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First published online January 9, 2009; 10.1104/pp.108.130799 Plant Physiology 149:1408-1423 (2009) © 2009 American Society of Plant Biologists OPEN ACCESS ARTICLE
Molecular Interactions between the Specialist Herbivore Manduca sexta (Lepidoptera, Sphigidae) and Its Natural Host Nicotiana attenuata. VIII. An Unbiased GCxGC-ToFMS Analysis of the Plant's Elicited Volatile Emissions[W],[OA]Department of Molecular Ecology, Max-Planck-Institute for Chemical Ecology, Jena 07745, Germany
Treating wounds in Nicotiana attenuata leaves with Manduca sexta oral secretions (W+OS) mimics most changes elicited by M. sexta herbivory, but an unbiased analysis of the effect of the different OS constituents on volatile emissions is lacking. We used two-dimensional gas chromatography/time-of-flight (GCxGC-ToF) mass spectrometry combined with multivariate statistics to parse volatiles into regulatory patterns. Volatiles released by wounding alone and by the alkalinity of OS were assessed by applying a buffer known to mimic the pH-mediated changes of OS elicitation (pectin methyl esterase activation and methanol release). The activities of fatty acid amino acid conjugates, well-known elicitors of antiherbivore defenses, and of 2-hydroxyoctadecatrienoic acid, a newly discovered signal in OS, were determined. Approximately 400 analytes were detected after deconvolution and alignment of GCxGC data; 35 volatiles were significantly regulated upon W+OS. Two-thirds of these were specifically regulated by OS, being either amplified (most terpenoids and certain hexenylesters) or strongly repressed (many short-chain alcohols and some aromatic and hexenylester derivatives). Fatty acid amino acid conjugates played a central role in this pattern of regulation, since they induced the emission of half of OS-elicited volatiles and inhibited the production of almost all OS-repressed volatiles; 2-hydroxyoctadecatrienoic acid influenced emission of trans- -bergamotene, while other unknown OS constituents amplified hexenylester production. We conclude that the complex bouquet of herbivory-elicited volatiles results from the complex modulations of the wound response by diverse cues found in OS. This work also underscores the value of ultra-high-resolution GCxGC-ToF analysis combined with the nontargeted mining of the resulting data.
Plants employ a complex arsenal of defense mechanisms to protect themselves from insect herbivores. In addition to constitutive defenses such as trichomes or thick secondary walls, plants also use induced defenses, which are deployed specifically when herbivores start to chew on a leaf (Karban and Baldwin, 1997
An intensively studied example of an inducible indirect defense is the production and emission of volatile organic compounds (VOCs) by plants attacked by insects (for review, see Turlings and Wäckers, 2004
Despite their common feature of being volatile at ambient temperatures, these major players of plant signaling are chemically highly diverse (Holopainen, 2004
Fatty acid amino acid conjugates (FACs), produced in the insect gut by conjugation of host-derived FAs to amino acids (Spiteller et al., 2000
Notably, FACs are not always active: in lima bean and cowpea (Vigna unguiculata), for instance, FAC treatment of wounds does not elicit VOCs (Spiteller et al., 2001 Given the rapid advances in characterizing the active elicitors of M. sexta OS, a full unbiased analysis of N. attenuata's HIPV blend, an analysis that has not been conducted for any plant, is overdue. To examine the extent to which FACs, 2-HOT, and alkalinity contribute to the OS-elicited HIPV bouquet, we used comprehensive two-dimensional gas chromatography/time-of-flight mass spectrometry (GCxGC-ToFMS) in combination with multivariate statistics. This nontargeted approach was applied to a suite of elicitation treatments in which the amount of mechanical wounding was held constant.
A Stepwise Preprocessing of Volatile Blends
OS collected from M. sexta caterpillars fed on wild-type N. attenuata plants was purified by ion-exchange chromatography (IEX) to remove, among others, FACs and 2-HOT (IOS; Fig. 1A). This latter extract, as well as solutions of synthetic FACs and 2-HOT at concentrations that mimicked those found in OS (Halitschke et al., 2001
Unbiased comparative analyses require exceptionally high resolution given the high structural diversity of HIPV constituents (Holopainen, 2004
Inconsistencies in the size of the peak tables rendered it difficult to place the information into a suitable matrix format in which rows represented an individual peak, columns represented an individual sample, and the values are peak intensities obtained by integration of deconvoluted peaks. As discussed previously by Shellie et al. (2005)
In order to evaluate the performance and value of data deconvolution and pretreatment for statistical analysis, we compared chromatographic peak areas in W+OS and control (CTRL) samples. The intensity and statistical significance of the changes elicited after W+OS were examined using Volcano plots, a procedure commonly used to assess the quality of microarray data sets (Cui and Churchill, 2003 A total of 61 peaks were significantly more intense in chromatograms obtained from leaves induced by W+OS than from untreated leaves during the first trapping period. Concomitantly, no plant volatiles were significantly decreased (Fig. 3A ). The number of significantly regulated peaks decreased to 23 and finally to 17 in the two next data points, which underscores that W+OS treatment elicited rapidly waxing and waning changes in VOC releases. Prior to being "blasted" against libraries, lists of significantly regulated analytes were checked for false positives potentially created during peak detection and alignment. We estimated the false discovery rate to be 7% of the total of differentially regulated peaks. These errors, which were mainly produced during the alignment of peak matrices, were manually corrected, and contaminants remaining from the preprocessing were removed. Finally, significantly emitted plant-derived compounds were identified from comparison with standards, based on their mass spectral and retention index homologies shared with entries from the NIST and homemade VOC libraries or reports from the literature, or they were putatively assigned to VOC classes (Supplemental Table S1).
