Validation of Continuous Monitoring System for Epileptic Users in Outpatient Settings
Abstract
:1. Introduction
- Electrocardiogram (ECG): the electrical activity of the heart is measured since every time the heart beats, an electrical signal flows through it. In order to record this signal, electrodes are placed on the chest. Thanks to the ECG, several heart diseases such as arrhythmia or heart failure can be diagnosed [11].
- Photoplethysmography (PPG): this is a non-invasive optical technique that is used to detect changes in blood volume in the microvascular layer of the tissue [12]. Commonly, there are two configurations to obtain the photoplethysmography signal, one of them consisting of placing an LED diode on one side of the tissue and the photodetector on the other side of the tissue so that the photodetector measures the transmitted light. The other configuration consists of placing the LED diode and the photodetector on the same side of the tissue in such a way that the photodetector measures the reflection of light. PPG voltage signal is inversely proportional to the amount of blood flowing in the former case, and proportional in the latter case. Thus, this technique allows detection of the pulse wave that is transmitted through the blood vessels [13].
- Electroencephalogram (EEG): the electrical activity of the brain is measured. This signal is used to develop applications related to brain–machine interfaces. Some important applications are emotion recognition [14,15] neuromotor disorders [16,17] and brainwave-based control [18,19,20]. There are studies that have compared and validated the results obtained from neuropsychological tests of attention with attention level tests based on BCI systems [21]. The changes that occurred in the intensity of brainwaves of test subjects recorded while browsing different media content were analyzed in [22]. Apart from BCI systems, there are other methods of human-computer interaction, such as eye movement tracking [23]. These systems can be used in the analysis of programming technologies such as LINQ [24], thus allowing, the loading of cognition or source code and algorithm description tools for readability [25]. Moreover, EEG is an essential clinical tool to study and diagnose many neurological diseases, such as epilepsy [26,27]. In a conventional way, EEG signals are recorded by placing electrodes on the scalp. However, this is not practical for the acquisition of EEG in natural situations of daily life, in which the acquisition system must be portable, discreet and with minimal disturbance for the user. As a consequence, several ear-focused EEG solutions have been presented in recent years [28,29,30,31].
2. Materials and Methods
2.1. Device Description and Implementation
2.1.1. OpenBCI
- An integrated circuit developed by Texas Instruments for biopotential measurements with 24-bit resolution (ADS1299).
- A 3-axis accelerometer (LIS3DH).
- A module for storing data in a micro SD card.
- A radio module (to connect and communicate with a dongle connected to a computer or tablet). The application to communicate with OpenBCI is an open-source application written with Processing language.
2.1.2. MAX86150
2.1.3. Ambulatory Monitoring System
2.2. Static System Validation
- Eyes closed (15 min).
- Opening and closing the eyes (1 min).
- Hyperventilation, 15–20 breaths/min (3 min).
- Light stimulation with open eyes, blinking at 2.5 Hz (1 min).
2.2.1. Signal Processing
- Delta waves (<4 Hz): these ones have the largest wave amplitude and are related to deep sleep.
- Theta waves (4–8 Hz): these ones are related to internal cognitive tasks, imaginative abilities, reflection and sleep.
- Alpha waves (8–13 Hz): these ones predominate when the Central Nervous System is at rest, relaxed but awake and attentive.
- Beta waves (13–30 Hz): these ones are associated with external cognitive tasks, and activities related to concentration, such as solving a mathematical problem.
2.2.2. Calculation of HRV and PTT Parameters
2.3. Ambulatory System Validation
- Have a snack (3 min): The user has a snack while sitting on the chair. During this activity, due to chewing, artifacts are likely to occur in the ear EEG signal.
- Brushing teeth (3 min): The user is standing while brushing his teeth. Due to hand movements, artifacts in the ECG and PPG signal may appear.
- Combing the hair (3 min): The user is standing and combing their hair. Again, the hand movements can lead to artifacts in the ECG and PPG signal.
