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Journal of Food Protection 86 (2023) 100043
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Contents lists available at ScienceDirect
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Journal of Food Protection
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Mew
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ELSEVIER journal homepage: www.elsevier.com/locate/jfp
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Protecting the Global Food Supply
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Research Paper
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Development of an Empirically Derived Measure of Food Safety Culture in ®
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Check for
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Re staurants | updates
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Adam Kramer '*, E. Rickamer Hoover ', Nicole Hedeen*, Lauren DiPrete *, Joyce Tuttle *, DJ Irving”,
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Brendalee Viveiros°, David Nicholas ”**, Jo Ann Monroy”, Erin Moritz‘, Laura Brown *
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1 National Center for Environmental Health, U.S. Centers for Disease Control and Prevention, Atlanta, GA 30341, USA
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? Minnesota Department of Health, USA
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3 Southern Nevada Health District, Las Vegas, Nevada, USA
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4 California Department of Health, California, USA
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5 Tennessee Department of Health, USA
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© Rhode Island Department of Health, USA
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7 New York State Department of Health, USA
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8 Department of Epidemiology & Biostatistics, School of Public Health, University at Albany (SUNY), Rensselaer, New York. USA
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° Harris County Department of Health, Houston, Texas, USA
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ARTICLE INFO ABSTRACT
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Keywords:
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Food safety culture
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Food safety
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Food worker
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Health knowledge attitudes practice
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Restaurant
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A poor food safety culture has been described as an emerging risk factor for foodborne illness outbreaks, yet
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there has been little research on this topic in the retail food industry. The purpose of this study was to identify
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and validate conceptual domains around food safety culture and develop an assessment tool that can be used to
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assess food workers’ perceptions of their restaurant’s food safety culture. The study, conducted from March
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2018 through March 2019, surveyed restaurant food workers for their level of agreement with 28 statements.
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We received 579 responses from 331 restaurants spread across eight different health department jurisdictions.
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Factor analysis and structural equation modeling supported a model composed of four primary constructs. The
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highest rated construct was Resource Availability (x=4.69, sd=0.57), which assessed the availability of
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resources to maintain good hand hygiene. The second highest rated construct was Employee Commitment
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(x= 4.49, sd=0.62), which assessed workers’ perceptions of their coworkers’ commitment to food safety.
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The last two constructs were related to management. Leadership (x= 4.28, sd=0.69) assessed the existence
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of food safety policies, training, and information sharing. Management Commitment (x= 3.94, sd=1.05)
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assessed whether food safety was a priority in practice. Finally, the model revealed one higher-order construct,
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Worker Beliefs about Food Safety Culture (x = 4.35, sd = 0.53). The findings from this study can support efforts
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by the restaurant industry, food safety researchers, and health departments to examine the influence and
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effects of food safety culture within restaurants.
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The Centers for Disease Control and Prevention (CDC) estimates
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that 48 million cases of domestically acquired foodborne illness occur
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annually in the United States, resulting in 325,000 hospitalizations
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and 3,000 deaths (Scallan, Griffin et al., 2011; Scallan, Hoekstra
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et al., 2011). Most reported foodborne illness outbreaks are attributed
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to restaurants (Dewey-Mattia et al., 2018). Past interventions to reduce
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foodborne illness have focused on addressing commonly identified risk
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factors associated with foodborne illness, such as ensuring food is
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cooked to recommended cooking temperatures and preventing con-
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tamination of the food (Olsen et al., 2000). Despite these important
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interventions, foodborne illnesses continue to occur. To further reduce
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* Corresponding author.
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E-mail address: ank5@cdc.gov (A. Kramer).
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https://doi.org/10.1016/j.jfp.2023.100043
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Received 17 May 2022; Accepted 11 January 2023
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Available online 18 January 2023
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the occurrence of foodborne outbreaks, Griffith et al. (2010b) pro-
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posed examining food safety culture as an emerging risk factor for
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foodborne illness.
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Researchers (Griffith, Livesey, & Clayton, 2010b; Yiannas, 2008)
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have proposed varying definitions of food safety culture. The Global
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Food Safety Initiative, for example, defines food safety culture as
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“shared values, beliefs and norms that affect mind-set and behavior
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toward food safety in, across and throughout an organization”
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(Global Food, 2018). All the published definitions of food safety cul-
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ture share a common element — that food workers’ shared beliefs influ-
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ence food safety behavior.
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0362-028X/Published by Elsevier Inc. on behalf of International Association for Food Protection.
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This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
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A. Kramer et al.
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Drawing from the organizational and safety culture literature,
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Griffith et al. (2010a) proposed that food safety culture was composed
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of five separate theoretical concepts related to food safety: (1) leader-
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ship, (2) communication, (3) commitment, (4) environment, and (5)
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risk awareness. This conceptualization focused primarily on the orga-
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nizational factors thought to contribute to food safety culture.
