- Open Access
- Total Downloads : 210
- Authors : Atiya Masood Rana
- Paper ID : IJERTV2IS110878
- Volume & Issue : Volume 02, Issue 11 (November 2013)
- Published (First Online): 25-11-2013
- ISSN (Online) : 2278-0181
- Publisher Name : IJERT
- License: This work is licensed under a Creative Commons Attribution 4.0 International License
Sleep Apnea Monitoring and Tracking System: Novel Application of Integrated Sensor, Persuasive Technology, Soft Computing
Atiya Masood Rana
Yanbu University College
Abstract
Obstructive Sleep Apnea (OSA) is a disease in which airway blocks during sleep, leading to serious consequences. The current standard of diagnosis for OSA, polysomnography (PSG), requires that the patients spend one full day in a hospital. It is an expensive, inconvenient procedure and not accessible by each and every patient. So, home monitoring sleep apnea system is needed that would provide an inexpensive and comfortable solution. This research will propose an embedded system that processes different bio signals, persuasive technology for sleep analysis and soft computing for inference and diagnosis of OSA. The proposed solution is a low cost, low power, reliable, non-intrusive, and non- invasive vital signs monitor that processes and analyses the sleep data. After that this data transmit to the users smart phone by using Wireless radio and diagnosis OSA by using neural network and fuzzy logic.
KeywordsSleep apnea, polysomnography, Soft- computing , Fuzzy logic, Neural Network, Embedded System, Persuasive Application
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Introduction
Sleep Apnea is a common sleep disorder that pauses spontaneous breathing during sleep. This pause or absence of breathing can last from 10 to 20 seconds and may occur up to 30 times or more in an hour. [1] There are three type of sleep apnea, Obstructive, Central and Mixed.
Obstructive Sleep Apnea (OSA) is the most common type of Apnea that occurs when soft tissues of a throat relaxes during sleep and block the airway
[1] .This blockage (fully or partially) drops oxygen level in blood. If oxygen level reaches to the dangerous level, brain responds by briefly disturbing our sleep and opens the wind pipe that resume normal breathing with gasp or long snoring sound. OSArelease stress hormones that increase the risk of high blood pressure, diabetics and heart diseases [2]. Moreover, sleep apnea may also change our day time behaviour such as hyperactivity or inattention. Therefore, it may cause be the car accidents with an estimate 36% of all fatal car accident resulting from driver drowsiness.[3] Finally poor sleep due to OSA can affect memory [4,5] and cognitive functioning
[6] . Although OSA is one of the biggest threat of life but still it is difficult to diagnose. One of the common methods for diagnosing is polysomnogram (PSG)[1] that records brain signals, eye movements , heart rate and blood pressure . PSG often needs specialized sleep lab and patients at least admitted over night for monitoring. It is an expensive, inconvenient procedure and not accessible to each and every patient. So, home monitoring sleep apnea system is needed to provide inexpensive and comfortable solution. -
Proposed Solution
2.1 Embedded System
OSA is an important public health issue with challenges for diagnosis and treatment [7]. It is estimated to occur in about 7% of the population from which more than 85% remain undiagnosed. [7]
.Current methods of diagnosis and treatment are cumbersome, expensive and inconvenient for patients. Therefore, a new monitoring device of OSA is needed that patient may use in home environment rather than in a sleep lab. Several researches of apnea had been done and are still going on for diagnosis, such as determine snoring sound, measure heart and brain waves. Theses researches havent focused on all symptoms of OSA. Therefore, Future research needs to focus on human behavior, brain waves signal, heart rate, blood oxygen saturation for diagnosing.
Proposed system is a smart phone application. It is an embedded system because that is processing different bio signals (brain, heart and blood oxygen saturation SpO2) and finds correlation between those
Sensors
Sensors
signals to increase the reliability. This embedded system consists of photoplethysmograph (PPG) as it gives a continuous and real time measurement. PPG signal can also be employed in other vital informations non-invasive measurement, such as the blood sugar and the breath rate. The sensor will be located in a wristband and measure heart rate and oxygen saturation. Another sensor that will be in a headband will track brain activities or waves (Alpha, beta, delta or theta). This result will be sent over the wireless link to the smart phone for further diagnoses of OSA. Figure 1 is a mock-up of suggested embedded system.
SLEEPINESS SCALE (ESS) and provides summary of feedback to show the current state of patient sleep. This application will get the user feedback about their past traumatic event because sleep apnea can be triggered by highly stressful emotion.[8]. This feature has never been used in any sleep monitoring technology.
2.3 Soft Computing
One of the most important features of this application is diagnoses. Fuzzy logic and neural network will be used for diagnosis of OSA. Inference engine will use sensor input, sleep analysis, obesity, and traumatic event and apply neural and fuzzy algorithm in order to extract knowledge as output. In future it will help physician to diagnose OSA.
Input Signals
Input Signals
Heart Rate Brain
Signal Conditioning
Signal Conditioning
Signal Processing
Signal Processing
Data Post Processing
Data Post Processing
Waves
Wireless Data Transfer
Wireless Data Transfer
Smart Phone Permanent
Smart Phone Permanent
Figur1. Suggested embedded System
SpO2
Furthermore, this system records patients age and gender that is a future research need, According to Healthcare Research and Quality Effective Health Care Program Age and gender are specific criteria for abnormal breathing (or OSA) and has highest priority of future research[9]. In proposed system patients record their age and gender. This information will be recorded in sleep disorder centre for future research. Figure 2 will give a complete idea of OSA Package.
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2.2 Persuasive Application
The proposed system also has persuasive application that includes self-monitoring and feedback to obtain and maintain healthy sleep habit. It estimates a persons sleep schedule, measures persons day time sleepiness by using EPWORTH
Figure2. Architecture of Monitoring Sleep Apnea
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Goal
Develop a low cost, low power, reliable, non intrusive, and non-invasive vital signs monitor that processes and analyses the data acquired from sensors, sleep schedule and feedback and transmit data to the users smart phone by using Wireless radio and diagnosis OSA.
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Significance
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According to the Agency for Healthcare Research and Quality Effective Health Care Program future research of sleep apnea needs .[9] 2.Age and gender specific criteria for abnormal breathing (or OSA)
3.Routine (or selected) screening for sleep apnea 4.Design diagnostic algorithms that diagnose in portable monitors (smart phone).
5.Focusing on traumatic event.
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Conclusion
The proposed solution is for an OSA low cost, low power, reliable, non-intrusive, and non-invasive vital signs monitor that processes and analyses the sleep data. This proposed system helps patient to monitor and diagnosis of OSA at home.
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References:
Nature,427(6972) , 325-355.
[6].Faubel, R. e. (2009). Sleep duration and health related quality of life among older adults: a population based cohort in Spain. SlEEP , 1059- 1068. [7].Leier, M. (n.d.). Sleep Apnea Detection on Babies and Children with Shoe Integrated Sensors. [8].Damaris Drewry, P. P. (2012). Sleep Apnea: A New Mind/Body Solution. Retrieved from Woman: http://www.wncwoman.com/2012/06/04/sleep- arena-a-new-mindbody-solution/ [9].Tufts Evidence-based Practice Center, T. M. (2012). Future Research Needs for Diagnosis of obstructive Sleep Apnea. AHRQ Publication No. 12-EHC031-EF.