| Literature DB >> 26380899 |
Jing Sun1, Wenbin Wu2, Huajun Tang2, Jianguo Liu1.
Abstract
Despite heated debates over the safety of genetically modified (GM) food, GM crops have been expanding rapidly. Much research has focused on the expansion of GM crops. However, the spatiotemporal dynamics of non-genetically modified (non-GM) crops are not clear, although they may have significant environmental and agronomic impacts and important policy implications. To understand the dynamics of non-GM crops and to inform the debates among relevant stakeholders, we conducted spatiotemporal analyses of China's major non-GM soybean production region, the Heilongjiang Province. Even though the total soybean planting area decreased from 2005 to 2010, surprisingly, there were hotspots of increase. The results also showed hotspots of loss as well as a large decline in the number and continuity of soybean plots. Since China is the largest non-GM soybean producer in the world, the decline of its major production region may signal the continual decline of global non-GM soybeans.Entities:
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Year: 2015 PMID: 26380899 PMCID: PMC4585609 DOI: 10.1038/srep14180
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Soybean import/export quantity in China from 1990 to 2012.
The vertical dashed line marks the time when soybean imports exceeded exports. Data source: the Statistics Division of the Food and Agriculture Organization of the United Nations at http://faostat.fao.org/.
Figure 2Map of China showing location of Heilongjiang Province.
The map was generated by the software ArcGIS 1042.
Figure 3Hotspots of soybean dynamics from 2005 to 2010 in Heilongjiang Province, China.
(a) hotspots of soybean gain. (b) hotspots of soybean loss. Names of prefecture-level regions are also shown. Colour bars describe the change rate of soybean dynamics from light colour (change rate: 0%) to dark colour (change rate: 100%). Because the pixel-level results of change detection (Supplementary Fig. 3) are not very informative and usually too scattered to visualize, they were normalized to change rate following a spatial smoothing technique46. Specifically, the spatial resolution of the original 250 m was reduced to 2500 m by superimposing 10 pixels × 10 pixels blocks (i.e., one block is composed of 100 pixels) on the entire region and then averaging the binary values within each block. The binary values in (a) equal 1 for the soybean gain pixels and 0 for other pixels and in (b) equal 1 for the soybean loss pixels and 0 for other pixels. A kernel smoother was applied to the normalized results and created change rate surfaces that portray the hotspots of soybean dynamics. The map was generated by the software ArcGIS 1047.
Figure 4Soybean area 2005 (dark diamonds), soybean area 2010 (red diamonds), soybean area loss (dark circles), and soybean area gain (red circles) in relation to their soybean area density for three window sizes (3.1 km2, 45.6 km2, and 410.1 km2) in Heilongjiang Province, China.
Two vertical dashed lines, 0.6 and 0.9, were superimposed to assist analysis. Note: to improve the visibility, we grouped the range of soybean area density (0, 1) into 20 equal-width intervals and used the midpoint to mark each interval, i.e. 0.025, 0.075, 0.125 ... 0.095, except for soybean area density = 1. Also, because soybean area density = 0 represents the non-soybean area, we did not plot it in the figure.