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Flavia Geiger, et al.During the last 50 years, agricultural intensification has caused many wild plant and animal species to go extinct regionallyor nationally and has profoundly changed the functioning of agro-ecosystems. Agricultural intensification has manycomponents, such as loss of landscape elements, enlarged farm and field sizes and larger inputs of fertilizer and pesticides.However, very little is known about the relative contribution of these variables to the large-scale negative effects onbiodiversity. In this study, we disentangled the impacts of various components of agricultural intensification on speciesdiversity of wild plants, carabids and ground-nesting farmland birds and on the biological control of aphids....
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Basic and Applied Ecology 11 (2010) 97–105 www.elsevier.de/baae
Persistent negative effects of pesticides on biodiversity and biological
control potential on European farmland
Flavia Geigera, Jan Bengtssonb, Frank Berendsea,�, Wolfgang W. Weisserc,Mark Emmersond,e, Manuel B. Moralesf, Piotr Ceryngierg, Jaan Liirah,Teja Tscharntkei, Camilla Winqvistb, Sonke Eggersb, Riccardo Bommarcob,Tomas Partb, Vincent Bretagnollej, Manuel Plantegenestk, Lars W. Clementc,Christopher Dennisd,e, Catherine Palmerd,e, Juan J. Onatef, Irene Guerrerof,Violetta Hawrog, Tsipe Aavikh, Carsten Thiesi, Andreas Flohrei, Sebastian Hankei,Christina Fischeri, Paul W. Goedhartl, Pablo Inchaustij
aNature Conservation and Plant Ecology Group, Wageningen University, Wageningen, The NetherlandsbDepartment of Ecology, Swedish University of Agricultural Sciences, Uppsala, SwedencInstitute of Ecology, Friedrich-Schiller-University Jena, Jena, GermanydDepartment of Zoology, Ecology and Plant Sciences, University College Cork, Cork, IrelandeEnvironmental Research Institute, University College Cork, Cork, IrelandfDepartment of Ecology, c/ Darwin, 2, Universidad Autonoma de Madrid, Madrid, SpaingCentre for Ecological Research, Polish Academy of Sciences, Lomianki, PolandhInstitute of Ecology and Earth Sciences, University of Tartu, Tartu, EstoniaiAgroecology, Department of Crop Science, Georg-August-University, Gottingen, GermanyjCentre for Biological Studies of Chize CNRS, Villiers-en-Bois, FrancekUMR BiO3P 1099 INRA/Agrocampus Ouest/Universite Rennes 1, Rennes, FrancelBiometris, Wageningen University and Research Centre, Wageningen, The Netherlands
Received 14 November 2009; accepted 4 December 2009
Abstract
During the last 50 years, agricultural intensification has caused many wild plant and animal species to go extinct regionallyor nationally and has profoundly changed the functioning of agro-ecosystems. Agricultural intensification has manycomponents, such as loss of landscape elements, enlarged farm and field sizes and larger inputs of fertilizer and pesticides.However, very little is known about the relative contribution of these variables to the large-scale negative effects onbiodiversity. In this study, we disentangled the impacts of various components of agricultural intensification on speciesdiversity of wild plants, carabids and ground-nesting farmland birds and on the biological control of aphids.
In a Europe-wide study in eight West and East European countries, we found important negative effects ofagricultural intensification on wild plant, carabid and bird species diversity and on the potential for biological pestcontrol, as estimated from the number of aphids taken by predators. Of the 13 components of intensification wemeasured, use of insecticides and fungicides had consistent negative effects on biodiversity. Insecticides also reducedthe biological control potential. Organic farming and other agri-environment schemes aiming to mitigate the negative
e front matter & 2009 Gesellschaft fur Okologie. Published by Elsevier Gmbh. All rights reserved.
ae.2009.12.001
ing author. Tel.: þ31 317 484973; fax: þ31 317 419000.
ess: [email protected] (F. Berendse).
ARTICLE IN PRESSF. Geiger et al. / Basic and Applied Ecology 11 (2010) 97–10598
effects of intensive farming on biodiversity did increase the diversity of wild plant and carabid species, but – contraryto our expectations – not the diversity of breeding birds.
We conclude that despite decades of European policy to ban harmful pesticides, the negative effects of pesticides onwild plant and animal species persist, at the same time reducing the opportunities for biological pest control. Ifbiodiversity is to be restored in Europe and opportunities are to be created for crop production utilizing biodiversity-based ecosystem services such as biological pest control, there must be a Europe-wide shift towards farming withminimal use of pesticides over large areas.& 2009 Gesellschaft fur Okologie. Published by Elsevier Gmbh. All rights reserved.
