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Isoxaflutole and metribuzin interactions in isoxaflutole-resistant soybean

Published online by Cambridge University Press:  26 June 2019

Andrea Smith
Affiliation:
Graduate Student, Department of Plant Agriculture, University of Guelph, Ridgetown, ON, Canada
Nader Soltani*
Affiliation:
Adjunct Professor, Department of Plant Agriculture, University of Guelph, Ridgetown, ON, Canada
Allan C. Kaastra
Affiliation:
Senior Agronomic Development Representative, Bayer Inc., Guelph, ON, Canada
David C. Hooker
Affiliation:
Associate Professor, Department of Plant Agriculture, University of Guelph, Ridgetown, ON, Canada and
Darren E. Robinson
Affiliation:
Professor, Department of Plant Agriculture, University of Guelph, Ridgetown, ON, Canada
Peter H. Sikkema
Affiliation:
Professor, Department of Plant Agriculture, University of Guelph, Ridgetown, ON, Canada
*
Author for correspondence: Nader Soltani, Department of Plant Agriculture, University of Guelph Ridgetown Campus, 120 Main Street, East, Ridgetown, ON N0P 2C0, Canada. Email: [email protected]
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Abstract

Herbicide-resistant weeds are a growing concern globally; in response, new herbicide resistance traits are being inserted into crops. Isoxaflutole-resistant soybean [Glycine max (L.) Merr.] will provide a new mode of action for use in this crop. Ten experiments were conducted over a 2-yr period (2017, 2018) to determine herbicide interactions between isoxaflutole and metribuzin on soybean injury, weed control efficacy, and soybean yield on a range of soil types. Soybean leaf-bleaching injury caused by isoxaflutole was most severe at sites with higher levels of rainfall after application. Control of weed species with isoxaflutole (52.5, 79, and 105 g ai ha−1) and metribuzin (210, 315, and 420 g ai ha−1) differed by site based on amount of rainfall after application. At sites where there was sufficient rainfall for herbicide activation, isoxaflutole at all rates controlled common lambsquarters (Chenopodium album L.), Amaranthus spp., common ragweed (Ambrosia artemisiifolia L.), and velvetleaf (Abutilon theophrasti Medik.) >90%; metribuzin at all rates controlled Amaranthus spp. and witchgrass (Panicum capillare L.) >80%. Control of every weed species evaluated was reduced when there was limited rainfall after herbicide application. The co-application of isoxaflutole + metribuzin resulted in additive or synergistic interactions for the control of C. album, Amaranthus spp., A. artemisiifolia, A. theophrasti, Setaria spp., barnyardgrass [Echinochloa crus-galli (L.) P. Beauv], and P. capillare. Isoxaflutole and metribuzin can be an effective management strategy for common annual broadleaf and grass weeds in Ontario if timely rainfall events occur after herbicide application.

Type
Research Article
Copyright
© Weed Science Society of America, 2019 

Introduction

Weeds must be controlled during the critical weed-free period (CWFP) to avoid yield loss in soybean [Glycine max (L.) Merr.]. Weed interference would reduce soybean yield an average of 52% or US$16.5 billion annually if North American soybean producers did not implement any weed management strategies (Soltani et al. 2017). The soybean yield component most prominently impacted by weed interference is pod number per square meter, which can be reduced by up to 64% under season-long weed interference (Van Acker et al. Reference Van Acker, Weise and Swanton1993b). A yield loss of ≤5% occurs if soybean is maintained weed-free between the V2 and V3 growth stages in Ontario, based on the CWFP for soybean in Ontario developed by Van Acker et al. (Reference Van Acker, Weise and Swanton1993a). Employing integrated weed management strategies such as cultural, biological, mechanical, and chemical practices to eliminate weed interference during the CWFP helps mitigate soybean yield loss.

Glyphosate-resistant (GR) soybean has been rapidly adopted since its introduction in 1996; by 2006, 95% of soybean in the United States was seeded to GR cultivars (Young 2006). The broad spectrum and reliable weed control with glyphosate led to it being the sole herbicide applied on many hectares across North America; glyphosate was frequently the only weed control measure implemented. This dependence on glyphosate contributed to the evolution of more than 40 GR weed species worldwide, including six species in Canada: giant ragweed (Ambrosia trifida L.), horseweed (Erigeron canadensis L.), A. artemisifolia, waterhemp [Amaranthus tuberculatus (Moq.) J. D. Sauer], kochia [Bassia scoparia (L.) A. J. Scott], and birdsrape mustard (Brassica rapa L.) (Heap 2018). GR weeds cost US farmers US$2 billion annually from crop yield loss and additional weed management costs (Davis 2014). To address herbicide-resistant (HR) weeds, innovative strategies must be implemented to reduce the selection intensity for additional HR weeds and slow down the geographic spread of resistant biotypes.

New transgenic soybean cultivars with traits that confer resistance to isoxaflutole are currently under development. Combinations of glyphosate, glufosinate, and mesotrione resistance will also be incorporated into soybean cultivars with isoxaflutole resistance. Preliminary studies have shown potential for isoxaflutole-resistant (IR) soybean to be used as a tool to manage GR weeds. A mixture of isoxaflutole (105 g ai ha−1), metribuzin (420 or 630 g ai ha−1), and S-metolachlor (1,068 g ai ha−1) controlled GR Palmer amaranth (Amaranthus palmeri S. Watson) 95% and 85%, respectively, at 4 and 7 wk after application (WAA) (Meyer et al. 2015). Isoxaflutole (105 g ha−1) plus metribuzin (420 g ha−1) controlled GR A. tuberculatus 75% and GR E. canadensis 78% at 8 WAA (Ditschun et al. 2016; Schryver et al. 2017). Herbicide efficacy in these studies may be underestimated due to the lack of soybean competition because IR seed was not available.

Isoxaflutole inhibits the 4-hydroxyphenyl pyruvate dioxygenase (HPPD) enzyme, which is essential for tocopherol and plastoquinone biosynthesis (Pallett et al. 1998). Typically, isoxaflutole is applied PRE or early POST (ePOST) in corn (Zea mays L.) and sugarcane (Saccharum officinarum L.) production; however, the development of IR soybean will expand the use of isoxaflutole in soybean, applied PRE. According to the herbicide label, isoxaflutole (105 g ha−1) provides full-season residual control of a broad spectrum of annual grass and broadleaf weed species (Anonymous 2017). Isoxaflutole applied at lower rates of 52.5 and 79 g ha−1 controls a narrower spectrum of weeds and provides shorter residual weed control. In corn, isoxaflutole is commonly applied in combination with atrazine, which increases the spectrum of weeds controlled and improves control of annual grass and broadleaf weeds. However, soybean is not tolerant to atrazine; therefore, metribuzin is proposed for use with isoxaflutole in IR soybean (ACK, personal observation). Metribuzin is a photosystem II (PSII) inhibitor that binds to the QB binding niche on the D1 protein of PSII, displacing the electron transporter, plastoquinone, causing a buildup of high-energy electrons that leads to lipid peroxidation of organelle and cellular membranes (Shaner 2014; Trebst 2008).

Herbicides applied as a mixture may interact within the tank before application or afterward within the plant, resulting in an antagonistic, additive, or synergistic response. The interaction is classified as antagonistic, additive, or synergistic by comparing the actual response of the herbicides applied together to the expected response when applied alone determined by Colby’s equation (Colby 1967). Antagonism occurs when the actual response of the herbicides applied together is lower than the expected response, additive responses occur when the expected and actual responses are similar, and synergy occurs when the actual response is greater than the expected response. Synergism has been documented with combinations of HPPD- and PSII-inhibiting herbicides in certain weed species. Ditschun et al. (2016) observed synergistic control of E. canadensis with isoxaflutole + metribuzin at 79 + 316 g ha−1 and 105 + 410 g ha−1, respectively.