We called the subset of volatiles highlighted by this type of comparison the W+OS response. The W+OS response collected at 1 to 13 h after treatment included the up-regulation of the 20 volatiles (Fig. 3B; Supplemental Table S1, column A). Hexenylesters were the most significantly up-regulated (e.g. ANOVA, W+OS versus CTRL, cis-3-hexenylpropionate, P = 0.001; cis-3-hexenylisobutyrate, P = 0.002; hexylisobutyrate, P = 0.002) and represented half of the total up-regulated metabolites. Terpenoid (e.g. β-pinene, P = 0.002) and aromatic (e.g. unknown @ RT [822; 2.81], P = 0.007) derivatives constituted the second largest groups. Fewer metabolites (by a factor of more than two) were induced at 13 to 25 h after elicitation. Most of them, like cis-3-hexenylpropionate (P = 0.001) and cis-3-hexenyl,trans-2-butenoic ester (P = 0.011), were already significantly up-regulated during the first trapping period (Supplemental Table S1, column A). But only the emission of cis-3-hexenylisobutyrate was significantly sustained throughout the 36 h of trapping (13–25 h, P = 0.030; 25–37 h, P = 0.009). The W+OS response collected at 25 to 37 h after treatment (eight significantly up-regulated metabolites) was dominated by terpenoid derivatives such as the sesquiterpene trans- -bergamotene (P = 0.002) and other sesquiterpenes that remain to be identified (unknown @ RT [714; 2.71], P = 0.041; unknown @ RT [1,176; 3.27], P = 0.012).
To explore the extent to which the introduction of OS to wounds specifically regulated volatile emission, we compared the total changes elicited after W+OS with those detected after W+B (Fig. 4A ). We called the ensemble of volatiles found differentially regulated in such comparisons the OS response (Supplemental Table S1, column C). More precisely, up-regulated volatiles were interpreted as being amplified by OS application, while down-regulated volatiles were considered repressed by this treatment. Similarly, volatile substances regulated by the wound and/or the alkalinity of OS were identified by statistically comparing W+B and CTRL blends (Supplemental Table S1, column B).
During the first period of the experiment, the emission of 12 volatiles (58% of the W+OS response; Fig. 4B; Supplemental Table S1, column A): one acid (pentanoic acid, 3-methyl-, ANOVA W+OS versus W+B, P = 0.043), one aldehyde (octanal, P = 0.012), one aromatic (unknown @ RT [954; 4.13], P = 0.012), five hexenylesters (cis-3-hexenylpropionate, P = 0.005; cis-3-hexenyl,trans-2-butenoic ester, P = 0.023; cis-3-hexenyl-3-methylbutyrate, P = 0.012; cis-3-hexenyltigilate, P = 0.038; and cis-3-hexenyl-methylpentanoate, P = 0.033), and four terpenoids (β-pinene, P = 0.026; unknowns @ RT [714; 2.71], P = 0.045; @ RT [720; 2.34], P = 0.034; and @ RT [1,176; 3.27], P = 0.039) was amplified by OS factors. By contrast, we observed that the emission of certain wound-inducible hexenylesters, such as cis-3-hexenylacetate (ANOVA W+B versus CTRL, P = 0.034), cis-3-hexenylbutyrate (P = 0.042), and cis-3-hexenyl-2-methylbutyrate (P = 0.048), was not significantly altered by the OS treatment. In samples collected at sampling times 2 and 3, the OS response accounted for 14% (one of seven: unknown @ RT [1,176; 3.27], P = 0.034) and 50% (four of eight: cis-3-hexenylisobutyrate, P = 0.012; unknown @ RT [714; 2.71], P = 0.032; unknown @ RT [1,176; 3.27], P = 0.003; and trans- -bergamotene, P = 0.005) of the up-regulated volatiles from the W+OS response. We interpreted this as evidence that a large proportion of the emission of wound-inducible volatiles was amplified by factors contained in M. sexta's OS. On the other hand, we also observed that OS factors specifically repressed the emission of certain wound-induced volatiles. This latter trend was clearly apparent for alcohol derivatives (2-pentanol,4-methyl, ANOVA W+OS versus W+B, P = 0.008; 2-pentanol,3-methyl, P = 0.017; cis-3-hexenol, P = 0.004; and 1-hexanol, P = 0.027) and one unidentified terpenoid @ RT (1,476; 2.88) (P = 0.027) collected between 1 and 13 h after elicitation (Supplemental Table S1, columns B and C). Certain volatiles collected at later times also exhibited such a trend (e.g. terpineol, P = 0.027 between 13 and 25 h; limonene, P = 0.001 between 25 and 37 h).