- Outdoor walk with concentration activity (7 min): The user takes a walk outdoors during the day. At the same time, the user has to memorize sequences of numbers told by another person while walking. The walking movement might yield artifacts in all signals. In addition, it could increase the user’s heart rate.
- Read a book in silence (3 min): The user is sitting and reading a book in a silent atmosphere. This activity is intended to keep the user relaxed and so that the signals are recorded free of artifacts.
- Power walking (8 min): The user goes for a walk again, but this time faster. This circumstance may increase both the signal artifacts due to movement and the heart rate.
- Doing a sudoku (3 min): The user is sitting and doing a sudoku. The aim of this activity is to keep the user concentrated and to so that a lower heart rate is registered. In addition, when performing a concentration task related to a mathematical problem, it should be possible to observe how beta waves predominate in the ear EEG signal.
2.3.1. Signal Processing
- Apply a conventional ICA decomposition to raw EEG, thus obtaining the mixing matrix M and N independent components {s1(t), s2(t),…,sN(t)}.
- Wavelet transform components obtaining their representations {W(j, k)}si.
- Threshold the wavelet coefficients, i.e., set W(j, k) = 0 for those that are higher than the threshold, |W(j, k)| > K.
- Inverse wavelet transform of the thresholded coefficients W(j, k) thus recomposing components consisting sources of the neural origin only {ni(t)}.
- Compose wICA-corrected EEG: X (t) = M · [n1(t), n2(t), … , nN(t)]T.
2.3.2. Calculation of HRV and PTT Parameters
3. Results
3.1. Validation and Comparison of the Static System
3.2. Removal of Artifacts in the ECG Signal in Outpatient Settings
3.3. Removal of Artifacts in the PPG Signal in Outpatient Settings
3.4. Removal of Artifacts in the Ear EEG Signal in Outpatient Settings
3.5. Variation of HRV and PTT Parameters
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
- Baulac, M.; De Boer, H.; Elger, C.; Glynn, M.; Kälviäinen, R.; Little, A.; Mifsud, J.; Perucca, E.; Pitkänen, A.; Ryvlin, P. Epilepsy priorities in Europe: A report of the ILAE-IBE, Epilepsy Advocacy Europe Task Force. Epilepsia 2015, 56, 1687–1695. [Google Scholar] [CrossRef] [PubMed]
- Sana, F.; Isselbacher, E.M.; Singh, J.P.; Heist, E.K.; Pathik, B.; Armoundas, A.A. Wearable Devices for Ambulatory Cardiac Monitoring: JACC State-of-the-Art Review. J. Am. Coll. Cardiol. 2020, 75, 1582–1592. [Google Scholar] [CrossRef] [PubMed]
- Kuehn, B.M. Telemedicine helps cardiologists extend their reach. Circulation 2016, 134, 1189–1191. [Google Scholar] [CrossRef] [PubMed]
- Li, H.; Boulanger, P. A Survey of Heart Anomaly Detection Using Ambulatory Electrocardiogram (ECG). Sensors 2020, 20, 1461. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Rubio, P.; Hampel, K.; Giner, P. Grafoelementos, artifactos e informe del EEG. In Guía práctica de Epilepsia de la Comunidad Valenciana, 2nd ed.; Sociedad Valenciana de Neurología: Madrid, Spain, 2020; pp. 29–60. [Google Scholar]
- Harrigan, R.A.; Chan, T.C.; Brady, W.J. Electrocardiographic Electrode Misplacement, Misconnection, and Artifact. J. Emerg. Med. 2012, 43, 1038–1044. [Google Scholar] [CrossRef]
- Serhani, M.A.; El Kassabi, H.T.; Ismail, H.; Nujum Navaz, A. ECG Monitoring Systems: Review, Architecture, Processes, and Key Challenges. Sensors 2020, 20, 1796. [Google Scholar] [CrossRef] [Green Version]
- Kaur, J.; Kaur, A. A review on analysis of EEG signals. In Proceedings of the International Conference on Advances in Computer Engineering and Applications, Ghaziabad, India, 19–20 March 2015; pp. 957–960. [Google Scholar]