Limited research has been conducted using isoxaflutole and metribuzin in IR soybean, with few studies addressing the interaction of the two herbicides on annual weeds. The objectives of this research were to (1) determine the spectrum of weeds controlled and (2) tolerance of IR soybean to isoxaflutole and metribuzin applied alone and in a mixture and (3) quantify interactions between isoxaflutole and metribuzin for the control of annual grass and broadleaf weeds.

Materials and Methods

Ten field experiments were conducted over a 2-yr period (2017, 2018) at four sites near Ridgetown (two trials per year), Exeter, Ennotville, and Cambridge, Ontario. The sites were chosen to represent some common soil types found in Ontario. Soil characteristics, planting dates, and application dates are presented in Table 1. The land was conventionally tilled before planting. Regionally appropriate IR soybean cultivars were planted approximately 5-cm deep at approximately 372,500 seeds ha−1. Plots were 3.0-m wide (4 rows spaced 76 cm apart) and 8- or 10-m long.

Table 1. Soil characteristics, planting date, application dates, and rainfall of 10 field experiments in Ontario, Canada, in 2017 and 2018. a

a Abbreviations: DAA, days after application: OM, organic matter.

Treatments were arranged in a randomized complete block design, with four replications at each location. Herbicides were applied PRE using a compressed-CO2 backpack sprayer calibrated to deliver 200 L ha−1 at 240 kPa and equipped with a 1.5-m boom with four 120-02 ultra–low drift nozzles (Hypro® ULD 120-02, New Brighton, MN) spaced 50 cm apart producing a spray width of 2.0 m. One untreated and one weed-free control were included in each replicate; the weed-free control was treated with imazethapyr (100 g ai ha−1) and metribuzin (400 g ha−1) applied PRE, followed by glyphosate (900 g ae ha−1) applied POST, followed by hand weeding as needed for the remainder of the season. Herbicide treatments included isoxaflutole at 52.5, 79, and 105 g ha−1, hereafter referred to as the low, medium, and high rates of isoxaflutole, respectively; metribuzin at 210, 316, and 420 g ha−1, hereafter referred to as the low, medium, and high rates of metribuzin, respectively; and a mixture of the low, medium, and high rates of isoxaflutole and metribuzin.

Soybean injury was visually evaluated at 1, 2, and 4 wk after emergence (WAE) on a scale of 0 to 100 based on percent affected leaf area, where 0 represented no visible soybean injury and 100 represented soybean death. Weed control of naturally occurring weed species was visually estimated at 4, 8, and 12 WAA on a scale of 0 to 100, where 0 was no decrease in weed biomass relative to the weedy control and 100 was complete control (data only presented from 8 WAA). At 8 WAA, weed density and biomass were measured by counting the number of weeds, by species, from two 0.5-m2 quadrats per plot. The weeds were cut at the soil surface, placed in a paper bag by species, dried at 60 C to constant moisture, and then weighed. The center two rows of soybean were harvested with a small-plot research combine. The seed weight and moisture were recorded, and weights were adjusted to 13% moisture before analysis.

Data were analyzed in SAS software (v. 9.4; SAS Institute, Cary, NC) using PROC GLIMMIX. An initial mixed-model analysis was conducted when analyzing injury, weed control at 4 WAA, and yield to determine whether there was a significant site by treatment interaction. The fixed effects were treatment, site, and the site by treatment interaction, and the random effect was replication within site. If there was a significant site by treatment interaction, a Tukey-Kramer multiple means comparison test was performed to determine how the sites grouped. The same site groupings were used for control at 8 and 12 WAA, density, and biomass analyses. Sites were pooled for the remaining analyses if there was not a significant site by treatment interaction. A second mixed-model analysis was conducted on each group to determine treatment effects on soybean injury, visible weed control at 4, 8, and 12 WAA, weed density, biomass, and soybean yield once sites were organized into groups that responded similarly. In this second mixed-model analysis, the fixed effect was treatment, and the random effects were site, site by treatment interactions, and replication within site. An F-test was performed to test the significance of fixed effects, and a Wald test was used to test the significance of random effects. Residual plots were used to test that variances were randomly distributed, independent, and homogenous across treatments. A Shapiro-Wilk test was conducted to test the assumption that residuals were normally distributed. Natural log and arcsine square-root transformations were used when necessary to normalize data; transformed means were transformed back to the original scale for presentation of results. A Tukey-Kramer test was conducted to compare means at a confidence level of 0.05. To determine the interactions of isoxaflutole and metribuzin, Colby’s equation was used to calculate the expected injury, control, density, and biomass. The expected values were then compared with the observed values using a t-test. If the values did not differ, the interaction was considered additive; however, if there was a significant difference in the expected and observed values, the interaction was classified as antagonistic or synergistic.

Results and Discussion

Weed control was visually assessed at 4, 8, and 12 WAA; however, only the 8 WAA assessments are presented to minimize data within the article.

Soybean Injury

No soybean injury was observed at any sites in this study at 1 WAE (Table 2). Soybean leaf bleaching occurred at Site 6 at 2 WAE (Table 2). Isoxaflutole at the medium rate caused 2% bleaching injury. Isoxaflutole + metribuzin at the low, medium, and high rates caused 0%, 1%, and 2% soybean bleaching, respectively. Based on Colby’s equation, the interaction was additive. Soybean bleaching symptoms occurred at seven sites at 4 WAE (Table 2). There was a significant site by treatment interaction (data not presented); therefore, Sites 1 and 2 were combined; Sites 3, 4, 7, and 9 were combined; and Site 6 was analyzed separately. At Sites 1 and 2, isoxaflutole at the high rate caused 4% soybean injury. Isoxaflutole + metribuzin at the medium and high rates caused 3% and 5% injury, respectively. The addition of metribuzin to isoxaflutole at the medium and high rates caused a synergistic increase in soybean injury. At Sites 3, 4, 7, and 9, isoxaflutole at the low, medium, and high rates caused 1%, 4%, and 8% injury, respectively. The addition of metribuzin to isoxaflutole at the low, medium, and high rates caused a synergistic increase in soybean injury to 3%, 5%, and 10%, respectively. At Site 6, isoxaflutole at the low, medium, and high rates caused 17%, 26%, and 27% soybean bleaching, respectively. Isoxaflutole + metribuzin at the low, medium, and high rates caused a synergistic increase in soybean injury to 20%, 27%, and 34%, respectively. The higher injury at Site 6 was probably due to a large rainfall event 1 wk before the 4 WAE evaluation timing, resulting in increased herbicide absorption. No soybean injury was observed at Sites 5, 8, or 10.

Table 2. Soybean leaf-bleaching injury symptoms at 1, 2, and 4 wk after emergence (WAE) from 10 field experiments conducted in Ontario, Canada, in 2017 and 2018. a

a Means followed by the same letter within a column are not significantly different according to the Tukey-Kramer multiple range test at P = 0.05. An asterisk (*) indicates expected values significantly lower than observed value (P < 0.05) as determined by a t-test, indicating synergistic interactions of isoxaflutole + metribuzin.

b ϵ, expected value determined by Colby’s equation: E = X + Y − (XY100>), where E is the expected injury with isoxaflutole + metribuzin; and X and Y are the observed percent injury of isoxaflutole + metribuzin, respectively.

