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Article

Factors Influencing Disease Prevention and Control Behaviours of Hog Farmers

Institute of Agricultural Economics and Development, Chinese Academy of Agricultural Sciences, Beijing 100081, China
*
Author to whom correspondence should be addressed.
Animals 2023, 13(5), 787; https://doi.org/10.3390/ani13050787
Submission received: 30 January 2023 / Revised: 14 February 2023 / Accepted: 20 February 2023 / Published: 22 February 2023

Abstract

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Simple Summary

Animal diseases have increasingly become an important external impact that restricts the healthy development of the pig industry. African swine fever has seriously threatened the stable development of the pig industry in China and caused huge economic losses for farmers. The control behaviour by farmers is particularly important in the front line of epidemic prevention. To explore the factors that affect epidemic prevention and control behaviour by farmers, field survey data was empirically analysed. The results show that gender, education level, technical training, breeding years, breeding scale, specialisation, and risk awareness have significant effects on the biosecurity measures taken by farmers.

Abstract

Animal diseases are a serious threat to animal husbandry production and diet health, and effective prevention and control measures need to be explored. This study investigates the factors influencing the adoption of biosecurity prevention and the control behaviours of hog farmers towards African swine fever and provides appropriate recommendations. Using research data from Sichuan, Hubei, Jiangsu, Tianjin, Liaoning, Jilin, and Hebei, we employed a binary logistic model to empirically analyse these factors. Regarding individual farmer characteristics, male farmers emphasised biosecurity prevention and control in farms, with higher education actively influencing the adoption of prevention and control measures. Farmers who received technical training were actively inclined to adopt such behaviours. Furthermore, the longer the duration of farming, the more probable the farmers were to neglect biosecurity prevention and control. However, the bigger and more specialised the farm, the more inclined they were to adopt prevention and control behaviours. With respect to disease prevention and control awareness, the more risk-averse the farmers were, the more they actively adopted epidemic prevention behaviours. As the awareness of epidemic risk increased, the farmers tended to adopt active epidemic prevention behaviours by reporting suspected outbreaks. The following policy recommendations were made: learning about epidemic prevention and improving professional skills; large-scale farming, specialised farming; and timely dissemination of information to raise risk awareness.

