Sustainability in Hospitality Marketing during the COVID-19 Pandemic. Content Analysis of Consumer Empirical Research
Abstract
:1. Introduction
2. Research Method
3. Findings
3.1. Research Topics, Variables, and Themes
- Consumer perceptions:
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- Consumer generic perceptions of the COVID-19 pandemic and prevention measures adopted by authorities: (long-term) perceived risk of COVID-19, perceived severity of COVID-19, perceived shock of disaster of COVID-19, perceived threat of COVID-19, perceived health status, perceived health risk, perceived healthcare system, perceived solidarity, perceived wellbeing, perceived crisis management, perceived governmental trust, perceived governance wellbeing;
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- Consumer specific perceptions of products/services during the COVID-19 pandemic and prevention measures adopted by companies: perceived risk (general, sanitation, dining, food, restaurant food, food delivery, food packaging, health), perceived threat, perceived safety (food, restaurant, hotel), safety/prevention measures, perceived effort/effectiveness/response efficacy/social responsibility, perceived hygiene (customer-use spaces, staff, workspaces), perceived comfort/distance/density/territoriality/crowdedness/social distancing, perceived experiencescape/servicescape/green and healthy physical environment, perceived quality/scarcity/popularity/price/reputation/image, perceived ethics of data collection, perceived data protection policy, perceived prevalence of information disclosure, perceived wellbeing;
- Consumer emotions and psychological conditions: emotional experiences, emotions (initial and subsequent), anticipated emotions (positive and negative), emotional crisis, emotional contagion, emotion regulation ability, post-traumatic stress disorder (intrusive thoughts, avoiding reminders, negative thoughts and feelings, arousal and reactive symptoms), anxiety, loneliness, isolation, freedom threat, fear, grief (denial, anger, bargaining, depression, acceptance);
- Technology innovation:
- -
- Technology advances for food delivery: online food delivery (including perceived benefit/convenience, perceived risk, perceived task-technology fit), drone food delivery (including perceived risks, image, perceived behavioral control, perceived innovativeness);
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- Other technology advances: artificial intelligence, technology innovation, self-service technologies, mobile/kiosk check-in systems, robot cleaning systems, robot service, telemedicine experience, human-technology interactions, mobile payment services;
- Communications and media: green/healthy promotion strategies, health communication, communication of prevention measures, communication of cleaning programs, clean safety message framing, message framing (warmth-focused vs. competence-focused), regulatory focus (promotion vs. prevention focus), construal mindset (how vs. why), communication styles (numerical vs. verbal), normative appeals (descriptive vs. conjunctive), donation appeals, typefaces (handwritten vs. machine-written), media exposure to COVID-19, media attention to COVID-19, menu visual appeal, menu informativeness;
- Other: this group includes other themes revolving around the following research topics: quarantine decisions, business model innovation, as well as global trends and tourism development.
3.2. Method and Study Design
3.3. Data Analysis
3.4. Sample
3.5. Industry
3.6. Location
4. Discussion
4.1. Consumer Perceptions
4.1.1. Consumer Generic Perceptions
4.1.2. Consumer Specific Perceptions
4.2. Consumer Emotions and Psychological Conditions
4.3. Technology Innovation
4.3.1. Technology Advances for Food Delivery
4.3.2. Other Technology Advances
4.4. Communication and Media
4.5. Other
5. Conclusions and Future Research Possibilities
Author Contributions
Funding
Conflicts of Interest
References