Zusammenfassung
Durch die Intensivierung der Landwirtschaft in den letzten 50 Jahren sind viele Pflanzen- und Tierarten aufregionaler und nationaler Ebene ausgestorben und ist die Funktion des Agrarokosystems beeintrachtigt. Dielandwirtschaftliche Intensivierung umfasst viele verschiedene Faktoren, wie zum Beispiel die Homogenisierung derLandschaft, die Vergroßerung von landwirtschaftlichen Betrieben und Ackern und den zunehmenden Gebrauch vonDungern und Pestiziden. Uber den relativen Beitrag der einzelnen Faktoren zu den weitgehenden Auswirkungen derIntensivierung auf die Biodiversitat ist jedoch wenig bekannt. In dieser Studie haben wir den Einfluss dieserverschiedenen Faktoren auf die Diversitat von Pflanzen, Laufkafern und bodenbrutenden Ackervogeln sowie auf diebiologische Schadlingsbekampfung von Blattlausen, entwirrt.In einer europaweiten Studie, in acht West- und Ost-Europaischen Landern, haben wir weitgehende, negative
Effekte der landwirtschaftlichen Intensivierung auf Pflanzen, Laufkafer, bodenbrutende Ackervogel und diebiologische Schadlingsbekampfung - die Anzahl durch naturliche Feinde gefressener Blattlause - gefunden. Von dendreizehn Faktoren der landwirtschaftlichen Intensivierung die wir gemessen haben, hatte der Gebrauch vonInsektiziden und Fungiziden konsequent negative Effekte auf die Biodiversitat. Insektizide reduzierten ebenfalls diebiologische Schadlingsbekampfung. Organische Bewirtschaftung und andere Formen von Okologischem Ausgleich, diezum Ziel haben, die negativen Effekte der Intensivierung auf Biodiversitat abzuschwachen, erhohten die Pflanzen- undLaufkaferdiversitat, jedoch – entgegen unseren Erwartungen - nicht die Diversitat der Brutvogel.
Wir stellen fest, dass trotz jahrzehntelanger europaischer Politik gegen schadliche Pestizide, die negativenAuswirkungen von Pestiziden auf Pflanzen- und Tierarten andauern und damit auch die Moglichkeit biologischerSchadlingsbekampfung abnimmt. Wenn die Biodiversitat in Europa erhalten werden soll und die Chance aufbiodiversitatsgebundenen Okosystemfunktionen, wie biologische Schadlingsbekampfung, beruhenden Ackerbaugeschaffen werden soll, ist eine europaweite Veranderung zu einer Bewirtschaftung mit minimalem Gebrauch vonPestiziden uber eine große Flache notwendig.& 2009 Gesellschaft fur Okologie. Published by Elsevier Gmbh. All rights reserved.
Keywords: Agricultural intensification; Organic farming; Agri-environment schemes; Vascular plants; Carabids; Birds
Introduction
Farmland is the most extensive habitat for wild plantand animal species in Europe, covering 43% of the EUmembers states’ surface area (EU-27) and still harbour-ing a large share of European biodiversity, e.g., 50% ofall European bird species (Pain & Pienkowski, 1997) and20–30% of the British and German flora (Marshallet al., 2003). In recent decades, however, agriculturalintensification has unquestionably contributed to theimpoverishment of European farmland biodiversity(Donald, Green, & Heath, 2001; Krebs, Wilson, Brad-bury, & Siriwardena, 1999; Robinson & Sutherland,2002; Stoate et al., 2001). There is considerable concernthat declines in biodiversity affect the delivery ofecosystem services (Hooper et al., 2005). In agriculturallandscapes, the services considered most at risk from
agricultural intensification are biological pest control(Tscharntke, Klein, Kruess, Steffan-Dewenter, & Thies,2005), crop pollination (Biesmeijer et al., 2006) andprotection of soil fertility (Brussaard et al., 1997).
Agricultural intensification takes place at various spatialscales, from increased application of herbicides, insecticides,fungicides and chemical fertilizer on local fields to loss ofnatural and semi-natural habitats and decreased habitatheterogeneity at the farm and landscape levels (Attwood,Maron, House, & Zammit, 2008; Benton, Vickery, &Wilson, 2003; Billeter et al., 2008; Hendrickx et al., 2007;Tscharntke et al., 2005; Weibull, Bengtsson, & Nohlgren,2000). So far it has been difficult to disentangle the impactsof intensified management of local fields from changes inland use at the landscape level, since both occursimultaneously in most agricultural landscapes (Robinson& Sutherland, 2002).
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In addition, previous assessments have generallyfocused on a few taxa or countries and hardly anystudy has simultaneously addressed the effects ofagricultural intensification on key ecosystem servicessuch as the biological control of agricultural pests.
Since the early 1990s the EU has promoted initiatives toprevent and reduce the negative effects of intensive farming.In 1991, legislation limiting the use of pesticides with highrisks to the environment came into force (Council Directive91/414/EEC of 15 July 1991). The reform of the CommonAgricultural Policy (CAP) in 1992 aimed to reduce thenegative consequences of agricultural intensification byfinancially supporting agri-environment schemes andorganic farming (Council Regulation 2078/92/EEC of 30June 1992). However, several studies have shown that agri-environment schemes and organic farming do not alwaysdeliver the expected benefits (Bengtsson, Ahnstrom, &Weibull, 2005; Berendse, Chamberlain, Kleijn, & Schekker-man, 2004; Kleijn, Berendse, Smit, & Gilissen, 2001). So, animportant, but yet unanswered question is whether policieshave significantly reduced the adverse effects of intensive
Fig. 1. Effects of cereal yield (ton/ha) on: (A) the number of wild plan
of carabid species per sampling point (per trap during 2 sampling pe
(one survey plot of 500� 500m2), and (D) the median survival ti
including the two surrounding landscape variables as covariates and
farming on biodiversity and, closely linked to this, on thedelivery of key ecosystem services such as biological pestcontrol. In this study, we investigated in nine Europeanareas the effects of agricultural intensification and itscomponents on the species diversity of wild plants, carabidsand ground-nesting farmland birds (thus considering threedifferent trophic levels) and biological control potential. Wemeasured eight landscape structure variables and 13components of agricultural intensification at farm and fieldlevel and disentangled their different effects on biodiversityloss. Moreover, we tested the hypothesis that both organicfarming and agri-environment schemes reduce the negativeeffects of intensive farming on biodiversity.