1. Introduction

The high incidence of and difficulty in controlling major animal diseases has led to a focus on animal health and its relationship with biosecurity [1]. The Food and Agriculture Organization (FAO) considers biosecurity to be directly related to agricultural sustainability, food safety, and environmental protection [2]. The application of biosecurity is the most important measure for avoiding the spread of disease [3]. Disease prevention through biosecurity measures is considered an important factor in improving animal production [4]. In August 2018, China experienced an outbreak of African swine fever (ASF), which spread expeditiously across several provinces, resulting in a steep decline in hog production and dramatic market fluctuations [5]. The outbreak significantly impacted the hog industry, mainly in terms of markets and hog farming entities. The infection led to abnormal fluctuations in the prices of meat, especially pork, disrupting market development and resulting in considerable disparities in regional pork prices [6]. Most farm owners lacked the experience and expertise to prevent and control the virus. Therefore, the measures taken were inadequate, culminating in low-level biosecurity in farming environments. Consequently, the epidemic brought huge economic losses to hog-farming entities [7]. Differences in production size, biosecurity standards, production inputs, and sales practices between hog farms can affect the potential risk of disease transmission and lead to a wide variation in the ability to take preventive measures between farms [8,9]. The current biosecurity situation in China is not promising; the state of some farms is alarming in the wake of the African swine fever, limiting their productivity, and causing heavy economic losses. Therefore, it is necessary to understand the current situation of biosecurity in Chinese hog farms and investigate the factors that influence the prevention and control of epidemics, to improve the level of biosecurity.
Existing studies on the epidemic prevention behaviours of farmers have mainly focused on specific aspects. The epidemic prevention behaviour of farmers is the first step in animal epidemic prevention and control. Farmers usually perform four kinds of epidemic prevention behaviours, which include, the improvement of feeding conditions, the use of vaccines and veterinary drugs, the reporting of animal epidemics, and the treatment of sick and dead livestock [10]. Strengthening biosecurity management measures is the most important means to prevent and control African swine fever in China’s pig farms. The construction of a biosecurity system requires attention to the safety of inputs, optimisation of the feeding environment, management of personnel and vehicles, disinfection, and waste disposal [11]. Zhou et al. [12] examined the disease prevention and control behaviours of farmers and found that small-scale hog farms focused mainly on disinfection, feed and water management, disease prevention and control, and incoming and outgoing vehicle management. Meanwhile, retail farmers emphasised the regulation of the internal and external environment of hog farms, personnel management, and the use of vaccines and drugs. In a study on biocontainment measures in avian influenza prevention and control, Huang et al. [13] focused on preventing rodents and birds, as well as measures to manage incoming vehicles and disinfection of personnel. It has also been suggested that four factors: vaccines, veterinary drugs, disinfection and cleaning, and quarantine, play a crucial role in the prevention and control of hog diseases [14]. The immunisation file, also known as the animal household register, is also an important link in the animal epidemic prevention chain. It records in detail the ages of the animals, entry bar, immunisation date, immunisation identification number, vaccine type, injection, etc [15]. The establishment of immunisation files by farmers is vital to ensure the implementation of compulsory immunisation programs, and the conducting of risk assessments for the epidemic control of animal diseases to accurately grasp the immunisation status and monitor animals, both overall and individually, to avoid missed and late immunisations and to ensure the overall quality of the immunisation [16]. Moreover, ensuring drinking water quality is an important component of livestock rearing and management [17]. Water quality can be evaluated by testing the farm’s drinking water source to check whether the bacterial count exceeds the limit [18]. Since all types of vehicles are in direct contact with the outside world, vehicle biosecurity and management are also important aspects of hog farm biosecurity controls [19].
Scholars have long examined the factors influencing disease prevention and control in farms. He Zhongwei et al. [20] studied the influencing factors of prevention and control behaviours in poultry farmers, taking the individual characteristics, breeding characteristics, epidemic awareness, external environment cognition, and policy implementation as explanatory variables, with which to study the impact of whether farmers adopt epidemic prevention behaviour. Li Yanling et al. [21] analysed the factors affecting epidemic prevention behaviours from four aspects: farmer characteristics, production and operation characteristics, cognitive characteristics, and environmental characteristics. Studying the relationship between epidemic prevention behaviours and the characteristics of poultry farmers, Li Jie et al. [10] used further four prevention behaviours: regular disinfection, whether to believe the official warning, whether to clean the chicken cage, and whether to adhere to the “all-in and all-out” system. Song et al. [22] conducted an empirical analysis of hog farms in the Hubei province and concluded that factors such as farmer literacy, whether they had participated in the training, their knowledge of epidemics, the scale of farming, and whether they had joined a cooperative organisation significantly influenced whether the farmers adopted the disease prevention and control measures. Through a study in the Xinjiang Autonomous Region, Chen et al. [23]. analysed disease prevention and the control behaviours of cattle and sheep breeding cooperatives and found that the education level of the breeders, whether they had received training, their annual income, and the provision of timely assistance were the main influencing factors. Luo et al. [24]. studied the disease prevention and control behaviours in beef cattle and meat sheep farms in the Qinghai province and determined that the education level, whether they had received disease prevention and control training, if the farm maintained records of disease prevention and control, and previous certifications were the main influencing factors determining the adoption of the disease prevention and control behaviours by the farmers. Through literature reviews, it can be summarised that there are four main categories of factors that influence the disease prevention and control behaviours of farmers: the characteristics of the farmer, including their gender, age, and education level; the production and operation characteristics, such as the proportion of the farming income in the total household income; the cognitive characteristics of the farmer, such as their cognitive level, the willingness for disease prevention and control and safety awareness; and environmental characteristics, including socio-economic environment and government policies, and what social services are provided [21,25,26].
While many scholars have adequately researched the disease prevention and control behaviours of farmers alongside any influencing factors, there remain some shortcomings. Most of this relevant research merely focuses on a specific region or province and the representativeness of the samples and the universality of the pattern are, thus, inadequate. For this reason, we used the logistic model to empirically analyse the main factors affecting the relevant animal disease prevention and control behaviours, from the perspective of the farmers. Moreover, we analysed the microscopic research data on hog farmers in Sichuan, Hubei, Jiangsu, Tianjin, Liaoning, Jilin and Hebei, and proposed more targeted countermeasures to improve the prevention and control capacity of the farmers, by providing policy recommendations to improve China’s animal disease prevention and control at the grassroots level.

