IEEE J Biomed Health Inform. 2024 Apr;28(4):2223-2234. doi: 10.1109/JBHI.2024.3355020. Epub 2024 Apr 4.
Preterm birth is the leading cause of death in children under five years old, and is associated with a wide sequence of complications in both short and long term. In view of rapid neurodevelopment during the neonatal period, preterm neonates may exhibit considerable functional alterations compared to term ones. However, the identified functional alterations in previous studies merely achieve moderate classification performance, while more accurate functional characteristics with satisfying discrimination ability for better diagnosis and therapeutic treatment is underexplored. To address this problem, we propose a novel brain structural connectivity (SC) guided Vision Transformer (SCG-ViT) to identify functional connectivity (FC) differences among three neonatal groups: preterm, preterm with early postnatal experience, and term. Particularly, inspired by the neuroscience-derived information, a novel patch token of SC/FC matrix is defined, and the SC matrix is then adopted as an effective mask into the ViT model to screen out input FC patch embeddings with weaker SC, and to focus on stronger ones for better classification and identification of FC differences among the three groups. The experimental results on multi-modal MRI data of 437 neonatal brains from publicly released Developing Human Connectome Project (dHCP) demonstrate that SCG-ViT achieves superior classification ability compared to baseline models, and successfully identifies holistically different FC patterns among the three groups. Moreover, these different FCs are significantly correlated with the differential gene expressions of the three groups. In summary, SCG-ViT provides a powerfully brain-guided pipeline of adopting large-scale and data-intensive deep learning models for medical imaging-based diagnosis.
早产是导致 5 岁以下儿童死亡的主要原因,与短期和长期的一系列并发症有关。鉴于新生儿期神经发育迅速,早产儿与足月儿相比可能表现出相当大的功能改变。然而,以前的研究中确定的功能改变仅实现了中等的分类性能,而更准确的具有令人满意的区分能力的功能特征,以更好地诊断和治疗,仍未得到充分探索。为了解决这个问题,我们提出了一种新的基于脑结构连接(SC)的 Vision Transformer(SCG-ViT),以识别三个新生儿组(早产儿、早产儿有早期产后经历和足月儿)之间的功能连接(FC)差异。特别是,受神经科学衍生信息的启发,定义了一种新的 SC/FC 矩阵的补丁标记,然后将 SC 矩阵作为有效掩模应用于 ViT 模型中,以筛选出输入 FC 补丁嵌入的较弱 SC,并关注更强的 SC,以更好地分类和识别三组之间的 FC 差异。来自公开发布的发育人类连接组计划(dHCP)的多模态 MRI 数据对 437 个新生儿大脑的实验结果表明,与基线模型相比,SCG-ViT 具有卓越的分类能力,并成功识别了三组之间整体不同的 FC 模式。此外,这些不同的 FC 与三组的差异基因表达显著相关。总之,SCG-ViT 提供了一种强大的基于大脑的管道,采用大规模和数据密集型深度学习模型进行基于医学成像的诊断。