Title: Sexual Network Constraints on STD Flow
1Sexual Network Constraints on STD Flow The role
of Sexual Networks in HIV spread
by
James Moody The Ohio State University Presente
d at The UNC Center for Aids Research
Conference Methods of Study in Human Sexuality
Relevance to AIDS Research Chapel Hill, May 5,
2001
2Overview
- I. Introduction
- Why networks matter
- Basic network data types
- II. Network Topology
- Mixing Patterns in ego networks
- Reachability properties
- Location properties
- III. Timing Sexual Networks
- Network Development
- Directional Constraint
- IV. Problems, Limitations Future Directions
- Data, Data, Data
- Linking non-sexual relations to sexual networks
- Sampling, Simulation Estimation
- VI. Conclusion
3Why Networks Matter
- Intuitive STDs travel through intimate
interpersonal contact - We should do better explaining disease spread if
we take this into account. - Less intuitive The pattern of intimate contact
can have global effects on disease spread that
could not be detected looking only at individual
behavior. - Work making this point
- Klovdahl, A. S. 1985. "Social Networks and the
Spread of Infectious Diseases The AIDS Example."
Social Science Medicine 211203-16. - Morris, M. 1993. "Epidemiology and Social
Networks Modeling Structured Diffusion."
Sociological Methods and Research 2299-126. - Rothenberg, et al. 1997 Using Social Network
and Ethnographic Tools to Evaluate Syphilis
Transmission Sexually Transmitted Diseases 25
154-160
4Basic network data
- People treated as nodes, relations (sex or drug
use) as lines among nodes. - Network data are represented in multiple, often
unfamiliar, ways - Graphical
- - Often intuitive, but cumbersome to work with
beyond intuition - Adjacency Matrix
- - An n by n matrix, X, where Xij 1 if i has had
sex w. j - - Can also be valued, with Xij k, where k is a
count - Adjacency List
- - An n row list of each actors relations
- - Contains the row information of X
- Edge List
- - An m row list of sender receiver and value of
the relation - - Contains each element of X
5Basic network data
- Types of network data
- Ego-network
- Have data on a respondent (ego) and their reports
of people they are connected to (alters). - May include estimates of connections among alters
- National Health and Social Life Survey, Laumann
et al. - Partial network
- Ego networks plus some amount of tracing to reach
partners of partners. - Something less than full account of connections
among all pairs of actors in the relevant
population - Colorado Springs, Potterat, Rothenberg, et al.
- Urban and Rural Networks Project (Trotter,
Rothenberg, et al.) - Complete (Udry, Bearman, et al.)
- Data on all actors within a particular (relevant)
boundary - Never exactly complete
6Examples linked levels of data
Respondent
Partner
Primary Relation
7Why Sexual Networks Matter
Consider the following (much simplified) scenario
- Probability that actor i infects actor j (pij)is
a constant over all relations 0.6 - S T are connected through the following
structure
S
T
- The probability that S infects T through either
path would be 0.09
8Probability of infection over independent paths
- The probability that an infectious agent travels
from i to j is assumed constant at pij. - The probability that infection passes through
multiple links (i to j, and from j to k) is the
joint probability of each (link1 and link2 and
link k) pijd where d is the path distance. - To calculate the probability of infection passing
through multiple paths, use the compliment of it
not passing through any paths. The probability
of not passing through path l is 1-pijd, and thus
the probability of not passing through any path
is (1-pijd)k, where k is the number of paths - Thus, the probability of i infecting j given k
independent paths is
Why matter
Distance
9Probability of infection over non-independent
paths
- To get the probability that I infects j given
that paths intersect at 4, I calculate
Using the independent paths formula.