2. Materials and Methods

2.1. Data Sources

The data used in this study were obtained from a survey of hog farming and disease prevention and control conducted by the research team in the third and fourth quarters of 2020. The survey area includes seven provinces (municipalities directly under the Central Government) in Sichuan, Hubei, Jiangsu, Tianjin, Liaoning, Jilin, and Hebei. The selection of the provinces and regions for the research mainly used the following approach: each province was ranked from the highest to lowest by the number of slaughtered fattened hogs in 2018, the top 18 provinces whose total production reached 90.78% of the national total were categorised into six grades, with each grade representing a different output level, and one province was selected in each grade as a representative of the corresponding production level. Moreover, considering the geographical variability of hog farming, we selected the provinces to research according to six major geographical sub-regions of China. The north-western region, where a very low number of pigs are produced, was not included in the 18 provinces. The remaining five regions were considered in an integrated/comprehensive manner. When sampling representative provinces in different grades, we selected provinces in different geographical subdivisions, as far as possible, to indicate the variability of the geographical areas used for farming. The specific selections are listed in Table 1.
In addition, some of the provinces selected included those with African swine fever outbreaks, to consider the research content in terms of disease prevention and control. The samples were selected by adopting the principle of stratified stochastic sampling. To gain a comprehensive picture of the occurrence and non-occurrence of the African swine fever outbreak, we selected one infected and one non-infected county per province. Based on the above, we selected the specific locations for research, as shown in Table 2. The survey, which mainly targeted hog farmers, included a combination of field interviews and questionnaires. A total of 267 questionnaires were returned, and 262 valid samples were obtained, excluding those with missing or abnormal data. The items in the questionnaire mainly included basic characteristics of farming entities (age, gender, education level, and years of farming, etc.), the production and operation information of the farm (scale of farming, type of operation, and mode of farming, etc.) alongside the biosecurity prevention and control measures undertaken at the farm, including quarantine, disinfection, as well as vehicle and personnel management.

2.2. Descriptive Analysis of the Survey Sample

The survey sample was selected in line with the basic characteristics of hog farming entities, and primarily included males, who accounted for 81.30% of the total sample. Individuals aged between 45–54 accounted for half of the overall group, and those aged 45 or above accounted for 73.66%, in line with the characteristic that the farming entities mainly consisted of middle-aged and elderly male groups. The majority had 6–15 years of education, and their education levels were dominated by junior secondary and senior secondary school, which accounted for 90.08%. The number of years of farming was evenly distributed, with the highest percentage (26.72%) having been engaged in hog farming for 6–10 years. Meanwhile, 79.39% of the farmers had received technical training, whereas approximately 20% had not. The percentage of entities whose farming income accounted for over 50% of their total household income was 92.75%. The proportion of farmers who adopted the farming mode of self-breeding and self-rearing was 69.47%, followed by commercial hog fattening at 26.34%. Additionally, 82.44% of the farms had not participated in industrial organisations, whereas the remaining 17.56% of farms had joined industrial organisations. The basic characteristics of the survey sample distributions are listed in Table 3. The detailed data can be found in the Supplementary Materials File (S1_survey data of pig farms).
Epidemic prevention and control in the farm. According to the code of construction of ecological scale pig farms, the distance of the farm site from the main traffic routes and residential areas should meet certain requirements. The farm boundary should be no less than 300-metres from the main traffic routes, 300-metres from residential areas and other livestock farms, and 1000-metres from areas such as slaughterhouses, livestock and poultry processing plants, livestock and poultry trading markets, waste disposal sites and scenic tourist areas. With respect to the location of farms, the proportion of hog farms located over 300-metres from other farms was 68.70%, those located over 300-metres from residential areas were 69.47%, while 17.94% of the farms were located less than 300-metres from main traffic routes. With the above three indices taken together, the location of more than 60% of the survey sample farms was in accordance with construction regulations. The proportion of farms with an “all-in, all-out” management of feeder hogs is a mere 33.59%, indicating that most farmers buy and sell feeder hogs in separate batches. Furthermore, 90.08% of the farms have separate pens for sows, feeder hogs, and piglets, while 9.92% of farms had not conducted separate zoning management; and 76.72% of the farms had dedicated means of transport. With respect to immunisation records, 87.79% of the farms maintained them. Meanwhile, 83.59% of the farms had separate clean and dirty paths, but 40% of the farms did not conduct effective control of birds, as shown in Table 4. See a Supplementary Materials File (S1_survey data of pig farms) for complete information.

