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Social and Spatial Clustering of Personal Relationships Understanding the Impact of Behavioural Risks on Sexually Transmitted Disease Transmission James.

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Presentation on theme: "Social and Spatial Clustering of Personal Relationships Understanding the Impact of Behavioural Risks on Sexually Transmitted Disease Transmission James."— Presentation transcript:

1 Social and Spatial Clustering of Personal Relationships Understanding the Impact of Behavioural Risks on Sexually Transmitted Disease Transmission James Tompkins GEOG 596A Adviser: Justine Blanford

2 Gaetan Dugas World map shows flight routes from the 40 largest U.S. airports. 1 Image: Christos Nicolaides, Juanes Research Group 1 http://web.mit.edu/newsoffice/2012/spread-of-disease-in-airports-0723.html

3 STIs on the Rise: Rates, Transmission and Risk Social Network Analysis / Graph Theory  Social Networks  Sexual Networks Spatial Epidemiology of STIs Social to Spatial Links Objectives Methodology Timeline References Acknowledgements Introduction

4 STIs Each year 448 million new cases of curable STIs (syphilis, gonorrhea, chlamydia) occur throughout the world in adults aged 15-49 years (WHO) More than 60 million men, women and children have been affected by HIV. The spread of HIV continues, causing more than 14,000 new infections every day throughout the world (WHO) 2 2 http://www.who.int/mediacentre/factsheets/fs110/en/http://www.who.int/mediacentre/factsheets/fs110/en/

5 STIs 3 http://www.infographicsarchive.com/health-and-safety/std-statistics-worldwide

6 STIs on the Rise 4 http://www.phac-aspc.gc.ca/sti-its-surv-epi/surveillance-eng.phphttp://www.phac-aspc.gc.ca/sti-its-surv-epi/surveillance-eng.php 5 http://www.phac-aspc.gc.ca/std-mts/report/sti-its2008/index-eng.phphttp://www.phac-aspc.gc.ca/std-mts/report/sti-its2008/index-eng.php 6 http://www.phac-aspc.gc.ca/sti-its-surv-epi/hepc/surv-eng.phphttp://www.phac-aspc.gc.ca/sti-its-surv-epi/hepc/surv-eng.php 7 http://www.phac-aspc.gc.ca/aids-sida/publication/survreport/estimat2011-eng.phpwww.phac-aspc.gc.ca/aids-sida/publication/survreport/estimat2011-eng.php In Canada: Over 100,000 cases annually Over 10 years: Syphilis: Increased 568.2% Gonorrhea: Increased 116.5% Chlamydia: Increased 80.2%

7 Groups at Risk 8 http://www.cdc.gov/std/health-disparities/age.htm

8 Transmission Methods Require far fewer average contacts to spread than other contagious diseases 9 Due to nature of infection, infection is more prevalent in some populations due to risk-based behaviours BUT … Efficiency: Chlamydia35% per unprotected act of sexual intercourse 10 Gonorrhea30 – 50% per unprotected act of sexual intercourse 10 Infectious Syphilis20% per contact 10 Hepatitis C3% per exposure of contaminated needle point (likelihood increases with HIV co- infection) 11 HIV0.1 to 3.4% per unprotected act of sexual intercourse 7 / 0.3% per exposure of contaminated needle point 12 9 Hethcote and Yorke (1984) 10 http://www.phac-aspc.gc.ca/aids-sida/publication/hivtr-rtvih-eng.phphttp://www.phac-aspc.gc.ca/aids-sida/publication/hivtr-rtvih-eng.php 11 Anderson and May (1995) 12 Mastro and de Vincenzi (1996)

9 Infection Method of Transmission Curable (or not) [How?] Groups at Risk Transmitted From Mother? Chlamydia Sexual intercourse Yes; Antibiotics Rate for women almost twice as high as males; 86% reported cases in women younger than 30. During childbirth (60% efficiency) [3] Gonorrhea Sexual intercourse Yes; Antibiotics Under 30 years of age: Females from 15 to 24 Males from 20 to 24 During childbirth Syphilis Direct contact with syphilis sores Yes; AntibioticsMales aged 25 to 29During development HCV Through contact with blood of infected person; unlikely and rare but possible to transmit during sex. Treatment with combinations of antivirals over 6 to 12 months. “Baby boomers”: People born from 1945 to 1965 (risk of contaminated blood products prior to 1992); Injected Drug Users (Demog. Associated with 61% of infections); Majority in males 30+ and increasing rates in younger females Possible during development but not definite; not conclusive that transmission could not result during childbirth. HIVSexual intercourse (varying risk levels); contact with blood of infected person No; treatment with antiviral medication Men who have sex with men (MSM) made up 46.7% of those living with HIV in Canada during 2011 During development, childbirth, and feeding (treatment reduces risk)

