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基于可解释多特征的卷积神经网络在轻度创伤性脑损伤中的脑年龄预测

Brain age prediction using interpretable multi-feature-based convolutional neural network in mild traumatic brain injury.

作者信息

Zhang Xiang, Pan Yizhen, Wu Tingting, Zhao Wenpu, Zhang Haonan, Ding Jierui, Ji Qiuyu, Jia Xiaoyan, Li Xuan, Lee Zhiqi, Zhang Jie, Bai Lijun

机构信息

The Key Laboratory of Biomedical Information Engineering, Ministry of Education, Department of Biomedical Engineering, School of Life Science and Technology, Xi'an Jiaotong University, Xi'an 710049, China.

Department of Radiation Medicine, School of Preventive Medicine, Air Force Medical University, Xi'an 710032, China.

出版信息

Neuroimage. 2024 Aug 15;297:120751. doi: 10.1016/j.neuroimage.2024.120751. Epub 2024 Jul 22.

Abstract

BACKGROUND

Convolutional neural network (CNN) can capture the structural features changes of brain aging based on MRI, thus predict brain age in healthy individuals accurately. However, most studies use single feature to predict brain age in healthy individuals, ignoring adding information from multiple sources and the changes in brain aging patterns after mild traumatic brain injury (mTBI) were still unclear.

METHODS

Here, we leveraged the structural data from a large, heterogeneous dataset (N = 1464) to implement an interpretable 3D combined CNN model for brain-age prediction. In addition, we also built an atlas-based occlusion analysis scheme with a fine-grained human Brainnetome Atlas to reveal the age-sstratified contributed brain regions for brain-age prediction in healthy controls (HCs) and mTBI patients. The correlations between brain predicted age gaps (brain-PAG) following mTBI and individual's cognitive impairment, as well as the level of plasma neurofilament light were also examined.

RESULTS

Our model utilized multiple 3D features derived from T1w data as inputs, and reduced the mean absolute error (MAE) of age prediction to 3.08 years and improved Pearson's r to 0.97 on 154 HCs. The strong generalizability of our model was also validated across different centers. Regions contributing the most significantly to brain age prediction were the caudate and thalamus for HCs and patients with mTBI, and the contributive regions were mostly located in the subcortical areas throughout the adult lifespan. The left hemisphere was confirmed to contribute more in brain age prediction throughout the adult lifespan. Our research showed that brain-PAG in mTBI patients was significantly higher than that in HCs in both acute and chronic phases. The increased brain-PAG in mTBI patients was also highly correlated with cognitive impairment and a higher level of plasma neurofilament light, a marker of neurodegeneration. The higher brain-PAG and its correlation with severe cognitive impairment showed a longitudinal and persistent nature in patients with follow-up examinations.

CONCLUSION

We proposed an interpretable deep learning framework on a relatively large dataset to accurately predict brain age in both healthy individuals and mTBI patients. The interpretable analysis revealed that the caudate and thalamus became the most contributive role across the adult lifespan in both HCs and patients with mTBI. The left hemisphere contributed significantly to brain age prediction may enlighten us to be concerned about the lateralization of brain abnormality in neurological diseases in the future. The proposed interpretable deep learning framework might also provide hope for testing the performance of related drugs and treatments in the future.

摘要

背景

卷积神经网络(CNN)可以基于磁共振成像(MRI)捕捉脑老化的结构特征变化,从而准确预测健康个体的脑龄。然而,大多数研究使用单一特征来预测健康个体的脑龄,忽略了多源信息的融合,并且轻度创伤性脑损伤(mTBI)后脑老化模式的变化仍不清楚。

方法

在此,我们利用来自一个大型异质性数据集(N = 1464)的结构数据,实现了一个用于脑龄预测的可解释三维组合CNN模型。此外,我们还构建了一种基于图谱的遮挡分析方案,并结合精细的人类脑网络组图谱,以揭示健康对照(HCs)和mTBI患者中脑龄预测的年龄分层贡献脑区。我们还研究了mTBI后脑预测年龄差距(brain-PAG)与个体认知障碍以及血浆神经丝轻链水平之间的相关性。

结果

我们的模型利用从T1w数据中提取的多个三维特征作为输入,在154名HCs中,将年龄预测的平均绝对误差(MAE)降低至3.08岁,并将皮尔逊相关系数(Pearson's r)提高至0.97。我们模型的强大泛化能力也在不同中心得到了验证。对脑龄预测贡献最显著的区域,对于HCs和mTBI患者来说都是尾状核和丘脑,并且在整个成年期,这些贡献区域大多位于皮层下区域。在整个成年期,左半球在脑龄预测中被证实贡献更大。我们的研究表明,mTBI患者在急性期和慢性期的brain-PAG均显著高于HCs。mTBI患者中增加的brain-PAG也与认知障碍以及更高水平的血浆神经丝轻链(神经退行性变的标志物)高度相关。在接受随访检查的患者中,较高的brain-PAG及其与严重认知障碍的相关性呈现出纵向和持续性。

结论

我们在一个相对较大的数据集上提出了一个可解释的深度学习框架,以准确预测健康个体和mTBI患者的脑龄。可解释分析表明,尾状核和丘脑在整个成年期对HCs和mTBI患者的脑龄预测中发挥了最重要的作用。左半球对脑龄预测有显著贡献,这可能启发我们在未来关注神经疾病中脑异常的偏侧化现象。所提出的可解释深度学习框架也可能为未来测试相关药物和治疗的性能带来希望。

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