This paper provides a thorough analysis of the use of electromyography (EMG) data in early stroke diagnosis and detection. Stroke continues to be a major global cause of disability and death, which emphasises the critical need for an accurate diagnosis made quickly to improve patient outcomes. Early detection is still difficult to achieve, even with improvements in medical imaging and testing technologies. By detecting minute variations in muscle activity linked to stroke symptoms, EMG data analysis offers a viable method for early stroke identification. The review delves into the diverse methodologies and strategies utilised to leverage EMG data for the purpose of stroke diagnosis, encompassing the application of deep learning models and machine learning algorithms. The paper proposes a structured framework for classifying approaches for early stroke detection and diagnosis using EMG data, providing a systematic way to categorize and compare different methodologies. The paper concludes by highlighting the revolutionary potential of EMG-based techniques in improving the diagnosis of strokes earlier and urging more study to address current issues and make clinical application easier.
Published in | International Journal of Intelligent Information Systems (Volume 13, Issue 2) |
DOI | 10.11648/j.ijiis.20241302.12 |
Page(s) | 29-42 |
Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
Copyright |
Copyright © The Author(s), 2024. Published by Science Publishing Group |
Electromyography (EMG), Stroke, Stroke Detection, Stroke Diagnosis, Neuromuscular, Muscle, Machine Learning, Deep learning, Artificial Neural Network
2.1. Stroke
2.2. Electromyography (EMG) Data
2.3. Machine Learning and Neural Networks
3.1. Existing Approaches to Stroke Detection
3.2. AI and ML in Stroke Prediction
3.3. EMG Data in Stroke Detection
3.4. Summary of Approaches for Early Stroke Detection and Diagnosis Using EMG Data
Study | Data Collection Methods and Sources | Feature Extraction Techniques | Machine Learning and Deep Learning Models | Performance Evaluation Metrics | Challenges and Limitations of the Approach |
---|---|---|---|---|---|
[34] | EMG-biofeedback, Stroke rehabilitation centers | Pattern recognition | Artificial Neural Network (ANN) | Accuracy, Sensitivity | Limited sample size, Generalization to diverse populations |
[27] | Surface EMG, Rehabilitation interventions | Extreme learning machine | Convolutional Neural Network (CNN) | Accuracy, Classification Rate | Limited sample size, Need for real-time monitoring |
[12] | Surface EMG, Electroencephalography (EEG) | Wavelet transform, Spectral analysis | Support Vector Machine (SVM) | Sensitivity, Specificity | Variability in EMG data, Noise and interference |
[15] | Electroencephalography (EEG), Stroke detection | Hybrid deep learning model | Recurrent Neural Network (RNN) | F1-score, Precision | Data variability, Limited dataset for training and validation |
[21] | Wearable EMG sensor, Stroke rehabilitation | Time-domain analysis, Wavelet transform | Long Short-Term Memory (LSTM) | Accuracy, Usability | Limited battery life, Comfort and wearability |
[3] | EMG sensors, Stroke patients | Statistical analysis | Artificial Neural Network (ANN) | Accuracy, Sensitivity | Lack of interpretability, Overfitting |
[18] | Wearable EMG sensor, Stroke prevention | Time-domain analysis | Long Short-Term Memory (LSTM) | F1-score, Accuracy | Limited real-world validation, Dependency on user adherence |
[20] | Forearm EMG, Stroke onset detection | Time-domain analysis, Frequency-domain analysis | Convolutional Neural Network (CNN) | Sensitivity, Specificity | Limited sample size, Noise and interference |
[28] | Electroencephalography (EEG), Ischemic stroke | Spectral analysis | Convolutional Neural Network (CNN) | Precision, Recall | Limited interpretability, Computational complexity |
[33] | Not specified | Time-frequency analysis | Autoencoder, Generative Adversarial Network (GAN) | Accuracy, F1-score | Lack of explainability, Complexity of models |
[39] | Not specified | Statistical analysis | Logistic Regression, Random Forest | Sensitivity, Specificity | Data heterogeneity, Limited feature selection |
[41] | Support vector machine (SVM), Ischemic stroke | Wavelet transform | Support Vector Machine (SVM) | Accuracy, Area under the curve | Limited sample size, Lack of generalization |
[4] | Brain stroke detection, Image processing | Image processing techniques | Convolutional Neural Network (CNN) | Accuracy, Sensitivity | Dependency on image quality, Complexity of networks |
[9] | Intravenous alteplase, Stroke therapy | Clinical data analysis | Logistic Regression, Cox proportional hazards model | Survival rate, Functional independence | Limited data on adverse events, Treatment biases |
[13] | Surface EMG, Stroke rehabilitation | Time-frequency analysis | Long Short-Term Memory (LSTM) | Accuracy, Usability | Limited sample size, Need for real-world validation |
[17] | Global stroke risks, Epidemiological study | Statistical analysis | Not specified | Prevalence rate, Incidence rate | Data heterogeneity, Variability in risk factors |
[18] | Stroke prevention, Artificial intelligence | Statistical analysis | Artificial Neural Network (ANN) | Accuracy, Sensitivity | Dependency on user adherence, Limited real-world validation |
