Abstract
Bovine respiratory disease (BRD) is a common endemic disease among North American feedlot cattle. BRD can lead to significant economic losses for individual beef cattle feedlot producers through mortality and morbidity. With promising new management and technology research that could reduce BRD prevalence, this study evaluates the potential impacts of a reduction of BRD in the US beef cattle feedlot sector. Using a multi-market, multi-commodity partial equilibrium economic model of the US agricultural industry, we evaluate the market impacts of reduced BRD to producers from various livestock, meat, and feedstuffs industries. We find that as morbidity and mortality is reduced, beef cattle producers experience losses due to increased supplies (lower beef cattle prices) and increased demand for feedstuff (higher feedstuff prices). Beef cattle processors see gains as the price of beef cattle is lower, whereas feedstuff producers gain from higher feedstuff prices. Producers in the allied industries (pork, lamb, poultry, and eggs) see a small reduction in returns as consumers substitute with less expensive beef products. Consumers see gains in welfare as the increase in beef cattle supply results in lower beef prices. These lower beef prices more than offset the small increases in pork, lamb, poultry, and egg prices. Overall, the potential economic welfare change due to management and technologies that reduce BRD is a net gain for the US society as a whole.
Keywords: bovine respiratory disease, feedlot, partial equilibrium model, reduce disease prevalence, United States
Introduction
Bovine respiratory disease (BRD) is endemic and one of the most common and costly diseases in commercial North American feedlots (1). The United States (US) beef industry has several endemic diseases like BRD that exhibit low mortality rates and morbidity rates with wider spread effects on production. BRD is a general term that covers upper and lower respiratory diseases in cattle caused by stress, viral infection, and/or bacterial infection (2).
The National Animal Health Monitoring System’s (NAHMS) Beef Feedlot 2011 study found that an estimated 21.2% of beef cattle (2.29 million) placed in feedlots were affected by respiratory disease (3). BRD is responsible for approximately 45–55% of all deaths in the feedlot (4). The NAHMS Beef Feedlot 2011 Study (5) reports that the direct cost of treatment of respiratory disease in feedlot cattle is USD $23.60 per case, which is nearly double the reported nominal cost in 1999 (USD $12.59 per case). The total cost for treating 2.29 million cattle for respiratory disease is, therefore, estimated to be USD $54.12 million, not including production losses due to morbidity and mortality.
Objective
This research estimates the potential economic impact of reducing BRD in US beef cattle feedlots. This study expands on previous research by focusing on the reduction of an endemic disease rather than a foreign disease.
Background
Over the last 33 years, a vast amount of research has focused on BRD (6). Topics range from prevention to vaccination strategies, including risk factors. BRD is a complex multi-factorial disease caused by interactions between infectious agents (e.g., viruses, bacteria, and/or parasites), environmental factors (e.g., transportation, temperature fluctuations, and ventilation), and host characteristics (e.g., immune status, genetics, and age). The clinical signs of BRD include difficulty breathing, nasal discharge, depression, fever over 40°C, and diminished or no appetite. In addition to feedlot cattle, recently weaned calves, nursing beef calves, housed dairy calves, and lactating dairy cows with lung infections that cause pneumonia are at higher risk for BRD (7).
Since stress is a factor that increases the risk of BRD, preconditioning was introduced in 1967 as a means to reduce stress (7). Central components of preconditioning include low-stress weaning, weaning several days to weeks in advance of sale, administration of clostridial vaccines, administration of vaccines for respiratory viruses and bacteria, dehorning and castration with more healing time prior to sale, and training calves to bunk feed. Other prevention methods include nutrition analysis and metaphylactic treatment.
Antimicrobials are commonly used in treating cattle with BRD. Cattle are often treated up to three times before being labeled chronically ill with the disease and thus culled from the herd or being sorted into a separate pen for feeding and monitoring.
Prevalence estimates of BRD in cattle have been a topic of research in region-specific studies (8–11) as well as for the entire United States (3, 12). The NAHMS Beef Feedlot 2011 Study reports that 97.0% of feedlots in the United States are affected by BRD (3). Within those affected feedlots, 21.2% of cattle less than 317.5 kg when placed1 are infected with respiratory disease and 89.6% of those cattle receive treatment. According to the NAHMS Beef Feedlot 2011 Study, the mortality rate for all feedlot cattle affected by BRD is 1.12% (3).
The NAHMS Beef Feedlot 2011 Study did not collect production performance information from cattle in the treated and recovered categories. Thus, previous literature is used here to provide estimates of the production differences between cattle never treated for BRD, treated once for BRD, and treated two or more times for BRD2 (13–26). All of the studies reviewed that contain a discussion on the economics of BRD cite negative impacts on common performance parameters such as feed conversion efficiency (% change in unit of feed for 0.45 kg of gain), change in time to market (days), average daily gain (kilograms gained per day), final body weight (kg), hot carcass weight (kg), marbling score, and quality grade. Cattle treated multiple times for BRD at the feedlot had reductions in average daily gain of up to 0.98 kg/day, reductions in hot carcass weight of up to 19.96 kg, and a reduction in marbling score of up to 28 points.
Additional information can be found in the reviewed articles on other potential economic consequences such as reductions in feed intake and direct cost of alternative types of treatments used. Some parameters, such as feed intake, are difficult to measure in individual cattle as they are housed and fed together in large pens. This management situation, in turn, affects reporting accuracy of certain economic parameters. Brooks et al. (13) reported a loss of USD $143.28 in net returns per head for chronic cattle, whereas Faber et al. (22) reported a loss of USD $57.48 per head. Some treatment cost estimates ranged from USD $2 per head (17) to USD $12.39 per head (22). Other studies have reported costs or lost value ranging from USD $15.57 per head to more than $151 per head (16, 23, 24, 26).
A number of studies have estimated the direct impact or direct costs of BRD, but no known study has evaluated the full market impacts that might occur if BRD were reduced. This study calculates the national market impacts—which includes mortality and morbidity resulting from BRD, competing products like pork and poultry, and input industries (feed and forage)—of reducing the prevalence of BRD.
