Laboratory of Brain Atlas and Brain-inspired Intelligence, Institute of Automation, Chinese Academy of Sciences, Beijing, China; School of Artificial Intelligence, University of Chinese Academy of Sciences, Beijing, China; Key Laboratory of Brian Cognition and Brain-inspired Intelligence Technology, Chinese Academy of Sciences, Beijing, China.
Laboratory of Brain Atlas and Brain-inspired Intelligence, Institute of Automation, Chinese Academy of Sciences, Beijing, China; Key Laboratory of Brian Cognition and Brain-inspired Intelligence Technology, Chinese Academy of Sciences, Beijing, China; School of Future Technology, University of Chinese Academy of Sciences, Beijing, China.
Med Image Anal. 2024 Oct;97:103297. doi: 10.1016/j.media.2024.103297. Epub 2024 Aug 8.
Accurate mapping of brain functional subregions at an individual level is crucial. Task-based functional MRI (tfMRI) captures subject-specific activation patterns during various functions and behaviors, facilitating the individual localization of functionally distinct subregions. However, acquiring high-quality tfMRI is time-consuming and resource-intensive in both scientific and clinical settings. The present study proposes a two-stage network model, TS-AI, to individualize an atlas on cortical surfaces through the prediction of tfMRI data. TS-AI first synthesizes a battery of task contrast maps for each individual by leveraging tract-wise anatomical connectivity and resting-state networks. These synthesized maps, along with feature maps of tract-wise anatomical connectivity and resting-state networks, are then fed into an end-to-end deep neural network to individualize an atlas. TS-AI enables the synthesized task contrast maps to be used in individual parcellation without the acquisition of actual task fMRI scans. In addition, a novel feature consistency loss is designed to assign vertices with similar features to the same parcel, which increases individual specificity and mitigates overfitting risks caused by the absence of individual parcellation ground truth. The individualized parcellations were validated by assessing test-retest reliability, homogeneity, and cognitive behavior prediction using diverse reference atlases and datasets, demonstrating the superior performance and generalizability of TS-AI. Sensitivity analysis yielded insights into region-specific features influencing individual variation in functional regionalization. Additionally, TS-AI identified accelerated shrinkage in the medial temporal and cingulate parcels during the progression of Alzheimer's disease, suggesting its potential in clinical research and applications.
准确地对大脑功能亚区进行个体水平的映射至关重要。任务态功能磁共振成像(tfMRI)可以捕获个体在各种功能和行为下的特定激活模式,有助于对功能不同的亚区进行个体定位。然而,在科学和临床环境中,获取高质量的 tfMRI 既耗时又耗费资源。本研究提出了一种两阶段网络模型 TS-AI,通过预测 tfMRI 数据来对皮质表面的图谱进行个体化。TS-AI 首先通过追踪式解剖连接和静息态网络,为每个个体合成一组任务对比图。然后,这些合成的图谱以及追踪式解剖连接和静息态网络的特征图谱,被输入到一个端到端的深度神经网络中,以对图谱进行个体化。TS-AI 使得可以使用合成的任务对比图进行个体分割,而无需获取实际的任务 fMRI 扫描。此外,还设计了一种新颖的特征一致性损失,用于将具有相似特征的顶点分配到同一个区域,这增加了个体的特异性,并减轻了由于缺乏个体分割的真实数据而导致的过拟合风险。通过使用不同的参考图谱和数据集评估测试-重测可靠性、同质性和认知行为预测,对个体化分割进行了验证,结果表明了 TS-AI 的优越性能和泛化能力。敏感性分析深入探讨了影响功能分区个体变异的区域特异性特征。此外,TS-AI 还发现了阿尔茨海默病进展过程中内侧颞叶和扣带回区域的快速收缩,表明其在临床研究和应用中的潜力。