| Literature DB >> 24586535 |
Sarina Macfadyen1, Darryl C Hardie2, Laura Fagan3, Katia Stefanova4, Kym D Perry5, Helen E DeGraaf5, Joanne Holloway6, Helen Spafford3, Paul A Umina7.
Abstract
Prophylactic use of broad-spectrum insecticides is a common feature of broad-acre grains production systems around the world. Efforts to reduce pesticide use in these systems have the potential to deliver environmental benefits to large areas of agricultural land. However, research and extension initiatives aimed at decoupling pest management decisions from the simple act of applying a cheap insecticide have languished. This places farmers in a vulnerable position of high reliance on a few products that may lose their efficacy due to pests developing resistance, or be lost from use due to regulatory changes. The first step towards developing Integrated Pest Management (IPM) strategies involves an increased efficiency of pesticide inputs. Especially challenging is an understanding of when and where an insecticide application can be withheld without risking yield loss. Here, we quantify the effect of different pest management strategies on the abundance of pest and beneficial arthropods, crop damage and yield, across five sites that span the diversity of contexts in which grains crops are grown in southern Australia. Our results show that while greater insecticide use did reduce the abundance of many pests, this was not coupled with higher yields. Feeding damage by arthropod pests was seen in plots with lower insecticide use but this did not translate into yield losses. For canola, we found that plots that used insecticide seed treatments were most likely to deliver a yield benefit; however other insecticides appear to be unnecessary and economically costly. When considering wheat, none of the insecticide inputs provided an economically justifiable yield gain. These results indicate that there are opportunities for Australian grain growers to reduce insecticide inputs without risking yield loss in some seasons. We see this as the critical first step towards developing IPM practices that will be widely adopted across intensive production systems.Entities:
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Year: 2014 PMID: 24586535 PMCID: PMC3929627 DOI: 10.1371/journal.pone.0089119
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Figure 1Map showing the location of trial sites throughout grain growing regions of southern Australia.
Black shaded areas show where broad-acre cereals and oilseeds are grown. At each site large plots (50 m×50 m minimum) with three pest management approaches were assessed. Trials were conducted on canola in 2010 and wheat in 2011. Land use data comes from ABARES Land Use of Australia, Version 4, 2005/2006 (September 2010 release).
Summary of insecticide inputs applied to each trial site across Australia.
| Treatment | Crop (cultivar) | Insecticide seed treatment | Insecticide foliar treatment |
|
| |||
| Control | Canola (Clearfield 44C79) | – | – |
| Conventional | Canola (Clearfield 44C79) | – | alpha-cypermethrin (PSPE); omethoate (PE) |
| Low input | Canola (Clearfield 44C79) | imidacloprid | – |
|
| |||
| Control | Wheat (Correll) | – | – |
| Conventional | Wheat (Correll) | – | alpha-cypermethrin (PE) |
| Low input | Wheat (Correll) | – | – |
|
| |||
| Control | Canola (Hybrid 46Y78) | imidacloprid | – |
| Conventional | Canola (Hybrid 46Y78) | imidacloprid | bifenthrin (PSPE); omethoate (PE) |
| Low input | Canola (Hybrid 46Y78) | imidacloprid | – |
|
| |||
| Control | Wheat (Sunvale) | – | – |
| Conventional | Wheat (Sunvale) | – | bifenthrin (PSPE) |
| Low input | Wheat (Sunvale) | – | – |
|
| |||
| Control | Canola (Hybrid 46Y78) | imidacloprid | – |
| Conventional | Canola (Hybrid 46Y78) | imidacloprid | dimethoate+bifenthrin (PE) |
| Low input | Canola (Hybrid 46Y78) | imidacloprid | – |
|
| |||
| Control | Wheat (Mace) | – | – |
| Conventional | Wheat (Mace) | – | omethoate+alpha-cypermethrin (PE) |
| Low input | Wheat (Mace) | imidacloprid | – |
|
| |||
| Control | Canola (Argyle) | – | – |
| Conventional | Canola (Argyle) | – | bifenthrin+chlorpyrifos (PSPE); chlorpyrifos+dimethoate (PE) |
| Low input | Canola (Argyle) | – | dimethoate (PE); pirimicarb + |
|
| |||
| Control | Wheat (Magenta) | imidacloprid | – |
| Conventional | Wheat (Magenta) | – | alpha-cypermethrin+chlorpyrifos (PS); alpha-cypermethrin (LS) |
| Low input | Wheat (Magenta) | – | – |
|
| |||
| Control | Canola (Cobbler) | – | – |
| Conventional | Canola (Cobbler) | – | chlorpyrifos (PS); bifenthrin (PE) |
| Low input | Canola (Cobbler) | – | – |
|
| |||
| Control | Wheat (Bullaring) | – | – |
| Conventional | Wheat (Bullaring) | – | cypermethrin (LS) |
| Low input | Wheat (Bullaring) | – | – |
Growing season rainfall is shown in brackets. In 2010 the crop was canola and in the same location, wheat in 2011.