To determine the extent to which FACs, 2-HOT, or other OS components not removed by IEX could account for the OS response, we examined peak matrices for FAC-responsive (Supplemental Table S1, column E), 2-HOT-responsive (column F), and IOS-responsive (column D) volatiles. Following the same logic, we defined these responses as the subsets of volatiles being differentially emitted in W+FAC-, W+2-HOT-, or W+IOS-treated samples when compared with W+B-treated samples. During the first trapping period, the FAC response accounted for 75% (three of four) of the amplified terpenoid emissions detected after OS was supplied to wounds (Supplemental Table S1, column E): unknown @ RT (714; 2.71), ANOVA, W+FACs versus W+B, P = 0.037; unknown @ RT (720; 2.34), P = 0.044; and unknown @ RT (1,176; 3.27), P = 0.032. Surprisingly, none of the OS-induced hexenylesters was significantly up-regulated after FAC application. Similar distinctions in the regulation of these two classes of volatiles were observed for the two next sampling times. Remarkably, FAC treatments inhibited the production of 2-pentanol,4-methyl (P = 0.013), 2-pentanol,3-methyl (P = 0.021), cis-3-hexenol (P = 0.016), and 1-hexanol (P = 0.020) in the same range of statistical significance as had been observed after application of OS. FAC signaling also accounted for the decreases, compared with wounded leaves, in the release of benzothiazole (P = 0.047) and terpineol (P = 0.004) at 13 to 25 h after treatment. As expected, removing FACs from OS by IEX abolished most of the FAC-mediated amplification and inhibitory patterns detected above (Supplemental Table S1, column D). Only two volatile substances, cis-3-hexenylbutyrate (P = 0.047) and trans-
The above analysis was conducted by comparing one volatile at a time. Although this univariate procedure reveals interesting patterns, it does not provide insights into the relationships among classes of treatments. Numerous multivariate procedures exist, and of these, hierarchical clustering analyses (HCA) and principal component analyses (PCA) are the most commonly used procedures in transcriptomic, proteomic, and metabolomic analyses of plant samples. Prior to performing such analyses, a filtering procedure is usually required to emphasize information linked to group separation. Thus, as recommended by Boccard et al. (2007) To determine if these prefiltered variables were sufficient to discriminate classes of treatments, we performed HCA. Filtered data were autoscaled, and HCA was performed using the Euclidean distance as a clustering metric and the complete linkage aggregation method. For each of the three data points, preselected variables with equivalent abilities to classify samples were used to group treatments during HCA. Control samples collected 1 to 13 h after treatment were, as expected, clearly separated by the first branch of the dendogram (W response, Fig. 5 ). The second branch subdivided profiles collected from W+OS-elicited samples from the other samples (OS response). The first branch of the dendogram obtained from the clustering of samples collected 13 to 25 h after the start of the experiment separated OS- and FAC-treated samples from those untreated or elicited with FAC-free solutions (OS and FAC responses). For the last sampling time, 2-HOT-treated samples clustered with OS and FAC-elicited samples (OS and FAC and 2-HOT responses).
PCA Identified Multiple Regulatory Patterns of Volatile Production PCA was used as an unsupervised method to produce interpretable projections of samples in a reduced dimensionality (score plots) and to highlight biomarkers responsible for group separation (loading plots). Prior to performing these analyses, different types of transformations were applied to correct for a nonconstant signal variance. Since for analytical chemical measurements the total uncertainty is often proportional to the expected value of the signal, a logarithmic transformation is often appropriate. Therefore, we log2 transformed and mean-center normalized the values. The two first principal components (PCs) extracted accounted for approximately 60% of the total variance existing in the three sample populations (Supplemental Fig. S1). In addition, as expected from the HCA analyses, CTRL and W+OS samples were the treatments best separated by these two PCs. Examining other PCs that accounted for lower amounts of variance, we were unable to obtain the additional power needed to discriminate among treatments. To address this problem, we performed two new series of PCA per data point after dividing the data sets into two subparts. The first category of PCA aimed at classifying CTRL, W+B, and W+OS samples (Fig. 6 ). The two first PCs extracted using those samples as inputs captured approximately 45% to 60% of the total variance (Fig. 6A) and segregated samples according to two biological responses. The first one represented the W response and the second was associated with the OS response, as described previously. In accordance with HCA results, group separation was less efficient for volatile profiles collected in the dark phase of the experiment (13–25 h). To simplify the interpretation, metabolites contributing to these projections were categorized as follows (Figs. 6B and 8 [below]; Table I ). OS-responsive volatiles, high-ranking loadings on PC1, were divided into those up-regulated (type I, W induced and OS amplified; 28 volatiles) and those down-regulated (type II, W induced and OS repressed; 11 volatiles). We classified as type III, high-ranking loadings on PC2, metabolites being W inducible but not OS responsive (seven volatiles). Globally, the clustering of the volatiles identified with this procedure was largely commensurate with that detected from the univariate statistical comparisons.
The contributions of B, IOS, 2-HOT, and FACs to the OS response were analyzed in a second series of PCA (Fig. 7 ). The two first PCs extracted using W+B, W+IOS, W+2-HOT, W+FAC, and W+OS samples as inputs explained approximately 35% to 40% of the total variance (Fig. 6A). Even though none of the OS factors tested could completely restore the OS response, FAC-treated samples were the ones that most closely mimicked OS-elicited samples. As already revealed by HCA, this observation was more pronounced for samples collected at later times during the experiment. In addition, samples treated with IOS, which is free of FACs, were clearly separated from OS-treated samples. An efficient segregation of W+B- and W+2-HOT-treated samples was apparent only 25 to 37 h after elicitation. Following the same logic as presented above, we discovered that three main biological patterns structured those projections (Figs. 7B and 8 ; Table I). Type I.a volatiles, high-ranked loadings on PC1 and PC2, were amplified by OS through the action of FACs (13 volatiles; W induced and OS and FAC amplified). Terpenoid metabolites were the predominant volatiles regulated in this manner (Table I). Surprisingly, we also detected that the application of 2-HOT amplified the production of trans- -bergamotene (W+2-HOT versus W+B; ANOVA, 13–25 h, P = 0.039; 25–37 h, P = 0.007; Supplemental Table S1, column F; Fig. 7B; Supplemental Fig. S2), a well-known FAC-regulated sesquiterpene (Halitschke et al., 2001
We present here a conceptual approach for the untargeted comparative processing via GCxGC-ToFMS of volatile bouquets emitted after insect herbivory. When combined with univariate and multivariate statistics, this approach (1) identifies wound-dependent metabolites and those being further modulated by the application of M. sexta's OS and (2) demonstrates that FACs act as major orchestrators of the OS-elicited response, eliciting and repressing suites of volatiles (Fig. 8).