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Several studies have surveyed workers in a variety of settings in an
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attempt to develop a food safety culture assessment model. These
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researchers have assessed meat workers (Ball et al., 2010), culinary
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students (Neal et al., 2012), school food service workers (Abidin
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et al., 2014), and workers in a European meat distribution company
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(De Boeck et al., 2015). Taha et al. (2020) examined organizational
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factors and worker beliefs in food manufacturing plants. These studies
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identified anywhere from two to six separate theoretical concepts
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related to food safety culture among these populations. They found
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that beliefs about commitment (management and employee),
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resources (or infrastructure), and work pressures play a role in food
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safety culture.
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Observing that much of the food safety culture research has been
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performed in food manufacturing facilities, the Environmental Health
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Specialists Network (EHS-Net) embarked on a study to develop a food
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worker survey measure that can be used to assess restaurant food
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safety culture at a specific time (sometimes referred to as the food
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safety climate (De Boeck et al., 2015). This paper reports on our devel-
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opment of this measure. EHS-Net is a collaborative network of the
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CDG, the U.S. Food and Drug Administration, the U.S. Department of
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Agriculture’s Food Safety and Inspection Service, and eight health
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departments. A CDC cooperative agreement funded health depart-
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ments in California, Harris County (TX), Minnesota, New York, New
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York City (NY), Rhode Island, the Southern Nevada Health District,
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and Tennessee to participate in EHS-Net and in this study.
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Methods
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Survey development
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We developed a survey for restaurant food workers based on the
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constructs proposed by Griffith et al. (2010a) and previously adminis-
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tered surveys (Ball et al., 2010; De Boeck et al., 2015; Neal et al.,
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2012). A workgroup composed of EHS-Net health department staff
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designed the survey to apply to all types of restaurants, rather than
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for a specific company as previous researchers have done (i.e., our sur-
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vey assessed handwashing resources, something that is relevant in all
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restaurants). The survey asked food workers to self-report their level of
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agreement with 28 statements (Table 2) using a Likert-scale ranging
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from 1 (strongly disagree) to 5 (strongly agree). Four of these items
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were reverse-coded (DeVellis, 2003). Table 2 includes the survey
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items, the number of responses, the mean scores (higher scores show
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stronger agreement [or disagreement for reverse-coded items]), and
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standard deviations. We also included questions to assess food work-
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ers’ food safety knowledge and experience working in restaurant
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kitchens.
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To increase restaurant participation in the study and food worker
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honesty in the survey responses, study data collection was anonymous.
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Thus, to ensure we did not collect data that could allow the identifica-
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tion of food workers, we asked limited questions about individual
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demographics. For example, we did not collect data on staff race, eth-
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nicity, or age.
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The instrument was pilot tested with three restaurant food workers
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for comprehension and length of time to complete the survey. The sur-
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vey was translated into Spanish by one native speaker and translated
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back into English by another native speaker to verify the translation.
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A copy of the food worker survey is provided in the Supplementary
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material, and all the study materials are posted at https://www.
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cde.gov/nceh/ehs/ehsnet/study_tools/index.htm.
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Journal of Food Protection 86 (2023) 100043
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Sample
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The study sample consisted of randomly selected restaurants in
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each of the eight EHS-Net health department’s jurisdictions. Restau-
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rants were defined as establishments that prepare and serve food or
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beverages to customers but are not institutions, food carts, mobile food
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units, temporary food stands, supermarkets, restaurants in supermar-
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kets, or caterers. In each EHS-Net jurisdiction, staff chose a geographic
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area in which to recruit restaurants for study participation, based on a
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reasonable travel distance (mean = 88.1 min, range = 30 min to 4 h).
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One jurisdiction was urban; the other seven were a combination of
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urban, suburban, and rural areas. The staff then sent a list of restau-
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rants within that area to CDC, which selected a random sample of
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restaurants for each jurisdiction. Staff in each jurisdiction requested
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voluntary study participation from managers in a random sample of
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restaurants and scheduled a data collection visit through telephone
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calls or visits to the participating restaurants. Within each restaurant,
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food workers were requested to voluntarily participate in the study. No
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incentives were provided to participate in this study.
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Data collection
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Data collection took place from March 2018 to March 2019. Data
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were collected by EHS-Net staff. All data collectors participated in
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training designed to promote data collection consistency. At each
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restaurant, data collectors, EHS-Net staff, interviewed a manager
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(someone who had authority over the restaurant) about restaurant
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characteristics, asked food workers (staff members who prepare food
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in the restaurant) to complete a survey, and conducted an observation
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of food preparation and storage practices in the kitchen area. This
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paper presents data from the food worker survey on food workers’
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beliefs about food safety.
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Food workers completed a self-administered survey about their
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beliefs around food safety in their restaurant. The survey was provided
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in English and Spanish using the SurveyMonkey (Momentive, San
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Mateo, CA, USA) online survey platform. Food workers could either
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complete the survey online using the online application (at their con-
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venience) or complete a paper version of the survey during the data
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collection visit. Any surveys completed on paper forms were entered
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into SurveyMonkey later by the data collectors. We did not record
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whether a food worker completed an electronic or paper-based survey.
