机器学习可穿戴大脑变形传感系统

Sayemul Islam, Albert Kim
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引用次数: 1

摘要

脑变形是创伤性脑损伤(TBI)的主要原因,发生在跌倒、车祸、脑部手术或爆炸(即加压气流)中[1]。机械冲击产生应变能,导致组织位移。研究者试图通过描述脑变形特征来诊断和预防脑震荡相关的TBI[2]。测量微尺度的变形尤为重要,因为即使是几十微米的脑变形也可能产生直接的神经精神和神经退行性后果[3]-[6]。另一种减少大脑变形的方法是颅内手术。变形是不可避免的,但可以通过设计更好的设备和使用先进的立体定向技术来最小化[7]-[9]。因此,目前有几种测量大脑变形的方法[8],[10]-[12]。计算模型和成像技术(例如,FEM(有限元法)建模,磁共振成像(MRI))就是这样的例子。然而,由于大脑是粘弹性的[13],这些技术缺乏1)关于微尺度大脑变形的详细信息和2)实时测量能力。
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Machine Learning Enabled Wearable Brain Deformation Sensing System
Brain deformation – the primary cause of traumatic brain injury (TBI) – occurs during fall, automobile accident, brain surgery, or explosion (i.e., pressurized airflow) [1] . Mechanical impact causes strain energy that leads to tissue displacement. Researchers have attempted to characterize the brain deformation for diagnosis and prevention of concussion-related TBI [2] . It is especially important to measure microscale deformation because even a few tens of micrometer brain deformation may have direct neuropsychiatric and neuro-degenerative consequences [3] – [6] . Another effort to minimize brain deformation can be found in intracranial surgeries. The deformation is inevitable but can be minimized by designing a better apparatus and using advance stereotactic techniques [7] – [9] . As such, there are a few methods to measure brain deformation today [8] , [10] – [12] . Computational models and imaging technologies (e.g., FEM (finite element method) modeling, magnetic resonance imaging (MRI)) are such examples. However, because the brain is viscoelastic [13] , these technologies lack 1) detailed information regarding micro-scale brain deformation and 2) real-time measurement capability.
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