10 Groups at Risk “The behavioural, social and cultural factors affecting the epidemiology of sexually transmitted and bloodborne pathogens in high-risk populations: Determining risk space in Canada’s vulnerable populations” CIHR (2007) Respondent-Driven Sampling Findings supported statistics that highlight behaviours of greatest risk Injected Drug Users (IDU) account for 61% of total prevalent HCV cases in Canada. Men who have sex with men (MSM) account for 46.7% of individuals living with HIV.

11 Social Network Theory Social Network: A set of people, objects, events or places and the relationships that connect them all.

12 Social Network Theory Adolescent romantic and sexual networks of “Jefferson” High 11 13 Bearman, Moody and Stovel (2004)

13 Social Network Theory Aitken et al (2004) demonstrated that infection paths amongst IDU and sexual partners were difficult to trace based on genetic markers identifying the infections. Pilon et al (2011) found that few HIV and HCV infections coincided with the recruitment networks they had achieved. De Rubeis et al (2007) indicated that despite widely diverse social networks with sexual links and repeat infections, disease clusters often varied with respect to the infecting agent.

14 Socializing in a Spatial World “The Core Population” Rothenberg (1983) “The geography of gonorrhea” Potterat et al (1984) “Gonorrhea as a social disease” 6 locations made up over half of the locational references for social contacts studied who identified a ‘specific locus for socializing’. Becker et al (1998) “Geographic Epidemiology of Gonorrhea in Baltimore”

15 The Core Population 18 Potterat et al (1984)19 Becker et al (1998)

16 A Small World After All Centrality Any of various measures that determine the relative importance of a node within a graph

17 Small World Theory Homophily: tendency of people to associate with similar people Heterogeneity: a minority of people will associate with dissimilar people Social Aggregation: many people will congregate in a few places to socialize 21 Jolly AM, Wylie JL (2013). Sexually Networks and Sexually Transmitted Infections; “The Strength of Weak (Long Distance) Ties”, The New Public Health and STI/HIV Prevention.

18 Social to Spatial Tobler’s First Law of Geography “Everything is related to everything else, but near things are more related than distant things.” 52% of all pairs separated by a distance of 4 km or less - Rothenberg et al (2005) “Social and geographic distance in HIV risk” Geographic proximity associated with adoption of high risk behaviors (e.g. needle sharing) - Shane (2011) “Defining Intervention Location from social network geographic data” 22 Rothenberg et al (2005)

19 Social to Spatial

20 Objectives 1.To identify the social networks of at-risk individuals in Winnipeg, MB and Ottawa, ON with consideration of their activity space 2.To determine whether mapping specific behaviours is analogous to mapping specific ‘hangouts’ 3.To determine the nature of the relationship between social clusters and spatial clusters among at-risk individuals

21 Methodology Data from Jolly and Wylie “Vulnerable Peoples Study” – Survey administered by health care workers during 2009 in Winnipeg and Ottawa To understand social connections and roles of participants in the network: 1.Social Network Analysis: Use social networking software (ie. Gephi) to identify linkages and communities of individuals within CIHR survey. 2.Identify measures of degree centrality for all members in the survey network. These metrics will be used as variables in spatial operations.

22 Methodology To understand the role of place and space, use ArcGIS to plot and analyse intersections identifying key ‘hangouts’ 1.Kernel Density Estimation (KDE) on degree centrality values: Interpolate the strength and concentration of communities at risk. 2.KDE on counts of ‘hangout’ mentions for each documented site. 3.Perform a Local Indicators of Spatial Association (LISA) analysis on instances of infected individuals against location of ‘hangouts’ to identify statistically significant locations of social activity

23 Methodology Integrate SNA with geography to identify the topology of social connections 1.Explore the geography of relationships and infection simultaneously. 2.Examine links between spatial (distance between individuals, hangouts) and social (individual’s centrality) ties.