Methods and Data
In this study, we use a multi-market and multi-commodity quarterly partial equilibrium model of the US agricultural industry (27). The model incorporates both vertical and horizontal linkages within livestock production and through to the final consumer, as well as international trade. In addition to livestock and meat markets, grain industries are incorporated in the model because feed is a major input into livestock production. A summary of this quarterly demand and supply model is presented next [complete documentation is provided in Ref. (27)].
Final consumer demand is modeled for 10 separate goods (beef, pork, poultry, lamb, dairy, eggs, wheat, rice, coarse grains, and soy oil). Final demand (measured as per capita consumption) depends on retail price and per capita income. Demand shocks can be introduced to the model to simulate possible changes in consumer demand associated with animal disease events. Supply of final goods is modeled for the same 10 goods. Linkages between vertical segments of the livestock production industries (separate industries include beef cattle, hogs, dairy, poultry meat, layers, and sheep and lambs) occur through derived demands for animals for slaughter (net of trade), live animal inventory, and derived demands for feedstuffs. Each production sector is modeled carefully to capture dynamic inventories, including appropriate biological quarterly lags to reflect production lags, as well as linked animal flows through the various production phases. Crop supplies are modeled for wheat, coarse grains, soybeans, rice, and forage and pasture. Overall, closure of the model requires market-clearing domestic and international trade prices and quantities. Excess demand and supply equations are used to model imports and exports. Finally, vertical market prices at farm, wholesale, and retail are modeled using margin markup equations based on U.S. Department of Agriculture (USDA) margin calculations.
The structural model of demand and supply relationships is transformed through total logarithmic differentiation to enable use of pre-defined elasticities to quantify impact estimates. All economic model parameters, substitution and trade elasticities, revenue and factor shares, and livestock-feed balance information remain constant throughout the model and are defined by Paarlberg et al. (27). Updated parameters used in our model relative to the specifications of Paarlberg et al. (27) include retail-level demand elasticities for the following: beef, pork, and poultry (28); lamb (29); and milk (30). The model assumes naive price expectations for all scenarios (31).
This economic model has been applied to various species within the livestock industries, including swine (31) and poultry (32–34). Previous research has used this and related models to estimate the market impacts of a negative exogenous shock to the supply of beef cattle in the United States due to a disease outbreak (27, 35–41). One study by Seitzinger et al. (42) evaluated the economic impact of eradicating three endemic ovine diseases in the United States. Our research is the first to model a positive exogenous supply shock to the beef industry, specifically an increase in beef production as a result of a reduction in BRD. Another feature of this study is the introduction of a shock to feed consumption, which represents increased demand for feed as morbidity declines due to the reduction of BRD.
Our study uses feedlot cattle inventory data collected by USDA-National Agricultural Statistical Service (NASS) (43) and the current estimated levels of mortality (1.12%) and morbidity (16.58%) from the NAHMS Study as a baseline for BRD disease prevalence. Figure 1 outlines data from the NAHMS Study showing the percentage of cattle affected with BRD in US beef cattle feedlots in 2011 for the following categories of affected and treated cattle: died, diagnosed as chronic, responded to treatment, retreated, cattle with missing information, and number of treatments. Among the 89.6% of affected cattle that receive a first treatment for BRD, 14.9% also receive a second treatment, and then 12% of those cattle receive a third treatment for BRD. Interestingly, Figure 1 reveals evidence to support the current production management decision to treat cattle up to three times for BRD. Of the cattle that receive a third treatment for BRD, 37.9% respond favorably to the treatment, 22.1% are diagnosed chronically ill, and 30.5% die despite the treatment. When comparing the percentage of inventory that responds to the treatment and the percentage of inventory that dies for each treatment round, industry makes the decision to stop treating cattle as the percentage that respond to treatment and percentage that die from BRD approach a similar amount of cattle (37.9 and 30.5%). Feed ratio parameters in the partial equilibrium economic model are 50% feed grains, 1.6% soybean meal, 1.4% wheat, and 47% forage. The changes in feed consumption vary by each category of feedlot cattle not affected by BRD in the BRD reduction scenario (Table 1) with those cattle not treated and recovered requiring less feed as they become more feed efficient and cattle diagnosed as chronic requiring more feed (13–26).
Table 1.
Categories of illness under baseline scenario | Feed consumption level under BRD baseline scenario, per-head (kg) | Feed consumption level under BRD reduction scenario, per-head (kg) | Change in feed consumed under BRD reduction scenario, per-head (kg) |
---|---|---|---|
Cattle not affected by BRD | 1,421.30 | 1,421.30 | 0.00 |
Cattle affected by BRD and treated once and recovered | 1,527.46 | 1,421.30 | −106.14 |
Cattle affected by BRD and treated twice and recovered | 1,585.37 | 1,421.30 | −164.20 |
Cattle affected by BRD and treated three times and recovered | 1,643.27 | 1,421.30 | −221.81 |
Cattle affected by BRD and diagnosed as chronic | 310.91 | 1,421.30 | 1,106.76 |
Sources: Literature.
BRD, bovine respiratory disease.
Scenarios
The model described above includes the baseline BRD prevalence and is referred to as the BRD baseline scenario. We compare the BRD baseline scenario to a BRD reduction scenario defined as a linear reduction of BRD prevalence, resulting in a 50% reduction at the end of 3 years (12 quarters). Hypothetical programs capable of reducing BRD could involve treatment plans, selection criteria models, the development of new vaccines and protocols, and genetic selection, among others. Management tools that incorporate historical and risk factor information (e.g., history of source herd) could be used to assist in the decision-making process when purchasing cattle or managing purchased cattle to reduce BRD. Some research has identified risk factors for developing BRD (44–46), which could inform selection or monitoring strategies (47). These could, in turn, decrease the risk of developing BRD or improve the detection time. Predictive models may prove very useful in managing BRD in feedlot cattle (48) as would technology to improve case definitions, diagnosis, and targeted antibiotic use (49). Production management practices, such as observing feeding behavior, could also be used to predict the hazard of BRD before clinical signs appear and thus accelerate treatment times (50). Wider adoption of more effective vaccination protocols (e.g., new vaccine, vaccination administration timing, animal age, and vaccination location site) can provide additional protections against BRD (51). Research in genomics to identify and select for cattle less susceptible for BRD is another promising area (52, 53).
