Multi-Class Brain Age Discrimination Using Machine Learning Algorithm

Hsiao-Chi Li, Chang-Yu Cheng, Chia Chou, Chien-Chang Hsu, Meng-Lin Chang, Y. Chiu, J. Chai
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Abstract

Resting-state functional connectivity analyses have revealed a significant effect on the inter-regional interactions in brain. The brain age prediction based on resting-state functional magnetic resonance imaging has been proved as biomarkers to characterize the typical brain development and neuropsychiatric disorders. The brain age prediction model based on functional connectivity measurements derived from resting-state functional magnetic resonance imaging has received a lots of interest in recent years due to its great success in age prediction. However, some of the recent studies rely on experienced neuroscientist experts to select appropriate connectivity features in order to build a robust model for prediction while the others just selected the features based on trial-and-error test. Besides, the subjects used in this studies omitted some subjects that can be divided into two groups with less similarity which may confused the prediction model. In this study, we proposed a multi-class age categories discrimination method with the connectivity features selected via K-means clustering with no prior knowledge provided. The experimental results show that with K-means selected features the proposed model better discriminate multi-class age categories.
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基于机器学习算法的多类大脑年龄判别
静息状态功能连通性分析揭示了脑区域间相互作用的重要影响。基于静息状态功能磁共振成像的脑年龄预测已被证明是表征典型脑发育和神经精神疾病的生物标志物。基于静息状态功能磁共振成像的功能连接测量的脑年龄预测模型由于在年龄预测方面的巨大成功,近年来受到了广泛的关注。然而,最近的一些研究依赖于经验丰富的神经科学家专家来选择适当的连接特征,以建立一个强大的预测模型,而其他研究只是基于试错测试来选择特征。此外,本研究中使用的被试省略了一些相似度较低的可分为两组的被试,这可能会使预测模型变得混乱。在本研究中,我们提出了一种在不提供先验知识的情况下,通过K-means聚类选择连接特征的多类年龄类别判别方法。实验结果表明,在选取k均值特征的情况下,该模型能更好地区分多类年龄类别。
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