Trajectories of sentiment in 11,816 psychoactive narratives

IF 1.8 4区 医学 Q3 CLINICAL NEUROLOGY Human Psychopharmacology: Clinical and Experimental Pub Date : 2023-12-20 DOI:10.1002/hup.2889
Sam Freesun Friedman, Galen Ballentine
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Abstract

Objective

Can machine learning (ML) enable data-driven discovery of how changes in sentiment correlate with different psychoactive experiences? We investigate by training models directly on text testimonials from a diverse 52-drug pharmacopeia.

Methods

Using large language models (i.e. BERT) and 11,816 publicly-available testimonials, we predicted 28-dimensions of sentiment across each narrative, and then validated these predictions with adjudication by a clinical psychiatrist. BERT was then fine-tuned to predict biochemical and demographic information from these narratives. Lastly, canonical correlation analysis linked the drugs' receptor affinities with word usage, revealing 11 statistically-significant latent receptor-experience factors, each mapped to a 3D cortical Atlas.

Results

These methods elucidate a neurobiologically-informed, sequence-sensitive portrait of drug-induced subjective experiences. The models' results converged, revealing a pervasive distinction between the universal psychedelic heights of feeling in contrast to the grim, mundane, and personal experiences of addiction and mental illness. Notably, MDMA was linked to “Love”, DMT and 5-MeO-DMT to “Mystical Experiences” and “Entities and Beings”, and other tryptamines to “Surprise”, “Curiosity” and “Realization".

Conclusions

ML methods can create unified and robust quantifications of subjective experiences with many different psychoactive substances and timescales. The representations learned are evocative and mutually confirmatory, indicating great potential for ML in characterizing psychoactivity.

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11,816 篇心理活动叙事中的情感轨迹。
目的:机器学习(ML)能否以数据驱动的方式发现情感变化与不同精神体验之间的关联?我们通过直接在来自 52 种药物药典的文本证词上训练模型来进行研究:我们使用大型语言模型(即 BERT)和 11,816 篇公开发表的推荐信,预测了每篇推荐信的 28 个情感维度,然后通过临床精神科医生的裁定验证了这些预测。然后对 BERT 进行微调,以预测这些叙述中的生化和人口信息。最后,典型相关分析将药物的受体亲和力与用词联系起来,揭示了 11 个在统计上有意义的潜在受体-体验因素,每个因素都映射到三维皮层图谱上:这些方法从神经生物学角度阐明了药物诱发主观体验的序列敏感性特征。这些模型的结果趋于一致,揭示了普遍的迷幻高度感受与灰暗、世俗和个人的成瘾和精神疾病体验之间的普遍区别。值得注意的是,MDMA 与 "爱 "有关,DMT 和 5-MeO-DMT 与 "神秘体验 "和 "实体与生命 "有关,而其他色胺则与 "惊喜"、"好奇 "和 "领悟 "有关:ML 方法可以对多种不同精神活性物质和时间尺度的主观体验进行统一和稳健的量化。所学到的表征具有唤起性和相互确认性,这表明 ML 在描述精神活性方面具有巨大潜力。
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来源期刊
CiteScore
4.10
自引率
0.00%
发文量
34
审稿时长
6-12 weeks
期刊介绍: Human Psychopharmacology: Clinical and Experimental provides a forum for the evaluation of clinical and experimental research on both new and established psychotropic medicines. Experimental studies of other centrally active drugs, including herbal products, in clinical, social and psychological contexts, as well as clinical/scientific papers on drugs of abuse and drug dependency will also be considered. While the primary purpose of the Journal is to publish the results of clinical research, the results of animal studies relevant to human psychopharmacology are welcome. The following topics are of special interest to the editors and readers of the Journal: -All aspects of clinical psychopharmacology- Efficacy and safety studies of novel and standard psychotropic drugs- Studies of the adverse effects of psychotropic drugs- Effects of psychotropic drugs on normal physiological processes- Geriatric and paediatric psychopharmacology- Ethical and psychosocial aspects of drug use and misuse- Psychopharmacological aspects of sleep and chronobiology- Neuroimaging and psychoactive drugs- Phytopharmacology and psychoactive substances- Drug treatment of neurological disorders- Mechanisms of action of psychotropic drugs- Ethnopsychopharmacology- Pharmacogenetic aspects of mental illness and drug response- Psychometrics: psychopharmacological methods and experimental design
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