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关联与预测:皮质表面平滑处理和脑区划分对脑龄的影响。

Association vs. Prediction: The Impact of Cortical Surface Smoothing and Parcellation on Brain Age.

作者信息

Zeighami Yashar, Evans Alan C

机构信息

Montreal Neurological Institute, McGill University, Montreal, QC, Canada.

Ludmer Centre for Neuroinformatics and Mental Health, McGill University, Montreal, QC, Canada.

出版信息

Front Big Data. 2021 May 4;4:637724. doi: 10.3389/fdata.2021.637724. eCollection 2021.

Abstract

Association and prediction studies of the brain target the biological consequences of aging and their impact on brain function. Such studies are conducted using different smoothing levels and parcellations at the preprocessing stage, on which their results are dependent. However, the impact of these parameters on the relationship between association values and prediction accuracy is not established. In this study, we used cortical thickness and its relationship with age to investigate how different smoothing and parcellation levels affect the detection of age-related brain correlates as well as brain age prediction accuracy. Our main measures were resel numbers-resolution elements-and age-related variance explained. Using these common measures enabled us to directly compare parcellation and smoothing effects in both association and prediction studies. In our sample of = 608 participants with age range 18-88, we evaluated age-related cortical thickness changes as well as brain age prediction. We found a negative relationship between prediction performance and correlation values for both parameters. Our results also quantify the relationship between delta age estimates obtained based on different processing parameters. Furthermore, with the direct comparison of the two approaches, we highlight the importance of correct choice of smoothing and parcellation parameters in each task, and how they can affect the results of the analysis in opposite directions.

摘要

针对大脑的关联研究和预测研究旨在探究衰老的生物学后果及其对脑功能的影响。此类研究在预处理阶段采用不同的平滑水平和脑区划分方式,其结果依赖于此。然而,这些参数对关联值与预测准确性之间关系的影响尚未明确。在本研究中,我们利用皮质厚度及其与年龄的关系,来研究不同的平滑和脑区划分水平如何影响与年龄相关的脑关联的检测以及脑年龄预测准确性。我们的主要测量指标是体素数(分辨单元)以及解释的与年龄相关的方差。使用这些通用指标使我们能够在关联研究和预测研究中直接比较脑区划分和平滑效果。在我们选取的年龄范围为18至88岁的608名参与者样本中,我们评估了与年龄相关的皮质厚度变化以及脑年龄预测。我们发现这两个参数的预测性能与相关值之间均呈负相关。我们的结果还量化了基于不同处理参数获得的年龄差异估计值之间的关系。此外,通过对这两种方法的直接比较,我们强调了在每项任务中正确选择平滑和脑区划分参数的重要性,以及它们如何能以相反的方向影响分析结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7bc6/8131952/8f28b4bfd188/fdata-04-637724-g0001.jpg

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