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High-Resolution Gene Flow Model for Assessing Environmental Impacts of Transgene Escape Based on Biological Parameters and Wind Speed

Overview
Journal PLoS One
Date 2016 Mar 10
PMID 26959240
Citations 2
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Abstract

Environmental impacts caused by transgene flow from genetically engineered (GE) crops to their wild relatives mediated by pollination are longstanding biosafety concerns worldwide. Mathematical modeling provides a useful tool for estimating frequencies of pollen-mediated gene flow (PMGF) that are critical for assessing such environmental impacts. However, most PMGF models are impractical for this purpose because their parameterization requires actual data from field experiments. In addition, most of these models are usually too general and ignored the important biological characteristics of concerned plant species; and therefore cannot provide accurate prediction for PMGF frequencies. It is necessary to develop more accurate PMGF models based on biological and climatic parameters that can be easily measured in situ. Here, we present a quasi-mechanistic PMGF model that only requires the input of biological and wind speed parameters without actual data from field experiments. Validation of the quasi-mechanistic model based on five sets of published data from field experiments showed significant correlations between the model-simulated and field experimental-generated PMGF frequencies. These results suggest accurate prediction for PMGF frequencies using this model, provided that the necessary biological parameters and wind speed data are available. This model can largely facilitate the assessment and management of environmental impacts caused by transgene flow, such as determining transgene flow frequencies at a particular spatial distance, and establishing spatial isolation between a GE crop and its coexisting non-GE counterparts and wild relatives.

Citing Articles

Increased pollen source area does not always enhance the risk of pollen dispersal and gene flow in Oryza sativa L.

Hu N, Jiang X, Yuan Q, Liu W, Yao K, Long Y Sci Rep. 2020; 10(1):6143.

PMID: 32273546 PMC: 7145849. DOI: 10.1038/s41598-020-63119-z.


Model-based calculating tool for pollen-mediated gene flow frequencies in plants.

Lei W, Bao-Rong L AoB Plants. 2017; .

PMID: 28039114 PMC: 5391714. DOI: 10.1093/aobpla/plw086.

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