| Literature DB >> 36105439 |
Deju Shen1, Yuqin Deng1, Chunyan Lin1, Jianshu Li1, Xuehua Lin1, Chaoning Zou1.
Abstract
Epilepsy is one of the most common brain disorders worldwide. Poststroke epilepsy (PSE) affects functional retrieval after stroke and brings considerable social values. A stroke occurs when the blood circulation to the brain fails, causing speech difficulties, memory loss, and paralysis. An electroencephalogram (EEG) is a tool that may detect anomalies in brain electrical activity, including those induced by a stroke. Using EEG data to determine the electrical action in the brains of stroke patients is an effort to measure therapy. Hence in this paper, deep learning assisted gene mutation analysis (DL-GMA) was utilized for classifying poststroke epilepsy in patients. This study suggested a model categorizing poststroke patients based on EEG signals that utilized wavelet, long short-term memory (LSTM), and convolutional neural networks (CNN). Gene mutation analysis can help determine the cause of an individual's epilepsy, leading to an accurate diagnosis and the best probable medical management. The test outcomes show the viability of noninvasive approaches that quickly evaluate brain waves to monitor and detect daily stroke diseases. The simulation outcomes demonstrate that the proposed GL-GMA achieves a high accuracy ratio of 98.3%, a prediction ratio of 97.8%, a precision ratio of 96.5%, and a recall ratio of 95.6% and decreases the error rate 10.3% compared to other existing methods.Entities:
Mesh:
Year: 2022 PMID: 36105439 PMCID: PMC9444425 DOI: 10.1155/2022/4801037
Source DB: PubMed Journal: Contrast Media Mol Imaging ISSN: 1555-4309 Impact factor: 3.009
Figure 1Proposed DL-GMA.
Figure 2(a) No stroke. (b) Stroke. (c) Hyperacute stroke. (d) Ischemic stroke.
Figure 3CNN architecture.
Figure 4LSTM model.
Pathologies linked with every gene mutation.
| Gene | Pathology |
|---|---|
| MTHFR | Brain venous thrombosis and cerebral artery stroke |
| Factor V | Cerebral artery stroke and brain venous thrombosis |
Figure 5Gene mutation of poststroke and central pain detection.
Figure 6Accuracy ratio.
Figure 7Prediction ratio.
Figure 8Precision ratio.
Figure 9Recall ratio.
Figure 10Error rate.