The number of biological questions in plant science to which metabolomics have been applied is exponentially growing (for review, see Shulaev et al., 2008
GCxGC-ToFMS technology has been shown to provide high-quality mass spectra with great sensitivity, largely as a result of the enhanced resolution and zone compression obtained from the orthogonal separation (Shellie et al., 2001
Applying FACs to wounded leaves has been shown to trigger the emission of particular volatiles in amounts similar to those detected during caterpillar feeding (Alborn et al., 1997
Even though FACs could not fully account for all of the qualitative changes in volatile emission observed after OS treatment, FAC-elicited profiles were the most closely related to OS-elicited ones, as was clearly evident from the HCA dendogram and PCA projections. These results extend our appreciation of the importance of FAC signaling during attack by M. sexta larvae. Wu et al. (2007)
Many plants change the blend of volatiles released when attacked by different herbivore species (for review, see Dicke, 1999
One of the tantalizing discoveries from this unbiased analysis was that M. sexta OS strongly repressed the emission of particular components of the volatile bouquet (Fig. 4). Repressed metabolites included short-chain alcohol derivatives, certain hexenylesters, as well as some aromatic and terpenoid derivatives (Fig. 4; Supplemental Table S1). The analysis demonstrated that this OS-mediated repression (type II) could be largely attributed to the action of FACs (Supplemental Table S1). Treating wounded leaves with FACs reproduced, in the same range of intensity and statistical significance, approximately 80% of the alterations in volatile emission observed during the first trapping period after OS treatment. This effect was particularly well exemplified by the repression of cis-3-hexenol production detected in the first hour after OS or FAC treatment. This constitutes, to our knowledge, the first observation of a dual regulatory role for FACs on a plant's volatile release.
Factors that suppress the deployment of wound-induced defenses have been characterized in the OS of different caterpillar species. Notably, Musser et al. (2002
The ecophysiological consequences of this novel repression function of FACs will be exciting to explore in future work. The central question will be to determine whether this repression is advantageous for the plant or the attacking insect. GLV emissions have been shown to increase the apparency of N. attenuata plants to herbivores (Halitschke et al., 2004
Consistent with the results of Halitschke et al. (2001)
Plant Material and Treatments
We used an isogenic line, obtained after 22 generations of inbreeding, of Nicotiana attenuata (synonymous with Nicotiana torreyana; Solanaceae) derived from field-collected seeds. Seeds were germinated on agar plates containing Gamborg B5 medium (Duchefa; http://www.duchefa.com) as described by Krügel et al. (2002) All of the eliciting treatments were performed with plants at the rosette stage. Six replicate plants for each treatment were used. Plants were divided into six groups of equal size, and each of six treatments was randomized inside each of these groups. The second fully elongated (+1 position) leaf was used. Plants were either left untreated (CTRL) or wounded using a pattern wheel to punch three rows of holes on each side of the midvein. Wounded leaves were immediately treated with 20 µL of the eliciting solution pipetted directly onto the wounded leaf and gently dispersed across the surface with a gloved finger, changing gloves between treatments.
The compositions of the different eliciting solutions are summarized in Figure 1. Volatile emissions strictly induced by the mechanical wounding and/or the alkalinity of Manduca sexta's OS were assessed by applying a 0.1 M Tris, pH 9, buffer solution (B) containing 0.1% (v/v) Triton X-100. This nonionic surfactant was added to evaluate its potential eliciting effect, since it was used for the preparation of the FACs solution. OS were collected from third to fourth instar M. sexta larvae reared on wild-type plants, flushed with argon, stored at –20°C, and diluted 1:1 (v/v) before being used with a 2x concentrated buffer solution. OS purified by IEX (IOS), which are FACs and 2-HOT free, were prepared as described previously (Halitschke et al., 2001
Treated leaves were enclosed, 1 h after elicitation (the time needed to complete all of the treatments), in two 50-mL food-quality plastic containers (Huhtamaki; http://www.huhtamaki.com/) secured with miniature claw-style hair clips. Ambient air flowed into the cage primarily through a clipped-off P1000 pipette tip inserted into the bottom container and was pulled out through a self-packed glass tube (ARS, Inc.; http://www.ars-fla.com/_fpclass/fp_contact.html) containing glass wool and 20 mg of Super Q (Alltech; http://www.discoverysciences.com) and secured in a second clipped-off P1000 pipette tip inserted into the top container. Air flow was created by a manifold vacuum pump (model DAA-V114-GB; Gast Manufacturing; http://www.gastmfg.com/) as described by Halitschke et al. (2000)
An Agilent 6890N gas chromatograph equipped with an Agilent 7683 autoinjector (Agilent Technologies; http://www.agilent.com/) coupled with a LECO Pegasus III time-of-flight mass spectrometer with a 4D thermal modulator upgrade (LECO; http://www.leco.com/) was used to collect the three-dimensional GCxGC-TOFMS data. The GC inlet and transfer line were held constant at 250°C. Splitless injections of 1 µL were made onto an RTX-5MS column (i.e. column 1 [C1] of the GCxGC system [20 m x 250 µm i.d. x 0.5 µm; Restek, Bellefonte; http://www.restek.com/]). The collected C1 effluent was transferred to a DB-17 column 2 (C2) of the GCxGC system (0.890 m x 100 µm i.d. x 0.1 µm; Agilent Technologies) every 6 s (modulation time). C1 was held at 40°C for 5 min and then increased at 5°C min–1 to 190°C and finally increased at 25°C min–1 to 250°C, where it was held for 5 min. C2 was initially set at 45°C and followed the same temperature program as C1, giving a total run of 45 min. The modulator was maintained at 30°C higher temperature than C1. The ion source was maintained at 250°C. Data were collected, after a solvent peak delay of 120 s, in the mass-to-charge ratio range 50 to 300, at a rate of 200 spectra s–1.
