Analysis on Continuous Monitoring Data for ICU Based on On-Line Segmentation Algorithm

Article Preview

Abstract:

It is all kinds of data monitoring for ICU that are very important, on the one hand, it can provide reliable reference for medical personnel, so that they can care for critical patients in time, on the other hand, it also can avoid bringing trouble which is caused by instrument to severe patients. Through the mining technology of time series data ,this paper uses online segmentation algorithm of time series, establishing continuous monitoring data model for ICU and creating a time series Table, from the data of which, it can quickly extract monitoring data, and do real-time analysis. On this basis, this paper also puts forward an evaluation method for on-line segmentation algorithm performance , and also puts forward a kind of algorithm to speed up the time sequence segmentation recursion method, which can quickly extract the key components in the data, so as to accelerate the analysis on continuous monitoring data . Finally, through the continuous monitoring and analysis on the pressure of the severe patients who are inserted artificial airway balloon, this paper tests the reliability of the algorithm, and through the analysis and comparison with the data, it proves the quickness of algorithm, and provides a theoretical basis for analysis on continuous monitoring data for ICU.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

1489-1492

Citation:

Online since:

September 2013

Authors:

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2013 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] Li Aiguo , Tan Zheng, He Shengpin. The extraction of similar pattern of time series data . Journal of xi 'an Jiao Tong University, 2012, 36 (12) : 75- 78.

Google Scholar

[2] Tan Zheng, Li Aiguo. The steady optimal segmentation of time series data . Journal of Xi 'an Jiao Tong University, 2011 , 37(4) : 38- 42.

Google Scholar

[3] Li Aiguo, Tan Zheng. The prediction of product unit neural network time series with FIR synapses. Research and development of computer , 2010, 41(4) : 77- 81.

Google Scholar

[4] Jin Bixia, Li Qiuping. The respiratory management during tracheal intubation mechanically ventilates . Journal of Nursing, 2011, 16(3) : 162.

Google Scholar

[5] Shi Qinglian. The study of the effusion between drainage glottis to airbags' decreasing the injury of traumatic brain and associated pneumonia for artificial ventilation . Chinese Journal of Practical Nursing, 2010, 7 (1) : 21-25.

Google Scholar

[6] Sajedi P, Maaroffi n to The macroscopic any of tracheal mu2cosa following stand versus loose control of tracheal tube cuffpressure . Acta Anaesthesiol Sin, 2012 (3) : 117-119.

Google Scholar

[7] Leigh JM, Maynard JP Pressure on the tracheal mucosa fromcuffed tubes . Sao Paulo Med J, 2009, 117 (6) : 243-250.

Google Scholar

[8] Zhang Hanxiang, Xu Jisheng, Ye Hongyan. The relationship between the injection volume and the change of air pressure in the tube . Chinese Physician Magazine, 2012, 4 (1) : 43-47.

Google Scholar

[9] Shen Gangfu. The clinical observation of the management of low-pressure air in the airway tube balloon. Jiang Su clinical medical journal, 2011, 5 (4) : 308-311.

Google Scholar

[10] Wei HuanKe. The clinical application and analysis of the three methods of inflaTable balloon for tracheal , catheter and balloon, when positive pressure mechanical ventilates . Journal of Guang Xi medicine, 2011, 26 (3) : 34-37.

Google Scholar

[11] Chen Minjun, Wang Hui. The study of consecutive seventh year monitoring for China ICU Gram-negative resistant bacteria . Journal of Chinese Medical , 2012 , 83 (5) : 75 - 81.

Google Scholar

[12] Ye Yingwu, Wang YuSan. The operation procedures of national clinical inspection. Southeast University Press, 2007: 452-562.

Google Scholar

[13] Tan Qiongying, Cui Yingpeng. The distribution of common pathogenic bacteria in medical ICU and analysis on drug resistance . Journal of Tropical Medicine, 2011, 5 (5) : 679-680.

Google Scholar

[14] Li Yun, Li Jiatai. The study of bacteria resistance monitoring in China ICU. Journal of Laboratory Medicine , 2012 , 27 ( 11) : 733 - 738.

Google Scholar

[15] Xiong Xuming, Wei Yanchao. The clinical and resistance analysis on the Hospital of Meningeal Sepsis Chryseobacterium's infecting pneumonia in the ICU. Chinese Journal of Hospital Infection , 2012, 15 (6) : 8-10.

Google Scholar