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A study identifier was used to link worker survey data to the match-
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ing restaurant; however, we did not collect data that could identify
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individual restaurants, managers, or workers. Each EHS-Net jurisdic-
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tion’s institutional review board approved the study protocol.
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Analysis
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We randomly split the completed survey responses into two groups
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(n = 248 per group) for analysis. One group was used for model build-
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ing, and the other group was used for validation of the statistical
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model. We examined the model fit of the theoretical model of food
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safety culture based on the constructs proposed by Griffith et al.
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(2010a) using confirmatory factor analysis. To assess fit, we examined
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the overall concordance of multiple indices; these included the chi-
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square (not statistically significant indicated a better fit), the standard-
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ized root mean square residual (SRMR < 0.08 indicates a better fit),
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the comparative fit index (CFI > 0.95 indicates a better fit), and root
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mean square error of approximation (RMSEA < 0.06 indicates a better
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fit) (Schreiber et al., 2006). However, the data that we collected did
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not support this model structure. Therefore, we then conducted an
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exploratory factor analysis to identify the factors that were empirically
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supported. We retained items that loaded onto unique common fac-
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tors, had a primary factor loading of 0.4 or above, and did not load
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onto another factor at 0.3 or above. We then examined whether the
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data would benefit from a data reduction method using Bartlett’s test
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A. Kramer et al.
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of sphericity, where a significant value supports further data reduc-
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tion. We then examined the number of factors that would be supported
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by the model using a scree test and minimum average partials test
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(Velicer et al., 2000). Once we identified the four factors and their
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associated items, we assessed scale reliability using Cronbach’s alpha
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with an alpha coefficient of 0.65 or higher considered acceptable.
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After that, we conducted structural equation modeling to identify an
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appropriate model structure and to determine if the data would sup-
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port further generalization to a higher-order factor. Finally, we created
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a composite measure for each factor in the model, based on the struc-
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tural equation model, where the sum of the Likert-scaled questions for
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each factor was calculated. Negatively phrased questions were recoded
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so that higher scores would equate to positive agreement (e.g., strong
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disagreement with a negatively phrased item was recoded as strong
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agreement for analysis). We then divided the sum by the number of
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questions associated with the factor to provide a standardized score
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for each factor. We used SAS version 9.4 (SAS Institute, Cary, NC,
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USA) to analyze the data.
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Results
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Demographics
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We contacted 1,496 restaurants to participate in the study, of
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which 506 were excluded (restaurants were no longer in business,
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were not a restaurant [e.g., a grocery store], the manager was unable
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to communicate with the study recruiting staff in English). Of the
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remaining 990 restaurants, we had participation from 331 restaurants.
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We received 579 food worker survey responses from those 331 differ-
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ent restaurants. Manager interview data indicated that the study
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restaurants were largely independently owned (57.1%). Food worker
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survey data showed that the largest group of food workers had 1-5
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years of experience (39.9%), 1-5 years of tenure in their current estab-
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lishment (46.6%), and worked primarily in the kitchen (55.4%). Most
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respondents had a current Certified Food Protection Manager creden-
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tial (56.7%); however, only 9.5% were in a supervisory role. Food
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workers reported primarily speaking English (72.5%) and Spanish
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(18%). Most of the food workers had completed high school
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(32.5%), had at least some college education (49.1%), and were male
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(50.6%) (Table 1).
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Data screening
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Of the 579 responses, 44 (7.6%) were completed in Spanish. All
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Likert-scaled items were initially tested for multicollinearity, deviation
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from linearity, consistency with similar items, and if all items were
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answered. This screening led us to drop item 5 (Table 2) from further
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analyses because it did not consistently correlate with other similar
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questions. This lack of correlation is likely due to the influence of var-
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ied glove use requirements across the jurisdictions.
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Theoretical model
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An initial theoretical model based on Griffith et al. (2010a) work
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was constructed where we associated each of the items to one of five
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constructs: Commitment; Communication; Leadership; Resources; and
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Risk Awareness. We then assessed this model for fit. However, our data
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did not support this model. None of the fit indices —
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7-(485) = 2,039.45, p < 0.0001; SRMR = 0.10; CFI = 0.68; and
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RMSEA = 0.11 (0.12, 0.11) — indicated an adequate fit between
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the data and the model.
