Towards an Accurate Faults Detection Approach in Internet of Medical Things Using Advanced Machine Learning Techniques
Abstract
:1. Introduction
- Break the transmission chain.
- Ensure a continuous control.
- Reduce health costs.
- The proposed solution exploits the existing correlation between the vital signs, where the focus is solely on the most correlated (strongly correlated) vital signs to the current physiological parameter, using Pearson correlation coefficients.
- Using the J48 decision tree, we are able to classify the received data, but in a reduced manner, using the strongly correlated vital signs that are determined in the previous phase. This way abnormal data can be properly classified.
- We rely on linear regression for prediction using the most correlated parameters; if the difference between the actual value and the predicted value is greater than a specific threshold, then the received abnormal value is considered faulty; otherwise, an alarm should be triggered to the health care worker for intervention. This way, storage requirements, processing energy consumption, and execution time shall be reduced.
2. Related Works
2.1. Statistical Solutions
2.2. Machine Learning-Based Solutions
3. Background
3.1. Decision Tree
J48 Classifier
Algorithm 1: J48 Algorithm. |
|
3.2. Linear Regression
4. Our Contributions
4.1. System Model
4.2. Proposed Method
4.2.1. Phase 1: Correlation
4.2.2. Phase 2: J48 Decision Tree Classifier
4.2.3. Phase 3: Linear Regression
Algorithm 2: Proposed fault detection algorithm. |
5. Experiment and Results
6. Conclusions and Future Work
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Parameter | Value |
---|---|
Clinic Bank | PhysioBank ATM |
DataBase | MIMIC |
Record | 221n |
Signal1 | ABPmean |
Signal2 | ABPsys |
Signal3 | ABPdias |
Signal4 | HR |
Signal5 | PULSE |
Signal6 | RESP |
Signal7 | SpO2 |
Rate | Our Approach | KNN | Haque et al. [19] | NaiveBayes |
---|---|---|---|---|
TPR | 99.80% | 98.10% | 98.10% | 97.10% |
FPR | 0.60% | 2.2% | 21.6% | 53.6% |
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Bahache, M.; Tahari, A.E.K.; Herrera-Tapia, J.; Lagraa, N.; Calafate, C.T.; Kerrache, C.A. Towards an Accurate Faults Detection Approach in Internet of Medical Things Using Advanced Machine Learning Techniques. Sensors 2022, 22, 5893. https://doi.org/10.3390/s22155893
Bahache M, Tahari AEK, Herrera-Tapia J, Lagraa N, Calafate CT, Kerrache CA. Towards an Accurate Faults Detection Approach in Internet of Medical Things Using Advanced Machine Learning Techniques. Sensors. 2022; 22(15):5893. https://doi.org/10.3390/s22155893
Chicago/Turabian StyleBahache, Mohamed, Abdou El Karim Tahari, Jorge Herrera-Tapia, Nasreddine Lagraa, Carlos Tavares Calafate, and Chaker Abdelaziz Kerrache. 2022. "Towards an Accurate Faults Detection Approach in Internet of Medical Things Using Advanced Machine Learning Techniques" Sensors 22, no. 15: 5893. https://doi.org/10.3390/s22155893
APA StyleBahache, M., Tahari, A. E. K., Herrera-Tapia, J., Lagraa, N., Calafate, C. T., & Kerrache, C. A. (2022). Towards an Accurate Faults Detection Approach in Internet of Medical Things Using Advanced Machine Learning Techniques. Sensors, 22(15), 5893. https://doi.org/10.3390/s22155893