Material and methods
Study area
The nine areas studied were located in eight countries:Sweden, Estonia, Poland, the Netherlands, Germany
t species per sampling point (in 3 plots of 4m2), (B) the number
riods), (C) the number of ground-nesting bird species per farm
me of aphids (h). Trend lines were calculated using GLMM
field, farm and study area as nested random effects.
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(two areas: close to Gottingen, West-Germany and Jena,East-Germany, respectively), France, Spain and Ireland(see Appendix A, Fig. 1 for the locations of the ninestudy areas). Each area was between 30� 30 and50� 50 km2 in size to minimize differences in theregional species pools among farms within each area.In each area, 30 arable farms were selected along anintensification gradient using cereal yield as a proxy foragricultural intensification. The farms were selected sothat the previous year’s yield and landscape compositionwere uncorrelated within the study area in question.
Sampling protocol
On each farm, five points distributed over no morethan five arable fields were selected for sampling wildplants and carabids and estimating the biologicalcontrol potential. Most (80%) of the sampling pointswere in fields of winter wheat (the major cereal crop inmuch of Europe). The remainder was in winter barley(9%), spring wheat (5%), winter rye (5%) or triticale(o1%). To avoid field margin effects on observations,the sampling points were positioned 10m from thecentre of one side of the field. Whenever two samplingpoints were located in the same field, they were placed atopposite sides of the field. On each farm, one area of500� 500m2 was selected around one of the sampledfields, for the survey of breeding birds. All sampled fieldsfrom different farms were at least 1 km apart. Samplingwas performed during spring and summer 2007 and wassynchronized using the phenological stages of winterwheat in each study area as a time reference.
Wild plants
At each sampling point, vegetation relevees weremade once during the flowering to the milk-ripeningstage of winter wheat, using three plots of 2� 2m2. Theplots were placed 5m apart on a line parallel to the fieldborders. All species with at least the first two leaves(after the cotyledon) were recorded per plot. To avoidphenological effects of sampling, the sequence of farmsurveys was randomized over the intensification gradientwithin each study area.
Carabids
Carabids were caught with two pitfall traps persampling point, which were opened during two periodsof 7 days. The first sampling period occurred 1 weekafter the appearance of spikes of winter wheat(immediately after the biological control experiment,see below) and the second sampling period coincidedwith the milk-ripening stage of winter wheat. The twopitfall traps (90mm diameter, filled with 50% ethyleneglycol) were placed in the middle of the two outervegetation plots. The invertebrates caught were fixed in
the lab with 70% ethanol. We identified all the speciescaught in one trap randomly selected from each pair oftraps.
Birds
The bird surveys were conducted according to amodified version of the British Trust for Ornithology’sCommon Bird Census (Bibby, Burgess, & Hill, 1992),starting according to local information on thephenology of breeding birds. They were conductedthree times, at intervals of 3 weeks. Bird inventoryquadrats of 500� 500m2 were surveyed in such away that each spot within the quadrat was no morethan 100m from the surveyor’s route. The surveys tookplace between 1 h after dawn and noon, but only if itwas not windy, cloudy, or raining. Breeding birdterritories for ground-nesting farmland species weredetermined using the three survey rounds (Appendix A,Table 1). Three different criteria were used to definebreeding bird territories, depending on the species’detectability and breeding behaviour (Appendix A,Table 1).
Biological control potential
Biological control potential was estimated experimen-tally during the emergence of the first inflorescence ofwinter wheat (Ostman, 2004). The experiment lasted 2days and was repeated once within 8 days. In themorning of the first day, live pea aphids (Acyrthosiphon
pisum) of the third or fourth instar were glued to plasticlabels (three per label) by at least two of their legs andpart of their abdomen. Odourless superglue was used.At noon, the labels were placed in the three vegetationplots at three of the five sampling points per farm. Thelabels were bent over slightly, so the aphids were on thelower surface, protected from rain. Three labels wereplaced along the diagonal of each plot. Hence, at eachfarm there were 27 labels, with 81 aphids in total.Immediately after the aphids had been placed in thefield, the numbers of aphids present were recorded.Thereafter, the labels were checked four more timesduring 30 h: around 6 p.m. of the first day, at 8 a.m., 1p.m. and about 6 p.m. on the following day, the exacttime varying depending on the study area. After the lastcheck, the labels with the remaining aphids were takento the lab and checked under stereo microscopes tocheck whether remaining aphids could not have beenremoved by predators because they were covered withglue. The data used for the analyses was from one orboth of the rounds, depending on what was availablefrom each study area.
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Farmers’ questionnaire
Information about yields and farming practices(pesticide and fertilizer use, ploughing and mechanicalweed control regime) and farm layout (number of crops,percentage land covered by an agri-environmentscheme, field size) was collected by means of aquestionnaire sent out to all participating farmers. Theresponse was 98%.
Landscape structure
On the landscape scale, eight landscape structurevariables were estimated within circles around eachsampling point (with radii of 500 and 1000m) andadditionally four variables around each bird quadrat(used for the analysis of the bird data; only 500mradius): mean field size and its standard deviation, thepercentage of land planted with arable crops within thearea and the Shannon habitat diversity index. Thefollowing habitat classes were used to estimate thehabitat diversity (according to the definitions from theEuropean Topic Centre on Land Use and SpatialInformation (Buttner, Feranec, & Jaffrain, 2000):continuous urban fabrics, discontinuous urban fabrics,cultivated arable lands, fallow lands under rotationsystems, permanent crops, pastures, forests, transitionalwoodland-scrub and water.
