School of Biological Sciences & Medical Engineering, Southeast University, Nanjing, China; Key Laboratory of Child Development and Learning Science, Ministry of Education, Southeast University, Nanjing, China.
School of Computer Science and Engineering, Nanjing University of Science and Technology, Nanjing, China.
Biol Psychiatry. 2024 Mar 1;95(5):403-413. doi: 10.1016/j.biopsych.2023.08.005. Epub 2023 Aug 12.
The high heterogeneity of depression prevents us from obtaining reproducible and definite anatomical maps of brain structural changes associated with the disorder, which limits the individualized diagnosis and treatment of patients. In this study, we investigated the clinical issues related to depression according to individual deviations from normative ranges of gray matter volume.
We enrolled 1092 participants, including 187 patients with depression and 905 healthy control participants. Structural magnetic resonance imaging data of healthy control participants from the Human Connectome Project (n = 510) and REST-meta-MDD Project (n = 229) were used to establish a normative model across the life span in adults 18 to 65 years old for each brain region. Deviations from the normative range for 187 patients and 166 healthy control participants recruited from two local hospitals were captured as normative probability maps, which were used to identify the disease risk and treatment-related latent factors.
In contrast to case-control results, our normative modeling approach revealed highly individualized patterns of anatomic abnormalities in depressed patients (less than 11% extreme deviation overlapping for any regions). Based on our classification framework, models trained with individual normative probability maps (area under the receiver operating characteristic curve range, 0.7146-0.7836) showed better performance than models trained with original gray matter volume values (area under the receiver operating characteristic curve range, 0.6800-0.7036), which was verified in an independent external test set. Furthermore, different latent brain structural factors in relation to antidepressant treatment were revealed by a Bayesian model based on normative probability maps, suggesting distinct treatment response and inclination.
Capturing personalized deviations from a normative range could help in understanding the heterogeneous neurobiology of depression and thus guide clinical diagnosis and treatment of depression.
抑郁症的高度异质性使得我们无法获得与该疾病相关的大脑结构变化的可重复和明确的解剖图谱,从而限制了对患者的个体化诊断和治疗。在这项研究中,我们根据个体与灰质体积正常范围的偏差,研究了与抑郁症相关的临床问题。
我们纳入了 1092 名参与者,包括 187 名抑郁症患者和 905 名健康对照者。健康对照组的结构磁共振成像数据来自人类连接组计划(n=510)和 REST-meta-MDD 计划(n=229),用于为 18 至 65 岁的成年人建立横跨整个生命范围的每个脑区的正常模型。187 名患者和 166 名从当地两家医院招募的健康对照者的正常范围偏差被捕获为正常概率图谱,用于识别疾病风险和治疗相关的潜在因素。
与病例对照结果相比,我们的正常建模方法揭示了抑郁患者解剖异常的高度个体化模式(任何区域重叠的极端偏差小于 11%)。基于我们的分类框架,使用个体正常概率图谱训练的模型(接受者操作特征曲线下面积范围,0.7146-0.7836)比使用原始灰质体积值训练的模型(接受者操作特征曲线下面积范围,0.6800-0.7036)表现更好,这在一个独立的外部测试集中得到了验证。此外,基于正常概率图谱的贝叶斯模型揭示了与抗抑郁治疗相关的不同潜在脑结构因素,提示了不同的治疗反应和倾向。
捕捉与正常范围的个性化偏差可以帮助理解抑郁症的异质神经生物学,从而指导抑郁症的临床诊断和治疗。