2.3. Variable Selection

By reviewing the literature, we found that the disease prevention and control behaviour of hog farmers is mainly influenced by the characteristics of farmers, variables such as farm size and degree of specialisation, and risk awareness of farmers. The variables selected for this study included the following components. The characteristics of the farmers mainly included gender of the farmer, educational level, and whether the farmer had received training in hog farming techniques. The farm characteristics mainly included the number of years of farming, the scale of farming, and the degree of specialisation. The farmers’ risk awareness included their investment risk appetite, whether the hog farms can effectively block the introduction of African swine fever, whether they will report any suspected outbreaks in hog farms, and whether they will report any suspected outbreaks in neighbouring hog farms. The farmers’ disease prevention and control behaviours included, whether the farm has immunisation records, whether water sources were tested, and whether the farm has a dedicated means of transport. The descriptive statistical analysis of the variables is detailed in Table 5. The observed original data of the variables can be found in a Supplementary Materials File (S1_survey data of pig farms).

2.4. Model Construction

This study constructed a logistic model to test the factors influencing the adoption of preventive and control behaviours by farmers, which was estimated using the maximum likelihood estimation method. The dependent variables are divided into two categories: y = 1 if the hog farmers adopt disease prevention and control behaviours, while y = 0 if not. X = ( x 1 , x 2 , , x k ) T denotes the independent variable. The relationship between the probability P ( y = 1 | X )  of occurrence of the event and the independent variable was studied, with the logistic regression equation as follows:
P ( y = 1 | X ) = F ( β 0 + β 1 x 1 + + β k x k ) = e β 0 + β 1 x 1 + + β k x k / ( 1 + e β 0 + β 1 x 1 + + β k x k ) + ε

3. Results

In this study, Stata software was used to regress a binary logistic model for each of the three factors influencing hog epidemic prevention behaviours. Prior to model regression, variance inflation factor tests were conducted separately to verify the existence of multicollinearity problems. The results showed that the highest value of the inflation factor of the variables did not exceed 2, implying that there was no multicollinearity problem.
The estimation results show that the three models fit well and the LR statistical significance levels are all highly significant at the 1% significance level. As shown in Table 6, in terms of individual characteristics, the gender of the farmer has a significant effect, a 10% significance level, on the adoption of disease prevention and control behaviours, whereas having a dedicated means of transport in place, and its coefficient is significantly negative, indicating that male hog farmers are more inclined to adopt dedicated means of transport. This is related to the fact that male farmers, as the main breadwinners of the family, pay greater attention to taking precautionary measures to ensure that household assets are protected from epidemics. At the 1% level of significance, the number of years of education has a positive effect on the adoption of disease prevention and control behaviours by hog farmers. The higher the educational level, the more active a farmer is in adopting the behaviour of testing the water source. This indicates that people with higher educational levels have greater knowledge and access to information about epidemics and take biological prevention and control at the farm more seriously. Technical training had a positive effect on the building of immunisation records and the disease prevention and control behaviours of dedicated means of transport, at significance levels of 10% and 1%, respectively. This indicates that the farmers’ participation in technical training helped to augment their knowledge of disease prevention and control, improved their relevant awareness, and promoted the relevant behaviours required to prevent epidemics.
With respect to farming characteristics, the number of years of farming has a significantly negative effect on the adoption of disease prevention and control behaviours, with a 1% significance level. This indicates that the more years of farming they possess, the less of a priority the farmers attached to disease prevention and control. When they have adequate farming years, they tend to accumulate extensive farming experience, which, nevertheless, will prompt them to rely on their experience in animal disease prevention and control; thus, they are found to lack in science, which results in gaps in their disease prevention and control behaviours. The size of the farm had a significantly positive effect on the adoption of immunisation records and water testing behaviours at the 5% and 1% levels. This indicates that as the scale of farming increases, farmers pay additional attention to the adoption of disease prevention and control measures to avoid huge economic losses from the onset of diseases. At the 5% significance level, the degree of specialisation contributes positively to both the building of immunisation records and the adoption of dedicated means of transport, suggesting that the higher the proportion of total household income from farming, the greater the focus on the biosecurity situations in the farms, with more human, material, and financial resources invested in farming, which is conducive to the adoption of biosecurity prevention and control behaviours.
With respect to disease prevention and control awareness, the farmers’ appetite for risk had a significant negative effect on building immunisation records and water testing at the 10% and 1% levels, respectively. This suggests that the more risk-averse the farmers were, the more active they were in adopting disease prevention and control behaviours. Conversely, the more risk-seeking the behaviour, the more passive they were in adopting disease prevention and control behaviours. This can be attributed to both types of farmers adopting different attitudes towards risks: active and passive. At the 10% significance level, the more the farmers believed that the farm can effectively intercept the introduction of African swine fever, the more likely they were to adopt active disease prevention and control behaviours and test water sources. In contrast, farmers were more likely to build immunisation records when reporting suspected outbreaks at their farms. At the 1% significant level, farmers were more inclined to have their water sources tested and their means of transport dedicated to the farm when reporting suspected outbreaks found in neighbouring hog farms. These data show that the farmers’ active awareness of disease prevention and control can also generate active disease prevention behaviours and exhibit a positive effect.