- Karpiel, I.; Kurasz, Z.; Kurasz, R.; Duch, K. The Influence of Filters on EEG-ERP Testing: Analysis of Motor Cortex in Healthy Subjects. Sensors 2021, 21, 7711. [Google Scholar] [CrossRef]
- McDermott, E.J.; Raggam, P.; Kirsch, S.; Belardinelli, P.; Ziemann, U.; Zrenner, C. Artifacts in EEG-Based BCI Therapies: Friend or Foe? Sensors 2022, 22, 96. [Google Scholar] [CrossRef]
- Becker, D.E. Fundamentals of Electrocardiography Interpretation. Anesthesia Prog. 2006, 53, 53–64. [Google Scholar] [CrossRef] [Green Version]
- Park, J.; Seo, H.; Kim, S.-S.; Shin, H. Photoplethysmogram Analysis and Applications: An Integrative Review. Front. Physiol. 2022, 12, 808451. [Google Scholar] [CrossRef]
- Castaneda, D.; Esparza, A.; Ghamari, M.; Soltanpur, C.; Nazeran, H. A review on wearable photoplethysmography sensors and their potential future applications in health care. Int. J. Biosens. Bioelectron 2018, 4, 195–202. [Google Scholar] [PubMed] [Green Version]
- Šumak, B.; Brdnik, S.; Pušnik, M. Sensors and Artificial Intelligence Methods and Algorithms for Human–Computer Intelligent Interaction: A Systematic Mapping Study. Sensors 2020, 22, 20. [Google Scholar] [CrossRef] [PubMed]
- Suhaimi, N.S.; Mountstephens, J.; Teo, J. EEG-Based Emotion Recognition: A State-of-the-Art Review of Current Trends and Opportunities. Comput. Intell. Neurosci. 2020, 2020, 8875426. [Google Scholar] [CrossRef] [PubMed]
- Brambilla, C.; Pirovano, I.; Mira, R.M.; Rizzo, G.; Scano, A.; Mastropietro, A. Combined Use of EMG and EEG Techniques for Neuromotor Assessment in Rehabilitative Applications: A Systematic Review. Sensors 2021, 21, 7014. [Google Scholar] [CrossRef] [PubMed]
- Cincotti, F.; Pichiorri, F.; Aricò, P.; Aloise, F.; Leotta, F.; de Vico Fallani, F.; Millán, J.D.R.; Molinari, M.; Mattia, D. EEG-based Brain-Computer Interface to support post-stroke motor rehabilitation of the upper limb. In Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society, San Diego, CS, USA, 28 August–1 September 2012; pp. 4112–4115. [Google Scholar]
- Nafea, M.; Hisham, A.B.; Abdul-Kadir, N.A.; Harun, F.K.C. Brainwave-Controlled System for Smart Home Applications. In Proceedings of the 2nd International Conference on BioSignal Analysis, Processing and Systems (ICBAPS), Kuching, Malaysia, 24–26 July 2018; pp. 75–80. [Google Scholar] [CrossRef]
- Kumari, P.; Vaish, A. Brainwave based user identification system: A pilot study in robotics environment. Robot. Auton. Syst. 2015, 65, 15–23. [Google Scholar] [CrossRef]
- Katona, J.; Ujbanyi, T.; Sziladi, G.; Kovari, A. Speed control of Festo Robotino mobile robot using NeuroSky MindWave EEG headset based brain-computer interface. In Proceedings of the 7th IEEE International Conference on Cognitive Infocommunications (CogInfoCom), Wroclaw, Poland, 16–18 October 2016; pp. 000251–000256. [Google Scholar] [CrossRef]
- Katona, J.; Kovari, A. The Evaluation of BCI and PEBL-based Attention Tests. Acta Polytech. Hung. 2018, 15, 225–249. [Google Scholar]
- Katona, J.; Ujbanyi, T.; Sziladi, G.; Kovari, A. Examine the effect of different web-based media on human brain waves. In Proceedings of the 8th IEEE International Conference on Cognitive Infocommunications (CogInfoCom), Debrecen, Hungary, 11–14 September 2017; pp. 000407–000412. [Google Scholar]
- Kasprowski, P.; Harezlak, K.; Niezabitowski, M. Eye movement tracking as a new promising modality for human computer interaction. In Proceedings of the 17th International Carpathian Control Conference (ICCC), High Tatras, Slovakia, 29 May–1 June 2016; pp. 314–318. [Google Scholar] [CrossRef]
