Centre for Neuroscience and Trauma, Blizard Institute, Wingate Institute of Neurogastroenterology, Barts and the London School of Medicine & Dentistry, Queen Mary University of London, 26 Ashfield Street, London, E1 2AJ, UK.
Department of Neuroimaging, King's College London, Institute of Psychiatry, Psychology & Neuroscience, London, SE5 8AF, UK.
J Physiol. 2019 Mar;597(6):1517-1529. doi: 10.1113/JP277474. Epub 2019 Feb 27.
Nausea is an adverse experience characterised by alterations in autonomic and cerebral function. Susceptibility to nausea is difficult to predict, but machine learning has yet to be applied to this field of study. The severity of nausea that individuals experience is related to the underlying morphology (shape) of the subcortex, namely of the amygdala, caudate and putamen; a functional brain network related to nausea severity was identified, which included the thalamus, cingulate cortices (anterior, mid- and posterior), caudate nucleus and nucleus accumbens. Sympathetic nervous system function and sympathovagal balance, by heart rate variability, was closely related to both this nausea-associated anatomical variation and the functional connectivity network, and machine learning accurately predicted susceptibility or resistance to nausea. These novel anatomical and functional brain biomarkers for nausea severity may permit objective identification of individuals susceptible to nausea, using artificial intelligence/machine learning; brain data may be useful to identify individuals more susceptible to nausea.
Nausea is a highly individual and variable experience. The central processing of nausea remains poorly understood, although numerous influential factors have been proposed, including brain structure and function, as well as autonomic nervous system (ANS) activity. We investigated the role of these factors in nausea severity and if susceptibility to nausea could be predicted using machine learning. Twenty-eight healthy participants (15 males; mean age 24 years) underwent quantification of resting sympathetic and parasympathetic nervous system activity by heart rate variability. All were exposed to a 10-min motion-sickness video during fMRI. Neuroanatomical shape differences of the subcortex and functional brain networks associated with the severity of nausea were investigated. A machine learning neural network was trained to predict nausea susceptibility, or resistance, using resting ANS data and detected brain features. Increasing nausea scores positively correlated with shape variation of the left amygdala, right caudate and bilateral putamen (corrected P = 0.05). A functional brain network linked to increasing nausea severity was identified implicating the thalamus, anterior, middle and posterior cingulate cortices, caudate nucleus and nucleus accumbens (corrected P = 0.043). Both neuroanatomical differences and the functional nausea-brain network were closely related to sympathetic nervous system activity. Using these data, a machine learning model predicted susceptibility to nausea with an overall accuracy of 82.1%. Nausea severity relates to underlying subcortical morphology and a functional brain network; both measures are potential biomarkers in trials of anti-nausea therapies. The use of machine learning should be further investigated as an objective means to develop models predicting nausea susceptibility.
恶心是一种以自主和大脑功能改变为特征的不良体验。恶心的易感性难以预测,但机器学习尚未应用于该研究领域。个体经历的恶心严重程度与皮质下结构(即杏仁核、尾状核和壳核)的潜在形态有关;确定了与恶心严重程度相关的功能性大脑网络,该网络包括丘脑、扣带皮质(前、中、后)、尾状核和伏隔核。心率变异性的交感神经系统功能和交感神经迷走神经平衡与这种与恶心相关的解剖变异和功能连接网络密切相关,机器学习可以准确预测对恶心的易感性或抵抗力。这些用于恶心严重程度的新的解剖学和功能学大脑生物标志物可能允许使用人工智能/机器学习来客观识别易受恶心影响的个体;大脑数据可能有助于识别更易受恶心影响的个体。
恶心是一种高度个体化和多变的体验。尽管提出了许多有影响力的因素,包括大脑结构和功能以及自主神经系统(ANS)活动,但恶心的中枢处理仍知之甚少。我们研究了这些因素在恶心严重程度中的作用,以及是否可以使用机器学习来预测对恶心的易感性。28 名健康参与者(15 名男性;平均年龄 24 岁)接受了心率变异性定量检测自主和副交感神经系统活动。所有人都在 fMRI 期间接受了 10 分钟的运动病视频。研究了皮质下结构的神经解剖学形状差异以及与恶心严重程度相关的功能性大脑网络。使用静息 ANS 数据和检测到的大脑特征训练了一个机器学习神经网络,以预测恶心的易感性或抵抗力。恶心评分的增加与左侧杏仁核、右侧尾状核和双侧壳核的形状变化呈正相关(校正 P=0.05)。确定了与恶心严重程度增加相关的功能性大脑网络,涉及丘脑、前扣带、中扣带和后扣带皮质、尾状核和伏隔核(校正 P=0.043)。神经解剖学差异和功能性恶心-大脑网络都与交感神经系统活动密切相关。使用这些数据,机器学习模型对恶心的易感性进行预测的总体准确率为 82.1%。恶心严重程度与皮质下形态和功能性大脑网络有关;两者都是抗恶心疗法试验中的潜在生物标志物。应进一步研究机器学习的使用,作为开发预测恶心易感性模型的一种客观手段。