Center for Computational Psychiatry, Icahn School of Medicine at Mount Sinai, New York, New York.
Institute for Cognitive Science, University of Colorado, Boulder, Colorado.
Biol Psychiatry Cogn Neurosci Neuroimaging. 2023 Mar;8(3):320-330. doi: 10.1016/j.bpsc.2022.04.009. Epub 2022 May 31.
Cannabis is one of the most widely used substances in the world, with usage trending upward in recent years. However, although the psychiatric burden associated with maladaptive cannabis use has been well established, reliable and interpretable biomarkers associated with chronic use remain elusive. In this study, we combine large-scale functional magnetic resonance imaging with machine learning and network analysis and develop an interpretable decoding model that offers both accurate prediction and novel insights into chronic cannabis use.
Chronic cannabis users (n = 166) and nonusing healthy control subjects (n = 124) completed a cue-elicited craving task during functional magnetic resonance imaging. Linear machine learning methods were used to classify individuals into chronic users and nonusers based on whole-brain functional connectivity. Network analysis was used to identify the most predictive regions and communities.
We obtained high (∼80% out-of-sample) accuracy across 4 different classification models, demonstrating that task-evoked connectivity can successfully differentiate chronic cannabis users from nonusers. We also identified key predictive regions implicating motor, sensory, attention, and craving-related areas, as well as a core set of brain networks that contributed to successful classification. The most predictive networks also strongly correlated with cannabis craving within the chronic user group.
This novel approach produced a neural signature of chronic cannabis use that is both accurate in terms of out-of-sample prediction and interpretable in terms of predictive networks and their relation to cannabis craving.
大麻是世界上使用最广泛的物质之一,近年来使用趋势呈上升趋势。然而,尽管与适应不良大麻使用相关的精神负担已经得到充分证实,但与慢性使用相关的可靠且可解释的生物标志物仍然难以捉摸。在这项研究中,我们结合了大规模功能磁共振成像、机器学习和网络分析,并开发了一种可解释的解码模型,该模型既能提供准确的预测,又能为慢性大麻使用提供新的见解。
慢性大麻使用者(n=166)和非使用者健康对照者(n=124)在功能磁共振成像期间完成了线索诱发的渴望任务。线性机器学习方法用于根据全脑功能连接将个体分类为慢性使用者和非使用者。网络分析用于识别最具预测性的区域和社区。
我们在 4 种不同的分类模型中获得了较高的(约 80%的样本外)准确性,证明任务诱发的连接可以成功地区分慢性大麻使用者和非使用者。我们还确定了关键的预测区域,涉及运动、感觉、注意力和渴望相关区域,以及有助于成功分类的核心脑网络。最具预测性的网络也与慢性使用者组中的大麻渴望强烈相关。
这种新方法产生了慢性大麻使用的神经特征,在样本外预测方面既准确,在预测网络及其与大麻渴望的关系方面又具有可解释性。