4. Discussion

Biological vectors and trade are the main methods for African swine fever transmission. Biological vectors generally refer to organisms that infect and carry the African swine fever virus (ASFV). For example, ticks, wild suids, and domestic pigs. Susceptible pigs have direct or indirect contact with these infection sources, which then transmit the African swine fever. In trade, infected pork products, swill, alongside equipment and vehicles are the media of ASFV [27,28]. Epidemiological studies revealed three main routes of ASFV transmission: 46% was spread by unsterilised vehicles and workers, 34% by swill-feeding pigs, and 19% by trans-regional transportation of pigs and products [29]. Unsterilised vehicles and people are the main vectors in the spread of African swine fever, and strict control of vehicles and people entering farms is particularly necessary. The questionnaire survey revealed that most farms have strict control over people and vehicles, whereby foreign vehicles and people are not allowed to enter at will, and farms have special transport as well as vehicle decontamination areas, although this does not cover all farms, and a small number of farms are still loosely managed. In terms of feed and water, only 2.63% of farmers feed their pigs with slop, which is excellent. However, for drinking water, more than half of the farmers have not tested their water sources, which greatly increases the risk of contamination in the farms and poses a threat to the health of the hogs.
Regarding the prevention and control measures of ASF, there is no commercialised vaccine at present, and the focus on prevention and control of ASF is “prevention”. The only control measures are to find infected pigs as soon as possible, to either cull or treat them harmlessly, or block and isolate them [30]. Chai Weihua et al. [31] discussed the measures to strengthen pig breeding management and disease prevention and control based on the three elements of infectious disease control: controlling the source of infection, cutting off the transmission routes, and protecting susceptible populations. Starting with “prevention”, represents cutting off all the paths through which the virus may spread. It is strictly forbidden for people outside the pig farm to enter, and the staff should be disinfected and protected when entering and leaving. Disinfect the materials and vehicles entering the pig farm, and when introducing breeding pigs from outside, it is necessary to set up an isolation and observation period before they become gregarious and attempt to adopt a population management mode of “all-in and all-out” to improve the biosecurity barrier. An Dong et al. [32] concluded that ASF should be prevented and controlled by isolation measures, standardised disinfection procedures for farms, training of farmers on biosecurity knowledge, and international border epidemic prevention. The biosecurity measures taken on the surveyed farms focus on cutting off the means of transmission. Biological control is carried out to prevent birds, rodents, and insects from entering the farm, and to disinfect and control the people and vehicles. In terms of pig management, 90.08% of the farms are zoned, with sows, feeders, and piglets kept separately. However, only 33.59% of the farms adopt “all-in, all-out” management practices for their pigs, which undoubtedly increases the risk for the farms not currently adopting such management practices, as those newly introduced pigs may carry viruses into the farm, increasing the risk of infection for pigs throughout the farm.
In terms of the farmers’ characteristics, men are more aware of epidemic prevention and actively take epidemic prevention actions [33]. As the head of the family, men bear the main business responsibilities, thus, taking active epidemic prevention actions to avoid economic losses. The more educated the farmers are, the more inclined they are to take epidemic prevention measures [34]. The higher the educational background, the more knowledge you will receive, and the higher your ability to acquire information and learn new knowledge. When an epidemic occurs, you will take active defensive measures. Farmers with more years of farming possess rich farming experience, yet this also means that they will follow the old rules. Compared with farmers with fewer farming years, they pay attention to different disease prevention and control measures [35]. The larger the size of the farm when faced with an epidemic, the greater the losses suffered will be, having the intrinsic motivation to adopt epidemic prevention and control behaviours as well as the financial ability to support them [22].
The relationship between risk perception and the adoption of conservation behaviours by farmers has been examined by scholars. The results of Valeeva’s study revealed the direct importance of the intrinsic risk characteristics of farmers for their adoption of risk management strategies [36]. Self-protective (risk-averse) behaviours, in general, directly contribute to the farmers’ decisions to exhibit more specific farm-protective behaviours. This is the exact opposite of the derived empirical results. Conversely, the results of the study indicated that farmers with a higher perception of animal disease risk tend to adopt bird-proofing measures, and those who prefer risk tend to disinfect their vehicles. This is consistent with the results of this paper. The reason for these different results is the different meanings of the measurement indicators. In the questionnaire, “high risk, high return”, “medium risk, medium return” and “low risk, low return” were used as options to measure the farmers’ risk preferences. The empirical results show that farmers with a ‘high risk, high return’ bias are more likely to adopt epidemic prevention behaviours. The outbreak of ASF in China led directly to a shortage of pig stocks and a sharp rise in pork prices [37]. On the one hand, restocking brings huge economic benefits to farmers, but at the same time, they are exposed to the risk of further contracting the ASFV. These farmers, who prefer “high risk, high reward”, are driven to replenish their farms by the huge economic gains, but at the same time take active measures to protect themselves against the risk of the ASFV.

