| Literature DB >> 25889145 |
James E Gentile1, Samuel S C Rund2, Gregory R Madey3.
Abstract
BACKGROUND: There is a renewed effort to develop novel malaria control strategies as even well-implemented existing malaria control tools may fail to block transmission in some regions. Currently, transgenic implementations of the sterile insect technique (SIT) such as the release of insects with a dominant lethal, homing endonuclease genes, or flightless mosquitoes are in development. These implementations involve the release of transgenic male mosquitoes whose matings with wild females produce either no viable offspring or no female offspring. As these technologies are all in their infancy, little is known about the relative efficiencies of the various implementations.Entities:
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Year: 2015 PMID: 25889145 PMCID: PMC4351850 DOI: 10.1186/s12936-015-0587-5
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
A survey of SIT modelling literature
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| [ | Modelled EBS and female-killing of a | Computational model that works on |
| hypothetical insect population at various | discrete generations comparing each male | |
| migrations, release rates, incomplete sterilities, | genotype with each female genotype. | |
| and number of mutated alleles. Under most, | ||
| but not all scenarios, EBS achieves better | ||
| control than female-killing. | ||
| [ | The authors model a hypothetical transgenic | The model uses combinatorics to determine |
| implementation in hypothetical insects | a population’s genetic make-up as inherited | |
| whereby there are multiple lethal genes | from parents. Lethality is operational in a | |
| in released insects and these lethal genes | population subset with the correct allele | |
| are conditional, killing only when certain | active in their genotype. | |
| conditions are met and otherwise propagate. Found that under ideal conditions, this | ||
| implementation can be far more effective | ||
| than traditional EBS. | ||
| [ | Modelled transgenic implementation whereby | This model maintains 20 population signals, |
| 2–20 lethal genes were engineered into a | one for each possible active allele. | |
| hypothetical insect. As the number of lethal | Inheritance is captured as generations | |
| genes per released animal increases, there is a | inherit their genetic makeup from the | |
| greater chance any one progeny will inherit a | previous generation. | |
| lethal gene. Found under ideal conditions, | ||
| control could be achieved at rates several | ||
| orders of magnitude more effectively than | ||
| single gene EBS. | ||
| [ | Modelled EBS in hypothetical insects, with | The analysis is performed with a discrete- |
| special regard to incomplete sterility and lack | time population model. The paper reports | |
| of competitive mating ability, which cause | on many factors including equilibrium | |
| decreased levels of control success. | female population with regards to | |
| incomplete fertility. | ||
| [ | Models EBS implementation in males | Equation-based population model with |
| engineered to have no sperm. Release | density dependent mortality. | |
| proportion is important. | ||
| [ | Compared EBS to LBS. They found that EBS at | Time-delayed difference equation model |
| low release ratios can increase equilibrium size | with a density-dependent mortality in the | |
| of adult population, but LBS can result in | aquatic life-stage and based on [ | |
| eradication. At high release ratio EBS works but | difference between EBS and LBS was | |
| LBS works better. | characterized in population suppression. | |
| [ | Frequent small releases of EBS moths may be | Discrete-time population model with |
| more effective than less frequent releases. They | overlapping generations. This model takes | |
| also compared how competitiveness of | into account an over flooding parameter | |
| irradiated males effected control. Models doses | and incomplete sterility. | |
| of radiation which result in reduced, but not | ||
| complete sterilisation of males to the benefit of | ||
| increased mating competitiveness. | ||
| [ | Modelled LBS, EBS, EFK, and LFK of a | Time-delayed difference equation model |
| hypothetical insect population at various | representing the mosquito’s lifecycle with | |
| release proportions, migrations, density | adult and larval mortality terms. | |
| dependancies, and fecundities. Found bisex | ||
| lethal could be preferred over female killing | ||
| under certain scenarios. | ||
| [ | Models | Population dynamics are modelled with |
| control is more effective with fewer males | a time-delayed difference equation model | |
| released more often than many males released | extended from [ | |
| less frequently. | modelled and the dynamics of injected pulses of mosquitoes are reported. | |
| [ | Models an | This work extends a population model |
| where the X chromosome in sperm is targeted | by adding HEG dynamics and focuses on | |
| (and two other transgenic techniques that are | reducing the intrinsic reproductive rate of | |
| outside the scope of this paper) by release | the female population. Density dependent | |
| of mosquitoes carrying homing endonuclease | mortality is considered for larvae. | |
| genes (HEG). Determined the number of | ||
| individual HEGs targeting essential mosquito | ||
| genes required at various mosquito | ||
| reproductive numbers with various homing | ||
