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Detection of acute 3,4-methylenedioxymethamphetamine (MDMA) effects across protocols using automated natural language processing

机译:使用自动自然语言处理检测跨协议的急性3,4-甲基二氧基苯丙胺(MDMA)效应

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The detection of changes in mental states such as those caused by psychoactive drugs relies on clinical assessments that are inherently subjective. Automated speech analysis may represent a novel method to detect objective markers, which could help improve the characterization of these mental states. In this study, we employed computer-extracted speech features from multiple domains (acoustic, semantic, and psycholinguistic) to assess mental states after controlled administration of 3,4-methylenedioxymethamphetamine (MDMA) and intranasal oxytocin. The training/validation set comprised within-participants data from 31 healthy adults who, over four sessions, were administered MDMA (0.75, 1.5?mg/kg), oxytocin (20 IU), and placebo in randomized, double-blind fashion. Participants completed two 5-min speech tasks during peak drug effects. Analyses included group-level comparisons of drug conditions and estimation of classification at the individual level within this dataset and on two independent datasets. Promising classification results were obtained to detect drug conditions, achieving cross-validated accuracies of up to 87% in training/validation and 92% in the independent datasets, suggesting that the detected patterns of speech variability are associated with drug consumption. Specifically, we found that oxytocin seems to be mostly driven by changes in emotion and prosody, which are mainly captured by acoustic features. In contrast, mental states driven by MDMA consumption appear to manifest in multiple domains of speech. Furthermore, we find that the experimental task has an effect on the speech response within these mental states, which can be attributed to presence or absence of an interaction with another individual. These results represent a proof-of-concept application of the potential of speech to provide an objective measurement of mental states elicited during intoxication.
机译:检测精神状态的变化,例如由精神药物引起的那些依赖于本质上是主观的临床评估。自动化语音分析可以代表检测目标标志物的新方法,这有助于改善这些精神状态的表征。在这项研究中,我们使用来自多个域(声学,语义和心理语言)的计算机提取的语音特征,以评估受控给予3,4-甲基二氧基戊酰胺(MDMA)和鼻内催产素的精神状态。培训/验证集合包括31个健康成年人的与会者内部数据,他们在四次会议上均进行MDMA(0.75,1.5?Mg / kg),催产素(20 IU)和随机的双盲时尚的安慰剂。参与者在峰值药物效果中完成了两个5分钟的语音任务。分析包括药物条件的组级别比较和该数据集中的各个层面的分类估算,以及两个独立数据集。获得有前途的分类结果以检测药物条件,在训练/验证中实现高达87%的交叉验证精度,在独立数据集中为92%,表明检测到的语音变异模式与药物消耗相关。具体而言,我们发现催产素似乎主要由情绪和韵律的变化驱动,主要由声学特征捕获。相比之下,MDMA消费驱动的心理状态似乎在言论的多个域中表现出来。此外,我们发现实验任务对这些心理状态内的语音响应产生了影响,这可以归因于存在与另一个人的互动。这些结果代表了概念验证应用言论的潜力,以提供在中毒期间引发的精神状态的客观测量。

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