The LECO ChromaToF software version 2.21 (LECO) was used throughout to control the instruments as well as to acquire and process the data (including automatic peak deconvolution). Sample populations from each of three trapping periods were processed separately. We selected for each of the three trapping periods the largest peak table obtained from the deconvolution of OS-induced samples as a reference matrix for each of the volatile-trapping periods (Fig. 2). Processed peaks were reported at a signal-to-noise ratio of 10, since we estimated this value as the minimum required for integration and accurate identification during blasts with the NIST and homemade libraries (data not shown). Normalization (object-wise standardization) of analytical profiles is an important step in the preprocessing of metabolic profiling data. Here, we applied linear normalization by dividing all peak heights by the tetralin internal standard @ RT (846; 3.76). To minimize the effect of zero substitution, 1 was added to all areas prior to normalization. The variations in intensity across treatments were analyzed by univariate ANOVA (P < 0.05) on log2-transformed normalized peak areas. Hierarchical clustering analyses were done with The Institute for Genomic Research MultiExperiment Viewer 3.1 software (http://www.tm4.org/mev.html) on autoscale using the Euclidean distance as a clustering metric and the complete linkage aggregation method. The statistical robustness of the dendogram structures was tested by the bootstrap resampling procedure. PCA was performed on log2-transformed and mean-centered values using an Excel add-in developed by the Bristol Chemometrics group (http://www.chm.bris.ac.uk/org/chemometrics/). Projection plots were obtained from the coordinates calculated for the PCs extracted.
VOCs markers underlying treatment-based discriminations were searched against a custom spectrum library constructed from authentic standards and the NIST98 standard and identified based on retention index and spectrum similarity match. For determination of the retention index, a C8 to C24 n-alkanes series was used. Only the first-dimension RT was used to calculate the retention index according to Kováts (1958)
The following materials are available in the online version of this article.
We thank Prof. Dr. R. Brereton for providing the Chemometric Excel add-in used for PCA, Dr. N. Heinzel for his help with the identification of plant volatiles, A. Weber and A. Schüenzel for growing the plants, E. Wheeler for editorial assistance, and two anonymous reviewers for comments on an earlier version of the manuscript. Received October 3, 2008; accepted December 31, 2008; published January 9, 2009.
The author responsible for distribution of materials integral to the findings presented in this article in accordance with the policy described in the Instructions for Authors (www.plantphysiol.org) is: Ian T. Baldwin (baldwin{at}ice.mpg.de).
[W] The online version of this article contains Web-only data.
[OA] Open Access articles can be viewed online without a subscription. www.plantphysiol.org/cgi/doi/10.1104/pp.108.130799 * Corresponding author; e-mail baldwin{at}ice.mpg.de.
Adams RP (2004) Identification of Essential Oil Components by Gas Chromatography/Quadrupole Mass Spectroscopy. Allured Publishing Corporation, Carol Stream, IL Alborn HT, Turlings TC, Jones TH, Stenhagen G, Loughrin JH, Tumlinson JH (1997) An elicitor of plant volatiles from beet armyworm oral secretion. Science 276: 945–948 Arimura G, Ozawa R, Shimoda T, Nishioka T, Boland W, Takabyashi J (2000a) Herbivory-induced volatiles elicit defence genes in lima bean leaves. Nature 406: 512–515[CrossRef][Medline] Arimura G, Tashiro K, Kuhara S, Nishioka T, Ozawa R, Takabayashi J (2000b) Gene responses in bean leaves induced by herbivory and by herbivore-induced volatiles. Biochem Biophys Res Commun 277: 305–310[CrossRef][Web of Science][Medline] Baldwin IT, Halitschke R, Paschold A, von Dahl CC, Preston CA (2006) Volatile signaling in plant-plant interactions: "talking trees" in the genomics era. Science 311: 812–815 Bede JC, Musser RO, Felton GW, Korth KL (2006) Caterpillar herbivory and salivary enzymes decrease transcript levels of Medicago truncatula genes encoding early enzymes in terpenoid biosynthesis. Plant Mol Biol 60: 519–531[CrossRef][Medline] Bernasconi ML, Turlings TCJ, Ambrosetti L, Bassetti P, Dorn S (1998) Herbivore-induced emissions of maize volatiles repel the corn leaf aphid, Rhopalosiphum maidis. Entomol Exp Appl 87: 133–142[CrossRef] Bernasconi Ockroy ML, Turlings TJC, Edwards PJ (2001) Response of natural populations of predators and parasitoids to artificially induced volatile emissions in maize plants (Zea mays L.). Agric For Entomol 3: 1–10[CrossRef] Boccard J, Grata E, Thiocone A, Gauvrit JY, Lanteri P, Carrupt PA, Wolfender JL, Rudaz S (2007) Multivariate data analysis of rapid LC-TOF/MS experiments