Prediction of East Asian Brain Age using Machine Learning Algorithms Trained With Community-based Healthy Brain MRI.

Dementia and neurocognitive disorders Pub Date : 2022-10-01 Epub Date: 2022-10-31 DOI:10.12779/dnd.2022.21.4.138
Chanda Simfukwe, Young Chul Youn
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引用次数: 2

Abstract

Background and purpose: Magnetic resonance imaging (MRI) helps with brain development analysis and disease diagnosis. Brain volumes measured from different ages using MRI provides useful information in clinical evaluation and research. Therefore, we trained machine learning models that predict the brain age gap of healthy subjects in the East Asian population using T1 brain MRI volume images.

Methods: In total, 154 T1-weighted MRIs of healthy subjects (55-83 years of age) were collected from an East Asian community. The information of age, gender, and education level was collected for each participant. The MRIs of the participants were preprocessed using FreeSurfer(https://surfer.nmr.mgh.harvard.edu/) to collect the brain volume data. We trained the models using different supervised machine learning regression algorithms from the scikit-learn (https://scikit-learn.org/) library.

Results: The trained models comprised 19 features that had been reduced from 55 brain volume labels. The algorithm BayesianRidge (BR) achieved a mean absolute error (MAE) and r squared (R2) of 3 and 0.3 years, respectively, in predicting the age of the new subjects compared to other regression methods. The results of feature importance analysis showed that the right pallidum, white matter hypointensities on T1-MRI scans, and left hippocampus comprise some of the essential features in predicting brain age.

Conclusions: The MAE and R2 accuracies of the BR model predicting brain age gap in the East Asian population showed that the model could reduce the dimensionality of neuroimaging data to provide a meaningful biomarker for individual brain aging.

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基于社区健康脑MRI训练的机器学习算法预测东亚脑年龄
背景与目的:磁共振成像(MRI)有助于大脑发育分析和疾病诊断。利用MRI测量不同年龄的脑容量为临床评估和研究提供了有用的信息。因此,我们训练了机器学习模型,使用T1脑MRI体积图像预测东亚人群中健康受试者的脑年龄差距。方法:共收集来自东亚社区的健康受试者(55-83岁)的154例t1加权mri。收集了每个参与者的年龄、性别和教育程度等信息。使用FreeSurfer(https://surfer.nmr.mgh.harvard.edu/)对参与者的核磁共振成像进行预处理,收集脑容量数据。我们使用scikit-learn (https://scikit-learn.org/)库中的不同监督机器学习回归算法训练模型。结果:训练的模型包括从55个脑容量标签中减少的19个特征。与其他回归方法相比,BayesianRidge (BR)算法预测新受试者年龄的平均绝对误差(MAE)和r平方(R2)分别为3岁和0.3岁。特征重要性分析结果显示,右侧苍白质、T1-MRI扫描的白质低密度以及左侧海马体构成了预测脑年龄的一些基本特征。结论:BR模型预测东亚人群脑年龄差距的MAE和R2精度表明,该模型可以降低神经影像学数据的维数,为个体脑衰老提供有意义的生物标志物。
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