Chenopodium album

Chenopodium album was present at seven sites in this study. Due to a significant site by treatment interaction (data not presented), Site 3 was analyzed separately; Sites 5, 9, and 10 were combined; and Sites 1, 4, and 6 were combined and analyzed separately.

Isoxaflutole and metribuzin controlled C. album 26% to 76% and 1% to 26%, respectively, at Site 3 (Table 3). Isoxaflutole + metribuzin at the low, medium, and high rates controlled C. album 71% to 98%. Additive control occurred with the application of the low and medium rates of isoxaflutole + metribuzin, and a synergistic increase in C. album control occurred with the high rate of isoxaflutole + metribuzin. At Sites 5, 9, and 10, isoxaflutole and metribuzin at the three rates controlled C. album 72% to 95% and 32% to 58%, respectively. Isoxaflutole + metribuzin controlled C. album 80% to 100%. The combination of isoxaflutole + metribuzin at the medium and high rates caused a synergistic increase for C. album control. At Sites 1, 4, and 6, all treatments provided 84% to 99% control, with the exception of the low rate of metribuzin, which controlled C. album 19%. The combination of isoxaflutole + metribuzin at the low rate provided a synergistic increase in C. album control, whereas the medium and high rates had an additive interaction.

Table 3. Chenopodium album control, density, and biomass at 8 wk after application from seven field experiments conducted in Ontario, Canada, in 2017 and 2018. a

a Means followed by the same letter within a column are not significantly different according to the Tukey-Kramer multiple range test at P = 0.05. An asterisk (*) indicates expected values significantly lower than observed value (P < 0.05) as determined by a t-test, indicating synergistic interactions of isoxaflutole + metribuzin.

b ϵ, expected value determined by Colby’s equation: E = X + Y − (XY100), where E is the expected injury with isoxaflutole + metribuzin; and X and Y are the observed percent injury of isoxaflutole + metribuzin, respectively.

Isoxaflutole + metribuzin at the low rate reduced C. album density 93% at Site 3 (Table 3). No other treatment reduced C. album density compared with the untreated control or differed from the low rate of isoxaflutole + metribuzin. At Sites 5, 9, and 10, no treatment reduced C. album density compared with the untreated control. At Sites 1, 4, and 6, isoxaflutole at the low and medium rates did not reduce C. album density; the high rate reduced density 90%. Metribuzin at the low, medium, or high rate did not reduce C. album density. Isoxaflutole + metribuzin at the low, medium, and high rates reduced C. album density 93% to 98%. The coapplication of isoxaflutole + metribuzin at all sites caused an additive reduction in C. album density.

Herbicide treatments did not reduce C. album biomass at Sites 3, 5, 9, and 10 (Table 3). The high rate of isoxaflutole reduced C. album biomass 89% compared with the untreated control at Sites 1, 4, and 6. Metribuzin at the low, medium, or high rate did not reduce C. album biomass. Isoxaflutole + metribuzin at the low rate did not reduce C. album biomass; however, the medium and high rates reduced biomass 91% to 94% compared with the untreated control. Observed C. album biomass values did not differ from expected values with the combination of isoxaflutole + metribuzin; therefore, the interactions were additive.

In summary, C. album control was lowest at Site 3. This site had one of the lowest levels of rainfall of 2.7 mm 0 to 7 d after application (DAA) (Table 1). This probably reduced the amount of herbicide dissolved in the soil water solution so that it could be absorbed by C. album seedlings. The other sites where C. album was evaluated had higher levels of control. Most of these sites received >5 mm of rainfall 0 to 7 d DAA, with the exception of Site 6, which received only 0.8 mm of rainfall and had delayed weed emergence, likely because of lack of moisture. This site received 12.5 mm of rainfall within 0 to 14 DAA, allowing for the herbicides to be dissolved into the soil water solution and absorbed by the emerging weed seedlings. Similar results were reported by Sprague et al. (Reference Sprague, Kells and Penner1999): limited rainfall after application in 1 yr reduced control of C. album with isoxaflutole (79 and 105 g ai ha−1) by up to 63%. Increasing rates of isoxaflutole, metribuzin, or the mixture of isoxaflutole + metribuzin rarely resulted in a significant increase in C. album control. Bhowmik et al. (Reference Bhowmik, Kushwaha and Mirta1999) determined the effective dose of isoxaflutole to reduce C. album biomass 80% (ED80) was 13 g ai ha−1, which suggests that this species is very sensitive to isoxaflutole and would be controlled at the rates evaluated in this study. In contrast, Knezevic et al. (Reference Knezevic, Sikkema, Tardif, Hammill, Chandler and Swanton1998) determined the ED80 of isoxaflutole for C. album to be 60 to 130 g ha−1. Results in our study suggest that at sites with the highest level of C. album control (Sites 1, 4, and 6), the ED80 would be between 79 and 105 g ha−1. Generally, isoxaflutole provided greater numerical control of C. album compared with metribuzin for all site groups. The combination of isoxaflutole + metribuzin had additive or synergistic interactions for C. album control and reduction in density or biomass. The combination of isoxaflutole + metribuzin rarely provided a higher level of C. album control compared with isoxaflutole or metribuzin alone at any rate. However, 100% control was only obtained at Sites 5, 9, and 10 at 8 WAA with isoxaflutole + metribuzin at the high rate. This suggests that, at most sites, C. album seeds would be returned to the soil seedbank and contribute to weed management challenges in subsequent years if weeds were not controlled by other strategies during the same season. Chenopodium album is controlled >95% after application of isoxaflutole + metribuzin at the low, medium, or high rate when the herbicide is sufficiently activated.

Amaranthus spp

Powell amaranth (Amaranthus powellii S. Watson) and redroot pigweed (Amaranthus retroflexus L.) were combined during weed control ratings at nine sites in this study. There was a significant treatment by site interaction (data not presented), so Sites 3, 5, and 7 were analyzed independently; and Sites 1, 4, 6, 8, 9, and 10 were combined.

Isoxaflutole and metribuzin at the three rates controlled Amaranthus spp. 34% to 69% and 5% to 12%, respectively, at Site 3 (Table 4). The combination of isoxaflutole + metribuzin had an additive effect at each rate and controlled Amaranthus spp. 63% to 85%. Isoxaflutole + metribuzin at the varying rates provided 55% to 80% greater Amaranthus spp. control than metribuzin alone at the low or medium rate. Isoxaflutole and metribuzin at the three rates controlled Amaranthus spp. 44% to 80% and 22% to 61%, respectively, at Site 5. The co-application of isoxaflutole + metribuzin at the low, medium, and high rates exhibited an additive interaction controlling Amaranthus spp. 40%, 88%, and 98%, respectively. Isoxaflutole and metribuzin at the three rates controlled Amaranthus spp. 62% to 88% and 40% to 79%, respectively, at Sites 1, 4, 6, 8, 9, and 10. The combination of isoxaflutole + metribuzin at the three rates provided additive interactions and controlled Amaranthus spp. 93% to 99%. Isoxaflutole at the low, medium, and high rates controlled Amaranthus spp. 87% to 99% at Site 7. Metribuzin at the three rates controlled Amaranthus spp. 75% to 96%. Isoxaflutole + metribuzin at the low rate caused a synergistic increase in Amaranthus spp. control, whereas the medium and high rates had additive interactions, all providing 99% to 100% Amaranthus spp. control.

