The Role of Neuroscience in Shaping Marketing Narratives for Rural Agricultural Producers: A Systematic Review
Abstract
:1. Introduction
2. Problem Statement and Rationale of the Study
- What neuroscience methods have been applied in studies of agricultural or rural consumer behavior?
- What consumer behavior insights do these studies reveal?
- How do these insights differ from those obtained by traditional marketing approaches in agriculture?
- What practical strategies for rural producers emerge from neuroscience findings?
3. Methodology for the Study
3.1. Literature Search Strategy
3.2. Study Selection and Data Extraction
3.3. Quality Assessment and Data Synthesis
4. Discussion of Findings
4.1. Thematic Analysis of Findings
- Influence of Social and Economic Relationships on Cognitive and Emotional Engagement
- Impact of Cognitive Load and Confidence on Task Performance
- Cognitive Processes in Problem-Solving and Creativity
- Consumer Preferences and Behavior
- Impact of Visual Information
- Role of Neuromarketing
- Packaging and Labelling
- Animal Welfare and Environmental Decision-Making
4.1.1. Theme 1: Influence of Social and Economic Relationships on Cognitive and Emotional Engagement
4.1.2. Theme 2: Impact of Cognitive Load and Confidence on Task Performance
4.1.3. Theme 3: Cognitive Processes in Problem-Solving and Creativity
4.1.4. Theme 4: Consumer Preferences and Behavior of Organic and Local Products
4.1.5. Theme 5: Impact of Visual Information Through Neuroeconomic Insights
4.1.6. Theme 6: Role of Neuromarketing on Consumer Behavior
4.1.7. Theme 7: Significance of Packaging and Labelling
4.1.8. Theme 8: Animal Welfare and Environmental Decision-Making: Monitoring Stress and Welfare as Well as Systems Thinking and Adaptation
5. Limitations of Findings
- Generalizability and Sample Representativeness: Several studies reviewed (e.g., Meyerding & Merz, 2018; Markova, 2022; Garczarek-Bąk, 2018) utilized convenience samples such as university students or urban consumers, limiting representativeness. These samples differ notably from rural agricultural producers and typical rural consumers, who often vary in age, educational background, and cultural practices, potentially altering response patterns (e.g., visual attention) observed in lab-based studies. Additionally, geographic specificity such as the US-focused research by Rihn et al. (2016) and Greek-based studies by Georgakarakou et al. (2020) reduces generalizability, given diverse cultural and infrastructural contexts across rural markets globally. Small sample sizes (e.g., (Panfilov & Mann, 2018), n = 17; (Liang, 2022), n = 36) further constrain statistical power, risking overstated or idiosyncratic results, particularly given inherent variability in neural responses. Thus, rural producers should interpret these findings cautiously, considering local validation or adaptation. Lastly, Aprilianty et al.’s (2018) study, focused narrowly on strategic supplier relationships, necessitates broader research to ensure applicability across diverse agricultural buyer–supplier contexts.
- Methodological Constraints and Ecological Validity: Several studies encountered methodological constraints limiting ecological validity. Laboratory conditions (e.g., Kumar et al., 2022; Panfilov & Mann, 2018) often oversimplified complex realities of rural agricultural settings, such as unpredictable weather, animal behaviors, or farmers multitasking. Consumer studies employing static or virtual tasks (e.g., Castagna et al., 2021; Georgakarakou et al., 2020) might omit critical contextual factors like social interactions, sensory stimuli, or market dynamics present in real settings. Technology-related limitations further challenge accuracy. Liang (2022) noted that EEG data quality diminishes with subject movement or complexity of tasks. Task framing also influenced outcomes, with priming effects (Liang, 2022) potentially biasing results.
- Depth of Cognitive and Behavioral Insights: Despite employing advanced neuroscientific methods, existing marketing studies often provide limited insight into underlying cognitive mechanisms. As noted by Alvino (2018) and Van Loo et al. (2018), current tools effectively measure attention and emotional arousal but struggle to clarify the precise reasons behind these responses, such as visual appeal, memory triggers, or confusion. Particularly in rural contexts, consumer decisions frequently involve deeper socio-cultural factors like community norms or traditions that neuroscience methods can detect (e.g., emotional reactions linked to local imagery) but do not fully explain. Moreover, most studies examine immediate or short-term effects, overlooking long-term impacts such as whether initial responses to neuromarketing-informed packaging persist beyond novelty (e.g., sustained brand loyalty through repeated exposure). This gap is significant for rural producers, whose marketing success often depends on relationship-building over extended periods.
