论文标题
Strokesight:一种基于EEG的新型诊断系统,用于使用光谱分析和深度学习
StrokeSight: A Novel EEG-Based Diagnostic System for Strokes Using Spectral Analysis and Deep Learning
论文作者
论文摘要
中风被定义为是由大脑血液供应中断引起的神经系统缺陷。根据世界卫生组织的说法,每年有1500万人患有中风,其中近70%死亡或永久残疾。必须在一小时内进行有效治疗,以防止不可逆的脑损伤。不幸的是,当前的诊断金标准,CT和MRI是耗时,昂贵且不动的。脑电图揭示了笔画的生物标志物,同时又便宜且可用于远程使用,但是没有系统将其用于此目的。为了解决这个问题,我们创建了一种新型的开源Web应用程序,该应用程序会在50秒内使用60秒的脑电图在不到50秒内自动诊断和可视化缺血性和出血性中风。我们首先计算了132秒,60秒的脑电图读数的平均功率密度,然后我们用来培训三个深神经网络,分别预测中风类型(对照/缺血/出血),位置(左/右半球)和严重程度(小/大)和97.5%和94.4%和94.4%和100%的精度。 Strokesight还实现了一个新的过程,以可视化由中风引起的光谱异常。方位角等距投影和多元样条插值用于将3D电极重塑到头形的2D平面上,然后创建了每个频带功率的轮廓图,从而使神经病学家能够快速,准确地解释电脑图数据。 Strokesight可以作为中风护理的革命性解决方案,从而大大提高了中风诊断的速度,成本效率和可及性,同时允许个性化治疗和解释。
A stroke is defined as a neurologic deficit arising from an interruption in blood supply to the brain. According to the World Health Organization, over 15 million people suffer from strokes annually, of which almost 70% die or are permanently disabled. Effective treatment must be administered within one hour to prevent irreversible brain damage. Unfortunately, the current gold standards for diagnosis, CT and MRI, are time-consuming, expensive, and immobile. Electroencephalograms reveal biomarkers of strokes while being inexpensive and available for remote use, but no system exists that utilizes them for this purpose. To address this issue, we created StrokeSight, a novel, open-source web application that automatically provides a full diagnosis and visualization of ischemic and hemorrhagic strokes in under 50 seconds using 60-second electroencephalograms. We first calculated the averaged power spectral densities for 132, 60-second electroencephalogram readings, which we then used to train three deep neural networks that respectively predict a stroke type (control/ischemic/hemorrhagic), location (left/right hemisphere), and severity (small/large) with accuracies of 97.5%, 94.4%, and 100%. StrokeSight also implements a novel process to visualize spectral abnormalities caused by strokes. Azimuthal equidistant projection and multivariate spline interpolation are used to reshape 3D electrodes onto a head-shaped 2D plane and then a contour map of each frequency band power is created, allowing neurologists to quickly and accurately interpret electroencephalogram data. StrokeSight could act as a revolutionary solution for stroke care that drastically improves the speed, cost efficiency, and accessibility of stroke diagnosis while allowing for personalized treatment and interpretation.