Table 4. Amaranthus spp. control, density, and biomass at 8 wk after application from nine field experiments conducted in Ontario, Canada, in 2017 and 2018. a

a Means followed by the same letter within a column are not significantly different according to the Tukey-Kramer multiple range test at P = 0.05. An asterisk (*) indicates expected values significantly lower than observed value (P < 0.05) as determined by a t-test, indicating synergistic interactions of isoxaflutole + metribuzin.

b ϵ, Expected value determined by Colby’s equation: E = X + Y – (XY100), where E is the expected control, density, or biomass with isoxaflutole + metribuzin; and X and Y are the observed percent control, density, or biomass of isoxaflutole and metribuzin, respectively.

Isoxaflutole + metribuzin at the high rate reduced Amaranthus spp. density 90% compared with the untreated control at Site 3 (Table 4). Each rate of isoxaflutole + metribuzin displayed an additive interaction. At Site 5, no treatment reduced Amaranthus spp. density compared with the untreated control. The combination of isoxaflutole + metribuzin interacted additively at each rate. All herbicide treatments reduced Amaranthus spp. density compared with the untreated control at Sites 1, 4, 6, 8, 9, and 10. Isoxaflutole and metribuzin at the three rates reduced density 88% to 94% and 80% to 89%, respectively. There was an additive interaction with isoxaflutole + metribuzin at each rate, and Amaranthus spp. density was reduced 95% to 99% compared with the untreated control. Isoxaflutole + metribuzin at the low rate provided an additional 15% reduction in Amaranthus spp. density compared with metribuzin at the low rate. At Site 7, every herbicide treatment reduced Amaranthus spp. density compared with the untreated control. Isoxaflutole at the low, medium, and high rates reduced Amaranthus spp. density 88%, 95%, and 99%, respectively, compared with the untreated control. Metribuzin at the three rates reduced density 91% to 98% compared with the untreated control. The combination of isoxaflutole + metribuzin at the three rates had an additive interaction and reduced density 99% compared with the untreated control.

No herbicide treatment reduced Amaranthus spp. biomass compared with the untreated control at Sites 3 and 5 (Table 4). At both sites, the combination of isoxaflutole + metribuzin produced additive interactions. At Sites 1, 4, 6, 8, 9, and 10, isoxaflutole at the three rates reduced Amaranthus spp. biomass 77% to 87%. Metribuzin at the high rate reduced Amaranthus spp. biomass 78%. The combination of isoxaflutole + metribuzin at the low and medium rates had additive interactions, and the high rate had a synergistic interaction. Isoxaflutole + metribuzin at the low, medium, and high rates reduced Amaranthus spp. biomass 83%, 92%, and 99%, respectively, compared with the untreated control. At Site 7, isoxaflutole at the low rate and metribuzin at the low and high rates did not reduce Amaranthus spp. biomass compared with the untreated control. Isoxaflutole at the medium and high rates, metribuzin at the medium rate, and isoxaflutole + metribuzin at all three rates reduced biomass 99% compared with the untreated control. The combination of isoxaflutole + metribuzin resulted in additive interactions.

In summary, there was the lowest level of Amaranthus spp. control at Site 3, followed by Site 5, Sites 1, 4, 6, 8, 9, and 10, and Site 7. We think variable control may be attributed to varying rainfall amounts after herbicide application across sites. Site 3 only received 2.7 mm of rain 0 to 7 DAA, which was lower than the other sites, except for Site 6 (Table 1). Adequate rainfall is needed for activation of many soil-applied herbicides, including isoxaflutole and metribuzin. The rainfall at Site 3 was probably insufficient to dissolve the herbicide into soil water solution so that it could be taken up by the Amaranthus spp. seedlings, resulting in reduced control. Site 6 received only 0.6 mm of rain 0 to 7 DAA; however, this was likely not enough rainfall for weed seed germination; therefore, when more rain occurred after 7 DAA, the herbicides were likely activated and absorbed by the emerging weed seedlings. Differences in levels of A. retroflexus control with isoxaflutole across sites and years have been described by Sprague et al. (Reference Sprague, Kells and Penner1999), who reported that isoxaflutole (79 g ai ha−1) controlled A. retroflexus 8% at a site with limited rainfall; in contrast, Amaranthus spp. control was 88% higher at sites that received an activating rainfall. Isoxaflutole and metribuzin applied alone at the respective rates did not differ; however, numerically, isoxaflutole usually provided better control than metribuzin. An application of isoxaflutole or metribuzin at the medium and high rates rarely increased Amaranthus spp. control. Knezevic et al. (Reference Knezevic, Sikkema, Tardif, Hammill, Chandler and Swanton1998) reported the ED90 of isoxaflutole to reduce A. retroflexus biomass was 100 g ha−1; in our study, only Site 7 had >90% reduction in biomass with isoxaflutole at the high rate (105 g ha−1). Results at Site 7 in this study are also consistent with Zhao et al. (Reference Zhao, Zuo, Li, Guo, Liu and Wang2017), who reported that A. retroflexus was controlled 92% to 95% with isoxaflutole at 100 g ha−1 at 30 DAA when 8.9 and 97.7 mm of rainfall was received 0 to 7 DAA in the 2 yr of their study. Sweat et al. (Reference Sweat, Horak, Peterson, Lloyd and Boyer1998) reported 8% greater A. retroflexus control with metribuzin at 420 g ha−1 at 28 DAA than the same treatment at Site 7 at 4 WAA in this study. At 8 WAA, mixtures of isoxaflutole + metribuzin resulted in additive interactions at Sites 3 and 5. The combination of isoxaflutole + metribuzin at the low rate usually did not provide any benefit in Amaranthus spp. control compared with isoxaflutole or metribuzin applied alone. However, in many cases, the medium and high rates of isoxaflutole + metribuzin provided enhanced Amaranthus spp. control compared with isoxaflutole or metribuzin applied alone. Isoxaflutole + metribuzin at the low, medium, and high rates provided >99% control when sufficiently activated by rainfall.

Ambrosia artemisiifolia

Ambrosia artemisiifolia was evaluated at four sites in this study. There was a significant treatment by site interaction (unpublished data); therefore, Sites 2 and 6 were analyzed separately; and Sites 1 and 4 were combined for analysis.

Isoxaflutole and metribuzin controlled A. artemisiifolia 77% to 93% and 4% to 47%, respectively, at site 2 (Table 5). An additive interaction occurred with isoxaflutole + metribuzin at all three rates and controlled A. artemisiifolia 90% to 100%. At Sites 1 and 4, isoxaflutole and metribuzin at the three rates controlled A. artemisiifolia 84% to 98% and 4% to 29%, respectively. The combination of isoxaflutole + metribuzin resulted in additive activity and controlled A. artemisiifolia 95% to 100%. Isoxaflutole + metribuzin at the low, medium, and high rates provided 66% to 96% greater control of A. artemisiifolia than metribuzin; however, this combination did not provide higher control than any rate of isoxaflutole. At site 6, isoxaflutole controlled A. artemisiifolia 97% to 100%. There was increased A. artemisiifolia control with increasing rates of metribuzin; the low, medium, and high rates controlled A. artemisiifolia 0%, 60%, and 97%, respectively. The combination of isoxaflutole + metribuzin at each rate had an additive interaction and controlled A. artemisiifolia 100%.

Table 5. Ambrosia artemisiifolia control, density, and biomass at 8 wk after application from four field experiments conducted in Ontario, Canada, in 2017 and 2018. a

a Means followed by the same letter within a column are not significantly different according to the Tukey-Kramer multiple range test at P = 0.05.

b ϵ, expected value determined by Colby’s equation: E = X + Y – (XY100), where E is the expected control, density, or biomass with isoxaflutole + metribuzin; and X and Y are the observed percent control, density, or biomass of isoxaflutole and metribuzin, respectively.