- Katona, J. Analyse the Readability of LINQ Code using an Eye-Tracking-based Evaluation. Acta Polytech. Hung. 2021, 18, 193–215. [Google Scholar] [CrossRef]
- Katona, J. Measuring Cognition Load Using Eye-Tracking Parameters Based on Algorithm Description Tools. Sensors 2022, 22, 912. [Google Scholar] [CrossRef]
- Smith, S.J.M. EEG in the diagnosis, classification, and management of patients with epilepsy. J. Neurol. Neurosurg. Psychiatry 2005, 76, ii2–ii7. [Google Scholar] [CrossRef] [Green Version]
- Zhou, M.; Tian, C.; Cao, R.; Wang, B.; Niu, Y.; Hu, T.; Guo, H.; Xiang, Z. Epileptic Seizure Detection Based on EEG Signals and CNN. Front. Neuroinform. 2018, 12, 95. [Google Scholar] [CrossRef] [Green Version]
- Meiser, A.; Tadel, F.; Debener, S.; Bleichner, M.G. The Sensitivity of Ear-EEG: Evaluating the Source-Sensor Relationship Using Forward Modeling. Brain Topogr. 2020, 33, 665–676. [Google Scholar] [CrossRef] [PubMed]
- Athavipach, C.; Pan-Ngum, S.; Israsena, P. A Wearable In-Ear EEG Device for Emotion Monitoring. Sensors 2019, 19, 4014. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Bleichner, M.G.; Debener, S. Concealed, Unobtrusive Ear-Centered EEG Acquisition: cEEGrids for Transparent EEG. Front. Hum. Neurosci. 2017, 11, 163. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Zibrandtsen, I.C.; Kidmose, P.; Christensen, C.B.; Kjaer, T.W. Ear-EEG detects ictal and interictal abnormalities in focal and gener-alized epilepsy—A comparison with scalp EEG monitoring. Clin. Neurophysiol. 2017, 128, 2454–2461. [Google Scholar] [CrossRef] [PubMed]
- Gordan, R.; Gwathmey, J.K.; Xie, L.-H. Autonomic and endocrine control of cardiovascular function. World J. Cardiol. 2015, 7, 204–214. [Google Scholar] [CrossRef] [PubMed]
- DeGiorgio, C.M.; Miller, P.; Meymandi, S.; Chin, A.; Epps, J.; Gordin, S. RMSSD, a measure of vagus-mediated heart rate variability, is associated with risk factors for SUDEP: The SUDEP-7 Inventory. Epilepsy Behav. 2010, 19, 78–81. [Google Scholar] [CrossRef] [Green Version]
- Singh, N.; Moneghetti, K.J.; Christle, J.W.; Hadley, D.; Plews, D.; Froelicher, V. Heart Rate Variability: An Old Metric with New Meaning in the Era of using mHealth Technologies for Health and Exercise Training Guidance. Part One: Physiology and Methods. Arrhythm. Electrophysiol. Rev. 2018, 7, 193–198. [Google Scholar] [CrossRef] [Green Version]
- Moridani, M.K.; Farhadi, H. Heart rate variability as a biomarker for epilepsy seizure prediction. Bratisl. Med. J. 2017, 118, 3–8. [Google Scholar] [CrossRef] [Green Version]
- Myers, K.A.; Bello-Espinosa, L.E.; Symonds, J.D.; Zuberi, S.M.; Clegg, R.; Sadleir, L.G.; Buchhalter, J.; Scheffer, I.E. Heart rate variability in epilepsy: A potential biomarker of sudden unexpected death in epilepsy risk. Epilepsia 2018, 59, 1372–1380. [Google Scholar] [CrossRef] [Green Version]
- Block, R.C.; Yavarimanesh, M.; Natarajan, K.; Carek, A.; Mousavi, A.; Chandrasekhar, A.; Kim, C.-S.; Zhu, J.; Schifitto, G.; Mestha, L.K.; et al. Conventional pulse transit times as markers of blood pressure changes in humans. Sci. Rep. 2020, 10, 16373. [Google Scholar] [CrossRef]
- Smith, R.P.; Argod, J.; Pépin, J.-L.; Lévy, P.A. Pulse transit time: An appraisal of potential clinical applications. Thorax 1999, 54, 452–457. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Nass, R.D.; Hampel, K.; Elger, C.E.; Surges, R. Blood Pressure in Seizures and Epilepsy. Front. Neurol. 2019, 10, 501. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Post-ictal Physiology: Adding Blood Pressure to the Equation. Available online: https://www.epilepsy.com/article/2016/12/post-ictal-physiology-adding-blood-pressure-equation (accessed on 30 March 2022).