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Inclusion Criteria | Exclusion Criteria |
---|---|
Papers published in nine SSCI ranked hospitality journals from January 2020 up to and including May 2021 | Editorials |
Papers with keywords (COVID-19, pandemic, coronavirus) appearances in the title/abstract/keywords | Papers without keywords (COVID-19, pandemic, coronavirus) appearances in the title/abstract/keywords |
Papers with a clear focus on the COVID-19 pandemic | Papers with the research conducted before the COVID-19 pandemic Papers that were not designed to examine the impact of the pandemic Papers where the keywords were merely mentioned in the text |
Papers from the marketing subject area | Papers from the human research management (HRM) and other subject areas |
Papers dealing with sustainability | Papers dealing only with economic recovery strategies |
Papers with empirical research | Conceptual papers |
Papers with consumer or consumer-related sample | Papers with managers sample only |
Journal | Keywords 1 | Relevance 2 | Mktg 3 | Mktg Sust 4 | Mktg Sust Emp 5 | Mktg Sust Emp Cons 6 |
---|---|---|---|---|---|---|
IJHM | 97 | 94 | 65 | 58 | 52 | 30 |
IJCHM | 32 | 24 | 17 | 15 | 12 | 5 |
JHMM | 3 | 3 | 2 | 2 | 2 | 2 |
JHTR | 9 | 8 | 4 | 1 | 0 | 0 |
JHTM | 15 | 13 | 11 | 10 | 10 | 7 |
SJHT | 4 | 1 | 1 | 1 | 1 | 1 |
CHQ | 1 | 0 | 0 | 0 | 0 | 0 |
JHTT | 0 | 0 | 0 | 0 | 0 | 0 |
JOHLSTE | 7 | 3 | 1 | 1 | 1 | 1 |
Total | 168 | 146 | 101 | 88 | 78 | 46 |
N. | Authors | Research Topics and Variables | Theme | Method/Design | Data Analysis | Sample | Industry | Location |
---|---|---|---|---|---|---|---|---|
INTERNATIONAL JOURNAL OF HOSPITALITY MANAGEMENT | ||||||||
1. | Altuntas & Gok [20] | Quarantine decisions, domestic tourist mobility | T5 | Quantitative/ Secondary data | DEMATEL method analysis | Tourist mobility data | Travel | Turkey |
2. | Belarmino et al. [21] | Online meal delivery platforms, quarantine, sharing economy ethos, price-value, food quality, service speed, perceived ease of use, confirmation of beliefs, satisfaction | T3 | Quantitative/ Two online surveys | Multiple linear regressions. Moderation (χ2 test). | 314 + 315 consumers | Restaurant (Food delivery) | USA |
3. | Breir et al. [22] | Business model innovation, crisis, recovery, inhibitors, enhancers, stammgasts 1, free time resources, overall pressure to change, extensive support, high liquidity | T5 | Qualitative/ Multiple case study. Two semi structured interviews. Secondary data. | Within-case and cross-case analysis. | Six stammgasts + six managers/ owners + website/social media data | Restaurant, bar, and hotel | Austria |
4. | Brewer & Sebby [23] | Online food orders, menu visual appeal, menu informativeness, perception of COVID-19 risk, desire for food, perceived convenience of online ordering, purchase intentions | T3 T4 T1 | Quantitative/Online survey | EFA. CFA. SEM. | 420 residents | Restaurant (Food delivery) | USA |
5. | Byrd et al. [24] | COVID-19 risk perceptions (food risk, food safety, food in general, restaurant food, food delivery, food packaging) | T1 | Quantitative/Online survey | Descriptive statistics. ANOVA. ANCOVA. Multiple pairwise comparison tests. | 958 residents | Restaurant | USA |
6. | Cai & Leung [25] | Online delivery providers, construal mindset (how vs. why), regulatory focus (promotion vs. prevention focus), message framing, self-efficacy, perceived benefit, perceived risk, purchase intention, risk propensity | T3 T4 | Quantitative/Two online experiments | ANCOVA. PROCESS. Moderation. Mediation. | 258 + 319 residents | Restaurant (Food delivery) | USA |
7. | Cai et al. [26] | Green/healthy promotion strategies, green/ healthy physical environment (green and healthy space, green and healthy room, design environmental value), wellbeing perception, satisfaction, loyalty | T4 T1 | Quantitative/ Online survey | CFA. SEM. | Consumers | B & B | China |