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Journal of Food Protection 86 (2023) 100043
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Table 1
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Respondent demographics
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Demographic characteristic N Percentage
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Restaurant ownership
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Independently owned 189 57.1
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Chain owned 138 41.7
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Not reported 4 1.2
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Years of experience in food service
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<1 54 9.3
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1-5 231 39.9
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6-10 110 19
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11-15 60 10.4
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>15 103 17.8
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Not reported 21 3.6
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Years’ tenure in the current restaurant
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<1 191 33
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1-5 270 46.6
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6-10 65 11.2
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11-15 22 3.8
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>15 22 3.8
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Not reported 9 1.6
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Certified food protection manager
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Currently certified 328 56.7
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Previously certified 54 9.3
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Not certified 182 31.4
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Not Reported 15 2.6
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Primary area of the restaurant that they work in
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Kitchen/food preparation 321 55.4
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Food service/bar 155 26.8
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Management 55 9.5
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Other 35 6.1
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Not reported 13 2.3
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Sex
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Male 293 50.6
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Female 260 44.9
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Not reported 26 4.5
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Self-reported primary language
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English 420 72.5
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Spanish 104 18
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Chinese 16 2.8
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Other 26 4.5
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Not reported 13 2.3
|
|||
|
Level of formal education
|
|||
|
Less than High school graduate 73 12.6
|
|||
|
High school graduate 188 32.5
|
|||
|
Post high school 284 49.1
|
|||
|
Not reported 34 5.9
|
|||
|
|
|||
|
|
|||
|
Exploratory factor analysis
|
|||
|
|
|||
|
|
|||
|
We initially included 27 items in a factor analysis. Sixteen ques-
|
|||
|
tions were retained in the model. The principal factor analysis used
|
|||
|
squared multiple correlations with all other items, unweighted least
|
|||
|
squares factors, and a promax (oblique) rotation. The remaining 11
|
|||
|
items did not load onto common factors or meet the above criteria
|
|||
|
for retention in further analyses.
|
|||
|
|
|||
|
A significant Bartlett’s test of sphericity (7[62] = 133.92,
|
|||
|
Pp < 0.0001) indicated that the data could be reduced into factors.
|
|||
|
Results of a scree test and a minimum average partials test suggested
|
|||
|
four factors would be sufficient to explain the variance (Velicer
|
|||
|
et al., 2000).
|
|||
|
|
|||
|
Table 3 shows the survey items and factor loadings. The EHS-Net
|
|||
|
working group reviewed the items that formed each of the four factors
|
|||
|
to provide their perceptions of the constructs measured by each factor.
|
|||
|
The working group labeled those factors as Leadership, Management
|
|||
|
Commitment, Employee Commitment, and Resource Availability.
|
|||
|
Leadership included six items, Employee Commitment included four
|
|||
|
items, and Resource Availability and Management Commitment
|
|||
|
included three items each.
|
|||
|
|
|||
|
Scale reliability for each factor was assessed using Cronbach’s
|
|||
|
alpha; each factor had acceptable reliability (Leadership = 0.88,
|
|||
|
Employee Commitment = 0.87, Resource Availability = 0.72, Man-
|
|||
|
|
|||
|
|
|||
|
A. Kramer et al.
|
|||
|
|
|||
|
|
|||
|
Table 2
|
|||
|
Descriptive data on the Food Safety Culture Tool items
|
|||
|
|
|||
|
|
|||
|
Item N° Mean? SD
|
|||
|
|
|||
|
|
|||
|
Hb
|
|||
|
|
|||
|
|
|||
|
. Employees follow food safety rules, even when no one is 578 4.45 0.74
|
|||
|
|
|||
|
|
|||
|
looking
|
|||
|
|
|||
|
2. Employees encourage each other to follow food safety 578 4.43 0.79
|
|||
|
rules
|
|||
|
|
|||
|
3. Employees take responsibility for food safety in their 578 4.51 0.70
|
|||
|
areas
|
|||
|
|
|||
|
4. Employees wash their hands when they are supposed to 576 4.56 0.69
|
|||
|
|
|||
|
|
|||
|
on
|
|||
|
|
|||
|
|
|||
|
. Employees touch food that will not be cooked with their 571 2.09 1.37
|
|||
|
bare hands (Reverse coded)*
|
|||
|
|
|||
|
6. Employees do not work while they are sick with vomiting 577 4.38 1.12