- Singh, A.; Hussain, A.A.; Lal, S.; Guesgen, H.W. A Comprehensive Review on Critical Issues and Possible Solutions of Motor Imagery Based Electroencephalography Brain-Computer Interface. Sensors 2021, 21, 2173. [Google Scholar] [CrossRef] [PubMed]
- Diykh, M.; Li, Y.; Wen, P.; Li, T. Complex networks approach for depth of anesthesia assessment. Measurement 2018, 119, 178–189. [Google Scholar] [CrossRef]
- Covantes-Osuna, C.; López, J.B.; Paredes, O.; Vélez-Pérez, H.; Romo-Vázquez, R. Multilayer Network Approach in EEG Motor Imagery with an Adaptive Threshold. Sensors 2021, 21, 8305. [Google Scholar] [CrossRef] [PubMed]
- Apple, Why Apple Watch. Available online: https://www.apple.com/watch/why-apple-watch/ (accessed on 30 March 2022).
- iRHYTHM Technologies, Uninterrumpled Ambulatory Cardiac Monitoring. Available online: https://www.irhythmtech.com/ (accessed on 30 March 2022).
- Integrated, M. MAX-ECGMONITOR Wearable ECG and Heart Monitor Evaluation and Development Platform. Available online: https://www.maximintegrated.com/en/products/interface/sensor-interface/MAX-ECGMONITOR.html (accessed on 30 March 2022).
- Medtronic. Zephyr Performance Systems. Available online: https://www.zephyranywhere.com (accessed on 30 March 2022).
- Fitbit, Advanced Fitness + Health Tracker. Available online: https://www.fitbit.com/global/us/products/trackers/charge5 (accessed on 30 March 2022).
- Cosinuss, «cosinuss One—Performance Monitoring. Available online: https://www.cosinuss.com/en/products/data-acquisition/in-ear-sensors/one/ (accessed on 30 March 2022).
- Medtronic, Nellcor™. Portable SpO₂ Patient Monitoring System. Available online: https://www.medtronic.com/covidien/en-us/products/pulse-oximetry/nellcor-portable-spo2-patient-monitoring-system.html (accessed on 30 March 2022).
- Oura Health, Accurate Health Information Accesible to Everyone. Available online: https://ouraring.com/ (accessed on 30 March 2022).
- Emotiv. Epoc Flex—32-Channel Wireless EEG Device. Available online: https://www.emotiv.com/epoc-flex/ (accessed on 30 March 2022).
- NeuroSky. MindWave. Available online: https://store.neurosky.com/pages/mindwave (accessed on 30 March 2022).
- Tmsi. EEG Headcaps. Available online: https://www.tmsi.com/products/eeg-headcaps/ (accessed on 30 March 2022).
- MJN. Seras. Available online: https://mjn.cat/ (accessed on 30 March 2022).