PS = pre-sow; PSPE = post-sowing, pre-emergence; PE = post-emergence; LS = late season foliar treatments.
An aerial application of metaldehyde was used across all plots to control snails late season.
The effect of different pest management approaches on pest arthropod abundance.
| Site | Samplingtechnique | TreatmentP-value$ | treatment×DAE interactionP-value$ | Ranking |
|
| ||||
| Victoria | Pitfall | 0.0044** | <0.001*** | Control>LI>conven B |
| NSW | Pitfall | <0.001*** | <0.001*** | Conven>control>LI A |
| SA | Pitfall | 0.78 | <0.001*** | LI>control>conven A |
| WA1 | Pitfall | 0.41 | 0.027* | (Control/LI/conven) C |
| WA2 | Pitfall | 0.24 | <0.001*** | (Control/LI/conven) C |
| Victoria | Vacuum | <0.001*** | <0.001*** | (Control/LI)>conven B |
| NSW | Vacuum | <0.001*** | 0.0026** | (LI/control)>conven B |
| SA | Vacuum | 0.0058** | 0.010* | (LI/control)>conven B |
| WA1 | Vacuum | 0.020* | <0.001*** | Control>LI>conven B |
| WA2 | Vacuum | 0.48 | 0.065 | NP C |
| Victoria | Sweep | 0.012* | <0.001*** | Control>(conven/LI) A |
| NSW | Sweep | 0.70 | 0.69 | NP C |
| SA | Sweep | 0.83 | 0.56 | NP C |
| WA1 | Sweep | 0.092 | <0.001*** | Conven>(LI/control) A |
| WA2 | Sweep | 0.44 | <0.001*** | Control>(LI/conven) A |
|
| ||||
| Victoria | Pitfall | 0.035* | <0.001*** | (Control/LI)>conven B |
| NSW | Pitfall | 0.15 | <0.001*** | Conven>(control/LI) A |
| SA | Pitfall | 0.15 | <0.001*** | (Control/conven)>LI A |
| WA1 | Pitfall | 0.31 | 0.37 | NP C |
| WA2 | Pitfall | 0.0017** | 0.26 | Conven>LI>control A |
| Victoria | Vacuum | 0.0039** | <0.001*** | (LI/control)>conven B |
| NSW | Vacuum | <0.001*** | 0.0074** | Control>LI>conven B |
| SA | Vacuum | 0.047* | <0.001*** | Control>(conven/LI) A |
| WA1 | Vacuum | 0.56 | 0.0015** | Conven>(LI/control) A |
| WA2 | Vacuum | 0.0094** | 0.049* | (LI/(control)/conven) A |
| Victoria | Sweep | 0.79 | 0.80 | NP C |
| NSW | Sweep | <0.001*** | – | (LI/control)>conven B |
| SA | Sweep | <0.001*** | 0.10 | Control>LI>conven B |
| WA1 | Sweep | 0.090 | <0.001*** | (Control/LI)>conven B |
| WA2 | Sweep | 0.38 | <0.001*** | (LI/(control)/conven) A |
A GAMM analysis was used to assess the effect of three pest management approaches (treatment: conventional, low input (LI), or control) and time (DAE, days after crop emergence) on the abundance of all arthropod pests collected using three different sampling techniques.
A, a significant difference between treatments but the pattern does not follow what we expect; B, a significant difference between treatments and abundance was highest in control (or low input) and lowest in the conventional (control>LI>conven); C, no difference in pest abundance between the treatments. In this case no ranking was provided (NP). $ P-value of *<0.05, ** <0.01, *** <0.001.
