| Literature DB >> 23202449 |
Samuel Alizon1, Carsten Magnus.
Abstract
The Human Immunodeficiency Virus (HIV) is one of the most threatening viral agents. This virus infects approximately 33 million people, many of whom are unaware of their status because, except for flu-like symptoms right at the beginning of the infection during the acute phase, the disease progresses more or less symptom-free for 5 to 10 years. During this asymptomatic phase, the virus slowly destroys the immune system until the onset of AIDS when opportunistic infections like pneumonia or Kaposi's sarcoma can overcome immune defenses. Mathematical models have played a decisive role in estimating important parameters (e.g., virion clearance rate or life-span of infected cells). However, most models only account for the acute and asymptomatic latency phase and cannot explain the progression to AIDS. Models that account for the whole course of the infection rely on different hypotheses to explain the progression to AIDS. The aim of this study is to review these models, present their technical approaches and discuss the robustness of their biological hypotheses. Among the few models capturing all three phases of an HIV infection, we can distinguish between those that mainly rely on population dynamics and those that involve virus evolution. Overall, the modeling quest to capture the dynamics of an HIV infection has improved our understanding of the progression to AIDS but, more generally, it has also led to the insight that population dynamics and evolutionary processes can be necessary to explain the course of an infection.Entities:
Mesh:
Year: 2012 PMID: 23202449 PMCID: PMC3497037 DOI: 10.3390/v4101984
Source DB: PubMed Journal: Viruses ISSN: 1999-4915 Impact factor: 5.048
Figure 1Typical course of an HIV infection. The top panel (inspired by [10] and [17]) shows the diversity along with the type of HIV variant that dominates as in [18]. The diversity measure shown here is Tajima’s D, which compares the average pairwise distance of a set of sequences to the number of sites that are polymorphic [17,19]. The bottom panel shows the dynamics of the viral load, in red, and the CD4+ T-cells, in blue as in [3]. The three phases of an HIV infection are stressed with different colors.
Mathematical notations used. This table summarizes all the notations used with their biological description. For parameters, we provide a typical value when it has been estimated (these values are used to obtain the figures). v indicates a variable and f a function of several variables. Note that for Box 3, Nowak et al. [34] do not give units for their rates so we used a dimension week−1 (other dimension such as day−1 or year−1 did not make sense). We also have to point out that some of the parameters used here are still under debate (for instance, recent estimates of the virion clearance rate lead to rates of 5 to 500 day−1 [35]).
| Symbol | Description | Value |
|---|---|---|
| NOTATIONS USED IN | Parameters from [ | |
|
| Density of susceptible target cells | |
|
| Density of cells infected by the virus | |
|
| Density of free viruses | |
|
| Input rate of target cells | |
|
| Infection rate of target cells by free viruses | 6.5 × 10−4
|
| Death rate of uninfected cells | 0.01 day−1 | |
| Death rate of infected cells | 0.39 day−1 | |
|
| Virus production rate of infected cells | 850 virions · cell−1 · day−1 |
|
| Clearance rate of free viruses | 3 day−1 |
| NOTATIONS USED IN | Parameters from [ | |
|
| Density of quiescent target cells | |
|
| Proliferation rate of activated target cells | 1 day−1 |
| = Q + T + I, Total T-cell count | ||
| Maximal T-cell number | 1200 cells · | |
|
| Density of free viruses | |
| Activation rate of quiescent T-cells | 0.1 − 1 day−1 | |
| Death rate of quiescent T-cells | 0.001 day−1 | |
|
| see above | 1.35 × 10−3
|
|
| Virus induced depletion rate of activated T-cells | 5.6 × 10−3
|
| See above | 0.5 day−1 | |
|
| See above | 100 virion · cell−1 · day−1 |
|
| See above | 3 day−1 |
| NOTATIONS USED IN | Parameters from [ | |
|
| Number of virus strains in the host | |
| Density of immune cells specific to virus strain i | ||
|
| Density of non-specific immune cells | |
| Virus replication rate | 5 virion−1 · week−1 | |
| Activation rates of immune cells | 1 cell · virion−1 · week−1 | |
| Killing rate of immune cells by viruses | 1 virion−1 · week−1 | |
| k1 | Killing rate of viruses by specific immune cells | 5 cell−1 · week−1 |
| k2 | Killing rate of viruses by non-specific immune cells | 4.5 cell−1 · week−1 |
| Baseline death rates of immune cells | 0 |
Figure 2Fraction of articles on HIV that involve theoretical biology. The regression was highly significant (r=0.0027, p-value < 10−3 and adj-R2 =0.97). The data was collected on Web of Science on July 13, 2012. The articles on HIV were selected using the keywords Topic=(HIV) AND Topic=(virus OR immunodefic*) and there were 110, 064 hits. The restriction to theoretical articles was performed by adding the keyword AND Topic = (dynamics OR mathemat* OR computational) and there were 4, 277 hits.
