论文标题

深度学习头模型,用于实时估算脑震荡的整个大脑变形

Deep Learning Head Model for Real-time Estimation of Entire Brain Deformation in Concussion

论文作者

Zhan, Xianghao, Liu, Yuzhe, Raymond, Samuel J., Alizadeh, Hossein Vahid, Domel, August G., Gevaert, Olivier, Zeineh, Michael, Grant, Gerald, Camarillo, David B.

论文摘要

目的:许多最近的研究表明,由于头部影响引起的大脑变形与相应的临床结局有关,例如轻度的脑损伤(MTBI)。即使已经开发并验证了几个有限元(FE)头模型以根据影响运动学计算大脑变形,但由于FE模拟的耗时性,这些Fe头模型的临床应用受到限制。这项工作旨在加快大脑变形计算的过程,从而提高临床应用的潜力。方法:我们提出了一个具有五层深神经网络和功能工程的深度学习头模型,并训练和测试了该模型,对1803型模型的总影响造成了头部模型模拟,现场大学橄榄球和混合武术的影响。结果:所提出的深度学习头模型可以计算整个大脑中每个元素的最大主要应变(在不到0.001s的平均平均平方误差为0.025),并且在二十个重复序列的标准偏差为0.002,并具有随机数据分区和模型初始化)。研究了各种特征对模型预测能力的贡献,并注意到,基于角度加速度的特征比基于角速度的特征更具预测性。结论:使用1803个头部影响的数据集进行了训练,可以将该模型应用于各种运动,以精确地计算大脑劳累,并且可以通过合并其他类型的头部影响的数据来进一步扩展其适用性。意义:除了在实时大脑变形监测中潜在的临床应用外,该模型还将帮助研究人员估计大量头部的疲劳比使用FE模型更有效地影响。

Objective: Many recent studies have suggested that brain deformation resulting from a head impact is linked to the corresponding clinical outcome, such as mild traumatic brain injury (mTBI). Even though several finite element (FE) head models have been developed and validated to calculate brain deformation based on impact kinematics, the clinical application of these FE head models is limited due to the time-consuming nature of FE simulations. This work aims to accelerate the process of brain deformation calculation and thus improve the potential for clinical applications. Methods: We propose a deep learning head model with a five-layer deep neural network and feature engineering, and trained and tested the model on 1803 total head impacts from a combination of head model simulations and on-field college football and mixed martial arts impacts. Results: The proposed deep learning head model can calculate the maximum principal strain for every element in the entire brain in less than 0.001s (with an average root mean squared error of 0.025, and with a standard deviation of 0.002 over twenty repeats with random data partition and model initialization). The contributions of various features to the predictive power of the model were investigated, and it was noted that the features based on angular acceleration were found to be more predictive than the features based on angular velocity. Conclusion: Trained using the dataset of 1803 head impacts, this model can be applied to various sports in the calculation of brain strain with accuracy, and its applicability can even further be extended by incorporating data from other types of head impacts. Significance: In addition to the potential clinical application in real-time brain deformation monitoring, this model will help researchers estimate the brain strain from a large number of head impacts more efficiently than using FE models.

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