Ambrosia artemisiifolia density was reduced 95% to 99% and 88% to 98% with all rates of isoxaflutole and isoxaflutole + metribuzin, respectively, at site 2 (Table 5). Metribuzin did not reduce A. artemisiifolia density. Similarly, at Sites 1 and 4, all rates of isoxaflutole and isoxaflutole + metribuzin reduced density compared with the untreated control; however, metribuzin was not effective. Isoxaflutole and isoxaflutole + metribuzin reduced A. artemisiifolia density 96% to 99% and 99%, respectively. At site 6, all herbicide treatments reduced A. artemisiifolia density compared with the untreated control. There were no treatment differences among the herbicides; all herbicides reduced density 94% to 99%.

The herbicide treatments evaluated did not decrease A. artemisiifolia biomass compared with the untreated control at Site 2 (Table 5). At Sites 1 and 4, all rates of isoxaflutole and isoxaflutole + metribuzin reduced A. artemisiifolia biomass 88% to 97% compared with the untreated control. In contrast, metribuzin did not reduce biomass. At Site 6, isoxaflutole at all three rates, metribuzin at the high rate, and isoxaflutole + metribuzin at all three rates reduced biomass 99% compared with the untreated control.

In summary, herbicides at site 2 provided the lowest A. artemisiifolia control; greater control was achieved at Sites 1 and 4; and the highest level of control occurred at Site 6. Sites 1, 2, 4, and 6 received 35.2, 58.4, 42.6, and 84.8 mm of rain 0 to 28 DAA, respectively (Table 1). Improved A. artemisiifolia control can likely be attributed to higher levels of rainfall, especially considering the theorized “reactivation” or “recharge” activity of isoxaflutole. Isoxaflutole is stable and unavailable for uptake by plants under relatively dry conditions, because it is readily adsorbed to soil colloids. When rainfall moves isoxaflutole into soil water solution, isoxaflutole is converted into diketonitrile, a more phytotoxic metabolite, which is not as highly adsorbed by soil colloids and is more available for uptake by plants. This results in control of susceptible species after each rain event while isoxaflutole remains in the seed germination zone (Taylor-Lovell et al. Reference Taylor-Lovell, Sims, Wax and Hasset2000). Due to this phenomenon, rainfall received up to 28 DAA may be important for the control of late weed flushes and small seedling weeds. Ambrosia artemisiifolia was more susceptible to isoxaflutole at the medium and high rates than metribuzin at the low and medium rates at many of the groups of sites and evaluation timings. This finding is not surprising, as Byker et al. (Reference Byker, Van Wely, Jhala, Soltani, Robinson, Lawton and Sikkema2018) reported the ED90 for metribuzin to control GR A. artemisiifolia at 4 WAA was 824 g ha−1, which is much higher than any rate used in this study. Greater than 90% control was obtained at Site 6 with metribuzin at 420 g ha−1; the increased rainfall may have contributed to the improved control at this site. A. artemisiifolia was effectively controlled with isoxaflutole at the rates used in this study, which is corroborated by Sprague et al. (Reference Sprague, Kells and Penner1999), who reported that isoxaflutole at 79 and 105 g ha−1 controlled A. artemisiifolia >95%. The interaction for the co-application of isoxaflutole + metribuzin was mostly additive for A. artemisiifolia control, although in a few instances the interaction was synergistic. At 8 WAA, isoxaflutole + metribuzin at the high rate controlled A. artemisiifolia 100% at each group of sites, preventing any weed seed to return to the soil seedbank. However, if sufficiently activated, the low, medium, or high rate of isoxaflutole + metribuzin can provide 100% control.

Abutilon theophrasti

Abutilon theophrasti was assessed at three sites in this study. There was a significant treatment by site interaction (unpublished data); therefore, Sites 2 and 3 were combined; and Site 1 was analyzed independently.

At the two site groupings, control did not differ between isoxaflutole applied alone and with the addition of metribuzin at any of the rates (Table 6). At Sites 2 and 3, isoxaflutole and isoxaflutole + metribuzin controlled A. theophrasti 82% to 99%; at Site 1, A. theophrasti control was 95% to 100%. At Sites 2 and 3, metribuzin controlled A. theophrasti 0% to 16% and did not provide control equivalent to isoxaflutole or isoxaflutole + metribuzin. At Site 1, metribuzin at the low and medium rates controlled A. theophrasti 2%; increasing the rate provided 30% greater control. At Sites 2 and 3, the high rate of isoxaflutole + metribuzin controlled A. theophrasti synergistically. All other combinations of isoxaflutole + metribuzin at either of the site groups had additive interactions.

Table 6. Abutilon theophrasti control, density, and biomass at 8 wk after application from three field experiments conducted in Ontario, Canada, in 2017 and 2018. a

a Means followed by the same letter within a column are not significantly different according to the Tukey-Kramer multiple range test at P = 0.05. An asterisk (*) indicates expected values significantly lower than observed value (P < 0.05) as determined by a t-test, indicating synergistic interactions of isoxaflutole + metribuzin.

b ϵ, expected value determined by Colby’s equation: E = X + Y – (XY100), where E is the expected control, density, or biomass with isoxaflutole + metribuzin; and X and Y are the observed percent control, density, or biomass of isoxaflutole and metribuzin, respectively.

There was no decrease in A. theophrasti density with the herbicide treatments evaluated at Sites 2 and 3 (Table 6). Isoxaflutole at the low, medium, and high rates reduced A. theophrasti density 88%, 97%, and 99%, respectively, at Site 1. Metribuzin at the three rates did not decrease A. theophrasti density compared with the untreated control. Isoxaflutole + metribuzin at the low, medium, and high rates reduced A. theophrasti density 97% to 99% compared with the untreated control.

There was no decrease in A. theophrasti biomass with the evaluated herbicide treatments compared with the untreated control, consistent with density data at Sites 2 and 3 (Table 6). Isoxaflutole at the low, medium, and high rates reduced A. theophrasti biomass 89%, 97%, and 99%, respectively, at Site 1. Metribuzin at each rate did not reduce A. theophrasti biomass compared with the untreated control. Isoxaflutole + metribuzin at the three rates reduced A. theophrasti biomass 99%.

