Department of Radiology, The First Affiliated Hospital of Anhui Medical University, Hefei 230022, China.
Department of Radiology, The First Affiliated Hospital of Anhui Medical University, Hefei 230022, China.
Neuroimage Clin. 2021;30:102593. doi: 10.1016/j.nicl.2021.102593. Epub 2021 Feb 23.
Working memory impairment is a common feature of psychiatric disorders. Although its neural mechanisms have been extensively examined in healthy subjects or individuals with a certain clinical condition, studies investigating neural predictors of working memory in a transdiagnostic sample are scarce. The objective of this study was to create a transdiagnostic predictive working memory model from whole-brain functional connectivity using connectome-based predictive modeling (CPM), a recently developed machine learning approach. Resting-state functional MRI data from 242 subjects across 4 diagnostic categories (healthy controls and individuals with schizophrenia, bipolar disorder, and attention deficit/hyperactivity) were used to construct dynamic and static functional connectomes. Spatial working memory was assessed by the spatial capacity task. CPM was conducted to predict individual working memory from dynamic and static functional connectivity patterns. Results showed that dynamic connectivity-based CPM models successfully predicted overall working memory capacity and accuracy as well as mean reaction time, yet their static counterparts fell short in the prediction. At the neural level, we found that dynamic connectivity of the frontoparietal and somato-motor networks were negatively correlated with working memory capacity and accuracy, and those of the default mode and visual networks were positively associated with mean reaction time. Moreover, different feature selection thresholds, parcellation strategies and model validation methods as well as diagnostic categories did not significantly influence the prediction results. Our findings not only are coherent with prior reports that dynamic functional connectivity encodes more behavioral information than static connectivity, but also help advance the translation of cognitive "connectome fingerprinting" into real-world application.
工作记忆损伤是精神障碍的一个常见特征。尽管其神经机制已在健康受试者或具有特定临床病症的个体中得到广泛研究,但在跨诊断样本中研究工作记忆的神经预测因子的研究却很少。本研究的目的是使用基于连接组的预测建模(CPM),这是一种新开发的机器学习方法,从全脑功能连接中创建跨诊断的预测性工作记忆模型。来自 4 个诊断类别的 242 名受试者(健康对照者和精神分裂症、双相情感障碍和注意缺陷/多动障碍患者)的静息状态 fMRI 数据用于构建动态和静态功能连接组。通过空间容量任务评估空间工作记忆。进行 CPM 以从动态和静态功能连接模式预测个体工作记忆。结果表明,基于动态连通性的 CPM 模型成功地预测了整体工作记忆容量和准确性以及平均反应时间,但它们的静态对应物在预测中表现不佳。在神经水平上,我们发现额顶和躯体运动网络的动态连通性与工作记忆容量和准确性呈负相关,而默认模式和视觉网络的动态连通性与平均反应时间呈正相关。此外,不同的特征选择阈值、分割策略和模型验证方法以及诊断类别并未显著影响预测结果。我们的研究结果不仅与先前的报告一致,即动态功能连接比静态连接编码更多的行为信息,而且还有助于将认知“连接组指纹”转化为实际应用。