1. Introduction
Epilepsy is an immediate non-communicable malady of the cerebrum that can infect all aged people. The majority of the affected individuals can be dealt with effectively with drug treatment (67%) or neurosurgical strategies (7–8%). All things considered, 25% of the affected individuals cannot be treated by any accessible treatment [
1]. For unmanageable patients who keep on having successive seizures, it has been indicated that escalated checking with an electroencephalogram (EEG) and video over a significant stretch adds to the administration of everyday care and the change of medication treatment [
2]. Drawn-out observation with EEG and video can be exceptionally horrendous for patients, and investigating a lot of EEG/video information is very serious work for the clinical faculty. Moreover, this technique cannot yet to be applied as continuous methodology.
All the previously mentioned factors have made it important to search for sensors that show neighborly restraint and can be utilized for the solid programmed identification of epileptic seizures. One of these sensors is the accelerometer. Accelerometers are utilized in numerous clinical exploration territories for action acknowledgment [
3,
4,
5]. For this reason, we will create a device using a pulse sensor, Arduino, Global System for Mobile Communications (GSM), and other Wi-Fi modules with an accelerometer which will make it easier to detect seizures and send information to the nearest hospital. Our device will be more usable at a lower price, and using this device in the future will also be able to reduce accidents caused by epilepsy.
2. Materials and Methods
A hand-band that recognizes seizures will be outfitted with a pulse meter, gyroscope sensor, and also will interface with Wi-Fi to report the overall imperatives and attributes of the framework which will be recorded as follows:
All outer wirings will be taken out to permit the subject under test to move without limitations;
The organization convention will permit the sensor organization to introduce itself in an exceptionally specially appointed, self-arranging way;
While the information’s unwavering quality will be consistently significant, it will turn into a basic prerequisite for some applications, for instance, in clinical checking.
In
Figure 1, the flowchart of the proposed system has been shown. In the
Figure 1 IMU stands for Inertial Measurement Unit.
In this framework, there will be two sections. The first one is the detection part and the second one is the notification part. Firstly, we will take the heart rate of the patients as input. When a seizure occurs, the patient’s body will vibrate and the whole body will fall. Using the triple-axis accelerometer, the system will detect the vibration and the fall of the patient. However, also at the same time, the heart rate of the patient will be jumping up and down which is known as irregular arrhythmia. Thus, by using a heart rate sensor, the system will be able to detect this event. From both of these sensors, the system will send the analog signal as a single input in the microprocessor. Then, it will set some conditions so that the detection can be more accurate. Datasets from patients experiencing substantial epilepsy will be utilized for the advancement of a programmed identification calculation. Patients will be solicited to play out a grouping from ordinary typical exercises, however, they will not be able to know about the trial. Ordinary exercises that we recorded included static exercises, for example, perusing, working with a PC, brushing teeth, eating, as well as dynamic exercises, for example, strolling. Interestingly, with body advancements, the commotion from the sensor and assessment system will be disregarded. All data will be used in this assessment which will be recorded while the patients will be in their living atmosphere, as along these lines there will no speeding up conveyed by external sources. When there will be no turn of events, physiological disturbances, like inhalation and heart beat or gravitational speeding up will be observable in the signal.
In
Figure 2, the basic diagram of the detection side has been shown. Two sensors will take the analog signal from the patient and process it into a single input in the microprocessor. If both sensors sense a high and abnormal value at the same time, then the microprocessor will create an output so that the seizure is detected through display. Two types of wireless communication technologies will be used, such as GSM and Wi-Fi. Using GSM, SMS will be sent to a pre-programmed number. Wi-Fi sends the signal to another Wi-Fi on the notification side.
On the other hand, by using wireless communication, this device will send SMS, display the information and alarm the emergency persons. The output of the detection part will be the input of the notification part. If the detection part detects any seizure by using the Wi-Fi and GSM module, it will send the data to a mobile phone and another microprocessor. In that microprocessor output, a display and alarm will be connected. The basic diagram of the notification part has been given in
Figure 3. The input of the notification part will be the output of the detection side of the Wi-Fi.
When the detection side of the Wi-Fi will send any signal, then the receiver side Wi-Fi will receive the signal and act as an input of the microcontroller. The pre-program microcontroller will show the detection information through the display which will be connected to the microcontroller. There is also a buzzer that will be turned on if a seizure is detected.
Therefore, the whole system will be operated in one logic: if the patient’s body vibrates and their heart rate acts abnormally, then the detection side will send a signal to the notification side—if not, the notification side will not show any information.
3. Hardware
We will use the hardware mentioned in
Table 1 to make this device.
4. Future Plan and Conclusions
The most fascinating use of the Wireless Sensor Network (WSN) is for health checking. In this paper, we propose an epilepsy checking framework dependent on WSN for the discovery of epilepsy seizures. This framework will be utilized for patients living in a clinical climate or at home, where they do their day-by-day schedule. This framework will decide the area of the patient when a seizure will be detected and sends an alert to the emergency clinic staff or the patient’s family members. Since the sensors are remote, the subject under test can move without limitations. Moreover, because of the little size of the sensor hubs, they will be wearable for patients. A lightweight, easy, savvy wearable gadget will be created so that it can help a huge number of casualties of epilepsy around the world. With this proposed system, epilepsy patients can live independently like ordinary individuals without any stress. Additionally, it will be a very cheap and user-friendly system so it will eventually help poor people all over the world. Most importantly, this system will make the epilepsy patient independent.
We have started work on making this device. In the future, we will publish the results in an MDPI journal. Epilepsy causes many accidents in our country every day. Although many researchers have studied epilepsy, they have not been able to predict its onset in any way. We will create a framework using deep learning in our future work so that epilepsy patients can be made aware in advance.