The effect of different pest management approaches on beneficial arthropod abundance.
| Site | Samplingtechnique | Treatment | treatment×DAEinteraction | Ranking |
|
| ||||
| Victoria | Pitfall | <0.001*** | <0.001*** | (Control/LI)>convenB |
| NSW | Pitfall | 0.041* | <0.001*** | (LI/control)>convenB |
| SA | Pitfall | 0.43 | <0.001*** | (LI/(conven)/control)A |
| WA1 | Pitfall | 0.50 | <0.001*** | (Control/(LI)/conven) A |
| WA2 | Pitfall | 0.24 | 0.41 | NP C |
| Victoria | Vacuum | 0.0011** | 0.23 | (LI/control)>convenB |
| NSW | Vacuum | 0.14 | 0.022* | (LI/control)>convenB |
| SA | Vacuum | 0.82 | 0.0025** | (Conven/(control)/LI) A |
| WA1 | Vacuum | 0.38 | 0.55 | NP C |
| WA2 | Vacuum | 0.81 | 0.68 | NP C |
| Victoria | Sweep | 0.19 | 0.31 | NP C |
| NSW | Sweep | 0.70 | 0.11 | NP C |
| SA | Sweep | 0.90 | 0.019* | (Conven/(LI)/control) A |
| WA1 | Sweep | 0.35 | 0.098 | NP C |
| WA2 | Sweep | 0.32 | 0.89 | NP C |
|
| ||||
| Victoria | Pitfall | 0.94 | 0.053 | NP C |
| NSW | Pitfall | 0.68 | <0.001*** | (LI/(conven)/control) A |
| SA | Pitfall | 0.21 | <0.001*** | (Control/LI)>convenB |
| WA1 | Pitfall | 0.90 | 0.85 | NP C |
| WA2 | Pitfall | 0.40 | 0.067 | NP C |
| Victoria | Vacuum | 0.96 | 0.0036** | (Control/(conven)/LI) A |
| NSW | Vacuum | 0.0031** | 0.71 | (Control/(LI)/conven) A |
| SA | Vacuum | 0.012* | <0.001*** | (Control/(conven)/LI) A |
| WA1 | Vacuum | 0.78 | 0.53 | NP C |
| WA2 | Vacuum | 0.52 | 0.78 | NP C |
| Victoria | Sweep | 0.48 | 0.43 | NP C |
| NSW | Sweep | 0.72 | 0.64 | NP C |
| SA | Sweep | 0.42 | 0.014* | (Conven/(control)/LI) A |
| WA1 | Sweep | 0.082 | 0.61 | NP C |
| WA2 | Sweep | <0.001*** | 0.52 | (LI/control)>convenB |
A GAMM analysis was used to assess the effect of three pest management approaches (treatment: conventional, low input (LI), or control) and time (DAE, days after crop emergence) on the abundance of all beneficial arthropods (predators and parasitoids) collected using three different sampling techniques.
A, a significant difference between treatments but the pattern does not follow what we expect; B, a significant difference between treatments and abundance was highest in control (or low input) and lowest in the conventional (control>LI>conven); C, no difference in pest abundance between the treatments. In this case no ranking was provided (NP). $ P-value of *<0.05, ** <0.01, *** <0.001.
The effect of pest management approach on estimates of crop plant damage.