- Resource and Ethical Constraints: Implementing neuroscientific methods can be resource intensive. As (Kiryluk-Dryjska & Rani, 2023)and Kumar et al. (2023) noted, advanced research instruments like FMRI or even high-end EEG rigs are expensive and require technical expertise. Rural areas might lack access to such facilities, and producers or local marketers rarely have the budget for neuroscience experiments. This reality means that there is a gap between what research can suggest and what is immediately actionable on the ground. Ethical considerations also loom large. For example, in studies involving animals, Kumar et al. (2022, 2023) had to be very careful in design to avoid unnecessary harm. Similarly, on the consumer side, neuromarketing raises questions about privacy and manipulation. None of the studies in our review aimed to deceive or coerce consumers; however, as a limitation, we acknowledge that our review did not deeply delve into the ethics of applying these techniques in practice (we touch more on this in the Future Directions and Conclusion). If, hypothetically, a rural producer had the means to use neuromarketing, there would be ethical imperatives to use it to better serve customers, not to exploit them (for instance, avoiding practices that intentionally trigger excessive cravings for unhealthy foods, etc.).
- Review Scope and Process Limitations: Regarding our systematic review’s scope, restricting inclusion to post-2016 studies, while capturing recent technological advances, may exclude foundational older literature, partially mitigated by referencing key theoretical frameworks. Focusing solely on studies explicitly incorporating neuroscience methods may also omit relevant behavioral insights without such explicit methods. Our narrative synthesis inherently involved subjective thematic identification, which, despite internal cross-checking for consistency, another team might have conducted differently. Lastly, the absence of a formal quantitative meta-analysis or standardized bias assessment due to data heterogeneity represents a methodological limitation, suggesting potential areas for enhancement in future reviews.
6. Future Research Directions
- Bridging Neuroscience and Traditional Consumer Behavior Theories in Agriculture: Future research should integrate neuroscientific methods with established consumer decision models, examining neural correlates of biases such as loss aversion or overconfidence in rural producers. Specifically, investigating neural responses to potential losses versus gains could clarify cognitive biases influencing farmers’ pricing and sales decisions. Understanding neural underpinnings of emotional drivers such as pride in product quality or fear of market rejection could inform targeted interventions to enhance producers’ marketing confidence. Thus, combining neuroeconomics with rural consumer behavior can yield valuable insights into effective marketing strategies within rural contexts.
- Neuroscience-Informed Negotiation and Communication Training: Future research should investigate neural mechanisms underlying negotiation and communication processes between rural producers and market stakeholders. Studies employing techniques such as EEG, cortisol measurement, eye tracking, or fMRI during simulated negotiations could identify cognitive and emotional patterns associated with successful outcomes. For instance, examining whether specific framing of price offers mitigates neural indicators of stress or anxiety could inform targeted negotiation training programs. Additionally, neuroscience can elucidate how producers effectively communicate product value propositions by identifying elements (e.g., sustainability, tradition, quality) that maximally engage consumer interest at a subconscious level. Insights from these studies can support practical interventions to enhance producers’ communication strategies, aligning marketing efforts with consumer neural responses.
- Personalization and Profiling in Rural Marketing: With the rise of accessible tech, future research could explore using portable EEG or other biosensors in real-world rural settings to tailor marketing strategies. For instance, a study could equip farm shop visitors with wearable devices to unobtrusively gauge emotional responses as they browse (respecting privacy and ethics). The data might reveal micro-preferences. Local teenagers might respond strongly (in terms of brain excitement) to social media testimonials from peers about a farm product, whereas older customers respond more to in-person interactions. These insights could inform segmented marketing strategies. Research should examine the feasibility and effectiveness of such personalization: Do neuroscience-informed tailored messages (like adjusting a market’s signage based on general crowd reactions) significantly improve engagement or sales in rural markets? This would push neuromarketing beyond the lab into the field, testing its practical utility.
- Integration of Neuroscience with Traditional Market Research Methods: A promising direction is combining qualitative insights (from interviews, focus groups) with neural data for a holistic understanding. Future studies should use mixed methods, for example, conducting focus group discussions with rural consumers about a product while also recording physiological responses (heart rate, skin conductance) to gauge emotional arousal during different topics. This can validate whether what people say aligns with what their subconscious signals show. Such triangulation in a rural context might reveal for instance that consumers verbally insist price is most important, but physiologically light up more when discussing trust in the producer. Marketers can then align strategies accordingly. Research on how to cost-effectively implement this (maybe using smartphone sensors or low-cost EEG headbands) would be highly useful for rural contexts.