8. | Chen et al. [27] | Contact tracing, perceptions (perceived ethics of data collection, perceived data protection policy, perceived governmental trust, perceived prevalence of information disclosure), trust (cognitive and affective trust), cooperative behavior intentions (willingness to disclose/falsify) | T1 | Mixed method 2/ Semi-structured interviews and online survey | Thematic analysis. CFA. PLS-SEM. Descriptive statistics. | 24 consumers + 365 USA residents | Restaurant, café and bar | Australia, New Zealand, UK, USA, Canada |
9. | Dedeoğlu & Boğan [28] | Motivations (sociability, convenience, food visual appeal, pleasure, affect regulation, social image), visit intention, trust in government, risk perception of COVID-19 | T1 | Quantitative/Online survey | CFA. SEM. Measurement invariance. Moderation (cluster analysis and multi-group analysis). | 681 residents | Restaurant | Turkey |
10. | Foroudi et al. [29] | Perception of shock of disaster, adoptive beliefs, anticipated emotions (positive and negative), future desire, non-pharmaceutical intervention, perceived health risk, lockdown restrictions | T1 T2 | Quantitative/Online survey | CFA. SEM. Moderation (interaction effect analysis). | 415 consumers | Restaurant | UK |
11. | Hsieh et al. [30] | Perceived threats, customer individual response efficacy, government and social trust, hotel response efficacy, intention to stay | T1 | Quantitative/Online survey | CFA. SEM. Mediation (indirect effect plugin). | 700 consumers | Hotel | USA |
12. | Jiménez Barreto et al. [31] | Communication of cleaning programs, communication styles (numerical vs. verbal), brand personality, attitudes, intentions | T4 | Mixed method/ Two studies. Online experiment. | Grounded theory. Computerized psycho-linguistic analysis. ANOVA. MANOVA. | 80 + 186 consumers | Hotel | USA |
13. | Kang et al. [32] | Prevention measures, normative appeals (descriptive vs. conjunctive), freedom threat, negative cognition, attitude, age, risk perception of COVID-19, gender | T4 T2 T1 | Quantitative/ Online experiment | T-tests. PROCESS. Serial mediation. Moderation. Moderated serial mediation. | 324 consumers | Restaurant | South Korea |
14. | Kim et al. [33] | Artificial intelligence, perceived risk of COVID-19, safety and social distancing, robot service, human service, perceived threat | T3 T1 | Quantitative/Six studies. Four online experiments. | Regression. ANOVA. χ2 test. PROCESS. Mediation. Moderation. | 134 + 134 + 162 + 171 + 113 + 150 consumers | Hotel | USA |
15. | Kim et al. [34] | Drone food delivery, perceived innovativeness, attitude, subjective norm, perceived behavioral control, behavioral intentions | T3 | Quantitative/Two online surveys | CFA. SEM. Measurement invariance. Moderation (multi-group analysis). | 320 + 336 consumers | Restaurant (Food delivery) | South Korea |
16. | Li et al. [35] | Scarcity cues (occupancy rate), safety perception, popularity, quality, purchase intentions, consumer choices, consumption context | T1 | Quantitative/Three online experiments | ANOVA. T-tests. χ2 test. PROCESS. Mediation. Moderated mediation. | Residents: 120 USA + 192 UK + 271 USA | Restaurant and hotel | USA and UK |
17. | Pappas & Glyptou [36] | Accommodation decision-making, perceptions, general risks, price issues, quality issues, sanitation risks, hygiene, coronavirus | T1 | Quantitative 3/Telephone survey | Descriptive statistics. EFA. fsQCA. NCA. | 385 residents | Lodging | Greece |
18. | Radic et al. [37] | Dining experiencescape (perceived crowdedness, dining atmospherics, interaction with guests), emotions, approach behavior, perceived health risk | T1 T2 | Quantitative/Online survey | CFA. SEM. Measurement invariance. Moderation (cluster analysis and χ2 test). | 402 female consumers | Cruise | North America and Europe |
19. | Sharma et al. [38] | Food delivery apps, over-ordering, food waste, hygiene consciousness, trust, price advantage, interface, quality, attitude, shopping routine, perceived severity of COVID-19, moral norms | T3 T1 | Quantitative/Online survey | CFA. SEM. PROCESS. Mediation. Moderation. | 440 food delivery apps users | Restaurant (Food delivery) | India |