In summary, there was similar A. theophrasti control at Sites 2 and 3 compared with Site 1. At 4 WAA (unpublished data), greater differences were seen between the two groups of sites, probably due to the rainfall received at each site from 0 to 7 DAA (Table 1). Site 1 had received 6 and 3 times more rainfall than Sites 2 and 3, respectively; however, by 8 WAA, differences in A. theophrasti control between the two groups of sites diminished, which can partially be explained by similar rainfall 0 to 28 DAA of 35.2, 46.4, and 58.4 mm at Sites 1, 2 and 3, respectively, contributing to herbicide activation and A. theophrasti control. The results from this study are consistent with Sprague et al. (Reference Sprague, Kells and Penner1999), who reported that isoxaflutole at 79 and 105 g ha−1 controlled A. theophrasti 15% and 35%, respectively, in a year that received 17 mm of rainfall 0 to 28 DAA, in comparison to 95% to 99% control with isoxaflutole at 79 and 105 g ha−1 in years with 53 to 93 mm of rainfall 0 to 28 DAA. Abutilon theophrasti is more sensitive to isoxaflutole than metribuzin. Metribuzin across all sites and assessment timings controlled A. theophrasti 0% to 32%, while isoxaflutole controlled A. theophrasti 28% to 100%. In contrast, Oliveira et al. (Reference Oliveira, Feist, Eskelsen, Scott and Knezevic2017) reported that metribuzin at 280 g ha−1 controlled A. theophrasti 97% and 96% at 40 and 60 DAA, respectively, appreciably higher control than in this study. Knezevic et al. (Reference Knezevic, Sikkema, Tardif, Hammill, Chandler and Swanton1998) determined the ED90 for isoxaflutole to reduce A. theophrasti biomass was 90 g ai ha−1. Bhowmik et al. (Reference Bhowmik, Kushwaha and Mirta1999) found the ED80 for isoxaflutole to reduce A. theophrasti biomass was only 6.1 g ha−1. Results from this study are not in agreement with results from either Knezevic et al. (Reference Knezevic, Sikkema, Tardif, Hammill, Chandler and Swanton1998) or Bhowmik et al. (Reference Bhowmik, Kushwaha and Mirta1999). At Sites 2 and 3 there was an 89% reduction in biomass with isoxaflutole at the high rate (105 g ha−1); however, these sites had relatively low pressure of A. theophrasti in comparison to Site 1, where there were larger A. theophrasti populations and the low, medium, and high rates of isoxaflutole (52.5, 79, and 105 g ha−1) reduced biomass 89%, 97%, and 99%, respectively. The combination of isoxaflutole + metribuzin resulted in mostly additive interactions; however, synergistic increases in A. theophrasti control occurred in a few instances. At Sites 2 and 3, isoxaflutole + metribuzin at the high rate consistently had synergistic responses across all evaluation timings. Mixtures of isoxaflutole + metribuzin at each rate typically provided better control than metribuzin alone at the three rates; however, control was equivalent to isoxaflutole at all three rates. Although A. theophrasti can be effectively controlled with isoxaflutole alone, it is not recommended, as other weed species are likely present in the field, and the use of two modes of action will help to delay the evolution of HR weed biotypes. Abutilon theophrasti was controlled >97% with any rate of isoxaflutole + metribuzin.

Setaria spp

Green foxtail [Setaria viridis (L.) P. Beauv.] and giant foxtail (Setaria faberi Herrm.) were combined during field evaluations at eight sites in this study. There was a significant treatment by site interaction; therefore, Sites 2, 3, 5, and 8 were combined; Sites 1, 4, and 10 were combined; and Site 6 was analyzed independently.

Isoxaflutole and metribuzin at the three rates controlled Setaria spp. 24% to 52% and 5% to 25%, respectively, at Sites 2, 3, 5, and 8 (Table 7). The combination of isoxaflutole + metribuzin at the low rate resulted in a synergistic increase in Setaria spp. control, while the medium and high rates had an additive interaction. Isoxaflutole + metribuzin at the low, medium, and high rates controlled Setaria spp. 53% to 76%. Isoxaflutole and metribuzin controlled Setaria spp. 58% to 79% and 36% to 50%, respectively, at Sites 1, 4, and 10. Combinations of isoxaflutole + metribuzin at the low and medium rates had additive control of Setaria spp., and the high rate had a synergistic interaction. Isoxaflutole + metribuzin at the three rates controlled Setaria spp. 78% to 96%. At Site 6, isoxaflutole at the low, medium, and high rates controlled Setaria spp. 33%, 76%, and 83%, respectively. Metribuzin at the low, medium, and high rates controlled Setaria spp. 25%, 55%, and 96%, respectively. The co-application of isoxaflutole + metribuzin at the low and medium rates resulted in a synergistic increase in Setaria spp. control; there was an additive interaction at the high rate. The three rates of isoxaflutole + metribuzin controlled Setaria spp. 96% to 100%.

Table 7. Setaria spp. control, density, and biomass at 8 wk after application from eight field experiments conducted in Ontario, Canada, in 2017 and 2018. a

a Means followed by the same letter within a column are not significantly different according to the Tukey-Kramer multiple range test at P = 0.05. An asterisk (*) indicates expected values significantly lower than observed value (P < 0.05) as determined by a t-test, indicating synergistic interactions of isoxaflutole + metribuzin.

b ϵ, expected value determined by Colby’s equation: E = X + Y – (XY100), where E is the expected control, density, or biomass with isoxaflutole + metribuzin; and X and Y are the observed percent control, density, or biomass of isoxaflutole and metribuzin, respectively.

Isoxaflutole at the low and medium rates did not reduce Setaria spp. density relative to the untreated control; isoxaflutole at the high rate reduced density 75% at Sites 2, 3, 5, and 8 (Table 7). Metribuzin did not reduce Setaria spp. density. Isoxaflutole + metribuzin at the low rate did not reduce Setaria spp. density; however, the medium and high rates reduced density 77% to 81%. Isoxaflutole + metribuzin at the high rate was the only treatment that reduced Setaria spp. density compared with the untreated control; this treatment reduced density 91% at Sites 1, 4, and 10. Isoxaflutole and metribuzin at the low, medium, and high rates reduced foxtail density 80% to 94% and 87% to 97%, respectively, at Site 6. Isoxaflutole + metribuzin at the three rates reduced Setaria spp. density 99%, and control was greater than at any rate of isoxaflutole and metribuzin.

Isoxaflutole at the low and medium rates did not reduce Setaria spp. biomass; the high rate reduced biomass 79% compared with the untreated control at Sites 2, 3, 5, and 8 (Table 7). Metribuzin at the three rates did not reduce biomass compared with the untreated control. Isoxaflutole + metribuzin at the low rate did not reduce Setaria spp. biomass; however, the medium and high rates reduced Setaria spp. biomass 75% to 88%. The co-application of isoxaflutole + metribuzin at the low and high rates resulted in an additive reduction in biomass; the medium rate had a synergistic interaction. No herbicide treatment reduced Setaria spp. biomass compared with the untreated control at Sites 1, 4, and 10. The combination of isoxaflutole + metribuzin at the medium rate caused a synergistic interaction, whereas the low and high rates had an additive interaction. At Site 6, isoxaflutole at the low rate did not reduce biomass compared with the untreated control. Isoxaflutole at the medium and high rates decreased Setaria spp. biomass 93% to 95% compared with the untreated control. Similarly, metribuzin at the low rate did not reduce biomass compared with the untreated control, although the medium and high rates reduced biomass 87% to 98%. Isoxaflutole + metribuzin at the three rates reduced biomass 96% to 99% compared with the untreated control.

In summary, herbicides at Sites 2, 3, 5, and 8 provided the lowest Setaria spp. control; control increased at Sites 1, 4, and 10; and Setaria spp. control was highest at Site 6. The combined action of isoxaflutole + metribuzin resulted in additive and synergistic interactions. At Site 6, the medium and low rates effectively controlled Setaria spp. 100% for the entire season. The rainfall amount 0 to 28 DAA (Table 1) probably contributed to the variable Setaria spp. control. Sites 2, 3, 5, and 8 received an average of 39.5 mm of rainfall 0 to 28 DAA; Sites 1, 4; and 10 received an average of 53 mm; and Site 6 received 84.8 mm. Similar results were reported by Sprague et al. (Reference Sprague, Kells and Penner1999), who reported that S. faberi was controlled 23% and 48% with isoxaflutole at 79 and 105 g ha−1, respectively, in a year when only 17 mm of rainfall occurred 0 to 28 DAA compared with 77% to 89% and 84% to 87% control with isoxaflutole at 79 and 105 g ha−1, respectively, in years when 53 to 93 mm of rainfall occurred 0 to 28 DAA. Interestingly, Johnson et al. (Reference Johnson, Chahal and Regehr2012) reported up to 53% reduction in S. faberi control when conditions were wet after planting, which may have been due to herbicide dilution from surface runoff. In addition to rainfall, Setaria spp. density may have had an impact on Setaria spp. control. Sites 1, 4, and 10, which on average had the lowest Setaria spp. density, had higher levels of control with isoxaflutole at the low rate compared with the other groups of sites with the same treatment. Setaria spp. populations of more than 100 plants m−2 may have been too dense for isoxaflutole at the low rate to control effectively. When sufficiently activated by rainfall, isoxaflutole + metribuzin at the medium and high rates can control Setaria spp. >91%.

