Center for Depression, Anxiety and Stress Research, McLean Hospital, Belmont, MA, USA.
Department of Psychiatry, Harvard Medical School, Boston, MA, USA.
Neuropsychopharmacology. 2024 Jun;49(7):1162-1170. doi: 10.1038/s41386-024-01842-1. Epub 2024 Mar 13.
Clinical assessments often fail to discriminate between unipolar and bipolar depression and identify individuals who will develop future (hypo)manic episodes. To address this challenge, we developed a brain-based graph-theoretical predictive model (GPM) to prospectively map symptoms of anhedonia, impulsivity, and (hypo)mania. Individuals seeking treatment for mood disorders (n = 80) underwent an fMRI scan, including (i) resting-state and (ii) a reinforcement-learning (RL) task. Symptoms were assessed at baseline as well as at 3- and 6-month follow-ups. A whole-brain functional connectome was computed for each fMRI task, and the GPM was applied for symptom prediction using cross-validation. Prediction performance was evaluated by comparing the GPM to a corresponding null model. In addition, the GPM was compared to the connectome-based predictive modeling (CPM). Cross-sectionally, the GPM predicted anhedonia from the global efficiency (a graph theory metric that quantifies information transfer across the connectome) during the RL task, and impulsivity from the centrality (a metric that captures the importance of a region) of the left anterior cingulate cortex during resting-state. At 6-month follow-up, the GPM predicted (hypo)manic symptoms from the local efficiency of the left nucleus accumbens during the RL task and anhedonia from the centrality of the left caudate during resting-state. Notably, the GPM outperformed the CPM, and GPM derived from individuals with unipolar disorders predicted anhedonia and impulsivity symptoms for individuals with bipolar disorders. Importantly, the generalizability of cross-sectional models was demonstrated in an external validation sample. Taken together, across DSM mood diagnoses, efficiency and centrality of the reward circuit predicted symptoms of anhedonia, impulsivity, and (hypo)mania, cross-sectionally and prospectively. The GPM is an innovative modeling approach that may ultimately inform clinical prediction at the individual level.
临床评估往往无法区分单相和双相抑郁症,并识别出那些将出现未来(轻躁狂)发作的个体。为了解决这一挑战,我们开发了一种基于大脑的图论预测模型(GPM),以前瞻性地绘制快感缺失、冲动和(轻躁狂)的症状图谱。寻求治疗情绪障碍的个体(n=80)接受了 fMRI 扫描,包括(i)静息状态和(ii)强化学习(RL)任务。在基线以及 3 个月和 6 个月的随访中评估了症状。为每个 fMRI 任务计算了全脑功能连接组,并使用交叉验证应用 GPM 进行症状预测。通过将 GPM 与相应的零模型进行比较来评估预测性能。此外,将 GPM 与基于连接组的预测建模(CPM)进行了比较。在横断面上,GPM 从 RL 任务中的全局效率(一种量化整个连接组中信息传递的图论度量)预测了快感缺失,从静息状态时左前扣带皮层的中心度(一种捕获区域重要性的度量)预测了冲动。在 6 个月的随访中,GPM 从 RL 任务中左伏隔核的局部效率预测了(轻躁狂)症状,从静息状态时左尾状核的中心度预测了快感缺失。值得注意的是,GPM 优于 CPM,并且来自单相障碍个体的 GPM 预测了双相障碍个体的快感缺失和冲动症状。重要的是,在外部验证样本中证明了横截面模型的可推广性。综上所述,在 DSM 情绪诊断中,奖励回路的效率和中心度横断面对预测快感缺失、冲动和(轻躁狂)症状,前瞻性地预测了快感缺失、冲动和(轻躁狂)症状。GPM 是一种创新的建模方法,最终可能会为个体水平的临床预测提供信息。