from Arabidopsis thaliana stressed by wounding. Chemom Intell Lab Syst 86: 189–197[CrossRef] Carroll MJ, Schmelz EA, Teal PEA (2008) The attraction of Spodoptera frugiperda neonates to cowpea seedlings is mediated by volatiles induced by conspecific herbivory and the elicitor inceptin. J Chem Ecol 34: 291–300[CrossRef][Web of Science][Medline] Colazza S, McElfresh JS, Millar JG (2004) Identification of volatile synomones, induced by Nezara viridula feeding and oviposition on bean spp., that attract the egg parasitoid Trissolcus basalis. J Chem Ecol 30: 945–964[CrossRef][Web of Science][Medline] Cui X, Churchill GA (2003) Statistical tests for differential expression in cDNA microarray experiments. Genome Biol 4: 210[CrossRef][Medline] Delphia CM, Mescher MC, De Moraes CM (2007) Induction of plant volatiles by herbivores with different feeding habits and the effects of induced defenses on host-plant selection by thrips. J Chem Ecol 33: 997–1012[CrossRef][Web of Science][Medline] De Moraes CM, Lewis WJ, Pare PW, Alborn HT, Tumlinson JH (1998) Herbivore-infested plants selectively attract parasitoids. Nature 393: 570–573[CrossRef][Web of Science] Dicke M (1994) Local and systemic production of volatile herbivore-induced terpenoids: their role in plant-carnivore mutualism. J Plant Physiol 143: 465–472[Web of Science] Dicke M (1999) Are herbivore-induced plant volatiles reliable indicators of herbivore identity to foraging carnivorous arthropods? Entomol Exp Appl 91: 131–142[CrossRef] Dicke M, Sabelis MW, Dejong M (1988) Analysis of prey preference in phytoseiid mites by using an olfactometer, predation models and electrophoresis. Exp Appl Acarol 5: 225–241[CrossRef][Web of Science] Dicke M, Sabelis MW, Takabayashi J, Bruin J, Posthumus MA (1990a) Plant strategies of manipulating predator–prey interactions through allelochemicals: prospects for application in pest-control. J Chem Ecol 16: 3091–3118[CrossRef][Web of Science] Dicke M, Vanbeek TA, Posthumus MA, Bendom N, Vanbokhoven H, Degroot AE (1990b) Isolation and identification of volatile kairomone that affects acarine predator–prey interactions: involvement of host plant in its production. J Chem Ecol 16: 381–396[CrossRef][Web of Science] Duffey SS, Stout MJ (1996) Antinutritive and toxic components of plant defense against insects. Arch Insect Biochem Physiol 32: 3–37[CrossRef][Web of Science] Engel E, Baty C, Le Corre D, Souchon I, Martin N (2002) Flavor-active compounds potentially implicated in cooked cauliflower acceptance. J Agric Food Chem 50: 6459–6467[CrossRef][Web of Science][Medline] Feeny P, Stadler E, Ahman I, Carter M (1989) Effects of plant odor on oviposition by the black swallowtail butterfly, Papilio polyxenes (Lepidoptera, Papilionidae). J Insect Behav 2: 803–827[CrossRef] Frost CJ, Appel M, Carlson JE, De Moraes CM, Mescher MC, Schultz JC (2007) Within-plant signalling via volatiles overcomes vascular constraints on systemic signalling and primes responses against herbivores. Ecol Lett 10: 490–498[CrossRef][Web of Science][Medline] Giri AP, Wunsche H, Mitra S, Zavala JA, Muck A, Svatos A, Baldwin IT (2006) Molecular interactions between the specialist herbivore Manduca sexta (Lepidoptera, Sphingidae) and its natural host Nicotiana attenuata. VII. Changes in the plant's proteome. Plant Physiol 142: 1621–1641 Guth H, Grosch W (1991) A comparative-study of the potent odorants of different virgin olive oils. Fett Wissenschaft Technologie/Fat Science Technology 93: 335–339[CrossRef] Hagan SO, Dunn WB, Knowles JD, Broadhurst D, Williams R, Ashworth JJ, Cameron M, Kell DB (2007) Closed-loop, multiobjective optimization of two-dimensional gas chromatography/mass spectrometry for serum metabolomics. Anal Chem 79: 464–476[Medline] Halitschke R, Gase K, Hui DQ, Schmidt DD, Baldwin IT (2003) Molecular interactions between the specialist herbivore Manduca sexta (Lepidoptera, Sphingidae) and its natural host Nicotiana attenuata. VI. Microarray analysis reveals that most herbivore-specific transcriptional changes are mediated by fatty acid-amino acid conjugates. Plant Physiol 131: 1894–1902 Halitschke R, Kessler A, Kahl J, Lorenz A, Baldwin IT (2000) Ecophysiological comparison of direct and indirect defenses in Nicotiana attenuata. Oecologia 124: 408–417[CrossRef][Web of Science] Halitschke R, Schittko U, Pohnert G, Boland W, Baldwin IT (2001) Molecular interactions between the specialist herbivore Manduca sexta (Lepidoptera, Sphingidae) and its natural host Nicotiana attenuata. III. Fatty acid-amino acid conjugates in herbivore oral secretions are necessary and sufficient for herbivore-specific plant responses. Plant Physiol 125: 711–717 Halitschke R, Ziegler J, Keinanen M, Baldwin IT (2004) Silencing of hydroperoxide lyase and allene oxide synthase reveals substrate and defense signaling crosstalk in Nicotiana attenuata. Plant J 40: 35–46[CrossRef][Web of Science][Medline] Hamberg