- Chronic Stress and Cognitive Load Management for Producers: Rural producers frequently operate under chronic stress due to market volatility and climate-related challenges, potentially impairing marketing decision-making. Future neuroscience research should examine the cognitive and neural effects of stress in high- versus low-stress conditions using biomarkers or neuroimaging to assess impacts on decision quality. Such insights could inform the development of interventions like mindfulness or biofeedback programs that are aimed at enhancing stress resilience. Additionally, cognitive training targeting functions like flexibility, problem-solving, and strategic planning (e.g., via prefrontal cortex stimulation) may support producers’ adaptability to evolving marketing demands. Evaluating these interventions’ effects on both neural activity and business outcomes would provide practical value.
- Social Neuroscience in Community Marketing: Given the importance of social networks and word-of-mouth in rural marketing, future research should apply social neuroscience methods such as hyperscanning to examine neural mechanisms underlying peer influence and community information flow. Investigating how attitudes and behaviors are transferred between individuals during interactions can reveal how marketing ideas disseminate through rural networks. Such insights could inform the design of campaigns that strategically engage community leaders or early adopters. Moreover, exploring how rural audiences neurologically respond to messages from trusted local sources versus outsiders can guide culturally attuned, trust-based communication strategies.
- Enhancing Representativeness and Contextual Relevance in Rural Neuroscience Marketing Studies: Given the overreliance on convenience samples (e.g., university students, urban consumers) in existing studies, future research should prioritize the inclusion of larger, demographically and culturally diverse samples, particularly from rural agricultural communities. Studies should aim to capture variability in age, education, cultural norms, and technology access to ensure findings are contextually relevant and generalizable to rural settings. Additionally, cross-cultural research comparing neural responses in different geographic regions (e.g., Sub-Saharan Africa, Southeast Asia, Latin America) could uncover important differences in decision-making dynamics shaped by local agricultural practices and socio-economic environments. Such efforts would improve the ecological validity of neuromarketing strategies aimed at rural producers and consumers.
- Ethical Neuromarketing and Cultural Nuances: Future research should engage more deeply with the ethical and cultural dimensions of neuromarketing in rural and low-literacy settings. This includes examining stakeholders’ perceptions of neuroscience tools (such as EEG and eye tracking) and evaluating how local cultural values such as communalism, oral traditions, and spiritual beliefs influence acceptance or resistance. To ensure ethical integrity, neuromarketing practices in these contexts must emphasize informed consent using accessible, non-technical language that may be supported by visual or verbal explanations. Transparency regarding how data are collected, interpreted, and used is essential, particularly to build trust in communities unfamiliar with neuroscientific research. It is equally important to avoid manipulative tactics, especially in populations where cognitive vulnerability may be heightened due to limited literacy or formal education. Researchers should prioritize community engagement and participatory design, allowing local actors to play an active role in shaping or interpreting neuromarketing applications. Where resistance to advanced methods exists, simplified neuroscience tools and community-led approaches may provide more culturally appropriate and ethically sound alternatives. These measures help ensure that neuromarketing efforts uphold local norms, protect participant autonomy, and contribute responsibly to rural development.
7. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Authors and Year of Publication | Sector Focus | Objectives | Method | Outcomes |
---|---|---|---|---|
(Rihn et al., 2016) | General Consumer Behavior | The study explored the impact of organic production methods, origin designations, and visual attention to in-store promotions on consumers’ purchase likelihood (PL) for indoor foliage and fruit-producing plants. | Eye Tracker | Consumers prefer organic plants over conventional ones as well as plants grown in-state or domestically over imported ones, and visual attention to organic production methods positively influences fruit-producing plants’ purchase likelihood, but not indoor foliage plants. |
(Aprilianty et al., 2018) | Agriculture | The study used neuroscience to analyze the influence of different types of agricultural buyers on farmers’ perceived value, trust, performance, and commitment. | EEG | Farmers demonstrate varying emotional responses toward different types of buyers. The majority of farmers showed a high interest in perceived value and expressed trust in the farmers’ group while exhibiting the lowest interest and engagement responses to cooperatives. |
(Alvino, 2018) | General Consumer Behavior | How can consumer neuroscience research improve the study of consumer behavior and decision-making processes by establishing the benefits and limitations of this field and clarifying how neuroimaging techniques like EEG can help study individual preferences and the influence of extrinsic cues? | EEG | Consumer neuroscience research can improve marketing research by providing unbiased measures of consumer responses and individual preferences and studying the decision-making process and buying behavior at different levels. However, consumer neuroscience research also has several limitations, including the lack of a unified definition, unclear goals, difficulties reproducing natural environments, and issues with reverse and forward inference. |
(Garczarek-Bąk, 2018) | General Consumer Behavior | The study sought to understand several key problems related to consumer behavior and decision-making in the context of private-label (PL) products. | EEG and Eye Tracker | The probability of purchasing private-label products tends to increase with age and income. This suggests that as consumers gain financial resources and shopping experience, they may develop a greater willingness to consider PL products. |
(Meyerding & Merz, 2018) | Food/Organic Products | The study looked to improve understanding of how visual attention influences decision-making in purchasing organic products. | Eye Tracker | The study reveals that consumers’ visual attention is influenced by their preferences and choices regarding organic food labelling. Eye-tracking technology and choice-based conjoint analysis help overcome the limitations of traditional methods like social desirability and memory constraints. Consumers who value specific product attributes tend to pay more attention to them. |
(Panfilov & Mann, 2018) | Agriculture | The study sought to understand how real-time visual information can enhance the supervision of autonomous agricultural machines. | Eye Tracker | The supervisor prefers graphical indicators for information, while live video serves as a secondary source. However, live videos can decrease problem detection performance compared to graphical indicators. Despite this, most participants feel more secure and understand machine functions better when live video is available. |
(Van Loo et al., 2018) | Food Labeling | How does visual attention to information on food products, such as labels and packaging, relate to consumer preferences, choices, and valuation? | Eye Tracker | Eye tracking can reveal consumer attention to food labelling information, influenced by stimuli like label design and location and goal-driven factors like motivation and knowledge. This attention is related to consumer preferences, valuation, and choice, highlighting the importance of visual attention in food labelling. |
(Lahm, 2019) | General Consumer Behavior | The study explores eye movements’ role in decision-making, visual ecology in consumer research, and perceptual grouping of nutritional labels to guide attention without compromising brand-related elements. | Eye Tracker | Internal and external factors influence visual attention in decision-making, while product packaging structure can hinder nutritional information. Perceptually grouping labels can increase attention, but this effect diminishes under time pressure. |
(Georgakarakou et al., 2020) | Agriculture | This study sought investigate how various packaging features (eco-labels, image, shape, color) of organic agricultural products (feta cheese and olive oil) affect consumers’ eye reactions and influence their perception, attitude, and buying behavior. | Eye Tracker | Consumers prioritize brand name, text, and place of origin on product packaging over color, shape, and images. Eco-labels are appealing but require information about eco-friendly features. Angled packaging shapes are preferred over rounded ones due to habitual associations with the product type. |
(Rödiger & Hamm, 2020) | Food Pricing | The study explores visual information search for organic food prices during shopping, focusing on the differences among conventional food consumers, regular organic food consumers, and occasional organic food consumers. | Eye Tracker | Consumers, regardless of their preference for organic or conventional food, often notice and compare prices of both types of products. Although regular organic consumers pay less attention to price information, they still examine prices of both types. The duration of visual attention on organic product packaging strongly influences the choice to purchase organic products, while conventional product prices decrease this likelihood. |
(Castagna et al., 2021) | Food Aesthetics | The study explores how consumers’ aesthetic biases toward food products influence their risk perceptions and purchase intentions and how construal level theory can be used to mitigate these biases. | Eye Tracker | Consumers have higher risk perceptions and lower purchase intentions for imperfect food products, with the influence of food aesthetics moderated by the construct level. Concrete mindset consumers have higher risk perceptions and lower purchase intentions. |