|
|||
|
or diarrhea
|
|||
|
|
|||
|
7. There are enough gloves or utensils to use to avoid 577 4.57 0.96
|
|||
|
touching the food with my bare hands
|
|||
|
|
|||
|
8. Sinks are nearby and are easy to get to for handwashing 576 4.74 0.57
|
|||
|
|
|||
|
9. Sinks for handwashing have hot water, soap, and paper 578 4.77 0.56
|
|||
|
towels or another way to dry my hands
|
|||
|
|
|||
|
10. Equipment is well maintained and operates properly 578 4.45 0.81
|
|||
|
|
|||
|
11. There is enough staff to cover when the restaurant is 576 4.12 1.00
|
|||
|
busy
|
|||
|
|
|||
|
12. There is enough staff to cover when an employee does 577 3.89 1.08
|
|||
|
not come into work
|
|||
|
|
|||
|
13. Employees have to cut corners because there is too 573 3.89 1.22
|
|||
|
much work to do (Reverse coded)
|
|||
|
|
|||
|
14. Managers encourage employees to follow food safety 576 4.64 0.71
|
|||
|
rules
|
|||
|
|
|||
|
15. When the restaurant is busy, managers prioritize serving 570 3.67 1.48
|
|||
|
food over following food safety rules (Reverse coded)
|
|||
|
|
|||
|
16. Managers encourage employees to report food safety 577 4.44 0.83
|
|||
|
|
|||
|
|
|||
|
problems
|
|||
|
17. Managers ignore when employees are not following 576 4.22 1.20
|
|||
|
food safety rules (Reverse coded)
|
|||
|
18. Managers are aware of the food safety rules 573 4.64 0.71
|
|||
|
19. Managers strive to improve food safety practices 563 4.51 0.71
|
|||
|
|
|||
|
|
|||
|
20. If food safety rules are not followed a customer may 575 4.62 0.73
|
|||
|
become sick
|
|||
|
|
|||
|
21. The restaurant provides sufficient food safety training 578 4.43 0.82
|
|||
|
for me to do my job
|
|||
|
|
|||
|
|
|||
|
22. I know what the food safety rules are for my job 575 4.65 0.61
|
|||
|
|
|||
|
23. Food safety is stressed with signs, posters, or in-shift 571 4.22 1.00
|
|||
|
meetings
|
|||
|
|
|||
|
24. Employees are positively recognized for following food 574 4.00 1.04
|
|||
|
safety rules
|
|||
|
|
|||
|
25. Managers get feedback from employees to improve food 574 4.02 1.00
|
|||
|
safety
|
|||
|
|
|||
|
26. Employees know the restaurant’s food safety 574 4.47 0.68
|
|||
|
expectations
|
|||
|
|
|||
|
27. My manager explains what is expected of me 575 4.53 0.69
|
|||
|
|
|||
|
|
|||
|
28. It is easy to talk with my manager about any problems 576 4.45 0.89
|
|||
|
|
|||
|
|
|||
|
* Respondents were not required to answer every question resulting in
|
|||
|
varying response rates.
|
|||
|
|
|||
|
> Scores can range from 1 (strongly disagree) to 5 (strongly agree). Higher
|
|||
|
scores indicate stronger agreement with the statement or disagreement for
|
|||
|
reverse-coded items.
|
|||
|
|
|||
|
© Question 5 was dropped from the analysis because it was not consistently
|
|||
|
correlated with other similar questions.
|
|||
|
|
|||
|
|
|||
|
agement Commitment = 0.73) (Nunnally, 1978). External validity
|
|||
|
was assessed using the reserved half of the dataset; the results were
|
|||
|
similar to those obtained from the first half of the data.
|
|||
|
|
|||
|
|
|||
|
Structural equation modeling
|
|||
|
|
|||
|
|
|||
|
Structural equation modeling was used to identify the relationships
|
|||
|
among the factors and to determine if the data would support a higher-
|
|||
|
order factor (Anderson and Gerbing, 1988). In other words, this mod-
|
|||
|
eling was to determine if the identified factors are stand-alone factors,
|
|||
|
are inter-related, and if they can be further generalized to a higher-
|
|||
|
order factor (an overarching factor that is explained by these primary
|
|||
|
factors, similar to how individual questions explain the primary
|
|||
|
factors).
|
|||
|
|
|||
|
|
|||
|
Journal of Food Protection 86 (2023) 100043
|
|||
|
|
|||
|
|
|||
|
We examined various structural forms of the factors identified in
|
|||
|
the exploratory factor analysis; a model with one higher-order factor
|
|||
|
(Worker beliefs about food safety culture) was found to be optimal.
|
|||
|
The fit indices for this model showed an overall good fit —
|
|||
|
7100) = 210.78, p < 0.0001; SRMR = 0.05; CFI = 0.95; and
|
|||
|
RMSEA = 0.07 (0.08,0.05) (Figure 1).
|
|||
|
|
|||
|
Reliability estimates were generally acceptable (Table 4). Item reli-
|
|||
|
ability was generally above 0.5, except for item 7 (0.27). We chose to
|
|||
|
retain this item because of its contextual similarity to other items and
|
|||
|
to maintain factor reliability. The four primary factors exhibited
|
|||
|
acceptable overall composite reliability (Leadership = 0.91, Employee
|
|||
|
Commitment = 0.89, Resource Availability = 0.79, and Management
|
|||
|
Commitment = 0.78). Relationships between individual items and
|
|||
|
their associated factor were examined; all pathways were significant.
|
|||
|
Similarly, the relationships between each of the primary factors were
|
|||
|
significantly associated with the higher-order factor (Table 4). The
|
|||
|
finding that the t-values are significant for these path coefficients sug-
|
|||
|
gests that the items are measuring the same construct.
|
|||
|
|
|||
|
|
|||
|
Scale measures
|
|||
|
|
|||
|
|
|||
|
All constructs had composite scores spanning the entire range, from
|
|||
|
1 (strongly disagree) to 5 (strongly agree). In general, food workers
|
|||
|
viewed each of the factors positively (composite score >3), although
|
|||
|
individual workers in some restaurants reported lower scores. Food
|
|||
|
workers viewed Resource Availability highest (mean = 4.69,
|
|||
|
SD = 0.57), followed by Employee Commitment (mean = 4.49,
|
|||
|
SD = 0.62), Leadership (mean = 4.28, SD = 0.69), and Management
|
|||
|
Commitment (mean = 3.94, SD = 1.05). The overall belief in food
|
|||
|
safety culture had a mean score of 4.35 (SD = 0.53) (Table 4).