20. | Shin & Kang [39] | Technology innovation, social distancing, mobile/kiosk check-in systems, robot cleaning systems, risk reduction strategy, perceived health risk, expected interaction, expected cleanliness, booking intention | T3 T1 | Quantitative/Three online experiments | T-test. ANOVA. PROCESS. Mediation. Moderation. | 118 + 160 + 159 consumers | Hotel | N/S |
21. | Sung et al. [40] | Media exposure to COVID-19, media attention to COVID-19, fear, risk perceptions of COVID-19, restaurant preventive behavior | T4 T2 T1 | Quantitative/Online survey | CFA. SEM. Mediation. | 366 consumers | Restaurant | Taiwan |
22. | Taylor Jr. [41] | Preferences, perceptions, servicescape, social distancing, aesthetics, comfort, safety, cleanliness, dine-in likelihood, age | T1 | Quantitative/Online quasi-experiment | Descriptive statistics. T-tests. PROCESS. Mediation. Cross-tabulation. | 324 consumers | Restaurant | USA |
23. | Tuzovic et al. [42] | Collective wellbeing, collective wellbeing domains, social distancing, service ecosystems | T1 | Qualitative/Semi-structured online interviews | Thematic analysis. | 15 consumers | Restaurant | Germany |
24. | Wang et al. [43] | Crowdedness, safety measures, perception of distance, perception of COVID-19 severity, perception of safety (eat-in and order take-away), comfort, popularity, price, reputation, food quality, effort, effectiveness, social responsibility, patronage choices | T1 | Quantitative/Online experiment | ANOVA. Multi-nominal logistic regressions. PROCESS. Mediation. | 593 USA consumers + 591 Australian consumers | Restaurant and food delivery | USA and Australia |
25. | Wei et al. [44] | Perceived importance of preventive measures, dining involvement, brand trust, intentions to dine-out, country of origin | T1 | Quantitative/Online survey | CFA. SEM. PROCESS. Mediation. Moderation (hierarchal multiple regression). | 296 consumers | Restaurant | USA |
26. | Wong & Yang [45] | Quarantined lodging stay, perceived health status, anxiety, loneliness, service quality, length of stay | T1 T2 | Quantitative/ Online survey | CFA. SEM. Moderation. | 320 guests | Hotel, inn, hostel, and guest house | China |
27. | Yang et al. [46] | Luxury hotel restaurant, online-to-offline (O2O) food delivery platforms, luxury dining experiences | T3 | Qualitative/Two studies. Content analysis and semi-structured phone interviews. | Thematic analysis. | 754 consumer reviews + 16 F & B professionals | Hotel restaurant | China |
28. | Yu et al. [47] | Perceived hygiene attributes (hygiene of customer-use spaces, personal hygiene of staff, hygiene of workspaces), cognitive image, affective image, word of mouth, revisit intention | T1 | Mixed method/ In-depth interviews with focus groups and online survey | Qualitative data analysis. EFA. CFA. SEM. | Five consumers, four staff members, two professors + 314 consumers | Hotel | N/S |
29. | Zhang et al. [48] | Social distancing, density, perceived territoriality, attitudes, revisit intention, power, perceived risk of indoor and outdoor dining | T1 | Quantitative/Online quasi-experiment | PROCESS. Interaction. Moderation. Mediation. | 327 consumers | Restaurant | N/S |
30. | Zhao & Bacao [49] | Food delivery apps, perceived task-technology fit, confirmation, performance expectancy, effort expectance, social influence, trust, satisfaction, continuance intention | T3 | Quantitative/ Online survey | EFA. CFA. SEM. | 532 food delivery apps users | Restaurant (Food delivery) | China |
INTERNATIONAL JOURNAL OF CONTEMPORARY HOSPITALITY MANAGEMENT | ||||||||
31. | Cheng et al. [50] | Hospitable telemedicine experience, empowerment (perceived competence and control), human-technology interactions, human-human interactions, isolation reduction, anxiety reduction | T3 T2 | Quantitative/ Online survey | Stepwise multiple regression and simple linear regression. | 409 consumers | Healthcare | USA |