Exogenous Shocks
Using the USDA-NASS cattle on feed inventory from 2011 and the percentage of affected cattle shown in Figure 1, the percentage of cattle on feed inventory is calculated for all cattle categories in the BRD baseline scenario (Table 2). The percentage of cattle on feed for all categories in 2011 serves as the baseline BRD prevalence level and is assumed to be the same through the following years. The BRD reduction scenario has a target reduction of 50% prevalence (21.2–10.6%) and starts in Quarter 1 2015 and ends in Quarter 4 2017.
Table 2.
Scenario/year | BRD baseline scenario 2011 | BRD baseline scenario 2011 | BRD reduction scenario Quarter 4 2017 |
---|---|---|---|
Category of cattle | Percentage of inventorya | Number of headb | Percentage of inventorya |
Cattle on feed in affected feedlots | 100.00 | 11,703,050 | 100.00 |
Cattle not affected by BRD | 78.80 | 9,222,003 | 89.40 |
Cattle affected by BRD that did not receive first treatment | 2.20 | 258,029 | 1.10 |
Cattle affected by BRD that received first treatment | 19.00 | 2,223,580 | 9.50 |
Cattle affected by BRD that responded to first treatment | 15.52 | 1,816,664 | 7.76 |
Cattle affected by BRD that received first treatment but were diagnosed as chronicc | 0.44 | 51,142 | 0.22 |
Cattle affected by BRD that received first treatment but died | 0.76 | 88,943 | 0.38 |
Cattle affected by BRD that received first treatment and second treatment | 2.83 | 331,313 | 1.42 |
Cattle affected by BRD that responded to second treatment | 1.79 | 209,059 | 0.89 |
Cattle affected by BRD that received second treatment but were diagnosed as chronic | 0.17 | 20,210 | 0.09 |
Cattle affected by BRD that received second treatment but died | 0.38 | 44,065 | 0.19 |
Cattle affected by BRD that received second treatment but no information is available | 0.16 | 18,222 | 0.08 |
Cattle affected by BRD that received third treatment | 0.34 | 39,758 | 0.17 |
Cattle affected by BRD that responded to third treatment | 0.13 | 15,068 | 0.06 |
Cattle affected by BRD that received third treatment but were diagnosed as chronic | 0.08 | 8,786 | 0.04 |
Cattle affected by BRD that received third treatment but died | 0.10 | 12,126 | 0.05 |
Cattle affected by BRD that received third treatment but no information is available | 0.03 | 3,777 | 0.02 |
aMay not add to 100% due to multiple responses or unspecified.
bMay not add to total number of head due to percentage not adding to 100.
cCattle shipped for slaughter prior to reaching normal slaughter weight.
Sources: NASS, NAHMS Beef Feedlot 2011 Study, and Paarlberg et al. (27).
BRD, bovine respiratory disease; NAHMS, National Animal Health Monitoring System; NASS, National Agricultural Statistical Service.
The BRD reduction scenario uses a linear reduction of BRD prevalence across that time period, which translates to a 4.17% prevalence reduction each quarter for 12 quarters. The linear reduction in the prevalence of BRD by 50% is achieved over 12 quarters (3 years) and maintained for 4 additional quarters (1 year). The annual cattle inventory that were affected by BRD in the BRD baseline scenario that are not affected in the BRD reduction scenario are equally dispersed across the four quarters of each year. The percentages of cattle on feed inventory for all cattle categories in the BRD reduction scenario for Quarter 4 of 2017 are also presented in Table 2.3
As a result of this hypothetical reduction of BRD prevalence, all categories of affected cattle have been reduced by 50% in the BRD reduction scenario. For comparison, the percentage of cattle on feed affected by BRD in the BRD reduction scenario is 10.6%, which is half of the amount in the BRD baseline scenario, 21.2%. The percentage of cattle not affected by BRD has increased from 78.8% to 89.4% to represent the additional proportion of cattle not affected by BRD in the BRD reduction scenario that were affected in the BRD baseline scenario. Consequently, by Quarter 4 2017 half of the cattle that were treated for BRD, diagnosed as chronic with BRD, or died from BRD in the BRD baseline scenario are not affected by BRD in the BRD reduction scenario. Essentially, the number of feedlot cattle and beef supplied to the market increases slowly each quarter as less feedlot cattle are affected by BRD.
Additionally, feedlot cattle that are treated for BRD and recovered have a lower feed efficiency compared to cattle not affected by BRD. For each quarter in the BRD reduction scenario there are fewer feedlot cattle treated for BRD, and since those cattle are now more feed efficient they require less feed to reach market weight and will go to market earlier4 than they otherwise would. Feedlot cattle diagnosed as chronic with BRD and shipped to slaughter prior to reaching market weight consume less feed compared to cattle not affected by BRD. For each quarter in the BRD reduction scenario there are fewer feedlot cattle diagnosed as chronic with BRD, and these cattle will consume more feed and go to market at a later date.
Since potential BRD reduction strategies are still under development, it is difficult to estimate their cost of implementation at the producer level, without the adoption rate and the cost of such a program on a national scale. In the absence of these costs, our research assumes that implementing such a strategy is cost-effective. This requires the marginal cost of a strategy to be less than or equal to the marginal benefit gained from it. The marginal benefit gained includes avoided costs or losses relative to current practices and decisions. Using these parameters and assumptions, the net production shock of reducing BRD prevalence is a positive shift in the supply curve (or increase in supply) for beef feedlot cattle in our model (Table 3).
Table 3.
