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首页> 外文期刊>Scientific reports. >Morphological Brain Age Prediction using Multi-View Brain Networks Derived from Cortical Morphology in Healthy and Disordered Participants
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Morphological Brain Age Prediction using Multi-View Brain Networks Derived from Cortical Morphology in Healthy and Disordered Participants

机译:在健康和紊乱的参与者中使用皮质形态学的多视线脑网络的形态脑年龄预测

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Brain development and aging are dynamic processes that unfold over years on multiple levels in both healthy and disordered individuals. Recent studies have revealed a disparity between the chronological brain age and the 'data-driven' brain age using functional MRI (fMRI) and diffusion MRI (dMRI). Particularly, predicting the 'brain age' from connectomic data might help identify relevant connectional biomarkers of neurological disorders that emerge early or late in the lifespan. While prior brain-age prediction studies have relied exclusively on either structural or functional connectomic data, here we unprecedentedly propose to predict the morphological age of the brain by solely using morphological brain networks (derived from T1-weighted images) in both healthy and disordered populations. Besides, although T1-weighted MRI was widely used for brain age prediction, it was leveraged from an image-based analysis perspective not from a connectomic perspective. Our method includes the following steps: (i) building multi-view morphological brain networks (M-MBN), (ii) feature extraction and selection, (iii) training a machine-learning regression model to predict age from M-MBN data, and (iv) utilizing our model to identify connectional brain features related to age in both autistic and healthy populations. We demonstrate that our method significantly outperforms existing approaches and discovered brain connectional morphological features that fingerprint the age of brain cortical morphology in both autistic and healthy individuals. In particular, we discovered that the connectional cortical thickness best predicts the morphological age of the autistic brain.
机译:大脑发育和衰老是在健康和无序的人中多年来展开的动态过程。最近的研究揭示了使用功能MRI(FMRI)和扩散MRI(DMRI)的年龄脑年龄和“数据驱动”脑年龄之间的差异。特别是,预测来自Connectomic数据的“脑年龄”可能有助于鉴定寿命早期或晚期出现的神经系统疾病的相关连接生物标志物。虽然先前的脑年龄预测研究完全依赖于结构或功能性的Connectomic数据,但在这里,我们前所未有地建议通过仅使用健康和无序群体的形态脑网络(来自T1加权图像)来预测大脑的形态学时代。此外,虽然T1加权MRI广泛用于脑年龄预测,但它从基于图像的分析角度杠杆从不从Connectomic角度来看。我们的方法包括以下步骤:(i)构建多视图形态脑网络(M-MBN),(ii)特征提取和选择,(iii)培训机器学习回归模型以预测M-MBN数据的年龄, (iv)利用我们的模型来识别自闭症和健康人群的年龄相关的连接脑特征。我们证明,我们的方法显着优于现有的现有方法和发现脑连接形态特征,这些特征是自闭症和健康个体脑皮质形态的指纹。特别是,我们发现连接皮质厚度最佳预测自闭虫的形态学时代。

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