32. | Choe et al. [51] | Drone food delivery, perceived risk (financial, time, privacy, performance, psychological), image, intentions to use | T3 | Quantitative/Two online surveys | CFA. SEM. Measurement invariance. Moderation (multi-group analysis). | 331 + 343 consumers | Restaurant (Food delivery) | South Korea |
33. | Huang & Liu [52] | CSR marketing, donation appeals, typeface (hand-written vs. machine-written), message framing (warmth-focused vs. competence-focused), brand trust, consumer responses, donation intention, brand loyalty. | T4 | Quantitative/Online experiment | ANOVA. PROCESS. Moderated mediation. | 170 consumers | Restaurant | USA |
34. | Wong et al. [53] | Grief for sport event, grief for politics and media, grief for crisis, grief cycle (denial, anger, bargaining, depression, acceptance), emotional crisis | T2 | Qualitative/Content analysis and social network analysis | Thematic analysis. Social network analysis. | 736 user-generated messages from Twitter | Sport | USA |
35. | Yang et al. [54] | Restaurant demand, stay-at-home order, restaurant visits, restaurant sales | T3 | Quantitative/Secondary data | Descriptive statistics. Econometric modeling. Moderation. | Foot traffic and card transaction data | Restaurant | USA |
JOURNAL OF HOSPITALITY MARKETING & MANAGEMENT | ||||||||
36. | Atadil & Lu [55] | Hotel safety, safe hotel image, medical preparedness, hygiene control, health communication, self-service technology, hotel selection behavior | T1 T4 T3 | Quantitative/ Online survey | EFA. Multiple linear regression. | 500 guests | Hotel | USA |
37. | Kim et al. [56] | Perceived COVID-19 threat, quality/price, preference, safety-seeking | T1 | Quantitative/ Five studies. Online survey and experiments. Secondary data. | Regression. ANOVA. ANCOVA. PROCESS. Mediation. Reverse mediation. Google Trends analysis. | 86 + 145 + 179 + 152 + 235 consumers + Google Trends data | Hotel | USA |
JOURNAL OF HOSPITALITY AND TOURISM MANAGEMENT | ||||||||
38. | Khanra et al. [57] | Adoption postponement of mobile payment services, barriers (usage, value, risk, tradition, image), visibility, privacy concerns, security concerns | T3 | Mixed method/ Open-ended essay and online survey | Qualitative data analysis. CFA. SEM. PROCESS. Moderation. | 20 + 308 consumers | Lodging and transportation | India |
39. | Kim et al. [58] | Clean safety message framing, sales promotion strategy, repurchase intentions, sales | T4 | Quantitative/Two experiments | ANOVA. Duncan’s test. Regression. Time series analysis. | 336 consumers | Restaurant | South Korea |
40. | Kim & Lee [59] | Perceived threat of COVID-19, preferences, private dining, private table, restaurant choice | T1 | Quantitative/ Four studies. Two online surveys and two experiments. | Regression. ANOVA. | 199 + 252 + 174 + 187 residents | Restaurant | USA |
41. | Leung & Cai [60] | Digital food delivery, competency, perceived risk, purchase intention, self-efficacy, risk propensity, pandemic severity, consumer knowledge of COVID-19 | T3 | Quantitative/Online survey | CFA. PLS-SEM. Moderation (multi-group analysis). | 703 residents | Restaurant (Food delivery) | USA |
42. | Qi & Li [61] | Emotional experiences, emotions (initial and subsequent), attitude, behavior, information-processing, sensemaking, message framing, emotional contagion, sensitivity | T2 T4 | Qualitative/In-depth online interviews | Thematic analysis. Theoretically informed analysis. | 28 travelers | Travel | New Zealand, Australia, China, Norway (mainly) |
43. | Rastegar et al. [62] | Case fatality rate, perceptions, media, trust, crisis management, healthcare system, solidarity, willingness to support a destination, travel intention | T1 T4 | Quantitative/ Online survey | CFA. PLS-SEM. T-test. Measurement invariance. Moderation (multi-group analysis). | 522 consumers | Destination/Travel | China, Italy, Iran, USA, UK, South Korea, Germany, New Zealand |