Overview of HIV dynamics models. We list all the models described in the main text that focus on the course of an HIV infection. For each model, we indicate the number of CD4+ T-cell compartments, the number of virus strains (“v” means it varies as the virus evolves and the number of strains is then denoted by n), whether the model includes a host anti-viral immune response (and if it does so which type of response) and whether it follows the entire infection and is able to reproduce the slow time scale of CD4+ T-cell decline. We split the CD4+ T-cell compartment into uninfected and infected compartments depending on whether the cells of this compartment are infected with viruses or not. If a paper includes more than one model, we list these models separately (“basic” stands for “basic model”, “act. T” for “activated T-cell model”, ‘im. con.’ for “immune control model” and “drug” for “drug model”). In the models where the number of viral strains are “NA”, the virus dynamics is assumed to be in quasi-steady state with the infected cells, i.e., the viral numbers are a function of the number of infected cells. In the models with “NA” numbers of CD4+ T-cell compartments, viruses are assumed to be generated at a constant, target-cell independent rate. If the model captures the progression to the AIDS phase, we list the driving force for disease progression. Here, “NA” indicates that a feature is not included in the model.
| Model | Number of compartments: | Immune response | Dynamics captured: | Timescale of asymp- | Driver of disease progression | |||
|---|---|---|---|---|---|---|---|---|
| uninfected | infected | viral | CD4+ T-cells | virus load | tomatic phase | |||
| CD4+ T-cells | strains | |||||||
| POPULATION DYNAMICS MODELS | ||||||||
| Perelson | 1 | 2 | 1 | NA | no initial peak but long-term increase in viruses anddecrease in T-cells | between 3 and 9 years | slow progression due to different T-cell compartments and initial parameter choice | |
| Essunger and Perelson [ | 3 | 4 | 1 | NA | no initial peak but long-term increase in viruses and decrease in T-cells | between 2 and 8 years | time-dependent viral production rate, initial viral peak observable for model extension allowing infection of resting cells | |
| Perelson | 1 | 1 | 1 and 2 (drug) | NA | acute and asymptomatic phase | ∞ | only by changing parameters manually during simulations | |
| Kirschner [ | 1 | 1 | 1 | NA | no initial peak but long-term increase in viruses and decrease in T-cells | approx. 4 years | increasing the non-T-cell based viral production rate over time | |
| De Boer and Perelson [ | 1 (basic), 2 (act. T), 0 or 1 (im. con.) | 1 (basic), 1 (act. T), 1 (im. con.) | 1 | CD8+ (im cont only) | yes | yes | depending on parameter choice | different models described, progression to AIDS only achievable by changing the activation or proliferation rate in a special T-cell compartment (immune control model) or the viral infection rate (activated T-cell model) over time |
| Kirschner | 2 | 4 | NA | NA | no | yes | < 10 years | slow but constant drop of CD4+ T-cells due to multi-compartment model |
| Fraser | 2 | 2 | NA | CD8+ | yes | no | 4-14 years | slow and fast compartments and (random) antigenic stimulation |
| Perelson [ | 1 | 2 | 1 (basic) | NA | acute and asymptomatic phase | ∞ | only by changing parameters manually during simulations | |
| Ribeiro | 2 | 6 | 3 | NA | yes | yes | approx. 4 years | two virus types using different coreceptors, rise in X4 type due to selection and dominance of X4 virus |
