Department of Neurology, Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, USA; Center for Neuroengineering & Therapeutics, University of Pennsylvania, Philadelphia, PA, USA.
Interdisciplinary Computing and Complex BioSystems, School of Computing, Newcastle University, Newcastle upon Tyne, United Kingdom.
Neuroimage Clin. 2023;38:103392. doi: 10.1016/j.nicl.2023.103392. Epub 2023 Mar 30.
Traumatic brain injury results in diffuse axonal injury and the ensuing maladaptive alterations in network function are associated with incomplete recovery and persistent disability. Despite the importance of axonal injury as an endophenotype in TBI, there is no biomarker that can measure the aggregate and region-specific burden of axonal injury. Normative modeling is an emerging quantitative case-control technique that can capture region-specific and aggregate deviations in brain networks at the individual patient level. Our objective was to apply normative modeling in TBI to study deviations in brain networks after primarily complicated mild TBI and study its relationship with other validated measures of injury severity, burden of post-TBI symptoms, and functional impairment.
We analyzed 70 T1-weighted and diffusion-weighted MRIs longitudinally collected from 35 individuals with primarily complicated mild TBI during the subacute and chronic post-injury periods. Each individual underwent longitudinal blood sampling to characterize blood protein biomarkers of axonal and glial injury and assessment of post-injury recovery in the subacute and chronic periods. By comparing the MRI data of individual TBI participants with 35 uninjured controls, we estimated the longitudinal change in structural brain network deviations. We compared network deviation with independent measures of acute intracranial injury estimated from head CT and blood protein biomarkers. Using elastic net regression models, we identified brain regions in which deviations present in the subacute period predict chronic post-TBI symptoms and functional status.
Post-injury structural network deviation was significantly higher than controls in both subacute and chronic periods, associated with an acute CT lesion and subacute blood levels of glial fibrillary acid protein (r = 0.5, p = 0.008) and neurofilament light (r = 0.41, p = 0.02). Longitudinal change in network deviation associated with change in functional outcome status (r = -0.51, p = 0.003) and post-concussive symptoms (BSI: r = 0.46, p = 0.03; RPQ: r = 0.46, p = 0.02). The brain regions where the node deviation index measured in the subacute period predicted chronic TBI symptoms and functional status corresponded to areas known to be susceptible to neurotrauma.
Normative modeling can capture structural network deviations, which may be useful in estimating the aggregate and region-specific burden of network changes induced by TAI. If validated in larger studies, structural network deviation scores could be useful for enrichment of clinical trials of targeted TAI-directed therapies.
创伤性脑损伤导致弥漫性轴索损伤,随之而来的网络功能适应性改变与不完全恢复和持续性残疾有关。尽管轴索损伤作为 TBI 的一个表型很重要,但目前还没有一种生物标志物可以测量轴索损伤的总体和特定区域负担。规范建模是一种新兴的定量病例对照技术,可以在个体患者水平上捕捉脑网络的特定区域和总体偏差。我们的目标是将规范建模应用于 TBI 中,以研究原发性复杂轻度 TBI 后的脑网络偏差,并研究其与其他已验证的损伤严重程度、创伤后症状负担和功能障碍的测量指标的关系。
我们对 35 名原发性复杂轻度 TBI 患者的 70 次 T1 加权和扩散加权 MRI 进行了纵向分析,这些患者在亚急性期和慢性期后均接受了随访。每位患者均进行了纵向血液采样,以检测轴索和神经胶质损伤的血液蛋白生物标志物,并评估亚急性期和慢性期的损伤后恢复情况。通过将个体 TBI 参与者的 MRI 数据与 35 名未受伤的对照者进行比较,我们估计了结构脑网络偏差的纵向变化。我们将网络偏差与头部 CT 估计的急性颅内损伤和血液蛋白生物标志物进行了比较。使用弹性网回归模型,我们确定了在亚急性期出现偏差的脑区,这些偏差可以预测慢性创伤后症状和功能状态。
与对照组相比,亚急性期和慢性期的损伤后结构网络偏差均显著升高,与急性 CT 病变和亚急性期的血胶质纤维酸性蛋白水平(r=0.5,p=0.008)和神经丝轻链(r=0.41,p=0.02)相关。网络偏差的纵向变化与功能结局状态的变化相关(r=-0.51,p=0.003)和创伤后症状(BSI:r=0.46,p=0.03;RPQ:r=0.46,p=0.02)。在亚急性期测量的节点偏差指数预测慢性 TBI 症状和功能状态的脑区与已知易受神经创伤影响的区域相对应。
规范建模可以捕捉结构网络偏差,这可能有助于估计 TAI 引起的网络变化的总体和特定区域负担。如果在更大的研究中得到验证,结构网络偏差评分可能有助于富集针对 TAI 的靶向治疗的临床试验。