Key Laboratory of Cognition and Personality, Ministry of Education, Faculty of Psychology, Southwest University, Chongqing, China.
School of Computing Technologies, RMIT University, Melbourne, Australia.
Psychol Med. 2023 Sep;53(12):5786-5799. doi: 10.1017/S0033291722003026. Epub 2022 Sep 30.
Despite increasing knowledge on the neuroimaging patterns of eating disorder (ED) symptoms in non-clinical populations, studies using whole-brain machine learning to identify connectome-based neuromarkers of ED symptomatology are absent. This study examined the association of connectivity within and between large-scale functional networks with specific symptomatic behaviors and cognitions using connectome-based predictive modeling (CPM).
CPM with ten-fold cross-validation was carried out to probe functional networks that were predictive of ED-associated symptomatology, including body image concerns, binge eating, and compensatory behaviors, within the discovery sample of 660 participants. The predictive ability of the identified networks was validated using an independent sample of 821 participants.
The connectivity predictive of body image concerns was identified within and between networks implicated in cognitive control (frontoparietal and medial frontal), reward sensitivity (subcortical), and visual perception (visual). Crucially, the set of connections in the positive network related to body image concerns identified in one sample was generalized to predict body image concerns in an independent sample, suggesting the replicability of this effect.
These findings point to the feasibility of using the functional connectome to predict ED symptomatology in the general population and provide the first evidence that functional interplay among distributed networks predicts body shape/weight concerns.
尽管人们对非临床人群中饮食失调(ED)症状的神经影像学模式有了更多的了解,但使用全脑机器学习来识别 ED 症状的连接组学神经标志物的研究仍然缺乏。本研究使用连接组预测建模(CPM)来检查与特定症状行为和认知相关的大尺度功能网络内和网络间连接的关联。
在发现样本 660 名参与者中,采用十折交叉验证进行 CPM,以探测与 ED 相关症状(包括身体意象问题、暴食和补偿行为)相关的功能网络。使用独立样本 821 名参与者验证了所识别网络的预测能力。
与身体意象问题相关的连接在认知控制(额顶和内侧额)、奖励敏感性(皮质下)和视觉感知(视觉)所涉及的网络内和网络间被识别出来。至关重要的是,在一个样本中与身体意象问题相关的正性网络中的连接集在独立样本中被泛化以预测身体意象问题,这表明了该效应的可重复性。
这些发现表明,使用功能连接组来预测普通人群中的 ED 症状是可行的,并提供了第一个证据,即分布式网络之间的功能相互作用可以预测身体形状/体重的担忧。