The amount of pod yield produced per field is a primary factor in determining the value of a load of farmer stock peanut ( Arachis hypogaea L.). Increasing pod yield potential continues to be a focus of current peanut breeding programs as reflected by the 130 to 200% gain in pod yield from 1967 to 2017 ( Chamberlin 2019, Holbrook 2019). Where contract and seed availability allow for choices among different cultivars, decisions on cultivar selection regularly consider their potential for favorable yield production. Among grade characteristics for Segregation I loads of farmers’ stock peanut under current USDA grading schedules, total sound mature kernel (TSMK) content has the greatest premium: approximately 3.5 and 13.9 times that of other and extra large kernels, respectively ( USDA FSA 2020). Consequently, cultivars with increased TSMK at a given yield level represent a greater potential value. Recently released cultivars are frequently compared to previously-released standards for context of yield and grade performance; however, limitations in availability of or access to this data (i.e., when results from only one or two experiments are considered) leaves uncertainty regarding the consistency of yield production potential over multiple growing seasons. The objective of this study was to examine pod yield production in South Carolina for runner and Virginia market type peanut cultivars among experiments conducted from 2015 to 2020. Corresponding TSMK content was additionally examined.
Materials and Methods
Data from over 50 experiments conducted in South Carolina from 2015 to 2020 were examined for meeting selection criteria to be included in the analysis. Experiments were conducted at the Edisto Research and Education Center (33.364N, -81.329E on Barnwell loamy sand: fine-loamy, kaolinitic, thermic Typic Kanhapludults) and the Pee Dee Research and Education Center (34.289N, -79.738E on Norfolk loamy sand: fine-loamy, kaolinitic, thermic Typic Kandiudults) in Blackville and Florence, SC, respectively. Harvested plot size was generally two rows on 96-cm centers by 12-m in length. Viable studies each needed to have been conducted with a minimum of two cultivars, report pod yield (or TSMK) for each cultivar, and contain the necessary information to calculate the sampling variance per study ( Madden and Paul 2011, Paul et al. 2008 ). Studies needed to be reasonably free of observed confounding factors (e.g., excessive animal feeding or water damage at harvest) that might otherwise interfere with the integrity of reported yield data. Following screening, peanut yield data were compiled from 24 and 27 field experiments conducted between 2015 and 2020 for runner and Virginia type cultivars, respectively ( Table 1). Total sound mature kernels data was compiled from 18 field experiments for both runner and Virginia type cultivars. After study-level screening, cultivars needed to be represented in a minimum of three experiments to be included in the analysis. Within individual experiments, peanut was managed based on Extension recommendations ( Anco et al. 2021) and inverted near physiological maturity ( Boote 1982) within a reasonable period of time for the trial. Yield was measured using a Hobbs two-row combine fitted with a load cell basket and standardized to 10% moisture. Proportion TSMK was determined according to USDA standards ( USDA AMS 2019).
Log pod yield (kg/ha) data were analyzed using the GLIMMIX procedure in SAS (SAS 9.4, Cary, NC) according to a two-stage multitreatment unconditional network meta-analysis ( Madden et al. 2016 , Piepho et al. 2012 ). Cultivar was included in the model as a fixed effect, and study estimates were weighted per the inverse of their respective study sampling variance. Random effects included study and the interaction of cultivar and study, with the residual error term held at 1 ( Madden et al. 2016 ). Runner and Virginia market type data were analyzed separately. Estimated mean pod yield production per cultivar was separated according to Fisher’s protected LSD at the 0.05 probability level. Proportion TSMK was analyzed according to a single-stage analysis on the raw data including random effects for study and its individual interactions with replication and cultivar, the latter of which was fitted with a first-order factor analytical covariance structure ( Madden et al. 2016 ).
