Xu Hui, Xu Jing, Li Dandong
School of Mental Health, Zhejiang Provincial Clinical Research Center for Mental Health, The Affiliated Wenzhou Kangning Hospital, Wenzhou Medical University, Wenzhou 325035, China.
Department of Neurosurgery, The Second Affiliated Hospital and Yuying Children's Hospital of Wenzhou Medical University, Wenzhou 325027, China.
Neurobiol Stress. 2024 Dec 18;34:100705. doi: 10.1016/j.ynstr.2024.100705. eCollection 2025 Jan.
Anxiety, a mental state in healthy individuals, is characterized by apprehension of potential future threats. Though the neurobiological basis of anxiety has been investigated widely in the clinical populations, the underly mechanism of neuroanatomical correlates with anxiety level in healthy young adults is still unclear. In this study, 1080 young adults were enrolled from the Human Connectome Project Young Adult dataset, and machine learning-based elastic net regression models with cross validation, together with linear mix effects (LME) models were adopted to investigate whether the neuroanatomical profiles of structural magnetic resonance imaging indicators associated with anxiety level in healthy young adults. We found multi-region neuroanatomical profiles predicted anxiety problems level and it was still robust in an out-of-sample. The neuroanatomical profiles had widespread brain nodes, including the dorsal lateral prefrontal cortex, supramarginal gyrus, and entorhinal cortex, which implicated in the default mode network and frontoparietal network. This finding was further supported by LME models, which showed significant univariate associations between brain nodes with anxiety. In sum, it's a large sample size study with multivariate analysis methodology to provide evidence that individual anxiety problems level can be predicted by machine learning-based models in healthy young adults. The neuroanatomical signature including hub nodes involved theoretically relevant brain networks robustly predicts anxiety, which could aid the assessment of potential high-risk of anxiety individuals.
焦虑是健康个体的一种心理状态,其特征是对未来潜在威胁的担忧。尽管焦虑的神经生物学基础已在临床人群中得到广泛研究,但健康年轻成年人中神经解剖学与焦虑水平相关的潜在机制仍不清楚。在本研究中,从人类连接组计划青年成人数据集中招募了1080名年轻成年人,并采用基于机器学习的弹性网络回归模型和交叉验证,以及线性混合效应(LME)模型,来研究健康年轻成年人中与焦虑水平相关的结构磁共振成像指标的神经解剖学特征。我们发现多区域神经解剖学特征可预测焦虑问题水平,并且在样本外仍具有稳健性。神经解剖学特征具有广泛的脑节点,包括背外侧前额叶皮层、缘上回和内嗅皮层,这些都与默认模式网络和额顶网络有关。LME模型进一步支持了这一发现,该模型显示脑节点与焦虑之间存在显著的单变量关联。总之,这是一项采用多变量分析方法的大样本量研究,为基于机器学习的模型能够预测健康年轻成年人的个体焦虑问题水平提供了证据。包括枢纽节点在内的神经解剖学特征涉及理论上相关的脑网络,能够稳健地预测焦虑,这有助于评估焦虑个体的潜在高风险。