24 Understand “Socio-Sexual Networks” Are they contained? What is the role and potential for bridges? What do centrality and the type of network (homophily, heterogeneity, social congregation) tell us? What infections exist in the network and at what incidence rate? Understand “social hangouts” What role do they play in the network? Understand the role geography plays in clustering of hangouts and transmission of STIs Expected Results

25 June 2013: Analyse survey result data Process data in Gephi, determine shape of social networks, calculate centrality measures August 2013: Geocode intersections and place names for hangouts and residences for each record September – December 2013: Interpolations, LISA analysis of data Overlays of spatial and social interpolations Analysis of spatial and social connections January – March 2014: Final analysis, synthesizing results and writing up Timeline

26 1 http://web.mit.edu/newsoffice/2012/spread-of-disease-in-airports-0723.htmlhttp://web.mit.edu/newsoffice/2012/spread-of-disease-in-airports-0723.html 2 http://www.who.int/mediacentre/factsheets/fs110/en/http://www.who.int/mediacentre/factsheets/fs110/en/ 3 http://www.infographicsarchive.com/health-and-safety/std-statistics-worldwide 4 http://www.phac-aspc.gc.ca/sti-its-surv-epi/surveillance-eng.phphttp://www.phac-aspc.gc.ca/sti-its-surv-epi/surveillance-eng.php 5 http://www.phac-aspc.gc.ca/std-mts/report/sti-its2008/index-eng.phphttp://www.phac-aspc.gc.ca/std-mts/report/sti-its2008/index-eng.php 6 http://www.phac-aspc.gc.ca/sti-its-surv-epi/hepc/surv-eng.phphttp://www.phac-aspc.gc.ca/sti-its-surv-epi/hepc/surv-eng.php 7 http://www.phac-aspc.gc.ca/aids-sida/publication/survreport/estimat2011-eng.phphttp://www.phac-aspc.gc.ca/aids-sida/publication/survreport/estimat2011-eng.php 8 http://www.cdc.gov/std/health-disparities/age.htm 9 Hethcote, H. and J.A. Yorke (1984). Gonorrhea: transmission dynamics and control. New York, Springer. 10 http://www.phac-aspc.gc.ca/aids-sida/publication/hivtr-rtvih-eng.phphttp://www.phac-aspc.gc.ca/aids-sida/publication/hivtr-rtvih-eng.php 11 Anderson RA and R.A. May (1995). Infectious diseases in humans. London, Oxford University Press. 12 Mastro, T.D. and I. de Vincenzi (1996). Probabilities of sexual HIV-1 transmission.AIDS1996;10(Suppl A):S75–82. 13 Bearman, Moody and Stovel (2004). “Chains of Affection: The Structure of Adolescent Romantic and Sexual Networks”. 14 Aitken et al (2004). “Change in hepatitis C virus genotype in injecting drug users”. 15 Pilon et al (2011). “Transmission Patterns of HIV and Hepatitis C Virus among Networks of People Who Inject Drugs”. 16 De Rubeis et al (2007). “Combining social network analysis and cluster analysis to identify sexual network types”. 18 Potterat et al (1984). “Gonorrhea as a social disease”. 19 Becker et al (1997). “Geographic epidemiology of Gonorrhea in Baltimore”. 20 De et al (2004). “Sexual network analysis of a gonorrhea outbreak”. 21 Jolly AM, Wylie JL (2013). Sexually Networks and Sexually Transmitted Infections; “The Strength of Weak (Long Distance) Ties”, The New Public Health and STI/HIV Prevention. 22 Rothenberg et al (2005). “Social and Geographic Distance in HIV Risk”. 23 Shane (2011). “Defining intervention location from social network geographic data of people who inject drugs in Winnipeg, Canada.” Issues of Substance Conference, Vancouver. 24 Auerbach et al (1984). “Cluster of cases of the Acquired Immune Deficiency Syndrome; patients linked by sexual contact”. 25 De et al (2004). “Sexual network analysis of a gonorrhea outbreak”. Sex Transm Infect 2004; 80:280-285. 26 Wylie et al (2000). “Patterns of Chlamydia and Gonorrhea Infection in Sexual Networks in Manitoba, Canada”. References

27 Ann JollyJustine Blanford Acknowledgements


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