Augmented Multivariate Image Analysis Applied to Quantitative

Aug 15, 2013 - ABSTRACT: Two of major weeds affecting cereal crops worldwide are Avena fatua L. (wild oat) and Lolium rigidum Gaud. (rigid ryegrass). ...
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aug-MIA-QSAR modeling of the phytotoxicities of benzoxazinone herbicides and related compounds on problematic weeds Mirlaine R. Freitas, Stella VBG Matias, Renato Luiz Grisi Macedo, Matheus Puggina de Freitas, and Nelson Venturin J. Agric. Food Chem., Just Accepted Manuscript • DOI: 10.1021/jf4024257 • Publication Date (Web): 15 Aug 2013 Downloaded from http://pubs.acs.org on August 20, 2013

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aug-MIA-QSAR modeling of the phytotoxicities of benzoxazinone

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herbicides and related compounds on problematic weeds

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Mirlaine R. Freitas,1* Stella V. B. G. Matias,1 Renato L. G. Macedo,1 Matheus P.

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Freitas,2 Nelson Venturin1

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1

Department of Forest Sciences, Federal University of Lavras, 37200-000, Lavras, MG, Brazil

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2

Department of Chemistry, Federal University of Lavras, 37200-000, Lavras, MG, Brazil

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* e-mail: [email protected]

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Abstract

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Two of major weeds affecting cereal crops worldwide are Avena fatua L. (wild oat) and

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Lolium rigidum Gaud. (rigid ryegrass). Thus, development of new herbicides against

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these weeds is required; in line with this, benzoxazinones, their degradation products

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and analogues have shown to be important allelochemicals and natural herbicides.

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Despite earlier structure-activity studies have demonstrated that hydrophobicity (logP)

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of aminophenoxazines correlates to phytotoxicity, our findings for a series of

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benzoxazinone derivatives do not show any relationship between phytotoxicity and

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logP, nor with other two usual molecular descriptors. On the other hand, a quantitative

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structure-activity relationship (QSAR) analysis based on molecular graphs representing

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structural shape, atomic sizes and colors to encode other atomic properties performed

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very accurately for the prediction of phytotoxicities of these compounds against wild

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oat and rigid ryegrass. Therefore, these QSAR models can be used to estimate the

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phytotoxicity of new congeners of benzoxazinone herbicides toward A. fatua L. and L.

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rigidum Gaud.

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Keywords: QSAR; herbicides; phytotoxicity; Avena fatua L.; Lolium rigidum Gaud.

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Introduction

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Despite the use of oats for thousands as food source for humans and livestock,1 the wild

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oat Avena fatua L. is a major weed in oat farming; likewise, Lolium rigidum Gaud.

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(rigid ryegrass) affects cereal crops worldwide. The weed control is commonly

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performed using herbicides, but different cases of resistance have appeared.2-7

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Accordingly, development of new herbicides is required. Benzoxazinones containing

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the hydroxamic moiety have gained widespread use in phytochemistry, as well as their

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degradation products;8 therefore, development of new derivatives of this family of

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natural allelochemicals present in corn, wheat and rye is of interest, which can be

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achieved using quantitative structure-activity relationships (QSAR) techniques.

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The physicochemical and biological properties of herbicides can be related with

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their hydrophobicity, e.g. the soil sorption of a variety of herbicide families has shown

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to be linearly correlated with the octanol/water partition coefficient (logP).9 In addition,

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other molecular descriptors, like molecular weight and volume, determine transport

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characteristics of molecules.10 However, properties like these do not always correlate

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significantly with biological properties, e.g. in the QSAR modeling of antifungal

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activities of some benzothiazole derivatives.11 Thus, more representative descriptors are

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usually invoked to generate predictive QSAR models.

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Three-dimensional descriptors are frequently calculated to provide useful

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quantitative structure-activity relationships,12-14 despite the need for exhaustive data

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manipulation, such as conformational screening, geometry optimization and three-

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dimensional alignment of molecules. Otherwise, a method based on 2D molecular

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representations (chemical structure images), namely MIA-QSAR (multivariate image

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analysis applied to quantitative structure-activity relationships),15 can provide predictive 2

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QSAR models. Recently, this method was improved to aug-MIA-QSAR,16 in which

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new dimensions were introduced to account for atomic size and other properties. In this

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way, physical, chemical and biological properties of molecules can be appropriately

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explained by more complex information than hydrophobicity, like 2D molecular shape,

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atomic sizes and colors to encode other atomic properties.

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Accordingly, aug-MIA descriptors were used in this study to generate

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quantitative relationships between the chemical structures of a series of benzoxazinones,

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their degradation products and analogues with the respective phytotoxicities toward A.

