Imaging research center, Department of Radiology, Cincinnati Children's Hospital Medical Center, Cincinnati, OH, USA.
Imaging research center, Department of Radiology, Cincinnati Children's Hospital Medical Center, Cincinnati, OH, USA; Neurodevelopmental Disorders Prevention Center, Perinatal Institute, Cincinnati Children's Hospital Medical Center, Cincinnati, OH, USA; Artificial Intelligence Imaging Research Center, Cincinnati Children's Hospital Medical Center, Cincinnati, OH, USA; Department of Radiology, University of Cincinnati College of Medicine, Cincinnati, OH, USA.
Comput Methods Programs Biomed. 2024 Dec;257:108479. doi: 10.1016/j.cmpb.2024.108479. Epub 2024 Oct 26.
Very preterm infants are susceptible to neurodevelopmental impairments, necessitating early detection of prognostic biomarkers for timely intervention. The study aims to explore possible functional biomarkers for very preterm infants at born that relate to their future cognitive and motor development using resting-state fMRI. Prior studies are limited by the sample size and suffer from efficient functional connectome (FC) construction algorithms that can handle the noisy data contained in neonatal time series, leading to equivocal findings. Therefore, we first propose an enhanced functional connectome construction algorithm as a prerequisite step. We then apply the new FC construction algorithm to our large prospective very preterm cohort to explore multi-level neurodevelopmental biomarkers.
There exists an intrinsic relationship between the structural connectome (SC) and FC, with a notable coupling between the two. This observation implies a putative property of graph signal smoothness on the SC as well. Yet, this property has not been fully exploited for constructing intrinsic dFC. In this study, we proposed an advanced dynamic FC (dFC) learning model, dFC-Igloo, which leveraged SC information to iteratively refine dFC estimations by applying graph signal smoothness to both FC and SC. The model was evaluated on artificial small-world graphs and simulated graph signals.
The proposed model achieved the best and most robust recovery of the ground truth graph across different noise levels and simulated SC pairs from the simulation. The model was further applied to a cohort of very preterm infants from five Neonatal Intensive Care Units, where an enhanced dFC was obtained for each infant. Based on the improved dFC, we identified neurodevelopmental biomarkers for neonates across connectome-wide, regional, and subnetwork scales.
The identified markers correlate with cognitive and motor developmental outcomes, offering insights into early brain development and potential neurodevelopmental challenges.
极早产儿易发生神经发育损伤,需要早期发现预后生物标志物以进行及时干预。本研究旨在使用静息态 fMRI 探索与极早产儿未来认知和运动发育相关的出生时可能的功能生物标志物。先前的研究受到样本量的限制,且受益于能够处理新生儿时间序列中包含的噪声数据的高效功能连接组(FC)构建算法,导致结果存在争议。因此,我们首先提出一种增强的功能连接组构建算法作为前提步骤。然后,我们将新的 FC 构建算法应用于我们的大型前瞻性极早产儿队列中,以探索多层次神经发育生物标志物。
结构连接组(SC)和 FC 之间存在内在关系,两者之间存在显著的耦合。这种观察结果意味着 SC 上存在图信号平滑的假定特性。然而,这一特性尚未被充分利用于构建内在的 FC。在这项研究中,我们提出了一种先进的动态 FC(dFC)学习模型,dFC-Igloo,该模型利用 SC 信息,通过将图信号平滑应用于 FC 和 SC,迭代地改进 dFC 估计。该模型在人工小世界图和模拟图信号上进行了评估。
该模型在不同噪声水平和模拟 SC 对的情况下,实现了对地面真实图的最佳和最稳健的恢复。该模型进一步应用于来自五个新生儿重症监护病房的极早产儿队列,为每个婴儿获得了增强的 dFC。基于改进的 dFC,我们在整个连接组、区域和子网尺度上识别了新生儿的神经发育生物标志物。
所识别的标记物与认知和运动发育结果相关,为早期脑发育和潜在的神经发育挑战提供了深入的了解。