Echinochloa crus-galli

Echinochloa crus-galli was evaluated at seven sites in this study. There was a significant treatment by site interaction (unpublished data); therefore Sites 1, 2, 5, and 8 were combined; and Sites 4, 6, and 10 were combined for analysis.

Isoxaflutole at the low, medium, and high rates controlled E. crus-galli 37%, 71%, and 89%, respectively, at Sites 1, 2, 5, and 8 (Table 8). Metribuzin at the three rates controlled E. crus-galli 14% to 48%. The co-application of isoxaflutole + metribuzin at the low rate resulted in a synergistic increase in E. crus-galli control; the medium and high rates had an additive interaction. Isoxaflutole + metribuzin at the three rates controlled E. crus-galli 83% to 95%. At Sites 4, 6, and 10, isoxaflutole and metribuzin at the three rates controlled E. crus-galli 53% to 87% and 32% to 62%, respectively. The co-application of isoxaflutole + metribuzin at the three rates had additive interactions and controlled E. crus-galli 83% to 98%.

Table 8. Echinochloa crus-galli control, density, and biomass at 8 wk after application from seven field experiments conducted in Ontario, Canada, in 2017 and 2018. a

a Means followed by the same letter within a column are not significantly different according to the Tukey-Kramer multiple range test at P = 0.05. An asterisk (*) indicates expected values significantly lower than observed value (P < 0.05) as determined by a t-test, indicating synergistic interactions of isoxaflutole + metribuzin.

b ϵ, expected value determined by Colby’s equation E = X + Y – (XY100), where E is the expected control, density, or biomass with isoxaflutole + metribuzin; and X and Y are the observed percent control, density, or biomass of isoxaflutole and metribuzin, respectively.

In summary, Sites 1, 2, 5, and 8 had lower E. crus-galli control than Sites 4, 6, and 10. On average Sites 1, 2, 5, and 8 received 42.5 mm of rainfall 0 to 28 DAA, whereas Sites 4, 6, and 10 received 61.8 mm on average. The higher level of control at Sites 4, 6, and 10 was probably a result of more rainfall. Metribuzin alone at the three rates suppressed E. crus-galli, providing up to 71% control across all rates and evaluation timings. Oliveira et al. (Reference Oliveira, Feist, Eskelsen, Scott and Knezevic2017) reported metribuzin (280 g ha−1) controlled E. crus-galli 73%, which is much higher than the maximum control of 39% with metribuzin at 315 g ha−1 in this study. Isoxaflutole at the low, medium, and high rates controlled E. crus-galli up to 70%, 83%, and 89%, respectively. In contrast, isoxaflutole at 72 g ha−1 controlled 99% of E. crus-galli (Bhowmik et al. Reference Bhowmik, Kushwaha and Mirta1999), which is higher than the control obtained in this study. Different results were also reported by Meyer et al. (Reference Meyer, Norsworthy, Young, Steckel, Bradley, Johnson, Loux, Davis, Kruger and Bararpour2016), who noted that isoxaflutole (100 g ha−1) controlled E. crus-galli 99% at 4 WAA; however, at 7 WAA, E. crus-galli control had decreased to 75% with the same treatment. The same study also found a 9% reduction in control over the same time period with application of isoxaflutole + metribuzin (100 + 414 g ai ha−1). There was no appreciable decrease in E. crus-galli control over time in this study. Additive and synergistic interactions occurred with the application of isoxaflutole + metribuzin. The mixture at the high rate provided the best control and had improved control compared with metribuzin at the low and medium rates. In contrast, isoxaflutole and metribuzin applied alone at the high rates generally provided control equivalent to that of the mixtures. Echinochloa crus-galli can be controlled >95% with isoxaflutole + metribuzin at the medium and high rates when sufficiently activated by rainfall.

Panicum capillare

Panicum capillare was assessed at four sites in this study. A significant treatment by site interaction occurred (unpublished data); therefore, Site 8 was analyzed independently; and Sites 7, 9, and 10 were combined.

Isoxaflutole and metribuzin at the various rates controlled P. capillare 61% to 91% and 47% to 88%, respectively, at Site 8 (Table 9). The mixtures of isoxaflutole + metribuzin resulted in additive control of P. capillare at each rate and provided 98% to 99% control. At Sites 7, 9, and 10, isoxaflutole and metribuzin at the three rates controlled P. capillare 76% to 98% and 81% to 99%, respectively. The mixtures of isoxaflutole + metribuzin at the three rates resulted in an additive interaction and controlled P. capillare 98% to 100%.

Table 9. Panicum capillare control, density, and biomass at 8 wk after application from four field experiments conducted in Ontario, Canada, in 2017 and 2018. a

a Means followed by the same letter within a column are not significantly different according to the Tukey-Kramer multiple range test at P = 0.05. An asterisk (*) indicates expected values significantly lower than observed value (P < 0.05) as determined by a t-test, indicating synergistic interactions of isoxaflutole + metribuzin.

b ϵ, expected value determined by Colby’s equation: E = X + Y – (XY100), where E is the expected control, density, or biomass with isoxaflutole + metribuzin; and X and Y are the observed percent control, density, or biomass of isoxaflutole and metribuzin, respectively.

Herbicide treatments did not reduce P. capillare density relative to the untreated control at Site 8 (Table 9). At Sites 7, 9, and 10, the three rates of isoxaflutole did not reduce P. capillare density compared with the untreated control. Metribuzin at the low and medium rates did not reduce P. capillare density; however, the high rate reduced P. capillare density 96%. The combination of isoxaflutole + metribuzin at the low rate had a synergistic reduction in P. capillare density, whereas the medium and high rates had an additive response. Isoxaflutole + metribuzin at the low, medium, and high rates reduced P. capillare density 94% to 99% compared with the untreated control.

There were no differences in P. capillare biomass among the treatments at Site 8 (Table 9). Isoxaflutole at the low, medium, and high rates did not reduce P. capillare biomass compared with the untreated control at Sites 7, 9, and 10. Metribuzin at the low rate did not affect P. capillare biomass; however, the medium and high rates reduced P. capillare biomass 94% to 98%. Similarly, isoxaflutole + metribuzin at the low rate did not reduce P. capillare biomass; isoxaflutole + metribuzin at the medium and high rates reduced P. capillare biomass 99%.

