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Single Season Changes in Resting State Network Power and the Connectivity between Regions Distinguish Head Impact Exposure Level in High School and Youth Football Players

机译:静止状态网络功率的单季变化以及区域之间的连通性可区分高中和青少年足球运动员的头部撞击暴露水平

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The effect of repetitive sub-concussive head impact exposure in contact sports like American football on brain health is poorly understood, especially in the understudied populations of youth and high school players. These players, aged 9-18 years old may be particularly susceptible to impact exposure as their brains are undergoing rapid maturation. This study helps fill the void by quantifying the association between head impact exposure and functional connectivity, an important aspect of brain health measurable via resting-state fMRI (rs-fMRI). The contributions of this paper are three fold. First, the data from two separate studies (youth and high school) are combined to form a high-powered analysis with 60 players. These players experience head acceleration within overlapping impact exposure making their combination particularly appropriate. Second, multiple features are extracted from rs-fMRI and tested for their association with impact exposure. One type of feature is the power spectral density decomposition of intrinsic, spatially distributed networks extracted via independent components analysis (ICA). Another feature type is the functional connectivity between brain regions known often associated with mild traumatic brain injury (mTBI). Third, multiple supervised machine learning algorithms are evaluated for their stability and predictive accuracy in a low bias, nested cross-validation modeling framework. Each classifier predicts whether a player sustained low or high levels of head impact exposure. The nested cross validation reveals similarly high classification performance across the feature types, and the Support Vector, Extremely randomized trees, and Gradboost classifiers achieve Fl-score up to 75%.
机译:对于像美式足球这样的接触式运动,反复进行次脑震荡冲击对大脑健康的影响知之甚少,尤其是在对青年和高中生进行研究的人群中。这些年龄在9-18岁的球员可能会特别容易受到撞击的影响,因为他们的大脑正在迅速成熟。这项研究通过量化头部撞击暴露与功能连接之间的联系来帮助填补空白,功能连接是通过静止状态功能磁共振成像(rs-fMRI)衡量的大脑健康的重要方面。本文的贡献是三方面的。首先,将来自两个独立研究(青年和高中)的数据进行合并,以形成具有60个参与者的强大分析。这些球员在重叠的撞击曝光中会经历头部加速,因此他们的组合特别合适。其次,从rs-fMRI中提取多个特征,并测试它们与撞击暴露的关联。一种类型的特征是通过独立成分分析(ICA)提取的内部空间分布网络的功率谱密度分解。另一特征类型是经常与轻度脑外伤(mTBI)相关的已知大脑区域之间的功能连接。第三,在低偏差,嵌套的交叉验证建模框架中评估了多种监督的机器学习算法的稳定性和预测准确性。每个分类器都预测玩家是持续承受较低还是较高的头部撞击强度。嵌套的交叉验证揭示了在要素类型之间相似的高分类性能,并且支持向量,极端随机树和Gradboost分类器将Fl得分提高到75%。

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