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MindAlert:AI-powered Seizure Diagnosis System

neurological disorders
Healthcare and Medical Devices las la-heartbeat green
Prototype fa-solid fa-pen-fancy orange
Reg. ID : 17526
603–83125803 Comments

Description

Epilepsy is known as one of the neurological disorders that will cause seizures, it is known as a sudden abnormal electrical activity that happened in the brain. Seizures usually cause abnormal muscle activity, sensations, and even the loss of consciousness. These symptoms usually last for a few minutes. Hence, an epileptic seizure might cause the loss of life when the occurrence of the seizure causes deadly accidents such as road accidents or fall into death. According to the World Health Organization (WHO), there are around 50 million people around the world suffered from epilepsy. However, there is a fact showing that an estimated 70% of epileptic patients could live seizure-free if they are diagnosed in the early stage and received proper medical treatment. The common method in diagnosing epilepsy includes blood tests and neurological exams. The entire process of diagnosis is very time-consuming. Besides, the diagnosis also requires medical experts and doctors who have great experience in the diagnosis process. In addition, the shortage of neurologists is the current crisis in the medical field. Among the methods that used to track the brain activity, EEG is the best method as it is non invasive and portable. Hence, in this research, we introduce MindAlert: AI-powered Seizure Diagnosis System. This system is developed using the developed deep neural network namely Metric Learning Based Convolutional Neural Network. The developed MLBCNN has achieved the best classification performance up to 97.4% accuracy and outperformed the other benchmark machine learning and deep learning neural networks.

Highlights

Electroencephalography(EEG) is the best non-invasive method to record brain activity. Hence, the proposed system MindAlert employs the EEG signal to perform classification for seizure diagnosis. In this MindAlert, we developed a deep neural network namely Metric Learning Based Convolutional Neural Network (MLBCNN). Unlike the conventional CNN, the training process of the MLBCNN is modified according to metric learning which is usually applied in unsupervised learning. The reason for modifying the training process using metric learning is because the EEG waveform of both normal and epileptic seizure in resting state are highly similar to each other. Thus, this cause high data sparsity where the feature embedding vectors of both classes are distributed sparsely and not clustering among the respective class in the metric space. This property causes increases the difficulty in classifying the EEG signal accurately. Hence, as inspired by the metric learning that is usually applied in unsupervised learning, we apply this technique as the training algorithm of the deep neural network CNN as it has the ability to cluster features that are in the same class. The developed MLBCNN outperformed the other machine learning models and the common deep learning models with the best classification performance with an accuracy of 97.4%, AUC of 99.6%, recall rate of 96.9%, precision rate of 91.3%, and specificity of 97.3%. It is the current best deep learning model in seizure EEG signal classification. The MindAlert system can classify the seizure EEG signal and healthy EEG signal within a few seconds. Hence, this invention will hasten the diagnosis process and enlighten the workload of the neurologist. This will definitely benefit not only the doctors but the patients too, as earlier diagnosis may increase the chance to stay in seizure-free life. This brings good news to the nation and globally too as the significant economic impact caused by the epileptic seizure disease can be greatly reduced.

Contact Person/Inventor

Name Email Contact Phone
Ooi Shih Yin syooi@mmu.edu.my 0124290731

Award

Award Title Award Achievement Award Year Received
Malaysian Technology Expo MTE 2023 2023

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