Online Program

279259
Matching HIV, TB, viral hepatitis and STD surveillance data: Identification of infectious disease syndemics in New York city


Monday, November 4, 2013 : 11:14 a.m. - 11:32 a.m.

Ann Drobnik, MPH, Division of Disease Control, NYC Department of Health and Mental Hygiene, Long Island City, NY
Jennifer Fuld, PhD candidate, MA, Program Collaboration & Service Integration (PCSI), Division of Disease Control, NYC Department of Health and Mental Hygiene, Queens, NY
Jessie Pinchoff, PhD candidate, MPH, Division of Disease Control, NYC Department of Health and Mental Hygiene, Long Island City, NY
Greta Bushnell, MPH candidate, BS, Gillings School of Global Public Health, University of North Carolina at Chapel Hill, Chapel Hill, NY
Jay K. Varma, MD, Division of Disease Control, NYC Department of Health and Mental Hygiene, Long Island City, NY
Objectives: A syndemic is infection with two or more diseases which interact to worsen the health impact of either disease alone. We sought to identify syndemics in NYC by matching the HIV, TB, viral hepatitis, and STD surveillance databases.

Methods: Deterministic matching was used to link cases of disease reported to the NYC Department of Health and Mental Hygiene (DOHMH). We included incident cases of TB, chlamydia, gonorrhea, and syphilis diagnosed between 1/1/00 and 12/31/10; and prevalent and incident cases of HIV, hepatitis B, and hepatitis C, excluding those known to have died before 2000. A line-listed, de-identified dataset was created for analysis, including non-matching and matching records.

Results: 955,944 non-unique individuals were in the analytic dataset; 12% matched to at least one other disease. Persons with syphilis were most likely to match to at least one other disease (64%), and those with hepatitis B were the least likely to match (11%). Four diseases had the highest percentage of matches with HIV: syphilis (50% matching to HIV), hepatitis C (15%), TB (14%), hepatitis B (5%). People with a reported case of gonorrhea had the highest percentage of matches with chlamydia (46%); and chlamydia had the highest percentages of matches with gonorrhea (14%). People with HIV had the greatest overlap with hepatitis C (16%).

Conclusions: In the absence of integrated surveillance systems, matching surveillance data can help us understand the prevalence of infectious disease syndemics, and to appropriately target services to address them. Matching can also create opportunities for collaboration between disease-specific programs within health departments.

Learning Areas:

Administration, management, leadership
Epidemiology
Planning of health education strategies, interventions, and programs

Learning Objectives:
Evaluate the benefit of conducting registry matching as a way to identify infectious disease syndemics Describe methods used to conduct deterministic matching

Keyword(s): Co-morbid, Surveillance

Presenting author's disclosure statement:

Qualified on the content I am responsible for because: I am the analyst for the Program Collaboration and Service Integration initiative, of which this analysis is part. My work and interests in public health have focused over the past 10 years on infectious diseases, including viral hepatitis, HIV/AIDS and STDs.
Any relevant financial relationships? No

I agree to comply with the American Public Health Association Conflict of Interest and Commercial Support Guidelines, and to disclose to the participants any off-label or experimental uses of a commercial product or service discussed in my presentation.