Results and Discussion
Among runner type peanut, yield significantly varied among cultivars at P < 0.0001. Estimated variance terms for study and the interaction of study and cultivar were 0.0321 (SE = 0.00971) and 0.00299 (SE = 0.000544), respectively. Cultivars in the top statistical grouping for pod yield included Georgia-16HO, FloRun 331, TUFRunner 297, and Georgia-12Y ( Table 2, > 5970 kg/ha). Among these four cultivars, only Georgia-12Y exhibits normal oleic acid levels. Pod yield production for FloRun 331 above that of Georgia-06G was slightly greater in this study compared to that reported by Tillman (2021) (740 versus 570 kg/ha, respectively). The analogous comparison between pod yield of TUFRunner 297 and Georgia-06 was similarly evident (690 compared to 380 kg/ha, respectively) ( Tillman 2018). Georgia-16HO yield production in the present study was comparable to that reported by Branch (2017) (6240 versus 6180 kg/ha, respectively), whereas yields of Georgia-09B and FloRun 107 in that same study (5910 and 5650 kg/ha, respectively) were reported to be greater than corresponding amounts from this study (5450 and 4980 kg/ha, respectively).
Pod yield was significantly different among Virginia type cultivars at P < 0.0001. Estimated variance terms for study and the interaction of study and cultivar were 0.0338 (SE = 0.00997) and 0.00202 (SE = 0.000681), respectively. Cultivars in the top statistical grouping for pod yield included Walton and Bailey II ( Table 3, > 5270 kg/ha). With the exception of Contender and Sugg, all remaining cultivars were included in the second-greatest yielding group. Within the examined data, pod yield of Bailey II was comparable to Bailey. Bailey has long been a preferred Virginia type cultivar to plant in SC for its high yield production, relatively small seed size among Virginia type cultivars, and historical disease resistance package ( Anco et al. 2021 ), and its pending industry replacement by Bailey II in the Virginia-Carolinas Region, in part due to the presence of the high-oleic trait in the latter cultivar, will provide farmers with a cultivar that performs as good or better with respect to pod yield production. In South Carolina, Contender exhibited a high degree of susceptibility to infection by tomato spotted wilt ( Anco et al. 2021 ). Thus, although recommendations were followed to reduce development of tomato spotted wilt during these experiments ( Anco et al. 2020 , 2021, Kemerait et al. 2018 ), the greater susceptibility of Contender compared to other Virginia type cultivars could have contributed to a relatively lower realized yield at harvest.
Runner type peanut TSMK was significantly different among cultivars at P < 0.0001 and was greatest for Georgia-16HO and Georgia-06G (71 to 72%), followed by TUFRunner 297, Georgia-14N, TUFRunner 511, and Georgia-18RU (70 to 71%) ( Table 4). Virginia type cultivars did not significantly vary with respect to TSMK (P = 0.1172), ranging from 65 to 67% ( Table 5). For context, a 2% increase in TSMK roughly corresponds to a 112 kg/ha increase in pod yield ( Kirk et al. 2021 ; USDA FSA 2020), illustrating the greater impact increased production of pod yield has on economic value compared to TSMK content.
Summary and Conclusions
Due to the current structure of the peanut industry, the potential for an individual cultivar to produce competitive or favorable amounts of pod yield and TSMK continues to be a desirable trait. This study presents quantitative data comparing the pod yield production and TSMK content of several common cultivars for runner and Virginia market type peanut grown in SC from 2015 to 2020. Farmers may consider these results alongside individual production needs (e.g., disease resistance package, cultivar maturity length, and presence of high-oleic chemistry trait) when selecting cultivars for production.
Support for this work was provided by the South Carolina Peanut Board, the National Peanut Board, and Georgia Seed Development. Technical Contribution No. 7007 of the Clemson University Experiment Station. This material is based upon work supported by NIFA/USDA, under project number SC-1700592.
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- First and second authors: Associate Professor and Agriculture and Animal Associate II, Edisto Research and Education Center, Clemson University, Blackville, SC 29817. [^] Corresponding author’s E-mail: firstname.lastname@example.org