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A Convolutional Autoencoder for Identification of mild Traumatic Brain Injury

机译:一种卷积的自身阳极,用于鉴定轻度创伤性脑损伤

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Mild traumatic brain injury (mTBI) is the most common form of traumatic brain injury (TBI), yet its timely diagnosis has remained challenging due to lack of established criteria and biomarkers. Widefield optical imaging of neuronal populations over the cerebral cortex in animals provides a unique opportunity to study injury-induced alterations of the brain function. Using a convolutional autoencoder (CAE), this paper aims to develop a framework for detecting mTBI from calcium imaging data to identify the most informative injury-related features. A support vector machine is then trained to classify healthy and injured subjects, and an average classification accuracy of 96.47% is obtained for the best case scenario. Our results suggest that the spatial features obtained through CAE can discriminate the injured and healthy brains better than naive convolutional neural network (CNN).
机译:轻度创伤性脑损伤(MTBI)是最常见的创伤性脑损伤形式(TBI),但由于缺乏既定的标准和生物标志物,其及时诊断保持挑战。 在动物中脑皮层上的神经元群的阔场光学成像提供了研究伤害诱导的脑功能改变的独特机会。 本文使用卷积AutoEncoder(CAE),旨在开发一种从钙成像数据检测MTBI以识别最丰富地伤害相关的特征的框架。 然后培训支撑向量机以分类健康和受伤的受试者,并获得96.47%的平均分类准确度,以获得最佳案例方案。 我们的研究结果表明,通过CAE获得的空间特征可以比天真卷积神经网络(CNN)更好地区分受伤和健康的大脑。

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