Dougherty Robert F, Clarke Patrick, Atli Merve, Kuc Joanna, Schlosser Danielle, Dunlop Boadie W, Hellerstein David J, Aaronson Scott T, Zisook Sidney, Young Allan H, Carhart-Harris Robin, Goodwin Guy M, Ryslik Gregory A
COMPASS Pathways, London, UK.
Emory University, Atlanta, GA, USA.
Psychopharmacology (Berl). 2023 Aug 22. doi: 10.1007/s00213-023-06432-5.
Therapeutic administration of psychedelics has shown significant potential in historical accounts and recent clinical trials in the treatment of depression and other mood disorders. A recent randomized double-blind phase-IIb study demonstrated the safety and efficacy of COMP360, COMPASS Pathways' proprietary synthetic formulation of psilocybin, in participants with treatment-resistant depression.
While the phase-IIb results are promising, the treatment works for a portion of the population and early prediction of outcome is a key objective as it would allow early identification of those likely to require alternative treatment.
Transcripts were made from audio recordings of the psychological support session between participant and therapist 1 day post COMP360 administration. A zero-shot machine learning classifier based on the BART large language model was used to compute two-dimensional sentiment (valence and arousal) for the participant and therapist from the transcript. These scores, combined with the Emotional Breakthrough Index (EBI) and treatment arm were used to predict treatment outcome as measured by MADRS scores. (Code and data are available at https://github.com/compasspathways/Sentiment2D .) RESULTS: Two multinomial logistic regression models were fit to predict responder status at week 3 and through week 12. Cross-validation of these models resulted in 85% and 88% accuracy and AUC values of 88% and 85%.
A machine learning algorithm using NLP and EBI accurately predicts long-term patient response, allowing rapid prognostication of personalized response to psilocybin treatment and insight into therapeutic model optimization. Further research is required to understand if language data from earlier stages in the therapeutic process hold similar predictive power.
在历史记载和近期临床试验中, psychedelics的治疗性给药在治疗抑郁症和其他情绪障碍方面显示出巨大潜力。最近一项随机双盲IIb期研究证明了COMP360(COMPASS Pathways公司专有的合成裸盖菇素配方)对难治性抑郁症患者的安全性和有效性。
虽然IIb期研究结果很有前景,但该治疗方法仅对一部分人群有效,早期预测结果是一个关键目标,因为这将有助于早期识别那些可能需要替代治疗的患者。
在COMP360给药后1天,对参与者与治疗师之间心理支持 session的录音进行转录。基于BART大语言模型的零样本机器学习分类器用于从转录本中计算参与者和治疗师的二维情感(效价和唤醒度)。这些分数与情绪突破指数(EBI)和治疗组相结合,用于预测以蒙哥马利-艾森伯格抑郁评定量表(MADRS)分数衡量的治疗结果。(代码和数据可在https://github.com/compasspathways/Sentiment2D获取。)结果:拟合了两个多项逻辑回归模型,以预测第3周和第12周的反应者状态。这些模型的交叉验证准确率分别为85%和88%,曲线下面积(AUC)值分别为88%和85%。
一种使用自然语言处理(NLP)和EBI的机器学习算法能够准确预测患者的长期反应,从而快速预测对裸盖菇素治疗的个性化反应,并深入了解治疗模型的优化。需要进一步研究以了解治疗过程早期阶段的语言数据是否具有类似的预测能力。