量结果中有 19 个在自动和手动转录之间具有强(r>0.7)和显著相关性。在 14 个连通性测量中,11 个与妄想观念呈显著相关。对于语义和句法测量,On Topic 得分和人称代词的频率与分裂症和妄想观念呈负相关。结合人口统计学信息,语音标志物可以解释样本 1 中妄想观念和分裂症变异的 11-14%,并且可以在样本 2 中以高准确率区分高-低分裂症(0.72-0.70,AUC=0.78-0.79)。适度到高的保留率、手动和自动转录之间语音测量结果的强相关性以及对精神病样体验的敏感性,为在线采集语音与自动转录相结合是一种可行的方法,可提高基于语音的精神病评估的可及性和可扩展性提供了初步证据。