|
|||
|
|
|||
|
|
|||
|
Discussion
|
|||
|
|
|||
|
|
|||
|
Our intent for this study was to provide convergent validity in sup-
|
|||
|
port of existing food safety culture models within restaurant food
|
|||
|
workers. Because our data did not support the application of any of
|
|||
|
the existing published models of food safety culture, we created a
|
|||
|
new model. Our model is not wholly unique and does share some com-
|
|||
|
mon factors with previously published models. Similar to other mod-
|
|||
|
els, we identified a Leadership factor (Abidin, Fatimah, Arendt, &
|
|||
|
Strohbehn, 2014; De Boeck, Jacxsens, Bollaerts, & Vlerick, 2015;
|
|||
|
Griffith, Livesey, & Clayton, 2010a; Taha, Wilkins, Juusola, & Osaili,
|
|||
|
2020) and Resources factor (Abidin et al., 2014; De Boeck et al.,
|
|||
|
2015). However, while some researchers have identified a single con-
|
|||
|
struct of commitment (Abidin, Fatimah, Arendt, & Strohbehn, 2014;
|
|||
|
De Boeck, Jacxsens, Bollaerts, & Vlerick, 2015; Griffith, Livesey, &
|
|||
|
Clayton, 2010a), we found two commitment-related constructs — one
|
|||
|
for managers and one for workers (Ball et al., 2010; Neal et al.,
|
|||
|
2012; Taha et al., 2020). Additionally, other researchers have identi-
|
|||
|
fied constructs which our data did not support, such as risk awareness
|
|||
|
(Abidin, Fatimah, Arendt, & Strohbehn, 2014; De Boeck, Jacxsens,
|
|||
|
Bollaerts, & Vlerick, 2015; Griffith, Livesey, & Clayton, 2010a). Differ-
|
|||
|
ences between our model and others may be because food safety cul-
|
|||
|
ture constructs differ across settings (Abidin et al., 2014; Ball et al.,
|
|||
|
2010; De Boeck et al., 2015; Neal et al., 2012; Taha et al., 2020).
|
|||
|
Our findings might also be the result of our sample being comprised
|
|||
|
of a large and heterogenous (331 restaurants spread across eight differ-
|
|||
|
ent jurisdictions) sample compared with the limited sampling frames
|
|||
|
available to other researchers.
|
|||
|
|
|||
|
The items making up Resource Availability, the construct with the
|
|||
|
highest rated composite score of the four, assess the availability of
|
|||
|
resources needed to maintain good hand hygiene. This high score
|
|||
|
was not unexpected; hand hygiene resources are a basic component
|
|||
|
of food safety and are assessed during inspections.
|
|||
|
|
|||
|
|
|||
|
A. Kramer et al.
|
|||
|
|
|||
|
|
|||
|
Journal of Food Protection 86 (2023) 100043
|
|||
|
|
|||
|
|
|||
|
Table 3
|
|||
|
Factor loadings and communalities based on factor analysis with promax rotation for 16 items from the Food Safety Culture Survey Tool (n = 248)
|
|||
|
Item Factor 1 - Factor 2 - Employee Factor 3 - Factor 4 - Management Communality
|
|||
|
Leadership Commitment Resources Commitment
|
|||
|
|
|||
|
21. The restaurant provides sufficient food safety training forme todomy 0.82 0.72
|
|||
|
job
|
|||
|
|
|||
|
25. Managers get feedback from employees to improve food safety 0.79 0.65
|
|||
|
|
|||
|
23. Food safety is stressed with signs, posters, or in-shift meetings 0.76 0.55
|
|||
|
|
|||
|
24. Employees are positively recognized for following food safety rules 0.73 0.58
|
|||
|
|
|||
|
27. My manager explains what is expected of me 0.60 0.66
|
|||
|
|
|||
|
26. Employees know the restaurant’s food safety expectations 0.58 0.64
|
|||
|
|
|||
|
3. Employees take responsibility for food safety in their areas 0.82 0.78
|
|||
|
|
|||
|
2. Employees encourage each other to follow food safety rules 0.80 0.70
|
|||
|
|
|||
|
1. Employees follow food safety rules, even when no one is looking 0.71 0.69
|
|||
|
|
|||
|
4. Employees wash their hands when they are supposed to 0.55 0.53
|
|||
|
|
|||
|
8. Sinks are nearby and are easy to get to for handwashing 0.85 0.75
|
|||
|
|
|||
|
9. Sinks for handwashing have hot water, soap, and paper towels or another 0.77 0.64
|
|||
|
way to dry my hands
|
|||
|
|
|||
|
7. There are enough gloves or utensils to use to avoid touching the food with 0.56 0.29
|
|||
|
my bare hands
|
|||
|
|
|||
|
15. When the restaurant is busy, managers prioritize serving food over 0.81 0.62
|
|||
|
following food safety rules (Reverse coded)
|
|||
|
|
|||
|
13. Employees have to cut corners because there is too much work to do 0.72 0.56
|
|||
|
(Reverse coded)
|
|||
|
|
|||
|
17. Managers ignore when employees are not following food safety rules 0.68 0.49
|
|||
|
|
|||
|
|
|||
|
(Reverse coded)
|
|||
|
|
|||
|
|
|||
|
Note: Factor loadings <0.3 are suppressed.