| rates to eliminate a mosquito population. | ||
| [ | Models release size of spermless | Differential equation model with no explicit |
| (EBS) males required at differing rates of | time latency between generations. The | |
| occurrences where females mate more than | adult female population separated into | |
| once. Very low levels of remating events were | females who have not mated; mated and | |
| found to have significant negative effects on | fertile; mated; and infertile. Population | |
| the ability to control the mosquito population. | persistence was described in terms of the model coefficients. | |
| [ | Found it more effective to have small and | Extensive system of equations which |
| frequent releases of EBS males over large | captures population and compartmental | |
| infrequent releases. Also EBS works better | dynamics. | |
| when carried out with a larval habitat control | ||
| program (mechanical control). | ||
| [ | Modelled EBS & LBS in | Difference equation model similar to [ |
| under endemic and emerging outbreak | but look at an endemic case and emerging | |
| scenarios. Evaluated various release and | outbreak of mosquito populations. | |
| intervention-region sizes. Found EBS was | ||
| always more effective than EBS, though the the | ||
| magnitude varied by situation. |
Figure 1Virtual mosquito agents transition through a series of states representing life-stage and behaviour aspects of the mosquito’s lifecycle. Agents carry out these behaviours until death (simulated random mortality, which can happen at any state). The presence of cell-lethal genes halt agent development (indicated by coloured lines). Abbreviations are: EBS, early acting bisex; EFK, early acting female-killing; LBS, late acting bisex; LFK, late acting female killing.
The state transition rules of the model
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| 1 day + | None | Reflects incubation and hatch time. |
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| about 12 days | Nighttime | Larval mortality is density dependent and favours |
| older larvae. | |||
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| 1 day + | Nighttime | Adult emergence from pupae occurs (6 P.M. to 6 A.M. |
| in the simulation). | |||
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| 53 hours | None | |
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| - | 6 P.M. & Female | Mating is 100% successful and mate is assigned randomly. |
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| - | Meal Success & Nighttime | Females have a 25% chance of finding a host each hour. |
| Bloodmeals take less than 1 hour. | |||
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| 36 hours | Nighttime | Agents seek to lay eggs in larval habitats only at night. |
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| - | Empty Egg Clutch & Nighttime | Agents complete gonotrophic cycles until death. |
The model has an hourly time resolution and many agent behaviours are dependent on the time in state and simulated time of day. H t is a randomly assigned ‘hatch time’ value described in Equation 1.
Figure 2Visualization of the hatch-time curve given a random input value.
Figure 3Simulated daily, fixed-number releases of sterile males with SIT genes that halted growth in all eggs (EBS), only female eggs (EFK), all pupae (LBS), or female-only pupae (LFK). These plots report the population’s response to the introduction of sterile males at the release proportion of 0.3 from the first release of the campaign (day 0). Released males are as competitive as wild-types in these graphs. From top to bottom, these measures are the number of wild-type adult females (i) and males (ii); number of homozygous and heterozygous adults males (iii and iv); the fecundity potential (v); wild-type female and male larvae (vi and vii); heterozygous female and male larvae (viii and ix); and the density-dependent larval mortality factor (x). L represents the cell-lethal transgene. Please note that mosquitoes are counted before releases but the fecundity potential measure is calculated after.
Figure 4Population suppression factor reported in terms of released mating competitiveness and daily release proportion for the SIT implementations in the 12th month of the campaign. A suppression factor of 0.5 means the wild-type population was halved relative to a population with no intervention employed. Competitiveness represents a male agent’s ability to mate relative to a true wild-type male (if this value is 50%, it is half as competitive as wild-types).
Figure 5Population suppression over time for each daily release proportion and cell-lethal gene. Each cell corresponds to a gene and mating competitiveness and each line to a release proportion. The lines move forward in simulation time and the thickness corresponds to the adult female population. Competitiveness represents a male agent’s ability to mate relative to a true wild-type male (if this value is 50%, it is half as competitive as wild-types).
Figure 6Possible explanation of why late female killing (LFK) methods are not as efficient in suppressing the wild-type population as late bisex killing (LBS) methods. In LFK methods, there are two avenues by which a wild-type mosquito can be generated (either through a wild-type mate or, with 50% probability, through a heterozygous mate). The wild-type generation through heterozygous mates can cause the wild population to persist in the environment. With EBS methods, wild-type mosquitoes are only generated with wild-type mates.