[26] | Intravenous alteplase, Stroke treatment | Clinical data analysis | Cox proportional hazards model, Logistic Regression | Survival rate, Disability-free survival | Limited data on long-term outcomes, Treatment biases |
[38] | Brain infarction, Hemorrhagic transformation | Statistical analysis | Not specified | Hemorrhage rate, Clinical outcome | Variability in patient characteristics, Selection bias |
[41] | Ischemic stroke prognosis, Support vector machine | Statistical analysis | Support Vector Machine (SVM) | Accuracy, Sensitivity | Variability in patient characteristics, Limited follow-up data |
[10] | Surface EMG, Man-machine interface | Time-domain analysis | Not specified | Accuracy, Precision | Limited sample size, Generalization to diverse populations |
[7] | Intravenous therapy, Ischemic stroke | Clinical data analysis | Machine Learning Ensemble | Functional independence, Survival rate | Limited data on long-term outcomes, Treatment biases |
[3] | Artificial intelligence, Stroke diagnosis | Statistical analysis | Artificial Neural Network (ANN) | Accuracy, Sensitivity | Dependency on user input, Lack of interpretability |
[2] | Machine learning algorithms, Acute ischemic stroke | Statistical analysis | Not specified | Accuracy, Sensitivity | Dependency on algorithm selection, Interpretation bias |
[1] | Surface EMG signals | Neural Network Model | Not specified | Sensitivity, Specificity, Accuracy, ROC curve | Limited sample |
[8] | Surface EMG signals | Manifold Learning, LSTM with Attention mechanism | Not specified | Sensitivity, Specificity, Accuracy, Precision, Recall | Limited labelled data availability, Model |
[11] | - | Various onset detection methods | - | - | Lack of standardized onset detection methods, Real-time processing requirements, Performance in dynamic settings, Generalization to diverse patient populations |
[14] | Real-time Bio Signals | - | Deep Learning | Sensitivity, Specificity, Accuracy, AUC | Interpretability of model outcomes, Generalization to diverse patient populations, Real-time processing requirements, Model robustness |
[25] | Surface EMG signals | Feature extraction, Transformer-based deep learning | Transformer-based deep learning | Sensitivity, Specificity, Accuracy | Interpretability of features, Generalization to diverse patient populations, Real-time processing requirements, Model robustness |
[33] | Surface EMG signals | Feature extraction | Transformer-based deep learning | Sensitivity, Specificity, Accuracy | Interpretability of features, Generalization to diverse patient populations, Real-time processing requirements, Model robustness |
[36] | EMG signals | Recurrent Neural Networks (RNN) | Recurrent Neural Networks (RNN) | Sensitivity, Specificity, Accuracy | Interpretability of features, Generalization to diverse patient populations, Real-time processing requirements, Model robustness |
4.1. EMG Features for Stroke Detection
4.1.1. Monitoring of Muscle Activity
4.1.2. Technological Developments
4.1.3. Clinical Application
4.2. Challenges in EMG-Based Stroke Diagnosis
4.3. Emerging Trends in EMG-based Stroke Detection
5.1. Potential of EMG Data in Early Stroke Detection and Diagnosis
5.2. Challenges in Utilizing EMG Data for Stroke Diagnosis
5.3. Emerging Trends and Future Directions
6.1. Data Acquisition and Processing Techniques
6.2. Feature Extraction and Analysis Methods
6.3. Machine Learning and Deep Learning Models
6.4. Application in Rehabilitation and Monitoring
6.5. Integration with Other Modalities
Key Category | Sub-Category | Explanation | Examples of Studies |
---|---|---|---|
Data Acquisition and Processing | Surface EMG Sensors | Methods utilizing surface electrodes to capture muscle activity patterns. | [10, 13] |
Invasive EMG Techniques | Approaches requiring invasive procedures, such as intramuscular electrode placement. | [10, 20] | |
Integration with Wearable Devices | Utilization of wearable EMG sensors for continuous monitoring and data collection. | [21, 2] | |
Feature Extraction and Analysis | Time-Domain Analysis | Techniques focusing on analysing the amplitude, frequency, and duration of EMG signals over time. | [27, 34] |
Frequency-Domain Analysis | Methods that decompose EMG signals into frequency components to extract relevant features. | [27, 34] | |
Pattern Recognition | Approaches employing machine learning algorithms to identify specific patterns or abnormalities in EMG signals indicative of stroke. | [12, 15] | |
Machine Learning and Deep Learning | Artificial Neural Networks | Utilization of ANN architectures for learning complex patterns in EMG data. | [15, 12] |
Models | Convolutional Neural Networks | Application of CNNs for feature extraction and classification of EMG signals. | [15, 12] |
Recurrent Neural Networks | Use of RNNs for sequential modelling of EMG data, capturing temporal dependencies. | [3, 7] | |
Application in Rehabilitation and | EMG-controlled Robotics | Integration of EMG data with robotic devices for stroke rehabilitation and motor function recovery. | [21, 13] |
Monitoring | Real-time Monitoring Systems | Development of portable EMG devices for real-time monitoring of muscle activity and early detection of stroke symptoms. | [2, 13] |