10Why Sexual Networks Matter
Now consider the following (similar?) scenario
S
T
- Every actor but one has the exact same number of
partners - The category-to-category mixing is identical
- The distance from S to T is the same (7 steps)
- S and T have not changed their behavior
- Their partners partners have the same behavior
- But the probability of an infection moving from S
to T is - 0.148
- Different outcomes different potentials for
intervention
11Network Topology Ego Networks
Mixing Matters
- The most commonly collected network data are
ego-centered. While limited in the structural
features, these do provide useful information on
broad mixing patterns relationship timing. - Consider Laumann Youms (1998) treatment of
sexual mixing by race and activity level, using
data from the NHSLS, to explain the differences
in STD rates by race - They find that two factors can largely explain
the difference in STD rates - Intraracially, low activity African Americans are
much more likely to have sex with high activity
African Americans than are whites - Interracially, sexual networks tend to be
contained within race, slowing spread between
races
12Network Topology Ego Networks
- In addition to general category mixing,
ego-network data can provide important
information on - Local clustering (if there are relations among
egos partners. Not usually relevant in
heterosexual populations, though very relevant to
IDU populations) - Number of partners -- by far the simplest network
feature, but also very relevant at the high end - Relationship timing, duration and overlap
- By asking about partners behavior, you can get
some information on the relative risk of each
relation. For example, whether a respondents
partner has many other partners (though data
quality is often at issue).
13Network Topology Ego Networks
- Studies making successful use of ego-network data
include
- Reinking et al. 1994. Social Transmission
Routes of HIV. A combined sexual network and
life course perspective. Patient Education and
Counseling 24289-297. - Aral et al. 1999. Sexual Mixing Patterns in
the Spread of Gonococcal and Chlamydial
Infections. American Journal of Public Health
89 825-833. - Martin and Dean 1990 (Longitudinal AIDS Impact
Project). Development of a community sample of
gay men for an epidemiologic study of aids.
American Behavioral Science 33546-61. - Morris and Dean. 1994. The effects of sexual
behavior change on long-term hiv seroprevalence
among homosexual men. American Journal of
Epidemiology 140217-32.
14Network Topology Partial and Complete Networks
Once we move beyond the ego-network, we can start
to identify how the pattern of connection changes
the disease risk for actors. Two features of the
networks shape are known to be important
Connectivity and Centrality.
- Connectivity refers to how actors in one part of
the network are connected to actors in another
part of the network. - Reachability Is it possible for actor i to
infect actor j? This can only be true if there
is an unbroken (and properly time ordered) chain
of contact from one actor to another. - Given reachability, three other properties are
important - Distance
- Number of paths
- Distribution of paths through actors
(independence of paths)
15Reachability example All romantic contacts
reported ongoing in the last 6 months in a
moderate sized high school (AddHealth)
63
(From Bearman, Moody and Stovel, n.d.)
16- 288 People in largest component
- 42 steps maximum distance
- Mean distance between non-connected pairs is 16
steps - Mean number within 3 steps is 9.7
- 45 people are biconnected (in the center ring).
17Network Topology Distance number of paths
- Given that ego can reach alter, distance
determines the likelihood of an infection passing
from one end of the chain to another. - Disease spread is never certain, so the
probability of transmission decreases over
distance. - Disease transmission increases with each
alternative path connecting pairs of people in
the network.
18Probability of infection
by distance and number of paths, assume a
constant pij of 0.6
1.2
1
10 paths
0.8
5 paths
probability
0.6
2 paths
0.4
1 path
0.2
0
2
3
4
5
6
Path distance
19Probability of infection
by distance and number of paths, assume a
constant pij of 0.3
0.7
0.6
0.5
0.4
probability
0.3
0.2
0.1
0
2
3
4
5
6
Path distance
20Return to our first example
2 paths
4 paths
21Reachability in Colorado Springs (Sexual contact
only)
- High-risk actors over 4 years
- 695 people represented
- Longest path is 17 steps
- Average distance is about 5 steps
- Average person is within 3 steps of 75 other
people - 137 people connected through 2 independent paths,
core of 30 people connected through 4 independent
paths
(Node size log of degree)
22Network Topology Centrality and Centralization
- Centrality refers to (one dimension of) where an
actor resides in a sexual network. - Local compare actors who are at the edge of the
network to actors at the center - Global compare networks that are dominated by a
few central actors to those with relative
involvement equality
23Centrality example Add Health
Node size proportional to betweenness centrality
Graph is 45 centralized
24Centrality example Colorado Springs
Node size proportional to betweenness centrality
Graph is 27 centralized
25Network Topology Centrality and Centralization
Measures research
- Rothenberg, et al. 1995. "Choosing a Centrality
Measure Epidemiologic Correlates in the Colorado
Springs Study of Social Networks." Social
Networks Special Edition on Social Networks and
Infectious Disease HIV/AIDS 17273-97. - Found that the HIV positive actors were not
central to the overall network - Bell, D. C., J. S. Atkinson, and J. W. Carlson.