Statistics
Generalized linear mixed models (GLMM) (Breslow& Clayton, 1993) were used to analyse the effects ofagricultural intensification on biodiversity and thebiological control potential in GenStat 11.1 (Payneet al., 2008). All explanatory variables were included asfixed effects. Because of the sampling structure of thedata, fields nested within farms, farms within study area,and study area, were included as random effects. Toidentify the distribution of the species diversity data(Appendix A, Table 5), the variance to mean relation-ship was explored at the lowest stratum. This revealedthat a Poisson distribution was appropriate for thenumbers of plant, carabid and bird species. The mediansurvival time of aphids was heavily skewed and wastherefore assumed to follow a lognormal distribution.
Heavily skewed explanatory variables were log-transformed and the percentage of land planted witharable crops was logit transformed (Appendix A,Table 4). All variables were standardized according to(x�m)/s, with x=measurement, m=mean and s=stan-dard deviation to enable comparison of the magnitudeof their effects.
To reduce the number of landscape variables, aprincipal component analysis (PCA) was done with
Canoco for Windows 4.5 (Ter Braak & Smilauer, 2002).This revealed two distinct groups of variables (seeAppendix A, Fig. 2): the first group was mean field sizeand its standard deviation, the second was the percen-tage of land planted with arable crops and the Shannonhabitat diversity index. Because it had the highestcorrelation with the plane defined by the two axes(longest PCA arrow), mean field size within a radius of500m was selected from the first group to be included inthe analyses. In the second group, the highest correla-tion with the plane was the percentage land planted witharable crops. We chose the variable with the same radiusas mean field size (selected from the first group), i.e.500m.
Only a few intensification variables showed highcorrelations between each other (Pearson correlationcoefficient 40.7; see Appendix A, Tables 6A and B).The number of insecticide applications correlated withthe amount of fungicides applied (r=0.75) and thenumber of fungicide applications (r=0.73) at the farmlevel only. Number of fungicide applications and theamount of fungicides applied were correlated both at thefarm level and at the sampling point level (r=0.87 and0.83, respectively), as were the amount of inorganicfertilizer applied and the amount of fungicides used (forboth, r=0.72). These correlations cannot be consideredproblematic under the present modelling approach(Brotons, Thuiller, Araujo, & Hirzel, 2004).
The mean values and standard deviations of allresponse and explanatory variables included in theanalyses are given in Appendix A, Table 7.
Three separate analyses were done using different setsof explanatory variables, but always including the twolandscape variables (mean field size and percentage landplanted with arable crops within 500m) as covariates.The first analysis included yield (as a summary variablefor agricultural intensification, see Tilman, Cassman,Matson, Naylor, & Polasky (2002)) and its interactionwith study area. The second analysis included 13components of agricultural intensification related tofarming practices: amounts of chemical N fertilizer,amounts of organic fertilizer, number of applications ofherbicides, insecticides and fungicides, applied amountsof the active ingredients of herbicides, insecticides andfungicides, number of crops per farm, field size,frequency of ploughing, frequency of mechanical weedcontrol and the percentage of arable land under agri-environment schemes (Appendix A, Table 4). Modelswere derived using forward and backward selection. Theforward selection started with an empty model (exceptfor the two landscape variables) and at each step thevariable with the most significant effect was included, onthe basis of the results of Wald tests (po0.05). Thisprocedure was reiterated until variables no longer addedsignificant effects to the model. The backward selectionstarted with a full model and at each step the most
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non-significant variable, i.e. the variable with the highestp-value, was removed. Forward, as well as backwardselection, resulted in identical models in all cases. In athird analysis, we investigated the single effects of farmtype (conventional or organic) and the percentage ofland under agri-environment schemes. Organic farmersdo not apply chemical fertilizers and use only a very
Fig. 2. Effects of cereal yield (ton/ha) on the number of wild plant sp
areas. Trend lines were calculated using GLMM including the two su
study area as nested random effects and are plotted, whenever the r
limited set of pesticides. Agri-environment schemesinclude commitments to lower fertilizer and pesticideapplications, while in some countries, margins or entirefields are excluded from fertilizer or pesticide applica-tions.
We emphasize that in the text the term ‘effect’ is usedfor statistical associations and relationships, and does
ecies per sampling point (in 3 plots of 4m2) in each of the study
rrounding landscape variables as covariates and field, farm and
elationship was significant (po0.05).
ARTICLE IN PRESS
Table 1. Effects of different components of agricultural intensification on the diversity of plants, carabids and birds and median
aphid survival time. The models selected after considering all 13 intensification variables using forward selection (backward selection
produced identical models) are presented. All models included the two landscape variables (mean field size and percentage of land
planted with arable crops within a radius of 500m, in italics), even if these had no significant effects (non-significant effects are not
shown). Intensification variables were only included if they had significant effects using the Wald test (po0.05). AES=agri-
environment scheme, amount of a.i.=amount of active ingredients.