Quarter | Change in slaughter (%) | Change in feed grain use (%) | Change in soybean meal use (%) | Change in wheat use (%) | Change in forage use (%) |
---|---|---|---|---|---|
2015-Q1 | 0.155 | 0.001 | 0.000 | 0.001 | 0.000 |
2015-Q2 | 0.309 | 0.003 | 0.000 | 0.002 | 0.001 |
2015-Q3 | 0.464 | 0.007 | 0.001 | 0.002 | 0.001 |
2015-Q4 | 0.618 | 0.002 | 0.001 | 0.003 | 0.003 |
2016-Q1 | 0.773 | 0.004 | 0.001 | 0.004 | 0.002 |
2016-Q2 | 0.927 | 0.008 | 0.001 | 0.005 | 0.002 |
2016-Q3 | 1.082 | 0.016 | 0.001 | 0.005 | 0.002 |
2016-Q4 | 1.236 | 0.005 | 0.001 | 0.007 | 0.006 |
2017-Q1 | 1.391 | 0.007 | 0.001 | 0.007 | 0.004 |
2017-Q2 | 1.545 | 0.013 | 0.002 | 0.008 | 0.003 |
2017-Q3 | 1.700 | 0.026 | 0.002 | 0.008 | 0.003 |
2017-Q4 | 1.854 | 0.007 | 0.002 | 0.010 | 0.008 |
2018-Q1 | 1.854 | 0.010 | 0.002 | 0.010 | 0.005 |
2018-Q2 | 1.854 | 0.016 | 0.002 | 0.009 | 0.003 |
2018-Q3 | 1.854 | 0.028 | 0.002 | 0.009 | 0.004 |
2018-Q4 | 1.854 | 0.007 | 0.002 | 0.010 | 0.008 |
Due to the increase in beef cattle supply (increase in feedlot cattle not affected by BRD under the BRD reduction scenario), there is a subsequent increase in demand for feedstuffs, specifically, feed grains, wheat, soybean meal, and forage. The percentage of affected cattle in Table 2 and the feed consumption changes in Table 1 are used to calculate the change in feed demand by category. The net feed consumption shock of reducing BRD prevalence for all categories of affected cattle is a small positive shift in the demand curve (or increase in demand) for feed for feedlot cattle in our model (Table 3). Feed consumption changes for cattle that died from BRD under the baseline scenario but now survive in the BRD reduction scenario are already incorporated into the model on the supply side; thus, there is no additional exogenous shock for feed consumption changes for these cattle.
The net exogenous production and feed consumption shocks in Table 3 are a percentage change in beef production or feed consumption and introduced into the partial equilibrium economic model during Quarter 1 of 2015 through Quarter 4 of 2018. To provide more clarification on how these numbers are calculated we present an example for the Quarter 1 2015 change in slaughter. A reduction in BRD prevalence of 4.17% equates to 94,419 fewer cattle treated and recovered, diagnosed as chronic, or dying. This results in a net 0.155% increase in cattle supplied when considering the cattle not affected in the BRD reduction scenario that were affected in the baseline scenario. In addition, these cattle are eating more (dead and chronic) or less (treated and recovered) feed, with a small net positive shock in feed consumption of up to 0.001% increase for the four feedstuff types. Also, notice how the change in slaughter slowly increases throughout time, starting at 0.155% and ending at 1.854% by Quarter 4 2017. This represents the increase of beef supplied to the market from the cattle that were affected by BRD in the baseline scenario that are not affected in the reduction scenario as the prevalence decreases linearly to a 50% reduction by Quarter 4 2017 and remains constant through 2018. The percentage change in feed stuff fluctuates across time as the increased demand in feed is compared to the feed supply values in the model.
Finally, we assume that domestic and international consumers would not change their consumption patterns of beef products due to the reduction in BRD prevalence. Thus, shocks to domestic demand and international trade were not incorporated into our model.
The shocks from Table 3 are added to the base demand and supply amounts in the appropriate equations for each commodity affected in each quarter. The model then resolves for market-clearing quantities and prices using the new demand or supply level for each quarter. The calculated outputs of the model highlighted in this research are the changes in returns to capital and management and the consumer welfare from reductions in BRD prevalence. The returns to capital and management are the margins producers are earning, whereas economic welfare of consumers is measured by the consumer surplus, which is the difference between what consumers are willing to pay and what they must pay for each unit consumed.
Results
The change in returns to capital and management of producers and change in consumer welfare are presented in Table 4. These changes reflect the differences in margins producers receive and consumer welfare under the BRD reduction scenario. Across the 16 quarters, beef cattle producers (beef cow-calf and feedlot producers) lose USD $4,965 million due to lower beef cattle prices and higher feedstuff costs. This dollar value does not account for the direct cost savings related to treating fewer cattle. However, the $4,965 million loss to beef cattle producers does include the following from the cattle that are not affected by BRD in the reduction scenario, but were affected in the BRD baseline scenario:
cost savings from improved feed efficiency from cattle that are not being treated,
accelerated revenue generation from cattle that are not being treated, and thus arrive at market sooner,
increased cost of feed from cattle that are not diagnosed as chronic with BRD or dying that are staying in feedlots longer to reach full market weight,
increased beef revenue from cattle that are not diagnosed as chronic with BRD arriving at market at a heavier weight,
increased beef revenue from cattle that are not dying from BRD, and
all the market price reactions to an increased demand on feedstuff and increased supply of beef.
Table 4.