| EVOLUTIONARY MODELS | ||||||||
| Nowak | NA | NA |
| general and strain specific | NA | yes | 6 to 8 years | antigenic diversity threshold, asymmetry between viral infection and viral recognition |
| Nowak and May [ | NA | NA |
| general and strain specific | yes | yes | 6 to 8 years | diversity threshold and asymmetry, similar model as [ |
| Nowak | 1 | 1+ |
| general and strain specific | yes | yes | approx. 8 years | diversity threshold and asymmetry |
| Schenzle [ | 1 | 1 | 1 | general | yes | yes | approx. 10 years | within-host evolution modelled by increasing CD4+ T-cell infection rate during the infection |
| Stilianakis | NA | NA |
| general and strain specific | yes | yes | depending on initial conditions | diversity threshold and asymmetry, similar model as [ |
| Stilianakis | 1 | 1 | 1 | general | yes | yes | approx. 10 years | increasing CD4+ T-cell infection rate during the infection |
| Regoes | 1 | 2 |
| strain specific | dynamics not shown | NA | adds target cell-limitation to [ | |
| Stilianakis and Schenzle [ | 2 | 1 | 1 | general | yes | yes | approx. 10 years | increasing CD4+ T-cell infection rate and increasing susceptibility of CD4+ T-cells during the infection |
| Ball | 1 |
| NA | yes | not shown | NA | target-cell limited model and virus diversification with trade-off between the virus replication rate and the death rate of an infected cell | |
| Sguanci |
|
| TNF | yes | yes | approx. 4 years | target-cell limited, transmission and death rates depend on TNF concentration | |
| Iwami | 1 |
| CD8+ | NA | NA | NA | AIDS begins when the number of virus strains exceeds a threshold | |
| Iwami | 1 | 1 | NA | CD8+ | not shown | yes | variable across patients | increase in immune impairment rate over time (as in [ |
| Kamp [ | NA | NA |
| general and strain specific | yes | not shown | NA | diversity threshold, increasing viral growth rate |
| Alizon and Boldin [ | 2 | 2 |
| NA | not shown | yes | approx. 10 years | trade-off between the virus replication rate and the death rate of an infected cell and cell heterogeneity |
| Huang | 1 | 1 | 1 | general | yes | yes | 3 to 8 years | deterministic increase in virus replication rate |
| STOCHASTICITY-DRIVEN MODELS | ||||||||
| Tan and Wu [ | 1 | 2 | 1 | NA | yes | yes | approx. 10 years | target cell proliferation rate is a decreasing function of viral load (as in [ |
| Zorzenon dos Santos and Coutinho [ | 1 | 2 | 1 | general | yes | yes | approx. 8 years | CA model; infected cells organize themselves into spacial structures |
| Regoes and Bonhoeffer [ | NA | NA |
| NA | yes | no | 5 to 30 years | emergence of mutants strains with different fitnesses |
| Lin and Shuai [ | 1 | 1 | 1 | CD8+, B-cells indirectly | yes | yes | influenced by viral mutation rate | CA model; spatial structure, virus mutation (asymmetry) |
| OTHER PROCESSES | ||||||||
| Galvani [ | 4 | 1 | 1 | CD8+, B-cells | yes | yes | approx. 9 years | elevated production of new T-cell clones that accumulate deleterious mutation |
| Korthals Altes | 1 | 1+ | NA | strain specific CD4+ | yes | no | 3 - 40 years | avidity of CD4+ T-cell response (the lower the avidity is the faster is progression to AIDS) |
| Hogue | 2 | 1 | 1 | CD8+, dendritic cells | yes | yes | dependent on parameter change | induced by change of one or more parameters related to infection and viral production or to immune effector functions |