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Brain age prediction: A comparison between machine learning models using region‐ and voxel‐based morphometric data

机译:脑年龄预测:基于植物和体素的形态学数据的机器学习模型比较

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摘要

Brain morphology varies across the ageing trajectory and the prediction of a person's age using brain features can aid the detection of abnormalities in the ageing process. Existing studies on such “brain age prediction” vary widely in terms of their methods and type of data, so at present the most accurate and generalisable methodological approach is unclear. Therefore, we used the UK Biobank data set (N = 10,824, age range 47–73) to compare the performance of the machine learning models support vector regression, relevance vector regression and Gaussian process regression on whole‐brain region‐based or voxel‐based structural magnetic resonance imaging data with or without dimensionality reduction through principal component analysis. Performance was assessed in the validation set through cross‐validation as well as an independent test set. The models achieved mean absolute errors between 3.7 and 4.7 years, with those trained on voxel‐level data with principal component analysis performing best. Overall, we observed little difference in performance between models trained on the same data type, indicating that the type of input data had greater impact on performance than model choice. All code is provided online in the hope that this will aid future research.
机译:脑形态在老化轨迹中变化,使用脑特征的人的年龄的预测可以帮助检测老化过程中的异常。关于这种“脑年龄预测”的现有研究在其方法和数据类型方面差异很大,因此目前最准确和最稳定的方法论方法尚不清楚。因此,我们使用英国BioBank数据集(n = 10,824,年龄范围47-73)来比较机器学习模型的性能支持向量回归,相关矢量回归和全脑区基于植物或体素的高斯过程回归 - 基于结构磁共振成像数据或通过主成分分析的维度降低。在通过交叉验证和独立的测试集中进行验证中的性能。该模型在3.7和4.7岁之间实现了平均误差,其中有Voxel级数据培训,具有最佳的主要成分分析。总的来说,我们观察到在相同数据类型训练的模型之间的性能之间的性能差异很小,表明输入数据的类型对性能的影响比模型选择更大。所有代码都在线提供,希望这将帮助未来的研究。

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