Millions USD $ |
|||||
---|---|---|---|---|---|
Industry/sectors | 2015 | 2016 | 2017 | 2018 | Total |
Beef processors | $122.57 | $381.67 | $684.40 | $872.45 | $2,061.09 |
Beef cattle producers | −$300.57 | −$925.13 | −$1,644.52 | −$2,094.48 | −$4,964.70 |
Pork processors | −$0.13 | −$0.40 | −$0.60 | −$0.61 | −$1.73 |
Pork producers | −$0.74 | −$2.63 | −$4.84 | −$6.53 | −$14.73 |
Lamb processors | $0.00 | $0.00 | $0.00 | $0.00 | −$0.01 |
Lamb and sheep producers | −−$0.04 | −$0.15 | −$0.29 | −$0.43 | −$0.90 |
Chicken meat | −$0.96 | −$3.57 | −$6.23 | −$8.13 | −$18.89 |
Turkey meat | −$0.32 | −$0.91 | −$1.57 | −$1.87 | −$4.66 |
Eggs | −$0.10 | −$0.74 | −$1.49 | −$2.57 | −$4.89 |
Milk and dairy | $6.88 | $26.63 | $48.82 | $64.54 | $146.87 |
Forage | $23.91 | $67.95 | $129.76 | $186.59 | $408.20 |
Coarse grains | $2.82 | $10.10 | $21.82 | $40.01 | $74.75 |
Soybean processing | $0.10 | $0.43 | $0.84 | $1.64 | $3.01 |
Wheat | $0.31 | $0.81 | $2.03 | $3.09 | $6.24 |
Rice | $0.01 | $0.06 | $0.19 | $0.43 | $0.69 |
Total change in returns to capital and management | −$146.24 | −$445.89 | −$771.67 | −$945.86 | −$2,309.66 |
Consumer welfare | $277.87 | $809.04 | $1,397.75 | $1,705.73 | $4,190.39 |
Over the same 16 quarters, beef processors gain USD $2,061 million due to lower beef cattle prices that result from an increased supply of cattle due to the decrease in BRD prevalence. Additionally, grain and feedstuff producers benefit by USD $493 million over 16 quarters due to increased demand for feedstuffs.
Because feedstuff prices increase, dairy producers reduce dairy production resulting in increased milk prices. The increase in milk prices offset the increase in feedstuff prices resulting in a very small (0.02–0.48%) increase in returns to capital and management for dairy producers. Pork, lamb, and poultry producers all experience small losses due to increased feedstuff costs and downward pressure on live animal prices from the retail level. Pork, lamb, and poultry meat prices, as well as egg prices, decrease over the 16 quarters due to consumers substituting away from these products to beef as beef becomes relatively less expensive.
The net impact to the beef cattle industry (returns to cattle producers and beef processors) over 16 quarters is a loss of USD $2,904 million, driven predominantly by the losses of beef cattle producers. The net impact to all other industries, excluding the beef cattle industry, is a gain of USD $594 million. The total change in returns from capital and management to all producers is a loss of USD $2,310 million, whereas consumers gain USD $4,190 million in welfare across the 16 quarters, driven mainly by reduced beef prices.
Beyond 16 quarters we assume that the disease prevalence reaches a new steady state, such that the positive exogenous shocks used in the model will no longer be necessary, as they become a part of the new baseline (i.e., the exogenous supply shocks become zero). When the exogenous shocks become zero, the losses to the beef cattle industry, the gains to grains and feedstuffs, and gains to consumers will eventually reach a new long-run equilibrium.
Discussion
Bovine respiratory disease is an endemic disease and one of the most common and costly diseases in commercial North American feedlots (1). Previous estimates of the annual economic losses from death, reduced feed efficiency, and treatment cost of BRD have ranged from USD $800 to $900 million (54). Producers are currently using antibiotics to treat their cattle with BRD in hopes they will recover. Advances to improve those treatments may be met with the challenge of needing to reduce antimicrobials on livestock operations. New management tools and technologies that may reduce the prevalence of BRD are currently being discussed and explored. These options would have varied adoption rates, levels of effectiveness, time to reduce BRD prevalence, implementation costs, and aggregated benefits. Any BRD reduction program with widespread adoption in the beef cattle feedlots would result in an increase in beef produced in the United States with additional impacts on the allied industries. Therefore, better understanding of the magnitude and scope of the impacts to the beef and allied industries is needed to assist with decision making.
Using a multi-market, multi-commodity partial equilibrium model, this analysis demonstrates the possible market impacts of reducing BRD prevalence. Reducing BRD prevalence would result in increased supplies of beef cattle through lower morbidity and mortality rates. The increase in beef cattle supplies would result in an increased demand (higher prices) for feedstuffs and declines in demand (lower prices) for competing protein sources. The net effects are losses to the beef cattle industry (beef cattle producers and beef processors), positive and negative changes in returns to capital, and management for feedstuffs and allied livestock industries, respectively. A positive net impact is felt by consumers due to lower beef prices. An overall positive net societal impact would be experienced with a 50% reduction of BRD. This research highlights the tradeoffs that occur when reducing the prevalence of an endemic, low mortality disease that has negative production impacts. This information can be used to support animal health decisions made at an aggregated level, encouraging a continued focus on diseases that have a high risk of large economic losses.
Although there is a net gain between producer return to capital and management and consumer welfare changes with a reduction in BRD prevalence, individual feedlot producers are likely to be the decision makers on adopting a program that would reduce BRD prevalence in their herds. When considering the budget of a single operation, but ignoring potential market price impacts, those producers with cattle affected by BRD appear to be able to spend up to USD $23.60 per head on a program to avoid BRD and still break even (using NAHMS Beef Feedlot 2011 Study data). Spending less than USD $23.60 per head on a program to avoid BRD would appear to result in a net savings. However, this research shows that lower beef cattle prices and higher feedstuffs costs result in decreases in capital and management, and those losses will need to be considered when investing in a new prevention program. Likely, producers with BRD in their feedlots that are also early adopters may see a net gain, but as adoption rates increase the beef supplies will increase, which increases feed prices and decreases the price received for beef. It is possible that late adopters will not realize these gains (or possibly a net loss) for their efforts to reduce BRD prevalence in their feedlot. An area of future research would be investigating what types of technology and treatments should be explored, as well as measuring the true magnitude and speed of BRD reduction when these are adopted. Additional research could evaluate the economic impacts of new BRD reduction programs at the farm level and the subsequent impacts downstream.
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Author Contributions
KJ and DP have made substantial, direct, and intellectual contribution to the work and approved it for publication.
Conflict of Interest Statement
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
Acknowledgments
The authors would like to express their gratitude to Sara Ahola, Jada Thompson, Sarah Strunk, Philip Paarlberg, Ann Hillberg-Seitzinger, David Dargatz, and Tyler Cozzens for their guidance and support on this research project.