(Schukat et al., 2021) | Agriculture | The study explores how neuroeconomic methods can provide insights into consumer decision-making processes. It investigates the potential of these methods to explain and predict consumer behavior, especially in agricultural contexts where traditional economic models may fall short. | fMRI/fNIRS/ Eye Tracker | Visual stimuli, such as food labeling systems (e.g., traffic light labeling), can significantly influence consumer buying behavior. Eye-tracking studies indicated that the design and arrangement of nutritional information on labels effectively attract consumer attention, thereby impacting their purchasing choices. |
(Bojić et al., 2022) | General Consumer Behavior | The study explores how neuromarketing can provide insights into consumer behavior. By utilizing neuroscience techniques, the research aims to analyze how consumers make purchasing decisions and what factors influence their preferences. | fMRI | The study suggests that neuromarketing has the potential to be a sophisticated approach for understanding and satisfying consumer needs. This indicates that, when used responsibly, neuromarketing can provide valuable insights into consumer preferences and behaviors. |
(Kumar et al., 2022) | Animal Welfare | The negative impact of pre-slaughter stress on animal welfare, consumer acceptance, carcass, and meat quality due to various pre-slaughter stressors. | EEG | EEG is a sensitive, efficient, and cutting-edge technique for measuring stress and pain perception in animals during the slaughtering process. EEG can also be used to assess the state of consciousness and insensibility during slaughter, which is crucial for animal welfare. |
(Liang, 2022) | Agricultural Education | The study aimed to identify brain regions activated during IQ tasks, identify participants’ thought patterns during experimental tasks, and distinguish between HC and LC groups, crucial for creativity in agriculture students. | EEG | Numeric problem solving in agricultural extension students activates the frontoparietal network and promotes self-generated thought. The high-creativity group inhibits creativity evaluation and engages in divergent semantic processing. The transition from visual perception to semantic processing is significantly different between the HC and LC groups (HC > LC). |
(Markova, 2022) | Sustainability | The study explores how sustainable businesses can strengthen their position in the market and reach more customers. | fMRI/EEG/Eye Tracker | Neuromarketing techniques can be an effective solution for sustainable businesses to improve their competitiveness and reach more customers. |
(Kumar et al., 2023) | Animal Welfare | The study assesses the effect of exposure to the slaughter environment on the emotional state and physiological responses of goats. | EEG | Exposure of goats to the slaughter of conspecifics alters their emotional state, as evidenced by significant changes in their neurobiological activity as recorded by the EEG spectrum, including increased beta and theta waves. Emotional stress in goats during exposure to the slaughter environment significantly increased their blood glucose levels, indicating a physiological stress response. |
(Kiryluk-Dryjska & Rani, 2023) | Agriculture | The study seeks to understand the current state of research on the application of neuroeconomic tools such as an eye tracker (ET) and electroencephalogram (EEG) in the field of agriculture and food economics. | EEG and Eye Tracker | Neuroeconomic tools like eye trackers and electroencephalograms are being used in agriculture and food economics to study consumer behavior and visual attention, as well as neural correlates of decision-making, problem-solving, and emotional responses. However, their application is relatively rare, and their use is still limited. |
(Lalani et al., 2023) | Climate-Smart and Sustainable Agriculture | The study seeks to understand the complexities surrounding environmental decision-making in the context of climate change and sustainable agriculture | fNIRS | The study highlights that higher degrees of systems thinking are associated with more effective adaptation strategies to climate change and improved environmental decision-making. This is particularly relevant in low-income countries (LICs) where agricultural productivity is threatened by climate change. |
(Min et al., 2024) | Nutrition/Menu Labeling | The study explores how consumers interact with nutritional information and the characteristics of visual attention during the menu scanning process to inform menu development and nutrition policies. | Eye Tracker | Consumers focused the most on the menu name, price, and image when selecting a menu item, while they paid less attention to the country of origin, calories, and special indications. Gender differences were observed in menu selection, with men preferring menus with meat or cheese patties and women preferring menus with shrimp patties. Consumers who had previous dieting experience were more likely to select menus based on factors such as favorite ingredients and images rather than calorie information. |
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Shemfe, O.; Mbukanma, I. The Role of Neuroscience in Shaping Marketing Narratives for Rural Agricultural Producers: A Systematic Review. Businesses 2025, 5, 25. https://doi.org/10.3390/businesses5020025
Shemfe O, Mbukanma I. The Role of Neuroscience in Shaping Marketing Narratives for Rural Agricultural Producers: A Systematic Review. Businesses. 2025; 5(2):25. https://doi.org/10.3390/businesses5020025
Chicago/Turabian StyleShemfe, Olaitan, and Ifeanyi Mbukanma. 2025. "The Role of Neuroscience in Shaping Marketing Narratives for Rural Agricultural Producers: A Systematic Review" Businesses 5, no. 2: 25. https://doi.org/10.3390/businesses5020025
APA StyleShemfe, O., & Mbukanma, I. (2025). The Role of Neuroscience in Shaping Marketing Narratives for Rural Agricultural Producers: A Systematic Review. Businesses, 5(2), 25. https://doi.org/10.3390/businesses5020025