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fatua L. and L. rigidum Gaud., expressed in terms of percent of root length compared to

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control. These biological data were obtained in the literature,8 where a reasonable

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correlation between the phytotoxicities of five aminophenoxazines and logP was found,

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but it cannot be extended to the whole series of compounds analyzed.

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Materials and Methods

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A series of 21 benzoxazinones, their degradation products and analogues, together with

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the corresponding approximate phytotoxicity data toward A. fatua L. and L. rigidum

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Gaud. (expressed in terms of percent of root length relative to control, exposed to 10-3

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M of herbicide in DMSO/buffer solution) were obtained from the literature,8 and are

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given in Table 1. The values of logP, molecular weight and molecular volume were

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calculated using the Molinspiration program (www.molinspiration.com).

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The aug-MIA-QSAR model was built according to the procedure described

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elsewhere;16 thus, only a brief description is given here. A basic framework (a chemical

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structure) was drawn in the GaussView 5.0 program;17 the molecules were generated by

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consecutive replacement of substituents, whose atom sizes were proportional to the 3

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corresponding Van der Waals radii. Images were saved individually as bitmaps in a well

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defined workspace (of 335×218 pixels size) in the Paint application of the Microsoft

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Windows. 2D alignment was performed by making the common scaffold of the whole

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series congruent; the superposed chemical structures used in the aug-MIA-QSAR are

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shown in Figure 1 to illustrate the data variance. Each image (a combination of pixels)

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was transformed in numerical values according to the RGB system of colors using the

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Chemoface program18 and then grouped to give a three-way array of 21×335×218

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dimension. This array was unfolded to a matrix of 21×73030 dimension, then reduced to

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21×8269 dimension after removing columns with zero variance. This matrix was

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regressed against the phytotoxicity data using partial least squares (PLS), giving the

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calibration model, whose quality was evaluated by analyzing the RMSEC (root mean

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square error of calibration) and r2, defined as 1 - [(Σ(yi-ŷi)2/Σ(yi-ӯ)2], in which yi

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corresponds to the experimental phytotoxicity values (in % of root length relative to

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control), ŷi are the predicted values, and ӯ corresponds to the mean values. The

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calibration model was validated using leave-one-out cross-validation (LOOCV,

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statistically evaluated using RMSECV and q2, defined similarly as above) and by a Y-

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randomization test (mean of 10 repetitions), statistically evaluated using r2

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additional statistical parameter proposed by Mitra et al.,19 cr2P (Eq. 1), was used to give

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insight about the statistical difference between r2 and r2

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acceptable). Values of r2 ≥ 0.8 and q2 ≥ 0.5 are widely recognized as acceptable and

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indicate that predictive models are then achieved.

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Y-rand

c 2

r P = r (r2 - r2rand)1/2

Y-rand.

An

(values above 0.5 are

(1)

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Results and Discussion

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Hydrophobicity, expressed in terms of the octanol/water partition coefficient (logP), has

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been found to correlate with biological properties for a long time20 and, for five

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aminophenoxazines, a good correlation was found with phytotoxicity toward L. rigidum

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Gaud.8 However, a general extension to the 21 compounds analyzed in this work cannot

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be done using calculated values of logP, since no correlation with the percent of root

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length relative to the control was found (Table 2). In addition, there is not any

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relationship between the weed development with the molecular weight (MW) and

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volume (MV) of the 21 titled herbicides, neither with all three parameters (logP, MW

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and MV) together using multiple linear regression. Therefore, the action mechanism of

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the herbicides is more complex than those based on solubility and transportation

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through cell membranes. A better relationship with molecular structural changes and,

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consequently, with specific ligand interactions at the biomolecular level is therefore

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expected. Thus, a structure-based design accounting for molecular shape and atomic

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properties was developed using aug-MIA-QSAR to achieve models for the

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phytotoxicity estimation of congeners of benzoxazinones, their degradation products

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and analogues.

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The aug-MIA descriptors for the 21 compounds of Table 1 were submitted to

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PLS regression against the phytotoxicity data toward A. fatua L. and L. rigidum Gaud.,

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and model calibrations using 4 PLS components (in which the RMSECV values were

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minimized) were achieved (Figure 2), giving acceptable statistical results (Table 3),

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especially for the L. rigidum Gaud. model. The values of r2 above 0.8 do not guarantee

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that the QSAR models are reliable for the prediction of biological data; thus, model

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validation was performed using leave-one-out cross-validation (LOOCV). It is worth 5

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mentioning that external validation was not performed because of the limited amount of

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samples (only 21) and, therefore, the splitting of the data set into training and test

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samples would give few compounds, with risk of lack of representativeness in the

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training set. Despite the high residual for compound 18 in the leave-one-out cross-