M, de Leon IP, Sanz A, Castresana C (2002) Fatty acid alpha-dioxygenases. Prostaglandins Other Lipid Mediat 68-69: 363–374 Hamberg M, Sanz A, Rodriguez MJ, Calvo AP, Castresana C (2003) Activation of the fatty acid alpha-dioxygenase pathway during bacterial infection of tobacco leaves: formation of oxylipins protecting against cell death. J Biol Chem 278: 51796–51805 Holopainen JK (2004) Multiple functions of inducible plant volatiles. Trends Plant Sci 9: 529–533[CrossRef][Web of Science][Medline] Jirovetz L, Buchbauer G, Ngassoum MB, Geissler M (2002) Aroma compound analysis of Piper nigrum and Piper guineense essential oils from Cameroon using solid-phase microextraction-gas chromatography, solid-phase microextraction-gas chromatography-mass spectrometry and olfactometry. J Chromatogr A 976: 265–275[CrossRef][Web of Science][Medline] Johne AB, Weissbecker B, Schutz S (2006) Volatile emissions from Aesculus hippocastanum induced by mining of larval stages of Cameraria ohridella influence oviposition by conspecific females. J Chem Ecol 32: 2303–2319[CrossRef][Web of Science][Medline] Karban R, Baldwin IT (1997) Induced Responses to Herbivory. University of Chicago Press, Chicago Kessler A, Baldwin IT (2001) Defensive function of herbivore-induced plant volatile emissions in nature. Science 291: 2141–2144 Kessler A, Halitschke R, Diezel C, Baldwin IT (2006) Priming of plant defense responses in nature by airborne signaling between Artemisia tridentata and Nicotiana attenuata. Oecologia 148: 280–292[CrossRef][Web of Science][Medline] Kost C, Heil M (2006) Herbivore-induced plant volatiles induce an indirect defence in neighbouring plants. J Ecol 94: 619–628[CrossRef] Kováts E (1958) Gas-chromatographische Charakterisierung organischer Verbindungen. Teil 1. Retentionsindices aliphatischer Halogenide, Alkohole, Aldehyde und Ketone. Helv Chim Acta 41: 1915–1932[CrossRef][Web of Science] Krügel T, Lim M, Gase K, Halitschke R, Baldwin IT (2002) Agrobacterium-mediated transformation of Nicotiana attenuata, a model ecological expression system. Chemoecology 12: 177–183[CrossRef][Web of Science] Kusano M, Fukushima A, Kobayashi M, Hayashi N, Jonsson P, Moritz T, Ebana K, Saito K (2007) Application of a metabolomic method combining one-dimensional and two-dimensional gas chromatography-time-of-flight/mass spectrometry to metabolic phenotyping of natural variants in rice. J Chromatogr B Analyt Technol Biomed Life Sci 855: 71–79[CrossRef][Web of Science][Medline] Landolt PJ, Tumlinson JH, Alborn DH (1999) Attraction of Colorado potato beetle (Coleoptera: Chrysomelidae) to damaged and chemically induced potato plants. Environ Entomol 28: 973–978[Web of Science] Matsui K (2006) Green leaf volatiles: hydroperoxide lyase pathway of oxylipin metabolism. Curr Opin Plant Biol 9: 274–280[CrossRef][Web of Science][Medline] Mattiacci L, Dicke M, Posthumus MA (1995) β-Glucosidase: an elicitor of herbivore-induced plant odor that attracts host-searching parasitic wasps. Proc Natl Acad Sci USA 92: 2036–2040 Meldau S, Wu J, Baldwin IT (2009) Silencing two herbivory-activated MAP kinases, SIPK and WIPK, does not increase Nicotiana attenuata's susceptibility to herbivores in the glasshouse and in nature. New Phytol 181: 161–173[CrossRef][Web of Science][Medline] Mithöfer A, Wanner G, Boland W (2005) Effects of feeding Spodoptera littoralis on lima bean leaves. II. Continuous mechanical wounding resembling insect feeding is sufficient to elicit herbivory-related volatile emission. Plant Physiol 137: 1160–1168 Musser RO, Cipollini DF, Hum-Musser SM, Williams SA, Brown JK, Felton GW (2005) Evidence that the caterpillar salivary enzyme glucose oxidase provides herbivore offense in solanaceous plants. Arch Insect Biochem Physiol 58: 128–137[CrossRef][Web of Science][Medline] Musser RO, Hum-Musser SM, Eichenseer H, Peiffer M, Ervin G, Murphy JB, Felton GW (2002) Herbivory: caterpillar saliva beats plant defences. A new weapon emerges in the evolutionary arms race between plants and herbivores. Nature 416: 599–600[CrossRef][Medline] Pare PW, Tumlinson JH (1999) Plant volatiles as a defense against insect herbivores. Plant Physiol 121: 325–331 Paschold A, Halitschke R, Baldwin IT (2006) Using mute plants to translate volatile signals. Plant J 45: 275–291[CrossRef][Web of Science][Medline] Quiroz A, Pettersson J, Pickett JA, Wadhams LJ, Niemeyer HM (1997) Semiochemicals mediating spacing behavior of bird cherry-oat aphid, Rhopalosiphum padi feeding on cereals. J Chem Ecol 23: 2599–2607[CrossRef][Web of Science] Roda A, Halitschke R, Steppuhn A, Baldwin IT (2004) Individual variability in herbivore-specific elicitors from the plant's perspective. Mol Ecol 13: 2421–2433[CrossRef][Medline] Ruther J (2000) Retention index database for identification of general green leaf volatiles in plants by coupled capillary gas chromatography-mass spectrometry. J Chromatogr A 890: 