ds-FCRN: three-dimensional dual-stream fully convolutional residual networks and transformer-based global-local feature learning for brain age prediction.

IF 2.7 3区 医学 Q1 ANATOMY & MORPHOLOGY Brain Structure & Function Pub Date : 2025-01-18 DOI:10.1007/s00429-024-02889-y
Yutong Wu, Chen Zhang, Xiangge Ma, Xinyu Zhu, Lan Lin, Miao Tian
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Abstract

The brain undergoes atrophy and cognitive decline with advancing age. The utilization of brain age prediction represents a pioneering methodology in the examination of brain aging. This study aims to develop a deep learning model with high predictive accuracy and interpretability for brain age prediction tasks. The gray matter (GM) density maps obtained from T1 MRI data of 16,377 healthy participants aged 45 to 82 years from the UKB database were included in this study (mean age, 64.27 ± 7.52 , 7811 men). We propose an innovative deep learning architecture for predicting brain age based on GM density maps. The architecture combines a 3D dual-stream fully convolutional residual network (ds-FCRN) with a Transformer-based global-local feature learning paradigm to enhance prediction accuracy. Moreover, we employed Shapley values to elucidate the influence of various brain regions on prediction precision. On a test set of 3,276 healthy subjects (mean age, 64.15 ± 7.45 , 1561 men), our 3D ds-FCRN model achieved a mean absolute error of 2.2 years in brain age prediction, outperforming existing models on the same dataset. The posterior interpretation revealed that the temporal lobe plays the most significant role in the brain age prediction process, while frontal lobe aging is associated with the greatest number of lifestyle factors. Our designed 3D ds-FCRN model achieved high predictive accuracy and high decision transparency. The brain age vectors constructed using Shapley values provided brain region-level insights into life factors associated with abnormal brain aging.

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ds-FCRN:三维双流全卷积残差网络和基于变压器的全局-局部特征学习的脑年龄预测。
随着年龄的增长,大脑萎缩,认知能力下降。脑年龄预测的利用代表了一种开创性的方法在脑老化的检查。本研究旨在开发一种具有高预测精度和可解释性的深度学习模型,用于脑年龄预测任务。本研究纳入了来自UKB数据库的16377名年龄在45 - 82岁的健康参与者(平均年龄64.27±7.52,7811名男性)的T1 MRI数据获得的灰质密度图。我们提出了一种基于GM密度图预测脑年龄的创新深度学习架构。该体系结构将3D双流全卷积残差网络(ds-FCRN)与基于变压器的全局-局部特征学习范式相结合,以提高预测精度。此外,我们采用Shapley值来阐明不同脑区对预测精度的影响。在3276名健康受试者(平均年龄为64.15±7.45,1561名男性)的测试集上,我们的3D ds-FCRN模型在脑年龄预测方面的平均绝对误差为2.2岁,优于同一数据集上的现有模型。后验解释表明,颞叶在大脑年龄预测过程中起着最显著的作用,而额叶衰老与生活方式因素的相关性最大。所设计的三维ds-FCRN模型具有较高的预测精度和决策透明度。使用Shapley值构建的脑年龄向量提供了大脑区域层面的见解,以了解与异常脑衰老相关的生活因素。
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来源期刊
Brain Structure & Function
Brain Structure & Function 医学-解剖学与形态学
CiteScore
6.00
自引率
6.50%
发文量
168
审稿时长
8 months
期刊介绍: Brain Structure & Function publishes research that provides insight into brain structure−function relationships. Studies published here integrate data spanning from molecular, cellular, developmental, and systems architecture to the neuroanatomy of behavior and cognitive functions. Manuscripts with focus on the spinal cord or the peripheral nervous system are not accepted for publication. Manuscripts with focus on diseases, animal models of diseases, or disease-related mechanisms are only considered for publication, if the findings provide novel insight into the organization and mechanisms of normal brain structure and function.
期刊最新文献
Enlargement of the human prefrontal cortex and brain mentalizing network: anatomically homogenous cross-species brain transformation. The expression of transcription factors in the human fetal subthalamic nucleus suggests its origin from the first hypothalamic prosomere. ds-FCRN: three-dimensional dual-stream fully convolutional residual networks and transformer-based global-local feature learning for brain age prediction. Physiological fingerprinting of audiovisual warnings in assisted driving conditions: an investigation of fMRI and peripheral physiological indicators. Basal forebrain innervation of the amygdala: an anatomical and computational exploration.
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