| Literature DB >> 34840358 |
Yan-Li Liu1, Wen-Juan Yuan1, Shao-Hong Zhu1.
Abstract
Research on COVID-19 has proliferated rapidly since the outbreak of the pandemic at the end of 2019. Many articles have aimed to provide insight into this fast-growing theme. The social sciences have also put effort into research on problems related to COVID-19, with numerous documents having been published. Some studies have evaluated the growth of scientific literature on COVID-19 based on scientometric analysis, but most of these analyses focused on medical research while ignoring social science research on COVID-19. This is the first scientometric study of the performance of social science research on COVID-19. It provides insight into the landscape, the research fields, and international collaboration in this domain. Data obtained from SSCI on the Web of Science platform was analyzed using VOSviewer. The overall performance of the documents was described, and then keyword co-occurrence and co-authorship networks were visualized. The six main research fields with highly active topics were confirmed by analysis and visualization. Mental health and psychology were clearly shown to be the focus of most social science research related to COVID-19. The USA made the most contributions, with the most extensive collaborations globally, with Harvard University as the leading institution. Collaborations throughout the world were strongly related to geographical location. Considering the social impact of the COVID-19 pandemic, this scientometric study is significant for identifying the growth of literature in the social sciences and can help researchers within this field gain quantitative insights into the development of research on COVID-19. The results are useful for finding potential collaborators and for identifying the frontier and gaps in social science research on COVID-19 to shape future studies. © Akadémiai Kiadó, Budapest, Hungary 2021.Entities:
Keywords: COVID-19; Scientometric; Social science; VOSviewer; Visualization
Year: 2021 PMID: 34840358 PMCID: PMC8605936 DOI: 10.1007/s11192-021-04206-4
Source DB: PubMed Journal: Scientometrics ISSN: 0138-9130 Impact factor: 3.801
Top 10 most productive countries for COVID-19 SSCI articles
| Ranking | Country | Records | Citations |
|---|---|---|---|
| 1 | USA | 3217 | 10,657 |
| 2 | China | 1229 | 10,074 |
| 3 | England | 1202 | 5990 |
| 4 | Italy | 726 | 2867 |
| 5 | Australia | 676 | 2993 |
| 6 | Canada | 630 | 3289 |
| 7 | Spain | 550 | 1544 |
| 8 | Germany | 436 | 1177 |
| 9 | Brazil | 320 | 1126 |
| 10 | France | 236 | 1040 |
Top 10 most productive institutions for COVID-19 SSCI articles
| Ranking | Institution | Records | Citations |
|---|---|---|---|
| 1 | Harvard Univ | 182 | 624 |
| 2 | Univ Oxford | 123 | 969 |
| 3 | Univ Toronto | 120 | 1039 |
| 4 | UCL | 101 | 973 |
| 5 | Johns Hopkins Univ | 90 | 940 |
| 6 | Univ Melbourne | 90 | 328 |
| 7 | Kings Coll London | 87 | 977 |
| 8 | Huazhong Univ Sci & Technol | 86 | 1288 |
| 9 | Yale Univ | 86 | 414 |
| 10 | Wuhan Univ | 81 | 1900 |
Top 10 most-cited journals contributing to COVID-19 research
| Ranking | Journal | Records | Citations |
|---|---|---|---|
| 1 | International Journal of Environmental Research and Public Health | 679 | 3531 |
| 2 | Psychiatry Research | 65 | 1705 |
| 3 | Brain Behavior and Immunity | 14 | 1169 |
| 4 | JAMA Network Open | 22 | 932 |
| 5 | Lancet Global Health | 14 | 828 |
| 6 | Lancet Public Health | 13 | 752 |
| 7 | International Journal of Mental Health and Addiction | 43 | 695 |
| 8 | Lancet Psychiatry | 8 | 652 |
| 9 | Frontiers in Public Health | 238 | 597 |
| 10 | Nature Human Behaviour | 19 | 542 |
Top 10 most-cited articles contributing to COVID-19 research
| Ranking | Document | Citations |
|---|---|---|
| 1 | Wang CY, Pan RY, Wan XY, Tan YL, Xu LK, et al. Immediate Psychological Responses and Associated Factors during the Initial Stage of the 2019 Coronavirus Disease (COVID-19) Epidemic among the General Population in China INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH. 2020 MAR; 17 (5): Art. No. 1729 | 1097 |
| 2 | Lai JB, Ma SM, Wang Y, Cai ZX, Hu JB, et al. Factors Associated with Mental Health Outcomes among Health Care Workers Exposed to Coronavirus Disease 2019 JAMA NETWORK OPEN. 2020 MAR 23; 3 (3): Art. No. e203976 | 864 |