5. Conclusions and Recommendations

5.1. Conclusions

Most of the farmers in the survey area are middle-aged or older males, mostly above 45 years of age, who have a primary school and junior secondary school education and have received technical training. Most of the farms can implement zoning management, and dedicated means of transport, and have built immunisation records. Nevertheless, there are still approximately 30% of the farms whose layout does not meet the ecological codes of construction, and most of them have not adopted an “all-in, all-out” management style.
With respect to individual farmers’ characteristics, gender, education, and technical training had a significant impact on the adoption of biosecurity measures. Specifically, male farmers paid significant attention to biosecurity control in their farms. The more educated the farmers, the more active they were in adopting biosecurity measures; and farmers who had received technical training were more inclined to adopt biosecurity behaviour than those who had not.
With respect to farming characteristics, the number of years of farming, the scale of farming, and the degree of specialisation had a significant effect on the adoption of disease prevention and control behaviours in the farms. Specifically, the more years of farming, the more likely the farm was to neglect biosecurity control. However, the larger the farm, the greater importance it placed on adopting disease control measures; and the more specialised the farm is, the more inclined it was to adopt disease prevention and control behaviours.
With respect to risk awareness, the more risk-averse a farmer was, the more active they were in adopting disease prevention and control behaviours. Conversely, the more risk-seeking a farmer was, the more passive they were in adopting disease prevention and control behaviours. When farmers have an active awareness of disease prevention and control, they will adopt active disease prevention and control behaviours while reporting suspected epidemics found in neighbouring farms.

5.2. Policy Recommendations

5.2.1. Learning about Epidemic Prevention and Improving Professional Skills

Farmers’ knowledge reserves of farming techniques and animal epidemic prevention, their mastery of epidemic prevention measures, and their own scientific literacy, all have a direct impact on the epidemic prevention behaviours adopted by farmers. Therefore, it is important to provide farmers with training in epidemic prevention and control from multiple angles, subjects, and in a variety of ways. Knowledge of epidemic prevention and control should be promoted through the internet, APP, TV, and veterinary medicine dealers. Subjects such as animal husbandry and veterinary departments, scientific research institutes, breeding associations, and government departments should increase technical support for farmers and organise regular epidemic prevention training for farmers to improve their understanding of the principles of various epidemic prevention and control measures and their effectiveness, and to master the know-how of using various prevention and control measures to build the first barrier for epidemic prevention.

5.2.2. Large-Scale Farming, Specialised Farming

Promoting large-scale farming models requires strengthening the promotion and guidance of large-scale farming. Regularly organised visits to large-scale farming demonstration farms for retail and small-scale farmers to raise their awareness of the importance of developing large-scale farming and carrying out biocontainment measures. Improve the degree of specialisation in farming. Promote semi-modern and fully enclosed management. Farms should strictly control the entry and exit of personnel and staff should strictly implement the bathing and disinfection entry system to avoid the risk of virus infection. Environmental disinfection is carried out regularly and quantitatively in pig houses. Establish a sound farm biosecurity prevention and control system to provide a healthier growing environment for pig breeding.

5.2.3. Timely Dissemination of Information, Raising Risk Awareness

Animal husbandry and veterinary departments should release epidemic information in a timely manner. By using new media technology to build a smart platform for animal epidemic prevention and control, timely epidemic information can be released, making it possible for farmers to learn about epidemic information through their mobile phones. Making farmers aware of the serious dangers of epidemics and raising their risk awareness will help increase their willingness to implement epidemic prevention and control measures. The government should vigorously publicise relevant laws and regulations such as the Animal Epidemic Prevention Law and the Code of Practice for the Disposal of Major Animal Diseases to raise the awareness of farming subjects to understand the law and their responsibilities and to know the rules and regulations.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/ani13050787/s1, Excel data file: S1_survey data of pig farms.xlsx.