Funding. This study was funded in part by USDA APHIS Cooperative Agreement Award No.15-9200-0439-CA. The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
1The estimates for the cattle less than 317.5 kg were used instead of the all cattle or cattle over 317.5 kg estimates, because the cattle less than 317.5 kg estimates were higher and we knew that the beef production and feed shocks were going to be even smaller if we used lower percentages of cattle being affected.
2The “never treated” group could include cattle that remained healthy in the feedlot and cattle that contracted BRD, but were never treated. Therefore, it is difficult to compare these three groups and make conclusions based on economic differences.
3Due to multiple responses or unspecified data the percentage of inventory does not add up to 100% for each category of treated cattle. For the second and third treatments, this results in missing information for a small amount of cattle. Mathematically, these animals are still included in the model under the responded to treatment categories as the status of those cattle that did not not respond is still tracked to the next level of treatment.
4The cattle affected by BRD that responded to the first treatment go to market 13 days earlier, whereas cattle that responded to the second treatment go to market 21 days earlier, and cattle that responded to the third treatment go to market 29 days earlier.
Abbreviations
APHIS, Animal and Plant Health Inspection Service; BRD, bovine respiratory disease; NAHMS, National Animal Health Monitoring System; NASS, National Agricultural Statistical Service; US, United States; USDA, United States Department of Agriculture; VS, veterinary service.
References
- 1.Griffin D. Economic impact associated with respiratory disease in beef cattle. Vet Clin North Am Food Anim Pract (1997) 13:367–77. 10.1016/S0749-0720(15)30302-9 [DOI] [PubMed] [Google Scholar]
- 2.Bagley CV. Bovine Respiratory Disease. Logan: Utah State University Cooperative Extension Fact Sheet. AH/Beef/O4; (1997). [Google Scholar]
- 3.USDA–APHIS–VS: National Animal Health Monitoring System Beef Feedlot Study 2011. Part IV: Health and Health Management on U.S. Feedlots with a Capacity of 1,000 or More Head. (2013). Available from: https://www.aphis.usda.gov/animal_health/nahms/feedlot/downloads/feedlot2011/Feed11_dr_PartIV.pdf
- 4.Speer NC, Young C, Roeber D. The importance of preventing bovine respiratory disease: a beef industry review. Bovine Pr (2001) 35:189–96. [Google Scholar]
- 5.USDA–APHIS–VS: National Animal Health Monitoring System Beef Feedlot Study 2011. Types and Costs of Respiratory Disease Treatments in U.S. Feedlots. Info Sheet; (2013). Available from: https://www.aphis.usda.gov/animal_health/nahms/feedlot/downloads/feedlot2011/Feed11_is_RespDis.pdf [Google Scholar]
- 6.Fulton RW. Bovine respiratory disease research (1983–2009). Anim Health Res Rev (2009) 10(2):131–9. 10.1017/S146625230999017X [DOI] [PubMed] [Google Scholar]
- 7.Beef Cattle Research Council (BCRS). Bovine Respiratory Disease. (2016). Available from: http://www.beefresearch.ca/research-topic.cfm/bovine-respiratory-disease-38
- 8.Virtala AMK, Mechor GD, Grohn YT, Erb HN. Morbidity form nonrespiratory diseases and mortality in dairy heifers during the first three months of life. J Am Vet Med Assoc (1996) 208:2043–6. [PubMed] [Google Scholar]
- 9.Virtala AMK, Mechor GD, Grohn YT, Erb HN, Dubovi EJ. Epidemiologic and pathologic characteristics of respiratory tract disease in dairy heifers during the first three months of life. J Am Vet Med Assoc (1996) 208:2035–42. [PubMed] [Google Scholar]
- 10.Miller WM, Harkness JW, Richards MS, Pritchard DG. Epidemiological studies of calf respiratory disease in a large commercial veal unit. Res Vet Sci (1980) 28:267–74. [PubMed] [Google Scholar]
- 11.Karle BM, Dubrovsky SA, Love WJ, Williams DR, Stackhouse JW, Anderson RJ, et al. Prevalence of bovine respiratory disease in pre-weaned dairy calves in Northern California. Research Report. University of California. Agriculture and Natural Resources. Cooperative Extension; (2017). Available from: http://ceglenn.ucanr.edu/files/220637.pdf [Google Scholar]
- 12.USDA–APHIS–VS: National Animal Health Monitoring System Beef Feedlot Study 1999. Treatment of Respiratory Disease in U.S. Feedlots. Info Sheet; (2001). Available from: https://www.aphis.usda.gov/animal_health/nahms/feedlot/downloads/feedlot99/Feedlot99_is_TreatResp.pdf [Google Scholar]
- 13.Brooks KR, Raper KC, Ward CE, Holland BP, Krehbiel CR, Step DL. Economic Effects of Bovine Respiratory Disease on Feedlot Cattle during Backgrounding and Finishing Phases. Oklahoma Agricultural Experiment Station. Division of Agricultural Sciences and Natural Resources. Oklahoma State University; (2009). p. –1027. Available from: http://pods.dasnr.okstate.edu/docushare/dsweb/Get/Document-6830/P-1027%20Economic%20Effect%20of%20BRD1.pdf [Google Scholar]
- 14.Reinhardt CD, Busby WD, Corah LR. Relationship of various incoming cattle traits with feedlot performance and carcass traits. J Anim Sci (2009) 87(9):3030–42. 10.2527/jas.2008-1293 [DOI] [PubMed] [Google Scholar]