- Masihi, S.; Panahi, M.; Maddipatla, D.; Hanson, A.J.; Fenech, S.; Bonek, L.; Sapoznik, N.; Fleming, P.D.; Bazuin, B.J.; Atashbar, M.Z. Development of a Flexible Wireless ECG Monitoring Device with Dry Fabric Electrodes for Wearable Applications. IEEE Sensors J. 2021. [Google Scholar] [CrossRef]
- Kim, B.H.; Jo, S.; Choi, S. ALIS: Learning Affective Causality Behind Daily Activities from a Wearable Life-Log System. IEEE Trans. Cybern. 2021, 1–13. [Google Scholar] [CrossRef]
- Juez, J.; Henao, D.; Segura, F.; Gomez, R.; Le Van Quyen, M.; Valderrama, M. Development of a wearable system with In-Ear EEG electrodes for the monitoring of brain activities: An application to epilepsy. In Proceedings of the IEEE 2nd International Congress of Biomedical Engineering and Bioengineering (CI-IB&BI), Bogota, Colombia, 13–15 October 2021; pp. 1–4. [Google Scholar] [CrossRef]
- Yamakawa, T.; Miyajima, M.; Fujiwara, K.; Kano, M.; Suzuki, Y.; Watanabe, Y.; Watanabe, S.; Hoshida, T.; Inaji, M.; Maehara, T. Wearable Epileptic Seizure Prediction System with Machine-Learning-Based Anomaly Detection of Heart Rate Variability. Sensors 2020, 20, 3987. [Google Scholar] [CrossRef] [PubMed]
- OpenBCI. Available online: www.openbci.com (accessed on 30 March 2022).
- Ahufinger, S.; Balugo, P.; González, M.M.; Pequeño, E.; González, H.; Herrero, P. A User-centered Smartphone Application for Wireless EEG and its Role in Epilepsy. IJIMAI 2019, 5, 43–47. [Google Scholar] [CrossRef]
- Peterson, V.; Galván, C.; Hernández, H.; Spies, R. A feasibility study of a complete low-cost consumer-grade brain-computer interface system. Heliyon 2020, 6, 0345. [Google Scholar] [CrossRef]
- Rashid, U.; Niazi, I.K.; Signal, N.; Taylor, D. An EEG Experimental Study Evaluating the Performance of Texas Instruments ADS1299. Sensors 2018, 18, 3721. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- MAX86150 Datasheet. Available online: https://datasheets.maximintegrated.com/en/ds/MAX86150.pdf (accessed on 30 March 2022).
- Golden, D.P.; Wolthuis, R.A.; Hoffler, G.W. A Spectral Analysis of the Normal Resting Electrocardiogram. IEEE Trans. Biomed. Eng. 1973, 20, 366–372. [Google Scholar] [CrossRef] [PubMed]
- Johnstone, J.A.; Ford, P.A.; Hughes, G.; Watson, T.; Garrett, A.T. Bioharness(™) multivariable monitoring device: Part I: Validity. J. Sports Sci. Med. 2012, 11, 400–408. [Google Scholar] [PubMed]
- Johnstone, J.A.; Ford, P.A.; Hughes, G.; Watson, T.; Garrett, A.T. Bioharness(™) Multivariable Monitoring Device: Part. II: Reliability. J. Sports Sci. Med. 2012, 11, 409–417. [Google Scholar] [PubMed]
- e-Health Sensor Platform V1.0 for Arduino and Raspberry Pi [Biometric/Medical Applications]. E-Health—Sensors—Shop. Available online: cooking-hacks.com (accessed on 30 March 2022).
- Biswas, B.C.; Bhalerao, S.V. A real time based wireless wearable EEG device for epilepsy seizure control. In Proceedings of the International Conference on Communications and Signal Processing (ICCSP), Chengdu, China, 2–4 April 2015; pp. 0149–0153. [Google Scholar]
- Lee, M.; Song, C.B.; Shin, G.H.; Lee, S.W. Possible Effect of Binaural Beat Combined with Autonomous Sensory Meridian Response for Inducing Sleep. Front. Hum. Neurosci. 2019, 13, 425. [Google Scholar] [CrossRef] [Green Version]
- Zambrana-Vinaroz, D.; Vicente-Samper, J.M.; Juan, C.G.; Esteve-Sala, V.; Sabater-Navarro, J.M. Non-Invasive Device for Blood Pressure Wave Acquisition by Means of Mechanical Transducer. Sensors 2019, 19, 4311. [Google Scholar] [CrossRef] [Green Version]
- Wavelet Toolbox (Matlab). Available online: https://es.mathworks.com/products/wavelet.html (accessed on 30 March 2022).