Author Contributions

Conceptualisation, J.W. and X.H.; methodology, J.W.; software, J.W.; validation, J.W. and X.H.; formal analysis, J.W.; investigation, J.W.; resources, J.W.; data curation, J.W.; writing—original draft preparation, J.W.; writing—review and editing, J.W.; visualisation, J.W.; supervision, X.H.; project administration, X.H.; funding acquisition, X.H. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the key project of the National Natural Science Foundation of China (72033009), the Agricultural Science and Technology Innovation Program (10-IAED-01-2022, ASTIP-IAED-2022-01), the National Social Science Youth Fund Project (22CGL025), and the special fund of basic scientific research business of central public welfare research institutes (1610052022028, 161005202106).

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

The data presented in this study are available in the article and supplementary materials.

Acknowledgments

This research work was carried out by the members of the research group on animal disease prevention and control. The members of the research group would like to thank all participating farmers for their cooperation.

Conflicts of Interest

The authors declare no conflict of interest.

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Table 1. Number of Slaughtered Fattened Hogs by Province in 2018.
Table 1. Number of Slaughtered Fattened Hogs by Province in 2018.
GradeProvinceNumber of Slaughtered Fattened Hogs (1000 Head)Region
1Sichuan66,383Southwest China
2Henan64,024South Central China
3Hunan59,937South Central China
4Shandong50,823Eastern China
5Hubei43,635South Central China
6Yunnan38,505Southwest China
7Guangdong37,574South Central China
8Hebei37,096Northern China
9Guangxi34,658South Central China
10Jiangxi31,240Eastern China
11Anhui28,374Eastern China
12Jiangsu26,809Eastern China
13Liaoning24,958Northeast China
14Heilongjiang19,644Northeast China
15Guizhou18,699Southwest China
16Chongqing17,582Southwest China
17Jilin15,704Northeast China
18Fujian14,213Eastern China
Table 2. Regional distribution of the survey sample.
Table 2. Regional distribution of the survey sample.
RegionProvince (Municipality Directly under the Central Government)Infected AreasNon-Infected AreasSample SizeProportion
Northern ChinaHebei ProvinceBaoding (Anguo)Luannan County, Ningjin County2911.07%
TianjinNinghe District/3312.60%
Northeast ChinaJilin ProvinceTonghua (Meihekou, Liuhe)Changchun (Nong’an County, Dehui City)3513.36%
LiaoningJinzhou (Linghai)/3111.83%
South Central ChinaHubei ProvinceHuanggang (Tuanfeng)Huanggang (Xishui)4216.03%
Eastern ChinaJiangsu ProvinceSuqian (Muyang)Yancheng (Funing)5019.08%
Southwest ChinaSichuanChengdu (Jintang)Bazhong (Siyang)4216.03%
Total262100%
Table 3. Basic characteristics of the survey sample distribution.
Table 3. Basic characteristics of the survey sample distribution.
VariablesClassificationSample SizeProportion (%)VariablesClassificationSample SizeProportion (%)
GenderMale21381.30Number of years of education0–5 years134.96
Female4918.706–10 years16161.45
AgeUnder 35 years old207.6311–15 years7528.63
35–44 years old4918.7016–20 years134.96
45–54 years12848.85Technical trainingYes20879.39
55–64 years5822.14No5420.61
Over 64 years old72.67Proportion of farming incomeLess than 25%62.29
Years of farming1–5 years6022.9025%–49%134.96
6–10 years7026.7250%–74%4617.56
11–15 years5721.7675% and above19775.19
16–20 years4617.56Mode of farmingSelf-breeding and self-rearing18269.47
20 years or more2911.07
Level of operation scaleLess than 100 heads6022.90Commercial hog fattening6926.34
100–499 head8130.92Piglet rearing114.20
500–999 head3513.36Joining an industrial organisation or notYes4617.56
1000–4999 heads7629.01
Over 5000 heads103.82No21682.44
Table 4. Prevention and control of internal and external biosecurity in pig farms.
Table 4. Prevention and control of internal and external biosecurity in pig farms.
VariablesClassificationSample SizeProportion (%)
External biosecurity
Site selectionDistance from other farms(0, 0.3) km8231.30
(0.3, 3) km11343.13
(3, 10) km5320.23
(10, 100) km145.34
Distance from residential areas(0, 0.3) km8030.53
(0.3, 3) km15659.54
(3, 10) km228.40
(10, 35) km41.53
Distance from main traffic routes(0, 0.3) km4717.94
(0.3, 3) km14956.87
(3, 10) km5320.23
(10, 20) km134.96
Existence of natural barriers around the farm (e.g., rivers, mountains, farmland)Yes19373.66
