胼胝体冲击诱发脑劳损的动态特征

Q3 Engineering
Songbai Ji , Shaoju Wu , Wei Zhao
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引用次数: 6

摘要

撞击引起的脑应变具有丰富的空间和内在动态性。然而,脑劳损的动态信息通常不用于任何损伤调查。本文研究了胼胝体最大和最小主应变(maxPS和minPS)的动态特性,强调了碰撞模拟时间窗的重要性。使用了三个数据集:实验室重建的美国国家橄榄球联盟(NFL);N=53),斯坦福大学(SF;N=110)和Prevent Biometric (PB;N = 314)。当模拟时间窗口被认为不足以捕获足够的应变时间响应时,将丢弃影响情况(分别为20.8%,11.8%和66.2%)。来自所有数据集的拟合高斯峰(平均相对均方根误差为~ 5%,R2 >0.9)具有相似的中位数(15-18 ms)和分位数间范围(5-9 ms),适用于半最大值(FWHM)的全宽度。NFL和SF的FWHM与应变大小呈显著负相关,PB的FWHM与应变大小呈显著负相关。然而,最大minPS和最大maxPS震级之间的比率在数据集之间是相似的(中位数为0.5-0.6,分位数间范围为0.2-0.7)。动态应变特征改善了损伤预测。该研究推动了先进深度学习模型的进一步发展,以即时估计脑应变时空历史的完整细节,超越目前可用的最大值获得的空间详细峰值应变。此外,该研究强调了撞击运动学和大脑深处胼胝体应变之间的时间滞后,这对未来的撞击模拟和结果解释以及撞击传感器设计具有重要意义。•首次系统地描述接触性运动头部撞击中胼胝体应变的时间史的研究。•无需昂贵的全脑模型模拟,即可快速启动胼胝体脑震荡的多尺度建模。•推动高级深度学习模型的进一步发展,这些模型将立即重现整个大脑中完整的时空细节。•强调了足够的冲击模拟时间窗口的重要性,以便捕捉大脑深处的完整应变反应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic characteristics of impact-induced brain strain in the corpus callosum

Impact-induced brain strains are spatially rich and intrinsically dynamic. However, the dynamic information of brain strain is not typically used in any injury investigation. Here, we study the dynamic characteristics of maximum and minimum principal strain (maxPS and minPS) of the corpus callosum and highlight the significance of impact simulation time window. Three datasets are used: laboratory reconstructed National Football League (NFL; N=53), measured impacts from Stanford (SF; N=110) and Prevent Biometric (PB; N=314). Impact cases are discarded (by 20.8%, 11.8%, and 66.2%, respectively), when the simulation time window is considered inadequate to capture sufficient strain temporal responses. Fitted Gaussian peaks (with average relative root mean squared error of ∼5% and R2 >0.9) from all datasets have a similar median (15–18 ms) and inter-quantile range (5–9 ms) for the full width at half maximum (FWHM). FWHM significantly and negatively correlates with strain magnitude for NFL and SF, but not for PB. However, ratios between the largest minPS and maxPS magnitudes are similar across datasets (median of 0.5–0.6 with inter-quantile range of 0.2–0.7). Dynamic strain features improve injury prediction. This study motivates further development of advanced deep learning models to instantly estimate the complete details of spatiotemporal history of brain strains, beyond spatially detailed peak strains obtained at maximum values currently available. In addition, this study highlights the time lag between impact kinematics and corpus callosum strain deep in the brain, which has important implications for impact simulation and result interpretation as well as impact sensor designs in the future.

Statement of significance

  • First study to systematically characterize the temporal history of corpus callosum strain in contact sports head impact.

  • Allows to rapidly launch multiscale modeling of concussion in the corpus callosum without a costly whole brain model simulation.

  • Motivates further development of advanced deep learning models that will instantly reproduce the complete spatiotemporal details of strain in the entire brain.

  • Highlights the importance of sufficient impact simulation time window in order to capture the complete strain responses deep in the brain.

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来源期刊
Brain multiphysics
Brain multiphysics Physics and Astronomy (General), Modelling and Simulation, Neuroscience (General), Biomedical Engineering
CiteScore
4.80
自引率
0.00%
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0
审稿时长
68 days
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