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validation for A. fatua L., outliers were not found using sample leverages and

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studentized residuals as outlier diagnostic probes; thus, this compound was considered

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important for the model. The high residual for 18 in the LOOCV is probably due to the

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R1 substituent, which is the only OH group along with the series in this position. The

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LOOCV results (q2 > 0.50) attest the good prediction performance of the models, but a

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Y-randomization test was also performed to guarantee that calibration results were good

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due to the actual relationship between descriptors and variables rather than by chance

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correlation or over-fitting. According to this approach, the phytotoxicities block is

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randomized, while the descriptor matrix is kept intact; bad correlation using PLS is

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expected if aug-MIA descriptors indeed encode the corresponding biological data, but

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not the randomized data. The low mean values of r2Y-rand compared to r2 (statistically

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analyzed using cr2P) indicate that the real calibration is robust.

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Overall, models for the prediction of herbicide potency of new derivatives of the

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titled compounds were built and 2D view of chemical structures describes the biological

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data accurately. The aug-MIA descriptors can also be used to generate pattern

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recognition models using principal component analysis (PCA), which give insight about

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chemical properties responsible for the activity profiles. The phytotoxicity levels were

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divided in three classes: high (-70 to -92%), moderate (-30 to -69%) and low (5 to -

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29%). PC1 explained the largest data variance (95.4%), but PC2 (1.6%) was capable of

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clustering compounds with low activities (negative scores in PC2) and with

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moderate/high activities (positive scores in PC2). Only few samples of a given class 6

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have fallen within the cluster of a different class (compounds 6 and 7) or have formed a

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different cluster (compounds 1, 16 and 17), for both weeds (Figure 3); thus, the PCA

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models were generally good to separate classes of compounds with different

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phytotoxicity levels toward A. fatua L. and L. rigidum Gaud. The scores analysis in

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PCA reveals that malonamic acids and most of aminophenoxazines are not promising,

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potent herbicides, while derivatives based on the benzoxazinone and benzoxazolinone

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substrutures are potential compounds to be used in the control of weeds A. fatua L. and

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L. rigidum Gaud.

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Conclusions

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Hydrophobicity, molecular weight and volume are not enough to describe completely

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the phytotoxicity data of benzoxazinone herbicides and derivatives toward A. fatua L.

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and L. rigidum Gaud. aug-MIA descriptors encoding molecular shape and different

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atomic properties are better to explain the bioactivity behavior of these compounds,

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indicating that the action mechanism is not only proportional to cell permeation and

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transportation, but also to specific ligand-receptor interactions. Development of new

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allelochemical derivatives must be driven by the substructures of benzoxazinones and

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benzoxazolinones rather than malonamic acids and aminophenoxazines.

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Acknowledgements

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Authors are thankful to FAPEMIG and CNPq for the financial support, studentship (to

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M.R.F. and S.V.B.G.M.) and fellowships (to R.L.G.M., M.P.F. and N.V.).

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References

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Wallingford, 1994.

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inhibitor resistance among wild oat (Avena fatua) patches using AFLP analysis.

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Weed Sci. 1998, 46, 196-199.

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in acetyl-CoA carboxylase inhibitor resistant wild oat (Avena fatua). Weed Sci. 1997,

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Preston, C. Resistance to glyphosate in Lolium rigidum. Pest. Sci. 1999, 55, 489-491.

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(Lolium rigidum Gaud.) in the cropping belt of Western Australia. Aust. J. Exp.

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(6) De Prado, R.; De Prado, L.; Menendez, J. Resistance to substituted urea herbicides in Lolium rigidum biotypes. Pest. Biochem. Physiol. 1997, 57, 126-136.

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(7) Seefeldt, S. S. D.; Hoffman, L. D.; Gealy, R.; Fuerst, P. Inheritance of diclofop

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Oregon. Weed Sci. 1998, 46, 170-175.

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Molinillo, J. M. G. Structure-activity relationship (SAR) studies of benzoxazinones,

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their degradation products, and analogues. Phytotoxicity on problematic weeds

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Avena fatua L. and Lolium rigidum Gaud. J. Agric. Food Chem. 2006, 54, 1040-

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the prediction of antifungal activities of some benzothiazole derivatives. Med. Chem.

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(CoMFA). 1. Effect of shape on binding of steroids to carrier proteins. J. Am. Chem.

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(16) Nunes, C. A.; Freitas, M. P. Introducing new dimensions in MIA-QSAR: a case for chemokine receptor inhibitors. Eur. J. Med. Chem. 2013, 62, 297-300. (17) Dennington II, R. D.; Keith, T. A.; Millam, J. M. GaussView 5.0.8, Gaussian, Inc.: Wallingford, 2008.