1999. "Centrality Measures for Disease
Transmission Networks." Social Networks 211-21. - Using a data-based simulation on 22 people, found
that simple degree measures were adequate,
relative to complexity - Poulin, R., M.-C. Boily, and B. R. Masse. 2000.
"Dynamical Systems to Define Centrality in Social
Networks." Social Networks 22187-220 - Method that allows one to compare across
non-connected portions of a network, applied to a
network of 40 people w. AIDS
26Timing Sexual Networks
A focus on contact structure often slights the
importance of network dynamics. Time affects
networks in two important ways 1) The structure
itself goes through phases that are correlated
with disease spread Wasserheit and Aral, 1996.
The dynamic topology of Sexually Transmitted
Disease Epidemics The Journal of Infectious
Diseases 74S201-13 Rothenberg, et al. 1997
Using Social Network and Ethnographic Tools to
Evaluate Syphilis Transmission Sexually
Transmitted Diseases 25 154-160 2) Relationship
timing constrains disease flow a) by spending
more or less time in-host b) by changing the
potential direction of disease flow
27Sexual Relations among A syphilis outbreak
Changes in Network Structure
Rothenberg et al map the pattern of sexual
contact among youth involved in a Syphilis
outbreak in Atlanta over a one year period.
(Syphilis cases in red)
Jan - June, 1995
28Sexual Relations among A syphilis outbreak
July-Dec, 1995
29Sexual Relations among A syphilis outbreak
July-Dec, 1995
30Data on drug users in Colorado Springs, over 5
years
31Data on drug users in Colorado Springs, over 5
years
32Data on drug users in Colorado Springs, over 5
years
33Data on drug users in Colorado Springs, over 5
years
34Data on drug users in Colorado Springs, over 5
years
35What impact does this kind of timing have on
disease flow?
The most dramatic effect occurs with the
distinction between concurrent and serial
relations. Relations are concurrent whenever
an actor has more than one sex partner during the
same time interval. Concurrency is dangerous for
disease spread because a) compared to serially
monogamous couples, and STDis not trapped inside
a single dyad b) the std can travel in two
directions - through ego - to either of his/her
partners at the same time
36Concurrency and Epidemic Size Morris
Kretzschmar (1995)
1200
800
400
0
0
1
2
3
4
5
6
7
Monogamy
Disassortative
Assortative
Random
Population size is 2000, simulation ran over 3
years
37Concurrency and disease spread
38A hypothetical Sexual Contact Network
8 - 9
C
E
3 - 7
2 - 5
B
A
0 - 1
3 - 5
D
F
39The path graph for a hypothetical contact network
E
C
B
A
D
F
40Direct Contact Network of 8 people in a ring
41Implied Contact Network of 8 people in a ring All
relations Concurrent
42Implied Contact Network of 8 people in a
ring Mixed Concurrent
2
3
2
1
1
2
2
3
43Implied Contact Network of 8 people in a
ring Serial Monogamy (1)
1
8
2
7
3
6
5
4
44Implied Contact Network of 8 people in a
ring Serial Monogamy (2)
1
8
2
7
3
6
1
4
45Implied Contact Network of 8 people in a
ring Serial Monogamy (3)
1
2
2
1
1
2
1
2
46Timing Sexual Networks
- Network dynamics can have a significant impact on
the level of disease flow and each actors risk
exposure
This work suggests that a) Disease outbreaks
correlate with phase-shifts in the connectivity
level b) Interventions focused on relationship
timing, especailly concurrency, could have a
significant effect on disease spread c) Measure
and models linking network topography to disease
flow should account for the timing of romantic
relationships
47Problems, Limitations Future Directions
Data
- Theoretically, STDs travel through a complete
network, and thus that would be the ideal data to
have. - Practically, this is extremely difficult and very
expensive - Ego-network data are the easiest to collect, but
limited. - They cannot capture extended effects of network
structure - Partial network data is thus the most realistic
hope we have for combining network insights with
data. - Future strategies should focus on developing
methods for selecting partial network data that
maximizes network coverage developing
statistical and simulation techniques that can
bridge the local/partial data and global data
divide
48Problems, Limitations Future Directions
Linking non-sexual relations to sexual networks
Consider another look at the data from Colorado
Springs The circled node is HIV positive.
49Linking non-sexual relations to sexual networks
50Linking non-sexual relations to sexual networks
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