No6926.34
Biological controlWhether birds can be effectively controlledYes15759.92
No10540.08
Whether rodents can be effectively controlledYes17666.17
No8633.83
Whether insects can be effectively controlledYes16361.28
No9938.72
Personnel and vehicle managementCan external personnel and vehicles freely enter the farm?Yes238.65
No23991.35
Are there vehicles entering the decontamination site?Yes21982.33
No4317.67
Whether the farm has a dedicated means of transportYes20176.72
No6123.28
Internal biosecurity
Cleaning and disinfectionWhether to disinfect the feed?Yes20777.82
No5522.18
Is there any decontamination operation in the workers’ approach area?Yes24592.11
No177.89
Feed and drinking waterWhether feed uses kitchen waste (swill)Yes72.63
No25597.37
Whether the water source has been testedYes12346.95
No13953.05
Pig herd management“All-in, all-out” management of feeder hogsYes8833.59
No17466.41
Are sows, feeder hogs, and hoglets managed separately on the farm?Yes23690.08
No269.92
Infrastructure allocationIs there a transit site in the inner and outer sites?Yes18669.92
No7630.08
Separation of clean and dirty paths within the farmYes21983.59
No4316.41
Immunisation recordsBuilt23087.79
Not built3212.21
Table 5. Variable definitions and descriptions.
Table 5. Variable definitions and descriptions.
Variable NameMeaning of VariablesMeanStandard Deviation
Explained variable
Whether the farm has immunisation recordsYes = 1, No = 00.880.33
Whether the water source is testedYes = 1, No = 00.470.50
Whether the farm has dedicated means of transportYes = 1, No = 00.770.42
Explanatory variables
Farmer characteristics
GenderMale = 0, Female = 10.190.39
Years of educationActual number of years of education the farmer has received9.633.08
Training in hog farming techniquesReceived = 1, not received = 00.790.41
Farming characteristics
Years of farmingActual number of years the farmer has engaged in farming12.317.43
Farming scaleLess than 100 head = 1, 100–499 head = 2, 500–999 head = 3, 1000–4999 head = 4, more than 5000 head = 52.601.23
Degree of specialisationProportion of farming income in total household income84.2621.82
Awareness of disease prevention
Risk appetiteHigh risk, high return = 1, medium risk, medium return = 2, low risk, low return = 32.420.72
Whether the farm is effective in blocking the introduction of African swine feverYes = 1, No = 00.340.47
Whether the farm will report suspected outbreaksYes = 1, No = 00.660.47
Whether the farm will report suspected outbreaks in neighbouring farmsYes = 1, No = 00.600.49
Table 6. Results of empirical analysis of factors influencing farmers’ disease prevention and control behaviours.
Table 6. Results of empirical analysis of factors influencing farmers’ disease prevention and control behaviours.
Explanatory VariablesImmunisation RecordsWater Source TestingWhether the Farm Has Dedicated Means of Transport
CoefficientStandard DeviationCoefficientStandard DeviationCoefficientStandard Deviation
Gender−0.700.460.060.42−0.76 *0.40
Number of years of education0.140.090.17 ***0.060.090.06
Technical training0.87 *0.480.670.410.99 ***0.39
Years of farming−0.040.03−0.06 ***0.02−0.030.02
Farming scale0.54 **0.230.41 ***0.140.070.15
Degree of specialisation0.02 **0.01−0.0030.010.02 **0.01
Risk appetite−0.81 *0.43−0.63 ***0.23−0.340.26
Whether the farm is effective in blocking the introduction of African swine fever−0.860.520.60*0.34−0.200.38
Whether the farm will report suspected outbreaks0.91 *0.54−0.080.410.020.41
Whether the farm will report suspected outbreaks in neighbouring farms−0.190.541.36 ***0.401.19 ***0.41
Constants−0.191.83−1.821.21−1.091.30
Note: *, **, and *** denote significance levels of 10%, 5%, and 1%, respectively.
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Wang, J.; Hu, X. Factors Influencing Disease Prevention and Control Behaviours of Hog Farmers. Animals 2023, 13, 787. https://doi.org/10.3390/ani13050787

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Wang J, Hu X. Factors Influencing Disease Prevention and Control Behaviours of Hog Farmers. Animals. 2023; 13(5):787. https://doi.org/10.3390/ani13050787

Chicago/Turabian Style

Wang, Jiamei, and Xiangdong Hu. 2023. "Factors Influencing Disease Prevention and Control Behaviours of Hog Farmers" Animals 13, no. 5: 787. https://doi.org/10.3390/ani13050787

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