|
|||
|
|
|||
|
|
|||
|
The items making up Employee Commitment assess workers’ per-
|
|||
|
ceptions of their coworkers’ commitment to food safety (e.g., employ-
|
|||
|
ees follow food safety rules even when no one is looking). This
|
|||
|
construct was relatively highly rated, suggesting that workers in our
|
|||
|
study believed their coworkers were committed to food safety.
|
|||
|
Employee commitment to food safety likely leads to social norms that
|
|||
|
are supportive of food safety behavior; social norms can be important
|
|||
|
predictors of behavior (Yiannas, 2008).
|
|||
|
|
|||
|
|
|||
|
Leadership
|
|||
|
|
|||
|
|
|||
|
Employee
|
|||
|
Commit ment
|
|||
|
|
|||
|
|
|||
|
Worker Beliefs
|
|||
|
- FS Gulture
|
|||
|
|
|||
|
|
|||
|
Resources
|
|||
|
|
|||
|
|
|||
|
Figure 1. Path diagram of food safety culture model.
|
|||
|
|
|||
|
|
|||
|
Two of the unique constructs directly tied to management: Leader-
|
|||
|
ship and Management Commitment. Leadership deals primarily with
|
|||
|
stated food safety policies, training, and information sharing (ques-
|
|||
|
tions such as: The restaurant provides sufficient food safety training
|
|||
|
for me to do my job). Management Commitment covers prioritizing
|
|||
|
food safety practice (with questions such as: When the restaurant is
|
|||
|
busy, managers prioritize serving food over following food safety
|
|||
|
rules). These constructs had the lowest overall scores and highest vari-
|
|||
|
ation in scores. This dichotomy might result from the difference
|
|||
|
between the stated practices (Leadership) and their implementation
|
|||
|
(Management Commitment). We take this to mean that restaurants
|
|||
|
might have good practices in place, but the pragmatic realities of oper-
|
|||
|
ating a restaurant might result in lapses in the application of those
|
|||
|
practices.
|
|||
|
|
|||
|
We were able to further generalize the results of this study to a
|
|||
|
higher-order construct composed of the results of the four primary
|
|||
|
constructs. This higher-order construct provides a high-level view of
|
|||
|
the overall food safety culture in a restaurant. This finding also indi-
|
|||
|
cates that food safety culture may be a part of the larger organizational
|
|||
|
culture in the restaurant.
|
|||
|
|
|||
|
We also assessed risk awareness (e.g., If food safety rules are not
|
|||
|
followed, a customer might become sick). However, these questions
|
|||
|
did not load onto a unique factor, suggesting that restaurant food
|
|||
|
workers might have highly variable views of the risk posed by food.
|
|||
|
This finding suggests that perceptions of risk may be less important
|
|||
|
to food safety culture than manager and worker commitment to speci-
|
|||
|
fic food safety behaviors.
|
|||
|
|
|||
|
This study has at least six limitations. First, the survey was self-
|
|||
|
administered, which would require the food worker to be able to read.
|
|||
|
Second, the survey was provided only in English and Spanish, which
|
|||
|
required the food worker to comprehend one of these languages to
|
|||
|
complete the survey. The potential universe of primary languages used
|
|||
|
by food workers is likely much greater than these two languages.