Response variable Explanatory variable Standardized effect v21 p-value
Number of plant species Mean field size �0.094 6.09 0.014
% of land under AES 0.149 12.23 o0.001
Frequency of herbicide application �0.1061 8.88 0.003
Frequency of insecticide application �0.105 6.15 0.013
Applied amounts of a.i. of fungicides �0.262 31.45 o0.001
Number of carabid species % of land under AES 0.062 6.31 0.012
Applied amounts of a.i. of insecticides �0.061 10.87 0.001
Number of breeding bird species Frequency of fungicide application �0.127 5.71 0.017
Median survival time of aphids % of land under AES �0.144 9.43 0.002
Applied amounts of a.i. of insecticides 0.114 11.17 0.001
F. Geiger et al. / Basic and Applied Ecology 11 (2010) 97–105 103
not necessarily mean a causal relation between twovariables.
Data availability
For the second analysis (13 variables of farmingpractices as explanatory variables), sampling points withone or more missing variables were removed. Bird datawere not collected in France. There were no data onaphid survival time for Spain and France.
Results
We first investigated the relationship between cerealyield, a variable closely related to many differentintensification measures (Donald et al., 2001; Tilmanet al., 2002), and wild plant, carabid and breeding birdspecies diversity (Appendix A, Table 1) on arable fields.We found strong negative relationships between cerealyields and the species diversity of wild plants, carabidsand ground-nesting farmland birds (Wald tests:w21=141.42, po0.001; w21=23.33, po0.001; w21=7.33,p=0.007; Appendix A, Table 2). On average, in thesampled area, an increase in cereal yield from 4 to 8 ton/ha results in the loss of five of the nine plant species, twoof the seven carabid species and one of the three birdspecies (Fig. 1A–C).
Crop yield correlated positively with median aphidsurvival time (w21=6.85; p=0.009), suggesting a negativeeffect on the biological control potential (Fig. 1D).
The effects of wheat yield on wild plant and carabidspecies diversity and aphid survival time differed amongstudy areas (yield� study area interaction: w28=36.87,po0.001; w28=24.35, p=0.002; w26=17.84, p=0.007,respectively). Comparison of the yield effects amongstudy areas revealed that in some countries, yield hadnegative effects on these variables, but in other countriesthere was no relationship (Fig. 2; Appendix A, Table 3).In two of the three study areas where we found norelationship, the variation in yield among fields andfarms was much smaller than in the other countries,which probably explains the lack of significant effects.There were no consistent differences between West andEast European countries.
As a second step, we investigated the relativeimportance of 13 variables we considered as relevantcomponents of agricultural intensification (Appendix A,Table 4). The characteristics of the surrounding land-scape had significant effects on wild plant speciesdiversity only (Table 1). The number of plant specieswas inversely related to average size of fields within aradius of 500m, emphasizing the importance of fieldmargins for the establishment of wild plant species onarable land. The number of wild plant species declinedas the frequency of herbicide and insecticide applicationand the amounts of active ingredients of fungicidesincreased (Table 1). The number of carabid species wasnegatively affected by the amounts of active ingredientsof insecticide applied. Bird species diversity declinedwith increasing frequency of fungicide application, avariable closely correlated with the frequency ofinsecticide application (Pearson’s correlation coefficientr=0.732; po0.001). The predation on aphids declined
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as the applied amounts of insecticides increased(Table 1).
Thirdly, we examined the effects of organic farmingand the implementation of agri-environment schemes onbiodiversity and the biological control potential. Or-ganic farms comprised 22% of the total number ofselected farms in our study and occurred in five of thenine study areas. These farms harboured more wildplant and carabid species (single effects of farm type:w21=164.96, po0.001; w21=3.98, p=0.046, respectively;Appendix A, Table 2), but not significantly more birdspecies (w21=1.31, p=0.252). Aphid survival was notsignificantly lower on organic farms as compared withconventional farms (w21=2.93, p=0.087). 45% of theselected farms had agri-environment schemes. Theseschemes had positive effects on the number of wild plantand carabid species and the predation of aphids (singleeffects of percentage of land with agri-environmentscheme: w21=51.97, po0.001; w21=6.91, p=0.009;w21=13.24, po0.001, respectively; Appendix A, Table 2),but not on bird species diversity (w21=1.56, p=0.211).
Discussion
We studied the effects of agricultural intensificationon biodiversity across three trophic levels and thepotential for biological pest control in eight Europeancountries. Out of the 13 studied components ofagricultural intensification, use of pesticides, especiallyinsecticides and fungicides, had the most consistentnegative effects on the species diversity of plants,carabids and ground-nesting farmland birds, and onthe potential for biological pest control. We concludethat despite several decades of implementing a Europe-wide policy intended to considerably reduce the amountof chemicals applied on arable land, pesticides are stillhaving disastrous consequences for wild plant andanimal species on European farmland. Importantly, thisimpact is also manifested as a reduction of the potentialof natural enemies to control pest organisms.
It is noteworthy that both organic farms, which applyonly those pesticides considered harmless to the environ-ment, and agri-environment schemes had positive effectson plant and carabid diversity, but did not show theexpected positive effects on bird species diversity. Apossible explanation for the lack of such positive effectsis the large spatial scale of the pollution associated withpesticide use across Europe, which inevitably leads tonegative effects of pesticides – even in areas where theapplication of these substances has been reduced orterminated. Such large-scale effects will be especiallyrelevant for taxa that utilize large areas, such as birds,mammals, butterflies (Rundlof, Bengtsson, & Smith, 2008)
and bees (Clough et al., 2007; Holzschuh, Steffan-Dewenter, & Tscharntke, 2008).
We conclude that if biodiversity is to be restored inEurope and opportunities are to be created for cropproduction utilizing biodiversity-based ecosystemservices such as biological pest control, a Europe-wideshift towards farming with minimal use of pesticidesover large areas is urgently needed.