Integration with Other Modalities | Combination with EEG | Fusion of EMG data with electroencephalography (EEG) signals to enhance stroke detection accuracy. | [27, 12] |
Image Processing Techniques | Integration of EMG data with medical imaging modalities, such as MRI or CT scans, for comprehensive stroke diagnosis. | [4, 31] | |
Challenges and Limitations | Data Variability | Challenges related to variability in EMG signals due to factors like electrode placement, muscle fatigue, and inter-subject variability. | [10, 20] |
Model Generalization | Difficulties in developing models that generalize well across diverse patient populations and clinical settings. | [15, 12] | |
Clinical Adoption | Barriers to the widespread adoption of EMG-based stroke detection methods in clinical practice, including cost, accessibility, and usability considerations. | [3, 2] |
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APA Style
Chile-Agada, B., Ochei, L. C., Egbono, F. (2024). Evaluation of Approaches for Early Stroke Detection and Diagnosis Using EMG Data: Features, Techniques, and Challenges. International Journal of Intelligent Information Systems, 13(2), 29-42. https://doi.org/10.11648/j.ijiis.20241302.12
ACS Style
Chile-Agada, B.; Ochei, L. C.; Egbono, F. Evaluation of Approaches for Early Stroke Detection and Diagnosis Using EMG Data: Features, Techniques, and Challenges. Int. J. Intell. Inf. Syst. 2024, 13(2), 29-42. doi: 10.11648/j.ijiis.20241302.12
AMA Style
Chile-Agada B, Ochei LC, Egbono F. Evaluation of Approaches for Early Stroke Detection and Diagnosis Using EMG Data: Features, Techniques, and Challenges. Int J Intell Inf Syst. 2024;13(2):29-42. doi: 10.11648/j.ijiis.20241302.12
@article{10.11648/j.ijiis.20241302.12, author = {Bob Chile-Agada and Laud Charles Ochei and Fubara Egbono}, title = {Evaluation of Approaches for Early Stroke Detection and Diagnosis Using EMG Data: Features, Techniques, and Challenges }, journal = {International Journal of Intelligent Information Systems}, volume = {13}, number = {2}, pages = {29-42}, doi = {10.11648/j.ijiis.20241302.12}, url = {https://doi.org/10.11648/j.ijiis.20241302.12}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ijiis.20241302.12}, abstract = {This paper provides a thorough analysis of the use of electromyography (EMG) data in early stroke diagnosis and detection. Stroke continues to be a major global cause of disability and death, which emphasises the critical need for an accurate diagnosis made quickly to improve patient outcomes. Early detection is still difficult to achieve, even with improvements in medical imaging and testing technologies. By detecting minute variations in muscle activity linked to stroke symptoms, EMG data analysis offers a viable method for early stroke identification. The review delves into the diverse methodologies and strategies utilised to leverage EMG data for the purpose of stroke diagnosis, encompassing the application of deep learning models and machine learning algorithms. The paper proposes a structured framework for classifying approaches for early stroke detection and diagnosis using EMG data, providing a systematic way to categorize and compare different methodologies. The paper concludes by highlighting the revolutionary potential of EMG-based techniques in improving the diagnosis of strokes earlier and urging more study to address current issues and make clinical application easier. }, year = {2024} }
TY - JOUR T1 - Evaluation of Approaches for Early Stroke Detection and Diagnosis Using EMG Data: Features, Techniques, and Challenges AU - Bob Chile-Agada AU - Laud Charles Ochei AU - Fubara Egbono Y1 - 2024/04/17 PY - 2024 N1 - https://doi.org/10.11648/j.ijiis.20241302.12 DO - 10.11648/j.ijiis.20241302.12 T2 - International Journal of Intelligent Information Systems JF - International Journal of Intelligent Information Systems JO - International Journal of Intelligent Information Systems SP - 29 EP - 42 PB - Science Publishing Group SN - 2328-7683 UR - https://doi.org/10.11648/j.ijiis.20241302.12 AB - This paper provides a thorough analysis of the use of electromyography (EMG) data in early stroke diagnosis and detection. Stroke continues to be a major global cause of disability and death, which emphasises the critical need for an accurate diagnosis made quickly to improve patient outcomes. Early detection is still difficult to achieve, even with improvements in medical imaging and testing technologies. By detecting minute variations in muscle activity linked to stroke symptoms, EMG data analysis offers a viable method for early stroke identification. The review delves into the diverse methodologies and strategies utilised to leverage EMG data for the purpose of stroke diagnosis, encompassing the application of deep learning models and machine learning algorithms. The paper proposes a structured framework for classifying approaches for early stroke detection and diagnosis using EMG data, providing a systematic way to categorize and compare different methodologies. The paper concludes by highlighting the revolutionary potential of EMG-based techniques in improving the diagnosis of strokes earlier and urging more study to address current issues and make clinical application easier. VL - 13 IS - 2 ER -