Habtamu Mikael, Tolosa Keneni, Abera Kidus, Demissie Lamesgin, Samuel Samrawit, Temesgen Yeabsera, Zewde Elbetel Taye, Dawud Ahmed Ali
School of Biomedical Engineering, Jimma Institute of Technology, Jimma University, Jimma, Ethiopia.
BMC Biomed Eng. 2023 Jul 17;5(1):7. doi: 10.1186/s42490-023-00073-7.
Epilepsy is a neurological disorder that has a variety of origins. It is caused by hyperexcitability and an imbalance between excitation and inhibition, which results in seizures. The World Health Organization (WHO) and its partners have classified epilepsy as a major public health concern. Over 50 million individuals globally are affected by epilepsy which shows that the patient's family, social, educational, and vocational activities are severely limited if seizures are not controlled. Patients who suffer from epileptic seizures have emotional, behavioral, and neurological issues. Alerting systems using a wearable sensor are commonly used to detect epileptic seizures. However, most of the devices have no multimodal systems that increase sensitivity and lower the false discovery rate for screening and intervention of epileptic seizures. Therefore, the objective of this project was, to design and develop an efficient, economical, and automatically detecting epileptic seizure device in real-time.
Our design incorporates different sensors to assess the patient's condition such as an accelerometer, pulsoxymeter and vibration sensor which process body movement, heart rate variability, oxygen denaturation, and jerky movement respectively. The algorithm for real-time detection of epileptic seizures is based on the following: acceleration increases to a higher value of 23.4 m/s or decreases to a lower value of 10 m/s as energy is absorbed by the body, the heart rate increases by 10 bpm from the normal heart rate, oxygen denaturation is below 90% and vibration should be out of the range of 3 Hz -17 Hz. Then, a pulsoxymeter device was used as a gold standard to compare the heart rate variability and oxygen saturation sensor readings. The accuracy of the accelerometer and vibration sensor was also tested by a fast-moving and vibrating normal person's hand.
The prototype was built and subjected to different tests and iterations. The proposed device was tested for accuracy, cost-effectiveness and ease of use. An acceptable accuracy was achieved for the accelerometer, pulsoxymeter, and vibration sensor measurements, and the prototype was built only with a component cost of less than 40 USD excluding design, manufacturing, and other costs. The design is tested to see if it fits the design criteria; the results of the tests reveal that a large portion of the scientific procedures utilized in this study to identify epileptic seizures is effective.
This project is objectively targeted to design a medical device with multimodal systems that enable us to accurately detect epileptic seizures by detecting symptoms commonly associated with an episode of epileptic seizure and notifying a caregiver for immediate assistance. The proposed device has a great impact on reducing epileptic seizer mortality, especially in low-resource settings where both expertise and treatment are scarce.
癫痫是一种起源多样的神经系统疾病。它由过度兴奋以及兴奋与抑制之间的失衡引起,进而导致癫痫发作。世界卫生组织(WHO)及其合作伙伴已将癫痫列为重大公共卫生问题。全球超过5000万人受癫痫影响,这表明如果癫痫发作得不到控制,患者的家庭、社交、教育和职业活动将受到严重限制。患有癫痫发作的患者存在情绪、行为和神经方面的问题。使用可穿戴传感器的警报系统通常用于检测癫痫发作。然而,大多数此类设备没有多模态系统,而多模态系统可提高检测癫痫发作的灵敏度并降低误报率,以便进行筛查和干预。因此,本项目的目标是设计并开发一种高效、经济且能实时自动检测癫痫发作的设备。
我们的设计整合了不同传感器来评估患者状况,如加速度计、脉搏血氧仪和振动传感器,它们分别用于处理身体运动、心率变异性、氧变性和急促运动。癫痫发作实时检测算法基于以下几点:当身体吸收能量时,加速度增加到23.4米/秒的较高值或降低到10米/秒的较低值,心率比正常心率增加10次/分钟,氧变性低于90%且振动应超出3赫兹 - 17赫兹范围。然后,使用脉搏血氧仪设备作为金标准来比较心率变异性和血氧饱和度传感器读数。加速度计和振动传感器的准确性还通过快速移动和振动的正常人的手进行了测试。
构建了原型并进行了不同测试和迭代。对所提出的设备进行了准确性、成本效益和易用性测试。加速度计、脉搏血氧仪和振动传感器测量达到了可接受的准确性,且该原型仅以不到40美元的组件成本构建,不包括设计、制造和其他成本。对该设计进行测试以查看是否符合设计标准;测试结果表明,本研究中用于识别癫痫发作的大部分科学程序是有效的。
本项目的目标是客观地设计一种具有多模态系统的医疗设备,使我们能够通过检测通常与癫痫发作相关的症状来准确检测癫痫发作,并通知护理人员立即提供帮助。所提出的设备对降低癫痫发作死亡率有很大影响,特别是在缺乏专业知识和治疗资源的低资源环境中。