- Castellanos, N.; Makarov, V.A. Recovering EEG brain signals: Artifact suppression with wavelet enhanced independent component analysis. J. Neurosci. Methods 2006, 158, 300–312. [Google Scholar] [CrossRef]
- Autoregressive Power Spectral Density Estimate—Burg’s Method. Available online: https://es.mathworks.com/help/signal/ref/pburg.html (accessed on 30 March 2022).
- Citi, L.; Brown, E.N.; Barbieri, R. A real-time automated point-process method for the detection and correction of erroneous and ectopic heartbeats. IEEE Trans Biomed. Eng. 2012, 59, 2828–2837. [Google Scholar] [CrossRef] [Green Version]
- Lipponen, J.A.; Tarvainen, M.P. A robust algorithm for heart rate variability time series artefact correction using novel beat classification. J. Med. Eng. Technol. 2019, 43, 173–181. [Google Scholar] [CrossRef]
- Hoeksel, S.A.; Jansen, J.R.; Blom, J.A.; Schreuder, J.J. Detection of dicrotic notch in arterial pressure signals. J. Clin. Monit. 1997, 13, 309–316. [Google Scholar] [CrossRef]
- Jachymek, M.; Jachymek, M.T.; Kiedrowicz, R.M.; Kaźmierczak, J.; Płońska-Gościniak, E.; Peregud-Pogorzelska, M. Wristbands in Home-Based Rehabilitation—Validation of Heart Rate Measurement. Sensors 2022, 22, 60. [Google Scholar] [CrossRef] [PubMed]
- Wood, C.; Cano, V.A. La Hiperventilación y el Trastorno de Angustia a la Luz de un Marco Cognitivo. Clín. Salud 2021, 20, 57–66. [Google Scholar]
Gender | Age (Years) | Weight (kg) |
---|---|---|
Male | 26 | 78 |
Male | 29 | 65 |
Female | 24 | 63 |
Male | 47 | 80 |
Female | 23 | 65 |
Gender | Age (Years) | Weight (kg) |
---|---|---|
Male | 24 | 90 |
Male | 26 | 78 |
Female | 25 | 65 |
Male | 41 | 72 |
Female | 23 | 65 |
Male | 24 | 78 |
Male | 47 | 80 |
Female | 23 | 56 |
Female | 24 | 63 |
Male | 29 | 65 |
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. |
© 2022 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Zambrana-Vinaroz, D.; Vicente-Samper, J.M.; Sabater-Navarro, J.M. Validation of Continuous Monitoring System for Epileptic Users in Outpatient Settings. Sensors 2022, 22, 2900. https://doi.org/10.3390/s22082900
Zambrana-Vinaroz D, Vicente-Samper JM, Sabater-Navarro JM. Validation of Continuous Monitoring System for Epileptic Users in Outpatient Settings. Sensors. 2022; 22(8):2900. https://doi.org/10.3390/s22082900
Chicago/Turabian StyleZambrana-Vinaroz, David, Jose Maria Vicente-Samper, and Jose Maria Sabater-Navarro. 2022. "Validation of Continuous Monitoring System for Epileptic Users in Outpatient Settings" Sensors 22, no. 8: 2900. https://doi.org/10.3390/s22082900
APA StyleZambrana-Vinaroz, D., Vicente-Samper, J. M., & Sabater-Navarro, J. M. (2022). Validation of Continuous Monitoring System for Epileptic Users in Outpatient Settings. Sensors, 22(8), 2900. https://doi.org/10.3390/s22082900