44. | Yu et al. [63] | Perceived risk of coronavirus (physical, psychological, financial, performance), post-traumatic stress disorder (PTSD) (intrusive thoughts, avoiding reminders, negative thoughts and feelings, arousal and reactive symptoms), revisit intention, emotion regulation ability | T1 T2 | Quantitative/ Online survey | CFA. SEM. Measurement invariance. Moderation. | 320 consumers | Hotel | South Korea |
SCANDINAVIAN JOURNAL OF HOSPITALITY AND TOURISM | ||||||||
45. | Ianioglo & Rissanen [64] | Global trends, tourism development (analysis, planning, organizing and leading, monitoring), impact (socio-economic, environmental, cultural), sustainable tourism, visitor satisfaction | T5 | Mixed method/ Online survey and semi-structured interviews.4 Secondary data. | Qualitative data analysis. Descriptive statistics. | 18 experts + data on travel booking sites | Destination | Finland |
JOURNAL OF HOSPITALITY, LEISURE, SPORT & TOURISM EDUCATION | ||||||||
46. | Tavitiyaman et al. [65] | Personality traits (agreeableness, neuroticism, extraversion, openness, conscientiousness), anxiety (learning, technical, financial), perceived learning, student satisfaction | T2 | Quantitative/ Online survey | CFA. SEM. | 283 university students | Hospitality education | China (Hong Kong) |
Research Theme | Number | Percentage |
---|---|---|
T1. Consumer perceptions | 27 | 58.7% |
T2. Consumer emotions and psychological conditions | 10 | 21.7% |
T3. Technology innovation | 15 | 32.6% |
T4. Communications and media | 11 | 23.9% |
T5. Other | 3 | 6.5% |
Method | Number | Percentage |
---|---|---|
Quantitative method | 36 | 78.2% |
Qualitative method | 5 | 10.9% |
Mixed method | 5 | 10.9% |
Total | 46 | 100.0% |
Study Design | Number | Percentage |
---|---|---|
Primary | 28 | 60.9% |
Secondary | 5 | 10.9% |
Experiment/quasi-experiment | 13 | 28.3% |
Content analysis 1 | 2 | 4.3% |
Data Analysis | Number | Percentage |
---|---|---|
Moderation/Mediation/Interaction 1 | 26 | 56.5% |
Factor analysis (EFA/CFA 2) | 22 | 47.8% |
Structural Equation Modeling-SEM 3 | 20 | 43.5% |
Variance/Covariance (ANOVA/ANCOVA/MANOVA) | 11 | 23.9% |
Other regression | 9 | 19.6%. |
T-test/χ2 test/Cross tabulation | 8 | 17.4% |
Descriptive statistics | 6 | 13.0% |
Thematic analysis | 5 | 10.9% |
Other | 15 | 32.6% |
Sample Size | Number | Percentage |
---|---|---|
Up to 100 | 4 | 8.7% |
From 101 to 300 | 4 | 8.7% |
From 301 to 500 | 18 | 39.1% |
More than 500 1 | 17 | 37.0% |
Not specified | 3 | 6.5% |
Total | 46 | 100.0% |
Industry | Number | Percentage |
---|---|---|
Restaurant and similar | 26 | 56.5% |
Hotel and other lodging | 15 | 32.6% |
Destination and travel | 4 | 8.7% |
Other 1 | 5 | 10.9% |
Country | Number | Percentage |
---|---|---|
USA | 21 | 45.7% |
Greater China 1 | 8 | 17.4% |
South Korea | 6 | 13.0% |
UK | 4 | 8.7% |
Australia | 3 | 6.5% |
New Zealand | 3 | 6.5% |
Germany | 2 | 4.3% |
India | 2 | 4.3% |
Turkey | 2 | 4.3% |
Other 2 | 6 | 13.0% |
Not specified | 4 | 8.7% |
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Šerić, M.; Šerić, M. Sustainability in Hospitality Marketing during the COVID-19 Pandemic. Content Analysis of Consumer Empirical Research. Sustainability 2021, 13, 10456. https://doi.org/10.3390/su131810456
Šerić M, Šerić M. Sustainability in Hospitality Marketing during the COVID-19 Pandemic. Content Analysis of Consumer Empirical Research. Sustainability. 2021; 13(18):10456. https://doi.org/10.3390/su131810456
Chicago/Turabian StyleŠerić, Maja, and Mario Šerić. 2021. "Sustainability in Hospitality Marketing during the COVID-19 Pandemic. Content Analysis of Consumer Empirical Research" Sustainability 13, no. 18: 10456. https://doi.org/10.3390/su131810456
APA StyleŠerić, M., & Šerić, M. (2021). Sustainability in Hospitality Marketing during the COVID-19 Pandemic. Content Analysis of Consumer Empirical Research. Sustainability, 13(18), 10456. https://doi.org/10.3390/su131810456