Method for Monitoring Patterns in the Behavior of Brain Activity Prior to an Episode of Epilepsy, Applied to Young People in Times of the Covid-19 Pandemic, using Low-Cost BCI Devices

W. Auccahuasi, Oscar Linares, Luis Vivanco-Aldon, Martin Campos-Martinez, Humberto Quispe-Peña, Julia Sobrino-Mesias
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Abstract

Epilepsy is one of the characteristic diseases of brain activity. People with this disease live with the symptoms and try to control the events to mitigate the effects that they may cause, such as a fall, blow, or any other consequence. In these times of pandemic caused by COVID-19, many of the people who have this disease present many events in a row, which can be caused by many factors, such as being at home most of the day, without being able to go out to get distracted. In this research work, a practical method is presented to monitor and predict an epilepsy event, based on the measurement of stress and meditation levels by using low-cost devices. For the evaluation of the method, measurements were made on a patient who constantly presents epilepsy events. The evaluation was carried out when she took her classes online, where the students present greater pressure. The method uses smartwatches to evaluate the stress level and BCI devices to measure the level of meditation. The results found in the data analysis present grouped values for the positive and negative cases of happening of epilepsy events. In the evaluation, possible threshold values that can be used to classify epilepsy events were determined. The determined threshold value can be used independently if only one device can be counted on. The reference threshold value is determined between values of 41 and 79, on a scale of 1 to 100. It is concluded that the device that can be counted on in the market at a low cost is the smartwatch that measures the stress level, compared to the best-known brain signal analysis device. As for the BCI device, the presented method is easy to implement; it can be easily used by the patients themselves or their relatives.
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使用低成本脑机接口设备监测癫痫发作前大脑活动行为模式的方法,应用于Covid-19大流行时期的年轻人
癫痫是脑活动的特征性疾病之一。患有这种疾病的人生活在症状中,并试图控制这些事件以减轻它们可能引起的影响,如跌倒、打击或任何其他后果。在COVID-19引起的大流行时期,许多患有这种疾病的人连续出现许多事件,这可能是由许多因素引起的,例如一天中大部分时间呆在家里,不能出去分心。在这项研究工作中,提出了一种实用的方法来监测和预测癫痫事件,该方法基于使用低成本设备测量压力和冥想水平。为了对该方法进行评估,对一位经常出现癫痫事件的患者进行了测量。评估是在她上在线课程时进行的,在线课程的学生压力更大。该方法使用智能手表评估压力水平,BCI设备测量冥想水平。在数据分析中发现的结果为癫痫事件发生的阳性和阴性病例提供分组值。在评估中,确定了可用于癫痫事件分类的可能阈值。如果只有一个设备可以计数,则确定的阈值可以独立使用。参考阈值在41到79之间确定,范围为1到100。结论是,与最著名的大脑信号分析设备相比,在市场上可以信赖的低成本设备是测量压力水平的智能手表。对于BCI装置,该方法易于实现;它可以很容易地被病人自己或他们的亲属使用。
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