| Site | Treatment | treatment×DAEinteraction | Ranking |
|
| |||
|
| |||
| Victoria | <0.001*** | <0.001*** | Control>LI>convenB |
| NSW | 0.071 | 0.75 | NP C |
| SA | – | – | – |
| WA1 | <0.001*** | 0.69 | (Control/(LI)/conven) A |
| WA2 | 0.78 | 0.96 | NP C |
|
| |||
| Victoria | 0.36 | 0.020* | Control>(conven/LI) A |
| NSW | 0.013* | 0.088 | LI>(control/conven) A |
| SA | – | – | – |
| WA1 | 0.74 | 0.78 | NP C |
| WA2 | 0.92 | 0.71 | NP C |
|
| |||
|
| |||
| Victoria | <0.001*** | <0.001*** | Control>(LI/conven) B |
| NSW | 0.0017** | 0.54 | (Control/LI)>convenB |
| SA | 0.023* | 0.93 | (Control/(LI)/conven) B |
| WA1 | 0.17 | 0.88 | NP C |
| WA2 | 0.0017** | 0.69 | (Control/LI)>convenB |
|
| |||
| Victoria | NA | NA | NA |
| NSW | 0.47 | <0.001*** | (Conven/(LI)/control) A |
| SA | <0.001*** | 0.77 | Control>conven>LIA |
| WA1 | 0.21 | 0.93 | NP C |
| WA2 | 0.20 | 0.78 | NP C |
|
| |||
|
| |||
| Victoria | <0.001*** | <0.001*** | LI>conven>controlA |
| NSW | 0.095 | 0.0051** | LI>(control/conven) A |
| SA | 0.27 | <0.001*** | Control>(LI/conven) A |
| WA1 | <0.001*** | <0.001*** | Conven>(LI/control) B |
| WA2 | <0.001*** | 0.045* | Conven>control>LIB |
|
| |||
| Victoria | <0.001*** | <0.001*** | Control>conven>LIA |
| NSW | 0.0029** | 0.37 | Control>(LI/conven) A |
| SA | <0.001*** | <0.001*** | LI>conven>controlA |
| WA1 | <0.001*** | <0.001*** | (Conven/control)>LIA |
| WA2 | <0.001*** | 0.44 | Control>(conven/LI) A |
A GAMM analysis was used to assess the effect of three pest management approaches (treatment: conventional, low input (LI), or control) and time (DAE) on plant damage from feeding by pest herbivores. A dash indicates that data was not collected during that trial and NA indicates that a model couldn’t be fitted due to zeros in data set.
A, a significant difference between treatments but the pattern does not follow what we expect; B, a significant difference between treatments and damage was highest in control (or low input) and lowest in the conventional (control>LI>conven), or for plant density we expect greatest density in the conventional and lowest in the control (or low input) (conven>LI>control); C, no difference in plant damage or density between the treatments. In this case no ranking was provided (NP). $ P-value of *<0.05, ** <0.01, *** <0.001.
Figure 2Impact of pest management approach on crop yield in small-plot trials of canola (A) in 2010 and wheat (B) in 2011.
Trials were conducted at five sites across the grain growing regions of Australia. There were three pest management approaches assessed (conventional, low input, or control). Overall we found no significant effect of pest management approach on crop yield. In SA wheat (B) we found a significant effect but this was sensitive to the presence or absence of one sample point. In WA1 canola there was a marginally significant effect on yield (P = 0.049, (conventional/LI)>control). Bars indicate the mean of 4 replicate plots and 1×SE.
The effect of different insecticide inputs on crop yield analysed using a multi-environment approach.
| Crop | Treatment | Predicted mean yield (t/ha) | Standard error |
| Canola | Early season foliar sprays | 1.000 | 0.594 |
| Combined early and late season foliar sprays | 0.253 | 0.839 | |
| Combined early season foliar sprays and seed treatment | 2.831 | 0.596 | |
| Seed treatment only | 2.392 | 0.486 | |
| No insecticide applications | 0.674 | 0.485 | |
| Wheat | Early season foliar sprays | 3.533 | 0.450 |
| Combined early and late season foliar sprays | 3.928 | 0.476 | |
| Seed treatment only | 3.994 | 0.476 | |
| Snail baits | 4.646 | 0.893 | |
| Combined snail baits and early season foliar sprays | 4.847 | 0.893 | |
| Combined snail baits and seed treatment | 4.453 | 0.893 | |
| No insecticide applications | 3.765 | 0.444 |
See Table 1 for details about insecticide chemicals used.
Averaged SED for canola is 0.858 and for wheat 0.772.
Economic cost of insecticide inputs across the different treatments at each trial site, including the costs for the application of chemicals.
| Crop | Site | Treatment | ||
| Control | Conventional | Low input | ||
| Canola | Victoria | 0 | 13.67 | 0.70 |
| NSW | 0.36 | 13.85 | 0.36 | |
| SA | 0.30 | 9.44 | 0.30 | |
| WA1 | 0 | 6.85 | 61.61 | |
| WA2 | 0 | 14.09 | 0 | |
| Wheat | Victoria | 0 | 6.39 | 0 |
| NSW | 0 | 5.98 | 0 | |
| SA | 21.80 | 30.75 | 30.20 | |
| WA1 | 0 | 13.19 | 9.92 | |
| WA2 | 0 | 6.64 | 0 | |
All values expressed in AU$/ha.