Acknowledgements
We thank the European Science Foundation and theconnected national science foundations (Polish Ministryof Science and Higher Education, Spanish Ministry ofScience and Education, Estonian Scientific Foundation,Irish Research Council for Science, German FederalMinistry of Education and Science BMBF, GermanResearch Foundation, Netherlands Organization forScientific Research, Swedish Research Council, CentreNational de la Recherche Scientifique, DepartementEcologie et Developpement Durable) for funding thepresented study through the EuroDiversity AgriPopesprogramme.
Author contributions
F.G., C.W., L.W.C., C.D., C.P., I.G., M.B.M., P.C.,V.H., O.A., J.R., T.A., J.L., A.F., S.H., C.F., V.B. andM.P. collected the field data on plant, carabid and birddiversity and aphid survival; J.B., F.B., P.I., W.W.W.,M.E., M.B.M., P.C., P.K., J.L., T.T., S.E., R.B., T.P.,J.J.O. and C.T. designed the study and developed theprotocol for data collection; P.W.G., F.B., J.B., F.G.,P.I., W.W.W., M.E., R.B. and J.L. performed theanalysis of the data sets; F.B., F.G., J.B. and P.I. wrotethe manuscript. All authors discussed the results andcommented on the manuscript.
Appendix A. Supplementary material
Supplementary data associated with this article can befound in the online version at doi:10.1016/j.baae.2009.12.001.
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1
Table 1. List of farmland bird species (species nesting on the ground of arable fields,
pastures or field margins) and the corresponding requirements for assigning breeding
territories. Categories: A: at least two observations of birds displaying territorial behaviour
(foraging, calling, singing, conflicts indicating territory defence) at the same spot during
different survey rounds; B: one observation of territorial behaviour (species unlikely to be
present during all the three survey visits, for example because of long-distance migration,
or species considered difficult to observe); C: direct evidence of breeding activities.
2
English name Scientific name breeding category
Black-tailed Godwit Limosa limosa A
Corn Bunting Miliaria calandra A
Corncrake Crex crex B
Crested Lark Galerida cristata A
Curlew Numenius arquata B
Fan-tailed Warbler Cisticola juncidis A
Great Bustard Otis tarda B
Lapwing Vanellus vanellus A
Little Bustard Tetrax tetrax B
Mallard Anas platyrhynchos C
Montagu's Harrier Circus pygargus C
Meadow Pipit Anthus pratensis A
Marsh Harrier Circus aeruginosus C
Marsh Warbler Acrocephalus palustris B
Ortolan Bunting Emberiza hortulana B
Oystercatcher Haematopus ostralegus A
Grey Partridge Perdix perdix B
Pheasant Phasianus colchicus A
Quail Coturnix coturnix B
Red-legged Partridge Alectoris rufa B
Short-toed Lark Calandrella brachydactyla A
Stonechat Saxicola torquata A
Snipe Gallinago gallinago A
Tawny Pipit Anthus campestris B
Wheatear Oenanthe oenanthe A
Whinchat Saxicola rubetra A
Woodlark Lullula arborea A
Yellowhammer Emberiza citrinella A
Yellow Wagtail Motacilla flava A
3
Table 2. Results of the Generalized linear mixed models that we applied for the different
response variables: a) relationship with yield and its interaction with country; b) selected
models after forward selection considering 13 intensification variables (amount of a.i. =
amount of active ingredients); c) single effects of farm type and percentage agri-
environment schemes; d) relationships between biodiversity variables and the biodiversity
at the lower trophic level and between aphid survival and diversity and density of carabids
as possible predators (single effects). All analyses included the two surrounding landscape
variables (mean field size and percentage of land planted with arable crops); they are only
included in this table if the effect was significant. Note, that percentage agri-environment
scheme is included as part of the selected model in b) and as single effect in c).
4
response variable explanatory variable standardized effect χ2 p-value
number of plant species a yield -0.362 141.42 <0.001
yield*country 36.87 <0.001
b mean field size -0.094 6.09 0.014
% of land under AES 0.149 12.23 <0.001
herbicide applications -0.106 8.88 0.003
insecticide applications -0.105 6.15 0.013
fungicides (amounts a.i.) -0.262 31.45 <0.001
c farm type 0.403 164.96 <0.001
% of land under AES 0.326 51.97 <0.001
number of carabid species a yield -0.096 23.33 <0.001
yield*country 24.35 0.002
b % of land under AES 0.062 6.31 0.012
insecticides (amounts a.i.) -0.061 10.87 0.001
c farm type 0.040 3.98 0.046
% of land under AES 0.066 6.91 0.009
d number of plant species 0.010 15.45 <0.001
number of breeding bird species a yield -0.129 7.33 0.007
yield*country 7.46 0.383
b fungicide applications -0.127 5.71 0.017
c farm type 0.050 1.31 0.252
% of land under AES 0.067 1.56 0.211
d number of carabid species 0.036 5.05 0.025
number of carabid individuals 0.095 3.48 0.062
number of plant species 0.025 11.25 0.001
median survival time aphids a yield 0.108 6.85 0.009
yield*country 17.84 0.007
b % of land under AES -0.144 9.43 0.002
insecticides (amounts a.i.) 0.114 11.17 0.001
c farm type -0.156 2.93 0.087
% of land under AES -0.177 13.24 <0.001
d number of carabid species -0.020 6.20 0.013
number of carabid individuals 0.000 0.03 0.874
5
Table 3. Differences between study areas of the effects of yield on wild plant species
diversity, carabid species diversity and the median survival time of aphids. Estimates of the
effects of yield on the number of plant and carabid species and the survival time of aphids
are given for each study area. Different letters denote significant differences between
countries. 1 and 2 are the two different study areas in Germany: Göttingen and Jena,
respectively.