|
|||
|
Third, because the survey responses were self-reported, responses
|
|||
|
are subject to social desirability bias, which might have resulted in
|
|||
|
overreporting of socially desirable responses, such as positive views
|
|||
|
of food safety. Fourth, since limited information was collected about
|
|||
|
the food workers’ individual characteristics, we are unsure of the com-
|
|||
|
parability of our sample to all food workers. Fifth, responses were from
|
|||
|
voluntarily participating restaurants. Responses from restaurants that
|
|||
|
|
|||
|
|
|||
|
A. Kramer et al.
|
|||
|
|
|||
|
|
|||
|
Journal of Food Protection 86 (2023) 100043
|
|||
|
|
|||
|
|
|||
|
Table 4
|
|||
|
Properties of the Food Safety Culture Structural Equation Model
|
|||
|
Constructs and Items Standardized e Reliability Variance extracted Mean Standard
|
|||
|
loading estimate Deviation
|
|||
|
Leadership 0.91" 0.38 4.28 0.69
|
|||
|
21. The restaurant provides sufficient food safety training for me to do my job 0.83 35.98 0.69
|
|||
|
23. Food safety is stressed with signs, posters, or in-shift meetings 0.73 22.11 0.53
|
|||
|
24. Employees are positively recognized for following food safety rules 0.75 23.58 0.55
|
|||
|
25. Managers get feedback from employees to improve food safety 0.77 26.12 0.59
|
|||
|
26. Employees know the restaurant’s food safety expectations 0.81 31.72 0.65
|
|||
|
27. My manager explains what is expected of me 0.81 32.17 0.66
|
|||
|
Employee commitment 0.89" 0.37 449 0.62
|
|||
|
1. Employees follow food safety rules, even when no one is looking 0.84 35.46 0.70
|
|||
|
2. Employees encourage each other to follow food safety rules 0.82 32.86 0.67
|
|||
|
3. Employees take responsibility for food safety in their areas 0.88 44.02 0.77
|
|||
|
4. Employees wash their hands when they are supposed to 0.73 21.89 0.53
|
|||
|
Resources 0.79" 0.32 4.69 0.57
|
|||
|
7. There are enough gloves or utensils to use to avoid touching the food with my bare 0.52 9.95 0.27
|
|||
|
hands
|
|||
|
8. Sinks are nearby and are easy to get to for handwashing 0.88 26.88 0.77
|
|||
|
9. Sinks for handwashing have hot water, soap, and paper towels or another way to dry 0.80 22.89 0.64
|
|||
|
my hands
|
|||
|
Management commitment 0.78" 0.32 3.94 1.05
|
|||
|
13. Employees have to cut corners because there is too much work to do (Reverse 0.76 18.02 0.58
|
|||
|
coded)
|
|||
|
15. When the restaurant is busy, managers prioritize serving food over following food 0.74 16.95 0.55
|
|||
|
safety rules (Reverse coded)
|
|||
|
17. Managers ignore when employees are not following food safety rules (Reverse 0.71 15.72 0.51
|
|||
|
coded)
|
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|
Workers’ beliefs about food safety culture 4.35 0.53
|
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|
|
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|
|
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|
* t tests assessed the pathways between all items and the constructs. All t tests were significant at p < 0.0001.
|
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|
|
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|
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|
> Denotes composite reliability.
|
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|
|
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|
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|
did not participate might have differed, leading to a potential selection
|
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|
bias. Finally, because turnover is high in the restaurant industry
|
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|
(National Restaurant Association, 2014), worker beliefs about food
|
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|
safety culture captured at the time of our study might not be represen-
|
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|
tative of worker beliefs in restaurants over time.
|
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|
|
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|
We have provided a new, empirically derived model for assessing
|
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|
worker’s beliefs about food safety culture. This model is based on
|
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|
restaurant workers’ level of agreement with statements about the food
|
|||
|
safety within their restaurant. Restaurants can use this tool to obtain a
|
|||
|
benchmark of their workers’ views of food safety. The tool can also be
|
|||
|
used to assess changes in perceptions of food safety over time and the
|
|||
|
effect of interventions designed to improve the food safety culture.
|
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|
|
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|
This model could be further refined. Eleven of the questions we
|
|||
|
asked did not load onto any constructs. This might be because of addi-
|
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|
tional constructs that we did not ask about (such as work pressures or
|
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|
worker burnout). We recommend further evaluation and refinement of
|
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|
the questions to determine if there are food safety culture factors our
|
|||
|
study did not assess. Further, we recommend developing additional
|
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|
questions around the existing factors that we identified. This will serve
|
|||
|
to strengthen the factors (from a statistical standpoint) and allow
|
|||
|
researchers to more narrowly define what the constructs are
|
|||
|
measuring.
|
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|
|
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|
|
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|
Declaration of Competing Interests
|
|||
|
|
|||
|
|
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|
The authors declare that they have no known competing financial
|
|||
|
interests or personal relationships that could have appeared to influ-
|
|||
|
ence the work reported in this paper.
|
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|
|
|||
|
|
|||
|
Acknowledgments
|
|||
|
|
|||
|
|
|||
|
We thank the restaurant managers and employees that participated
|
|||
|
in this study and the EHS-Net data collectors. Without their participa-
|
|||
|
tion, this study would not have been possible. This publication is based
|
|||
|
on data collected and provided by the CDC EHS-Net, which is sup-
|
|||
|
|
|||
|
|
|||
|
ported by a CDC grant funded under CDC-RFA-EH-15-001. The find-
|
|||
|
ings and conclusions in this report are those of the authors and do
|
|||
|
not necessarily represent the views of CDC or the Agency for Toxic
|
|||
|
Substances and Disease Registry. Use of trade names and commercial
|
|||
|
sources is for identification only and does not imply endorsement by
|
|||
|
the U.S. Department of Health and Human Services.
|
|||
|
|
|||
|
|
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|
Appendix A. Supplementary material
|
|||
|
|
|||
|
|
|||
|
Supplementary data to this article can be found online at
|
|||
|
https://doi.org/10.1016/j.jfp.2023.100043.
|
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|
|
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|
|
|||
|
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