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Figures

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Figure 1. Superposed structures of the 21 benzoxazinones, their degradation products

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and analogues, used to generate the aug-MIA descriptors for the QSAR modeling.

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Figure 2. Plots of experimental vs. fitted and predicted phytotoxicity, expressed in

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terms of root length relative to the control, obtained by the aug-MIA-QSAR models for

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A. fatua L. and L. rigidum Gaud.

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Figure 3. Score plots of the principal component analysis of benzoxazinones, their

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degradation products and analogues, using aug-MIA descriptors and classified

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according to phytotoxicity levels toward A. fatua L. and L. rigidum Gaud.

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Tables

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Table 1. Series of compounds analyzed using aug-MIA-QSAR and the corresponding

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phytotoxicities (% of root length relative to the control) toward A. fatua L. and L.

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rigidum Gaud. R1

O

R2

R1

R1

O

O

O

N

NHR2

O N

N H

O

R1

8888 1111 ---4444 1111

3333 1111 dddd nnnn aaaa 2222 1111

1111 1111 ---1111 R3

OH

OH O

O NH2

OH

1111 2222

0000 2222 dddd nnnn aaaa 9999 1111

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Compound 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21

R1 H H OCH3 H OCH3 H OCH3 H OCH3 H OCH3 H OCH3 H OCH3 H OCH3 OH H OCH3

R2 O-β-D-glucose OH OH OH OH H H H H H H

H H OAc OAc H

R3 OH OH OH H H H H OH OH OAc OAc

%A. fatua L. -87 -87 -77 -83 -87 -80 -55 -87 -32 -52 -65 -28 -20 -23 -17 -80 -43 -22 5 -22 -80

%L. rigidum Gaud. -87 -92 -72 -85 -80 -65 -20 -90 -28 -60 -60 -48 -32 -15 -13 -92 -50 -18 -13 2 -83

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Table 2. Percent of root length of weeds exposed to compounds 1-21 relative to control

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and calculated molecular descriptors.a Cpd 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21

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a

A. fatua L. % logP -87 -1.451 -87 0.256 -77 0.289 -83 0.328 -87 0.361 -80 0.986 -55 1.019 -87 0.914 -32 0.947 -52 1.278 -65 1.310 -28 1.176 -20 1.209 -23 2.051 -17 2.083 -80 2.471 -43 2.504 -22 1.547 5 0.365 -22 0.398 -80 1.153

MW 343.3 181.1 211.2 165.1 195.2 149.1 179.2 165.1 195.2 207.2 237.2 135.1 165.1 212.2 242.2 270.2 300.3 228.2 195.2 225.2 109.1

MV 278.9 146.8 172.4 138.4 164.0 130.4 155.9 138.8 164.3 175.3 200.8 113.6 139.1 179.7 205.2 225.4 250.9 187.7 167.2 192.8 103.4

L. rigidum Gaud. % logP -87 -1.451 -92 0.256 -72 0.289 -85 0.328 -80 0.361 -65 0.986 -20 1.019 -90 0.914 -28 0.947 -60 1.278 -60 1.310 -48 1.176 -32 1.209 -15 2.051 -13 2.083 -92 2.471 -50 2.504 -18 1.547 -13 0.365 2 0.398 -83 1.153

MW 343.3 181.1 211.2 165.1 195.2 149.1 179.2 165.1 195.2 207.2 237.2 135.1 165.1 212.2 242.2 270.2 300.3 228.2 195.2 225.2 109.1

MV 278.9 146.8 172.4 138.4 164.0 130.4 155.9 138.8 164.3 175.3 200.8 113.6 139.1 179.7 205.2 225.4 250.9 187.7 167.2 192.8 103.4

logP = octanol/water partition coefficient; MW = molecular weight; MV = molecular volume.

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Table 3. Statistical parameters of the aug-MIA-QSAR models. Parameter PLS components r2 RMSEC q2 RMSECV r2Y-rand c 2 rP

A. fatua L. 4 0.828 12.21 0.504 21.37 0.419 0.582

L. rigidum Gaud. 4 0.858 11.60 0.657 18.15 0.535 0.526

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Figure 1

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0

20 Calibration LOO cross-validation

Fitted and predicted phytotoxicity (% development relative to control)

Fitted and predicted phytotoxicity (% development relative to control)

20

-20 -40 -60 -80 A. fatua L. -100 -100

-80

-60

-40

-20

0

20

Experimental phytotoxicity (% development relative to control)

0

Calibration LOO cross-validation

-20 -40 -60 -80 L. rigidum Gaud. -100 -100

-80

-60

-40

-20

0

20

Experimental phytotoxicity (% development relative to control)

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Figure 2

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Figure 3

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