number of plant species
number of carabid species
median survival time aphids
estimate estimate estimate
Estonia -0.450 a b -0.105 a b 0.446 c
France -0.261 b c 0.106 b
Germany1 -0.511 a b -0.235 a 0.212 b c
Germany2 -0.532 a b -0.091 a b 0.052 a b
Ireland -0.129 c -0.046 b 0.200 a b c
Netherlands -0.583 a -0.023 b -0.091 a
Poland -0.299 b c -0.248 a -0.024 a b
Spain -0.180 c -0.054 b
Sweden -0.132 c -0.001 b 0.106 a b
6
Table 4. List of explanatory variables included in the analyses: explanatory variables,
variable description, units and sampling level (landscape, farm or field);
1 variables were log-transformed
2 percentage of land planted with arable crops was logit transformed, i.e. log{(percentage
arable crops + 5) / (105 - percentage arable crops)}
explanatory variable description unit sampling level
farm type conventional or organic farm
yield
standardized according to 14% moisture
content of the grains tons ha-1 field
number of crops number of crops cultivated in 2007 farm-1 farm
agri-environment scheme % area of farm with agri-environment
scheme % farm
field size1 size of sampled field ha field
pesticides (herbicides,
insecticides, fungicides) number of applications y-1 field
pesticides (herbicides,
insecticides, fungicides1) total amount of active ingredients kg ha-1 y-1 field
inorganic N fertilizer total amount of inorganic nitrogen fertilizer kg N ha-1 y-1 field
organic fertilizer total amount of organic fertilizer kg ha-1 y-1 field
ploughing ploughing (yes or no) field
farm
layo
ut a
nd
farm
ing
pra
ctic
es
mechanical weed control frequency mechanical weed control y-1 field
mean field size1 mean field size within 500m radius of
sampling points ha landscape
lan
dsc
ap
e
percentage arable crops2 % arable crop within 500m radius of
sampling points % landscape
7
Table 5. List of response variables included in the analyses: response variable, variable
description, sampling level (farm or sampling point) and distribution of the variables.
response variable description sampling level data distribution
number of plant species total number in the 3 plots sampling point Poisson
number of carabid species total number collected during 2
rounds
sampling point Poisson
number of breeding bird species only ground-nesting farmland
species
farm Poisson
median survival time of aphids time elapsed until half the aphids
had been removed
sampling point log-normal
8
Table 6 A, B. Correlation matrix (Pearson correlation coefficients) including all
intensification and landscape variables at sampling point level (A) and farm/bird plot level
(B): farm type, no. crops (number of crops) % AES (percentage land of a farm under an
agri-environment scheme), field size, herb appl (number of herbicide applications), herb ai
(amounts of active ingredients of herbicides), insect appl (number of insecticide
applications), insect ai (amounts of active ingredients of insecticides), fung appl (number of
fungicide applications), fung ai (amounts of active ingredients of fungicides), inorg fert
(amount of inorganic N fertilizer), org fert (amount of organic fertilizer), plough
(ploughing), weed control (frequency of mechanical weed control), field size 500
(landscape structure variable: mean field size within radius 500m), % arable crop 500
(landscape structure variable: percentage land under arable crops within radius 500m).
Pearson correlation coefficients higher than 0.7 are in grey (average n = 1398 for table A
and n = 251 for table B).
1 variables were log transformed
2 variable was logit transformed
9
Table 6A
farm
typ
e
yiel
d
no
. cro
ps
% A
ES
field
siz
e1
her
b a
ppl
her
b a
i
inse
ct a
ppl
inse
ct a
i
fung
app
l
fung
ai1
inor
g fe
rt
org
fert
plo
ugh
we
ed c
on
tro
l
field
siz
e 5
001
% a
rab
le c
rop
50
02
farm type 1.00
yield -0.52 1.00
no. crops 0.18 -0.03 1.00
% AES 0.46 -0.40 0.19 1.00
field size1 -0.03 0.12 0.13 0.18 1.00
herb appl -0.55 0.48 0.02 -0.27 0.15 1.00
herb ai -0.40 0.27 0.04 -0.13 0.07 0.51 1.00
insect appl -0.31 0.53 0.06 -0.18 0.10 0.38 0.29 1.00
