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1 A Portable Tele-Emergent System With ECG Discrimination in SCAN Devices Speaker : Ren-Guey Lee Date : 2004 Auguest 25 B.E. LAB National Taipei University of Technology Computer and Communication Engineering
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2 Outline Introduction System Functions System Architecture QRS Detection Algorithm ECG Discrimination Algorithm Results and Conclusion References B.E. LAB
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3 Introduction Introduction
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4 ECG provides information of condition of heart. The system concept that under existing GSM communication system using SMS and Tele-emergence device. Features of the device are light, compact and wireless. Introduction B.E. LAB
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5 System function Tele-emergence system integrates : ECG signals acquisition circuit. ECG discrimination technology. Sensor Network technology. GSM communication system. Bluetooth communication technology. GPS position service. B.E. LAB
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6 System Architecture B.E. LAB
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7 QRS Detection Algorithm Most automatic ECG diagnosis require an accurate detection of the QRS complexes. B.E. LAB
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8 QRS Detection Algorithm The QRS Detection algorithm : “Tompkins” method. “So and Chan” method. “Modified So and Chan” method is based on “So and Chan” and “Tompkins” QRS detection algorithms. continue B.E. LAB
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9 Low-pass filter : Cut-off frequency : 12 Hz Cut-off frequency : 12 Hz Delay : 5 points Delay : 5 points Gain : 36 Gain : 36 QRS Detection Algorithm continue B.E. LAB
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10 High-pass filter : Cut-off frequency : 5 Hz Delay : 16 points Gain : 32 QRS Detection Algorithm continue B.E. LAB
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11 The slope of the ECG wave is obtained by : Let X(n) represent the amplitude of the ECG data at discrete time n. QRS Detection Algorithm continue B.E. LAB
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12 The slope threshold is given by : The thresh_param can set as 2,4,8,16. The initial maxi is the maximum slope within the first 250 data points in the ECG file. QRS Detection Algorithm continue B.E. LAB
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13 Detection QRS onset have two case : 1. (Set Max = True) 2. (Set Max = False) When two consecutive ECG data satisfy above condition, the QRS onset point has been detected. QRS Detection Algorithm continue B.E. LAB
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14 Maxi is then updated by The filter_param can be set as 2,4,8,16. QRS Detection Algorithm continue B.E. LAB
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15 QRS Detection Algorithm continue
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16 MIT-BIH ECG database
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17 QRS Detection Algorithm(2)
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18 ECG Discrimination technology is based on : QRS detection algorithm. Geometric correlation coefficient. ECG Discrimination Algorithm ECG Discrimination Algorithm
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19 Heart Rate Variability (HRV) formula: ECG Discrimination Algorithm ECG Discrimination Algorithm continue B.E. LAB
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20 Correlation Coefficient : n : size of the sample points xi : Template yi : Sample mx,xy : mean value ECG Discrimination Algorithm ECG Discrimination Algorithm continue B.E. LAB
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21 ECG Discrimination Algorithm ECG Discrimination Algorithm continue HRV and Correlation coefficient (Record 119)
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22 ECG Discrimination Algorithm ECG Discrimination Algorithm continue ECG template (Record 119)
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23 On average, the FD% of the “Modified So and Chan” method is 1.11 % while “So and Chan” method is 5.47%. (MIT- BIH Database 48 records) Results and Conclusion continue B.E. LAB
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24 Affected ECG discrimination accuracy factors : QRS Detection accuracy. ECG Template created. Threshold parameter selected. Noise interference ECG baseline wander Results and Conclusion continue B.E. LAB
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25 Results and Conclusion User integration device has six parts : ECG acquisition circuit. Bluetooth module. GPS module. GSM module. Touch panel. MSP 430. continue B.E. LAB
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26 continue Results and Conclusion Sending ECG wave in terms of ASCI code from SCAN device Plot the ECG wave in PC
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27 Next steps and Problems Implement R-wave detection and Correlation Coefficient in SCAN device Time complexity of algorithm must be too high when implementing Correlation Coefficient May find other methods suitable for sensor network B.E. LAB
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28 Next steps and Problems Power-saving issue should be considered From routing protocol ? From MAC protocol ? Collision problems Overhearing problems Control package overhead problems Idle listening problems continue
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29 References P. Jiapu and W. J. Tompkins., “A Real-Time QRS Detection Algorithm,” IEEE trans. on bio-medical engineering, Vol. 32, No. 3, pp. 230-236, March 1985. G. M. Friesen, T. C. Jannett, et al., “A comparison of the noise sensitivity of nine QRS detection algorithms,” IEEE Trans. on Biomedical Engineering, Vol. 37, pp. 85- 98, Jane 1990. K. F. Tan, K. L. Chan and K. Choi, “Detection of the QRS complex, P wave and T wave in electrocardiogram, “Processing of 2000 IEE Conference on Advances in Medical Signal and Information Processing, pp. 41-47, Sept 2000. H.H. So and K.L. Chan, “Development of QRS detection method for real-time ambulatory cardiac monitor,” Proceedings of the 19th Annual International Conference of the IEEE in Engineering in Medicine and Biology society, Vol. 1, Oct. 1997, pp. 289-292.
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30 H. A. N. Dinh, D. K. Kumar, et al., “Wavelets for QRS Detection,” Engineering in Medicine and Biology Society Proceedings of the 23rd Annual International Conference of the IEEE, Vol. 2,, pp. 1883-1887, Oct. 2001. K. T. Lai and K. L. Chan, ”Real-time classification of electrocardiogram based on fractal and correlation analyses,” Proceedings of the 20th Annual International Conference of the IEEE in Engineering in Medicine and Biology Society, Vol. 1 pp. 119-122, 1998. K. T. Lai and K. L. Chan, ”Real-time classification of electrocardiogram based on fractal and correlation analyses,” Proceedings of the 20th Annual International Conference of the IEEE in Engineering in Medicine and Biology Society, Vol. 1 pp. 119-122, 1998. Wei YeMedium Access Control With Coordinated Adaptive Sleeping for Wireless Sensor Networks Wei Ye et al., “ Medium Access Control With Coordinated Adaptive Sleeping for Wireless Sensor Networks ” IEEE/ACM TRANSACTIONS ON NETWORKING, VOL.12, NO.3, JUNE 2004 An Implementation of Wireless Sensor Network for Security System using Bluetooth Soo-Hwan Choi et al., “ An Implementation of Wireless Sensor Network for Security System using Bluetooth ” IEEE Transactions on, Vol. 50, No. 1, February 2004 continue References
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