Spatial-temporal characteristics of epidemic spread in-out flow-Using SARS epidemic in Beijing as a case study.

BiSong Hu, JianHua Gong, JiePing Zhou, Jun Sun, LiYang Yang, Yu Xia, Abdoul Nasser Ibrahim
Author Information
  1. BiSong Hu: 1Geography and Environment Department, Jiangxi Normal University/Key Laboratory of Poyang Lake Wetland and Watershed Research, Ministry of Education, Nanchang, 330022 China.
  2. JianHua Gong: 2Institute of Remote Sensing Applications, Chinese Academy of Sciences/State Key Laboratory of Remote Sensing Science, Beijing, 100101 China.
  3. JiePing Zhou: 2Institute of Remote Sensing Applications, Chinese Academy of Sciences/State Key Laboratory of Remote Sensing Science, Beijing, 100101 China.
  4. Jun Sun: 2Institute of Remote Sensing Applications, Chinese Academy of Sciences/State Key Laboratory of Remote Sensing Science, Beijing, 100101 China.
  5. LiYang Yang: 2Institute of Remote Sensing Applications, Chinese Academy of Sciences/State Key Laboratory of Remote Sensing Science, Beijing, 100101 China.
  6. Yu Xia: 1Geography and Environment Department, Jiangxi Normal University/Key Laboratory of Poyang Lake Wetland and Watershed Research, Ministry of Education, Nanchang, 330022 China.
  7. Abdoul Nasser Ibrahim: 2Institute of Remote Sensing Applications, Chinese Academy of Sciences/State Key Laboratory of Remote Sensing Science, Beijing, 100101 China.

Abstract

For better detecting the spatial-temporal change mode of individual susceptible-infected-symptomatic-treated-recovered epidemic progress and the characteristics of information/material flow in the epidemic spread network between regions, the epidemic spread mechanism of virus input and output was explored based on individuals and spatial regions. Three typical spatial information parameters including working unit/address, onset location and reporting unit were selected and SARS epidemic spread in-out flow in Beijing was defined based on the SARS epidemiological investigation data in China from 2002 to 2003 while its epidemiological characteristics were discussed. Furthermore, by the methods of spatial-temporal statistical analysis and network characteristic analysis, spatial-temporal high-risk hotspots and network structure characteristics of Beijing outer in-out flow were explored, and spatial autocorrelation/heterogeneity, spatial-temporal evolutive rules and structure characteristics of the spread network of Beijing inner in-out flow were comprehensively analyzed. The results show that (1) The outer input flow of SARS epidemic in Beijing concentrated on Shanxi and Guangdong provinces, but the outer output flow was disperse and mainly includes several north provinces such as Guangdong and Shandong. And the control measurement should focus on the early and interim progress of SARS breakout. (2) The inner output cases had significant positive autocorrelative characteristics in the whole studied region, and the high-risk population was young and middle-aged people with ages from 20 to 60 and occupations of medicine and civilian labourer. (3) The downtown districts were main high-risk hotspots of SARS epidemic in Beijing, the northwest suburban districts/counties were secondary high-risk hotspots, and northeast suburban areas were relatively safe. (4) The district/county nodes in inner spread network showed small-world characteristics and information/material flow had notable heterogeneity. The suburban Tongzhou and Changping districts were the underlying high-risk regions, and several suburban districts such as Shunyi and Huairou were the relatively low-risk safe regions as they carried out minority information/material flow. The exploration and analysis based on epidemic spread in-out flow help better detect and discover the potential spatial-temporal evolutive rules and characteristics of SARS epidemic, and provide a more effective theoretical basis for emergency/control measurements and decision-making.

Keywords

References

  1. Science. 2003 Jun 20;300(5627):1966-70 [PMID: 12766207]
  2. Nature. 1998 Jun 4;393(6684):440-2 [PMID: 9623998]
  3. Philos Trans R Soc Lond B Biol Sci. 2004 Jul 29;359(1447):1091-105 [PMID: 15306395]
  4. Beijing Da Xue Xue Bao Yi Xue Ban. 2003 May 31;35 Suppl:66-9 [PMID: 12914222]
  5. Sci China Earth Sci. 2010;53(7):1017-1028 [PMID: 32288761]
  6. Zhonghua Liu Xing Bing Xue Za Zhi. 2004 Aug;25(8):674-6 [PMID: 15555389]
  7. Science. 1999 Oct 15;286(5439):509-12 [PMID: 10521342]
  8. Public Health. 2005 Dec;119(12):1080-7 [PMID: 16214187]
  9. Chin Sci Bull. 2003;48(13):1287-1292 [PMID: 32214705]
  10. Trop Med Int Health. 2009 Nov;14 Suppl 1:14-20 [PMID: 19508436]
  11. Stat Med. 1995 Apr 30;14(8):799-810 [PMID: 7644860]
  12. Zhonghua Liu Xing Bing Xue Za Zhi. 2005 Mar;26(3):164-8 [PMID: 15941497]
  13. Trop Med Int Health. 2009 Nov;14 Suppl 1:21-7 [PMID: 19508439]
  14. Science. 2003 Jun 20;300(5627):1884-5 [PMID: 12766208]
  15. Biometrika. 1950 Jun;37(1-2):17-23 [PMID: 15420245]
  16. Emerg Infect Dis. 2004 Apr;10(4):587-92 [PMID: 15200846]
  17. J Public Health (Oxf). 2008 Sep;30(3):234-44 [PMID: 18441347]
  18. PLoS Med. 2005 Mar;2(3):e59 [PMID: 15719066]
  19. JAMA. 2003 Dec 24;290(24):3215-21 [PMID: 14693874]
  20. Proc Natl Acad Sci U S A. 2000 Oct 10;97(21):11149-52 [PMID: 11005838]
  21. Emerg Infect Dis. 2004 Feb;10(2):210-6 [PMID: 15030685]
  22. Bull World Health Organ. 2006 Dec;84(12):965-8 [PMID: 17242832]

Word Cloud

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