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. Author manuscript; available in PMC: 2012 Mar 1.
Published in final edited form as: Curr Opin HIV AIDS. 2011 Mar;6(2):131–140. doi: 10.1097/COH.0b013e328343ad03

Table.

Attributes of recent (2009 onwards) mathematical model studies incorporating the impact of antiretroviral drug resistance.

Author Setting Structure Objective Resistance-related assumptions* Outcomes
Therapeutic cART
Smith? et al 2010 (9) MSM, San Francisco, US Deterministic, multiple disease stages, specific resistant phenotypes based on ARV classes Trace the evolutionary history of ARV resistance in San Francisco and predict future dynamics 7 resistance categories (single, dual or triple class). Withdrawal from treatment is possible but no reversion to wild-type or loss of mutations to any ARV class. cART has prevented 1° resistance reaching >15% in San Francisco. However patterns continue to evolve; 60% of currently circulating resistant strains can cause self-sustaining epidemics. A wave of NNRTI-resistant strains will emerge over the next 5 years.
Marks et al 2010 (8) Theoretical (based on an MSM transmission model (4)) Stochastic version based on deterministic model (4) (similar to Figure 1a) “Thought experiment”: how chance events affect the emergence of resistance Allows reversion from resistant to wild-type HIV infection upon cessation of cART. No explicit differentiation of 1° and 2° resistance. Variability in 1° resistance prevalence within an epidemic is large when numbers of new infections are small (<200/y) but diminishes rapidly with higher numbers
Bhunu et al 2009 (6) Theoretical Deterministic, HIV and AIDS stages Mathematical analysis of competing wild-type and resistant strains A fraction of those initiating cART immediately develop resistance; the remainder are transferred from the AIDS to HIV compartment. No compartments distinguish treated from untreated individuals. Qualitative analysis involving analytic solutions including stability analysis. Wild-type and resistant strains would co-exist, rather than being driven to extinction, whenever the reproduction numbers** >1. Resistance increases with increasing ARV use.
Hoare et al 2010 (7) Southeast Asia (Thailand as example) Deterministic, multiple disease stages, separation of those with 1° and 2° resistance Impact of universal one-regimen cART on ARV resistance in Southeast Asian settings Those with 1° resistance may revert to wild-type when untreated but resistance redevelops upon treatment. Without monitoring, ∼24% new infections could include resistance mutations after 10 years.
Antiretroviral microbicides (ARV-VMB) or Pre-exposure prophylaxis (PrEP)
Abbas et al 2010 (abstract) (12) Sub-Saharan Africa, heterosexual Age, gender, sexual activity and disease stage stratified (likely deterministic compartmental but not specified). Allows drug discontinuation. PrEP, optimistic and pessimistic scenarios determined by parameter values Optimistic (pessimistic): 75% (25%) PrEP effectiveness, 60% (15%) at-risk population use PrEP, 5% (25%) already infected inadvertently use PrEP Optimistic (pessimistic): 2.5% (40%) resistance prevalence after 10 years. Inadvertent PrEP use by previously-infected people is the major determinant of resistance prevalence from PrEP.
Dimitrov et al 2010 (14) Heterosexual populations, low-or middle-income settings Deterministic, HIV and AIDS stages, gender Population-level benefits of ARV-VMB by gender Resistance transmission but no reversion. No explicit differentiation of 1° and 2° resistance. Women are more likely than men to benefit from ARV-VMB use. A substantial male advantage only occurs if risk of resistance developing is high and HIV-positive women use the ARV-VMB indefinitely (because when resistance develops it reduces risk of female-to-male HIV transmission).
Supervie et al 2010 (11) MSM, San Francisco, US Deterministic, multiple disease stages, ARV use as cART as well as PrEP, separation of those with 1° and 2° resistance Predicting public health impact of PrEP Assumes individuals are HIV tested before being prescribed PrEP. Allows PrEP cessation and reversion to wild-type. “Fairly high” prevalence of 1° resistance when PrEP introduced. “Resistance” is the same for PrEP and cART. “Paradox” that PrEP could increase proportion of new infections that are ARV resistant, even though absolute numbers decrease, if PrEP is effective (efficacy >30%, relative efficacy against resistant strains >0.2 but <1). If there is risk compensation, PrEP could significantly increase 1° resistance; if not, it is likely to decrease.
*

Resistant strains were assumed to be less infectious than wild-type and unless stated, risk compensation was not considered.

**

The reproductive number is the number of secondary (onward) infections transmitted by one infected individual.

1° and 2° - primary (transmitted) and secondary (acquired) resistance, respectively.

NNRTIs – Non-nucleoside reverse transcriptase inhibitors; MSM – men who have sex with men