Safety vs. Sustainability Concerns of Infant Food Users: French Results and European Perspectives
Abstract
:1. Introduction
- Do the answers expressed by infant food users provide arguments for focusing (or not) on the prevention of specific safety hazards from the viewpoint of infant food users?
- For what food products?
- Are there differences between societal target groups?
- Are these concerns connected with other sustainability concerns, and how?
2. Materials and Methods
2.1. Survey Design
- Status of the respondent: does she/he take care of children under the age of 3, with what status (parent, professional, etc.). The former question serves as a filter allowing one to identify actual users of infant foods.
- Use of ready-to-use infant foods, versus other types of foods: ready-to-use for the general public (not specifically intended for young children) or homemade. The regular use of organic food is also specified.
- Priorities when buying infant food (not restricted to safety concerns). The question asked is “What are your priorities when choosing an infant meal?”, with 9 items each evaluated on from "priority" to"non-essential": food balance, price, ease of use, allergen-free, contaminant-free, educating the child’s taste, environment-friendly, adapted to the child’s capabilities, and limiting waste.
- General opinions about ready-to-use infant foods (not restricted to safety concerns).
- Concerns about the microbiological safety of ready-to-use infant foods:
- -
- For which contaminants among the following items: bacteria that may cause digestive problems, bacteria that may cause severe poisoning, viruses, parasites, and unknown pathogens; to what extent, i.e., regular, occasional, or rare/no concern.
- -
- In which foods, among four types of food considered: sterilized baby food jars with vegetable and fish, powdered infant formula, pasteurized fruit compote, and infant cereals; to what extent on a Likert scale [22].
- Concerns about the chemical safety of ready-to-use infant foods:
- -
- For which contaminants among the following items: contaminants from the environment (heavy metals, dioxins, etc.), from agricultural practices (pesticides, mycotoxins, etc.), from industrial processes (substances resulting from cooking, etc.), from packaging (plastics, etc.), fraudulently introduced contaminants, unknown harmful substances; to what extent, i.e., regular, occasional, or rare/no concern.
- -
- In which foods, among the four types mentioned above; to what extent on a Likert scale.
- Socio-demographic profile.
2.2. AI-Based Data Analysis
2.2.1. Argumentation Models
- 1.
- Abstract models, introduced by Dung’s seminal work [39]. In [39], an argumentation system consists of a set of arguments and a binary relation on that set, expressing conflicts among arguments. An argument is an abstract entity whose role is solely determined by its relations to other arguments. No special attention is paid to the internal structure of the arguments. A difficulty in using this approach in real-world case studies is how to practically define and represent an argument in order to reflect the statements of a debate. In practice, even when Dung’s formalism is used for an overview of the debate (e.g., [35,40,41] in the food sector), a more detailed representation of the internal content of arguments is additionally chosen, which falls into the scope of the second family of approaches.
- 2.
- Logical models [42], in which an argument is represented as a set of statements composed of a conclusion and at least one premise, linked by an inference relation. Hence, an argument explicitly gives a reason—the premise, also referred to as “support” or “hypothesis”—for believing a claim or doing an action—the conclusion, also referred to as “consequence” or “alternative”. The authors of [37,43] provide examples of food-related applications using such approaches. Furthermore, bipolar approaches, as proposed in [44], allowed distinguishing between “pro” arguments, in favor of a claim, and “con” arguments, against the claim, thus factoring in undesirable consequences. Bipolarity refers to the human reasoning that combines information on pros with information on cons to make decisions, choices, or judgments.
2.2.2. Defining Arguments
- For each question, defined for a specific contaminant c and measuring to what extent the respondent feels concerned, if the answer is “regularly”, a new "pro" argument is generated as a new input of a CSV file in the format of [46,47]. This argument expresses regular consumer concern as a reason for focusing on contaminant c.
- If the answer is “rarely or never”, a new "con" argument is generated. This argument expresses consumer absence of concern as a reason for not focusing on contaminant c.
- If the answer is “occasionally”, no argument is generated. Indeed, as noted by [22], middle-valued answers cannot be interpreted as clear-cut answers.
- The category of infant food user—parent, family or relatives, early childhood professional, healthcare professional specialized in early childhood, or general health professional—is obtained from the answers given by the same respondent to the first questions of the survey (“status of the respondent”) and added to the argument description.
2.2.3. The Notion of Collective Attitude
- denotes the number of "pro" arguments in favor of focusing on a contaminant c for a given category of infant food users u,
- denotes the total number of arguments ("pro" and "con") on c for the user category u,
- denotes the total number of arguments ("pro" and "con") on all contaminants for the user category u,
- n denotes the total number of arguments, for all contaminants and user categories,
- U is the set of all categories of infant food users considered.
2.3. Statistical Data Analysis
- Check the representativity of the respondents’ profiles in regards to the general population.