In summary, at Site 8, isoxaflutole and metribuzin controlled P. capillare less than at Sites 7, 9, and 10. Site 8 received 48.2 mm of rainfall 0 to 28 DAA, which was lower than the rainfall at Sites 7, 9, and 10, which received 114, 70.5, and 58 mm of rain, respectively. The lower rainfall at site 7 probably limited the control of P. capillare by isoxaflutole and metribuzin. At Site 8, there was a large increase in control from 4 WAA to 8 WAA; this was probably due to reactivation of isoxaflutole during the 21 to 28 DAA time frame, as injury symptoms would not have shown up at the 4 WAA evaluations. Additionally, the increase in control was probably due to competition with other weed species and soybean, as control with metribuzin also increased during this time period. At Sites 7, 9, and 10, P. capillare control ranged from 62% to 98% across the three rates and assessment timings. A study by DeCauwer et al. (Reference DeCauwer, Geeroms, Claerhout, Bulcke and Reheul2014) determined the ED90 of isoxaflutole applied POST was 231.2 ± 84.68 g ha−1. In this study, >90% control was achieved with isoxaflutole at 105 g ha−1, suggesting the ED90 is lower than reported in DeCauwer et al. (Reference DeCauwer, Geeroms, Claerhout, Bulcke and Reheul2014). The combination of isoxaflutole + metribuzin resulted in mostly additive interactions, with the exception of a synergistic response at the 4 WAA evaluation timing at both groups of sites. Panicum capillare can be controlled >98% with isoxaflutole + metribuzin at any rate.

Soybean Yield

There was a significant site by treatment interaction (data not presented) for yield; therefore, yield at Sites 9 and 10 were analyzed independently; Sites 1, 3, and 6 were combined; Sites 2, 4, 5, and 7 were combined; and Site 8 was analyzed independently.

Weed interference reduced soybean yield 76% at Site 10. Weed interference with isoxaflutole at the low, medium, and high rates reduced soybean yield 60%, 55%, and 42%, respectively; the low rate results did not differ from those of the untreated control (Table 10). At Site 9, soybean yield in the weed-free control was 1100 kg ha−1 higher than in the untreated control. Treatments did not differ from untreated control, with soybeans yields reduced 18% to 24%. At Sites 1, 3, and 6, weed interference reduced soybean yield 29%. Reduced weed interference with isoxaflutole and isoxaflutole + metribuzin at all three rates resulted in soybean yield that was similar to that of the weed-free control. At Sites 2, 4, 5, and 7, weed interference reduced soybean yield 33%. Weed interference with metribuzin at the low, medium, and high rates reduced soybean yield 27%, 23%, and 19%, respectively. Weed interference with isoxaflutole + metribuzin and isoxaflutole at the medium and high rates had reduced weed interference, which resulted in soybean yield that was similar to that of the weed-free control. At Site 8, weed interference reduced soybean yield 32%. Weed interference with isoxaflutole at the low, medium, and high rates reduced soybean yield 25%, 15%, and 18%, respectively. Weed interference with metribuzin at the low, medium, and high rates reduced soybean yield 28%, 26%, and 20%, respectively. Weed interference with isoxaflutole + metribuzin at the low, medium, and high rates reduced soybean yield 20%, 14%, and 18%, respectively. No treatment provided control similar to that of the weed-free control.

Table 10. Soybean yield from 10 field experiments in Ontario, Canada, conducted in 2017 and 2018. a

a Means followed by the same letter within a column are not significantly different according to the Tukey-Kramer multiple range test at P = 0.05.

In conclusion, isoxaflutole applied PRE at the low, medium, and high rates provided >85% control of C. album, Amaranthus spp., A. artemisiifolia, and A. theophrasti and >70% control of E. crus-galli and P. capillare at 12 WAA at sites where sufficient rainfall for activation occurred after application. Isoxaflutole at the low rate controlled Setaria spp. <66%; however, the medium and high rates provided >72% control at 12 WAA when sufficient rainfall for activation occurred. Metribuzin at the low, medium, and high rates had the potential to control Amaranthus spp. and P. capillare >81% at 12 WAA at sites that received an activating rainfall. The medium and high rates were required to control C. album and Setaria spp. >75% at 12 WAA at sites where an activating rainfall had occurred after application. Metribuzin at the high rate was required for >71% control of A. artemisiifolia and E. crus-galli at 12 WAA at sites where an activating rainfall had occurred after application. Metribuzin at the low, medium, and high rates did not control A. theophrasti. When adequate rainfall was received after application, isoxaflutole + metribuzin co-applied at the low, medium, and high rates provided >91% control of C. album, Amaranthus spp., A. artemisiifolia, A. theophrasti, Setaria spp., and P. capillare at 12 WAA. Isoxaflutole + metribuzin at the low rate controlled E. crus-galli up to 81%; however, the medium and high rates provided up to 96% and 99% control, respectively, at 12 WAA when the herbicides had been activated by rainfall after application. Control of every species was reduced at sites where there was a lack of adequate rainfall for herbicide activation, which included Sites 1, 2, 3, 5, and 8.

The mixture of isoxaflutole + metribuzin generally provided additive control of each weed species evaluated. A synergistic interaction for weed control occurred several times in this study, when the observed control was greater than the expected. Synergism can increase the spectrum of weeds controlled and improve the level of control. In this study, a synergistic increase in weed control was observed when isoxaflutole + metribuzin provided an increase in grass control, especially Setaria spp. For example, at Site 6, isoxaflutole and metribuzin at the low rate controlled Setaria spp. 8% and 0%, respectively, at 4 WAA; however, the combination of the two herbicides provided 93% control. Herbicide synergism benefits crop producers by increasing the spectrum of weeds controlled, increasing the level of weed control, decreasing weed interference, and increasing crop yield and net returns. In addition, the co-application of synergistic herbicides may be a cost-saving measure, as fewer herbicides passes in the field are required when herbicides are mixed, thus reducing time, labor, and equipment costs. Caution should be used when applying low herbicide rates, as sublethal doses have been shown to increase the evolution of HR weeds (Powles and Busi Reference Powles and Busi2009). Alternatively, application of synergistic herbicides with multiple effective modes of action can be used as a tool to help prevent the selection of resistant biotypes.

Author ORCIDs

Nader Soltani, https://orcid.org/0000-0001-8687-4371

Acknowledgments

The authors gratefully acknowledge Christy Shropshire, Lynette Brown, and Todd Cowan for their technical contributions to this project. Funding for this project was provided in part by the Ontario Centre of Excellence (OCE) and Bayer CropScience Canada Inc. No conflicts of interest have been declared.

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Figure 0

Table 1. Soil characteristics, planting date, application dates, and rainfall of 10 field experiments in Ontario, Canada, in 2017 and 2018.a

Figure 1

Table 2. Soybean leaf-bleaching injury symptoms at 1, 2, and 4 wk after emergence (WAE) from 10 field experiments conducted in Ontario, Canada, in 2017 and 2018.a

Figure 2

Table 3. Chenopodium album control, density, and biomass at 8 wk after application from seven field experiments conducted in Ontario, Canada, in 2017 and 2018.a

Figure 3

Table 4. Amaranthus spp. control, density, and biomass at 8 wk after application from nine field experiments conducted in Ontario, Canada, in 2017 and 2018.a

Figure 4

Table 5. Ambrosia artemisiifolia control, density, and biomass at 8 wk after application from four field experiments conducted in Ontario, Canada, in 2017 and 2018.a

Figure 5

Table 6. Abutilon theophrasti control, density, and biomass at 8 wk after application from three field experiments conducted in Ontario, Canada, in 2017 and 2018.a

Figure 6

Table 7. Setaria spp. control, density, and biomass at 8 wk after application from eight field experiments conducted in Ontario, Canada, in 2017 and 2018.a

Figure 7

Table 8. Echinochloa crus-galli control, density, and biomass at 8 wk after application from seven field experiments conducted in Ontario, Canada, in 2017 and 2018.a

Figure 8

Table 9. Panicum capillare control, density, and biomass at 8 wk after application from four field experiments conducted in Ontario, Canada, in 2017 and 2018.a

Figure 9

Table 10. Soybean yield from 10 field experiments in Ontario, Canada, conducted in 2017 and 2018.a