insect ai -0.20 0.28 0.09 -0.02 0.13 0.08 0.22 0.60 1.00
fung appl -0.40 0.59 0.04 -0.23 0.15 0.54 0.35 0.69 0.46 1.00
fung ai1 -0.52 0.59 0.13 -0.24 0.13 0.53 0.41 0.66 0.44 0.83 1.00
inorg fert -0.69 0.66 0.01 -0.40 0.13 0.53 0.35 0.51 0.25 0.61 0.72 1.00
org fert 0.30 -0.07 0.11 0.03 0.05 -0.13 -0.10 -0.09 -0.11 -0.13 -0.10 -0.26 1.00
plough 0.19 -0.11 0.10 -0.09 -0.21 -0.14 0.10 0.01 0.12 0.01 0.05 -0.08 0.10 1.00
weed control 0.29 -0.39 -0.18 -0.01 -0.09 -0.36 -0.16 -0.29 -0.15 -0.38 -0.47 -0.44 0.12 -0.11 1.00
field size 5001 0.23 0.00 0.33 0.21 0.57 0.05 -0.02 -0.10 -0.02 -0.05 0.03 -0.03 0.23 -0.11 -0.06 1.00
% arable crop 5002 -0.01 0.00 0.26 -0.12 0.17 0.15 0.06 -0.11 -0.07 -0.06 0.03 -0.01 0.08 -0.01 -0.06 0.36 1.00
10
Table 6B
farm
type
yiel
d
no
. cro
ps
% A
ES
field
siz
e1
her
b a
ppl
her
b a
i
inse
ct a
ppl
inse
ct a
i
fun
g a
pp
l
fun
g a
i1
inor
g fe
rt
org
fert
plo
ugh
wee
d c
on
tro
l
field
siz
e 5
001
% a
rab
le c
rop
5002
farm type 1.00
yield -0.52 1.00
no. crops 0.19 -0.05 1.00
% AES 0.46 -0.45 0.20 1.00
field size1 -0.10 0.12 0.14 0.15 1.00
herb appl -0.60 0.48 0.02 -0.32 0.18 1.00
herb ai -0.45 0.28 0.04 -0.17 0.07 0.53 1.00
insect appl -0.35 0.55 0.07 -0.23 0.11 0.39 0.34 1.00
insect ai -0.24 0.29 0.10 -0.05 0.16 0.09 0.27 0.61 1.00
fung appl -0.43 0.59 0.04 -0.25 0.19 0.56 0.38 0.73 0.50 1.00
fung ai1 -0.51 0.59 0.14 -0.21 0.23 0.58 0.48 0.75 0.53 0.87 1.00
inorg fert -0.70 0.70 -0.01 -0.39 0.23 0.60 0.42 0.58 0.31 0.66 0.72 1.00
org fert 0.34 -0.08 0.11 0.06 0.00 -0.17 -0.12 -0.12 -0.15 -0.15 -0.11 -0.28 1.00
plough 0.22 -0.09 0.15 -0.02 -0.19 -0.13 0.10 0.00 0.15 -0.03 -0.03 -0.15 0.13 1.00
weed control 0.25 -0.41 -0.18 -0.04 -0.14 -0.39 -0.18 -0.33 -0.19 -0.40 -0.45 -0.42 0.08 -0.07 1.00
field size 5001 0.22 0.00 0.37 0.21 0.66 0.06 -0.03 -0.06 -0.01 -0.02 0.09 0.01 0.22 -0.07 -0.12 1.00
% arable crop 5002 0.00 -0.03 0.33 -0.06 0.26 0.14 0.03 -0.18 -0.10 -0.09 -0.01 -0.03 0.04 -0.08 -0.04 0.46 1.00
11
Table 7. Mean values and standard deviations (stdev) of all explanatory and all response
variables are given at the sampling point and at the farm level, i.e. the data used for the bird
analyses. Amount a.i. = amounts of active ingredients.
1 percentage conventional farms
2 percentage farms with a ploughing regime
farm sampling point
mean (stdev) mean (stdev)
farm type 77.51
yield [kg ha-1] 5401.8 (1929.1) 5398.9 (1878.9)
number of crops [farm-1] 5.0 (2.6) 5.0 (2.5)
agri-environment scheme [%] 26.9 (40.5) 23.9 (39.0)
field size [ha] 11.2 (12.1) 10.5 (13.4)
herbicide applications [y-1] 1.3 (1.1) 1.2 (1.1)
insecticide applications [y-1] 0.5 (0.8) 0.5 (0.8)
fungicide applications [y-1] 1.1 (1.4) 1.1 (1.3)
herbicides amount a.i. [kg ha-1 y-1] 0.8 (0.9) 0.7 (0.9)
insecticides amount a.i. [kg ha-1 y-1] 0.1 (0.1) 0.0 (0.1)
fungicides amount a.i. [kg ha-1 y-1] 0.5 (0.6) 0.5 (0.6)
inorganic N fertilizer [kg ha-1 y-1] 103.1 (79.2) 110.1 (78.5)
organic fertilizer [kg ha-1 y-1] 3585.5 (9332.2) 3076.1 (9110.6)
ploughing 75.32
farm
layo
ut a
nd
farm
ing
pra
ctic
es
mechanical weed control [y-1] 0.8 (1.4) 0.7 (1.3)
mean field size [ha] 17.1 (18.9) 14.1 (19.1)
lan
dsc
ape
percentage arable crops [%] 76.1 (18.9) 74.2 (19.4)
number of plant species 8.7 (6.3)
number of carabid species 6.8 (3.9)
number of breeding bird species 3.1 (2.0)
resp
on
se
vari
able
s
median survival time of aphids [h] 12.4 (7.2)
12
Fig. 1. Map of the study areas: The locations of the study areas are indicated by black dots:
Sweden, Estonia, Ireland, Netherlands, Germany (Göttingen), Germany (Jena), Poland,
France and Spain.
Fig. 2. Scatterplot of the principal component analysis (PCA) showing the 8 landscape
variables estimated around the sampling points within circles with radius 500 and 1000m:
Shannon habitat diversity (hab div), mean field size (mfs), standard deviation of mean field
size (stdev mfs), percentage of land planted with arable crops (% crops). Mean field size
(radius 500m) and percentage of land planted with arable crops had the highest correlation
with the plane defined by the two axes (longest PCA arrow).