- Check the significance of the collective attitude differences observed between sub-populations.
- Test the dependencies between variables and the predictibility of variables of interest: “priority of the criterion absence of harmful substances when buying baby food”, “concern for contaminants from agriculture” and “concern for contaminants from packaging”.
3. Results
3.1. General Description
3.2. How Do Infant Food Users Set the Balance between the Various Sustainability Concerns?
- The absence of contaminants comes first, with 63% of consumers considering the absence of harmful substances priority and a further 25% as important. Only 1% estimated the absence of contaminants as non-essential. This safety criterion is quite closely followed by the nutritional criterion, yet with a lower proportion of "priority" evaluations, compensated by a higher proportion of "important" evaluations.
- Next in the ranking of criteria comes the adequacy of food with the child’s capabilities and preferences, its value in educating the child’s taste, the absence of allergens, and the limitation of waste.
- Finally, environmental protection goes beyond, yet is related, to the "waste" criterion. The price and ease of use criteria come last.
3.3. Which Safety Hazards Should Be Focused On, from the Viewpoint of Infant Food Users?
- 1.
- The highest collective attitude (0.72) goes for contaminants from agricultural practices, such as pesticides, indicating a high predominance of concerns about this category of hazards.
- 2.
- The second highest concern is that of contaminants from packaging, such as plastics, with a collective attitude of 0.56.
- 3.
- The third concern is microbiological. It is expressed for bacteria that may cause low to moderate digestive disorders, with a collective attitude of 0.53.
3.4. Which Foods Should Be Focused On, from the Viewpoint of Infant Food Users?
3.5. Are There Differences between Societal Target Groups?
- According to the collective attitudes, family and relatives express more concern than parents do.
- Within professionals, a clear difference can be highlighted between the perceptions of early childhood professionals on the one hand, and health professionals, on the other hand. Early childhood professionals’ collective attitudes are very similar to the parents’ ones—yet higher for agricultural contaminants, for which their collective attitudes are similar to the group "family and relatives", and somehow higher for unknown chemical hazards.
- Health professionals show a distinct profile. Their level of concern is much higher, and significant, for all categories of contaminants. The same observation can be made for the different types of food. Their ranking of hazards is somehow different from the general population: although agricultural contaminants are also top-ranked, environmental contaminants come next, then packaging and unknown contaminants. The latter strongly differs from the general population. Industrial processes, then fraud, yet significant, come last.
- Finally, we can notice that general health practitioners and health professionals specialized in early childhood show very similar concerns, except for unknown and fraud chemical contaminants, for which specialized health professionals have higher concerns, especially the younger ones. This is reversed for microbiological contaminants, where general health practitioners have higher collective attitudes.
- Gender differences can be highlighted, since women show higher concern than men. The difference is slight but systematic over the categories of contaminants and foods, apart from fraud and process-induced contaminants where concerns are equivalent. Differences regarding parents’ concerns in relation to their level of education was not significant in our sample.
3.6. Are Safety Concerns Connected with Other Sustainability Concerns?
4. Discussion
5. Conclusions
- Within sustainability concerns, the absence of contaminants comes first, followed by the nutritional criterion.
- The highest safety concern is for contaminants from agricultural practices such as pesticides, followed by contaminants from packaging such as plastics, then by bacteria causing low-to-moderate digestive disorders.
- Among the four food models considered, powdered infant formula cause the most concern, followed by potties with vegetable and fish.
- Differences between societal target groups may be noted:
- -
- At the household level, family and relatives express more concern than parents. Gender differences can be highlighted, since women show higher concern than men.
- -
- Within professionals, a clear difference can be highlighted between the perceptions of early childhood professionals on the one hand, very similar to the parents’ ones, and health professionals, on the other hand. Health professionals show a distinct profile. Their level of concern is much higher, and significant, for all categories of contaminants and foods. Their ranking of hazards is somehow different from the general population and higher for environmental and unknown contaminants.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Kurtz, A.; Thomopoulos, R. Safety vs. Sustainability Concerns of Infant Food Users: French Results and European Perspectives. Sustainability 2021, 13, 10074. https://doi.org/10.3390/su131810074
Kurtz A, Thomopoulos R. Safety vs. Sustainability Concerns of Infant Food Users: French Results and European Perspectives. Sustainability. 2021; 13(18):10074. https://doi.org/10.3390/su131810074
Chicago/Turabian StyleKurtz, Amélie, and Rallou Thomopoulos. 2021. "Safety vs. Sustainability Concerns of Infant Food Users: French Results and European Perspectives" Sustainability 13, no. 18: 10074. https://doi.org/10.3390/su131810074
APA StyleKurtz, A., & Thomopoulos, R. (2021). Safety vs. Sustainability Concerns of Infant Food Users: French Results and European Perspectives. Sustainability, 13(18), 10074. https://doi.org/10.3390/su131810074