- 15.Erickson G, Bremer VR, Klopfenstein T, Smith DR, Hanford KJ, Peterson RR, et al. Relationship between morbidity and performance in feedlot cattle. 2011 Nebraska Beef Cattle Report. Published by the Agricultural Research Division, University of Nebraska Extension, Institute of Agriculture and Natural Resources, University of Nebraska-Lincoln; (2011). Available from: http://digitalcommons.unl.edu/animalscinbcr/608/ [Google Scholar]
- 16.Snowder GD, Van Vleck LD, Cundiff LV, Bennett GL. Bovine respiratory disease in feedlot cattle: environmental, genetic, and economic factors. J Anim Sci (2006) 84:1999–2008. 10.2527/jas.2006-046 [DOI] [PubMed] [Google Scholar]
- 17.Schneider MJ, Tait RG, Jr, Busby WD, Reecy JM. An evaluation of bovine respiratory disease complex in feedlot cattle: impact on performance and carcass traits using treatment records and lung lesion scores. J Anim Sci (2009) 87:1821–7. 10.2527/jas.2008-1283 [DOI] [PubMed] [Google Scholar]
- 18.Busby WD, Strohbehn DR, Beedle P, Corah LR. Effect of post-weaning health on feedlot performance and quality grade. Iowa State University Animal Industry Report 2004, Beef. A.S. Leaflet R1885. (2004). Available from: http://www.tcscf.com/Health_on_feedlot_performance.pdf
- 19.Gardner BA, Dolezal HG, Bryant LK, Owens FN, Smith RA. Health of finishing steers: effects on performance, carcass traits, and meat tenderness. J Anim Sci (1999) 77:3168–75. 10.2527/1999.77123168x [DOI] [PubMed] [Google Scholar]
- 20.Cernicchiaro N, White BJ, Renter DG, Babcock AH. Evaluation of economic and performance outcomes associated with the number of treatments after an initial diagnosis of bovine respiratory disease in commercial feeder cattle. Am J Vet Res (2013) 74(2):300–9. 10.2460/ajvr.74.2.300 [DOI] [PubMed] [Google Scholar]
- 21.Reiman M. Lung Adhesions Rob Profit. The Cattle Business Weekly; (2012). Available from: http://cattlebusinessweekly.com/main.asp?SectionID=1&SubSectionID=1&ArticleID=4688&TM=16651.86 [Google Scholar]
- 22.Faber R, Hartwig N, Busby D, BreDahl R. The costs and predictive factors of bovine respiratory disease in standardized steer tests. Beef Research Report. Iowa State University; (1999). Available from: http://www.extension.iastate.edu/Pages/ansci/beefreports/asl-1648.pdf [Google Scholar]
- 23.Smith RA. North American cattle marketing and bovine respiratory disease (BRD). Anim Health Res Rev (2009) 10(2):105–8. 10.1017/S1466252309990107 [DOI] [PubMed] [Google Scholar]
- 24.Smith RA. Effects of feedlot disease on economics, production and carcass value. In: Proceedings of the Thirty-Third Annual Conference, American Association of Bovine Practitioners Rapid City, SD (2000). p. 125–8. [Google Scholar]
- 25.Wittum T, Woollen N, Perino L, Littledike E. Relationship among treatment for respiratory tract disease, pulmonary lesions evident at slaughter, and rate of weight gain in feedlot cattle. J Am Vet Med Assoc (1996) 209:814–8. [PubMed] [Google Scholar]
- 26.Griffin D. The monster we don’t see: subclinical BRD in beef cattle. Anim Health Res Rev (2014) 15(2):138–41. 10.1017/S1466252314000255 [DOI] [PubMed] [Google Scholar]
- 27.Paarlberg PL, Seitzinger AH, Lee JG, Mathews KH., Jr Economic Impacts of Foreign Animal Disease (2008). Economic Research Report No.: ERR-57. 80 p.
- 28.Tonsor GT, Mintert JR, Schroeder TC. U.S. meat demand: household dynamics and media information impacts. J Agric Res Econ (2010) 35(1):1–17. [Google Scholar]
- 29.Shiflett JS, Purcell WD, Marsh D, Rodgers P. Analysis of Lamb Demand in the United States. Report to the American Lamb Board. Denver, CO: Juniper Economic Consulting, Inc; (2007). Available from: http://lambresourcecenter.com/wp-content/uploads/2015/09/ALB_Lamb_Demand_Analysis__March_2015.pdf [Google Scholar]
- 30.Zheng Y, Kaiser HM. Estimating asymmetric advertising response: an application to U.S. nonalcoholic beverage demand. J Agric Appl Econ (2008) 40(3):837–49. 10.1017/S1074070800002364 [DOI] [Google Scholar]
- 31.Paarlberg PL, Seitzinger AH, Lee JG, Mathews KH., Jr Supply reductions, export restrictions, and expectations for hog returns in a potential classical swine fever outbreak in the United States. J Swine Health Prod (2009) 17(3):155–62. [Google Scholar]
- 32.Johnson K, Paarlberg P, Seitzinger AH, Ott S, Anderson D. Economic Welfare Impacts Along the Supply Chain Form Alternative Response Strategies for a Potential Highly Pathogenic Avian Influenza Outbreak in Texas. Denver: Published Fact Sheet, Livestock Marketing Information Center; (2014). [Google Scholar]
- 33.Hillberg-Seitzinger A, Paarlberg PL. Regionalization of the 2014 and 2015 Highly Pathogenic Avian Influenza Outbreaks. Choices. Quarter 2. (2016). Available from: http://www.choicesmagazine.org/choices-magazine/theme-articles/economic-consequences-of-highly-pathogenic-avian-influenza/regionalization-of-the-2014-and-2015-highly-pathogenic-avian-influenza-outbreaks
- 34.Johansson RC, Preston WP, Hillberg-Seitzinger A. Government Spending to Control Highly Pathogenic Avian Influenza. Choices. Quarter 2. (2016). Available from: http://www.choicesmagazine.org/choices-magazine/theme-articles/economic-consequences-of-highly-pathogenic-avian-influenza/government-spending-to-control-highly-pathogenic-avian-influenza
- 35.Paarlberg PL, Seitzinger AH, Lee JG. Potential revenue impact of an outbreak of foot-and-mouth disease in the United States. J Am Vet Med Assoc (2002) 220(7):988–92. 10.2460/javma.2002.220.988 [DOI] [PubMed] [Google Scholar]