313–319[CrossRef][Web of Science][Medline] Sabelis MW, van de Baan HE (1983) Location of distant spider-mite colonies by phytoseiid predators: demonstration of specific kairomones emitted by Tetranychus urticae and Panonychus ulmi. Entomol Exp Appl 33: 303–314 Schmelz EA, Carroll MJ, LeClere S, Phipps SM, Meredith J, Chourey PS, Alborn HT, Teal PEA (2006) Fragments of ATP synthase mediate plant perception of insect attack. Proc Natl Acad Sci USA 103: 8894–8899 Schwachtje J, Minchin PEH, Jahnke S, van Dongen JT, Schittko U, Baldwin IT (2006) SNF1-related kinases allow plants to tolerate herbivory by allocating carbon to roots. Proc Natl Acad Sci USA 103: 12935–12940 Shellie R, Marriott P, Morrison P (2001) Concepts and preliminary observations on the triple-dimensional analysis of complex volatile samples by using GCxGC-TOFMS. Anal Chem 73: 1336–1344 Shellie RA, Welthagen W, Zrostlikova J, Spranger J, Ristow M, Fiehn O, Zimmermann R (2005) Statistical methods for comparing comprehensive two-dimensional gas chromatography-time-of-flight mass spectrometry results: metabolomic analysis of mouse tissue extracts. J Chromatogr A 1086: 83–90[CrossRef][Web of Science][Medline] Shimoda T, Takabayashi J, Ashihara W, Takafuji A (1997) Response of predatory insect Scolothrips takahashii toward herbivore-induced plant volatiles under laboratory and field conditions. J Chem Ecol 23: 2033–2048[CrossRef][Web of Science] Shulaev V, Cortes D, Miller G, Mittler R (2008) Metabolomics for plant stress response. Physiol Plant 132: 199–208[Medline] Spiteller D, Dettner K, Boland W (2000) Gut bacteria may be involved in interactions between plants, herbivores and their predators: microbial biosynthesis of N-acylglutamine surfactants as elicitors of plant volatiles. Biol Chem 381: 755–762[CrossRef][Web of Science][Medline] Spiteller D, Pohnert G, Boland W (2001) Absolute configuration of volicitin, an elicitor of plant volatile biosynthesis from lepidopteran larvae. Tetrahedron Lett 42: 1483–1485[CrossRef][Web of Science] Stowe KA, Marquis RJ, Hochwender CG, Simms EL (2000) The evolutionary ecology of tolerance to consumer damage. Annu Rev Ecol Syst 31: 565–595[CrossRef][Web of Science] Triqui R, Reineccius GA (1995) Changes in flavor profiles with ripening of anchovy (Engraulis encrasicholus). J Agric Food Chem 43: 1883–1889[CrossRef][Web of Science] Tu BP, Mohler RE, Liu JC, Dombek KM, Young ET, Synovec RE, McKnight SL (2007) Cyclic changes in metabolic state during the life of a yeast cell. Proc Natl Acad Sci USA 104: 16886–16891 Turlings TCJ, Bernasconi M, Bertossa R, Bigler F, Caloz G, Dorn S (1998) The induction of volatile emissions in maize by three herbivore species with different feeding habits: possible consequences for their natural enemies. Biol Control 11: 122–129[CrossRef] Turlings TCJ, Tumlinson JH, Eller FJ, Lewis WJ (1991a) Larval-damaged plants: source of volatile synomones that guide the parasitoid Cotesia marginiventris to the microhabitat of its hosts. Entomol Exp Appl 58: 75–82[CrossRef] Turlings TCJ, Tumlinson JH, Heath RR, Proveaux AT, Doolittle RE (1991b) Isolation and identification of allelochemicals that attract the larval parasitoid, Cotesia marginiventris (Cresson), to the microhabitat of one of its hosts. J Chem Ecol 17: 2235–2251[CrossRef][Web of Science] Turlings TCJ, Tumlinson JH, Lewis WJ (1990) Exploitation of herbivore-induced plant odors by host-seeking parasitic wasps. Science 250: 1251–1253 Turlings TCJ, Wäckers F (2004) Recruitment of predators and parasitoids by herbivore-injured plants. Insect Chemical Ecology 2: 21–75 Van Dam NM, Poppy GM (2008) Why plant volatile analysis needs bioinformatics: detecting signal from noise in increasingly complex profiles. Plant Biol 10: 29–37[Medline] van Poecke RMP, Dicke M (2004) Indirect defence of plants against herbivores: using Arabidopsis thaliana as a model plant. Plant Biol 6: 387–401[CrossRef][Medline] von Dahl CC, Havecker M, Schlogl R, Baldwin IT (2006) Caterpillar-elicited methanol emission: a new signal in plant-herbivore interactions? Plant J 46: 948–960[CrossRef][Web of Science][Medline] Wu J, Hettenhausen C, Meldau S, Baldwin IT (2007) Herbivory rapidly activates MAPK signaling in attacked and unattacked leaf regions but not between leaves of Nicotiana attenuata. Plant Cell 19: 1096–1122 Yoshinaga N, Aboshi T, Ishikawa C, Fukui M, Shimoda M, Nishida R, Lait CG, Tumlinson JH, Mori N (2007) Fatty acid amides, previously identified in caterpillars, found in the cricket Teleogryllus taiwanemma and fruit fly Drosophila melanogaster larvae. J Chem Ecol 33: 1376–1381[CrossRef][Medline] Zavala JA, Patankar AG, Gase K, Baldwin IT (2004) Constitutive and inducible trypsin proteinase inhibitor production incurs large fitness costs in Nicotiana attenuata. Proc Natl Acad Sci USA 101: 1607–1612 This article has been cited by other articles:
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