| 3 | Holmes EA, O’Connor RC, Perry VH, Tracey I, Wessely S, et al. Multidisciplinary Research Priorities for the COVID-19 Pandemic: A Call for Action for Mental Health Science LANCET PSYCHIATRY. 2020 JUN; 7 (6): 547–560 | 563 |
| 4 | Hellewell J, Abbott S, Gimma A, Bosse NI, Jarvis CI, et al. Feasibility of Controlling COVID-19 Outbreaks by isolation of cases and contacts LANCET GLOBAL HEALTH. 2020 APR; 8 (4): E488–E496 | 432 |
| 5 | Cao WJ, Fang ZW, Hou GQ, Han M, Xu XR, et al. The Psychological Impact of the COVID-19 epidemic on College Students in China PSYCHIATRY RESEARCH. 2020 MAY; 287: Art. No. 112934 | 362 |
| 6 | Van Bavel JJ, Baicker K, Boggio PS, Capraro V, Cichocka A, et al. Using social and Behavioural Science to Support COVID-19 Pandemic Response NATURE HUMAN BEHAVIOUR. 2020 MAY; 4 (5): 460–471 | 333 |
| 7 | Prem K, Liu Y, Russell TW, Kucharski AJ, Eggo RM, et al. The effect of Control Strategies to Reduce Social Mixing on outcomes of the COVID-19 epidemic in Wuhan, China: A Modelling Study LANCET PUBLIC HEALTH. 2020 MAY; 5 (5): E261–E270 | 312 |
| 8 | Huang YE, Zhao N Generalized Anxiety Disorder, Depressive Symptoms and Sleep Quality During COVID-19 outbreak in China: A Web-Based Cross-Sectional Survey PSYCHIATRY RESEARCH. 2020 JUN; 288: Art. No. 112954 | 305 |
| 9 | Wang CY, Pan RY, Wan XY, Tan YL, Xu LK, et al. A Longitudinal Study on the Mental Health of General Population During the COVID-19 epidemic in China BRAIN BEHAVIOR AND IMMUNITY. 2020 JUL; 87: 40–48 | 262 |
| 10 | Ahorsu DK, Imani V, Lin CY, Timpka T, Brostrom A, et al. Associations Between Fear of COVID-19, Mental Health, and Preventive Behaviours Across Pregnant Women and Husbands: An Actor-Partner Interdependence Modelling INTERNATIONAL JOURNAL OF MENTAL HEALTH AND ADDICTION. 2020 JUN; 1–15 | 242 |
Fig. 1Keyword co-occurrence network. The size of the nodes represents the occurrence counts. The links between two nodes represent their co-occurrence in the same document. The closer two nodes are to each other, the larger the number of co-occurrences for the two keywords
Top 10 keywords
| Ranking | Keyword | Cluster | Occurrence |
|---|---|---|---|
| 1 | Mental health | 4 | 550 |
| 2 | Anxiety | 4 | 503 |
| 3 | Depression | 4 | 397 |
| 4 | Public health | 1 | 355 |
| 5 | Stress | 4 | 264 |
| 6 | Lockdown | 6 | 202 |
| 7 | Resilience | 1 | 174 |
| 8 | Social media | 5 | 174 |
| 9 | Social distancing | 1 | 169 |
| 10 | China | 1 | 157 |
Summary of the keywords clusters
| Cluster | Research field | Number of items | Keywords |
|---|---|---|---|
| Cluster 1 (Red) | Public Health | 110 | Public health, resilience, social distancing, China, crisis, epidemiology, gender, health policy, health, ethics |
| Cluster 2 (Green) | Health Literacy & Education | 53 | Knowledge, nurse, risk perception, attitude, distance learning/self-instruction, higher education, online learning, personal protective equipment, nursing, behavior |
| Cluster 3 (Blue) | Telemedicine | 33 | Telemedicine, telehealth, social isolation, mortality, loneliness, prevention, older adults, risk factors, isolation, nursing home |
| Cluster 4 (Yellow) | Mental Health & Psychology | 33 | Mental health, anxiety, depression, stress, psychological distress, healthcare worker, fear, social support, posttraumatic-stress-disorder, coping |
| Cluster 5 (Purple) | Social Media & Infodemic | 32 | Social media, twitter, outbreak, misinformation, machine learning, risk communication, contact tracing, big data, trust, infodemic |
| Cluster 6 (Light blue) | Physical Activities | 26 | Lockdown, quarantine, wellbeing, physical activity, children, adolescents, emotion, sleep, confinement, prevalence |
| Cluster 7 (Orange) | Prison Reform | 4 | Alternatives to incarceration, early release mechanisms, prison reform, prisons |
Fig. 2Country/region co-authorship network. The size of the nodes represents the total link strength of the country/region. The more links the node has, the larger the size of the node. The stronger the link between two nodes is, the thicker the line between them
Fig. 3Institution co-authorship network. The size of the nodes represents the total link strength of the institution. The more links the node has, the larger the size of the node. The stronger the link between two nodes is, the thicker the line between them