- 36.Paarlberg PL, Lee JG, Seitzinger AH. Measuring welfare effects of an FMD outbreak in the United States. J Agr Appl Econ (2003) 35(1):53–65. 10.1017/S1074070800005939 [DOI] [Google Scholar]
- 37.Pendell DL, Leatherman J, Schroeder TC, Alward GS. The economic impacts of a foot-and-mouth disease outbreak: a regional analysis. J Agri Appl Econ (2007) 39:19–33. 10.1017/S1074070800028911 [DOI] [Google Scholar]
- 38.Pendell DL, Marsh TL, Coble KH, Lusk JL, Szmania SC. Economic assessment of FMDv releases from the National Bio and Agro Defense Facility. PLoS One (2015) 10(6):e0129134. 10.1371/journal.pone.0129134 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 39.Schroeder TC, Pendell DL, Sanderson MW, McReynolds S. Economic impact of alternative FMD emergency vaccination strategies in the midwestern United States. J Agri Appl Econ (2015) 47(1):47–76. 10.1017/aae.2014.5 [DOI] [Google Scholar]
- 40.Hagerman AD, Delgado AH, Schoenbaum M. Alternative control strategies with uncertain trade barriers for foot-and-mouth disease in feedlot operations. Selected Poster Prepared for Presentation at the 2015 Agricultural & Applied Economics Association and Western Agricultural Economics Association Joint Annual Meeting San Francisco, CA (2015). [Google Scholar]
- 41.Pendell DL, Lusk JL, Marsh TL, Coble KH, Szmania SC. Economic assessment of zoonotic diseases: an illustrative study of Rift Valley Fever in the United States. Transbound Emerg Dis (2016) 63:203–14. 10.1111/tbed.12246 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 42.Seitzinger AH, Paarlberg PL, Lee JG. Economic impacts of eradicating scrapie, ovine progressive pneumonia, and Johne’s disease on US sheep, lamb, sheep meat, and lamb meat. In: Koontz SR, Hoag DL, Thilmany D, Green JW, Grannis JL, editors. The Economics of Livestock Disease Insurance: Concepts, Issues, and International Case Studies. Wallingford, UK: CABI Publishing; (2006). p. 193–206. [Google Scholar]
- 43.USDA–NASS: National Agricultural Statistics Service. Cattle on Feed. (2017). Available from: http://usda.mannlib.cornell.edu/MannUsda/viewDocumentInfo.do?documentID=1020
- 44.van der Fels-Klerx HJ, Horst HS, Dijkhuizen AA. Risk factors for bovine respiratory disease in dairy young stock in The Netherlands: the perception of experts. Livest Prod Sci (2000) 66(1):35–46. 10.1016/S0301-6226(00)00163-9 [DOI] [Google Scholar]
- 45.Hay KE, Barnesa TS, Morton JM, Clements ACA, Mahony TJ. Risk factors for bovine respiratory disease in Australian feedlot cattle: use of a causal diagram-informed approach to estimate effects of animal mixing and movements before feedlot entry. Prev Vet Med (2014) 117(1):160–9. 10.1016/j.prevetmed.2014.07.001 [DOI] [PubMed] [Google Scholar]
- 46.Wang M, Barton KA, Schneider LG, Reeves AM, Smith DR. The effect of calf gender and age of dam on the risk of calves to develop bovine respiratory disease prior to weaning. Poster Presented at the 14th Symposium of the International Society for Veterinary Epidemiology and Economics (ISVEE 14) Merida, Yucatan, Mexico (2015). [Google Scholar]
- 47.Wolfger B, Manns BJ, Barkema HW, Schwartzkopf-Genswein KS, Dorin C, Orsel K. Evaluating the cost implications of a radio frequency identification feeding system for early detection of bovine respiratory disease in feedlot cattle. Prev Vet Med (2015) 118(4):285–92. 10.1016/j.prevetmed.2014.12.001 [DOI] [PubMed] [Google Scholar]
- 48.Engler M, Defoor P, King C, Gleghorn J. The impact of bovine respiratory disease: the current feedlot experience. Anim Health Res Rev (2014) 15(2):126–9. 10.1017/S1466252314000139 [DOI] [PubMed] [Google Scholar]
- 49.Noffsinger T, Brattain K, Quakenbush G, Taylor G. Field results from Whisper® stethoscope studies. Anim Health Res Rev (2014) 15(02):142–4. 10.1017/S1466252314000218 [DOI] [PubMed] [Google Scholar]
- 50.Wolfger B, Schwartzkopf-Genswein KS, Barkema HW, Pajor EA, Levy M, Orsel K. Feeding behavior as an early predictor of bovine respiratory disease in North American feedlot systems. J Anim Sci (2015) 93(1):377–85. 10.2527/jas.2013-8030 [DOI] [PubMed] [Google Scholar]
- 51.Meyer B. New Vaccine Technology Helps Build BRD Immunity in Calves. Bovine Veterinarian; (2014). Available from: http://www.bovinevetonline.com/news/industry/new-vaccine-technology-helps-build-brd-immunity-calves [Google Scholar]
- 52.Neibergs JS, Neibergs HL, Taylor JF, Seabury CM, Lehenbauer TW, Van Eenennaam AL, et al. An estimate of the economic gain from selection to reduce BRDC incidence in dairy calves. Proceedings, 10th World Congress on Genetics Applied to Livestock Production Vancouver, BC (2014). [Google Scholar]
- 53.Neibergs HL, Neibergs JS, Wojtowicz AJ, Taylor JF, Seabury CM, Womack JE. Economic Benefits of Using Genetic Selection to Reduce the Prevalence of Bovine Respiratory Disease Complex in Beef Feedlot Cattle. (2016). p. 82–7. Available from: http://www.nbcec.org/professionals/slides/bb14/Neibergs.pdf [Google Scholar]
- 54.Chirase NK, Greene LW. Dietary zinc and manganese sources administered from the fetal stage onwards affect immune response of transit stressed and virus infected offspring steer calves. Anim Feed Sci Tech (2001) 93:217–28. 10.1016/S0377-8401(01)00277-2 [DOI] [Google Scholar]