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■Bio-mathematics, Statistics and Nano-Technologies: Mosquito Control Strategies
immune status of the population was viewed as a function of the vectorial capacity (Table
5.2), which drives incidence of infection in humans. However, MacDonald [143] on the
other hand demonstrated that reducing the number of mosquitos would have little effect
on the epidemiology of malaria in endemic areas. This, in fact, depends on the extent of
reduction.
5.2.10
Summary of modelling approaches
In this review, the epidemiological models of NAI to malaria have been grouped in
terms of the realism of immunity acquisition scenarios accounted for. This idea is engen-
dered by the assumption that more realistic models would boost the understanding of how
immunity effects transmission dynamics at both the individual and population level. These
models range from deterministic to ABMs and they have played substantial roles in devel-
oping epidemiological understanding of the disease. Considering that the mechanisms of
natural acquisition of immunity to malaria are so complex, the discussion of both the deter-
ministic and ABMs depends apparently on the scope of the questions asked. For instance
in [42], the earlier model of the full course of parasitemia in non-immune individual [31]
was restricted to the first wave of parasitemia in same persons. By so doing, the description
of acquired immunity was simplified, reducing it to a single dimension, with no distinction
between variant-specific and variant-transcending immune response and also ignoring de-
cay of immunity.
Compartmental SEIR models, in general, are not sufficient for reproducing the real dy-
namics of malaria as they allow only a limited account of the complex process of malaria
transmission, and NAI in particular. They make clearly artificial assumptions that seem to
make them conceptually compelling, but are actually inefficient. One considerable reason
is that malaria modelling requires an indepth study of in-host parasite dynamics rather than
a mere presence or absence of infection and prevalence in a group of population. Again,
the important sources of heterogeneity, spatial and temporal scales of transmission remain
inadequately addressed using deterministic models. A general interest for the deterministic
models is geared at knowing if one infection in one person in an entire parasite population
across an entire endemic setting will varnish or persist in a population. This is usually as-
sessed by computing the R0, which is somewhat governed by immunity status, since most
of these models assume that an individual’s probability of infecting a mosquito reduces as
immunity increases. In the deterministic models, immunity is either included by consider-
ing a separate human immune class (R_h) [51], [50],[75], [19], [39], [48], [49],[47], [46],
[43], [44] , [40] or by integrating an immunity function in existing models [59], [53], [52],
[55], [57], [58].
Agent-based models of malaria transmission, however, have become an attractive alter-
native in the evolution of malaria models in recent times. This is because they allow sim-
ulation of heterogeneous communities subjected to more realistic transmission scenarios
and can incorporate complex and stochastic issues affecting malaria spread. Thus, any kind
of heterogeneity (such as heterogeneous intervention measures, host movement, multiple
parasite variants) and stochasticity (such as inter-patient variability in duration of infection